tasq/node_modules/agentdb/simulation/scenarios/README-advanced/goalie-integration.md

1.7 KiB

Goalie Integration - Goal-Oriented AI Learning Engine

Overview

Hierarchical goal decomposition with achievement trees, tracking progress from high-level objectives to actionable subgoals.

Purpose

Model how AI agents can break down complex goals into manageable subgoals and track achievement progress.

Operations

  • Primary Goals: 3 high-level objectives
  • Subgoals: 9 decomposed tasks (3 per goal)
  • Achievements: 3 completed subgoals
  • Causal Links: Subgoal → Parent goal dependencies

Results

  • Throughput: 2.23 ops/sec
  • Latency: 437ms avg
  • Primary Goals: 3
  • Subgoals: 9
  • Achievements: 3
  • Avg Progress: 33.3%

Technical Details

Goal Hierarchy

Primary: build_production_system (priority: 0.95)
  ├── Subgoal: setup_ci_cd ✅
  ├── Subgoal: implement_logging
  └── Subgoal: add_monitoring

Primary: achieve_90_percent_test_coverage (priority: 0.88)
  ├── Subgoal: write_unit_tests ✅
  ├── Subgoal: write_integration_tests
  └── Subgoal: add_e2e_tests

Primary: optimize_performance_10x (priority: 0.92)
  ├── Subgoal: profile_bottlenecks ✅
  ├── Subgoal: optimize_queries
  └── Subgoal: add_caching

Achievement Tracking

achievement: 'setup_ci_cd'
successRate: 1.0  // 100% completed

Applications

  • Project Management AI: Task decomposition
  • Game AI: Quest/objective systems
  • Robotics: Multi-step task planning
  • Personal Assistants: Goal tracking

Features

  • Hierarchical goal decomposition
  • Progress monitoring
  • Dependency tracking (causal edges)
  • Achievement unlocking

Status: Operational | Package: goalie