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Machine Learning Guide

MLA 016 AWS SageMaker MLOps 2

Machine Learning Guide

OCDevel

Artificial, Introduction, Learning, Courses, Technology, Ml, Intelligence, Ai, Machine, Education

4.9848 Ratings

🗓️ 5 November 2021

⏱️ 60 minutes

🧾️ Download transcript

Summary

SageMaker streamlines machine learning workflows by enabling integrated model training, tuning, deployment, monitoring, and pipeline automation within the AWS ecosystem, offering scalable compute options and flexible development environments. Cloud-native AWS machine learning services such as Comprehend and Poly provide off-the-shelf solutions for NLP, time series, recommendations, and more, reducing the need for custom model implementation and deployment.

Links

Model Training and Tuning with SageMaker

  • SageMaker enables model training within integrated data and ML pipelines, drawing from components such as Data Wrangler and Feature Store for a seamless workflow.
  • Using SageMaker for training eliminates the need for manual transitions from local environments to the cloud, as models remain deployable within the AWS stack.
  • SageMaker Studio offers a browser-based IDE environment with iPython notebook support, providing collaborative editing, sharing, and development without the need for complex local setup.
  • Distributed, parallel training is supported with scalable EC2 instances, including AWS-proprietary chips for optimized model training and inference.
  • SageMaker's Model Debugger and monitoring tools aid in tracking performance metrics, model drift, and bias, offering alerts via CloudWatch and accessible graphical interfaces.

Flexible Development and Training Environments

  • SageMaker supports various model creation approaches, including default AWS environments with pre-installed data science libraries, bring-your-own Docker containers, and hybrid customizations via requirements files.
  • SageMaker JumpStart provides quick-start options for common ML tasks, such as computer vision or NLP, with curated pre-trained models and environment setups optimized for SageMaker hardware and operations.
  • Users can leverage Autopilot for end-to-end model training and deployment with minimal manual configuration or start from JumpStart templates to streamline typical workflows.

Hyperparameter Optimization and Experimentation

  • SageMaker Experiments supports automated hyperparameter search and optimization, using Bayesian optimization to evaluate and select the best performing configurations.
  • Experiments and training runs are tracked, logged, and stored for future reference, allowing efficient continuation of experimentation and reuse of successful configurations as new data is incorporated.

Model Deployment and Inference Options

  • Trained models can be deployed as scalable REST endpoints, where users specify required EC2 instance types, including inference-optimized chips.
  • Elastic Inference allows attachment of specialized hardware to reduce costs and tailor inference environments.
  • Batch Transform is available for non-continuous, ad-hoc, or large batch inference jobs, enabling on-demand scaling and integration with data pipelines or serverless orchestration.

ML Pipelines, CI/CD, and Monitoring

  • SageMaker Pipelines manages the orchestration of ML workflows, supporting CI/CD by triggering retraining and deployments based on code changes or new data arrivals.
  • CI/CD automation includes not only code unit tests but also automated monitoring of metrics such as accuracy, drift, and bias thresholds to qualify models for deployment.
  • Monitoring features (like Model Monitor) provide ongoing performance assessments, alerting stakeholders to significant changes or issues.

Integrations and Deployment Flexibility

  • SageMaker supports integration with Kubernetes via EKS, allowing teams to leverage universal orchestration for containerized ML workloads across cloud providers or hybrid environments.
  • The SageMaker Neo service optimizes and packages trained models for deployment to edge devices, mobile hardware, and AWS Lambda, reducing runtime footprint and syncing updates as new models become available.

Cloud-Native AWS ML Services

  • AWS offers a variety of cloud-native services for common ML tasks, accessible via REST or SDK calls and managed by AWS, eliminating custom model development and operations overhead.
    • Comprehend for document clustering, sentiment analysis, and other NLP tasks.
    • Forecast for time series prediction.
    • Fraud Detector for transaction monitoring.
    • Lex for chatbot workflows.
    • Personalize for recommendation systems.
    • Poly for text-to-speech conversion.
    • Textract for OCR and data extraction from complex documents.
    • Translate for machine translation.
    • Panorama for computer vision on edge devices.
  • These services continuously improve as AWS retrains and updates their underlying models, transferring benefits directly to customers without manual intervention.

Application Example: Migrating to SageMaker and AWS Services

  • When building features such as document clustering, question answering, or recommendations, first review whether cloud-native services like Comprehend can fulfill requirements prior to investing in custom ML models.
  • For custom NLP tasks not available in AWS services, use SageMaker to manage model deployment (e.g., deploying pre-trained Hugging Face Transformers for summarization or embeddings).
  • Batch inference and feature extraction jobs can be triggered using SageMaker automation and event notifications, supporting modular, scalable, and microservices-friendly architectures.
  • Tabular prediction and feature importance can be handled by pipe-lining data from relational stores through SageMaker Autopilot or traditional algorithms such as XGBoost.
  • Recommendation workflows can combine embeddings, neural networks, and event triggers, with SageMaker handling monitoring, scaling, and retraining in response to user feedback and data drift.

General Usage Guidance and Strategy

  • Employ AWS cloud-native services where possible to minimize infrastructure management and accelerate feature delivery.
  • Use SageMaker JumpStart and Autopilot to jump ahead in common ML scenarios, falling back to custom code and containers only when unique use cases demand.
  • Leverage SageMaker tools for pipeline orchestration, monitoring, retraining, and model deployment to ensure scalable, maintainable, and up-to-date ML workflows.

Useful Links


Transcript

Click on a timestamp to play from that location

0:00.0

Machine learning applied, SageMaker 2. So we're still exploring SageMaker features. We left off in the

0:06.9

train and tune phase of the SageMaker tooling as all part of a data and machine learning pipeline.

0:13.9

Let's spend a little bit more time discussing training because training is sort of going to be the

0:18.7

bread and butter of a machine learning engineer's

0:21.5

day-to-day rule. Training your machine learning model. In the past, we might write our model in Keras,

0:26.4

TensorFlow, PyTorch. Train that model on local host, maybe in a Docker container, using our

0:32.3

system's GPU. Well, a benefit of training in SageMaker is that your model will be part of the pipeline,

0:39.5

part of the stack. It will be receiving data downstream from what you've already built out in

0:44.7

your pipeline using Data Rangler and Feature Store and all these things. And if you build out

0:50.9

your model into SageMaker so that when you're training your model on SageMaker,

0:55.6

it's able to be deployed through SageMaker, then you don't have to take that extra step

1:00.5

when you're ready to deploy your model of transferring the concept of a local host trained

1:06.0

model to the cloud. It'll all be ready for you to just run a deploy script or click a button, whatever the

1:11.8

case. And of course, in the training phase, SageMaker offers all that tooling around training

1:17.5

or model things like Model Debugger, which allows you to peek into your neural network by way of a

1:23.4

tensor board, or keep an eye on the objective metrics or model drift or bias, all these things

1:30.5

through a graphical user interface in SageMaker Studio or email or text message alerts in CloudWatch

1:37.4

and so on. Another benefit of training your model in SageMaker as opposed to do it on local

1:43.3

host is that this whole process, you're going to be spinning up a SageMaker as opposed to do it on local host is that this whole process, you're

1:45.6

going to be spinning up a SageMaker Studio project. Remember that SageMaker Studio is their IDE

1:52.0

on their web console where you will be writing your code in an iPython notebook in SageMaker

1:58.2

Studio. You write your code in an iPython notebook and you can share that code

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