Sun.Oct 26, 2014

article thumbnail

Big-Data Savvy Board

Future of CIO

Businesses of all sizes shall re-frame the big data conversation with stakeholders in the boardroom. The Big Data concept is still at the emerging stage, the members of the board are just now getting their feet wet, sweating out the risks of getting hacked. Big data conversation is a little ways off for members of the board, but it will eventually get noticed.

article thumbnail

Microsoft TechEd Barcelona Meets Web-Scale with Nutanix!

Nutanix

There’s no question that enterprise application usability has for the most part been left behind.

Meeting 20
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

An Authentic Mind: Grace, Appreciation and Your Genius Factor

Future of CIO

The genius factors and a ppreciation touch all things. The life we live is choreographed by grace which is flowing from our heart into our mind. Life is still full of inquiries: Doesn't energy follow the path of least resistance? Doesn't nature tend to leverage the flow while people more often than not endeavor to harness the flow to serve their own ends?

article thumbnail

How has Russell Ackoff's Work influenced on Decision Making?

Future of CIO

Ackoff provided concepts and tools of system learning to overcome blind spot in decision making. Russell Ackoff wrote a book with Frederick Edmund Emery about purposeful systems which focused on the question of how systems thinking relates to human behavior. "Individual systems are purposive," they said, "Knowledge and understanding of their aims can only be gained by taking into account the mechanisms of social, cultural, and psychological systems".

System 53
article thumbnail

Peak Performance: Continuous Testing & Evaluation of LLM-Based Applications

Speaker: Aarushi Kansal, AI Leader & Author and Tony Karrer, Founder & CTO at Aggregage

Software leaders who are building applications based on Large Language Models (LLMs) often find it a challenge to achieve reliability. It’s no surprise given the non-deterministic nature of LLMs. To effectively create reliable LLM-based (often with RAG) applications, extensive testing and evaluation processes are crucial. This often ends up involving meticulous adjustments to prompts.