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Business Rule Computation in Distributed Organizations. George Dimitoglou Research Advisor Prof. Shmuel Rotenstreich. Outline. Introduction Related Work Problem Description Solution & Results Conclusions Future Work. Environment. Complex, dynamic, distributed organizations Activities
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Business Rule Computation in Distributed Organizations George Dimitoglou Research Advisor Prof. Shmuel Rotenstreich
Outline • Introduction • Related Work • Problem Description • Solution & Results • Conclusions • Future Work
Environment • Complex, dynamic, distributed organizations • Activities • Acquisition of services, resources • Collaboration, team formation • Rules & Constraints • Business Rules are statements of “How to do business” • Faster, systematic decisions
Objectives • To investigate Business Rule • Management • Distribution • Execution • Develop a general computational model for constraint computation
Outline • Introduction • Background and Related Work • Problem Description • Solution & Results • Conclusions • Future Work
Related Work: Organization Theory • Organizational Design • Formalization (standardization): Number of rules, documentation and policy manuals • Theories • Bureaucracy: order, uniformity, consistency, well-defined hierarchy, record-keeping, rules. • Systems Theory: inputs, outputs, transformations and prescribed interactions • Organization Structure • Complexity • Horizontal (specialization), Vertical (hierarchy), Spatial (geographic) • Centralization/decentralization • decision-making locations (not spatial) within the organization • Theories • Closed vs Open Systems: Simple, static, introverted environments Complex, dynamic, environment-interacting
Outline • Introduction • Background and Related Work • Problem Description • Methodology and Solution • Results • Conclusion • Future Work
Problem Description • Managing Constraints in distributed environments • Existing approaches • Small, static, contained, monolithic systems • Shortcomings • Centralization • Lack of operation capability in dynamic environments • Application-only interaction • Lack of distributed operation • Lack of Dynamic Rule support • No real-time rule changes
Outline • Introduction • Background and Related Work • Problem Description • Solution & Results • Conclusion • Future Work
Methodology • Business Rules • Formulation • Developed/Extended a simple rule type classification • Software prototype • Devised methods for Rule processing • Developed architecture for multiple rule engines and repositories • Developed distributed and non-distributed processing algorithms • Added features to enhance distributed processing
Business Rule Formulation • Declarative statements that constraint, validate, compute, approve or perform any operation. • Example rule (Stimulus/Response): R: ifP1P2 …PnthenA1 A2 … Ak where n ≥ 1 is a conjunction of n predicates (conditions) k ≥ 1 is the set of conjunctions of kresults (actions) Predicates (Pn) and results (Ak) express values of operands using relational operators from the set S ={>, <, ≠, =, ≤, ≥}
Formulation Example • Each Business Rule is described using XML
Business Rule Elements <ruleid>value</ruleid> (Unique rule identifier) <task_type>value</task_type> (Matching applicable rules to tasks) LHS RHS <creation-date> <effect-date> <expiry-date> <lifetime> <owner> <status> (“Administrative” elements)
Business Rule TypesStimulus/Response • Define what conditions must be met before an activity can legally take place: RSR: if P1 P2 ... Pn then A1 A2 ... Ak or, RSR': when P1 P2 ... Pn then A1 A2 ... Ak • Example: • Task: check account balance, print a statement. • Rule: RSR: if (client has an account) then (check account balance)(print statement) • Task: add quarterly interest dividends to account. RSR’: when (end of quarter) then (calculate interest) (add interest to balance)
Business Rule TypesOperation Constraint Rules • Define constraints that must hold before and/or after an activity. ROC: if P1 P2 ... Pn then [Q] A1 A2 ... Ak[S] where Q: pre-condition stating properties that must hold when activity is to be performed S: post-condition stating properties that will hold after the activity is completed. • Example: • Task: withdrawing funds from a bank account ROC: if (client has an account) then [check account has funds] (withdraw amount)(print statement) [balance 0]
Business Rule TypesStructure Constraint Rules Specify constraints on tasks, which must never be violated. Software Engineering class and loop invariants • Class invariant: assertion describing a property, holding for all class instances. • Loop invariant: assertion to be satisfied prior to the first loop execution, preserved at each iteration, and still hold on loop termination. • Rule R has an invariance property for task Ti: • if R is valid in every computation state ("must always hold") during processing of Ti. RSC: it must always hold that P1 P2 ... Pn or, RSC: it must always hold that if P1 P2 ... Pn then A1 A2 ... Ak Example: RSC: it must always hold that (minimum balance=$100) RSC: it must always hold that if ( account = savings) then (minimum balance=$500)
Business Rule TypesComputation • Describe algorithm processing or equations. • Extension (or general case) of Stimulus/Response Rules. • Predicates are TRUE and activity is an algorithm execution or a computation. RCR: y=f(x) • Example: COMPUTEinterestASinterest = principal * years * rate/100 Instantiate class Computation that parses parameters of the rule XML and call the relevant methods for execution.
Business Rule Lifecycle • Rule execution can be formally expressed as a DFA R by the tuple: R= (Q, , q0, F, ) where Q: finite set of states : finite set of input events e. ={activate, trigger, execute, deactivate} F: set of final states. F={new, active, dormant} : transition function from Q x to Q so that (q, e) is a state for each state q and input event e.
The Business Rule Engine (BRE) • Components • FIFO Queue • Engine • Repository (RuleBase) • Interfaces • Functionality • Rule storage • Search • Enforcement
Task Processing Search-Match-Process-Enforce Search Collect Match Enforce (modify task) 1) Create “candidate set” 2) Resolve any conflicts 3) Create execution sequence
Rule Processing Algorithm ProcessTask • ParseTask • Parameters • RetrieveRules • Search Repository • Store in candidate set • CategorizeRules • Type-specific processing • ResolveConflicts • Check for conflicts • Resolve • Create execution sequence • ApplyRules • Modify task
Rule Processing Algorithm Time-Complexity Analysis • Methods • Time-Complexity Analysis • Hash-based repository operations (search, retrieval) perform in constant time O(1). • PARSETASK, RETRIEVERULES, CATEGORIZERULES, APPLYRULES perform in linear time O(n). • Overall complexity depends on RESOLVECONFLICTS • Quick sort with O(nlogn) • Empirical data • Overall • O(nlogn)
Conflict Resolution • Conflict categories • Sequence Conflicts. Affect rule execution sequence. • Two applicable rules, one accepting the task and the other rejecting it. • Parameter Conflicts. • Two or more rules modify same task parameter, but compute its value using different formulas and produce different results. • Rule A: modifies parameter - Rule B: with different values • Rule A: Removes parameter - Rule B: adds it • Rule A: Modifies parameter - Rule B: eliminates it • Rule A & B: Compute same parameter using different formulas. • Resolution • Dynamic (each time) while in the candidate set • Execution sequence • Resolution factors • Rule Type • Priority • Timestamp
Distributed Rule Processing Overall Environment • Multiple units of one or more organizations • Some units collaborate others don’t • BREs “scattered” throughout • BRE Locality BRE infrastructure • “Underlying” network of peer BREs • BREs: Uniquely identifiable and addressable • Shared and interconnected rule-sets Example: IF operand=value THEN <Rule Engine>.<Rule number>
Distributed Rule Processing Cont’d. Team Formation Team Leader • Ad hoc team formation (TTL=2) • BRE0: Team Leader • Hash-table sharing. All rule results to team leader BRE0 • Membership • New members • Existing members removed • Leader failure dealt via LEA • Memory (Caching) • Optimistic Fault Tolerance
Distributed Rule Processing Algorithm • Additional Functionality • Interaction with Resource Discovery mechanisms • Query Propagation • TTL for control • Ad hoc team maintains storage of shared rule sets
Distributed Rule ProcessingTime-Complexity Analysis • Multiple P2P-connected BREs • Add network and communication costs • Performance of processing a single task: where kis the number of rule engines mrepresents a communication costs constant Overall: O(nlogn*m)
“Nested” Rules • Single BRE IF operand=value THEN <Rule number>* • Problem: Termination • Solution: • forbid loops during formulation (smart interface) • Max occurrence limits in candidate set • Multiple BREs IF operand=value THEN <Rule Engine>.<Rule number> • Problem: Termination, Cascading rules - no global control • Solution: Max cycle occurrence in candidate set Max depth-limit enforcement * All rule types are subject to “nesting”
Procedures • Ordered rule sequences • Executed/enforced on task(s) as a single rule • Precedence of execution over individual rules • Advantages • Additional, useful construct, controlling the order of rule execution • For repetitive tasks, performance improvement (no conflict resolution) • Disadvantages • Black box • User must ensure no conflicts
ProceduresImplementation (a) Sample procedure expression using XML and (b) the corresponding XML tree
Global Variables • Distributed System View • Variables with “scope” over organizational segments • Lack of global control facilities • No monitoring or controlling of activities • Local & “Global” inter-dependent constraints • Rule processing is unaware of such variables • GVAR types: • Counters (establish limits, tasks accepted/rejected) • Advisories (express an advise or suggestion, BRE may enforce/ignore
Global VariablesImplementation • Distributed GVAR Network • Master (read/write) • Proxies (read) • “replicate everywhere” algorithm • Proxies • faster GVAR lookups • no bottlenecks • Master • consistency
Task Temporal Relations • BRE “Memory” • Organizational Memory • Learning • Task Temporal Sequences • T1 happens before T2 (T1T2) • T1 overlaps T2 • Time delay • Task Causal Sequences • T1 causes a task T2 (T1 T2) • anti-symmetric • irreflexive
Task Temporal RelationsImplementation • Distributed TSEQ Network • Proxies contain both: • Read-only • Master contains both: • Read/Write
Performance Analysis • Measurements • Capacity • Response Time (latency) • Throughput • Methodology • Creation of multiple synthetic rule sets • For Capacity Testing: Multiple, variable size rule loads • For Latency and Throughput, multiple variable size rule loads with variable percentages of applicable rules: 1%, 10%, 25%, 75% and 100%
Performance AnalysisCapacity Testing • Repository type • Synthetic data set (1 x rule=1342b) • 55K (Java tuning required) • > 105K, SAX limitation • Memory-bound, CPU: idle
Performance AnalysisResponse Time (Latency) Testing • Objective: BRE time to process single task with variable loads. • Methodology: Load synthetic rule sets with variable applicable rule loads and send task. • Results: strong relation between latency - % of applicable rules Increase by a factor of ~11 Just doubles the latency 10-fold increase From 200 to 2000 rules 10-fold increase From 200 to 2000 rules
Performance AnalysisResponse Time (Latency) Results • Task latency has little variation with same number of applicable rules, even with variable total loads.
Performance AnalysisThroughput • Objective: Determine max number of tasks that can be processed during a given period of time (sec, min, hr). • Methodology: Same synthetic rule sets as with latency experiments. • Results: throughput affected by % of applicable rules AND total rules
Performance AnalysisQueuing Theory • Objective: BRE response times as a function of utilization (“stress test”) • Methodology: used Throughput results (service rate). • Results:
Performance AnalysisQueuing Theory Results • Result: a consistent way of identifying optimal BRE utilization at any rule load Utilization Stability Condition at p < 1 Max Throughput Saturation “unstable” BRE Utilization 1.0
Outline • Introduction • Related Work • Problem Description • Solution & Results • Conclusions • Future Work
Conclusions & Research Contributions • Original approach computation of distributed constraints. • Software prototype proof-of-concept novel ideas (in the context of BR): • “minimalist” expression of constraints in XML • flexible rule formulation, minimal semantic specification • Lightweight standalone/distributed rule engines • Fast rule-searching algorithm • Rule Management, Task Processing, Conflict Resolution • Conflict resolution algorithm • Building “local caches” for fault tolerance • Managing global variables and ensuring consistency of temporal sequences • Development of general computational model to solve problems in domains with similar computation and distribution requirements. • Tool-set to understand dynamic environments.
Future Work • Variable rule enforcement • Task generation • Business rules and context: distributed BREs as context awareness processors • Business rules and policy • Automatic "bottom-up" and "top-down", business rule generation • Bottom-up: local computations contribute in creating rules with global scope • Top-down: automatic distribution of global rules and variables to local rule engines
Business Rule Computation in Distributed Organizations George Dimitoglou Research Advisor Prof. Shmuel Rotenstreich