Mastering Data Science with Python
with fully coded examples, case studies, systems designs & more
Topics Covered:
◉ Introduction to Data Science
◉ Setting Up Your Environment
◉ Python Basics for Data Science
◉ Data Collection
◉ Data Cleaning and Preparation
◉ Exploratory Data Analysis (EDA)
◉ Introduction to Data Visualization
◉ Matplotlib
◉ Seaborn
◉ Plotly and Interactive Visualizations
◉ Introduction to Machine Learning
◉ Data Preparation for Machine Learning
◉ Supervised Learning
◉ Unsupervised Learning
◉ Model Evaluation and Tuning
◉ Introduction to Deep Learning
◉ Neural Networks
◉ Convolutional Neural Networks (CNNs)
◉ Recurrent Neural Networks (RNNs)
◉ Transfer Learning
◉ Generative Adversarial Networks (GANs)
◉ Reinforcement Learning
◉ Introduction to NLP
◉ Text Preprocessing
◉ Text Representation
◉ Text Classification
◉ Named Entity Recognition (NER)
◉ Machine Translation
◉ Introduction to Deployment
◉ Model Serialization and Saving
◉ Model Serving with Flask
◉ Model Serving with FastAPI
◉ Monitoring and Maintenance
◉ Case Study: Deploying a Real-World NLP Model
◉ Predictive Maintenance in Manufacturing
◉ Customer Segmentation in Retail
◉ Fraud Detection in Finance
◉ Image Classification in Healthcare
◉ Sentiment Analysis in Social Media
◉ Python for Data Science Cheat Sheet
◉ Scikit-Learn Cheat Sheet
◉ TensorFlow and Keras Cheat Sheet
◉ Matplotlib and Seaborn Cheat Sheet
◉ Deployment Cheat Sheet
◉ Mathematical Foundations
◉ Python Reference
◉ Data Science Resources
◉ Glossary of Terms
Reviews
There are no reviews yet.