Remove CTO Remove Data Remove Enterprise Remove Generative AI
article thumbnail

Want to Put AI to Work? Prime Your Organization With These 5 Shifts

Planview

Pair these considerations with internal and external pressures to rapidly adopt generative AI and scale it, and leveraging AI is easier said than done. To provide insight into those concerns, we spoke with a group of experts about AI’s challenges and opportunities.

article thumbnail

Unlocking Developer Productivity (and Happiness) with AI: GitHub’s Scott Densmore

Planview

How would that change the way you deliver technology? With the AI tools for developers that are now entering the market, enterprises are starting to realize big dreams like efficient digital product delivery and fast time to market. Scott leads the team behind GitHub Copilot , the AI developer tool for pair programming.

CTO 64
Insiders

Sign Up for our Newsletter

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

article thumbnail

Productivity, AI, and the Future of Digital Connected Work

Planview

Productivity has long been a source of curiosity and study for Planview’s Chief Technology Officer, Dr. Mik Kersten. They’re able to deliver value in a matter of days, create new products, new features, adapt to all the power that we have right now with generative AI tools like ChatGPT.

CTO 52
article thumbnail

Top 8 Digital Workplace Trends for 2019

Acuvate

As workplace demographics are transforming, employers struggle to match the evolving needs of a multi-generational workforce. New digital technologies have improved the way we analyze data, collaborate with employees, communicate and make decisions. Learn More: The role of chatbots in intelligent enterprise automation.

Trends 90
article thumbnail

LLMOps for Your Data: Best Practices to Ensure Safety, Quality, and Cost

Speaker: Shreya Rajpal, Co-Founder and CEO at Guardrails AI & Travis Addair, Co-Founder and CTO at Predibase

Large Language Models (LLMs) such as ChatGPT offer unprecedented potential for complex enterprise applications. However, productionizing LLMs comes with a unique set of challenges such as model brittleness, total cost of ownership, data governance and privacy, and the need for consistent, accurate outputs.