M.Tech in Industrial Engineering
Semester-wise syllabus for an M.Tech in Industrial Engineering
Semester 1: Core Foundations
Courses:
1. Advanced Operations Research
- Linear/non-linear programming, queuing theory, simulation, and decision analysis.
2. Production and Operations Management
- Lean manufacturing, JIT, TPM, capacity planning, and facility layout design.
3. Quality Engineering and Management
- Six Sigma, SPC (Statistical Process Control), Taguchi methods, and ISO 9001 standards.
4. Supply Chain Management
- Inventory optimization, logistics, demand forecasting, and blockchain in SCM.
5. Research Methodology
- Technical writing, statistical tools (Minitab, R), and experimental design.
Labs:
- Simulation Lab (Arena, Simul8, FlexSim)
- Quality Control Lab (Minitab, control charts, DOE)
Semester 2: Specialization & Electives
Core Courses:
1. Systems Engineering and Analysis
- System dynamics, reliability engineering, and failure mode analysis (FMEA).
2. Human Factors and Ergonomics
- Workstation design, cognitive ergonomics, and safety management (OSHA standards).
Electives (Examples):
- Lean Six Sigma (DMAIC, Kaizen, value stream mapping)
- Advanced Manufacturing Systems (CIM, robotics, additive manufacturing)
- Project Management (PERT/CPM, Agile, MS Project)
- Sustainability in Industry (life-cycle assessment, circular economy)
- Data Analytics for Industrial Engineering (Python, SQL, Power BI)
Labs:
- Ergonomics Lab (Motion capture, RULA/REBA analysis)
- Supply Chain Simulation Lab (AnyLogic, SAP ERP)
Semester 3: Advanced Electives & Project Work
Electives (Examples):
- AI/ML in Industrial Engineering (predictive maintenance, digital twins)
- Industry 4.0 (IoT, smart factories, cyber-physical systems)
- Logistics and Transportation Engineering (route optimization, VRP)
- Healthcare Systems Engineering (hospital workflow optimization)
- Financial Engineering (cost-benefit analysis, risk modeling)
Project/Dissertation:
- Phase 1: Topic selection (e.g., process optimization, Industry 4.0 implementation, sustainable SCM), literature review, and proposal.
- Seminars: Presentations on trends like AI-driven automation, cobots, or green manufacturing.
Semester 4: Thesis/Project Completion
Thesis/Project:
- Full-time focus on industrial case studies, simulations, or field implementation (e.g., optimizing a production line, reducing waste in supply chains).
- Final documentation, viva voce defense, and industry collaboration (if applicable).
Additional Components:
- Industrial Internship (optional, with manufacturing firms, consultancies, or logistics companies).
- Workshops: Training in Digital Twin tools (ANSYS Twin Builder), ERP systems (SAP, Oracle), or Lean Six Sigma certification.
Elective Tracks (Specializations):
1. Operations Research & Analytics
- Optimization algorithms, simulation modeling, big data analytics.
2. Supply Chain & Logistics
- Global SCM, warehouse automation, last-mile delivery.
3. Manufacturing Systems
- Smart manufacturing, robotics, Industry 4.0 integration.
4. Sustainability & Green Engineering
- Carbon footprint reduction, circular economy, renewable energy systems.