
AI for Environmental Impact, LCA & ESG Decision Intelligence
Next-Generation Sustainability Analytics for Policy, Regulation & Research
Skills you will gain:
About Workshop:
Aim: This workshop aims to empower senior academicians, PhD scholars, and environmental professionals with an advanced understanding of how Artificial Intelligence can transform Environmental Impact Assessment (EIA), Life Cycle Assessment (LCA), and ESG analytics. The program focuses on moving from static, manual assessments to dynamic, AI-assisted sustainability intelligence, enabling participants to design faster, more accurate, transparent, and policy-compliant assessment frameworks for large-scale projects and research initiatives.
Workshop Objectives:
- Understand how AI enhances EIA, LCA, and ESG workflows
- Design AI-assisted frameworks for impact prediction and sustainability metrics
- Apply AI for carbon footprinting and environmental accounting
- Critically assess uncertainty, bias, and transparency in AI-based assessments
- Align sustainability analytics with regulatory and funding requirements
- Position their work for policy engagement and high-impact publications
What you will learn?
📅 Day 1 – AI Foundations for Environmental Impact & Sustainability Assessment
Theme: From Manual Assessments to Intelligent Sustainability Pipelines
- Evolution of EIA and LCA:
- Regulatory foundations and limitations of traditional methods
- Data ecosystems for EIA & LCA:
- Environmental, industrial, and supply-chain data
- Remote sensing and geospatial inputs
- Role of AI in sustainability assessment:
- Data integration, automation, and pattern discovery
- Machine learning methods for impact prediction:
- Classification, regression, and clustering approaches
- Ensuring reproducibility and scientific rigor in AI-based assessments
👉 Outcome: AI-enabled EIA and sustainability assessment workflows.
Case Perspectives:
- AI-assisted EIA screening for infrastructure projects
- Automating baseline environmental assessments
📅 Day 2 – AI-Driven Life Cycle Assessment & Carbon Accounting
Theme: Scaling Sustainability Metrics with AI
- LCA frameworks and standards:
- ISO 14040 / ISO 14044 overview
- AI for:
- Inventory data estimation and gap filling
- Impact category modeling (carbon, water, toxicity)
- AI-based carbon footprint measurement:
- Scope 1, Scope 2, and Scope 3 emissions
- Handling uncertainty and variability in AI-enhanced LCA models
- Integrating AI-LCA outputs into sustainability reporting systems
👉 Outcome: AI-powered LCA and carbon accounting models for products and systems.
Case Perspectives:
- AI-enabled product and process LCA
- Carbon accounting for industrial and urban systems
📅 Day 3 – ESG Analytics, Compliance & Decision Intelligence
Theme: From Sustainability Metrics to Strategic Decisions
- ESG frameworks and reporting requirements:
- Global standards and emerging regulations
- AI for ESG data aggregation, normalization, and scoring
- Risk identification and scenario analysis using AI-driven models
- Translating assessment results into:
- Policy recommendations
- Investment and regulatory decisions
- Ethical, transparency, and governance challenges in AI-based ESG systems
👉 Outcome: ESG intelligence frameworks supporting compliance, policy, and investment decisions.
Case Perspectives:
- AI-driven ESG dashboards for institutions
- Sustainability intelligence for regulatory and funding bodies
Mentor Profile
Fee Plan
Important Dates
15 Jan 2026 AT IST : 4:30 PM
Get an e-Certificate of Participation!

Intended For :
- Senior academicians in environmental science, sustainability, and engineering
- PhD scholars and postdoctoral researchers
- Environmental consultants and regulatory professionals
- Sustainability analysts and ESG researchers
Career Supporting Skills
Workshop Outcomes
- A conceptual blueprint for AI-enabled environmental assessments
- Insight into next-generation sustainability intelligence systems
- Improved ability to contribute to regulatory reports and funding proposals
- Enhanced research positioning in environmental policy and sustainability science
- Strategic understanding of how AI supports evidence-based decision-making
