At Rollstack, we are revolutionizing the way businesses share and communicate data and insights. Organizations worldwide rely on slide decks and documents to make informed decisions, whether for leadership, clients, or partners. Yet, preparing these materials often consumes countless hours. Rollstack fully automates that.
We help some of the world's leading organizations—from mid-sized to public companies like SoFi, Zillow and Whirlpool—in automating their slide decks and documents. Headquartered in New York, we offer a remote-friendly workplace and are backed by Insight Partners and Y Combinator, the most successful startup incubator in the world that produced the likes of Airbnb, Twitch, Instacart, Dropbox, Reddit, Doordash, Stripe, Coinbase, etc.
Our team operates with speed and focus to deliver outsized impacts for our customers. We approach every challenge with first principles, never assuming things have to be done a certain way. We are a diverse team that believes intelligence and kindness go hand in hand, welcoming individuals from all backgrounds. Our persistence and rapid execution define us as a category leader and a future generational company.
We’re looking for a world-class Analytics Engineer to help us build, scale, and optimize the core data infrastructure at Rollstack. You’ll be responsible for designing and implementing our internal data stack from scratch, enabling data-driven decisions across product, engineering, and go-to-market teams.
This is a high-impact role that sits at the intersection of engineering, GTM analytics, and product. You’ll work closely with leadership and cross-functional teams to define best practices, ship foundational pipelines, and unlock insights that drive growth.
This role will work directly with the CEO, CTO, and CPO.
What You Will DoArchitect, implement, and maintain Rollstack’s data stack end-to-end
Build and scale data pipelines that feed internal analytics and product features
Connect, extract, and normalize data from key systems (CRM, billing, BI, product)
Implement observability, governance, and quality checks to ensure trust in data
Support our product and GTM teams with dashboards, usage analytics, and business KPIs
Create internal tooling to surface key SaaS metrics such as ARR, churn, retention, activation, engagement, and sync volume
Work with BI tools like Tableau, Power BI, and Looker to support user-facing workflows
Ensure compliance with data security and privacy standards
2–5 years of experience in a Data Engineering or Analytics Engineering role
Strong grasp of the modern data stack: dbt, Fivetran, Snowflake, BigQuery, Redshift, etc.
- Strong SQL skills and data modeling experience
Solid proficiency in Python or a similar scripting language
Experience working with or building data models in BI tools like Tableau or Looker
Familiarity with B2B SaaS metrics and how to structure data for recurring revenue businesses
Proven ability to implement and scale data pipelines and architecture from scratch
Clear communication and a collaborative mindset
Bonus: Experience with reverse ETL, data contracts, or working directly with GTM teams
- Join a Y Combinator-backed company that’s redefining how individuals and teams—across industries and around the world—work smarter and faster.
- Work alongside an exceptional team of builders and operators, including alumni from Amazon, Pinterest, Tesla, Nvidia, and AiFi.
- Be part of a fully remote, globally diverse workplace that values autonomy, impact, and collaboration.
- Contribute to a product that users love and that truly sells itself—built by a world-class product and engineering team.
- Look forward to bi-annual team offsites in destinations that belong on your travel bucket list.
- Earn competitive compensation and meaningful equity in a fast-moving, high-leverage startup where your work directly shapes the company’s trajectory.
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