Skip to content

Senior Data Scientist

155k – 180kNew York, NYData ScienceHybrid3+ YOE
Summary

Design, build, and productionize GenAI and LLM-powered systems including RAG pipelines and agentic workflows for credit intelligence products. Requires 3+ years building production AI systems with Python, cloud infrastructure, and strong systems thinking.

About the role

Responsibilities

  • Apply strong problem-solving and critical thinking skills to break down complex, ambiguous requirements into clear, implementable technical components and system designs.
  • Design, build, and maintain AI-powered and data-driven systems with a focus on modern language and multimodal models, including LLM-driven applications, RAG pipelines, and agentic workflows.
  • Evaluate and productionize commercial and open-source LLMs, choosing appropriate models, tools, and techniques for each use case. Develop multi-step agentic workflows that incorporate tools, external data sources, memory, and control logic.
  • Manage the orchestration of production LLM workflows and agentic systems, ensuring reliability and efficiency through prompt routing, state management, retries, fallbacks, and error handling.
  • Design, test, and iteratively refine prompts and system instructions using prompt engineering and tuning techniques to improve model reliability, accuracy, and task performance.
  • Maintain production-grade code and services with automated monitoring and performance tracking, using metrics and alerts to guide continuous improvements in models, prompts, and pipelines.
  • Apply systems thinking to design and optimize AI and LLM systems, balancing quality, scalability, latency, cost, and operational complexity, while implementing efficiency improvements using model selection, prompt design, batching, caching, and retrieval strategies.
  • Define and implement evaluation and observability frameworks for AI systems, including automated testing, task-specific benchmarks, regression testing for prompts, human-in-the-loop validation, and performance monitoring.
  • Build and integrate AI models into backend systems and APIs to support both real-time and batch inference, ensuring solutions are production-ready, scalable, and efficient.
  • Apply NLP and ML techniques to tasks such as information extraction, semantic search and retrieval, text classification, summarization, and reasoning over text and documents.
  • Collaborate closely with engineering and infrastructure teams to deploy solutions using containerized and cloud-based environments (e.g., GitHub, Docker, AWS), applying modern deployment and infrastructure practices.
  • Collaborate with product managers, business stakeholders, and domain experts to translate complex, ambiguous business problems into actionable technical solutions, and communicate progress, trade-offs, and outcomes to relevant stakeholders.
  • Continuously learn and adapt to advancements in NLP and Generative AI to ensure solutions remain innovative and effective.

Requirements

  • Bachelor’s or Master’s degree in Computer Science, Engineering, or a related technical field (or equivalent practical experience).
  • 3+ years of experience as a Data Scientist, Machine Learning Engineer, or applied AI practitioner, with a strong foundation in computer science, algorithms, and software development.
  • Advanced programming skills in Python, with experience building production-grade systems beyond research or experimentation.
  • Solid understanding of machine learning and applied AI concepts, with experience taking solutions from prototype to production.
  • Hands-on experience designing, building, and deploying LLM-driven or GenAI applications, including familiarity with vector databases, embeddings pipelines, or semantic search systems.
  • Practical experience with cloud-based deployments and infrastructure tools (e.g., AWS, Docker, GitHub) and an understanding of modern DevOps practices, containerization, orchestration, caching strategies, and cost-aware design.
  • Strong problem-solving skills and systems thinking, with the ability to balance trade-offs across model quality, scalability, inference latency, cost, and operational complexity.
  • Ability to interpret and implement research ideas and algorithms, actively contributing to research and development initiatives while translating them into production solutions.
  • Excellent communication and collaboration skills, with experience working closely with product managers, engineers, and domain experts to deliver actionable technical solutions.
  • Passion for learning and staying current with the rapidly evolving AI/ML landscape, including emerging best practices for GenAI applications.
  • Strong ownership and initiative, with the ability to independently drive projects from problem definition to delivery, while being a team player and contributing to the overall success of the data science team.

Compensation & Benefits

  • Salary range: $155,000-$180,000
  • Performance-based annual bonus
  • Competitive health benefits, matched 401k and pension plans, PTO, generous parental leave, gym subsidies, educational reimbursements for career development, recognition programs, pet-friendly offices (US only)
Skills
PythonLLMsRAGNLPMachine LearningAWSDockerGitHubVector DatabasesPrompt Engineering
Similar roles at this salary range
All Data Science jobs →
Nuro

Data Scientist Intern

Data Science intern role focused on defining metrics, building ML/statistical models, and creating dashboards to optimize autonomous vehicle operations and software deployment.

138k – 168kMountain View, CAData ScienceOn-siteEntry levelRSQL
Pinterest

Staff Data Scientist, Forecasting

Lead forecasting models for key company metrics, own the full modeling lifecycle, and translate outputs into executive decisions. Requires 8+ years building production time-series models at scale, strong Python/SQL skills, and proven technical leadership.

165k – 339kSan Francisco, CAData ScienceHybrid8+ YOESQLHive
Mozilla

Senior Marketing Data Scientist

Senior Data Scientist on the Marketing Data Science team responsible for end-to-end marketing measurement, experimentation, reporting, and advanced statistical modeling to guide investment decisions.

127k – 200kUnited StatesData ScienceRemote2+ YOESQLPython
PrizePicks

Data Science Manager - Market Origination

Lead a team of data scientists and analysts to own line setting strategy, projection models, and market origination for fantasy sports and esports props. Requires 5+ years in sports betting/fantasy, management experience, and strong technical skills in SQL/Python/R.

160k – 190kAtlanta, GAData ScienceRemote5+ YOERSQL
PrizePicks

Data Science Manager - Sports Pricing

Lead pricing and risk strategy for fantasy sports markets while managing a team of pricing analysts and data scientists. Requires 5+ years in sports betting/fantasy, strong data science skills, and proven management experience.

160k – 190kAtlanta, GAData ScienceRemote5+ YOERSQL