Session

Mainframe Data Wrangling: Preparing Your Mainframe Data for Use in AI models

85% of AI projects fail according to Gartner - in this session we'll focus on one of the key reasons that the other 15% are successful and often profitable - high quality data. Additionally, they report that "53% of organizations [...] rated their own ability to mine and exploit data as "limited"". If data, especially high quality data, is one of the keys to success then we're in trouble.

Data engineering or data wrangling might be a new term to many but it's at the heart of the next wave of machine learning and artificial intelligence innovations. Successful enterprises that are adopting these tools understand that at the center of successful AI solutions is high quality data being collected to answer a specific, often narrow, business problem.

Whether you're new to working with raw data or a seasoned veteran, this session will inspire you to have another look at the business problem your trying to solve with AI and how increasing the data quality can have a huge impact on your results.

Joshua Powell

Staff Software Engineer, Broadcom

Pittsburgh, Pennsylvania, United States

Actions

Please note that Sessionize is not responsible for the accuracy or validity of the data provided by speakers. If you suspect this profile to be fake or spam, please let us know.

Jump to top