Inactive
Data Scientist / ML Engineer
Location
Canada
Posted
42 days ago
Salary
$145K - $170K / year
Seniority
Lead
Job Description
Data Scientist / ML Engineer
UrtheCast
• Refactor Neural Network Collaborate with architect and author of neural network bond risk product to identify areas for improvement. • Lead architecture and development effort Ongoing Contribute to the design, development, and deployment of firm-wide architecture, norms, policies, infrastructure and methodologies for machine learning activities across multiple company groups. • Design, develop, and deploy machine learning models into production environments. • Collaborate with data scientists to translate prototypes into production-ready systems. • Build and maintain data pipelines, feature stores, and model-serving infrastructure. • Evaluate and optimize model performance, latency, and scalability. • Implement automated training, testing, and deployment workflows (MLOps). • Monitor models in production and address issues related to drift, performance degradation, or data quality. • Conduct code reviews and ensure best practices in ML engineering and software development. • Stay current with emerging ML/AI technologies and recommend tools or frameworks that improve team efficiency.
Job Requirements
- 7+ years building machine learning models with Python and AWS.
- Hands-on experience with ML frameworks such as Pytorch and TensorFlow.
- Experience with ML observability and training platforms/technologies like ML Flow.
- Proficiency in building and deploying models using cloud platforms such as AWS (e.g. in Fargate)
- Solid understanding of algorithms, data structures, and software engineering principles.
- Preferred: Experience with data and compute orchestration tools like AWS Step Functions or Apache Airflow.
- Exposure to large scale data warehousing and query engine technologies like Iceberg and Athena, and to columnar data storage formats like parquet.
- Experience working with and modernizing legacy software, including migrating from on-prem to cloud-based deployments.
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