Building Portfolio Energy AI
Orchestrates a team of 6 specialized AI agents that collaborate to detect anomalies, diagnose root causes, plan remediation actions, execute approved changes, validate results, and learn patterns for continuous improvement. Supports autonomous action with human-in-the-loop controls.
Problem Statement
The challenge addressed
Solution Architecture
AI orchestration approach
Mission Configuration Interface - Configure energy anomaly detection missions with data sources, constraints, and autonomous action settings
Real-Time Agent Execution Console - Live monitoring of AI agent collaboration with execution flow and cross-agent insights
Mission Results Dashboard - Completed analysis showing detected anomalies, estimated savings, and critical issues across building portfolio
AI Collaboration Summary - Mission insights with agent performance metrics and recent tool executions for pattern learning
AI Agents
Specialized autonomous agents working in coordination
Mission Orchestrator
Multi-agent workflows require sophisticated coordination to route tasks, assess priorities, resolve conflicts, and ensure all agents work toward mission objectives without duplication or gaps.
Core Logic
Coordinates multi-agent workflows using Claude Opus 4 for complex reasoning. Manages task routing between agents, priority assessment based on impact, and conflict resolution when agents disagree. Tracks mission progress against budget and token constraints.
Data Analyzer Agent
Raw sensor data from buildings contains hidden patterns, anomalies, and trends that require sophisticated statistical analysis and ML techniques to uncover.
Core Logic
Analyzes complex datasets using pattern detection algorithms, statistical analysis, anomaly detection with isolation forest (O(n log n) complexity), and trend analysis. Uses Claude Sonnet 4 for efficient pattern recognition across 78+ buildings and 7,800+ sensors.
Action Planner Agent
Detected anomalies require remediation plans that balance effectiveness, risk, resource allocation, and timeline constraints while prioritizing by financial and operational impact.
Core Logic
Creates detailed action plans using risk assessment frameworks, resource allocation optimization, and timeline estimation. Generates prioritized remediation steps with cost-benefit analysis. Uses Claude Sonnet 4 with capabilities for action planning.
Action Executor Agent
Executing changes to building systems requires safety guardrails, rollback capabilities, and careful progress monitoring to prevent unintended consequences.
Core Logic
Executes approved actions with safety guardrails using GPT-4o for reliable execution. Creates rollback points before each action, monitors system stability during execution, and maintains comprehensive error handling. Supports both autonomous and human-approved execution modes.
Result Validator Agent
Executed actions must be verified to ensure they achieved intended outcomes and meet quality standards before declaring mission success.
Core Logic
Validates outputs using Claude Haiku 3.5 for fast validation cycles. Performs output validation against expected outcomes, quality assurance checks (12 checks across 4 categories), compliance verification, and accuracy confirmation. Reports confidence scores.
Pattern Learner Agent
Each mission generates valuable insights about building behavior patterns that should improve future mission performance through continuous learning.
Core Logic
Extracts reusable patterns from mission execution using GPT-4o Mini for efficient pattern recognition. Updates knowledge base with learned correlations (e.g., HVAC anomalies correlating with sensor drift), integrates feedback from validators, and improves model confidence for similar future missions.
Worker Overview
Technical specifications, architecture, and interface preview
System Overview
Technical documentation
Tech Stack
4 technologies
Architecture Diagram
System flow visualization