Data Scientist

BlackLineUNAVAILABLE, UNAVAILABLE
Hybrid

About The Position

We are looking for a Data Scientist to join our Product & Technology organization and play a pivotal role in transforming data into actionable intelligence and forward-looking innovation. This role sits at the intersection of advanced analytics, machine learning, and emerging AI paradigms (LLMs and agentic systems). You will work closely with product and engineering leadership to unlock insights from complex, large-scale datasets, shape intelligent features, and enable the next generation of AI-powered solutions. This is an ideal role for a curious, self-driven problem solver who thrives on exploring data deeply, asking the right questions, and translating findings into meaningful business impact.

Requirements

  • Master’s or Ph.D. in Mathematics, Computer Science, Statistics, or a closely related field
  • 5+ years of experience as a Data Scientist or Machine Learning Engineer
  • Proven track record of deriving meaningful insights from large-scale historical data
  • Experience working in data-intensive, product-driven environments, preferably in SaaS or FinTech
  • Strong foundation in machine learning fundamentals and practical model development
  • Deep experience in feature engineering and data preparation techniques
  • Proficiency across data persistence paradigms: SQL (relational databases), NoSQL systems, Graph databases
  • Experience with modern data platforms: Preferred: Snowflake and/or Google Cloud (BigQuery, Vertex AI, etc.)
  • Alternative: AWS-native data and ML stack
  • Working experience with Large Language Models (LLMs) and agentic AI systems
  • Understanding of context construction, embeddings, and retrieval strategies
  • Highly innovative, curious, and self-motivated
  • Strong analytical and problem-solving mindset
  • Customer-focused, with the ability to align data insights to real-world business needs
  • Effective communicator, capable of translating technical findings into clear business narratives

Responsibilities

  • Collaborate with Product & Technology leadership to analyze historical datasets, extracting insights across: Longitudinal trends, Behavioral and transactional patterns
  • Translate complex data into clear, actionable insights that inform product strategy and decision-making
  • Answer targeted business questions related to customers, industry dynamics, and operational performance
  • Guide ML teams in designing and refining feature engineering strategies
  • Apply strong ML fundamentals to ensure robust, scalable, and interpretable models
  • Partner with engineering teams to ensure effective data pipelines and model integration
  • Collaborate with Agentic AI teams to design optimal context vectors and data representations for LLM-driven systems
  • Contribute to the development and evaluation of LLM-based and agentic workflows
  • Ensure data quality and structure support high-performance AI reasoning and retrieval
  • Conduct data-driven, empirical analysis of new business ideas, assessing feasibility, relevance, and potential impact
  • Build prototypes, experiments, and analytical models to validate hypotheses quickly and rigorously
  • Continuously explore new techniques across AI, ML, and data science to drive innovation

Benefits

  • professional development seminars
  • inclusive affinity groups
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