Watson Studio provides the data science features in a collaborative environment for data scientists, developers, and domain experts to explore, analyze, and model data.
Create a Watson Studio project from a zipped file and from a GitHub repository
Watch this video to see how to create a Watson Studio project in IBM Cloud Pak for Data from a zipped file and from a GitHub Repository.
Jupyter notebook basics in Watson Studio
Watch this video which covers the basics for working with Jupyter notebooks in Watson Studio.
Collaborate on projects
Watch this video to see how to add collaborators to a Watson Studio project in IBM Cloud Pak for Data so you can work with others on project assets.
Create a custom environment for Jupyter notebooks in Watson Studio
Watch this video to see how to create a custom runtime environment for use with a Jupyter notebook in Watson Studio.
Add a connection and connected data to a project
Watch this video to see how to set up a connection to a data source and add connected data to a Watson Studio project in IBM Cloud Pak for Data.
Visualize data with Brunel in Jupyter notebooks
Watch this video to see how to use the Brunel Visualization language to easily build interactive charts and diagrams in a Jupyter notebook inside a Watson Studio project.
Enable Git integration
If you enable Git integration in a Watson Studio project, then you can sync your project with a GitHub repository and allow collaborators to use the JupyterLab Integrated Development Environment (IDE). Watch this video to see how to enable Git integration in a Watson Studio project to use the JupyterLab IDE.
Create models with Watson Machine Learning
If you add Watson Machine Learning to Watson Studio, you can deploy and evaluate models. And Watson Machine Learning includes AutoAI, which gives data scientists superpowers by automating 80% of core data science processes like preparing data, selecting the best machine learning algorithm, and applying feature engineering. Watch this video to see how to use AutoAI to build a binary classification model, and then deploy and test that model.
Use the Data Refinery to shape raw data
Watson Studio and Watson Knowledge Catalog include the Data Refinery to saves you data preparation time by quickly transforming large amounts of raw data into consumable, quality information. Watch this video to see how to use the Data Refinery to shape raw data.