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מתחיל 11 June 2026 09:22

נגמר 11 June 2026

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Deep Learning in Material Science and Engineering: From Concepts to Applications

Explore Deep Learning applications in Material Science, from concepts to hands-on projects. Build intuition, apply models to data, and create a portfolio showcasing skills in material design and property prediction.
NPTEL via Swayam

NPTEL

150 קורסים


Not Specified

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Free Online Course

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סקירה כללית

ABOUT THE COURSE:

Why Deep Learning in MSE? Deep Learning has widely been used in various sectors; health care, finance, agriculture, education, energy, entertainment etc have been using Deep Learning to improve their performances.

Tech giants have been pushing their boundaries to achieve more as Deep Learning is the driving force everywhere and similarly the demand for skilled professional has steeply been rising. The design and discovery of new materials, processing optimization and prediction of properties would require applications of Deep Learning techniques and even deployment of the same.

The present course is meant for students preparing for higher studies, researchers applying AI tools, the industry professionals wanting to upskill. This is a balanced course with conceptual learning and hands-on with ability to build intuition, apply concepts to data, and interpret model output.

Upon successfully completing this course, you will have a mini portfolio of Deep Learning projects, which can be showcased to the potential employers or use for research.INTENDED AUDIENCE:

Materials, Mechanical, Physics, ChemistryPREREQUISITES:

Knowledge of Artificial Intelligence and Machine Learning

סילבוס

  • Introduction to Deep Learning in Material Science
  • Overview of Deep Learning
    Importance for Material Science and Engineering (MSE)
    Course objectives and expected outcomes
  • Fundamentals of Deep Learning
  • Neural Networks basics
    Activation functions and optimization techniques
    Overfitting and regularization techniques
    Deep learning frameworks (TensorFlow, PyTorch)
  • Data Handling in MSE
  • Data types and sources in Material Science
    Data preprocessing and normalization
    Feature extraction techniques specific to MSE
  • Architecture Design for Material Science
  • Convolutional Neural Networks (CNNs) for microstructure analysis
    Recurrent Neural Networks (RNNs) for time series data
    Autoencoders for material property prediction
  • Application of Deep Learning in Material Design and Discovery
  • Case studies on material discovery using Deep Learning
    Predictive modeling of material properties
    Applications in nanomaterials and composites
  • Process Optimization using Deep Learning
  • Simulation and optimization in manufacturing processes
    Deep reinforcement learning for process control
  • Interpretation and Visualization of Model Outputs
  • Techniques for model explainability
    Visualization tools for interpreting deep learning results
  • Hands-on Projects
  • Project 1: Building a CNN for Microstructure Analysis
    Project 2: Predicting Material Properties with Autoencoders
    Project 3: Process Optimization in Materials Manufacturing
  • Deployment of Deep Learning Models
  • Introduction to deploying models in production environments
    Best practices for maintaining and updating models
  • Future Trends and Challenges in Deep Learning for MSE
  • Emerging technologies and applications
    Ethical considerations and challenges
  • Course Review and Portfolio Development
  • Review of key concepts
    Guidance on building and presenting a project portfolio
  • Assessment and Certification
  • Quizzes and practical exams
    Final project presentation and evaluation

נלמד על ידי

Prof. Krishanu Biswas


נושאים

Computer Science