GathrIQ to elevate data analytics with Gen AI integration

According to an official release, GathrIQ enables users to chat in natural language to generate code snippets in Python and Scala languages

Going by Gathr’s official website, it’s a data to outcome platform
Going by Gathr’s official website, it’s a data to outcome platform

Gathr, a data to outcome platform, recently launched Gen AI fabric, bringing a host of Gen AI integrations and features to its platform, with one of these features being GathrIQ, which is a Gen AI copilot. 

According to an official release, GathrIQ enables users to chat in natural language to generate code snippets in Python and Scala languages. From what it’s understood, users can generate SQL queries and expressions to search and refine their data. It is believed to help users discover right data assets for building ML and AI applications, and manage their data with auto metadata generation. 

Seemingly, users can build pipelines, with GathrIQ helping them in identifying the right operator for a task and automatically configuring and adding the operator in the pipeline. Reportedly, users can chat with GathrIQ to understand the usage of operators, and it can also fix errors encountered during the configuration of operators. For the uninitiated, Gathr is believed to offer over 200 built in operators that can be dragged into a pipeline to sort, parse, and filter the data or perform advanced transformations.

“It is trained to assist a specific set of data engineering and Gen AI-related workflows, and one should use it to understand the changes it brings to traditional data engineering methods. We believe GathrIQ, along with Gen AI integrations and capabilities, will bring a paradigm change in the data engineering and analytics space,” PC Kiran, CEO, Gathr, said. 

Follow us on TwitterFacebookLinkedIn

Get live Share Market updates, Stock Market Quotes, and the latest India News and business news on Financial Express. Download the Financial Express App for the latest finance news.

This article was first uploaded on February twenty-seven, twenty twenty-four, at thirty-five minutes past five in the evening.
Market Data
Market Data