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Tag: tooling

32 posts with this tag

The Evaluation Playbook: Making LLMs Production-Ready

The Evaluation Playbook: Making LLMs Production-Ready

A comprehensive exploration of real-world lessons in LLM evaluation and quality assurance, examining how industry leaders tackle the challenges of assessing language models in production. Through diverse case studies, the post covers the transition from traditional ML evaluation, establishing clear metrics, combining automated and human evaluation strategies, and implementing continuous improvement cycles to ensure reliable LLM applications at scale.

Dec 14, 20247 mins
LLMOps Lessons Learned: Navigating the Wild West of Production LLMs 🚀

LLMOps Lessons Learned: Navigating the Wild West of Production LLMs 🚀

Explore key insights and patterns from 300+ real-world LLM deployments, revealing how companies are successfully implementing AI in production. This comprehensive analysis covers agent architectures, deployment strategies, data infrastructure, and technical challenges, drawing from ZenML's LLMOps Database to highlight practical solutions in areas like RAG, fine-tuning, cost optimization, and evaluation frameworks.

Dec 2, 20246 mins
Using ZenML with LLMs to Analyze Your Databases: A Case Study with you-tldr.com and Supabase/GPT-4

Using ZenML with LLMs to Analyze Your Databases: A Case Study with you-tldr.com and Supabase/GPT-4

Explore how ZenML, an MLOps framework, can be used with large language models (LLMs) like GPT-4 to analyze and version data from databases like Supabase. In this case study, we examine the you-tldr.com website, showcasing ZenML pipelines asynchronously processing video data and generating summaries with GPT-4. Understand how to tackle large language model limitations by versioning data and comparing summaries to unlock your data's potential. Learn how this approach can be easily adapted to work with other databases and LLMs, providing flexibility and versatility for your specific needs.

Apr 30, 202310 mins read
How to train and deploy a machine learning model on AWS Sagemaker with ZenML and BentoML

How to train and deploy a machine learning model on AWS Sagemaker with ZenML and BentoML

Learn how to use ZenML pipelines and BentoML to easily deploy machine learning models, be it on local or cloud environments. We will show you how to train a model using ZenML, package it with BentoML, and deploy it to a local machine or cloud provider. By the end of this post, you will have a better understanding of how to streamline the deployment of your machine learning models using ZenML and BentoML.

Dec 14, 202211 Mins Read
The Framework Way is the Best Way: the pitfalls of MLOps and how to avoid them

The Framework Way is the Best Way: the pitfalls of MLOps and how to avoid them

As our AI/ML projects evolve and mature, our processes and tooling also need to keep up with the growing demand for automation, quality and performance. But how can we possibly reconcile our need for flexibility with the overwhelming complexity of a continuously evolving ecosystem of tools and technologies? MLOps frameworks promise to deliver the ideal balance between flexibility, usability and maintainability, but not all MLOps frameworks are created equal. In this post, I take a critical look at what makes an MLOps framework worth using and what you should expect from one.

May 24, 20229 Mins Read
Podcast: Practical Production ML with Emmanuel Ameisen

Podcast: Practical Production ML with Emmanuel Ameisen

This week I spoke with Emmanuel Ameisen, a data scientist and ML engineer currently based at Stripe. Emmanuel also wrote an excellent O'Reilly book called 'Building Machine Learning Powered Applications', a book I find myself often returning to for inspiration and that I was pleased to get the chance to reread in preparation for our discussion.

Mar 18, 20221 Min Read
Richify that CLI!

Richify that CLI!

We recently reworked a number of parts of our CLI interface. Here are some quick wins we implemented along the way that can help you improve how users interact with your CLI via the popular open-source library, rich.

Feb 28, 20228 Mins Read

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