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Promote pipelines in a multi-environment setup using Amazon SageMaker Model Registry, HashiCorp Terraform, GitHub, and Jenkins CI/CD

AWS Machine Learning Blog

Automated retraining mechanism – The training pipeline built with SageMaker Pipelines is triggered whenever a data drift is detected in the inference pipeline. After it’s trained, the model is registered into the central model registry to be approved by a model approver.

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Use Amazon SageMaker Studio with a custom file system in Amazon EFS

AWS Machine Learning Blog

Amazon SageMaker Studio is the latest web-based experience for running end-to-end machine learning (ML) workflows. This function is responsible for automating the configuration of SageMaker Studio domains to use a shared EFS file system within a specific VPC. In her free time, Irene enjoys traveling and hiking.

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Dive deep into vector data stores using Amazon Bedrock Knowledge Bases

AWS Machine Learning Blog

Generative AI is used in various use cases, such as content creation, personalization, intelligent assistants, questions and answers, summarization, automation, cost-efficiencies, productivity improvement assistants, customization, innovation, and more. The agent returns the LLM response to the chatbot UI or the automated process.

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Four approaches to manage Python packages in Amazon SageMaker Studio notebooks

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The main benefits of this approach are a high level of version control and reproducibility of an ML runtime environment and immediate availability of library packages because they’re installed in the image. You can implement comprehensive tests, governance, security guardrails, and CI/CD automation to produce custom app images.

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Use Amazon SageMaker Model Card sharing to improve model governance

AWS Machine Learning Blog

Implementing these guardrails is getting harder for enterprises because the ML processes and activities within enterprises are becoming more complex due to the inclusion of deeply involved processes that require contributions from multiple stakeholders and personas. For more information, refer to Configure the AWS CLI.

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Use Amazon SageMaker Model Cards sharing to improve model governance

AWS Machine Learning Blog

Implementing these guardrails is getting harder for enterprises because the ML processes and activities within enterprises are becoming more complex due to the inclusion of deeply involved processes that require contributions from multiple stakeholders and personas. For more information, refer to Configure the AWS CLI.

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