Subject archive for "it-leaders"

cost savings, governance, IT compute cloud savings
Cost-Effective Data Science

How to Cut AI Infrastructure Costs by 74% with Domino

How One IT Group Did It with Three Cost Governance Strategies

By Leila Nouri5 min read

Data Science

Evaluating Ray: Distributed Python for Massive Scalability

Dean Wampler provides a distilled overview of Ray, an open source system for scaling Python systems from single machines to large clusters. If you are interested in additional insights, register for the upcoming Ray Summit.

By Dean Wampler14 min read

Data Science

Put Models at the Core of Business Processes

At Rev, Nick Elprin, Domino's CEO, continued to provide insights on managing data science based upon years of candid discussions with customers. He also delved into how data science leaders can utilize model management and help their companies become successful model-driven organizations. This blog post provides a distilled summary of the whitepaper, "Introducing Model Management". The whitepaper is a companion to his talk and is also available for download.

By Domino3 min read

Data Science

Best Practices for Managing Data Science at Scale

We recently published a practical guide for data science management intended to help current and aspiring managers learn from the challenges and successes of industry leaders. This blog post provides a distilled summary of the guide.

By Mac Steele3 min read

Data Science

What Your CIO Needs to Know about Data Science

What would you rather be doing? Data science or DevOps?

By Domino4 min read

Data Science

Data Science != Software Engineering

Why understanding key differences between data science and engineering matters

By Domino3 min read

Subscribe to the Domino Newsletter

Receive data science tips and tutorials from leading Data Science leaders, right to your inbox.


By submitting this form you agree to receive communications from Domino related to products and services in accordance with Domino's privacy policy and may opt-out at anytime.