×

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
Data Scientists and Augmented Data Discovery: A Match Made in Heaven
Data Scientists and Augmented Data Discovery: A Match Made in Heaven

Data science automation has historically focused on hyperparameter tuning and model optimization but now it...

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...