BIG DATA CONFERENCE
EUROPE 2021
Online Edition
September 28-30
Online
Sonal Goyal
Founder
India, Nube Technologies
Virtual Café
Preparing Data for Analytics
Main Problem
Data scientists and data analysts spend a majority of their time preparing data for analytics. Poor data quality, data silos, lack of common standards lead to more time wrangling data and less time analyzing it. Data engineers too are affected building data wrangling pipelines to get the right data in one place.
Why this topic is relevant?
If we can use data directly or with minimal effort, the job of a data scientist and engineer are greatly simplified. They can be far more productive and yield greater business results.
Common Trends
Uses of tools for data preparation, machine learning for preparing data for analytics, ad hoc wrangling are some of the ways data is prepared today.
« Back