The Role
Own and scale the data platform powering ReadyOn's real-time labor OS. Design and operate batch and real-time pipelines, transformations, and data services (Python, PySpark, Airflow, Glue, Snowflake, Postgres). Build connectors, observability, data quality, and feature-store infrastructure while partnering with AI, backend, and product teams and providing technical leadership and mentorship.
Summary Generated by Built In
Transform How Frontline Work Runs
Who’s Building It
Hands-On Builders Leading AI Innovation
Ideal candidates
Responsibilities
Your background
Interview Process
Location: Why In-Person Matters
Compensation
Potential Recruitment Fraud Memo
EEO Statement
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.
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.
We’re building a top-tier engineering team to reimagine how labor is managed at scale. As a Principal Data Engineer, you will own the data platform and core data services that power ReadyOn’s real-time labor operating system, enabling AI agents to orchestrate frontline work across thousands of shifts, locations, and workers every day.
- Are hands-on senior engineers who thrive in ambiguous, high-impact environments and naturally set technical direction for others.
- Care deeply about clean system design, scalability, and elegant architecture across both data and backend systems, and are not afraid to rethink default patterns.
- Enjoy working closely with product, design, and AI research teams to deliver new data-driven experiences customers actually use.
- Focus on business outcomes, not just technical output, and love solving real business problems with data, services, and automation.
- Design, build, and scale data pipelines and data services using Python, TypeScript, Apache Airflow, PySpark, AWS Glue, and Snowflake to support both real-time and batch workloads.
- Design, operationalize, and monitor ingest and transformation workflows, including DAGs, alerting, retries, SLAs, and robust data quality checks for production environments.
- Collaborate with AI, platform, and backend teams to automate ingestion, data validation, and real-time compute workflows, and drive the roadmap toward a production-grade feature store that supports AI agents and decisioning.
- Partner closely with the core engineering team to shape ReadyOn’s Integration Platform, ensuring external systems (HCM, WFM, payroll, timekeeping, and other enterprise tools) integrate cleanly and are observable end to end in ReadyOn dashboards.
- Model data structures and implement efficient, scalable transformations in Snowflake and PostgreSQL, including schema design, indexing, partitioning, and query optimization for high-volume, low-latency use cases.
- Build reusable frameworks, connectors, and internal libraries that standardize how data is published, discovered, and consumed by backend services, analytics, and AI workloads.
- Implement and continuously improve observability across pipelines and services: structured logging, metrics, tracing, data quality monitoring, lineage, and incident response playbooks.
- Provide technical leadership on data and backend integration: participate in system design and code reviews, mentor other engineers, and help drive sound, pragmatic technical decisions in a fast-moving environment.
- 5 plus years of production data engineering experience, including owning critical pipelines, datasets, and services in live environments.
- Deep, hands-on experience with Apache Airflow, AWS Glue, PySpark, and Python-based data pipelines, including orchestration, monitoring, and troubleshooting at scale.
- Solid SQL skills and experience working with PostgreSQL in production: schema design, query optimization, migration management, and handling concurrency in large-scale environments.
- Strong understanding of cloud-native data and service workflows (AWS preferred), including data warehousing, storage, security, and cost-efficient architectures.
- Fluency in TypeScript and experience with a backend framework such as NestJS (or other Node.js frameworks), including designing decoupled services and robust enterprise interfaces; GraphQL experience is a significant plus.
- Experience implementing observability for data and backend systems: logging, metrics, tracing, data validation, and automated alerts for pipeline and service health.
- Comfortable collaborating with AI/ML and data science teams, understanding how data flows into models, feature stores, and real-time decisioning workflows, even if you are not a data scientist yourself.
- Bonus: hands-on experience with conflict resolution in collaborative or concurrent-editing systems, graph processing, feature stores, or real-time coordination tools and algorithms.
If you’re looking for predictability, rigid structure, or narrow specialization, this probably isn’t the right role. This is a principal-level position for hands-on builders who want to define the data foundation of an AI-native labor operating system and shape how data, AI, and backend services come together in production.
- Screening call with Talent (Recruiter)
- 1:1 interview with Founder/CTO, Reza Iranmanesh (hiring manager)
- Technical panel: cross-functional technical interview (virtual)
- Onsite interview with direct team and select founding members
As a high-growth startup tackling complex, industry-defining challenges, in-person collaboration is essential to our success. Being together in our San Francisco office enables rapid decision-making, creative problem-solving, and strong team trust, critical in this formative phase. You’ll be required to work onsite, Monday through Friday, to help shape our culture, accelerate learning, and build the foundational technology that will define ReadyOn’s future.
Final compensation will be determined based on your skills, experience, and geographic location. In addition to salary, this role may include comprehensive benefits, bonuses, commissions, and a meaningful equity stake in ReadyOn.
Recruiting at ReadyOn is handled directly by our in-house team or verified hiring partners. We will never request payment, bank details, or confidential personal information during our recruitment process. If you are contacted by someone claiming to represent ReadyOn and you are concerned about the legitimacy of the interaction, please contact us at [email protected] to verify any communication.
ReadyOn is committed to building a diverse and inclusive workplace. We are proud to be an Equal Opportunity Employer. Qualified applicants will receive consideration for employment without regard to race, color, religion, gender, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status.
Skills Required
- 5+ years production data engineering experience owning critical pipelines, datasets, and services in live environments
- Deep, hands-on experience with Apache Airflow, AWS Glue, PySpark, and Python-based data pipelines, including orchestration, monitoring, and troubleshooting at scale
- Experience designing, building, and scaling data pipelines and data services for real-time and batch workloads
- Experience implementing ingest and transformation workflows with DAGs, alerting, retries, SLAs, and data quality checks in production
- Strong SQL skills and production experience with PostgreSQL: schema design, query optimization, migrations, and concurrency handling
- Experience modeling data and implementing efficient transformations in Snowflake (schema design, partitioning, query optimization)
- Fluency in TypeScript and experience with a backend framework such as NestJS or other Node.js frameworks
- Experience implementing observability for data and backend systems: structured logging, metrics, tracing, data validation, and automated alerts
- Comfortable collaborating with AI/ML and data science teams and understanding how data feeds models and feature stores
- Strong understanding of cloud-native data and service workflows (AWS preferred)
- GraphQL experience
- Hands-on experience with conflict resolution in collaborative or concurrent-editing systems, graph processing, feature stores, or real-time coordination tools (bonus)
- Required to work onsite Monday through Friday in San Francisco
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The Company
What We Do
ReadyOn builds an AI-native labor operating system that models demand and optimizes hiring, scheduling, and workforce matching for frontline operations. The platform automates shift creation, ranks available workers by fit and availability, handles exceptions in real time, and gives managers insights to reduce labor cost and improve schedule flexibility and fairness across enterprise sites.







