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Driving advanced analytics outcomes at scale using Amazon SageMaker powered PwC’s Machine Learning Ops Accelerator

AWS Machine Learning Blog

Artificial intelligence (AI) and machine learning (ML) are becoming an integral part of systems and processes, enabling decisions in real time, thereby driving top and bottom-line improvements across organizations. However, putting an ML model into production at scale is challenging and requires a set of best practices.

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MLOps and the evolution of data science

IBM Journey to AI blog

It advances the scalability of ML in real-world applications by using algorithms to improve model performance and reproducibility. MLOps fosters greater collaboration between data scientists, software engineers and IT staff. How to use ML to automate the refining process into a cyclical ML process.

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Boost your content editing with Contentful and Amazon Bedrock

AWS Machine Learning Blog

Before joining AWS, he worked for AWS customers and partners in software engineering, consulting, and architecture roles for 8+ years. In his free time he is pursuing a PhD in ML Engineering at University of Regensburg, focussing on applied NLP in the science domain.

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Principles of MLOps

Heartbeat

Machine Learning Operations (MLOps) are the aspects of ML that deal with the creation and advancement of these models. In this article, we’ll learn everything there is to know about these operations and how ML engineers go about performing them. They may also be involved in the deployment process’s automation.

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Set up Amazon SageMaker Studio with Jupyter Lab 3 using the AWS CDK

AWS Machine Learning Blog

This development approach can be used in combination with other common software engineering best practices such as automated code deployments, tests, and CI/CD pipelines. The AWS CDK reduces the time required to perform typical infrastructure deployment tasks while shrinking the surface area for human error through automation.

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? Guest Post: How to Build the Right Team for Generative AI*

TheSequence

You probably don’t need ML engineers In the last two years, the technical sophistication needed to build with AI has dropped dramatically. ML engineers used to be crucial to AI projects because you needed to train custom models from scratch. Instead, Twain employs linguists and salespeople as prompt engineers.

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40 Must-Know Data Science Skills and Frameworks for 2023

ODSC - Open Data Science

Machine Learning As machine learning is one of the most notable disciplines under data science, most employers are looking to build a team to work on ML fundamentals like algorithms, automation, and so on. They’re looking for people who know all related skills, and have studied computer science and software engineering.