Python with Data Science (AI & ML) – 40 Sessions Plan

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... English
... Certificate Course
... 0 Students
... 20 Aug, 2025 08:30 pm EST

Course Overview

Module 1: Fundamentals of Programming

  • Python for Data Science: Introduction
  • Python for Data Science: Data Structures
  • Python for Data Science: Functions
  • Python for Data Science: NumPy
  • Python for Data Science: Matplotlib
  • Python for Data Science: Seaborn
  • Python for Data Science: Pandas
  • SQL
  • Sample Interview Questions

Module 2: Exploratory Data Analysis (EDA) & Data Visualization

  • Plotting for exploratory data analysis (EDA)
  • Linear Algebra
  • Probability and Statistics
  • Dimensionality reduction and Visualization
  • PCA (Principal Component Analysis)
  • t-SNE (T-distributed Stochastic Neighborhood Embedding)
  • Statistical Testing
  • Sample Interview Questions

Module 3: Foundations of NLP and Machine Learning

  • Introduction to Machine Learning
  • Performance measurement of models
  • Classification and Regression Models: K Nearest Neighbors
  • Naive Bayes
  • Linear Regression
  • Logistic Regression
  • Classification algorithms in various situations
  • Real world problem: Predict rating on given product reviews on Amazon
  • Sample Interview Questions

Module 4: Machine Learning – Supervised Learning Models

  • Support Vector Machines (SVM)
  • Decision Trees
  • Ensemble Models
  • Deployment of ML Models
  • Sample Interview Questions

Module 5: Machine Learning – Real World Case Studies

  • Case Study 1: Quora Question Pair Similarity Problem
  • Case Study 2: Personalized Cancer Diagnosis
  • Case Study 3: Facebook Friend Recommendation using Graph Mining
  • Case Study 4: Taxi Demand Prediction in New York City
  • Case Study 5: Stack Overflow Tag Predictor

Module 6: Machine Learning – Unsupervised Learning & Recommender Systems

  • Unsupervised Learning / Clustering
  • Hierarchical Clustering Technique
  • DBSCAN (Density Based Clustering) Technique
  • Recommender Systems and Matrix Factorization
  • Interview Questions on Recommender Systems and Matrix Factorization
  • Case Study 6: Amazon Fashion Discovery Engine (Content Based Recommendation)
  • Case Study 7: Netflix Movie Recommendation System (Collaborative Based Recommendation)
  • Case Study 8: Music Recommendation System
  • Sample Interview Questions

Module 7: Neural Networks, Computer Vision & Deep Learning

  • Deep Learning: Neural Networks
  • Deep Learning: Deep Multilayer Perceptrons
  • Deep Learning: TensorFlow and Keras
  • Deep Learning: Convolutional Neural Networks
  • Deep Learning: Long Short-Term Memory (LSTMs)
  • Deep Learning: Generative Adversarial Networks (GANs) & Encoder-Decoder Models
  • Deep Learning: Image Segmentation
  • Deep Learning: Object Detection
  • OpenCV using Python
  • Interview Questions on Deep Learning

Module 8: Deep Learning – Real World Case Studies

  • Case Study 10: Human Activity Recognition
  • Case Study 11: Self Driving Car
  • Case Study 12: Music Generation using Deep Learning
  • Case Study 14: Building a Smart Gym Assistant from Scratch

Module 9: Introduction to Transformers

  • Attention Models in Deep Learning
  • Deep Learning: Transformers and BERT
  • Deep Learning: GPT-1, GPT-2 and GPT-3 Models
  • Sample Interview Questions
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Maruthi Technologies

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  • ... 2 Students
  • ... 7 Courses
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