Data Scientist - Extensions

Fundamental
Hybrid

About The Position

In this role, you'll research, develop, and productize data science capabilities that enhance and expand our product performance on real enterprise use cases - working across a wide range of prediction tasks, data types, and business domains. You'll go deep on hard data science problems, collaborate closely with R&D on product capabilities, and ship production-grade work that has a direct impact on Production use cases.

Requirements

  • 5+ years of experience in data science or machine learning roles
  • Strong Python skills, including fluency with pandas, numpy, and scikit-learn
  • Deep hands-on experience with traditional ML models: XGBoost, LightGBM, CatBoost, and similar gradient boosting frameworks
  • Solid understanding of what makes real-world tabular data challenging: class imbalance, high cardinality, distribution shift, missing values, and more
  • Strong experimental mindset - comfortable designing benchmarks and drawing rigorous conclusions from noisy results
  • Ability to work autonomously and drive work from idea to shipped output

Nice To Haves

  • Familiarity with tabular foundation models (TabPFN, CARTE, or similar)
  • Competitive data science experience (Kaggle, DrivenData, or similar) - especially top finishes on tabular competitions
  • Background in a domain where structured prediction matters: finance, supply chain, healthcare, retail, or industrial
  • Experience contributing to or designing internal ML libraries or shared tooling
  • Familiarity with DuckDB, Polars, or modern in-process analytics engines
  • Comfort reading ML research papers and translating findings into practical implementations

Responsibilities

  • Research and develop data science methods that improve NEXUS predictive performance across diverse enterprise datasets, industries, and prediction task types
  • Design and implement robust, production-quality Python components with a strong focus on correctness, generality, and reusability
  • Deeply understand the characteristics of real-world enterprise data and develop strategies that help NEXUS handle them reliably
  • Run rigorous experiments to measure the impact of new approaches, design meaningful benchmarks, and use results to guide prioritization
  • Work across a wide variety of structured data problems - including but not limited to classification, regression, ranking, and forecasting
  • Collaborate closely with the Engineering and Research teams to develop a deep understanding of NEXUS model behavior and use that knowledge to inform your work
  • Work with Applied AI Engineers to validate approaches on real customer datasets and translate findings into product capabilities
  • Contribute to technical documentation and internal best practices, helping the broader team apply new capabilities correctly and confidently

Benefits

  • Competitive compensation with salary and equity
  • Comprehensive health coverage for you and your dependents
  • Paid parental leave for all new parents, inclusive of adoptive and surrogate journeys
  • Relocation support for employees moving to join the team in one of our office locations
  • A mission-driven, low-ego culture that values diversity of thought, ownership, and bias toward action
© 2026 Teal Labs, Inc
Privacy PolicyTerms of Service