| Employment Type: W2 Only (No C2C) Key Responsibilities: • Lead use case/workstream with junior data scientists • Contribute to the end-to-end model lifecycle, including data exploration and understanding, feature engineering, model training and validation, ensuring quality, security, scalability, and fairness • Support use case development that includes initial project scoping, project/sample design, reception and processing of data, performing analysis and modeling to creation of final report/presentation • Data wrangling/data matching/ETL to explore a variety of data sources, gain data expertise, perform summary analyses and prepare modeling datasets • Utilizing advanced statistical and AI/ML techniques to create high-performing predictive models and creative analyses to address business objectives and partner needs • Identification of source data and data quality checks both in model/solution development and in production • Packaging of model/solution and deployment in cooperation with Data Engineers and MLOps • Implement new statistical or other mathematical methodologies as needed for specific models or analysis. • Propose innovative ways to look at problems through using data mining and data visualization • Work with stakeholders throughout the organization to identify opportunities for leveraging company data to drive business solutions. • Present information using data visualization techniques; communicate results and ideas to key decision makers. • Ensure data accuracy and consistent reporting by performing regular data quality control, prepare and maintain reports, and troubleshoot data anomalies • Adhere to model governance, documentation, testing, and other best practices in partnership with key stakeholders • PhD with 2+ years of experience, Master's degree with 4+ years of experience in Statistics, Computer Science, Engineering, Applied mathematics or related field • 3+ years of hands-on ML modeling/development experience • Background in insurance and underwriting preferred • Solid understanding of data analysis and statistical modeling. • Knowledge of a variety of machine learning techniques (clustering, decision tree, bagging/boosting artificial neural networks, etc.) and their real-world advantages/drawbacks. • Demonstrated track records in experimental design and executions • Hands-on experience with data wrangling including fuzzy matching and regular expression, distributed computing and applying parallelism to ML solutions • Strong programming skills in Python • Solid background in algorithms and a range of ML models • Excellent communication skills and ability to work and collaborate cross-functionally with Product, Engineering, and other disciplines at both the leadership and hands-on level • Excellent analytical and problem-solving abilities with superb attention to detail • Proven experience in providing technical leadership and mentoring to data scientists and strong project management skills with ability to monitor/track performance for enterprise success • Experience communicating complex ideas simply, presenting impact, trade-offs, and recommendations to non-technical partners. • Working knowledge of core software engineering concepts (version control with Git/GitHub, testing, logging, ...). • Working knowledge of NLP, LLMs, RAG architecture, and agent frameworks, including safe automation design and evaluation systems. |
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