Difference between revisions of "Notebooks"
m |
m |
||
Line 15: | Line 15: | ||
* [[Git - GitHub and GitLab]] | * [[Git - GitHub and GitLab]] | ||
* [[Python]] ... [[Generative AI with Python]] ... [[Javascript]] ... [[Generative AI with Javascript]] ... [[Game Development with Generative AI]] | * [[Python]] ... [[Generative AI with Python]] ... [[Javascript]] ... [[Generative AI with Javascript]] ... [[Game Development with Generative AI]] | ||
+ | * [[Development]] ...[[Development#AI Pair Programming Tools|AI Pair Programming Tools]] ... [[Analytics]] ... [[Visualization]] ... [[Diagrams for Business Analysis]] | ||
* [http://databricks.com/product/collaborative-notebooks Collaborative Notebooks | Databricks] | * [http://databricks.com/product/collaborative-notebooks Collaborative Notebooks | Databricks] | ||
* [http://blog.cloudera.com/use-your-favorite-editor-in-cloudera-data-science-workbench-1-6/ Use Your Favorite Editor in Cloudera Data Science Workbench (CDSW) | Cloudera] | * [http://blog.cloudera.com/use-your-favorite-editor-in-cloudera-data-science-workbench-1-6/ Use Your Favorite Editor in Cloudera Data Science Workbench (CDSW) | Cloudera] |
Revision as of 13:03, 17 March 2023
Youtube search... ...Google search
- Jupyter notebooks
- Colaboratory
- Python and installing with Anaconda
- Kaggle Overview
- SageMaker
- Git - GitHub and GitLab
- Python ... Generative AI with Python ... Javascript ... Generative AI with Javascript ... Game Development with Generative AI
- Development ...AI Pair Programming Tools ... Analytics ... Visualization ... Diagrams for Business Analysis
- Collaborative Notebooks | Databricks
- Use Your Favorite Editor in Cloudera Data Science Workbench (CDSW) | Cloudera
- Docusaurus maintain Open Source documentation websites.
- Mode - Every Mode report contains an integrated notebook-style environment where you can use either Python or R to further explore and visualize your query results. Whenever a report is run, any code included in that report’s notebook will also run.
R Markdown
R Markdown documents are fully reproducible. Use a productive notebook interface to weave together narrative text and code to produce elegantly formatted output. Use multiple languages including R, Python, and SQL.