jgoerner / beyond-jupyter
ππ»π All material from the PyCon.DE 2018 Talk "Beyond Jupyter Notebooks - Building your own data science platform with Python & Docker" (incl. Slides, Video, Udemy MOOC & other References)
β156Updated 6 years ago
Alternatives and similar repositories for beyond-jupyter:
Users that are interested in beyond-jupyter are comparing it to the libraries listed below
- π³ππ€Cookiecutter template to launch an awesome dockerized Data Science toolstack (incl. Jupyster, Superset, Postgres, Minio, AirFlow & β¦β211Updated last year
- Materials for "Docker for Data Science" tutorial presented at PyCon 2018 in Cleveland, OHβ151Updated 4 years ago
- β154Updated 4 years ago
- ππ¨ Airflow tutorial for PyCon 2019β85Updated 2 years ago
- Material for Talk at PyData Seattle 2017β168Updated 6 years ago
- Dockerized ML Cookiecutterβ71Updated 2 years ago
- edaviz - Python library for Exploratory Data Analysis and Visualization in Jupyter Notebook or Jupyter Labβ225Updated 5 years ago
- Production Data Science: a workflow for collaborative data science aimed at productionβ454Updated 4 years ago
- Data Science Project Templateβ138Updated 6 years ago
- β47Updated 5 years ago
- Learn how to build a data analysis library from scratchβ204Updated 3 years ago
- Tutorial given at PyData LA 2018β97Updated 5 months ago
- Code, slides, and documentation for the talks I have given.β113Updated last year
- β290Updated 5 years ago
- Up Your Bus Number: A Primer for Reproducible Data Scienceβ68Updated 5 years ago
- Cookiecutter template for data scientists working with Docker containersβ351Updated 3 years ago
- A short tutorial for data scientists on how to write tests for code + data.β119Updated 4 years ago
- Tutorial for a new versioning Machine Learning pipelineβ81Updated 3 years ago
- Template repository for data science lifecycle projectβ185Updated 4 years ago
- Material for my PyData Jupyter & Pandas Workshops, I'm also available for personal in-house trainings on requestβ65Updated 3 years ago
- β18Updated 5 years ago
- Data Analysis Baseline Libraryβ130Updated 3 months ago
- The Data Science Lifecycle Process is a process for taking data science teams from Idea to Value repeatedly and sustainably. The process β¦β498Updated 3 years ago
- A short workshop on datascience pipelines using mlflow and airflowβ53Updated last year
- Reference package for unit testsβ49Updated 6 years ago
- Advanced Machine Learning with Scikit-learn part Iβ142Updated 4 years ago
- HandySpark - bringing pandas-like capabilities to Spark dataframesβ192Updated 5 years ago
- Repository with sample code and instructions for "Continuous Intelligence" and "Continuous Delivery for Machine Learning: CD4ML" workshopβ¦β318Updated 6 months ago
- Test-Driven Data Analysis Functionsβ296Updated last week
- Data Analysis Baseline Libraryβ728Updated 2 months ago