Remove mastering-data-science-workflows-with-chatgpt
article thumbnail

Mastering Data Science Workflows with ChatGPT

KDnuggets

This article highlights the skills data scientists can learn to make the most use of the prowess of ChatGPT.

article thumbnail

Modernizing mainframe applications with a boost from generative AI

IBM Big Data Hub

Scarier still, the next generation of talent will be hard to recruit, as newer computer science graduates who learned Java and newer languages won’t naturally picture themselves doing mainframe application development. So much so that many companies are afraid to make substantive changes to them.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

Building digital fluency in the C-suite and beyond

CIO Business Intelligence

Translating the CEO’s strategy Another legacy organization, 105-year-old The Teachers Insurance and Annuity Association of America (TIAA), has “a specific focus on elevating data and digital fluency” across the organization, says Sastry Durvasula, CIO and client services officer. At his company, anyway.

article thumbnail

Getting ready for artificial general intelligence with examples

IBM Big Data Hub

While AGI remains theoretical, organizations can take proactive steps to prepare for its arrival by building a robust data infrastructure and fostering a collaborative environment where humans and AI work together seamlessly. It might suggest a restaurant based on preferences and current popularity.

article thumbnail

The most valuable AI use cases for business

IBM Big Data Hub

Promote cross- and up-selling Recommendation engines use consumer behavior data and AI algorithms to help discover data trends to be used in the development of more effective up-selling and cross-selling strategies, resulting in more useful add-on recommendations for customers during checkout for online retailers.

article thumbnail

Amazon OpenSearch Service’s vector database capabilities explained

AWS Big Data

Among them are the use of embedding models, a type of model that can encode a large body of data into an n-dimensional space where each entity is encoded into a vector, a data point in that space, and organized such that similar entities are closer together. You go to Amazon.com, and you type “a cozy place to sit by the fire.”

Metrics 76