The ideal Mid-Level Data Scientist delivers solutions for insurance business problems using foundation models and data science fundamentals. They take initiative own their work with periodic guidance and proactively communicate progress blockers and decisions with team and leadership. They demonstrate growing systems thinking skills-understanding component interactions measuring system performance and identifying improvement opportunities. They work in Azure/Databricks using Python with git version control and produce maintainable code with clear documentation.
Responsibilities:
- Collaborate with scientists engineers product owners and business customers to translate business problems into technical solutions
- Deliver solutions for data extraction classification routing search and decision-making using foundation models with guidance on approach
- Manipulate and analyze data programmatically derive statistically sound insights and communicate findings that address technical and business considerations
- Engineer and evaluate foundation model prompts systematically across domain datasets
- Implement evaluation frameworks using precision recall F-1 scores accuracy and operational metrics with guidance
- Contribute to documentation and support junior team members as peer collaborator
- Break down well-scoped problems into measurable components and identify trade-offs between approaches
Qualifications :
- Strong communication skills that convey statistical and business impact proactively surface issues and keep collaborators and leaders informed
- Proficiency with Python from a functional programming paradigm including dependency management virtual environments and git version control
- Experience or strong familiarity with cloud platforms like Azure and Databricks using foundation model APIs (OpenAI Anthropic Google etc.)
- Working familiarity with ML fundamentals (supervised/unsupervised learning evaluation metrics model validation) and statistical methods
- Experience implementing solutions with foundation models including prompt engineering and output validation
- Demonstrated capability to execute well-scoped projects with periodic guidance iteratively refining through diagnosis and hypothesis testing
- 2-5 years of relevant professional experience in data science machine learning or related fields; advanced graduate research or academic work may substitute for professional experience
Additional Information :
- Bachelors or graduate degree in quantitative field with systems thinking exposure (Computer Science Statistics Economics Physics Mathematics Operations Research Computational Linguistics)
- Insurance industry exposure
- Experience with agent frameworks (LangChain LlamaIndex) RAG systems or vector databases
- Experience with evaluation frameworks experimental design or production ML monitoring
Remote Work :
Yes
Employment Type :
Full-time
The ideal Mid-Level Data Scientist delivers solutions for insurance business problems using foundation models and data science fundamentals. They take initiative own their work with periodic guidance and proactively communicate progress blockers and decisions with team and leadership. They demonstra...
The ideal Mid-Level Data Scientist delivers solutions for insurance business problems using foundation models and data science fundamentals. They take initiative own their work with periodic guidance and proactively communicate progress blockers and decisions with team and leadership. They demonstrate growing systems thinking skills-understanding component interactions measuring system performance and identifying improvement opportunities. They work in Azure/Databricks using Python with git version control and produce maintainable code with clear documentation.
Responsibilities:
- Collaborate with scientists engineers product owners and business customers to translate business problems into technical solutions
- Deliver solutions for data extraction classification routing search and decision-making using foundation models with guidance on approach
- Manipulate and analyze data programmatically derive statistically sound insights and communicate findings that address technical and business considerations
- Engineer and evaluate foundation model prompts systematically across domain datasets
- Implement evaluation frameworks using precision recall F-1 scores accuracy and operational metrics with guidance
- Contribute to documentation and support junior team members as peer collaborator
- Break down well-scoped problems into measurable components and identify trade-offs between approaches
Qualifications :
- Strong communication skills that convey statistical and business impact proactively surface issues and keep collaborators and leaders informed
- Proficiency with Python from a functional programming paradigm including dependency management virtual environments and git version control
- Experience or strong familiarity with cloud platforms like Azure and Databricks using foundation model APIs (OpenAI Anthropic Google etc.)
- Working familiarity with ML fundamentals (supervised/unsupervised learning evaluation metrics model validation) and statistical methods
- Experience implementing solutions with foundation models including prompt engineering and output validation
- Demonstrated capability to execute well-scoped projects with periodic guidance iteratively refining through diagnosis and hypothesis testing
- 2-5 years of relevant professional experience in data science machine learning or related fields; advanced graduate research or academic work may substitute for professional experience
Additional Information :
- Bachelors or graduate degree in quantitative field with systems thinking exposure (Computer Science Statistics Economics Physics Mathematics Operations Research Computational Linguistics)
- Insurance industry exposure
- Experience with agent frameworks (LangChain LlamaIndex) RAG systems or vector databases
- Experience with evaluation frameworks experimental design or production ML monitoring
Remote Work :
Yes
Employment Type :
Full-time
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