Aim
This course focuses on integrating metabolic engineering with AI/ML to accelerate strain design, pathway optimization, and biomanufacturing performance. Participants will learn how metabolic models, omics datasets, and bioprocess data can be combined with machine learning to improve yield, titer, productivity, and robustness. The program introduces constraint-based modeling concepts, pathway design logic, AI-guided hypothesis generation, and Design–Build–Test–Learn (DBTL) automation patterns—while emphasizing realistic constraints (data quality, biological variability, scale-up, and reproducibility). The course culminates in a capstone project where learners create an AI-Enhanced Metabolic Engineering Blueprint for a chosen product and host organism.
Program Objectives
- Metabolic Engineering Foundations: Understand pathways, flux, bottlenecks, and strain design goals (titer/yield/productivity).
- Modeling Literacy: Learn constraint-based modeling concepts and how models guide target selection (high-level).
- Omics-to-Design: Understand how genomics/transcriptomics/proteomics/metabolomics inform pathway optimization.
- AI for DBTL: Apply ML to prioritize experiments, predict outcomes, and optimize design choices.
- Bioprocess + Data: Learn how sensor logs and batch data support AI-driven optimization and anomaly detection.
- Responsible AI: Learn validation, baseline comparison, uncertainty, and avoiding over-claims.
- Industrial Readiness: Understand scale-up constraints, reproducibility, documentation, and quality thinking.
- Hands-on Outcome: Build a complete blueprint linking biological design, data, and AI workflows.
Program Structure
Module 1: Metabolic Engineering and the AI Opportunity
- Industrial targets: biofuels, organic acids, amino acids, enzymes, bioplastics, and specialty chemicals.
- Key performance metrics: titer, yield, productivity, robustness, and consistency.
- Why AI: navigating huge design spaces and reducing experimental cycles.
- Reality check: data quality, biological noise, and limits of prediction.
Module 2: Metabolism Basics and Strain Design Logic
- Central carbon metabolism overview and pathway branching concepts.
- Bottlenecks and byproducts: flux competition and redox/cofactor constraints (high-level).
- Design levers: gene expression tuning, knockouts, pathway introduction, and transport considerations (conceptual).
- Design risks: metabolic burden, toxicity, instability, and adaptive evolution effects.
Module 3: Constraint-Based Modeling and Flux Thinking (High-Level)
- Stoichiometric models and constraints: what they represent and what they miss.
- Flux balance analysis (FBA) intuition: objective functions and feasible solution space.
- Target identification logic: knockout/overexpression hypotheses and pathway alternatives.
- Model validation mindset: aligning predictions with experimental measurements.
Module 4: Omics Data and Feature Engineering for Biodesign
- Omics overview: transcriptomics, proteomics, metabolomics—what each reveals.
- Data preprocessing concepts: normalization, batch effects, missing data, and noise.
- Feature selection: linking genes/metabolites to performance outcomes (conceptual).
- Multi-omics integration: combining datasets responsibly without overfitting.
Module 5: AI/ML Methods for DBTL Acceleration
- Supervised learning: predicting titer/yield from design + process variables (high-level).
- Unsupervised learning: clustering strains/batches and discovering patterns.
- Anomaly detection: identifying failing batches and sensor issues early.
- Active learning / Bayesian optimization concepts: choosing the next best experiment.
Module 6: AI-Guided Pathway and Enzyme Selection (Conceptual)
- Pathway search: selecting routes from substrate to product and ranking options.
- Enzyme selection logic: sequence/function prediction concepts and stability considerations.
- Thermodynamics awareness: feasibility constraints and pathway balancing (overview).
- Risk control: avoiding brittle designs and planning backups.
Module 7: Bioprocess Data, Sensors, and Scale-Up Analytics
- Bioprocess signals: pH, DO, agitation, feed rate, temperature, off-gas—what they indicate.
- Linking process to biology: how conditions affect flux and product formation (conceptual).
- ML for process optimization: yield prediction, soft sensors, and control loop concepts (high-level).
- Scale-up constraints: oxygen transfer, mixing, heat removal, and reproducibility.
Module 8: Evaluation, Reproducibility, and Industrial Readiness
- Benchmarking: comparing to classical baselines and simple heuristics.
- Validation: cross-validation, hold-out strategies, and avoiding leakage (conceptual).
- Documentation: experiment tracking, model cards, and decision logs.
- Quality mindset: critical quality attributes (CQAs) and consistent manufacturing outcomes.
Module 9: Case Studies and Future Trends
- Case studies: AI-guided strain optimization, fermentation anomaly detection, and process setpoint optimization (overview).
- Biofoundries and automation: robotics, high-throughput screening, and closed-loop DBTL.
- Generative design concepts: proposing new designs and ranking by feasibility (high-level).
- Responsible innovation: interpreting results cautiously and planning confirmatory experiments.
Final Project
- Create an AI-Enhanced Metabolic Engineering Blueprint for a chosen product + host (e.g., yeast/bacteria/algae).
- Include: product goal, baseline pathway, model approach (constraint-based + data), ML workflow, experiment prioritization strategy, KPIs, and scale-up considerations.
- Example projects: AI-guided organic acid optimization in yeast, Bayesian optimization for fermentation feed strategy, multi-omics model for yield prediction, or anomaly detection dashboard for bioreactor batches.
Participant Eligibility
- Students and professionals in Biotechnology, Bioengineering, Bioinformatics, Data Science, Chemical/Bioprocess Engineering, or related fields.
- Industrial R&D teams working on strain development, enzymes, fermentation, and biomanufacturing optimization.
- AI/ML professionals interested in bio-based manufacturing and life-science applications.
- Basic biology and data familiarity is helpful but not required.
Program Outcomes
- Metabolic Engineering + AI Literacy: Understand how models and ML combine to accelerate strain design.
- DBTL Design Skill: Ability to propose closed-loop workflows for experiment prioritization and optimization.
- Data-to-Decision Capability: Ability to define features, KPIs, and evaluation plans for predictive pipelines.
- Industrial Readiness Awareness: Understanding of scale-up constraints, reproducibility, and quality documentation.
- Portfolio Deliverable: A complete blueprint for research, startup, or industrial project planning.
Program Deliverables
- Access to e-LMS: Modules, examples, and worksheets.
- Blueprint Toolkit: Strain design template, ML experiment plan worksheet, KPI dashboard template, and validation checklist.
- Case Exercises: Flux bottleneck identification task, feature engineering worksheet, and Bayesian optimization planning exercise.
- Project Guidance: Mentor feedback to refine the final blueprint.
- Final Assessment: Certification after assignments + capstone submission.
- e-Certification and e-Marksheet: Digital credentials provided upon successful completion.
Future Career Prospects
- Computational Metabolic Engineering Associate
- Bioprocess Data Scientist / Analyst
- Strain Development Data & Modeling Associate
- Biofoundry / DBTL Automation Associate
- Industrial AI for Biomanufacturing Associate
Job Opportunities
- Industrial Biotech & Biomanufacturing: Strain optimization, process analytics, and data-driven R&D roles.
- Biofoundries & Automation Labs: Closed-loop experimentation and ML-guided design pipelines.
- Pharma & Enzyme Companies: Fermentation optimization, enzyme pathway design support, and analytics roles.
- Startups: AI-driven strain design, smart bioprocessing, and platform development roles.
- Research Institutes: Computational biology + ML projects focused on industrial translation.









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