RamiKrispin / awesome-ds-setting
A tutorial for setting a new machine with core data science tools
☆290Updated 3 months ago
Alternatives and similar repositories for awesome-ds-setting:
Users that are interested in awesome-ds-setting are comparing it to the libraries listed below
- (WIP) Getting started with Docker - An introduction to Docker with data science and engineering applications☆129Updated last year
- Applied Time Series Analysis and Forecasting☆166Updated 2 years ago
- ☆281Updated last year
- Deploying flexdashboard on Github Pages with Docker and Github Actions☆216Updated last year
- Python for Data Science. This repository hosts the code behind the online book that teaches you how to use Python for data science.☆135Updated 2 months ago
- Materials for the AI Dev 2024 conference workshop "Deploy and Monitor ML Pipelines with Python, Open Source, and Free Applications"☆93Updated this week
- Polars Cookbook, Published by Packt☆322Updated 5 months ago
- Testing hypotheses through statistical models opens a universe of new possibilities. Learn how to improve your daily work with this appro…☆81Updated last year
- ☆80Updated 11 months ago
- A Tutorial for Setting R Development Environment with VScode, Dev Containers, and Docker☆264Updated 8 months ago
- A book on DevOps for Data Scientists with CRC Press.☆163Updated 3 months ago
- Resources for Survival Analysis☆93Updated 6 months ago
- A guide for deploying Shinylive Python application into Github Pages☆134Updated last year
- summarytools in jupyter notebook☆106Updated 7 months ago
- Source for book "Feature Engineering A-Z"☆139Updated 2 weeks ago
- Website sources for Applied Machine Learning for Tabular Data☆135Updated this week
- ☆107Updated 11 months ago
- Tutorials on creating a reproducible and maintainable data science project☆143Updated 2 years ago
- A Python Environment Template for VScode with UV☆57Updated 2 months ago
- A tutorial for setting an SQL code generator with the OpenAI API☆244Updated 9 months ago
- Materials for the Deploy and Monitor ML Pipelines with Python, Docker and GitHub Actions workshop at the PyData NYC 2024 conference☆80Updated this week
- An example of a project for doing data work in Python using notebooks but also placing code in Python files and testing them☆99Updated last year
- Find data quality issues and clean your data in a single line of code with a Scikit-Learn compatible Transformer.☆129Updated last year
- Forecasting: Principles and Practice☆59Updated 3 years ago
- Code for the book "Software Engineering for Data Scientists"☆67Updated last week
- A book of subtle code tricks and gem resources for all things data, machine learning and deep learning.☆165Updated 7 months ago
- Bayesian statistics graduate course☆353Updated 5 months ago
- Forecasting: principles and practice in python☆129Updated last year
- StatsResourcesHub: Your go-to repository for all things statistics and programming. Find tutorials, code samples, and tips in Python, R,…☆52Updated 6 months ago
- Learn by doing: DIY project groups at DataTalks.Club☆401Updated 10 months ago