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Enterprise Model Inventory
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How Business Leaders Should Be Thinking About Generative AI Today
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Cloudera acquires Verta Operational AI Platform to bring trusted, hybrid AI to the enterprise
April Model Roundup
Featured
Baasit Sharief • Apr 8, 2024
Conrado Silva Miranda • Feb 5, 2024
Rigorous LLM Evaluation With a Human Touch
As the ecosystem around evaluation for large language models (LLMs) matures, it’s important that we continue to keep humans in the loop. In this post, I’ll share how it’s possible to incorporate a human touch while still being rigorous. We’ll start with why this is important in the first place and then cover actionable strategies for building an LLM evaluation system.
Conrado Silva Miranda • Aug 16, 2023
Don't Overlook the Operational Challenges of Generative AI
AI challenges: learn why executives weighing generative AI initiatives need to be aware of the operational obstacles that make Gen AI difficult to deploy
Conrado Silva Miranda • Jun 14, 2023
AWS US-East-1 Goes Down Again, and People Scream “Multi-Region!” - A Rant
AWS US-East-1 had issues Tuesday, bringing down a lot of the internet. The usual response: People scream, 'Multi-regions!' But that's hard to implement.
Conrado Silva Miranda • Dec 1, 2021
3 Reasons Why ML Code Is Not Like Software
In ML code, a copy/paste approach of familiar DevOps processes to the unfamiliar task rarely works. There are three main reasons why; learn them here.
Conrado Silva Miranda • Nov 13, 2020
How to Deploy ML models with AWS Lambda
AWS Lambda deployment for ML: This post talks about how to get started with deploying models on AWS Lambda & pros and cons of using this system for inference.
Conrado Silva Miranda • Aug 25, 2020
The Third Wave of Operationalization is Here: MLOps
Operationalization in AI is the key to success while most companies fail at extracting value from using machine learning models in products prorerly.
Conrado Silva Miranda • Jun 17, 2020
Secure your machine learning platform
ML Platform Security: Inspired by the Kubeflow exploit for cryptomining. How to secure your machine learning platform so that attackers cannot take over.
Conrado Silva Miranda • Jun 11, 2020
Happy birthday, Git!
Why Git versioning won the battle, its shortcomings, how the ecosystem has improved to counter them, and the key takeaways we need for machine learning.
Conrado Silva Miranda • Mar 17, 2020
ModelDB 2.0 is here!
Announcing a mojor release: ModelDB 2.0 is now available! We'd like to thank all of our partners who inspired and helped design, test & validate this release.