Job Description

Responsibilities




  • Design and Implement Models: Research, develop, and deploy advanced machine learning and deep learning models for high-impact, real-world applications.

  • Drive the ML Lifecycle: Own the end-to-end process from initial data exploration and high-quality dataset creation to model training, tuning, validation, and production deployment.

  • Establish MLOps: Implement robust MLOps practices, including Continuous Integration/Continuous Deployment (CI/CD), automated monitoring, containerization (e.g. With Docker) and infrastructure automation to ensure model reliability and scalability.

  • Drive Improvement & Learning: Focus on prompt engineering, quantitative output evaluation and data labeling strategies. Create strategies to assure high quality model outputs.

  • Collaborate and Integrate: Partner closely with Product Managers, Software Engineers, and QA teams to sea...
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