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HireTalent group

Machine Learning Engineer #: 24-05981

HireTalent group, Salem, Oregon, us, 97308


Job Title: Machine Learning Engineer

Job Location: Remote

Job Duration: 12 Months

Job DescriptionProficient in Python and Spark, with experience in high-performance, parallel, and distributed computing to scale Machine Learning solutions.

Familiar with cloud platforms such as AWS, GCP, and Azure, and experienced in deploying Machine Learning models using these platforms. Should have working experience with data science platforms like SageMaker and similar offerings from other providers.

Skilled in building and maintaining Machine Learning pipelines using tools like Airflow or Kubeflow, and tracking experiments with tools such as mlflow, TensorBoard, and SageMaker Experiments.

Understands model explainability and monitoring, and is proficient in scaling machine learning models to handle large datasets and high-dimensional feature spaces.

Experienced with distributed computing frameworks like Apache Spark and GPU acceleration tools like CUDA for efficient model training and inference.

Knowledgeable in techniques for model compression, quantization, and optimization for deployment in resource-constrained environments.

Proficient in using data visualization libraries like Matplotlib, Seaborn, Plotly, and tools like Tableau, Splunk, and SignalFX for analyzing logs, metrics, and creating dashboards.

Familiar with different API architectural styles like REST, Websocket, gRPC, SOAP, etc.

Experience with continuous integration/continuous deployment (CI/CD) tools such as Jenkins.

Familiar with Infrastructure as Code (IaC) tools such as Terraform for creating, updating, and versioning infrastructure safely and efficiently.

Experience with version control systems like Git for tracking changes in source code during software development.

Familiar with secure cloud environments such as AWS, GCP, or Azure, and their respective security services and best practices. This includes knowledge of IAM roles, security groups, VPCs, encryption, and compliance standards.

Hands-on experience with secure model deployment tools like Docker and Kubernetes, understanding of network security for data transit, and knowledge of secure data storage and handling practices.

Typically requires a Bachelor's Degree and minimum of 9 years directly relevant work experience. Note: One of the following alternatives may be accepted: PhD or Law + 6 yrs; Masters + 7 yrs; Associates degree + 9 yrs.

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