Machine Learning Engineer
About the role
We are seeking a skilled Machine Learning Engineer with approximately three years of hands-on experience designing, deploying, and maintaining production-grade machine learning systems. In this role, you will collaborate closely with data scientists, software engineers, and product teams to translate research models into reliable, scalable, and high-impact applications. You will be deeply involved in the end-to-end ML lifecycle—from data ingestion and feature engineering to deployment, monitoring, and continuous improvement—playing a critical part in shaping our machine learning platform and capabilities.
Primary Responsibilities
- Develop, deploy, and optimize machine learning models for real-world business use cases and client-facing applications.
- Partner with data scientists to operationalize predictive models and ensure scalable, maintainable, and performant production deployments.
- Design and implement data pipelines and workflows that support training, inference, and model lifecycle management.
- Work with large, complex datasets to ensure data quality, reproducibility, and reliable version control across ML workflows.
- Implement model monitoring, logging, and alerting strategies to track performance, detect drift, and support retraining cycles.
- Leverage cloud platforms (AWS, Azure, GCP) to build scalable ML solutions using managed services and infrastructure-as-code practices.
- Write clean, modular, and well-documented code aligned with MLOps and software engineering best practices.
- Stay current on emerging ML tooling, frameworks, and industry best practices to continuously enhance our platform and capabilities.
Qualifications
- Master’s degree in Computer Science, Data Science, Engineering, or a related technical field.
- 6+ years of experience in machine learning engineering, applied ML, or related software engineering roles.
- Strong proficiency in Python and experience with modern ML frameworks such as TensorFlow, PyTorch, or scikit-learn.
- Experience with distributed data processing and compute frameworks (e.g., Pandas, Spark, Dask).
- Hands-on experience with containerization and orchestration technologies such as Docker and Kubernetes.
- Familiarity with CI/CD pipelines, testing automation, and version control using Git.
- Experience working with cloud-based ML platforms or services (e.g., SageMaker, Vertex AI, Databricks, or Snowflake ML) is preferred.
- Strong understanding of model evaluation, feature engineering, and performance optimization in production contexts.
- Excellent analytical, communication, and collaboration skills, with the ability to work effectively in cross-functional teams.
Pay
The annualized base pay range for this role is expected to be between $140,000-$180,000. Actual base pay could vary based on factors including but not limited to experience, subject matter expertise, geographic location where work will be performed, and the applicant's skill set.