Home >Courses >Quantum-Enhanced AI for Next-Gen Semiconductor Process Control

NSTC Logo
Home >Courses >Quantum-Enhanced AI for Next-Gen Semiconductor Process Control

02/02/2026

Registration closes 02/02/2026
Mentor Based

Quantum-Enhanced AI for Next-Gen Semiconductor Process Control

State-of-the-Art: Diffusion Models + Physics-Informed Neural Networks + Causal AI for Fab 2nm Optimization

  • Mode: Virtual / Online
  • Type: Mentor Based
  • Level: Advanced
  • Duration: 3 Days (60-90 Minutes each Day)
  • Starts: 2 February 2026
  • Time: 05:30 PM IST

About This Course

Master AI techniques for semiconductor defect detection, process optimization, and yield prediction using Google Colab. This hands-on workshop transforms wafer maps into actionable insights using CNNs, gradient boosting, LSTM autoencoders, and reinforcement learning – complete with industry benchmarks and production-ready code.

Aim

Equip participants with practical ML skills to solve real semiconductor manufacturing challenges – from wafer defect classification to process control optimization using accessible Google Colab environment.

Workshop Structure

DAY 1: Diffusion Models for Wafer Defect Synthesis & Zero-Shot Classification
├── 1.1 Diffusion Model Architecture (Denoising U-Net + DDPM) [15min]
├── 1.2 Training on WM-811K → Generate Synthetic Wafer Maps [25min]
├── 1.3 Zero-Shot Classification via CLIP + Wafer Embeddings [25min]
├── 1.4 Uncertainty Quantification (Monte Carlo Dropout) [15min]
└── 1.5 Real-time Inference Pipeline (<10ms/wafer) [10min]

DAY 2: Physics-Informed Neural Operators for Multi-Scale Process Modeling
├── 2.1 Fourier Neural Operators (FNO) Theory + Implementation [20min]
├── 2.2 PINN Loss: Navier-Stokes + Lithography PDE Constraints [25min]
├── 2.3 Multi-Scale CD Prediction (1nm → 100μm resolution) [25min]
├── 2.4 Operator Learning for Etching Rate Fields [15min]
└── 2.5 Gradient-Based Optimal Control (MPC Framework) [5min]

DAY 3: Causal Discovery + Multi-Agent RL for Adaptive Fab Control
├── 3.1 Causal Graph Discovery (PC Algorithm + NOTEARS) [20min]
├── 3.2 Multi-Agent PPO for Distributed Process Control [25min]
├── 3.3 Counterfactual Analysis: “What-if” Process Scenarios [20min]
├── 3.4 Safe RL with Lagrangian Constraints (2nm tolerance) [15min]
└── 3.5 Online Learning Pipeline (Active Inference) [10min]

Who Should Enrol?

✅ Published 2+ papers in ML/AI (NeurIPS/ICLR/IEEE Transactions)
✅ Advanced PyTorch proficiency (custom layers, optimizers)
✅ Semiconductor device physics (quantum transport, band theory)
✅ Numerical PDE solvers experience (FEniCS, FDM/FEM)
✅ Multi-agent systems or causal inference background

IDEAL PROFILE:
“PhD Year 4+, 3+ ML papers, works on 2nm/1.4nm process development
Active GitHub with 100+ stars on ML repos
Attended NeurIPS/ICLR workshops on diffusion models/neural operators

Important Dates

Registration Ends

02/02/2026
IST 04:30 PM

Workshop Dates

02/02/2026 – 02/04/2026
IST 05:30 PM

Workshop Outcomes

1️⃣ DIFFUSION MODELS: Generate unlimited synthetic wafer maps → solve data scarcity
2️⃣ NEURAL OPERATORS: Solve PDE-constrained multi-scale process modeling
3️⃣ CAUSAL AI: Discover true process relationships (not correlations)
4️⃣ MULTI-AGENT RL: Distributed fab-wide optimal control
5️⃣ PINNs: Physics + data-driven process prediction (<1nm accuracy)

Fee Structure

Student

₹3999 | $85

Ph.D. Scholar / Researcher

₹4999 | $95

Academician / Faculty

₹5999 | $115

Industry Professional

₹10999 | $149

What You’ll Gain

  • Live & recorded sessions
  • e-Certificate upon completion
  • Post-workshop query support
  • Hands-on learning experience

Join Our Hall of Fame!

Take your research to the next level with NanoSchool.

Publication Opportunity

Get published in a prestigious open-access journal.

Centre of Excellence

Become part of an elite research community.

Networking & Learning

Connect with global researchers and mentors.

Global Recognition

Worth ₹20,000 / $1,000 in academic value.

Need Help?

We’re here for you!


(+91) 120-4781-217

★★★★★
Cancer Drug Discovery: Creating Cancer Therapies

Undoubtedly, the professor's expertise was evident, and their ability to cover a vast amount of material within the given timeframe was impressive. However, the pace at which the content was presented made it challenging for some attendees, including myself, to fully grasp and absorb the information.

Mario Rigo
★★★★★
Power BI and Advanced SQL Mastery Integration Workshop, CRISPR-Cas Genome Editing: Workflow, Tools and Techniques

Good! Thank you

Silvia Santopolo
★★★★★
Artificial Intelligence for Cancer Drug Delivery

Informative lectures

G Jyothi
★★★★★
Artificial Intelligence for Cancer Drug Delivery

delt with all the topics associated with the subject matter

RAVIKANT SHEKHAR

View All Feedbacks →

Stay Updated


Join our mailing list for exclusive offers and course announcements

Ai Subscriber