Video description
As Accenture scaled to millions of predictive models, it required automation to ensure accuracy, prevent false alarms, and preserve trust. Teresa Tung, Ishmeet Grewal, and Jurgen Weichenberger explain how Accenture implemented a DevOps process for analytical models that's akin to software development—guaranteeing analytics modeling at scale and even in noncloud environments at the edge.
This talk was originally given at Strata 2017 Singapore.
Product information
- Title: DevOps for models: How Accenture managed millions of models in production—and at the edge
- Author(s):
- Release date: April 2018
- Publisher(s): O'Reilly Media, Inc.
- ISBN: 9781492037385
You might also like
article
Run Llama-2 Models Locally with llama.cpp
Llama is Meta’s answer to the growing demand for LLMs. Unlike its well-known technological relative, ChatGPT, …
article
Reinventing the Organization for GenAI and LLMs
Previous technology breakthroughs did not upend organizational structure, but generative AI and LLMs will. We now …
article
Why So Many Data Science Projects Fail to Deliver
Many companies are unable to consistently gain business value from their investments in big data, artificial …
video
Kick-starting a culture of observability and data-driven DevOps (sponsored by SignalFx)
It’s widely recognized that monitoring is a critical aspect of operating a service, but the practice …