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In this post, we share how Axfood, a large Swedish food retailer, improved operations and scalability of their existing artificial intelligence (AI) and machinelearning (ML) operations by prototyping in close collaboration with AWS experts and using Amazon SageMaker. This is a guest post written by Axfood AB.
MachineLearning Operations (MLOps) can significantly accelerate how data scientists and ML engineers meet organizational needs. A well-implemented MLOps process not only expedites the transition from testing to production but also offers ownership, lineage, and historical data about ML artifacts used within the team.
How to evaluate MLOps tools and platforms Like every software solution, evaluating MLOps (MachineLearning Operations) tools and platforms can be a complex task as it requires consideration of varying factors. Pay-as-you-go pricing makes it easy to scale when needed.
Do you need help to move your organization’s MachineLearning (ML) journey from pilot to production? Challenges Customers may face several challenges when implementing machinelearning (ML) solutions. Ensuring data quality, governance, and security may slow down or stall ML projects. You’re not alone.
To address the large value challenge, you can utilize the Amazon SageMaker distributed data parallelism feature (SMDDP). SageMaker is a fully managed machinelearning (ML) service. With data parallelism, a large volume of data is split into batches. This reduces the development velocity and ability to fail fast.
MachineLearning Operations (MLOps) vs Large Language Model Operations (LLMOps) LLMOps fall under MLOps (MachineLearning Operations). Many MLOps best practices apply to LLMOps, like managing infrastructure, handling data processing pipelines, and maintaining models in production. Specifically focused on LLMs.
They run scripts manually to preprocess their training data, rerun the deployment scripts, manually tune their models, and spend their working hours keeping previously developed models up to date. Building end-to-end machinelearning pipelines lets ML engineers build once, rerun, and reuse many times.
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