opengreenhousebvp
Software Engineer, Data Platform
GlossGenius
LocationHybrid - SF Bay Area, San Francisco - In Office
WorkplaceHybrid
Last observed2026-06-29 02:03:21.613139
Job idbvp-glossgenius:greenhouse:7538131003
About GlossGenius GlossGenius is the AI-powered system behind the world’s most meaningful appointments, helping 100,000+ service businesses earn more revenue and free up time for the work they love. Our agentic workforce gets more clients in the door, grows profit per appointment, and keeps clients coming back — doing the jobs owners never had time for and couldn’t justify hiring to fill. Businesses on GlossGenius process billions in annual payment volume, and see 65% more revenue using GlossGenius Payments by growing ticket size, rebooking clients at checkout, and saving on processing fees. About the Role Every AI product GlossGenius ships runs on top of a data platform, and right now, that platform is being rebuilt from the ground up to support it. As a Software Engineer on the Data Platform team, you'll own the architecture and infrastructure that moves data from raw ingestion to model-ready, at the scale of billions of transactions and 120,000+ businesses generating signal every day. This is the foundational layer that determines what our AI can do and how fast it can get there. The work is technically hard, the stakes are real, and the person in this role will directly shape the long-term direction of GlossGenius's data ecosystem. You must be commutable to our San Francisco office and will operate in a hybrid environment. We default to being in-office 3–4 days per week with required attendance on Tuesdays and Thursdays. What You'll Do Architect and evolve a scalable, cost-efficient lakehouse foundation using Snowflake and Clickhouse. Owning it end-to-end from design through operations and cost management Design and implement core data models and pipelines that power analytics, ML, and AI product experiences across the platform Build the data infrastructure that makes AI possible: pipelines that move data from raw ingestion to model-ready, with the reliability and performance that production ML systems require Implement modern data orchestration patterns including medallion architectures, batch and streaming workloads, and large-scale ETL at production scale Define technical standards and best practices that improve data quality, governance, and lineage across teams, and drive adoption across engineers who don't report to you Use AI tooling to accelerate your own development workflow: from pipeline design and debugging to query optimization, and set the bar for what AI-assisted data engineering looks like on this team Mentor engineers and foster a culture of ownership, operational excellence, and continuous improvement What We're Looking For 5+ years of data engineering experience, with a strong background in data architecture, data modeling, and distributed data systems at production scale You've used AI to design pipelines, accelerate debugging, and push the quality of your own output, not just as an autocomplete tool Deep expertise in modern lakehouse technologies including Snowflake and Clickhouse, with hands-on experience architecting for reliability and cost efficiency Advanced proficiency in SQL and Python or Scala, including performance optimization and large-scale ETL design Proven experience building data infrastructure that supports AI and ML workflows, you understand what it takes to get data from raw to model-ready and have done it in production Strong ability to lead technical initiatives, set standards, and influence decisions across teams without relying on positional authority Clear communicator who can translate complex technical trade-offs to both engineers and non-technical stakeholders Benefits & Perks Competitive health & dental insurance options, effective on your first day of employment Flexible PTO In-office lunch twice per week for NYC and SF employees, plus late night dinner stipends Access to Wellhub, a corporate wellness platform with discounted gym memberships, fitness classes, and mental health resources Annual stipend for professional development and continued learning High performers at 5 y
This page is generated from the committed OpenOpps static snapshot. Use the source posting or apply link for the employer's current canonical posting state.