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12 Steps to Reproducible Machine Learning in Production

12 Steps to Reproducible Machine Learning in Production

by Maiot | Sep 12, 2020 | Infrastructure, MLOps

The last two decades have yielded us some great understandings about Software Development. A big part of that is due to the emergence of DevOps and it’s wide adoption throughout the industry. Leading software companies follow identical patterns: Fast iterations in...
Building an AI Red Team – Talk at Red Hat OpenShift Commons

Building an AI Red Team – Talk at Red Hat OpenShift Commons

by Daniel Jeffries | Sep 10, 2020 | MLOps

At my keyote for the Red Hat OpenShift Commons AI Conference I talked about building an AI Red Team whose job it is to fix  AI when it goes wrong.  With algorithms making more and more decisions in our lives, from who gets a job, to who gets hired and fired, and even...
Building and End-to-End MLOPs platform with Pachyderm, Determined AI and Seldon.

Building and End-to-End MLOPs platform with Pachyderm, Determined AI and Seldon.

by Determined AI | Aug 16, 2020 | Infrastructure, MLOps

In this excellent tutorial from the Determined AI team, evangelist David Hersey walks through crafting an end to end machine learning pipeline and how to: Create data repositories with Pachyderm, using Pachyderm data pipelines to prepare the data for training Build a...
When to Use CPU, GPUs or TPUs

When to Use CPU, GPUs or TPUs

by AI Infrastructure Alliance | Mar 7, 2020 | AI Hardware, Infrastructure, MLOps

It’s an amazing time for data scientists everywhere, as the hardware needed to crunch numbers like never before comes online. It wasn’t long ago that there were only a few chip manufacturers in the world, Intel and AMD, working on essentially the same...

Data Logging: Sampling versus Profiling

by WhyLabs | Jan 22, 2020 | Logging, MLOps, Monitoring

Roads, Where We’re Going We Don’t Need Roads

Roads, Where We’re Going We Don’t Need Roads

by Daniel Jeffries | Sep 30, 2019 | Infrastructure, MLOps, Open Source

There’s an exciting side to AI.  Intense, multi-million dollar research over many years that leads to a billion dollar algorithmic breakthrough that keeps self-driving cars from crashing or detects lung cancer better than ever is glamorous part of intelligent...
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