Data Scientist, People

Replit
Foster City, US
On-site

Who this role is best for

Aimed at mid-level data scientists with 6+ years in people analytics who thrive in AI-driven, fast-moving environments and can commit to in-office work three days a week.

Best fit for

  • Data scientists who blend HR domain expertise with AI implementation skills
    — “use data, AI, and automation to help the company make faster and better talent decisions
  • Candidates comfortable building predictive models for sensitive organizational data
    — “Develop predictive models and tooling that help managers and recruiters make better decisions faster
  • Professionals experienced in modern data stacks and people systems integration
    — “Experience with modern data stack tools (dbt, BigQuery, Snowflake, etc.)

Things to consider

  • Requires on-site presence in Foster City three days weekly
    — “The role has an in-office requirement of Monday, Wednesday, and Friday
  • Expectation to handle highly sensitive compensation and organizational data
    — “Ability to handle highly sensitive organizational and compensation data with discretion

How to stand out

  • Demonstrate specific examples of AI-driven people analytics implementations
    — “Demonstrated experience using AI and LLMs in analytics workflows
  • Highlight projects where you transformed unstructured HR data into insights
    — “Use LLMs and agentic workflows to analyze unstructured People data at scale
  • Showcase cross-functional collaboration with HR, Recruiting and Finance teams
    — “You’ll work across HR, Recruiting, Finance, and Data Engineering
Pace · Fast PacedCollaboration · HighAutonomy · MediumDecision Impact · TeamLevel · Senior

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • Developed models and tools that improve talent decisions
  • Built live systems for compensation recommendations
  • Deployed AI agents for first-pass recommendations
Typical background
PhD or Master's in Data Science, Statistics, or related fieldExperience in People Analytics

Skills & requirements

Required

People AnalyticsCompensation AnalyticsWorkforce AnalyticsSQLPythonPredictive ModelingStatistical FoundationLlms In Analytics Workflows

Preferred

Gpu-based InfrastructureAi/ml WorkloadsInference And Training Pipelines

Stack & domain

SQLPythonPeople AnalyticsCompensation AnalyticsWorkforce AnalyticsPredictive ModelsStatistical FoundationExperimentationCausal InferenceLlmsAgentic WorkflowsCommunicationFinanceHrRecruitingData Engineering

About the role

Original posting from Replit via Ashby

Replit is the agentic software creation platform that enables anyone to build applications using natural language. With millions of users worldwide, Replit is democratizing software development by removing traditional barriers to application creation.

ABOUT THE ROLE

At https://replit.com?utm_source=chatgpt.comReplit, we’re building an AI-native company — and that includes how we operate internally.

We’re looking for a Data Scientist, People to help us build the intelligence systems behind hiring, compensation, performance, organizational design, and workforce planning.

This is not a traditional People Analytics role focused on dashboards and reporting. We want someone who can use data, AI, and automation to help the company make faster and better talent decisions at scale.

You’ll work across HR, Recruiting, Finance, and Data Engineering to build models, tools, and workflows that improve how the company hires, rewards, retains, and organizes talent.

You’ll report into Data Science and partner closely with the People leadership team.

IN THIS ROLE, YOU WILL

  • Build the analytical foundation to evaluate compensation competitiveness. Connect Ashby offer data, band position, acceptance rates, and market benchmarks into a live system that recommends specific adjustments.
  • Develop predictive models and tooling that help managers and recruiters make better decisions faster. Example: a regretted attrition model that flags at-risk employees 90 days in advance and surfaces the underlying signals directly into manager 1:1 prep.
  • Design and deploy AI agents that draft first-pass recommendations for high-stakes People decisions, including compensation, promotion, and hiring. People leaders review and adjust rather than starting from scratch.
  • Build the recruiting analytics layer that connects sourcing channel to time-to-hire to first-year performance to tenure. Use it to reallocate recruiting spend and surface weekly insights to recruiting leadership.
  • Analyze organizational effectiveness, including spans and layers, talent density, and hiring efficiency. Identify where the org is over-leveled, under-leveled, or structurally inefficient.
  • Partner with Finance to move from spreadsheets to live workforce model that accounts for attrition, hiring velocity, and ramp time by function.
  • Use LLMs and agentic workflows to analyze unstructured People data at scale, including support tickets, exit interviews, performance reviews, and engagement survey responses.
  • Replace recurring reporting cycles with always-on agents that surface insights to leaders when they need them, not on a quarterly schedule.
  • Support high-stakes organizational and talent decisions with rigorous analysis, including executive hiring, retention, and reorganizations.

REQUIRED SKILLS & EXPERIENCE

  • Minimum 6 years of experience. Targeting Senior or Staff Data Scientist depending on demonstrated scope and impact.
  • Experience in People Analytics, compensation analytics, or workforce analytics
  • Strong SQL and Python skills
  • Experience building predictive models and analytical frameworks for business decision-making
  • Strong statistical foundation, including experimentation and causal inference
  • Experience working with large-scale operational or behavioral datasets
  • Demonstrated experience using AI and LLMs in analytics workflows
  • Ability to communicate complex insights clearly to executives and cross-functional partners
  • High ownership mindset and comfort operating in fast-moving environments
  • Ability to handle highly sensitive organizational and compensation data with discretion

PREFERRED QUALIFICATIONS

  • Experience at a high-growth or AI-native company
  • Experience building internal tools, agents, or automated workflows
  • Familiarity with organizational design, compensation, or talent management concepts
  • Experience with modern data stack tools (dbt, BigQuery, Snowflake, etc.)
  • Experience with People systems such as Rippling, Ashby, Lattice, or Carta

BONUS POINTS

  • Experience building on Replit
  • Experience with NLP or unstructured text analysis
  • Interest in the future of AI-native organizations and how AI changes the way companies operate

This is a full-time role that can be held from our Foster City, CA office. The role has an in-office requirement of Monday, Wednesday, and Friday.

Full-Time Employee Benefits Include:

💰 Competitive Salary & Equity

💹 401(k) Program with a 4% match (US Only)

⚕️ Health, Dental, Vision and Life Insurance

🩼 Short Term and Long Term Disability

🚼 Paid Parental, Medical, Caregiver Leave

🏝 Flexible Time Off (FTO) + Holidays

🚗 Commuter Benefits (In-Office Only)

📱 Monthly Wellness Stipend

🧑‍💻 Autonomous Work Environment

🖥 In Office Set-Up Reimbursement (In-Office Only)

🚀 Quarterly Team Gatherings

☕ In Office Amenities (In-Office Only)

Want to learn more about what we are up to?

  • Meet the Replit Agent https://www.youtube.com/watch?v=IYiVPrxY8-Y
  • Replit: Make an app for that https://www.youtube.com/watch?v=4zd9hzngFwY
  • Replit Blog https://blog.replit.com/
  • Amjad TED Talk https://youtu.be/kCudFI4tcpg?si=l4ViCejV_f2RZkDi

Interviewing + Culture at Replit

  • Operating Principles https://blog.replit.com/operating-principles
  • Reasons not to work at Replit https://blog.replit.com/reasons-not-to-join-replit

To achieve our mission of making programming more accessible around the world, we need our team to be representative of the world. We welcome your unique perspective and experiences in shaping this product. We encourage people from all kinds of backgrounds to apply, including and especially candidates from underrepresented and non-traditional backgrounds.

Source: Replit careers (Ashby)

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