Senior Data Scientist
Listed on 2025-12-19
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IT/Tech
Data Scientist, AI Engineer, Data Analyst, Data Science Manager
POSITION SUMMARY
The Senior Data Scientist will play a crucial role in leading efforts to design, develop, and enhance analytical tools that address complex business challenges. This position will drive high-value modeling initiatives and experimentation, ensuring analytical rigor and innovation at every stage. A critical focus of this position is the ability to operationalize solutions, embedding advanced analytics into core processes and delivering scalable, production-ready capabilities that create measurable business impact.
The individual in this role will:
- Lead and influence technical direction within projects, shaping methodologies and best practices.
- Mentor and develop junior team members, fostering growth while advancing your own expertise.
- Innovate and expand our suite of analytical solutions to strengthen organizational capabilities.
- Advance research in priority areas, ensuring robust analysis precedes modeling and experimentation.
This position offers the opportunity to make a significant impact executing complex projects, elevating team performance, deliver actionable insights that influence business decisions, and embed advanced analytics into core processes.
This position can be primarily remote within a driving distance of Appleton, WI. On‑site time in Appleton, WI will be required for training and on a monthly basis.
JOB RESPONSIBILITIESDevelopment:
- Apply data science fundamentals: data collection, cleansing, modeling, and visualization.
- Develop solutions in Python and SQL to solve complex problems.
- Perform advanced data analysis and hypothesis testing to validate assumptions and guide modeling decisions.
- Apply modern software engineering principles for data science (CI/CD, Git, object‑oriented programming, containerization).
- Perform advanced statistical modeling techniques, including classification and regression (ML/AI).
- Optimization model methodologies.
- Forecasting model development and management.
- Architect scalable, reliable model services with monitoring and retraining strategies.
- Establish robust evaluation frameworks (bias and robustness checks, ablations, model cards).
Innovation:
- Lead innovation and data research efforts for new concepts and technologies.
- Coordinate and facilitate technical brainstorming and ideation sessions.
- Build proof‑of‑concepts and prototypes to validate emerging approaches.
- Advance research initiatives in areas such as LLM/RAG evaluation & safety, AI agent frameworks, generative AI applications (text, vision, multimodal), advanced optimization, and causal ML.
- Develop reusable accelerators and standards to shorten time‑to‑value for future projects.
- Mentor junior team members in innovative solution development.
- Stay ahead of industry trends and proactively identify opportunities to integrate cutting‑edge techniques into business processes.
- Champion responsible AI practices in all innovation efforts.
Execution:
- Lead problem framing and EDA to ensure the right method for the problem.
- Own full lifecycle: model experiment pilot monitoring decision/adoption.
- Drive prioritization and trade‑off decisions to balance accuracy, scalability, and time‑to‑value.
- Deliver executive‑ready decision briefs and technical documentation.
- Collaborate with platform and product teams to ensure seamless integration and operational reliability.
Collaboration:
- Embrace mentorship of junior team members and code reviews; guide method selection and documentation.
- Coordinate with Platform for business‑critical productionization and SLO alignment.
- Build strong relationships and establish credibility with stakeholders at all levels, including senior leadership, through effective interpersonal and communication skills.
- Bachelor's or Master's degree in Data Science, Data Analytics, Economics, Statistics, Computer Science or a related field involving problem solving and critical thinking, or equivalent work experience.
- 5+ years working in data science‑specific roles, with demonstrated experience working in roles that require proficiency with data modeling, statistical modeling, model deployment, data management with evidence of strategic impact.
- Proven project experience working in ML and…
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