×

Get the complete guide and jump start data acquisition.

First Name
Last Name
Company Name
!
Thank you!
Error - something went wrong!
   

The Complete Guide For Data Acquisition

Data scientists are constantly challenged with improving their ML models. But when a new algorithm won’t improve your AUC there’s only one place to look: DATA. 

Generating, testing, and integrating new features from various internal and/or external sources is time-consuming, difficult, and more “artistic.” But it could lead to a major discovery and move the needle much more. 

 

This whitepaper breaks down:

  • Six easy-to-follow steps for data acquisition

  • Complete checklist for data provider due diligence 

  • Data provider tests to uplift your model’s accuracy

Previous Flipbook
AI is Making BI Obsolete, and Machine Learning is Leading the Way
AI is Making BI Obsolete, and Machine Learning is Leading the Way

Why are we still hung up on BI? It’s time to embrace a paradigm that empowers us to make smarter, better pr...

Next Flipbook
Feature Generation: The Next Frontier of Data Science
Feature Generation: The Next Frontier of Data Science

It's time to take feature generation - a subset of feature engineering - from an art to a science by openin...