Paxata 4 Styles of Data Prep

April 5, 2019

There are 4 primary styles or approaches for data preparation. Which one is right for your organization? It’s an important decision for data analysts and data practitioners, who often spend the majority of their time (up to 80%) during data science projects painstakingly preparing data for analysis.

Download this eBook to learn:

  • Paradigms and comparison formats to consider when evaluating the 4 data prep styles
  • Strengths, challenges, and use cases inherent with each data prep style
  • Strategies for deciding which data prep style best fits your needs
Previous Video
Paxata Self Service Data Preparation | Key Capabilities at a Glance
Paxata Self Service Data Preparation | Key Capabilities at a Glance

The most time-consuming part of every analytic or data science exercise continues to be in profiling, combi...

Next Video
Parsing XML Data with Paxata Self-Service Data Prep
Parsing XML Data with Paxata Self-Service Data Prep

In this how-to video, we will see how Paxata facilitates ingesting, parsing, profiling, and transforming XM...