Remove topic subject compensation-and-benefits
article thumbnail

WGA deal: Writers strike deal details about AI and beyond

Dataconomy

“Today, your Negotiating Committee, the WGAW Board and WGAE Council all voted unanimously to recommend the agreement,” stated the guild regarding the writers strike deal details that were finalized with studios and streamers this past Sunday. “It It will now go to both Guilds’ memberships for a ratification vote. a Netflix original series).

AI 184
article thumbnail

Qualifications to Become a Data Analyst

Data Science 101

Picking a career is one of the most critical decisions that we need to take. It requires careful thinking and a lot of deliberation. It doesn’t just affect you, but also your family, who have high hopes from you. And, it’s okay to be swayed by your own interests and preferences. Who is a Data Analyst?

professionals

Sign Up for our Newsletter

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

article thumbnail

Former U.S. Chief Data Scientist on past and future of data science

Snorkel AI

The two held a wide-ranging conversation covering topics including what it was like to be the first U.S. ” DJ Patil That purview turned into a mission statement, which is to responsibly unleash the power of data to benefit all Americans. Chief Data Scientist, and where the title “data scientist” came from. That sounds awesome.

article thumbnail

Former U.S. Chief Data Scientist on past and future of data science

Snorkel AI

The two held a wide-ranging conversation covering topics including what it was like to be the first U.S. ” DJ Patil That purview turned into a mission statement, which is to responsibly unleash the power of data to benefit all Americans. Chief Data Scientist, and where the title “data scientist” came from. That sounds awesome.

article thumbnail

Definite Guide to Building a Machine Learning Platform

The MLOps Blog

Moving across the typical machine learning lifecycle can be a nightmare. From gathering and processing data to building models through experiments, deploying the best ones, and managing them at scale for continuous value in production—it’s a lot. To do that, you’d need to take a systematic approach to MLOps —enter platforms!