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Collection of my writing and inspiration in ML and Software Engineering in Python

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A curated list of my writing and inspiration in Machine Learning and Software Engineering

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Machine Learning Specialization on Coursera (offered by deeplearning.ai)

Courses

The Machine Learning Specialization on Coursera contains three courses:

flowchart TD
    B["fa:fa-twitter Machine Learning Specialization"]
    B-->C[fa:fa-ban Supervised Machine Learning: Regression and Classification]
    B-->D(fa:fa-spinner Advanced Learning Algorithms);
    B-->E(fa:fa-camera-retro Unsupervised Learning, Recommenders, Reinforcement Learning<Starting on July 20th>)
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About this Specialization

  • The Machine Learning Specialization is a foundational online program created in collaboration between DeepLearning.AI and Stanford Online. This beginner-friendly program will teach you the fundamentals of machine learning and how to use these techniques to build real-world AI applications.

  • This Specialization is taught by Andrew Ng, an AI visionary who has led critical research at Stanford University and groundbreaking work at Google Brain, Baidu, and Landing.AI to advance the AI field.

  • This 3-course Specialization is an updated version of Andrew’s pioneering Machine Learning course, rated 4.9 out of 5 and taken by over 4.8 million learners since it launched in 2012.

  • It provides a broad introduction to modern machine learning, including supervised learning (multiple linear regression, logistic regression, neural networks, and decision trees), unsupervised learning (clustering, dimensionality reduction, recommender systems), and some of the best practices used in Silicon Valley for artificial intelligence and machine learning innovation (evaluating and tuning models, taking a data-centric approach to improving performance, and more.)

  • By the end of this Specialization, you will have mastered key concepts and gained the practical know-how to quickly and powerfully apply machine learning to challenging real-world problems. If you’re looking to break into AI or build a career in machine learning, the new Machine Learning Specialization is the best place to start.

Applied Learning Project

By the end of this Specialization, you will be ready to:

  • Build machine learning models in Python using popular machine learning libraries NumPy and scikit-learn.

  • Build and train supervised machine learning models for prediction and binary classification tasks, including linear regression and logistic regression.

  • Build and train a neural network with TensorFlow to perform multi-class classification.

  • Apply best practices for machine learning development so that your models generalize to data and tasks in the real world.

  • Build and use decision trees and tree ensemble methods, including random forests and boosted trees.

  • Use unsupervised learning techniques for unsupervised learning: including clustering and anomaly detection.

  • Build recommender systems with a collaborative filtering approach and a content-based deep learning method.

  • Build a deep reinforcement learning model.

Programming Assignments

Course 1: Supervised Machine Learning: Regression and Classification


Week 2 : Practice lab: Linear regression

Notebook

Week 3 : Practice lab: logistic regression

Notebook

Course 2: Advanced Learning Algorithms


Week 1 : Practice Lab: Neural Networks for Binary Classification

Notebook

Week 2 : Practice Lab: Neural Networks for Multiclass classification

Notebook

Week 3 : Practice Lab: Advice for Applying Machine Learning

Notebook

Week 4 : Practice lab: decision trees

Notebook

Course 3: Unsupervised Learning, Recommenders, Reinforcement Learning


Week 1 : Practice Lab: KMeans

Notebook

Week 1 : Practice Lab: Anomaly Detection

Notebook

Week 2 : Practice Lab: Collaborative Filtering Recommender Systems

Notebook

Week 2 : Practice lab:Deep Learning for Content-Based Filtering

Notebook

Week 3 : Practice Lab: Reinforcement Learning

Notebook

📝 Disclaimer

I made this repository as a reference. Please do not copy paste the solution as is. You can find the solution if you read the instruction carefully.

📝 License

The gem is available as open source under the terms of the MIT License.