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Data4ML Preparation Guidelines (Beyond The Basics)

Towards AI

Data preparation isn’t just a part of the ML engineering process — it’s the heart of it. Photo by Myriam Jessier on Unsplash To set the stage, let’s examine the nuances between research-phase data and production-phase data. This post dives into key steps for preparing data to build real-world ML systems.

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Airbnb Researchers Develop Chronon: A Framework for Developing Production-Grade Features for Machine Learning Models

Marktechpost

In the ever-evolving landscape of machine learning, feature management has emerged as a key pain point for ML Engineers at Airbnb. Airbnb recognized the need for a solution that could streamline feature data management, provide real-time updates, and ensure consistency between training and production environments.

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Achieve operational excellence with well-architected generative AI solutions using Amazon Bedrock

AWS Machine Learning Blog

Manage data through standard methods of data ingestion and use Enriching LLMs with new data is imperative for LLMs to provide more contextual answers without the need for extensive fine-tuning or the overhead of building a specific corporate LLM.

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First ODSC Europe 2023 Sessions Announced

ODSC - Open Data Science

ML Governance: A Lean Approach Ryan Dawson | Principal Data Engineer | Thoughtworks Meissane Chami | Senior ML Engineer | Thoughtworks During this session, you’ll discuss the day-to-day realities of ML Governance. Some of the questions you’ll explore include How much documentation is appropriate?

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How Earth.com and Provectus implemented their MLOps Infrastructure with Amazon SageMaker

AWS Machine Learning Blog

Earth.com didn’t have an in-house ML engineering team, which made it hard to add new datasets featuring new species, release and improve new models, and scale their disjointed ML system. We initiated a series of enhancements to deliver managed MLOps platform and augment ML engineering.

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How Axfood enables accelerated machine learning throughout the organization using Amazon SageMaker

AWS Machine Learning Blog

The model will be approved by designated data scientists to deploy the model for use in production. For production environments, data ingestion and trigger mechanisms are managed via a primary Airflow orchestration. Pavel Maslov is a Senior DevOps and ML engineer in the Analytic Platforms team.

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Governing the ML lifecycle at scale, Part 4: Scaling MLOps with security and governance controls

AWS Machine Learning Blog

Usually, there is one lead data scientist for a data science group in a business unit, such as marketing. Data scientists Perform data analysis, model development, model evaluation, and registering the models in a model registry. ML engineers Develop model deployment pipelines and control the model deployment processes.

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