This is a list of SageMaker-related resources.
## General SageMaker documentation and blog posts
- [R1]: Amazon SageMaker Pipelines documentation
- [R2]: Best practices for multi-account AWS environment
- [R3]: AWS Well-Architected Framework - Machine Learning Lens Whitepaper
- [R4]: Terraform provider AWS GitHub
- [R5]: Data processing options for AI/ML
- [R6]: Architect and build the full machine learning lifecycle with AWS: An end-to-end Amazon SageMaker demo
- [R7]: End-to-end Amazon SageMaker demo
- [R8]: Multi-account model deployment with Amazon SageMaker Pipelines
- [R9]: Building, automating, managing, and scaling ML workflows using Amazon SageMaker Pipelines
- [R10]: Best Practices for Organizational Units with AWS Organizations
- [R11]: Build a CI/CD pipeline for deploying custom machine learning models using AWS services
- [R12]: Configuring Amazon SageMaker Studio for teams and groups with complete resource isolation
- [R13]: Enable feature reuse across accounts and teams using Amazon SageMaker Feature Store
- [R14]: How Genworth built a serverless ML pipeline on AWS using Amazon SageMaker and AWS Glue
- [R15]: SageMaker cross-account model
- [R16]: Use Amazon CloudWatch custom metrics for real-time monitoring of Amazon Sagemaker model performance
- [R17]: Automate feature engineering pipelines with Amazon SageMaker
- [R18]: Build a Secure Enterprise Machine Learning Platform on AWS
- [R19]: Automate Amazon SageMaker Studio setup using AWS CDK
- [R20]: How to use trust policies with IAM roles
- [R21]: Use Amazon SageMaker Studio Notebooks
- [R22]: Shutting Down Amazon SageMaker Studio Apps on a Scheduled Basis
- [R23]: Register and Deploy Models with Model Registry
- [R24]: Setting up secure, well-governed machine learning environments on AWS
- [R25]: Machine Learning Best Practices in Financial Services: Blog post
- [R26]: Machine Learning Best Practices in Financial Services: Whitepaper
- [R27]: Dynamic A/B testing for machine learning models with Amazon SageMaker MLOps projects
- [R28]: Hosting a private PyPI server for Amazon SageMaker Studio notebooks in a VPC
- [R29]: Automate a centralized deployment of Amazon SageMaker Studio with AWS Service Catalog
- [R30]: Orchestrate XGBoost ML Pipelines with Amazon Managed Workflows for Apache Airflow
- [R31]: Amazon SageMaker Identity-Based Policy Examples
- [R32]: Connect to SageMaker Through a VPC Interface Endpoint
- [R33]: Extend Amazon SageMaker Pipelines to include custom steps using callback steps
- [R34]: Create Amazon SageMaker projects using third-party source control and Jenkins
- [R35]: Define and run Machine Learning pipelines on Step Functions using Python, Workflow Studio, or States Language
- [R36]: Dive deep into Amazon SageMaker Studio Notebooks architecture
- [R37]: Model and data lineage in machine learning experimentation
- [R38]: Customize Amazon SageMaker Studio using Lifecycle Configurations
- [R39]: Patterns for multi-account, hub-and-spoke Amazon SageMaker model registry
- [R40]: Managing your machine learning lifecycle with MLflow and Amazon SageMaker
- [R41]: Scheduling Jupyter notebooks on SageMaker ephemeral instances
- [R42]: Building machine learning workflows with Amazon SageMaker Processing jobs and AWS Step Functions
- [R43]: How Slalom and WordStream Used MLOps to Unify Machine Learning and DevOps on AWS
- [R44]: Create a cross-account machine learning training and deployment environment with AWS Code Pipeline
- [R45]: Amazon SageMaker now supports cross-account lineage tracking and multi-hop lineage querying
- [R46]: MLflow Open Machine Learning Platform on AWS
- [R47]: MLOps Platforms by Thoughtworks: github repo
- [R48]: MLOps: Continuous Delivery for Machine Learning on AWS
- [R49]: Blog post series: How NatWest Group built a scalable, secure, and sustainable MLOps platform
- [R41]: Organize your machine learning journey with Amazon SageMaker Experiments and Amazon SageMaker Pipelines
- [SOL1]: AWS MLOps Framework
- [SOL2]: Amazon SageMaker with Guardrails on AWS
- [S1]: Building secure machine learning environments with Amazon SageMaker
- [S2]: Secure data science Reference Architecture GitHub
- [S3]: SageMaker Notebook instance lifecycle config samples GitHub
- [S4]: Securing Amazon SageMaker Studio connectivity using a private VPC
- [S5]: Secure deployment of Amazon SageMaker resources
- [S6]: Understanding Amazon SageMaker notebook instance networking configurations and advanced routing options
- [S7]: Security group rules for different use cases
- [S8]: Data encryption at rest in SageMaker Studio
- [S9]: Connect SageMaker Studio Notebooks to Resources in a VPC
- [S10]: Control root access to Amazon SageMaker notebook instances
- [S11]: 7 ways to improve security of your machine learning workflows
- [S12]: PySparkProcessor - Unable to locate credentials for boto3 call in AppMaster
- [S13]: Private package installation in Amazon SageMaker running in internet-free mode
- [S14]: Securing Amazon SageMaker Studio internet traffic using AWS Network Firewall
- [S15]: Secure Your SageMaker Studio Access Using AWS PrivateLink and AWS IAM SourceIP Restrictions
- [S16]: Model Risk Management by Deloitte
- [S17]: Building secure Amazon SageMaker access URLs with AWS Service Catalog
- [S18]: Secure multi-account model deployment with Amazon SageMaker Series
- [S19]: Launch Amazon SageMaker Studio from external applications using presigned URLs
- [S20]: Organizing Your AWS Environment Using Multiple Accounts
- [W1]: SageMaker immersion day GitHub
- [W2]: SageMaker immersion day workshop 2.0
- [W3]: Amazon Sagemaker MLOps workshop GitHub
- [W4]: Operationalizing the Machine Learning Pipeline
- [W5]: Safe MLOps deployment pipeline
- [W6]: Building secure environments workshop
- [W7]: Amazon Managed Workflows for Apache Airflow workshop
- [W8]: Secure data science with Amazon SageMaker Studio Workshop
- [W9]: MLOps and Integrations
- [W10]: Serverless ML pipeline
- [W11]: Basic SageMaker MLOps
- [W12]: data science on AWS (ML end-to-end pipeline)
- [W13]: Amazon SageMaker End to End Workshop
- [W14]: End to end Machine Learning with Amazon SageMaker
- Hidden Technical Debt in Machine Learning Systems
- MLOps for Enterprises
- Awesome MLOps
- Awesome production machine learning
- A Guide to Production Level Deep Learning
- Feature Stores for ML
- Introducing TWIML’s New ML and AI Solutions Guide
- TWIML podcast: Feature Stores for MLOps with Mike del Balso
- TWIML podcast: Enterprise Readiness, MLOps and Lifecycle Management with - - Jordan Edwards
- Full stack deep learning free online course
- Continuous Delivery for Machine Learning
- Feature Store vs Data Warehouse
- Seldon Core
- MLflow and PyTorch — Where Cutting Edge AI meets MLOps
- 5 Lessons Learned Building an Open Source MLOps Platform
- Who Needs MLOps: What Data Scientists Seek to Accomplish and How Can MLOps Help?
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