STATSML 200: Unlock Dataset Metadata Insights via Adobe Experience Platform APIs and Python
This chapter covers the essential steps for installing necessary libraries, generating access tokens, and making authenticated API requests.
Use Case Overview
REST APIs in the Platform
Python vs Postman: Choosing the Right Tool for REST API Interactions
Prerequisites
STATSML 100: Python & JupyterLab Setup for Data DistillerPREP 500: Ingesting CSV Data into Adobe Experience PlatformBI 200: Create Your First Data Model in the Data Distiller Warehouse for DashboardingBefore You Create a Project


Stuff I Wish They Told Me
Create a Developer Project















Get the Access Token

Retrieve Datasets Information Across All Sandboxes

Data Processing of JSON into a Flat File
Get Row and Count Statistics on the Datasets
Upload the CSV into Data Landing Zone


Analysis in Python
Number of Datasets by Sandbox and Ownership

Total Volume Used in GB Across All Sandboxes Split By Ownership

Top 10 Datasets by Size in GB

Retrieve a List of Dataset Sizes and Rows by Sandbox
Average Record Richness by Sandbox (bytes per record)
Histogram of Dataset Sizes Across All Sandboxes

Profile-Enabled Datasets (GB) By Sandbox

User Contributions & Improvements
David Teko Kangni
Last updated
