Data Scientist

Posted 4 Days Ago
San Francisco, CA, USA
In-Office
Senior level
Artificial Intelligence • HR Tech • Software
The Role
Design, build, and productionize time-series forecasting models and pipelines (statistical and ML/deep-learning) to predict workforce and business metrics. Partner with product and engineering to deploy, monitor, retrain, and explain models; measure business impact and mentor junior data scientists.
Summary Generated by Built In

Data Scientist

San Francisco

Engineering

In office

Full-time

Company Overview

ReadyOn is an AI-native Labor Operating System that is redefining how the world’s largest enterprises manage frontline labor. Born out of a Stanford AI Lab, the company applies advanced AI and market-design principles to one of the hardest optimization problems on earth: matching the world’s 2.7 billion frontline workers to the right shifts, in real time.

Frontline workers now expect the same flexibility and autonomy that gig platforms provide, while large employers face relentless pressure to meet aggressive labor-cost targets. ReadyOn bridges that divide with a system of action that predicts workforce demand, dynamically matches it to an employer’s supply of employees, and automates the thousands of staffing decisions made daily across complex, multi-site operations.

The platform is already proven at global scale, powering labor operations for several of the world’s largest enterprises. Landmark customers include a F250 food-service enterprise (300K employees across 16 countries; $7B+ annual labor spend, a F500 hotel group (250K+ employees; $5B+ annual labor spend), a F250 entertainment operator (75K employees; $4B+ labor spend). Across these deployments, ReadyOn has proven that scheduling was never the real problem—it was a symptom. The true challenge is how to match people and work dynamically at scale. ReadyOn solves this problem with an AI system of action that transforms labor from a fixed cost into a strategic advantage, reshaping how enterprises think about workforce design altogether.

Headquartered in San Francisco with 80 employees, ReadyOn grew 8x year-over-year revenue growth in 2025, driven by multiple seven-figure Fortune 250 enterprise deployments and a rapidly expanding pipeline.

Transform How Frontline Work Runs

Enterprises struggle to manage hundreds of millions of dollars in frontline labor spend due to decades-old software and manual processes, creating massive, avoidable costs. Frontline labor often represents 40% of the P&L, yet the systems managing this $3 trillion market were built for static schedules and limited flexibility.

ReadyOn was founded to reject that paradigm. Staffing is not a scheduling problem; it is a real-time supply–demand orchestration problem. ReadyOn is an AI-native labor operating system, built from the ground up for AI agents to perform real-time labor optimization - much like ridesharing platforms that match drivers and riders in real time, but applied to frontline labor instead of fixed, one-size-fits-all schedules.

Who’s Building It

AI is not a bolt-on feature in our platform. Every decision, from demand forecasting to shift assignment, flows through an adaptive, autonomous decision layer that learns from operational data and continuously optimizes for cost, compliance, and worker satisfaction. Behind that system is a founding team of experts in labor markets, enterprise software, and AI-enabled platforms:

Reza – Engineering leader who scaled enterprise systems at Google, Yahoo, and AT&T

Dominic – Operator who optimized labor-intensive operations in 21 countries

Mohammad – Stanford professor and leading expert in algorithmic market design

ReadyOn has already proven product–market fit with multiple multi-million-dollar customers, consistent expansion within existing accounts, and measurable ROI that moves stock prices.

Ideal candidates

  • Data Scientists who thrive in ambiguous, high-impact environments and naturally set technical direction for the Software and Machine Learning Engineers.​

  • Care deeply about clean scalable machine learning modelling techniques, and are not afraid to rethink default patterns.​

  • Enjoy working closely with engineering, product, design, and AI research teams to deliver new data-driven experiences customers actually use.​

  • Focus on best-in-class modelling techniques, not just technical output, and love solving real business problems with data, services, and automation.​

Responsibilities

  • Design, build, and deploy forecasting models that predict key business and customer metrics across workforce planning, revenue, demand, operational, and AI-driven decision-support use cases.

  • Develop and maintain production-grade time series forecasting solutions using statistical and machine learning techniques such as ARIMA, SARIMA, Prophet, XGBoost, LightGBM, LSTM, Temporal Fusion Transformers (TFT), and other modern forecasting approaches.

  • Analyze large-scale structured and unstructured datasets to identify trends, seasonality, anomalies, and business drivers impacting forecast accuracy.

  • Partner closely with Product, Engineering, Customer Success, and Leadership teams to translate business requirements into scalable forecasting solutions.

  • Build forecasting pipelines, feature engineering frameworks, model monitoring, and automated retraining processes.

  • Design and execute experiments to improve forecast accuracy and quantify business outcomes.

  • Create explainable forecasting outputs and communicate insights to both technical and non-technical stakeholders.

  • Collaborate with AI/ML engineers to productionize models within ReadyOn's platform.

  • Establish best practices around model governance, data quality, monitoring, observability, and reproducibility.

  • Research and evaluate emerging forecasting and AI technologies to continuously improve platform capabilities.

  • Mentor junior data scientists and contribute to a strong data-driven culture.

Your background

  • BS, MS, or PhD in Data Science, Statistics, Mathematics, Computer Science, Economics, Operations Research, or a related quantitative field.

  • 4+ years of professional experience building and deploying machine learning models in production environments.

  • 2+ years of hands-on experience developing time series forecasting models for business-critical applications.

  • Strong expertise in forecasting techniques including:

    • ARIMA/SARIMA

    • Exponential Smoothing (ETS/Holt-Winters)

    • Prophet

    • State Space Models

    • Gradient Boosting Methods (XGBoost, LightGBM, CatBoost)

    • Deep Learning approaches (LSTM, GRU, Temporal Fusion Transformers)

  • Advanced proficiency in Python and data science libraries including Pandas, NumPy, Scikit-learn, Statsmodels, Prophet, PyTorch, TensorFlow, or similar frameworks.

  • Strong SQL skills and experience working with large-scale datasets and data warehouses.

  • Experience building end-to-end ML pipelines, model deployment, and monitoring solutions.

  • Strong understanding of feature engineering for temporal data, seasonality decomposition, anomaly detection, and forecast explainability.

  • Experience with MLOps tools and practices including CI/CD, model versioning, experiment tracking, and automated retraining.

  • Ability to communicate complex analytical findings to business stakeholders.

Preferred Background

  • Experience working in AI-native or high-growth SaaS environments.

  • Experience forecasting workforce, staffing, recruiting, customer demand, revenue, or operational metrics.

  • Prior experience building forecasting products rather than one-off analytical models.

  • Startup experience and comfort operating in fast-paced, ambiguous environments.

What Success Looks Like

  • Improve forecasting accuracy across customer deployments.

  • Build scalable forecasting services that support ReadyOn's AI-powered workforce and business intelligence platform.

  • Deliver production-ready models that directly impact customer decision-making and operational efficiency.

If you’re looking for predictability, rigid structure, or narrow specialization, this probably isn’t the right role. This is a senior-level position for thinkers - who want to define the AI/ML modeling of the future AI-native labor operating system and shape how data, AI, and backend services come together in production with the engineering team.

Skills Required

  • BS, MS, or PhD in Data Science, Statistics, Mathematics, Computer Science, Economics, Operations Research, or related quantitative field
  • 4+ years professional experience building and deploying machine learning models in production
  • 2+ years hands-on experience developing time series forecasting models for business-critical applications
  • Strong expertise in forecasting techniques (ARIMA, SARIMA, ETS/Holt-Winters, Prophet, State Space Models, Gradient Boosting, LSTM, GRU, TFT)
  • Advanced proficiency in Python and data science libraries (Pandas, NumPy, Scikit-learn, Statsmodels, Prophet, PyTorch, TensorFlow)
  • Strong SQL skills and experience with large-scale datasets and data warehouses
  • Experience building end-to-end ML pipelines, model deployment, monitoring, and automated retraining
  • Strong understanding of feature engineering for temporal data, seasonality decomposition, anomaly detection, and forecast explainability
  • Experience with MLOps tools and practices including CI/CD, model versioning, and experiment tracking
  • Ability to communicate complex analytical findings to technical and non-technical stakeholders
  • Experience working in AI-native or high-growth SaaS environments
  • Experience forecasting workforce, staffing, recruiting, customer demand, revenue, or operational metrics
  • Prior experience building forecasting products rather than one-off analytical models
  • Startup experience and comfort operating in fast-paced, ambiguous environments
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The Company
47 Employees
Year Founded: 2022

What We Do

ReadyOn is an AI-native labor operating system designed for hiring, scheduling, and managing flexible frontline workforces. The platform optimizes workforce deployment for enterprises by utilizing agentic AI to replace legacy fixed scheduling with a dynamic labor marketplace where employees choose their own shifts. This approach improves staffing reliability and significantly reduces hiring time for large-scale frontline operations.

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