CI
Machine Learning with AWS Sagemaker -- DWIDC5532895
Compunnel Inc.
Toronto · On-site Contract 3w ago
About the role
Model Development & Training
- Building and refining ML models using frameworks like TensorFlow, PyTorch, and Scikit-learn within SageMaker Studio.
Data Engineering & Labeling
- Designing automated data pipelines and managing high-quality datasets using tools like SageMaker Ground Truth and SageMaker Data Wrangler.
Operationalizing ML (MLOps)
- Implementing CI/CD for machine learning through SageMaker Pipelines, automating model retraining, and managing model versions in the SageMaker Model Registry.
Deployment & Inference
- Deploying models for real-time or batch inference and managing multi-model endpoints to ensure low latency and high availability.
Performance Monitoring
- Using SageMaker Model Monitor and Clarify to track model quality, detect bias, and identify feature drift in production.
Optimization
- Tuning hyperparameters and optimizing training costs using Managed Spot Training and distributed training libraries.
Essential Skills & Qualifications
- AWS Expertise: Proficiency in Amazon SageMaker and related services such as S3, Lambda, IAM, and Step Functions.
- Programming: Strong command of Python (specifically the SageMaker Python SDK) or R, and SQL.
- ML Frameworks: Deep experience with modern libraries including PyTorch, TensorFlow, and XGBoost.
- Mathematical Foundation: Solid understanding of statistics, linear algebra, and predictive modeling.
- Cloud Infrastructure: Experience managing compute clusters, VPCs, and ensuring security best practices.
Skills
AWS LambdaAWS SageMakerAWS Step FunctionsDockerIAMMLOpsPythonPyTorchRSageMaker Data WranglerSageMaker Ground TruthSageMaker Model MonitorSageMaker PipelinesSageMaker Python SDKScikit-learnSQLS3TensorFlowVPCXGBoost
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