Supply Chain Decarbonization Agent
A multi-agent AI system orchestrates specialized agents to ingest supplier data, calculate emissions using GHG Protocol methodologies, perform Pareto analysis to identify hotspots, generate reduction scenarios with ROI analysis, and produce actionable decarbonization roadmaps with financial projections..
Problem Statement
The challenge addressed
Solution Architecture
AI orchestration approach
Configure Analysis Input - Data source upload with validation metrics, column mapping, and analysis configuration for Scope 3 emissions categories.
AI Agents In Action - Real-time multi-agent orchestration showing agent reasoning, tool calls execution, and event log tracking.
Emission Hotspot Analysis - AI-generated insights with Pareto distribution chart and ranked top carbon hotspot suppliers with reduction potential.
Executive Summary - Comprehensive analysis results with high-impact reduction opportunities, emissions metrics, and environmental impact indicators.
AI Agents
Specialized autonomous agents working in coordination
Workflow Orchestrator Agent
Complex carbon analysis requires coordinating multiple specialized tasks in the correct sequence while managing dependencies, parallel execution, and error recovery across the analysis pipeline.
Core Logic
Powered by Claude Opus, this agent acts as the central coordinator managing workflow execution. It dispatches tasks to specialized agents, monitors progress, handles agent handoffs, aggregates results, and ensures the complete analysis pipeline executes correctly with proper sequencing and error handling.
Data Ingestion Agent
Supplier data arrives in inconsistent formats from multiple sources including ERPs, spreadsheets, and APIs, requiring normalization before carbon calculations can begin.
Core Logic
Uses Claude Sonnet with specialized parsing tools to extract and normalize supplier data from various formats. Performs schema detection, maps columns to standardized fields, validates data completeness, and produces a unified supplier-material-spend dataset ready for emissions calculation.
Data Validation Agent
Poor data quality leads to inaccurate carbon calculations. Missing supplier locations, invalid spend amounts, or misclassified materials compromise the reliability of hotspot identification.
Core Logic
Applies validation rules to verify data completeness, consistency, and plausibility. Checks for missing required fields, validates numeric ranges, identifies duplicate entries, and generates a data quality score with detailed issue reports for remediation.
Emission Calculator Agent
Converting supplier spend and activity data into accurate GHG emissions requires applying correct emission factors based on material type, geography, and calculation methodology.
Core Logic
Powered by Claude Opus, this agent queries emission factor databases (ecoinvent, DEFRA, EPA), applies appropriate factors based on material categories and supplier locations, performs spend-based and activity-based calculations, and outputs emissions in tCO2e with uncertainty quantification.
Supplier Intelligence Agent
Basic supplier data lacks the contextual information needed to assess decarbonization potential, such as renewable energy adoption, sustainability certifications, or Science-Based Targets commitments.
Core Logic
Enriches supplier profiles by querying external databases and APIs for sustainability credentials, SBTi commitments, CDP scores, renewable energy usage, and industry benchmarks. Produces enhanced supplier profiles with decarbonization readiness scores.
Benchmarking & Hotspot Analysis Agent
Identifying which suppliers and materials contribute most to emissions requires sophisticated Pareto analysis that considers multiple dimensions including absolute emissions, intensity, and reduction potential.
Core Logic
Performs multi-dimensional Pareto analysis to rank suppliers and materials by emission contribution. Applies the 80/20 rule to identify the vital few hotspots, compares against industry benchmarks, and generates prioritized hotspot rankings with visualization data for Sankey and treemap charts.
Scenario Modeler Agent
Sustainability teams need to evaluate multiple decarbonization options (supplier switching, material substitution, efficiency improvements) but lack tools to model and compare scenarios systematically.
Core Logic
Generates and evaluates decarbonization scenarios based on identified hotspots. Models the impact of switching to low-carbon suppliers, substituting materials, increasing recycled content, or improving logistics. Produces scenario comparisons with emission reduction potential and implementation complexity.
Financial Analyst Agent
Decarbonization initiatives require business case justification with ROI metrics, but calculating the financial impact of carbon reduction scenarios involves complex cost modeling across procurement, operations, and carbon pricing.
Core Logic
Calculates financial metrics for each reduction scenario including implementation costs, annual savings, payback period, NPV, IRR, and cost per tonne CO2 avoided. Integrates carbon pricing projections and regulatory cost implications to produce investment-grade business cases.
Insight Generator Agent
Raw analysis data needs synthesis into actionable recommendations with clear narratives that communicate findings to diverse stakeholders from procurement teams to C-suite executives.
Core Logic
Powered by Claude Opus, this agent synthesizes outputs from all preceding agents into comprehensive executive summaries. Generates natural language narratives explaining key findings, prioritized recommendations, implementation roadmaps, and strategic implications for stakeholder presentations and reports.
Worker Overview
Technical specifications, architecture, and interface preview
System Overview
Technical documentation
Tech Stack
5 technologies
Architecture Diagram
System flow visualization