7 Best Practices for Machine Learning on a Data Lake

Why a data lake? Machine learning often requires an iterative process that can drain performance on a traditional warehouse. Data lakes are made for scale and experimentation. They also provide ample, diverse training data for the most comprehensive learning experience, which makes algorithmic assessments more accurate and successful when put into production.

|| | |

 
 
 
Download this TDWI Checklist Report for more details about the data requirements for advanced analytics on a data lake, as well as best practices for analytics-with a focus on machine learning-as performed on data lakes.
 
 

 

 

To your data and analytics success,

To your data and analytics success,

TDWI

Transforming Data with Intelligence | | |