Syllabus

Introduction to Machine Learning & Python

  • Introduction to Machine Learning in Python
  • Introduction to Python
  • Flow Control, Iterative Operations & Functions in Python
  • Basic Statistics & Maths
  • Data Summary, Numerical and Visual EDA in Python
  • Data Handling in Python using NumPy & Pandas
  • Hypothesis Testing
  • Basics of Machine Learning-1
  • Basics of Machine Learning-2

Advanced Machine Learning Models in Python

  • Generalised Linear Models in Python
  • Decision Tree Models using Python
  • Boosting Algorithms using Python
  • Support Vector Machines (SVM), Naïve Bayes and KNN in Python
  • Unsupervised learning in Python
  • Neural Networks
  • Text Mining in Python

Machine Learning Beyond Traditional Model Building

  • Ensemble Methods for mixed algorithms
  • Python pipelines and model in production
  • Advanced Ideas on Feature Engineering, Model Interpretation, Parameter Tuning, Genetic Algorithm

Introduction to Deep Learning (Artificial Intelligence) And Tensorflow

  • Introduction to AI and Deep Learning
  • Introduction to parameter optimisation and gradient descent
  • Getting Started with Tensorflow and Google Colab

Deep Learning Algorithms Using Tensorflow and Keras

  • Deep Feed Forward & Convolutional Neural Networks
  • Introduction to Keras
  • Image data generators, transfer learning and Tensorboard
  • Sequence to Sequence models with Recurrent Neural Networks, Long-Short Term Memory (LSTM) and Gated Recurrent Unit (GRU)
  • Unsupervised Deep Learning

Applications of AI – Hands-on

  • Object Detection and Localisation
  • Face Detection and Recognition

Other Applications

  • working with Audio Data
  • Text summarisation, Image Captioning And Style Transfer

Natural Language Processing

  • Deep Learning for Natural Language Processing
  • Chatbots with Rasa

Organisations where our Alumni work

Connect
with us
whatsapp-icon