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Drools has a "native" rule language. 
  This format is very light in terms of punctuation, and supports
  natural and domain specific languages via "expanders" that allow the
  language to morph to your problem domain. This chapter is mostly concerted
  with this native rule format. The diagrams used to present the syntax are
  known as "railroad" diagrams, and they are basically flow charts for the
  language terms. The
  technically very keen may also refer to DRL.g which is 
  the Antlr3
  grammar for the rule language. If you use the Rule Workbench, a lot of the
  rule structure is done for you with content assistance, for example, type
  "ru" and press ctrl+space, and it will build the rule structure for
  you.
A rule file is typically a file with a .drl extension. In a DRL file you can have multiple rules, queries and functions, as well as some resource declarations like imports, globals and attributes that are assigned and used by your rules and queries. However, you are also able to spread your rules across multiple rule files (in that case, the extension .rule is suggested, but not required) - spreading rules across files can help with managing large numbers of rules. A DRL file is simply a text file.
The overall structure of a rule file is:
The order in which the elements are declared is not important, except for the package name that, if declared, must be the first element in the rules file. All elements are optional, so you will use only those you need. We will discuss each of them in the following sections.
For the inpatients, just as an early view, a rule has the following rough structure:
rule"name"attributeswhenLHSthenRHSend
It's really that simple. Mostly punctuation is not needed, even the double quotes for "name" are optional, as are newlines. Attributes are simple (always optional) hints to how the rule should behave. LHS is the conditional parts of the rule, which follows a certain syntax which is covered below. RHS is basically a block that allows dialect specific semantic code to be executed.
It is important to note that white space is not important, except in the case of domain specific languages, where lines are processed one by one and spaces may be significant to the domain language.
Drools 5 introduces the concept of hard and soft keywords.
Hard keywords are reserved, you cannot use any hard keyword when naming your domain objects, properties, methods, functions and other elements that are used in the rule text.
Here is the list of hard keywords that must be avoided as identifiers when writing rules:
true
false
null
Soft keywords are just recognized in their context, enabling you to use these words in any other place if you wish, although, it is still recommended to avoid them, to avoid confusions, if possible. Here is a list of the soft keywords:
lock-on-active
date-effective
date-expires
no-loop
auto-focus
activation-group
agenda-group
ruleflow-group
entry-point
duration
package
import
dialect
salience
enabled
attributes
rule
extend
when
then
template
query
declare
function
global
eval
not
in
or
and
exists
forall
accumulate
collect
from
action
reverse
result
end
over
init
Of course, you can have these (hard and soft) words as part of a method name in camel case, like notSomething() or accumulateSomething() - there are no issues with that scenario.
Although the 3 hard keywords above are unlikely to be used in your existing domain models, if you absolutely need to use them as identifiers instead of keywords, the DRL language provides the ability to escape hard keywords on rule text. To escape a word, simply enclose it in grave accents, like this:
Holiday( `true` == "yes" ) // please note that Drools will resolve that reference to the method Holiday.isTrue()
Comments are sections of text that are ignored by the rule engine. They are stripped out when they are encountered, except inside semantic code blocks, like the RHS of a rule.
To create single line comments, you can use either '#' or '//'. The parser will ignore anything in the line after the comment symbol. Example:
rule "Testing Comments"
when
    # this is a single line comment
    // this is also a single line comment
    eval( true ) # this is a comment in the same line of a pattern
then
    // this is a comment inside a semantic code block
    # this is another comment in a semantic code block
end
Multi-line comments are used to comment blocks of text, both in and outside semantic code blocks. Example:
rule "Test Multi-line Comments"
when
    /* this is a multi-line comment
       in the left hand side of a rule */
    eval( true )
then
    /* and this is a multi-line comment
       in the right hand side of a rule */
end Drools 5 introduces standardized error messages. This standardization aims to help users to find and resolve problems in a easier and faster way. In this section you will learn how to identify and interpret those error messages, and you will also receive some tips on how to solve the problems associated with them.
The standardization includes the error message format and to better explain this format, let's use the following example:
1st Block: This area identifies the error code.
2nd Block: Line and column information.
3rd Block: Some text describing the problem.
4th Block: This is the first context. Usually indicates the rule, function, template or query where the error occurred. This block is not mandatory.
5th Block: Identifies the pattern where the error occurred. This block is not mandatory.
Indicates the most common errors, where the parser came to a decision point but couldn't identify an alternative. Here are some examples:
The above example generates this message:
[ERR 101] Line 4:4 no viable alternative at input 'exits' in rule one
At first glance this seems to be valid syntax, but it is not (exits != exists). Let's take a look at next example:
Example 5.3.
1: package org.drools;
2: rule
3:   when
4:     Object()
5:   then
6:     System.out.println("A RHS");
7: end
Now the above code generates this message:
[ERR 101] Line 3:2 no viable alternative at input 'WHEN'
This message means that the parser encountered the token WHEN, actually a hard keyword, but it's in the wrong place since the the rule name is missing.
The error "no viable alternative" also occurs when you make a simple lexical mistake. Here is a sample of a lexical problem:
The above code misses to close the quotes and because of this the parser generates this error message:
[ERR 101] Line 0:-1 no viable alternative at input '<eof>' in rule simple_rule in pattern Student
Usually the Line and Column information are accurate, but in some cases (like unclosed quotes), the parser generates a 0:-1 position. In this case you should check whether you didn't forget to close quotes, apostrophes or parentheses.
This error indicates that the parser was looking for a particular symbol that it didn’t find at the current input position. Here are some samples:
The above example generates this message:
[ERR 102] Line 0:-1 mismatched input '<eof>' expecting ')' in rule simple_rule in pattern Bar
To fix this problem, it is necessary to complete the rule statement.
Usually when you get a 0:-1 position, it means that parser reached the end of source.
The following code generates more than one error message:
Example 5.6.
1: package org.drools;
2:
3: rule "Avoid NPE on wrong syntax"
4:   when
5:     not( Cheese( ( type == "stilton", price == 10 ) || ( type == "brie", price == 15 ) ) from $cheeseList )
6:   then
7:     System.out.println("OK");
8: end
These are the errors associated with this source:
[ERR 102] Line 5:36 mismatched input ',' expecting ')' in rule "Avoid NPE on wrong syntax" in pattern Cheese
[ERR 101] Line 5:57 no viable alternative at input 'type' in rule "Avoid NPE on wrong syntax"
[ERR 102] Line 5:106 mismatched input ')' expecting 'then' in rule "Avoid NPE on wrong syntax"
Note that the second problem is related to the first. To fix it, just replace the commas (',') by AND operator ('&&').
In some situations you can get more than one error message. Try to fix one by one, starting at the first one. Some error messages are generated merely as consequences of other errors.
A validating semantic predicate evaluated to false. Usually these semantic predicates are used to identify soft keywords. This sample shows exactly this situation:
Example 5.7.
 1: package nesting;
 2: dialect "mvel"
 3:
 4: import org.drools.Person
 5: import org.drools.Address
 6: 
 7: fdsfdsfds
 8: 
 9: rule "test something"
10:   when
11:     p: Person( name=="Michael" )
12:   then
13:     p.name = "other";
14:     System.out.println(p.name);
15: end
With this sample, we get this error message:
[ERR 103] Line 7:0 rule 'rule_key' failed predicate: {(validateIdentifierKey(DroolsSoftKeywords.RULE))}? in rule
The fdsfdsfds text is invalid and
      the parser couldn’t identify it as the soft keyword
      rule.
This error is very similar to 102: Mismatched input, but usually involves soft keywords.
This error is associated with the eval clause,
      where its expression may not be terminated with a semicolon. Check this
      example:
Due to the trailing semicolon within eval, we get this error message:
[ERR 104] Line 3:4 trailing semi-colon not allowed in rule simple_rule
This problem is simple to fix: just remove the semi-colon.
The recognizer came to a subrule in the grammar that must match an alternative at least once, but the subrule did not match anything. Simply put: the parser has entered a branch from where there is no way out. This example illustrates it:
This is the message associated to the above sample:
[ERR 105] Line 2:2 required (...)+ loop did not match anything at input 'aa' in template test_error
To fix this problem it is necessary to remove the numeric value as it is neither a valid data type which might begin a new template slot nor a possible start for any other rule file construct.
A package is a collection of rules and other related constructs, such as imports and globals. The package members are typically related to each other - perhaps HR rules, for instance. A package represents a namespace, which ideally is kept unique for a given grouping of rules. The package name itself is the namespace, and is not related to files or folders in any way.
It is possible to assemble rules from multiple rule sources, and have one top level package configuration that all the rules are kept under (when the rules are assembled). Although, it is not possible to merge into the same package resources declared under different names. A single Rulebase may, however, contain multiple packages built on it. A common structure is to have all the rules for a package in the same file as the package declaration (so that is it entirely self-contained).
The following railroad diagram shows all the components that may make
  up a package. Note that a package must have a namespace and be declared
  using standard Java conventions for package names; i.e., no spaces, unlike
  rule names which allow spaces. In terms of the order of elements, they can
  appear in any order in the rule file, with the exception of the package
  statement, which must be at the top of the file. In all cases, the semicolons are
  optional.
Notice that any rule atttribute (as described the section Rule Attributes) may also be written at package level, superseding the attribute's default value. The modified default may still be replaced by an attribute setting within a rule.
Import statements work like import statements in Java. You need to
    specify the fully qualified paths and type names for any objects you want
    to use in the rules. Drools automatically imports classes from the
    Java package of the same name, and also from the package
    java.lang.
With global you define global variables. They are used to make
    application objects available to the rules. Typically, they are used
    to provide data or services that the rules use, especially application
    services used in rule consequences, and to return data from the rules,
    like logs or values added in rule consequences, or for the rules to
    interact with the application, doing callbacks. Globals are not 
    inserted into the Working Memory, and therefore a global should never be
    used to establish conditions in rules except when it has a
    constant immutable value. The engine cannot be notified about value
    changes of globals and does not track their changes. Incorrect use
    of globals in constraints may yield surprising results - surprising
    in a bad way.
If multiple packages declare globals with the same identifier they must be of the same type and all of them will reference the same global value.
In order to use globals you must:
Declare your global variable in your rules file and use it in rules. Example:
global java.util.List myGlobalList;
rule "Using a global"
when
    eval( true )
then
    myGlobalList.add( "Hello World" );
end
Set the global value on your working memory. It is a best practice to set all global values before asserting any fact to the working memory. Example:
List list = new ArrayList();
WorkingMemory wm = rulebase.newStatefulSession();
wm.setGlobal( "myGlobalList", list );
Note that these are just named instances of objects that you pass in
    from your application to the working memory. This means you can pass in
    any object you want: you could pass in a service locator, or perhaps a
    service itself. With the new from element it is now common to pass a
    Hibernate session as a global, to allow from to pull data from a named
    Hibernate query.
One example may be an instance of a Email service. In your integration code that is calling the rule engine, you obtain your emailService object, and then set it in the working memory. In the DRL, you declare that you have a global of type EmailService, and give it the name "email". Then in your rule consequences, you can use things like email.sendSMS(number, message).
Globals are not designed to share data between rules and they should never be used for that purpose. Rules always reason and react to the working memory state, so if you want to pass data from rule to rule, assert the data as facts into the working memory.
It is strongly discouraged to set or change a global value from inside your rules. We recommend to you always set the value from your application using the working memory interface.
Functions are a way to put semantic code in your rule source file, as
  opposed to in normal Java classes. They can't do anything more than what you
  can do with helper classes. (In fact, the compiler generates the helper class
  for you behind the scenes.) The main advantage of using functions in a rule
  is that you can keep the logic all in one place, and you can change the
  functions as needed (which can be a good or a bad thing). Functions are most
  useful for invoking actions on the consequence (then) part of a rule,
  especially if that particular action is used over and over again, perhaps
  with only differing parameters for each rule.
A typical function declaration looks like:
function String hello(String name) {
    return "Hello "+name+"!";
}
Note that the function keyword is used, even though its not really
  part of Java. Parameters to the function are defined as for a method, and
  you don't have to have parameters if they are not needed. The return type
  is defined just like in a regular method.
Alternatively, you could use a static method in a helper class,
  e.g., Foo.hello(). Drools supports the use of
  function imports, so all you would need to do is:
import function my.package.Foo.hello
Irrespective of the way the function is defined or imported, you use a function by calling it by its name, in the consequence or inside a semantic code block. Example:
rule "using a static function"
when 
    eval( true )
then
    System.out.println( hello( "Bob" ) );
end
Type declarations have two main goals in the rules engine: to allow the declaration of new types, and to allow the declaration of metadata for types.
Declaring new types: Drools works out of the box with plain Java objects as facts. Sometimes, however, users may want to define the model directly to the rules engine, without worrying about creating models in a lower level language like Java. At other times, there is a domain model already built, but eventually the user wants or needs to complement this model with additional entities that are used mainly during the reasoning process.
Declaring metadata: facts may have meta information associated to them. Examples of meta information include any kind of data that is not represented by the fact attributes and is consistent among all instances of that fact type. This meta information may be queried at runtime by the engine and used in the reasoning process.
To declare a new type, all you need to do is use the keyword
    declare, followed by the list of fields, and the
    keyword end.
Example 5.10. Declaring a new fact type: Address
declare Address number : int streetName : String city : String end
The previous example declares a new fact type called
    Address. This fact type will have three attributes:
    number, streetName and city. Each
    attribute has a type that can be any valid Java type, including any other
    class created by the user or even other fact types previously
    declared.
For instance, we may want to declare another fact type
    Person:
Example 5.11. declaring a new fact type: Person
declare Person name : String dateOfBirth : java.util.Date address : Address end
As we can see on the previous example, dateOfBirth is
    of type java.util.Date, from the Java API, while
    address is of the previously defined fact type
    Address.
You may avoid having to write the fully qualified name of a class
    every time you write it by using the import clause, as
    previously discussed.
Example 5.12. Avoiding the need to use fully qualified class names by using import
import java.util.Date declare Person name : String dateOfBirth : Date address : Address end
When you declare a new fact type, Drools will, at compile time, generate bytecode that implements a Java class representing the fact type. The generated Java class will be a one-to-one Java Bean mapping of the type definition. So, for the previous example, the generated Java class would be:
Example 5.13. generated Java class for the previous Person fact type declaration
public class Person implements Serializable {
private String name;
private java.util.Date dateOfBirth;
private Address address;
// empty constructor
public Person() {...}
// constructor with all fields
public Person( String name, Date dateOfBirth, Address address ) {...}
// if keys are defined, constructor with keys
public Person( ...keys... ) {...}
// getters and setters
// equals/hashCode
// toString
}
Since the generated class is a simple Java class, it can be used transparently in the rules, like any other fact.
Example 5.14. Using the declared types in rules
rule "Using a declared Type" when $p : Person( name == "Bob" ) then // Insert Mark, who is Bob's mate. Person mark = new Person(); mark.setName("Mark"); insert( mark ); end
Metadata may be assigned to several different constructions in Drools: fact types, fact attributes and rules. Drools uses the at sign ('@') to introduce metadata, and it always uses the form:
@metadata_key( metadata_value )
The parenthesized metadata_value is optional.
For instance, if you want to declare a metadata attribute like
    author, whose value is Bob, you could
    simply write:
Drools allows the declaration of any arbitrary metadata attribute, but some will have special meaning to the engine, while others are simply available for querying at runtime. Drools allows the declaration of metadata both for fact types and for fact attributes. Any metadata that is declared before the attributes of a fact type are assigned to the fact type, while metadata declared after an attribute are assigned to that particular attribute.
Example 5.16. Declaring metadata attributes for fact types and attributes
import java.util.Date declare Person @author( Bob ) @dateOfCreation( 01-Feb-2009 ) name : String @key @maxLength( 30 ) dateOfBirth : Date address : Address end
In the previous example, there are two metadata items declared for
    the fact type (@author and @dateOfCreation) and
    two more defined for the name attribute (@key and
    @maxLength). Please note that the @key metadata
    has no required value, and so the parentheses and the value were
    omitted.:
@position can be used to declare the position of a field, overriding the default declared order. This is used for positional constraints in patterns.
declare Cheese
    name : String @position(1)
    shop : String @position(2)
    price : int @position(0)
end
Some annotations have predefined semantics that are interpreted by the engine. The following is a list of some of these predefined annotations and their meaning.
By default all type declarations are compiled with type safety enabled; @typesafe( false ) provides a means to override this behaviour by permitting a fall-back, to type unsafe evaluation where all constraints are generated as MVEL constraints and executed dynamically. This can be important when dealing with collections that do not have any generics or mixed type collections.
Facts that implement support for property changes as defined in the Javabean(tm) spec, now can be annotated so that the engine register itself to listen for changes on fact properties. The boolean parameter that was used in the insert() method in the Drools 4 API is deprecated and does not exist in the drools-api module.
As noted before, Drools also supports annotations in type attributes. Here is a list of predefined attribute annotations.
Declaring an attribute as a key attribute has 2 major effects on generated types:
The attribute will be used as a key identifier for the type, and as so, the generated class will implement the equals() and hashCode() methods taking the attribute into account when comparing instances of this type.
Drools will generate a constructor using all the key attributes as parameters.
For instance:
Example 5.18. example of @key declarations for a type
declare Person
    firstName : String @key
    lastName : String @key
    age : int
end
For the previous example, Drools will generate equals() and hashCode() methods that will check the firstName and lastName attributes to determine if two instances of Person are equal to each other, but will not check the age attribute. It will also generate a constructutor taking firstName and lastName as parameters, allowing one to create instances with a code like this:
Example 5.19. creating an instance using the key constructor
Person person = new Person( "John", "Doe" );
Patterns support positional arguments on type declarations.
Positional arguments are ones where you don't need to specify the field name, as the position maps to a known named field. i.e. Person( name == "mark" ) can be rewritten as Person( "mark"; ). The semicolon ';' is important so that the engine knows that everything before it is a positional argument. Otherwise we might assume it was a boolean expression, which is how it could be interpretted after the semicolon. You can mix positional and named arguments on a pattern by using the semicolon ';' to separate them. Any variables used in a positional that have not yet been bound will be bound to the field that maps to that position.
declare Cheese
    name : String
    shop : String
    price : int
end
The default order is the declared order, but this can be overiden using @position
declare Cheese
    name : String @position(1)
    shop : String @position(2)
    price : int @position(0)
end
The @Position annotation, in the org.drools.definition.type package, can be used to annotate original pojos on the classpath. Currently only fields on classes can be annotated. Inheritence of classes is supported, but not interfaces of methods yet.
Example patterns, with two constraints and a binding. Remember semicolon ';' is used to differentiate the positional section from the named argument section. Variables and literals and expressions using just literals are supported in posional arguments, but not variables.
Cheese( "stilton", "Cheese Shop", p; ) Cheese( "stilton", "Cheese Shop"; p : price ) Cheese( "stilton"; shop == "Cheese Shop", p : price ) Cheese( name == "stilton"; shop == "Cheese Shop", p : price )
Drools allows the declaration of metadata attributes for existing types in the same way as when declaring metadata attributes for new fact types. The only difference is that there are no fields in that declaration.
For instance, if there is a class org.drools.examples.Person, and one wants to declare metadata for it, it's possible to write the following code:
Example 5.20. Declaring metadata for an existing type
import org.drools.examples.Person declare Person @author( Bob ) @dateOfCreation( 01-Feb-2009 ) end
Instead of using the import, it is also possible to reference the class by its fully qualified name, but since the class will also be referenced in the rules, it is usually shorter to add the import and use the short class name everywhere.
Example 5.21. Declaring metadata using the fully qualified class name
declare org.drools.examples.Person @author( Bob ) @dateOfCreation( 01-Feb-2009 ) end
Generate constructors with parameters for declared types.
Example: for a declared type like the following:
declare Person
    firstName : String @key
    lastName : String @key
    age : int
end
The compiler will implicitly generate 3 constructors: one without parameters, one with the @key fields, and one with all fields.
Person() // parameterless constructor Person( String firstName, String lastName ) Person( String firstName, String lastName, int age )
@typesafe( <boolean>) has been added to type declarations. By default all type declarations are compiled with type safety enabled; @typesafe( false ) provides a means to override this behaviour by permitting a fall-back, to type unsafe evaluation where all constraints are generated as MVEL constraints and executed dynamically. This can be important when dealing with collections that do not have any generics or mixed type collections.
Declared types are usually used inside rules files, while Java models are used when sharing the model between rules and applications. Although, sometimes, the application may need to access and handle facts from the declared types, especially when the application is wrapping the rules engine and providing higher level, domain specific user interfaces for rules management.
In such cases, the generated classes can be handled as usual with the Java Reflection API, but, as we know, that usually requires a lot of work for small results. Therefore, Drools provides a simplified API for the most common fact handling the application may want to do.
The first important thing to realize is that a declared fact will
    belong to the package where it was declared. So, for instance, in the
    example below, Person will belong to the
    org.drools.examples package, and so the fully qualified name
    of the generated class will be
    org.drools.examples.Person.
Example 5.22. Declaring a type in the org.drools.examples package
package org.drools.examples import java.util.Date declare Person name : String dateOfBirth : Date address : Address end
Declared types, as discussed previously, are generated at knowledge base compilation time, i.e., the application will only have access to them at application run time. Therefore, these classes are not available for direct reference from the application.
Drools then provides an interface through which users can handle
    declared types from the application code:
    org.drools.definition.type.FactType. Through this interface,
    the user can instantiate, read and write fields in the declared fact
    types.
Example 5.23. Handling declared fact types through the API
// get a reference to a knowledge base with a declared type:
KnowledgeBase kbase = ...
// get the declared FactType
FactType personType = kbase.getFactType( "org.drools.examples",
                                         "Person" );
// handle the type as necessary:
// create instances:
Object bob = personType.newInstance();
// set attributes values
personType.set( bob,
                "name",
                "Bob" );
personType.set( bob,
                "age",
                42 );
// insert fact into a session
StatefulKnowledgeSession ksession = ...
ksession.insert( bob );
ksession.fireAllRules();
// read attributes
String name = personType.get( bob, "name" );
int age = personType.get( bob, "age" );
The API also includes other helpful methods, like setting all the attributes at once, reading values from a Map, or reading all attributes at once, into a Map.
Although the API is similar to Java reflection (yet much simpler to use), it does not use reflection underneath, relying on much more performant accessors implemented with generated bytecode.
Type declarations now support 'extends' keyword for inheritance
In order to extend a type declared in Java by a DRL declared subtype, repeat the supertype in a declare statement without any fields.
import org.people.Person
declare Person
end
declare Student extends Person
    school : String
end
declare LongTermStudent extends Student
    years : int
    course : String
endA rule specifies that when a particular set of conditions occur, specified in the Left Hand Side (LHS), then do what queryis specified as a list of actions in the Right Hand Side (RHS). A common question from users is "Why use when instead of if?" "When" was chosen over "if" because "if" is normally part of a procedural execution flow, where, at a specific point in time, a condition is to be checked. In contrast, "when" indicates that the condition evaluation is not tied to a specific evaluation sequence or point in time, but that it happens continually, at any time during the life time of the engine; whenever the condition is met, the actions are executed.
A rule must have a name, unique within its rule package. If you define a rule twice in the same DRL it produces an error while loading. If you add a DRL that includes a rule name already in the package, it replaces the previous rule. If a rule name is to have spaces, then it will need to be enclosed in double quotes (it is best to always use double quotes).
Attributes - described below - are optional. They are best written one per line.
The LHS of the rule follows the when keyword
  (ideally on a new line), similarly the RHS follows the
  then keyword (again, ideally on a newline). The rule is
  terminated by the keyword end. Rules cannot be
  nested.
Example 5.24. Rule Syntax Overview
rule "<name>"
    <attribute>*
when
    <conditional element>*
then
    <action>*
endExample 5.25. A simple rule
rule "Approve if not rejected"
  salience -100 
  agenda-group "approval"
    when
        not Rejection() 
        p : Policy(approved == false, policyState:status)
        exists Driver(age > 25)
        Process(status == policyState)
    then
        log("APPROVED: due to no objections."); 
        p.setApproved(true);
endRule attributes provide a declarative way to influence the behavior of the rule. Some are quite simple, while others are part of complex subsystems such as ruleflow. To get the most from Drools you should make sure you have a proper understanding of each attribute.
no-loopdefault value: false
type: Boolean
When a rule's consequence modifies a fact it may cause the rule to activate again, causing an infinite loop. Setting no-loop to true will skip the creation of another Activation for the rule with the current set of facts.
ruleflow-groupdefault value: N/A
type: String
Ruleflow is a Drools feature that lets you exercise control over the firing of rules. Rules that are assembled by the same ruleflow-group identifier fire only when their group is active.
lock-on-activedefault value: false
type: Boolean
Whenever a ruleflow-group becomes active or an agenda-group receives the focus, any rule within that group that has lock-on-active set to true will not be activated any more; irrespective of the origin of the update, the activation of a matching rule is discarded. This is a stronger version of no-loop, because the change could now be caused not only by the rule itself. It's ideal for calculation rules where you have a number of rules that modify a fact and you don't want any rule re-matching and firing again. Only when the ruleflow-group is no longer active or the agenda-group loses the focus those rules with lock-on-active set to true become eligible again for their activations to be placed onto the agenda.
saliencedefault value: 0
type: integer
Each rule has an integer salience attribute which defaults to zero and can be negative or positive. Salience is a form of priority where rules with higher salience values are given higher priority when ordered in the Activation queue.
Drools also supports dynamic salience where you can use an expression involving bound variables.
Example 5.26. Dynamic Salience
rule "Fire in rank order 1,2,.."
        salience( -$rank )
    when
        Element( $rank : rank,... )
    then
        ...
endagenda-groupdefault value: MAIN
type: String
Agenda groups allow the user to partition the Agenda providing more execution control. Only rules in the agenda group that has acquired the focus are allowed to fire.
auto-focusdefault value: false
type: Boolean
When a rule is activated where the auto-focus
          value is true and the rule's agenda group does not have focus yet,
          then it is given focus, allowing the rule to potentially
          fire.
activation-groupdefault value: N/A
type: String
Rules that belong to the same activation-group, identified by this attribute's string value, will only fire exclusively. In other words, the first rule in an activation-group to fire will cancel the other rules' activations, i.e., stop them from firing.
Note: This used to be called Xor group, but technically it's not quite an Xor. You may still hear people mention Xor group; just swap that term in your mind with activation-group.
dialectdefault value: as specified by the package
type: String
possible values: "java" or "mvel"
The dialect species the language to be used for any code expressions in the LHS or the RHS code block. Currently two dialects are available, Java and MVEL. While the dialect can be specified at the package level, this attribute allows the package definition to be overridden for a rule.
date-effectivedefault value: N/A
type: String, containing a date and time definition
A rule can only activate if the current date and time is after date-effective attribute.
date-expiresdefault value: N/A
type: String, containing a date and time definition
A rule cannot activate if the current date and time is after the date-expires attribute.
durationdefault value: no default value
type: long
The duration dictates that the rule will fire after a specified duration, if it is still true.
Rules now suport both interval and cron based timers, which replace the now deprecated duration attribute.
Example 5.28. Sample timer attribute uses
timer ( int: <initial delay> <repeat interval>? )
timer ( int: 30s )
timer ( int: 30s 5m )
timer ( cron: <cron expression> )
timer ( cron:* 0/15 * * * ? )
Interval (indicated by "int:") timers follow the semantics of java.util.Timer objects, with an initial delay and an optional repeat interval. Cron (indicated by "cron:") timers follow standard Unix cron expressions:
Example 5.29. A Cron Example
rule "Send SMS every 15 minutes"
timer (cron:* 0/15 * * * ?)
when
$a : Alarm( on == true )
then
channels[ "sms" ].insert( new Sms( $a.mobileNumber, "The alarm is still on" );
end
Calendars are used to control when rules can fire. The Calendar API is modelled on Quartz:
Example 5.30. Adapting a Quartz Calendar
Calendar weekDayCal = QuartzHelper.quartzCalendarAdapter(org.quartz.Calendar quartzCal)
Calendars are registered with the StatefulKnowledgeSession:
They can be used in conjunction with normal rules and rules including timers. The rule attribute "calendars" may contain one or more comma-separated calendar names written as string literals.
Example 5.32. Using Calendars and Timers together
rule "weekdays are high priority"
calendars "weekday"
timer (int:0 1h)
when
Alarm()
then
send( "priority high - we have an alarm );
end
rule "weekend are low priority"
calendars "weekend"
timer (int:0 4h)
when
Alarm()
then
send( "priority low - we have an alarm );
end
The Left Hand Side (LHS) is a common name for the conditional part of the rule. It consists of zero or more Conditional Elements. If the LHS is empty, it will be considered as a condition element that is always true and it will be activated once, when a new WorkingMemory session is created.
Example 5.33. Rule without a Conditional Element
rule "no CEs"
when
    // empty
then
    ... // actions (executed once)
end
# The above rule is internally rewritten as:
rule "eval(true)"
when
    eval( true )
then
    ... // actions (executed once)
endConditional elements work on one or more
      patterns (which are described below). The most
      common conditional element is "and". Therefore it is
      implicit when you have multiple patterns in the LHS of a rule that are
      not connected in any way:
Example 5.34. Implicit and
rule "2 unconnected patterns"
when
    Pattern1()
    Pattern2()
then
    ... // actions
end
# The above rule is internally rewritten as:
rule "2 and connected patterns"
when
    Pattern1()
    and Pattern2()
then
    ... // actions
endAn "and" cannot have a leading declaration
        binding (unlike for example or). This is obvious,
        since a declaration can only reference a single fact at a time, and
        when the "and" is satisfied it matches both facts -
        so which fact would the declaration bind to?
// Compile error $person : (Person( name == "Romeo" ) and Person( name == "Juliet"))
A pattern element is the most important Conditional Element. It can potentially match on each fact that is inserted in the working memory.
A pattern contains of zero or more constraints and has an optional pattern binding. The railroad diagram below shows the syntax for this.
In its simplest form, with no constraints, a pattern matches
        against a fact of the given type. In the following case the type is
        Cheese, which means that the pattern will match against
        all Person objects in the Working Memory:
Person()
The type need not be the actual class of some fact object. Patterns may refer to superclasses or even interfaces, thereby potentially matching facts from many different classes.
Object() // matches all objects in the working memory
Inside of the pattern parenthesis is where all the action happens: it defines the constraints for that pattern. For example, with a age related constraint:
Person( age == 100 )
For backwards compatibility reasons it's allowed to suffix
          patterns with the ; character. But it is not
          recommended to do that.
For referring to the matched object, use a pattern binding
        variable such as $p.
Example 5.35. Pattern with a binding variable
rule ...
when
    $p : Person()
then
    System.out.println( "Person " + $p );
endThe prefixed dollar symbol ($) is just a
        convention; it can be useful in complex rules where it helps to easily
        differentiate between variables and fields, but it is not
        mandatory.
A constraint is an expression that returns
        true or false. This example has
        a constraint that states 5 is smaller than
        6:
Person( 5 < 6 ) // just an example, as constraints like this would be useless in a real pattern
In essence, it's a Java expression with some enhancements (such
        as property access) and a few differences (such as
        equals() semantics for ==).
        Let's take a deeper look.
Any bean property can be used directly. A bean property is
        exposed using a standard Java bean getter: a method
        getMyProperty() (or
        isMyProperty() for a primitive boolean) which takes
        no arguments and return something. For example: the age property is
        written as age in DRL instead of the getter
        getAge():
Person( age == 50 ) // this is the same as: Person( getAge() == 50 )
Drools uses the standard JDK Introspector
        class to do this mapping, so it follows the standard Java bean
        specification.
We recommend using property access (age)
          over using getters explicitly (getAge()) because
          of performance enhancements through field indexing.
Property accessors must not change the state of the object in a way that may effect the rules. Remember that the rule engine effectively caches the results of its matching in between invocations to make it faster.
public int getAge() {
    age++; // Do NOT do this
    return age;
}public int getAge() {
    Date now = DateUtil.now(); // Do NOT do this
    return DateUtil.differenceInYears(now, birthday);
}To solve this latter case, insert a fact that wraps the
          current date into working memory and update that fact between
          fireAllRules as needed.
The following fallback applies: if the getter of a property cannot be found, the compiler will resort to using the property name as a method name and without arguments:
Person( age == 50 ) // If Person.getAge() does not exists, this falls back to: Person( age() == 50 )
Nested property access is also supported:
Person( address.houseNumber == 50 ) // this is the same as: Person( getAddress().getHouseNumber() == 50 )
Nested properties are also indexed.
In a stateful session, care should be taken when using nested
          accessors as the Working Memory is not aware of any of the nested
          values, and does not know when they change. Either consider them
          immutable while any of their parent references are inserted into the
          Working Memory. Or, instead, if you wish to modify a nested value
          you should mark all of the outer facts as updated. In the above
          example, when the houseNumber changes, any
          Person with that Address must
          be marked as updated.
You can use any Java expression that returns a
        boolean as a constraint inside the parentheses of a
        pattern. Java expressions can be mixed with other expression
        enhancements, such as property access:
Person( age == 50 )
It is possible to change the evaluation priority by using parentheses, as in any logic or mathematical expression:
Person( age > 100 && ( age % 10 == 0 ) )
It is possible to reuse Java methods:
Person( Math.round( weight / ( height * height ) ) < 25.0 )
As for property accessors, methods must not change the state of the object in a way that may affect the rules. Any method executed on a fact in the LHS should be a read only method.
Person( incrementAndGetAge() == 10 ) // Do NOT do this
The state of a fact should not change between rule invocations (unless those facts are marked as updated to the working memory on every change):
Person( System.currentTimeMillis() % 1000 == 0 ) // Do NOT do this
Normal Java operator precedence applies, see the operator precedence list below.
All operators have normal Java semantics except for
          == and !=.
The == operator has null-safe
          equals() semantics:
// Similar to: java.util.Objects.equals(person.getFirstName(), "John") // so (because "John" is not null) similar to: // "John".equals(person.getFirstName()) Person( firstName == "John" )
The != operator has null-safe
          !equals() semantics:
// Similar to: !java.util.Objects.equals(person.getFirstName(), "John") Person( firstName != "John" )
Type coercion is always attempted if the field and the value are of different types; exceptions will be thrown if a bad coercion is attempted. For instance, if "ten" is provided as a string in a numeric evaluator, an exception is thrown, whereas "10" would coerce to a numeric 10. Coercion is always in favor of the field type and not the value type:
Person( age == "10" ) // "10" is coerced to 10
The comma character (',') is used to separate
        constraint groups. It has implicit AND connective
        semantics.
// Person is at least 50 and weighs at least 80 kg Person( age > 50, weight > 80 )
// Person is at least 50, weighs at least 80 kg and is taller than 2 meter. Person( age > 50, weight > 80, height > 2 )
Although the && and
          , operators have the same semantics, they are
          resolved with different priorities: The
          && operator precedes the
          || operator. Both the
          && and || operator
          precede the , operator. See the operator
          precedence list below.
The comma operator should be preferred at the top level constraint, as it makes constraints easier to read and the engine will often be able to optimize them better.
The comma (,) operator cannot be embedded in
        a composite constraint expression, such as parentheses:
Person( ( age > 50, weight > 80 ) || height > 2 ) // Do NOT do this: compile error // Use this instead Person( ( age > 50 && weight > 80 ) || height > 2 )
A property can be bound to a variable:
// 2 persons of the same age Person( $firstAge : age ) // binding Person( age == $firstAge ) // constraint expression
The prefixed dollar symbol ($) is just a
        convention; it can be useful in complex rules where it helps to easily
        differentiate between variables and fields.
For backwards compatibility reasons, It's allowed (but not recommended) to mix a constraint binding and constraint expressions as such:
// Not recommended Person( $age : age * 2 < 100 )
// Recommended (seperates bindings and constraint expressions) Person( age * 2 < 100, $age : age )
Bound variable restrictions using the operator
        == provide for very fast execution as it use hash
        indexing to improve performance.
Drools does not allow bindings to the same declaration. However this is an important aspect to derivation query unification. While positional arguments are always processed with unification a special unification symbol, ':=', was introduced for named arguments named arguments. The following "unifies" the age argument across two people.
Person( $age := age ) Person( $age := age)
In essence unification will declare a binding for the first occurance, and constrain to the same value of the bound field for sequence occurances.
Besides normal Java literals (including Java 5 enums), this literal is also supported:
The date format dd-mmm-yyyy is supported by
          default. You can customize this by providing an alternative date
          format mask as the System property named
          drools.dateformat. If more control is required, use a
          restriction.
It's possible to directly access a List value
        by index:
// Same as childList(0).getAge() == 18 Person( childList[0].age == 18 )
It's also possible to directly access a Map
        value by key:
// Same as credentialMap.get("jsmith").isValid()
Person( credentialMap["jsmith"].valid )This allows you to place more than one restriction on a field
        using the restriction connectives && or
        ||. Grouping via parentheses is permitted,
        resulting in a recursive syntax pattern.
// Simple abbreviated combined relation condition using a single && Person( age > 30 && < 40 )
// Complex abbreviated combined relation using groupings
Person( age ( (> 30 && < 40) ||
              (> 20 && < 25) ) )// Mixing abbreviated combined relation with constraint connectives Person( age > 30 && < 40 || location == "london" )
Coercion to the correct value for the evaluator and the field will be attempted.
These operators can be used on properties with natural
          ordering. For example, for Date fields, <
          means before, for String
          fields, it means alphabetically lower.
Person( firstName < $otherFirstName )
Person( birthDate < $otherBirthDate )
Only applies on Comperable
          properties.
Matches a field against any valid Java Regular Expression. Typically that regexp is a string literal, but variables that resolve to a valid regexp are also allowed.
Like in Java, regular expressions written as string literals
            need to escape '\'.
Only applies on String properties.
The operator returns true if the String does not match the
          regular expression. The same rules apply as for the
          matches operator. Example:
Only applies on String properties.
The operator contains is used to check
          whether a field that is a Collection or array contains the specified
          value.
Example 5.39. Contains with Collections
CheeseCounter( cheeses contains "stilton" ) // contains with a String literal CheeseCounter( cheeses contains $var ) // contains with a variable
Only applies on Collection
          properties.
The operator not contains is used to check
          whether a field that is a Collection or array does not
          contain the specified value.
Example 5.40. Literal Constraint with Collections
CheeseCounter( cheeses not contains "cheddar" ) // not contains with a String literal CheeseCounter( cheeses not contains $var ) // not contains with a variable
Only applies on Collection
          properties.
Note
For backward compatibility, the
excludesoperator is supported as a synonym fornot contains.
The operator memberOf is used to check
          whether a field is a member of a collection or array; that
          collection must be a variable.
The operator not memberOf is used to check
          whether a field is not a member of a collection or array; that
          collection must be a variable.
Example 5.42. Literal Constraint with Collections
CheeseCounter( cheese not memberOf $matureCheeses )
This operator is similar to matches, but it
          checks whether a word has almost the same sound (using English
          pronunciation) as the given value. This is based on the Soundex
          algorithm (see
          http://en.wikipedia.org/wiki/Soundex).
Example 5.43. Test with soundslike
// match cheese "fubar" or "foobar" Cheese( name soundslike 'foobar' )
This operator str is used to check whether
          a field that is a String starts with or ends with
          a certain value. It can also be used to check the length of the
          String.
Message( routingValue str[startsWith] "R1" )
Message( routingValue str[endsWith] "R2" )
Message( routingValue str[length] 17 )
The compound value restriction is used where there is more
          than one possible value to match. Currently only the
          in and not in evaluators
          support this. The second operand of this operator must be a
          comma-separated list of values, enclosed in parentheses. Values may
          be given as variables, literals, return values or qualified
          identifiers. Both evaluators are actually syntactic
          sugar, internally rewritten as a list of multiple
          restrictions using the operators != and
          ==.
Example 5.44. Compound Restriction using "in"
Person( $cheese : favouriteCheese ) Cheese( type in ( "stilton", "cheddar", $cheese ) )
An inline eval constraint can use any valid dialect expression as long as it results to a primitive boolean. The expression must be constant over time. Any previously bound variable, from the current or previous pattern, can be used; autovivification is also used to auto-create field binding variables. When an identifier is found that is not a current variable, the builder looks to see if the identifier is a field on the current object type, if it is, the field binding is auto-created as a variable of the same name. This is called autovivification of field variables inside of inline eval's.
This example will find all male-female pairs where the male is 2
        years older than the female; the variable age is
        auto-created in the second pattern by the autovivification
        process.
Example 5.45. Return Value operator
Person( girlAge : age, sex = "F" ) Person( eval( age == girlAge + 2 ), sex = 'M' ) // eval() is actually obselete in this example
Inline eval's are effectively obsolete as their inner syntax is now directly supported. It's recommended not to use them. Simply write the expression without wrapping eval() around it.
The operators are evaluated in this precedence:
Table 5.1. Operator precedence
| Operator type | Operators | Notes | 
|---|---|---|
| (nested) property access | . | Not normal Java semantics | 
| List/Map access | [ ] | Not normal Java semantics | 
| constraint binding | : | Not normal Java semantics | 
| multiplicative | */% | |
| additive | +- | |
| shift | <<>>>>> | |
| relational | <><=>=instanceof | |
| equality | ==!= | Does not use normal Java (not) same semantics: uses (not) equals semantics instead. | 
| non-short circuiting AND | & | |
| non-short circuiting exclusive OR | ^ | |
| non-short circuiting inclusive OR | | | |
| logical AND | && | |
| logical OR | || | |
| ternary | ? : | |
| Comma separated AND | , | Not normal Java semantics | 
Patterns now support positional arguments on type declarations.
Positional arguments are ones where you don't need to specify the field name, as the position maps to a known named field. i.e. Person( name == "mark" ) can be rewritten as Person( "mark"; ). The semicolon ';' is important so that the engine knows that everything before it is a positional argument. Otherwise we might assume it was a boolean expression, which is how it could be interpretted after the semicolon. You can mix positional and named arguments on a pattern by using the semicolon ';' to separate them. Any variables used in a positional that have not yet been bound will be bound to the field that maps to that position.
declare Cheese
    name : String
    shop : String
    price : int
end
Example patterns, with two constraints and a binding. Remember semicolon ';' is used to differentiate the positional section from the named argument section. Variables and literals and expressions using just literals are supported in posional arguments, but not variables. Positional arguments are always resolved using unification.
Cheese( "stilton", "Cheese Shop", p; ) Cheese( "stilton", "Cheese Shop"; p : price ) Cheese( "stilton"; shop == "Cheese Shop", p : price ) Cheese( name == "stilton"; shop == "Cheese Shop", p : price )
Positional arguments that are given a previously declared binding will consrain against that using unification; these are referred to as input arguments. If the binding does not yet exist, it will create the declaration binding it to the field represented by the position argument; these are referred to as output arguments.
The Conditional Element "and" is used to
        group other Conditional Elements into a logical conjunction. Drools
        supports both prefix and and infix
        and.
Traditional infix and is supported:
//infixAnd Cheese( cheeseType : type ) and Person( favouriteCheese == cheeseType )
Explicit grouping with parentheses is also supported:
//infixAnd with grouping
( Cheese( cheeseType : type ) and
  ( Person( favouriteCheese == cheeseType ) or 
    Person( favouriteCheese == cheeseType ) )The symbol && (as an alternative to
          and) is deprecated. But it is still supported in
          the syntax for backwards compatibility.
Prefix and is also supported:
(and Cheese( cheeseType : type )
     Person( favouriteCheese == cheeseType ) )The root element of the LHS is an implicit prefix
        and and doesn't need to be specified:
Example 5.46. implicit root prefixAnd
when
    Cheese( cheeseType : type )
    Person( favouriteCheese == cheeseType )
then
    ...The Conditional Element or is used to group
        other Conditional Elements into a logical disjunction. Drools supports
        both prefix or and infix
        or.
Traditional infix or is supported:
//infixOr Cheese( cheeseType : type ) or Person( favouriteCheese == cheeseType )
Explicit grouping with parentheses is also supported:
//infixOr with grouping
( Cheese( cheeseType : type ) or
  ( Person( favouriteCheese == cheeseType ) and
    Person( favouriteCheese == cheeseType ) )The symbol || (as an alternative to
          or) is deprecated. But it is still supported in
          the syntax for backwards compatibility.
Prefix or is also supported:
(or Person( sex == "f", age > 60 )
    Person( sex == "m", age > 65 )The behavior of the Conditional Element or
          is different from the connective || for
          constraints and restrictions in field constraints. The engine
          actually has no understanding of the Conditional Element
          or. Instead, via a number of different logic
          transformations, a rule with or is rewritten as a
          number of subrules. This process ultimately results in a rule that
          has a single or as the root node and one subrule
          for each of its CEs. Each subrule can activate and fire like any
          normal rule; there is no special behavior or interaction between
          these subrules. - This can be most confusing to new rule
          authors.
The Conditional Element or also allows for
        optional pattern binding. This means that each resulting subrule will
        bind its pattern to the pattern binding. Each pattern must be bound
        separately, using eponymous variables:
pensioner : ( Person( sex == "f", age > 60 ) or Person( sex == "m", age > 65 ) )
(or pensioner : Person( sex == "f", age > 60 ) 
    pensioner : Person( sex == "m", age > 65 ) )Since the conditional element or results in
        multiple subrule generation, one for each possible logically outcome,
        the example above would result in the internal generation of two
        rules. These two rules work independently within the Working Memory,
        which means both can match, activate and fire - there is no
        shortcutting.
The best way to think of the conditional element
        or is as a shortcut for generating two or more
        similar rules. When you think of it that way, it's clear that for a
        single rule there could be multiple activations if two or more terms
        of the disjunction are true.
The CE not is first order logic's
        non-existential quantifier and checks for the non-existence of
        something in the Working Memory. Think of "not" as meaning "there must
        be none of...".
The keyword not may be followed by
        parentheses around the CEs that it applies to. In the simplest case of
        a single pattern (like below) you may optionally omit the
        parentheses.
Example 5.48. No red Busses
// Brackets are optional:
not Bus(color == "red")
// Brackets are optional:
not ( Bus(color == "red", number == 42) )
// "not" with nested infix and - two patterns,
// brackets are requires:
not ( Bus(color == "red") and
      Bus(color == "blue") )The CE exists is first order logic's
        existential quantifier and checks for the existence of something in
        the Working Memory. Think of "exists" as meaning "there is at least
        one..". It is different from just having the pattern on its own, which
        is more like saying "for each one of...". If you use
        exists with a pattern, the rule will only activate
        at most once, regardless of how much data there is in working memory
        that matches the condition inside of the exists
        pattern. Since only the existence matters, no bindings will be
        established.
The keyword exists must be followed by
        parentheses around the CEs that it applies to. In the simplest case of
        a single pattern (like below) you may omit the parentheses.
Example 5.50. At least one red Bus
exists Bus(color == "red")
// brackets are optional:
exists ( Bus(color == "red", number == 42) )
// "exists" with nested infix and,
// brackets are required:
exists ( Bus(color == "red") and
         Bus(color == "blue") )The Conditional Element forall completes the
        First Order Logic support in Drools. The Conditional Element
        forall evaluates to true when all facts that match
        the first pattern match all the remaining patterns. Example:
rule "All English buses are red"
when
    forall( $bus : Bus( type == 'english') 
                   Bus( this == $bus, color = 'red' ) )
then
    # all english buses are red
endIn the above rule, we "select" all Bus objects whose type is "english". Then, for each fact that matches this pattern we evaluate the following patterns and if they match, the forall CE will evaluate to true.
To state that all facts of a given type in the working memory
        must match a set of constraints, forall can be
        written with a single pattern for simplicity. Example:
Example 5.51. Single Pattern Forall
rule "All Buses are Red"
when
    forall( Bus( color == 'red' ) )
then
    # all asserted Bus facts are red
endAnother example shows multiple patterns inside the
        forall:
Example 5.52. Multi-Pattern Forall
rule "all employees have health and dental care programs"
when
    forall( $emp : Employee()
            HealthCare( employee == $emp )
            DentalCare( employee == $emp )
          )
then
    # all employees have health and dental care
endForall can be nested inside other CEs. For instance,
        forall can be used inside a not
        CE. Note that only single patterns have optional parentheses, so that
        with a nested forall parentheses must be
        used:
Example 5.53. Combining Forall with Not CE
rule "not all employees have health and dental care"
when 
    not ( forall( $emp : Employee()
                  HealthCare( employee == $emp )
                  DentalCare( employee == $emp ) ) 
        )
then
    # not all employees have health and dental care
endAs a side note, forall( p1 p2 p3...) is equivalent
        to writing:
not(p1 and not(and p2 p3...))
Also, it is important to note that forall is
        a scope delimiter. Therefore, it can use any
        previously bound variable, but no variable bound inside it will be
        available for use outside of it.
The Conditional Element from enables users to
        specify an arbitrary source for data to be matched by LHS patterns.
        This allows the engine to reason over data not in the Working Memory.
        The data source could be a sub-field on a bound variable or the
        results of a method call. It is a powerful construction that allows
        out of the box integration with other application components and
        frameworks. One common example is the integration with data retrieved
        on-demand from databases using hibernate named queries.
The expression used to define the object source is any expression that follows regular MVEL syntax. Therefore, it allows you to easily use object property navigation, execute method calls and access maps and collections elements.
Here is a simple example of reasoning and binding on another pattern sub-field:
rule "validate zipcode"
when
    Person( $personAddress : address ) 
    Address( zipcode == "23920W") from $personAddress 
then
    # zip code is ok
endWith all the flexibility from the new expressiveness in the Drools engine you can slice and dice this problem many ways. This is the same but shows how you can use a graph notation with the 'from':
rule "validate zipcode"
when
    $p : Person( ) 
    $a : Address( zipcode == "23920W") from $p.address 
then
    # zip code is ok
endPrevious examples were evaluations using a single pattern. The
        CE from also support object sources that return a
        collection of objects. In that case, from will
        iterate over all objects in the collection and try to match each of
        them individually. For instance, if we want a rule that applies 10%
        discount to each item in an order, we could do:
rule "apply 10% discount to all items over US$ 100,00 in an order"
when
    $order : Order()
    $item  : OrderItem( value > 100 ) from $order.items
then
    # apply discount to $item
endThe above example will cause the rule to fire once for each item whose value is greater than 100 for each given order.
You must take caution, however, when using
        from, especially in conjunction with the
        lock-on-active rule attribute as it may produce
        unexpected results. Consider the example provided earlier, but now
        slightly modified as follows:
rule "Assign people in North Carolina (NC) to sales region 1"
ruleflow-group "test"
lock-on-active true
when
    $p : Person( ) 
    $a : Address( state == "NC") from $p.address 
then
    modify ($p) {} #Assign person to sales region 1 in a modify block
end
rule "Apply a discount to people in the city of Raleigh"
ruleflow-group "test"
lock-on-active true
when
    $p : Person( ) 
    $a : Address( city == "Raleigh") from $p.address 
then
    modify ($p) {} #Apply discount to person in a modify block
endIn the above example, persons in Raleigh, NC should be assigned to sales region 1 and receive a discount; i.e., you would expect both rules to activate and fire. Instead you will find that only the second rule fires.
If you were to turn on the audit log, you would also see that
        when the second rule fires, it deactivates the first rule. Since the
        rule attribute lock-on-active prevents a rule from
        creating new activations when a set of facts change, the first rule
        fails to reactivate. Though the set of facts have not changed, the use
        of from returns a new fact for all intents and
        purposes each time it is evaluated.
First, it's important to review why you would use the above
        pattern. You may have many rules across different rule-flow groups.
        When rules modify working memory and other rules downstream of your
        RuleFlow (in different rule-flow groups) need to be reevaluated, the
        use of modify is critical. You don't, however, want
        other rules in the same rule-flow group to place activations on one
        another recursively. In this case, the no-loop
        attribute is ineffective, as it would only prevent a rule from
        activating itself recursively. Hence, you resort to
        lock-on-active.
There are several ways to address this issue:
Avoid the use of from when you can assert
            all facts into working memory or use nested object references in
            your constraint expressions (shown below).
Place the variable assigned used in the modify block as the last sentence in your condition (LHS).
Avoid the use of lock-on-active when you
            can explicitly manage how rules within the same rule-flow group
            place activations on one another (explained below).
The preferred solution is to minimize use of
        from when you can assert all your facts into
        working memory directly. In the example above, both the Person and
        Address instance can be asserted into working memory. In this case,
        because the graph is fairly simple, an even easier solution is to
        modify your rules as follows:
rule "Assign people in North Carolina (NC) to sales region 1"
ruleflow-group "test"
lock-on-active true
when
    $p : Person(address.state == "NC" )  
then
    modify ($p) {} #Assign person to sales region 1 in a modify block
end
rule "Apply a discount to people in the city of Raleigh"
ruleflow-group "test"
lock-on-active true
when
    $p : Person(address.city == "Raleigh" )  
then
    modify ($p) {} #Apply discount to person in a modify block
endNow, you will find that both rules fire as expected. However, it
        is not always possible to access nested facts as above. Consider an
        example where a Person holds one or more Addresses and you wish to use
        an existential quantifier to match people with at least one address
        that meets certain conditions. In this case, you would have to resort
        to the use of from to reason over the
        collection.
There are several ways to use from to achieve
        this and not all of them exhibit an issue with the use of
        lock-on-active. For example, the following use of
        from causes both rules to fire as expected:
rule "Assign people in North Carolina (NC) to sales region 1"
ruleflow-group "test"
lock-on-active true
when
    $p : Person($addresses : addresses)
    exists (Address(state == "NC") from $addresses)  
then
    modify ($p) {} #Assign person to sales region 1 in a modify block
end
rule "Apply a discount to people in the city of Raleigh"
ruleflow-group "test"
lock-on-active true
when
    $p : Person($addresses : addresses)
    exists (Address(city == "Raleigh") from $addresses)  
then
    modify ($p) {} #Apply discount to person in a modify block
endHowever, the following slightly different approach does exhibit the problem:
rule "Assign people in North Carolina (NC) to sales region 1"
ruleflow-group "test"
lock-on-active true
when
    $assessment : Assessment()
    $p : Person()
    $addresses : List() from $p.addresses
    exists (Address( state == "NC") from $addresses) 
then
    modify ($assessment) {} #Modify assessment in a modify block
end
rule "Apply a discount to people in the city of Raleigh"
ruleflow-group "test"
lock-on-active true
when
    $assessment : Assessment()
    $p : Person()
    $addresses : List() from $p.addresses 
    exists (Address( city == "Raleigh") from $addresses)
then
    modify ($assessment) {} #Modify assessment in a modify block
endIn the above example, the $addresses variable is returned from
        the use of from. The example also introduces a new
        object, assessment, to highlight one possible solution in this case.
        If the $assessment variable assigned in the condition (LHS) is moved
        to the last condition in each rule, both rules fire as
        expected.
Though the above examples demonstrate how to combine the use of
        from with lock-on-active where
        no loss of rule activations occurs, they carry the drawback of placing
        a dependency on the order of conditions on the LHS. In addition, the
        solutions present greater complexity for the rule author in terms of
        keeping track of which conditions may create issues.
A better alternative is to assert more facts into working
        memory. In this case, a person's addresses may be asserted into
        working memory and the use of from would not be
        necessary.
There are cases, however, where asserting all data into working
        memory is not practical and we need to find other solutions. Another
        option is to reevaluate the need for
        lock-on-active. An alternative to
        lock-on-active is to directly manage how rules
        within the same rule-flow group activate one another by including
        conditions in each rule that prevent rules from activating each other
        recursively when working memory is modified. For example, in the case
        above where a discount is applied to citizens of Raleigh, a condition
        may be added to the rule that checks whether the discount has already
        been applied. If so, the rule does not activate.
The Conditional Element collect allows rules
        to reason over a collection of objects obtained from the given source
        or from the working memory. In First Oder Logic terms this is the
        cardinality quantifier. A simple example:
import java.util.ArrayList
rule "Raise priority if system has more than 3 pending alarms"
when
    $system : System()
    $alarms : ArrayList( size >= 3 )
              from collect( Alarm( system == $system, status == 'pending' ) )
then
    # Raise priority, because system $system has
    # 3 or more alarms pending. The pending alarms
    # are $alarms.
endIn the above example, the rule will look for all pending alarms in the working memory for each given system and group them in ArrayLists. If 3 or more alarms are found for a given system, the rule will fire.
The result pattern of collect can be any
        concrete class that implements the java.util.Collection
        interface and provides a default no-arg public constructor. This means
        that you can use Java collections like ArrayList, LinkedList, HashSet,
        etc., or your own class, as long as it implements the
        java.util.Collection interface and provide a default
        no-arg public constructor.
Both source and result patterns can be constrained as any other pattern.
Variables bound before the collect CE are in
        the scope of both source and result patterns and therefore you can use
        them to constrain both your source and result patterns. But note that
        collect is a scope delimiter for bindings, so that
        any binding made inside of it is not available for use outside of
        it.
Collect accepts nested from CEs. The
        following example is a valid use of "collect":
import java.util.LinkedList;
rule "Send a message to all mothers"
when
    $town : Town( name == 'Paris' )
    $mothers : LinkedList() 
               from collect( Person( gender == 'F', children > 0 ) 
                             from $town.getPeople() 
                           )
then
    # send a message to all mothers
endThe Conditional Element accumulate is a more
        flexible and powerful form of collect, in the sense
        that it can be used to do what collect does and
        also achieve results that the CE collect is not
        capable of doing. Basically, what it does is that it allows a rule to
        iterate over a collection of objects, executing custom actions for
        each of the elements, and at the end it returns a result
        object.
Accumulate supports both the use of pre-defined accumulate functions, or the use of inline custom code. Inline custom code should be avoided though, as it is extremely hard to maintain, and frequently leads to code duplication. Accumulate functions are easier to test and reuse.
The accumulate CE is a very powerful CE, but it gets real declarative and easy to use when using predefined functions that are known as Accumulate Functions. They work exactly like accumulate, but instead of explicitly writing custom code in every accumulate CE, the user can use predefined code for common operations.
For instance, a rule to apply a 10% discount on orders over $100 could be written in the following way, using Accumulate Functions:
rule "Apply 10% discount to orders over US$ 100,00"
when
    $order : Order()
    $total : Number( doubleValue > 100 ) 
             from accumulate( OrderItem( order == $order, $value : value ),
                              sum( $value ) )
then
    # apply discount to $order
endIn the above example, sum is an Accumulate Function and will sum the $value of all OrderItems and return the result.
Drools ships with the following built-in accumulate functions:
average
min
max
count
sum
collectList
collectSet
These common functions accept any expression as input. For instance, if someone wants to calculate the average profit on all items of an order, a rule could be written using the average function:
rule "Average profit"
when
    $order : Order()
    $profit : Number() 
              from accumulate( OrderItem( order == $order, $cost : cost, $price : price )
                               average( 1 - $cost / $price ) )
then
    # average profit for $order is $profit
endAccumulate Functions are all pluggable. That means that if
          needed, custom, domain specific functions can easily be added to the
          engine and rules can start to use them without any restrictions. To
          implement a new Accumulate Functions all one needs to do is to
          create a Java class that implements the
          org.drools.runtime.rule.TypedAccumulateFunction
          interface and add a line to the configuration file or set a system
          property to let the engine know about the new function. As an
          example of an Accumulate Function implementation, the following is
          the implementation of the average
          function:
/**
* An implementation of an accumulator capable of calculating average values
*/
public class AverageAccumulateFunction implements AccumulateFunction {
public void readExternal(ObjectInput in) throws IOException, ClassNotFoundException {
}
public void writeExternal(ObjectOutput out) throws IOException {
}
public static class AverageData implements Externalizable {
public int count = 0;
public double total = 0;
public AverageData() {}
public void readExternal(ObjectInput in) throws IOException, ClassNotFoundException {
count = in.readInt();
total = in.readDouble();
}
public void writeExternal(ObjectOutput out) throws IOException {
out.writeInt(count);
out.writeDouble(total);
}
}
/* (non-Javadoc)
* @see org.drools.base.accumulators.AccumulateFunction#createContext()
*/
public Serializable createContext() {
return new AverageData();
}
/* (non-Javadoc)
* @see org.drools.base.accumulators.AccumulateFunction#init(java.lang.Object)
*/
public void init(Serializable context) throws Exception {
AverageData data = (AverageData) context;
data.count = 0;
data.total = 0;
}
/* (non-Javadoc)
* @see org.drools.base.accumulators.AccumulateFunction#accumulate(java.lang.Object, java.lang.Object)
*/
public void accumulate(Serializable context,
Object value) {
AverageData data = (AverageData) context;
data.count++;
data.total += ((Number) value).doubleValue();
}
/* (non-Javadoc)
* @see org.drools.base.accumulators.AccumulateFunction#reverse(java.lang.Object, java.lang.Object)
*/
public void reverse(Serializable context,
Object value) throws Exception {
AverageData data = (AverageData) context;
data.count--;
data.total -= ((Number) value).doubleValue();
}
/* (non-Javadoc)
* @see org.drools.base.accumulators.AccumulateFunction#getResult(java.lang.Object)
*/
public Object getResult(Serializable context) throws Exception {
AverageData data = (AverageData) context;
return new Double( data.count == 0 ? 0 : data.total / data.count );
}
/* (non-Javadoc)
* @see org.drools.base.accumulators.AccumulateFunction#supportsReverse()
*/
public boolean supportsReverse() {
return true;
}
/**
* {@inheritDoc}
*/
public Class< ? > getResultType() {
return Number.class;
}
}
The code for the function is very simple, as we could expect, as all the "dirty" integration work is done by the engine. Finally, to plug the function into the engine, we added it to the configuration file:
drools.accumulate.function.average = org.drools.base.accumulators.AverageAccumulateFunction
Here, "drools.accumulate.function." is a prefix that must always be used, "average" is how the function will be used in the rule file, and "org.drools.base.accumulators.AverageAccumulateFunction" is the fully qualified name of the class that implements the function behavior.
The use of accumulate with inline custom code is not a good practice for several reasons, including dificulties on maintaining and testing rules that use them, as well as the inability of reusing that code. Implementing your own accumulate functions is very simple and straightforward, they are easy to unit test and to use. This form of accumulate is supported for backward compatibility only.
The general syntax of the accumulate CE
          with inline custom code is:
<result pattern>from accumulate(<source pattern>,init(<init code>),action(<action code>),reverse(<reverse code>),result(<result expression>) )
The meaning of each of the elements is the following:
<source pattern>: the source pattern is a regular pattern that the engine will try to match against each of the source objects.
<init code>: this is a semantic block of code in the selected dialect that will be executed once for each tuple, before iterating over the source objects.
<action code>: this is a semantic block of code in the selected dialect that will be executed for each of the source objects.
<reverse code>: this is an optional semantic block of code in the selected dialect that if present will be executed for each source object that no longer matches the source pattern. The objective of this code block is to undo any calculation done in the <action code> block, so that the engine can do decremental calculation when a source object is modified or retracted, hugely improving performance of these operations.
<result expression>: this is a semantic expression in the selected dialect that is executed after all source objects are iterated.
<result pattern>: this is a
              regular pattern that the engine tries to match against the
              object returned from the <result
              expression>. If it matches, the
              accumulate conditional element evaluates to
              true and the engine proceeds with the
              evaluation of the next CE in the rule. If it does not matches,
              the accumulate CE evaluates to
              false and the engine stops evaluating CEs
              for that rule.
It is easier to understand if we look at an example:
rule "Apply 10% discount to orders over US$ 100,00"
when
    $order : Order()
    $total : Number( doubleValue > 100 ) 
             from accumulate( OrderItem( order == $order, $value : value ),
                              init( double total = 0; ),
                              action( total += $value; ),
                              reverse( total -= $value; ),
                              result( total ) )
then
    # apply discount to $order
endIn the above example, for each Order in the
          Working Memory, the engine will execute the init
          code initializing the total variable to zero. Then it
          will iterate over all OrderItem objects for that order,
          executing the action for each one (in the
          example, it will sum the value of all items into the total
          variable). After iterating over all OrderItem objects,
          it will return the value corresponding to the result
          expression (in the above example, the value of variable
          total). Finally, the engine will try to match the
          result with the Number pattern, and if the double value
          is greater than 100, the rule will fire.
The example used Java as the semantic dialect, and as such, note that the usage of the semicolon as statement delimiter is mandatory in the init, action and reverse code blocks. The result is an expression and, as such, it does not admit ';'. If the user uses any other dialect, he must comply to that dialect's specific syntax.
As mentioned before, the reverse code is optional, but it is strongly recommended that the user writes it in order to benefit from the improved performance on update and retract.
The accumulate CE can be used to execute
          any action on source objects. The following example instantiates and
          populates a custom object:
rule "Accumulate using custom objects"
when
    $person   : Person( $likes : likes )
    $cheesery : Cheesery( totalAmount > 100 )
                from accumulate( $cheese : Cheese( type == $likes ),
                                 init( Cheesery cheesery = new Cheesery(); ),
                                 action( cheesery.addCheese( $cheese ); ),
                                 reverse( cheesery.removeCheese( $cheese ); ),
                                 result( cheesery ) );
then
    // do something
endThe accumulate CE now supports multiple functions. For instance, if one needs to find the minimum, maximum and average value for the same set of data, instead of having to repeat the accumulate statement 3 times, a single accumulate can be used.
rule "Max, min and average" 
    when
        accumulate( Cheese( $price : price ),
                    $max : max( $price ),
                    $min : min( $price ),
                    $avg : average( $price ) )
    then
        // do something
end The conditional element eval is essentially a
      catch-all which allows any semantic code (that returns a primitive
      boolean) to be executed. This code can refer to variables that were
      bound in the LHS of the rule, and functions in the rule package. Overuse
      of eval reduces the declarativeness of your rules and can result in a
      poorly performing engine. While eval can be used
      anywhere in the patterns, the best practice is to add it as the last
      conditional element in the LHS of a rule.
Evals cannot be indexed and thus are not as efficient as Field Constraints. However this makes them ideal for being used when functions return values that change over time, which is not allowed within Field Constraints.
For folks who are familiar with Drools 2.x lineage, the old Drools parameter and condition tags are equivalent to binding a variable to an appropriate type, and then using it in an eval node.
p1 : Parameter() p2 : Parameter() eval( p1.getList().containsKey( p2.getItem() ) )
p1 : Parameter() p2 : Parameter() // call function isValid in the LHS eval( isValid( p1, p2 ) )
The Right Hand Side (RHS) is a common name for the consequence or action part of the rule; this part should contain a list of actions to be executed. It is bad practice to use imperative or conditional code in the RHS of a rule; as a rule should be atomic in nature - "when this, then do this", not "when this, maybe do this". The RHS part of a rule should also be kept small, thus keeping it declarative and readable. If you find you need imperative and/or conditional code in the RHS, then maybe you should be breaking that rule down into multiple rules. The main purpose of the RHS is to insert, retractor modify working memory data. To assist with that there are a few convenience methods you can use to modify working memory; without having to first reference a working memory instance.
update(object,
      handle); will tell the engine that an
      object has changed (one that has been bound to something on the LHS) and
      rules may need to be reconsidered.
update(object);
      can also be used; here the Knowledge Helper will look up the facthandle
      for you, via an identity check, for the passed object. (Note that if you
      provide Property Change Listeners to your Java beans that you are
      inserting into the engine, you can avoid the need to call
      update() when the object changes.)
insert(new
      Something()); will place a new
      object of your creation into the Working Memory.
insertLogical(new
      Something()); is similar to
      insert, but the object will be automatically retracted when there are no
      more facts to support the truth of the currently firing rule.
retract(handle);
      removes an object from Working Memory.
These convenience methods are basically macros that provide short
      cuts to the KnowledgeHelper instance that lets you access
      your Working Memory from rules files. The predefined variable
      drools of type KnowledgeHelper lets you call
      several other useful methods. (Refer to the KnowledgeHelper
      interface documentation for more advanced operations).
The call drools.halt() terminates rule execution
          immediately. This is required for returning control to the point
          whence the current session was put to work with
          fireUntilHalt().
Methods insert(Object o), update(Object
          o) and retract(Object o) can be called on
          drools as well, but due to their frequent use they can
          be called without the object reference.
drools.getWorkingMemory() returns the
          WorkingMemory object.
drools.setFocus( String s) sets the focus to the
          specified agenda group.
drools.getRule().getName(), called from a rule's
          RHS, returns the name of the rule.
drools.getTuple() returns the Tuple that matches
          the currently executing rule, and
          drools.getActivation() delivers the corresponding
          Activation. (These calls are useful for logging and debugging
          purposes.)
The full Knowledge Runtime API is exposed through another
      predefined variable, kcontext, of type
      KnowledgeContext. Its method
      getKnowledgeRuntime() delivers an object of type
      KnowledgeRuntime, which, in turn, provides access to a
      wealth of methods, many of which are quite useful for coding RHS
      logic.
The call kcontext.getKnowledgeRuntime().halt()
          terminates rule execution immediately.
The accessor getAgenda() returns a reference to
          this session's Agenda, which in turn provides access to
          the various rule groups: activation groups, agenda groups, and rule
          flow groups. A fairly common paradigm is the activation of some
          agenda group, which could be done with the lengthy call:
// give focus to the agenda group CleanUp
kcontext.getKnowledgeRuntime().getAgenda().getAgendaGroup( "CleanUp" ).setFocus();
(You can achieve the same using drools.setFocus(
          "CleanUp" ).)
To run a query, you call getQueryResults(String
          query), whereupon you may process the results, as explained
          in section “Query”.
A set of methods dealing with event management lets you, among other things, add and remove event listeners for the Working Memory and the Agenda.
MethodgetKnowledgeBase() returns the
          KnowledgeBase object, the backbone of all the Knowledge
          in your system, and the originator of the current session.
You can manage globals with setGlobal(...),
          getGlobal(...) and getGlobals().
Method getEnvironment() returns the runtime's
          Environment which works much like what you know as your
          operating system's environment.
This language extension provides a structured approach to fact
      updates. It combines the update operation with a number of setter calls
      to change the object's fields. This is the syntax schema for the
      modify statement:
modify (<fact-expression>) {<expression>[,<expression>]*}
The parenthesized <fact-expression> must yield a fact object reference. The expression list in the block should consist of setter calls for the given object, to be written without the usual object reference, which is automatically prepended by the compiler.
The example illustrates a simple fact modification.
Example 5.54. A modify statement
rule "modify stilton"
when
    $stilton : Cheese(type == "stilton")
then
    modify( $stilton ){
        setPrice( 20 ),
        setAge( "overripe" )
    }
endDrools attempts to preserve numbers in their primitive or object wrapper form, so a variable bound to an int primitive when used in a code block or expression will no longer need manual unboxing; unlike Drools 3.0 where all primitives were autoboxed, requiring manual unboxing. A variable bound to an object wrapper will remain as an object; the existing JDK 1.5 and JDK 5 rules to handle auto-boxing and unboxing apply in this case. When evaluating field constraints, the system attempts to coerce one of the values into a comparable format; so a primitive is comparable to an object wrapper.
A query is a simple way to search the working memory for facts that match the stated conditions. Therefore, it contains only the structure of the LHS of a rule, so that you specify neither "when" nor "then". A query has an optional set of parameters, each of which can be optionally typed. If the type is not given, the type Object is assumed. The engine will attempt to coerce the values as needed. Query names are global to the KnowledgeBase; so do not add queries of the same name to different packages for the same RuleBase.
To return the results use
  ksession.getQueryResults("name"), where "name" is the query's
  name. This returns a list of query results, which allow you to retrieve the
  objects that matched the query.
The first example presents a simple query for all the people over the age of 30. The second one, using parameters, combines the age limit with a location.
Example 5.55. Query People over the age of 30
query "people over the age of 30" 
    person : Person( age > 30 )
endExample 5.56. Query People over the age of x, and who live in y
query "people over the age of x"  (int x, String y)
    person : Person( age > x, location == y )
endWe iterate over the returned QueryResults using a standard "for" loop. Each element is a QueryResultsRow which we can use to access each of the columns in the tuple. These columns can be accessed by bound declaration name or index position.
Example 5.57. Query People over the age of 30
QueryResults results = ksession.getQueryResults( "people over the age of 30" );
System.out.println( "we have " + results.size() + " people over the age  of 30" );
System.out.println( "These people are are over 30:" );
for ( QueryResultsRow row : results ) {
    Person person = ( Person ) row.get( "person" );
    System.out.println( person.getName() + "\n" );
}Support for positional syntax has been added for more compact code. By default the the declared type order in the type declaration matches the argument position. But it possible to override these using the @position annotation.
declare Cheese
    name : String @position(1)
    shop : String @position(2)
    price : int @position(0)
end
The @Position annotation, in the org.drools.definition.type package, can be used to annotate original pojos on the classpath. Currently only fields on classes can be annotated. Inheritence of classes is supported, but not interfaces of methods yet.
Queries can now call other queries, this combined with optional query arguments provides deriviation query style backward chaining. Positional and mixed positional/named type is supported. Literal expressions can passed as query arguments, but at this stage you cannot mix expressions with variables. Here s an example of a query that calls another query. Note that 'z' here will always be an 'out' variable. The '?' symbol means the query is pull only, once the results are returned you will not received further results as the underlying data changes.
declare Location
    thing : String 
    location : String 
end
query isContainedIn( String x, String y ) 
    Location(x, y;)
    or 
    ( Location(z, y;) and ?isContainedIn(x, z;) )
endAs previously mentioned you can use live "open" queries to reactively receive changes over time from the query results, as the underlying data it queries against changes. Notice the "look" rule calls the query without using '?'.
query isContainedIn( String x, String y ) 
    Location(x, y;)
    or 
    ( Location(z, y;) and isContainedIn(x, z;) )
end
rule look when 
    Person( $l : likes ) 
    isContainedIn( $l, 'office'; )
then
   insertLogical( $l 'is in the office' );
end 
Drools supports unification for derivation queries, in short this means that arguments are optional. It is possible to call queries from java leaving arguments unspecified using the static field org.drools.runtime.rule.Variable.v - note you must use 'v' and not an alternative instanceof Variable. These are referred to as 'out' arguments. Note that the query itself does not declare at compile time whether an argument is in or an out, this can be defined purely at runtime on each use. The following example will return all objects contained in the office.
results = ksession.getQueryResults( "isContainedIn", new Object[] {  Variable.v, "office" } );
l = new ArrayList<List<String>>();
for ( QueryResultsRow r : results ) {
    l.add( Arrays.asList( new String[] { (String) r.get( "x" ), (String) r.get( "y" ) } ) );
}  
The algorithm uses stacks to handle recursion, so the method stack will not blow up.
The following is not yet suported:
List and Map unification
Variables for the fields of facts
Expression unification - pred( X, X + 1, X * Y / 7 )
Domain Specific Languages (or DSLs) are a way of creating a rule language that is dedicated to your problem domain. A set of DSL definitions consists of transformations from DSL "sentences" to DRL constructs, which lets you use of all the underlying rule language and engine features. Given a DSL, you write rules in DSL rule (or DSLR) files, which will be translated into DRL files.
DSL and DSLR files are plain text files, and you can use any text editor to create and modify them. But there are also DSL and DSLR editors, both in the IDE as well as in the web based BRMS, and you can use those as well, although they may not provide you with the full DSL functionality.
DSLs can serve as a layer of separation between rule authoring (and rule authors) and the technical intricacies resulting from the modelling of domain object and the rule engine's native language and methods. If your rules need to be read and validated by domain experts (such as business analysts, for instance) who are not programmers, you should consider using a DSL; it hides implementation details and focuses on the rule logic proper. DSL sentences can also act as "templates" for conditional elements and consequence actions that are used repeatedly in your rules, possibly with minor variations. You may define DSL sentences as being mapped to these repeated phrases, with parameters providing a means for accomodating those variations.
DSLs have no impact on the rule engine at runtime, they are just a compile time feature, requiring a special parser and transformer.
The Drools DSL mechanism allows you to customise conditional expressions and consequence actions. A global substitution mechanism ("keyword") is also available.
In the preceding example, [when] indicates the scope of
    the expression, i.e., whether it is valid for the LHS or the RHS of a rule. The
    part after the bracketed keyword is the expression that you use in the rule;
    typically a natural language expression, but it doesn't have to be. The
    part to the right of the equal sign ("=") is the mapping of the expression into
    the rule language. The form of this string depends on its destination, RHS or 
    LHS. If it is for the LHS, then it ought to be a term according to the regular
    LHS syntax; if it is for the RHS then it might be a Java statement.
Whenever the DSL parser matches a line from the rule file written in the
    DSL with an expression in the DSL definition, it performs three steps of
    string manipulation. First, it extracts the string values appearing where the
    expression contains variable names in braces (here: {colour}). Then,
    the values obtained from these captures are then interpolated wherever that name,
    again enclosed in braces, occurs on the right hand side of the mapping. Finally, the
    interpolated string replaces whatever was matched by the entire expression
    in the line of the DSL rule file.
Note that the expressions (i.e., the strings on the left hand side of the equal sign) are used as regular expressions in a pattern matching operation against a line of the DSL rule file, matching all or part of a line. This means you can use (for instance) a '?' to indicate that the preceding character is optional. One good reason to use this is to overcome variations in natural language phrases of your DSL. But, given that these expressions are regular expression patterns, this also means that all "magic" characters of Java's pattern syntax have to be escaped with a preceding backslash ('\').
It is important to note that the compiler transforms DSL rule files line by line. In the above example, all the text after "Something is " to the end of the line is captured as the replacement value for "{colour}", and this is used for interpolating the target string. This may not be exactly what you want. For instance, when you intend to merge different DSL expressions to generate a composite DRL pattern, you need to transform a DSLR line in several independent operations. The best way to achieve this is to ensure that the captures are surrounded by characteristic text - words or even single characters. As a result, the matching operation done by the parser plucks out a substring from somewhere within the line. In the example below, quotes are used as distinctive characters. Note that the characters that surround the capture are not included during interpolation, just the contents between them.
As a rule of thumb, use quotes for textual data that a rule editor
    may want to enter. You can also enclose the capture with words to ensure
    that the text is correctly matched. Both is illustrated by the following
    example. Note that a single line such as Something is "green" and
    another solid thing is now correctly expanded.
Example 5.59. Example with quotes
[when]something is "{colour}"=Something(colour=="{colour}")
[when]another {state} thing=OtherThing(state=="{state}"It is a good idea to avoid punctuation (other than quotes or apostrophes) in your DSL expressions as much as possible. The main reason is that punctuation is easy to forget for rule authors using your DSL. Another reason is that parentheses, the period and the question mark are magic characters, requiring escaping in the DSL definition.
In a DSL mapping, the braces "{" and "}" should only be used to enclose a variable definition or reference, resulting in a capture. If they should occur literally, either in the expression or within the replacement text on the right hand side, they must be escaped with a preceding backslash ("\"):
[then]do something= if (foo) \{ doSomething(); \}
    If braces "{" and "}" should appear in the replacement string of a DSL definition, escape them with a backslash ('\').
Example 5.60. Examples of DSL mapping entries
# This is a comment to be ignored.
[when]There is a person with name of "{name}"=Person(name=="{name}")
[when]Person is at least {age} years old and lives in "{location}"=
      Person(age >= {age}, location=="{location}")
[then]Log "{message}"=System.out.println("{message}");
[when]And = andGiven the above DSL examples, the following examples show the expansion of various DSLR snippets:
Example 5.61. Examples of DSL expansions
There is a person with name of "Kitty"
   ==> Person(name="Kitty")
Person is at least 42 years old and lives in "Atlanta"
   ==> Person(age >= 42, location="Atlanta")
Log "boo"
   ==> System.out.println("boo");
There is a person with name of "Bob" and Person is at least 30 years old and lives in "Utah"
   ==> Person(name="Bob") and Person(age >= 30, location="Utah")Don't forget that if you are capturing plain text from a DSL rule line and want to use it as a string literal in the expansion, you must provide the quotes on the right hand side of the mapping.
You can chain DSL expressions together on one line, as long as it is clear to the parser where one ends and the next one begins and where the text representing a parameter ends. (Otherwise you risk getting all the text until the end of the line as a parameter value.) The DSL expressions are tried, one after the other, according to their order in the DSL definition file. After any match, all remaining DSL expressions are investigated, too.
The resulting DRL text may consist of more than one line. Line ends
    are in the replacement text are written as \n.
A common requirement when writing rule conditions is to be able to add an arbitrary combination of constraints to a pattern. Given that a fact type may have many fields, having to provide an individual DSL statement for each combination would be plain folly.
The DSL facility allows you to add constraints to a pattern by a simple convention: if your DSL expression starts with a hyphen (minus character, "-") it is assumed to be a field constraint and, consequently, is is added to the last pattern line preceding it.
For an example, lets take look at class Cheese,
    with the following fields: type, price, age and country. We can
    express some LHS condition in normal DRL like the following
Cheese(age < 5, price == 20, type=="stilton", country=="ch")
The DSL definitions given below result in three DSL phrases which may be used to create any combination of constraint involving these fields.
[when]There is a Cheese with=Cheese()
[when]- age is less than {age}=age<{age}
[when]- type is '{type}'=type=='{type}'
[when]- country equal to '{country}'=country=='{country}'You can then write rules with conditions like the following:
There is a Cheese with
        - age is less than 42
        - type is 'stilton'The parser will pick up a line beginning with "-" and add it as a constraint to the preceding pattern, inserting a comma when it is required. For the preceding example, the resulting DRL is:
Cheese(age<42, type=='stilton')
Combining all all numeric fields with all relational operators (according to the DSL expression "age is less than..." in the preceding example) produces an unwieldy amount of DSL entries. But you can define DSL phrases for the various operators and even a generic expression that handles any field constraint, as shown below. (Notice that the expression definition contains a regular expression in addition to the variable name.)
[when][]is less than or equal to=<= [when][]is less than=< [when][]is greater than or equal to=>= [when][]is greater than=> [when][]is equal to=== [when][]equals=== [when][]There is a Cheese with=Cheese()[when][]- {field:\w*} {operator} {value:\d*}={field} {operator} {value}
Given these DSL definitions, you can write rules with conditions such as:
There is a Cheese with - age is less than 42 - rating is greater than 50 - type equals 'stilton'
In this specific case, a phrase such as "is less than" is replaced by
    <, and then the line matches the last DSL entry. This
    removes the hyphen, but the final result is still added as a constraint
    to the preceding pattern. After processing all of the lines, the resulting
    DRL text is:
Cheese(age<42, rating > 50, type=='stilton')
The order of the entries in the DSL is important if separate DSL expressions are intended to match the same line, one after the other.
A good way to get started is to write representative samples of the rules your application requires, and to test them as you develop. This will provide you with a stable framework of conditional elements and their constraints. Rules, both in DRL and in DSLR, refer to entities according to the data model representing the application data that should be subject to the reasoning process defined in rules. Notice that writing rules is generally easier if most of the data model's types are facts.
Given an initial set of rules, it should be possible to identify recurring or similar code snippets and to mark variable parts as parameters. This provides reliable leads as to what might be a handy DSL entry. Also, make sure you have a full grasp of the jargon the domain experts are using, and base your DSL phrases on this vocabulary.
You may postpone implementation decisions concerning conditions and actions during this first design phase by leaving certain conditional elements and actions in their DRL form by prefixing a line with a greater sign (">"). (This is also handy for inserting debugging statements.)
During the next development phase, you should find that the DSL configuration stabilizes pretty quickly. New rules can be written by reusing the existing DSL definitions, or by adding a parameter to an existing condition or consequence entry.
Try to keep the number of DSL entries small. Using parameters lets you apply the same DSL sentence for similar rule patterns or constraints. But do not exaggerate: authors using the DSL should still be able to identify DSL phrases by some fixed text.
A DSL file is a text file in a line-oriented format. Its entries are used for transforming a DSLR file into a file according to DRL syntax.
A line starting with "#" or "//" (with or without preceding white space) is treated as a comment. A comment line starting with "#/" is scanned for words requesting a debug option, see below.
Any line starting with an opening bracket ("[") is assumed to be the first line of a DSL entry definition.
Any other line is appended to the preceding DSL entry definition, with the line end replaced by a space.
A DSL entry consists of the following four parts:
A scope definition, written as one of the keywords "when" or "condition", "then" or "consequence", "*" and "keyword", enclosed in brackets ("[" and "]"). This indicates whether the DSL entry is valid for the condition or the consequence of a rule, or both. A scope indication of "keyword" means that the entry has global significance, i.e., it is recognized anywhere in a DSLR file.
A type definition, written as a Java class name, enclosed in brackets. This part is optional unless the the next part begins with an opening bracket. An empty pair of brackets is valid, too.
A DSL expression consists of a (Java) regular expression, with any number of embedded variable definitions, terminated by an equal sign ("="). A variable definition is enclosed in braces ("{" and "}"). It consists of a variable name and two optional attachements, separated by colons (":"). If there is one attachment, it is a regular expression for matching text that is to be assigned to the variable; if there are two attachments, the first one is a hint for the GUI editor and the second one the regular expression.
Note that all characters that are "magic" in regular expressions must be escaped with a preceding backslash ("\") if they should occur literally within the expression.
The remaining part of the line after the delimiting equal sign is the replacement text for any DSLR text matching the regular expression. It may contain variable references, i.e., a variable name enclosed in braces. Optionally, the variable name may be followed by an exclamation mark ("!") and a transformation function, see below.
Note that braces ("{" and "}") must be escaped with a preceding backslash ("\") if they should occur literally within the replacement string.
Debugging of DSL expansion can be turned on, selectively, by using a comment line starting with "#/" which may contain one or more words from the table presented below. The resulting output is written to standard output.
Table 5.2. Debug options for DSL expansion
| Word | Description | 
|---|---|
| result | Prints the resulting DRL text, with line numbers. | 
| steps | Prints each expansion step of condition and consequence lines. | 
| keyword | Dumps the internal representation of all DSL entries with scope "keyword". | 
| when | Dumps the internal representation of all DSL entries with scope "when" or "*". | 
| then | Dumps the internal representation of all DSL entries with scope "then" or "*". | 
| usage | Displays a usage statistic of all DSL entries. | 
Below are some sample DSL definitions, with comments describing the language features they illustrate.
# Comment: DSL examples
#/ debug: display result and usage
# keyword definition: replaces "regula" by "rule"
[keyword][]regula=rule
# conditional element: "T" or "t", "a" or "an", convert matched word
[when][][Tt]here is an? {entity:\w+}=
        ${entity!lc}: {entity!ucfirst} ()
# consequence statement: convert matched word, literal braces
[then][]update {entity:\w+}=modify( ${entity!lc} )\{ \}
The transformation of a DSLR file proceeds as follows:
The text is read into memory.
Each of the "keyword" entries is applied to the entire text. First, the regular expression from the keyword definition is modified by replacing white space sequences with a pattern matching any number of white space characters, and by replacing variable definitions with a capture made from the regular expression provided with the definition, or with the default (".*?"). Then, the DSLR text is searched exhaustively for occurrences of strings matching the modified regular expression. Substrings of a matching string corresponding to variable captures are extracted and replace variable references in the corresponding replacement text, and this text replaces the matching string in the DSLR text.
Sections of the DSLR text between "when" and "then", and "then" and "end", respectively, are located and processed in a uniform manner, line by line, as described below.
For a line, each DSL entry pertaining to the line's section is taken in turn, in the order it appears in the DSL file. Its regular expression part is modified: white space is replaced by a pattern matching any number of white space characters; variable definitions with a regular expression are replaced by a capture with this regular expression, its default being ".*?". If the resulting regular expression matches all or part of the line, the matched part is replaced by the suitably modified replacement text.
Modification of the replacement text is done by replacing variable references with the text corresponding to the regular expression capture. This text may be modified according to the string transformation function given in the variable reference; see below for details.
If there is a variable reference naming a variable that is not defined in the same entry, the expander substitutes a value bound to a variable of that name, provided it was defined in one of the preceding lines of the current rule.
If a DSLR line in a condition is written with a leading hyphen, the expanded result is inserted into the last line, which should contain a pattern CE, i.e., a type name followed by a pair of parentheses. if this pair is empty, the expanded line (which should contain a valid constraint) is simply inserted, otherwise a comma (",") is inserted beforehand.
If a DSLR line in a consequence is written with a leading hyphen, the expanded result is inserted into the last line, which should contain a "modify" statement, ending in a pair of braces ("{" and "}"). If this pair is empty, the expanded line (which should contain a valid method call) is simply inserted, otherwise a comma (",") is inserted beforehand.
It is currently not possible to use a line with a leading hyphen to insert text into other conditional element forms (e.g., "accumulate") or it may only work for the first insertion (e.g., "eval").
All string transformation functions are described in the following table.
Table 5.3. String transformation functions
| Name | Description | 
|---|---|
| uc | Converts all letters to upper case. | 
| lc | Converts all letters to lower case. | 
| ucfirst | Converts the first letter to upper case, and all other letters to lower case. | 
| num | Extracts all digits and "-" from the string. If the last two digits in the original string are preceded by "." or ",", a decimal period is inserted in the corresponding position. | 
| a?b/c | Compares the string with string a, and if they are equal, replaces it with b, otherwise with c. But c can be another triplet a, b, c, so that the entire structure is, in fact, a translation table. | 
The following DSL examples show how to use string transformation functions.
# definitions for conditions
[when][]There is an? {entity}=${entity!lc}: {entity!ucfirst}()
[when][]- with an? {attr} greater than {amount}={attr} <= {amount!num}
[when][]- with a {what} {attr}={attr} {what!positive?>0/negative?%lt;0/zero?==0/ERROR}A file containing a DSL definition is customarily given the extension
    .dsl. It is passed to the Knowledge Builder with 
    ResourceType.DSL. For a file using DSL definition, the extension
    .dslr should be used. The Knowledge Builder expects
    ResourceType.DSLR. The IDE, however, relies on file extensions
    to correctly recognize and work with your rules file.
The DSL must be passed to the Knowledge Builder ahead of any rules file using the DSL.
KnowledgeBuilder kBuilder = new KnowledgeBuilder(); Resource dsl = ResourceFactory.newClassPathResource( dslPath, getClass() ); kBuilder.add( dsl, ResourceType.DSL ); Resource dslr = ResourceFactory.newClassPathResource( dslrPath, getClass() ); kBuilder.add( dslr, ResourceType.DSLR );
For parsing and expanding a DSLR file the DSL configuration is read and supplied to the parser. Thus, the parser can "recognize" the DSL expressions and transform them into native rule language expressions.
As an option, Drools also supports a "native" rule language as an alternative to DRL. This allows you to capture and manage your rules as XML data. Just like the non-XML DRL format, the XML format is parsed into the internal "AST" representation - as fast as possible (using a SAX parser). There is no external transformation step required. All the features are available with XML that are available to DRL.
There are several scenarios that XML is desirable. However, we recommend that it is not a default choice, as XML is not readily human readable (unless you like headaches) and can create visually bloated rules.
If you do want to edit XML by hand, use a good schema aware editor that provides nice hierarchical views of the XML, ideally visually (commercial tools like XMLSpy, Oxygen etc are good, but cost money, but then so do headache tablets).
Other scenarios where you may want to use the XML format are if you have a tool that generates rules from some input (programmatically generated rules), or perhaps interchange from another rule language, or from another tool that emits XML (using XSLT you can easily transform between XML formats). Note you can always generate normal DRL as well.
Alternatively you may be embedding Drools in a product that already uses XML for configuration, so you would like the rules to be in an XML format. You may be creating your own rule language on XML - note that you can always use the AST objects directly to create your own rule language as well (the options are many, due to the open architecture).
A full W3C standards (XMLSchema) compliant XSD is provided that describes the XML language, which will not be repeated here verbatim. A summary of the language follows.
<?xml version="1.0" encoding="UTF-8"?>
<package name="com.sample"
xmlns="http://drools.org/drools-4.0"
xmlns:xs="http://www.w3.org/2001/XMLSchema-instance"
xs:schemaLocation="http://drools.org/drools-4.0 drools-4.0.xsd">
<import name="java.util.HashMap" />
<import name="org.drools.*" />
<global identifier="x" type="com.sample.X" />
<global identifier="yada" type="com.sample.Yada" />
<function return-type="void" name="myFunc">
<parameter identifier="foo" type="Bar" />
<parameter identifier="bada" type="Bing" />
<body>
System.out.println("hello world");
</body>
</function>
<rule name="simple_rule">
<rule-attribute name="salience" value="10" />
<rule-attribute name="no-loop" value="true" />
<rule-attribute name="agenda-group" value="agenda-group" />
<rule-attribute name="activation-group" value="activation-group" />
<lhs>
<pattern identifier="foo2" object-type="Bar" >
<or-constraint-connective>
<and-constraint-connective>
<field-constraint field-name="a">
<or-restriction-connective>
<and-restriction-connective>
<literal-restriction evaluator=">" value="60" />
<literal-restriction evaluator="<" value="70" />
</and-restriction-connective>
<and-restriction-connective>
<literal-restriction evaluator="<" value="50" />
<literal-restriction evaluator=">" value="55" />
</and-restriction-connective>
</or-restriction-connective>
</field-constraint>
<field-constraint field-name="a3">
<literal-restriction evaluator="==" value="black" />
</field-constraint>
</and-constraint-connective>
<and-constraint-connective>
<field-constraint field-name="a">
<literal-restriction evaluator="==" value="40" />
</field-constraint>
<field-constraint field-name="a3">
<literal-restriction evaluator="==" value="pink" />
</field-constraint>
</and-constraint-connective>
<and-constraint-connective>
<field-constraint field-name="a">
<literal-restriction evaluator="==" value="12"/>
</field-constraint>
<field-constraint field-name="a3">
<or-restriction-connective>
<literal-restriction evaluator="==" value="yellow"/>
<literal-restriction evaluator="==" value="blue" />
</or-restriction-connective>
</field-constraint>
</and-constraint-connective>
</or-constraint-connective>
</pattern>
<not>
<pattern object-type="Person">
<field-constraint field-name="likes">
<variable-restriction evaluator="==" identifier="type"/>
</field-constraint>
</pattern>
<exists>
<pattern object-type="Person">
<field-constraint field-name="likes">
<variable-restriction evaluator="==" identifier="type"/>
</field-constraint>
</pattern>
</exists>
</not>
<or-conditional-element>
<pattern identifier="foo3" object-type="Bar" >
<field-constraint field-name="a">
<or-restriction-connective>
<literal-restriction evaluator="==" value="3" />
<literal-restriction evaluator="==" value="4" />
</or-restriction-connective>
</field-constraint>
<field-constraint field-name="a3">
<literal-restriction evaluator="==" value="hello" />
</field-constraint>
<field-constraint field-name="a4">
<literal-restriction evaluator="==" value="null" />
</field-constraint>
</pattern>
<pattern identifier="foo4" object-type="Bar" >
<field-binding field-name="a" identifier="a4" />
<field-constraint field-name="a">
<literal-restriction evaluator="!=" value="4" />
<literal-restriction evaluator="!=" value="5" />
</field-constraint>
</pattern>
</or-conditional-element>
<pattern identifier="foo5" object-type="Bar" >
<field-constraint field-name="b">
<or-restriction-connective>
<return-value-restriction evaluator="==" >a4 + 1</return-value-restriction>
<variable-restriction evaluator=">" identifier="a4" />
<qualified-identifier-restriction evaluator="==">
org.drools.Bar.BAR_ENUM_VALUE
</qualified-identifier-restriction>
</or-restriction-connective>
</field-constraint>
</pattern>
<pattern identifier="foo6" object-type="Bar" >
<field-binding field-name="a" identifier="a4" />
<field-constraint field-name="b">
<literal-restriction evaluator="==" value="6" />
</field-constraint>
</pattern>
</lhs>
<rhs>
if ( a == b ) {
assert( foo3 );
} else {
retract( foo4 );
}
System.out.println( a4 );
</rhs>
</rule>
</package>
In the preceding XML text you will see the typical XML element, the package declaration, imports, globals, functions, and the rule itself. Most of the elements are self explanatory if you have some understanding of the Drools features.
The import elements import the types you wish to
      use in the rule.
The global elements define global objects that can
      be referred to in the rules.
The function contains a function declaration, for
      a function to be used in the rules. You have to specify a return type,
      a unique name and parameters, in the body goes a snippet of code.
The rule is discussed below.
Example 5.63. Detail of rule element
<rule name="simple_rule">
<rule-attribute name="salience" value="10" />
<rule-attribute name="no-loop" value="true" />
<rule-attribute name="agenda-group" value="agenda-group" />
<rule-attribute name="activation-group" value="activation-group" />
<lhs>
<pattern identifier="cheese" object-type="Cheese">
<from>
<accumulate>
<pattern object-type="Person"></pattern>
<init>
int total = 0;
</init>
<action>
total += $cheese.getPrice();
</action>
<result>
new Integer( total ) );
</result>
</accumulate>
</from>
</pattern>
<pattern identifier="max" object-type="Number">
<from>
<accumulate>
<pattern identifier="cheese" object-type="Cheese"></pattern>
<external-function evaluator="max" expression="$price"/>
</accumulate>
</from>
</pattern>
</lhs>
<rhs>
list1.add( $cheese );
</rhs>
</rule>
In the above detail of the rule we see that the rule has LHS and RHS (conditions and consequence) sections. The RHS is simple, it is just a block of semantic code that will be executed when the rule is activated. The LHS is slightly more complicated as it contains nested elements for conditional elements, constraints and restrictions.
A key element of the LHS is the Pattern element. This allows you to specify a type (class) and perhaps bind a variable to an instance of that class. Nested under the pattern object are constraints and restrictions that have to be met. The Predicate and Return Value constraints allow Java expressions to be embedded.
That leaves the conditional elements, not, exists, and, or etc. They work like their DRL counterparts. Elements that are nested under and an "and" element are logically "anded" together. Likewise with "or" (and you can nest things further). "Exists" and "Not" work around patterns, to check for the existence or nonexistence of a fact meeting the pattern's constraints.
The Eval element allows the execution of a valid snippet of Java code - as long as it evaluates to a boolean (do not end it with a semi-colon, as it is just a fragment) - this can include calling a function. The Eval is less efficient than the columns, as the rule engine has to evaluate it each time, but it is a "catch all" feature for when you can express what you need to do with Column constraints.
The Drools 2.x legacy XML format is no longer supported by Drools XML parser
Drools comes with some utility classes to transform between formats. This works by parsing the rules from the source format into the AST, and then "dumping" out to the appropriate target format. This allows you, for example, to write rules in DRL, and when needed, export to XML if necessary at some point in the future.
The classes to look at if you need to do this are:
XmlDumper - for exporting XML. DrlDumper - for exporting DRL. DrlParser - reading DRL. XmlPackageReader - reading XML.
Using combinations of the above, you can convert between any format (including round trip). Note that DSLs will not be preserved (from DRLs that are using a DSL) - but they will be able to be converted.
Feel free to make use of XSLT to provide all sorts of possibilities for XML, XSLT and its ilk are what make XML powerful.