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Principal Decision Scientist – Machine Learning Engineer
Location
United States
Posted
179 days ago
Salary
0
Seniority
Lead
Job Description
Principal Decision Scientist – Machine Learning Engineer
Aimpoint Digital
• Define high-level business objectives directly with clients, then develop and execute the project plan • Proactively research and apply knowledge within the data science space to deliver best-in-class solutions • Lead both small and large teams over the entire data science lifecycle • Provide technical leadership to guide development work across teams • Manage all aspects of client relationships and create value-driving initiatives for the company • Design and develop feature engineering pipelines, build ML & AI infrastructure, deploy models
Job Requirements
- Degree in Computer Science, Engineering, Mathematics, or equivalent experience
- 5+ years of experience developing and deploying ML models in any platform (Azure, AWS, GCP, Databricks etc.)
- Experience designing deploying, and scaling Generative AI and machine learning systems in production
- Ability to manage an individual workstream independently
- Strong written and verbal communication skills required
- Familiarity with traditional machine learning tools such as Python, SKLearn, XGBoost, SparkML, etc.
- Experience with deep learning frameworks like TensorFlow or PyTorch
- Knowledge of ML model deployment options for real-time and batch processing
- Experience with CI/CD pipelines
- Understanding of MLOps or LLMOps
Benefits
- Health insurance
- Flexible work arrangements
- Professional development opportunities
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