Sold by: Rapyder Cloud Solutions
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.
Sold by: Rapyder Cloud Solutions
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
- Data Trigger: Whenever new data gets uploaded, it automatically triggers MLOps workflow, and the model gets built and deployed based on the new data.
- 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.
- 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.
Details
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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.
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Support
Vendor support
Contact for more information at: info@rapyder.com or visit us at Rapyder MLOps