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LLMOps demystified: Why it’s crucial and best practices for 2023

Data Science Dojo

Similar to traditional Machine Learning Ops (MLOps), LLMOps necessitates a collaborative effort involving data scientists, DevOps engineers, and IT professionals. Some projects may necessitate a comprehensive LLMOps approach, spanning tasks from data preparation to pipeline production.

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Introducing our New Book: Implementing MLOps in the Enterprise

Iguazio

Drawing from their extensive experience in the field, the authors share their strategies, methodologies, tools and best practices for designing and building a continuous, automated and scalable ML pipeline that delivers business value. The book is poised to address these exact challenges.

ML 52
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Building ML Platform in Retail and eCommerce

The MLOps Blog

And eCommerce companies have a ton of use cases where ML can help. The problem is, with more ML models and systems in production, you need to set up more infrastructure to reliably manage everything. And because of that, many companies decide to centralize this effort in an internal ML platform. But how to build it?

ML 59
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Is your model good? A deep dive into Amazon SageMaker Canvas advanced metrics

AWS Machine Learning Blog

Although machine learning (ML) can provide valuable insights, ML experts were needed to build customer churn prediction models until the introduction of Amazon SageMaker Canvas. It also enables you to evaluate the models using advanced metrics as if you were a data scientist.

ML 79
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Roadmap to Learn Data Science for Beginners and Freshers in 2023

Becoming Human

Note : Now, Start joining Data Science communities on social media platforms. These communities will help you to be updated in the field, because there are some experienced data scientists posting the stuff, or you can talk with them so they will also guide you in your journey.

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Large Language Models: A Complete Guide

Heartbeat

In this article, we will explore the essential steps involved in training LLMs, including data preparation, model selection, hyperparameter tuning, and fine-tuning. We will also discuss best practices for training LLMs, such as using transfer learning, data augmentation, and ensembling methods.

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Harnessing Machine Learning on Big Data with PySpark on AWS

ODSC - Open Data Science

This is a straightforward and mostly clear-cut question — most of us can likely classify a dish as a dessert or not simply by reading its name, which makes it an excellent candidate for a simple ML model. Step 3: Train, Test, and Evaluate Model Once the data is processed and transformed, we can split it into a training set and a testing set.