Data Scientist (Kaggle-Grandmaster)

Mercor
London
2 months ago
Applications closed

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Role Description

Mercor is hiring on behalf of a leading AI research lab to bring on a highly skilled Data Scientist with a Kaggle Grandmaster profile. In this role, you will transform complex datasets into actionable insights, high-performing models, and scalable analytical workflows. You will work closely with researchers and engineers to design rigorous experiments, build advanced statistical and ML models, and develop data-driven frameworks to support product and research decisions.

What You’ll Do

  • Analyze large, complex datasets to uncover patterns, develop insights, and inform modeling direction

  • Build predictive models, statistical analyses, and machine learning pipelines across tabular, time-series, NLP, or multimodal data

  • Design and implement robust validation strategies, experiment frameworks, and analytical methodologies

  • Develop automated data workflows, feature pipelines, and reproducible research environments

  • Conduct exploratory data analysis (EDA), hypothesis testing, and model-driven investigations to support research and product teams

  • Translate modeling outcomes into clear recommendations for engineering, product, and leadership teams

  • Collaborate with ML engineers to productionize models and ensure data workflows operate reliably at scale

  • Present findings through well-structured dashboards, reports, and documentation

Qualifications

  • Kaggle Competitions Grandmaster or comparable achievement: top-tier rankings, multiple medals, or exceptional competition performance

  • 3–5+ years of experience in data science or applied analytics

  • Strong proficiency in Python and data tools (Pandas, NumPy, Polars, scikit-learn, etc.)

  • Experience building ML models end-to-end: feature engineering, training, evaluation, and deployment

  • Solid understanding of statistical methods, experiment design, and causal or quasi-experimental analysis

  • Familiarity with modern data stacks: SQL, distributed datasets, dashboards, and experiment tracking tools

  • Excellent communication skills with the ability to clearly present analytical insights

Nice to Have

  • Strong contributions across multiple Kaggle tracks (Notebooks, Datasets, Discussions, Code)

  • Experience in an AI lab, fintech, product analytics, or ML-focused organization

  • Knowledge of LLMs, embeddings, and modern ML techniques for text, images, and multimodal data

  • Experience working with big data ecosystems (Spark, Ray, Snowflake, BigQuery, etc.)

  • Familiarity with statistical modeling frameworks such as Bayesian methods or probabilistic programming

Why Join

  • Gain exposure to cutting-edge AI research workflows, collaborating closely with data scientists, ML engineers, and research leaders shaping next-generation analytical systems.

  • Work on high-impact data science challenges while experimenting with advanced modeling strategies, new analytical methods, and competition-grade validation techniques.

  • Collaborate with world-class AI labs and technical teams operating at the frontier of forecasting, experimentation, tabular ML, and multimodal analytics.

  • Flexible engagement options (30-40 hrs/week or full-time) — ideal for data scientists eager to apply Kaggle-level problem-solving to real-world, production analytics.

  • Fully remote and globally flexible work structure — optimized for deep analytical work, async collaboration, and high-output research.

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