Naviden / ML-intro-with-Python
This repository offers a hands-on guide to machine learning with Python, featuring a Jupyter notebook on data processing, regression techniques, evaluation, and optimization. It's suitable for learners at all levels and sets the stage for future expansion into broader machine learning topics.
☆38Updated last year
Alternatives and similar repositories for ML-intro-with-Python:
Users that are interested in ML-intro-with-Python are comparing it to the libraries listed below
- Code for the book "Software Engineering for Data Scientists"☆67Updated 2 weeks ago
- Python Feature Engineering Cookbook, Third Edition, published by Packt☆53Updated 8 months ago
- Repository with code examples of mlflow☆69Updated 2 weeks ago
- Materials for the AI Dev 2024 conference workshop "Deploy and Monitor ML Pipelines with Python, Open Source, and Free Applications"☆93Updated this week
- Microsoft Certified: Azure Data Scientist Associate Certification Guide, published by Packt☆55Updated 2 years ago
- ☆11Updated last year
- Modern Graph Theory Algorithms with Python, published by Packt☆27Updated 10 months ago
- Code repository for the book feature selection in machine learning☆28Updated last week
- This repository contains everything you need to become proficient in Data Science☆202Updated last year
- Code repository for the online course Machine Learning Interpretability☆26Updated 6 months ago
- Mastering NLP from Foundations to LLMs, Published by Packt☆90Updated this week
- This repository contains projects covering Data Analytics, Data Science, Data Engineering, Machine Learning☆113Updated last year
- Tutorials for the Hopsworks Platform☆287Updated last week
- ☆47Updated 2 weeks ago
- ☆53Updated 8 months ago
- A Python Environment Template for VScode with UV☆57Updated 2 months ago
- Forecasting: Principles and Practice☆59Updated 3 years ago
- Accompanying data and code for The Well-Grounded Data Analyst (Manning, 2025)☆25Updated last month
- Data Cleaning and Exploration with Machine Learning☆53Updated 2 years ago
- Predicting time-series economics stats with ML and explaining it☆36Updated last month
- Materials for the Deploy and Monitor ML Pipelines with Python, Docker and GitHub Actions workshop at the PyData NYC 2024 conference☆81Updated this week
- Repository for the book Simplifying Machine Learning with PyCaret.☆65Updated 2 years ago
- (WIP) Getting started with Docker - An introduction to Docker with data science and engineering applications☆129Updated last year
- Compute and store real-time features for crypto trading using Bytwax (stream processing) and Hopsworks (Feature Store)☆142Updated last year
- ☆216Updated 2 months ago
- This repo is for LinkedIn Learning course: Data Pipeline Automation with GitHub Actions☆40Updated this week
- A tutorial for setting an SQL code generator with the OpenAI API☆244Updated 9 months ago
- Essential PySpark for Scalable Data Analytics, published by Packt☆44Updated 2 years ago
- ML Zoomcamp fall 2021 homework and stuff☆64Updated 3 years ago
- Develop and deploy a real-time feature pipeline in Python, using Bytewax 🐝 and Hopsworks Feature Store.☆135Updated last year