fbpx
Feedback

Shop

  • Introduction Of Machine Learnig (Basic)

    Day 1 | 8 hrs

    Mathematics for Machine Learning 
    1. Introduction to Calculus
    2. Introduction to Linear Algebra
    3. Introduction to Probability & Statistics

    Machine Learning Basics
    1. Fundamentals of Machine Learning
    2. Machine Learning Practical Applications: Classification, Regression etc.
    3. Supervised Learning
    4. Semi Supervised Learning
    5.Unsupervised Learning
    6. Neural Networks and Deep Learning

    Practical Machine Learning
    1. Machine Learning Frameworks : Python, Google COLAB, TensorFlow, Pytorch, Keras
    2. Code Classification and Time series Prediction Models
    3. Implementing a Neural Network from Scratch

    Quiz

    Apply Course
  • Introduction Of Machine Learnig (Advance)

    2 Days | 18 hrs

    Mathematics for Machine Learning
    1. Introduction to Calculus, Linear Algebra, Probability, Statistics and Random Variables
    2. Introduction to Python, numpy, pandas etc.
    3. Python assignments.

    Machine Learning Basics
    1. Fundamentals of Machine Learning
    2. Application in Machine Learning- Classification, Regression etc.
    3. Introduction to the theory and algorithms of :
    → Supervised Learning
    → Semi Supervised Learning
    → Unsupervised Learning
    → Graphical Models
    → Predictive Modelling

    Practical Machine Learning-Frameworks
    1. Machine Learning Frameworks :
    → Google COLAB
    → Sci-kit-learn
    → TensorFlow
    → PyTorch
    → Keras
    2. Industry grade tools and technologies for implementing a practical machine learning project
    3. Assignments – classification, regression and mathematical models
    Quiz

    Neural Network and Deep Learning
    1. Introdution to theory of neural networks and stochastic gradient descent
    2. Deep neural networks, CNN, RNN, Auto Encoders
    3. LSTM, GAN, Capsule networks

    Practical Machine Learning – Your own models
    1. Implementing a Neural Network from scratch
    2. Implementing a Deep Neural Network (CNN, RNN, GAN) in Tensorflow/PyTorch
    3. Developing AI projects and practical caveats in implementing machine learning models
    4. Organizing Machine Learning Projects

    Research and Applications
    1. Applications of AI in Industry and Academia
    2. Computer Vision
    3. Natural Language Processing
    4. What’s hot in AI research – a discussion on state of the art and recent trends in AI
    Quiz

    Apply Course
  • Out Stock
    Quick View

    NVIDIA Titan RTX Graphics Card

    229,000.00

    • OS Certification : Windows 7 (64 bit), Windows 10 (64 bit) (April 2018 Update or later), Linux 64 bit
    • 4608 NVIDIA CUDA cores running at 1770 MegaHertZ boost clock; NVIDIA Turing architecture
    • New 72 RT cores for acceleration of ray tracing
    • 576 Tensor Cores for AI acceleration; Recommended power supply 650 watts
    • 24 GB of GDDR6 memory running at 14 Gigabits per second for up to 672 GB/s of memory bandwidth