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    Rapyder MLOps Solution Accelerator

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    Rapyder’s MLOps as a Service will provide data teams an easy way to build, train, deploy, and monitor machine learning model pipelines across different platforms.
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    Rapyder MLOps Solution Accelerator

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    Overview

    The MLOps Workload Manager solution is built on Amazon Sagemaker & AWS DevOps services which helps you streamline and enforce architecture best practices for the machine learning model. This solution is an extendable framework that provides a standard interface for creating & managing ML pipelines.

    The solution’s template allows customers to:

    • Pre-process, train & evaluate models
    • Upload their trained models (bring your model)
    • Model configuration, deployment, and monitoring
    • Configure and orchestrate the pipeline
    • Monitor the pipeline’s operations
    • Trigger the pipeline through new data upload and code changes.

    MLOps Workload Overview:

    There are three ways to trigger this workflow

    1. Data Trigger: Whenever new data gets uploaded, it automatically triggers MLOps workflow, and the model gets built and deployed based on the new data.
    2. Code Changes Trigger: Whenever a data scientist changes the code for pre-processing, model training, or evaluation, It will trigger this MLOps workflow, and the model gets built and deployed based on the new changes.
    3. Deployment Changes: Whenever the ML engineer changes the deployment configuration. It will trigger this MLOps deployment workflow, and the model will deploy again based on the new deployment configuration.

    Model Approval:

    Once the model has been trained and evaluated, it will be registered in the model registry; then, after data scientist has to visit the registry and manually approve the model by examining a couple of metrics.

    Highlights

    • Productivity: Providing self-service environments with access to curated data sets lets data engineers and scientists move faster and waste less time with missing or invalid data.
    • Repeatability: Automating all the steps in the Machine Learning Development Life Cycle helps you ensure a repeatable process, including how the model is trained, evaluated, versioned, and deployed.
    • Data and model quality: MLOps lets us enforce policies that guard against model bias and track data statistical properties and model quality changes over time.

    Pricing

    Custom pricing options

    Pricing is based on your specific requirements and eligibility. To get a custom quote for your needs, request a private offer.

    Legal

    Content disclaimer

    Vendors are responsible for their product descriptions and other product content. AWS does not warrant that vendors' product descriptions or other product content are accurate, complete, reliable, current, or error-free.

    Support

    Vendor support

    Contact for more information at: info@rapyder.com  or visit us at Rapyder MLOps