Artificial Intelligence

Python Programming with ML & AI

From Python data science fundamentals to advanced deep learning — build, evaluate, and deploy real-world ML models with TensorFlow, Scikit-learn, and Flask.

4.9 (3,400 Reviews)
Meena Krishnamurthy
Meena Krishnamurthy
Last Updated: April 29, 2026
Description

From Python data science fundamentals to advanced deep learning, this course covers NumPy, Pandas, Scikit-learn, TensorFlow, and NLP. Build real-world ML models, deploy them with Flask, and learn MLOps best practices.

Course Requirements
  • Intermediate Python programming knowledge
  • Basic understanding of statistics and linear algebra is helpful
  • A computer with at least 8GB RAM (GPU optional)
  • Curiosity and willingness to experiment with data
What You Will Learn
  • Perform EDA and data wrangling with NumPy and Pandas
  • Build and evaluate classification, regression, and clustering models
  • Apply ensemble methods: XGBoost, Random Forest, LightGBM
  • Design deep learning models with TensorFlow and Keras
  • Build CNNs for image tasks and LSTMs for sequence data
  • Implement NLP pipelines including BERT-based models
  • Deploy ML models as REST APIs using Flask and FastAPI
  • Track experiments and manage model lifecycle with MLflow

Video: NumPy Arrays & Broadcasting
08:30
Video: Pandas Series & DataFrames
12:45
Reading: Data Cleaning & Handling Missing Values
05:00
Video: Exploratory Data Analysis (EDA)
15:20
Audio: Matplotlib & Seaborn Visualisation
06:10

Video: ML Pipeline: Train, Validate & Test
08:30
Video: Linear & Polynomial Regression
12:45
Reading: Logistic Regression & Classification Metrics
05:00
Video: Decision Trees & Random Forests
15:20
Audio: Support Vector Machines
06:10
Video: K-Means & DBSCAN Clustering
11:55

Video: Ensemble Methods: Boosting & Bagging
08:30
Video: XGBoost & LightGBM
12:45
Reading: Principal Component Analysis (PCA)
05:00
Video: Cross-Validation & Hyperparameter Tuning
15:20
Audio: Feature Engineering & Selection
06:10

Video: Artificial Neural Networks & Backpropagation
08:30
Video: TensorFlow 2 & Keras API
12:45
Reading: CNNs for Image Classification
05:00
Video: Transfer Learning with ResNet & VGG
15:20
Audio: RNNs & LSTMs for Sequences
06:10
Video: Autoencoders & Variational Models
11:55

Video: Text Preprocessing: Tokenisation & Stemming
08:30
Video: TF-IDF & Word Embeddings
12:45
Reading: Transformer Architecture & BERT
05:00
Video: Sentiment Analysis & Text Classification
15:20
Audio: Named Entity Recognition
06:10

Video: Saving & Loading Models
08:30
Video: REST API with Flask & FastAPI
12:45
Reading: Docker for ML Services
05:00
Video: MLflow for Experiment Tracking
15:20
Audio: CI/CD for ML Pipelines
06:10
Meena Krishnamurthy

Meena Krishnamurthy

(4.9)
1 Courses 11 Enrolled

ML Engineer and AI researcher with a PhD in Computer Science. Core contributor to open-source NLP libraries. Previously at ISRO AI Lab and Google DeepMind research program.

4.9

3,400 Students Review

40%
40%
20%
0%
0%
Reviews (5)
Ravi Teja
Ravi Teja
1 month ago

Good course overall. The video quality is great and the explanations are clear. Would love more practice exercises.

Preethi Krishnan
Preethi Krishnan
2 months ago

Very practical course with real project experience. The step-by-step approach made it easy to follow even for beginners.

Nikhil Malhotra
Nikhil Malhotra
2 months ago

I have taken many online courses but this is by far the most comprehensive and well-taught. The projects are excellent.

Aditya Rao
Aditya Rao
2 months ago

The course content is up to date and covers everything you need to get started professionally.

Anjali Singh
Anjali Singh
3 months ago

Amazing course! I was a complete beginner and now feel confident enough to work on real projects. Thank you!

Rs 20,000Rs 27,000
26% Off
Enroll Now
  • Instructor: Meena Krishnamurthy
  • Level : Advanced
  • Lectures : 32 Lectures
  • Duration: 90 Days
  • Enrolled: 11 Students
  • Language: English
Course Includes
  • Full Lifetime Access
  • Downloadable Resources
  • Certificate Of Completion
  • Community Support
  • 15 Days Money Back Guarantee