Risk Labs Foundation Logo

Risk Labs Foundation

Analytics Engineer

Reposted 4 Hours Ago
Remote
Hiring Remotely in USA
Mid level
Remote
Hiring Remotely in USA
Mid level
As an Analytics Engineer, you'll lead the transformation layer of data, focusing on data quality, refactoring for clarity, and optimizing costs in BigQuery. You'll work closely with cross-functional teams to ensure effective data use and architecture as the foundation for AI initiatives.
The summary above was generated by AI
Who is Risk Labs?

Risk Labs is the foundation and core team behind UMA and Across. The Risk Labs team operates as one cohesive culture, but focuses on two core protocols: UMA and Across. UMA and Across are decentralised protocols governed by community members across the globe in DAOs, and are supported by Risk Labs Foundation. UMA's optimistic oracle (OO) can record any verifiable truth or data onto a blockchain. Across is leading the future of interoperability with its frontier intents-based architecture.

We are a remote-first, globally distributed team focused on building infrastructure that pushes crypto forward.

Why This Role Exists

This is the first analytics engineering role at Risk Labs. The transformation layer has reached a level of complexity that demands a dedicated owner, and right now that work is distributed across people hired to do other things. You'll sit within Data Engineering, reporting to the Platform Engineering Lead, and work most closely with our Data Analytics Lead and Product team as your primary stakeholders.

We are serious about building a truly agentic data platform, and this hire is a prerequisite for that. Agentic systems are only as good as the data they run on. Without deterministic, well-governed, and consistently-defined data served from a single authoritative source, any AI initiative we pursue is built on unstable ground. This role is the foundation that makes all of it possible.

What You'll Own

1. The Transformation Layer You are the DRI for everything between raw ingestion and the clean data layer. You own the modelling strategy and are trusted to push back when a request would compromise what we've built. You work with the Analytics Lead to align on priorities and with Platform on infrastructure constraints.

2. Refactor and Legacy Migration We have inherited complexity: undocumented logic, redundant models, and systems built for speed rather than longevity. You'll audit what we have, cut what we don't need, and rebuild the rest into something clean, traceable, and maintainable. You decide what gets retired versus migrated, and you own the sequencing.

3. Data Quality and Testing You'll design and own our approach to data quality: what we test, how we test it, and what happens when something breaks. We want proactive alerting and self-healing pipelines where possible. You'll work with the Analytics Lead to codify business logic tests and implement column-level lineage across the transformation layer.

4. BigQuery Cost Optimisation You'll own the efficiency of our query and storage footprint, refactoring models and materialisation strategies to reduce unnecessary spend, and keeping a close eye on cost as agentic data usage scales.

5. Event Data and Product Observability Working closely with Product and the Analytics Lead, you'll build a robust event data model that gives us meaningful observability across our full product suite. You'll bring experience with event data and tooling like Amplitude to help us design a scalable in-house approach to product analytics, built with intent rather than assembled reactively.

What Success Looks Like
  • The transformation layer has a clear, documented owner. Questions about where a metric comes from have fast, traceable answers.

  • BigQuery costs are meaningfully lower within the first few months, without degradation in the data we're serving.

  • New product launches ship with data instrumentation built in from day one.

  • You have materially freed up the Analytics Lead to focus on analysis and strategic insight, not data preparation.

  • Automated data quality tests are running in production and catching issues before they reach stakeholders.

  • When something breaks, the root cause is understood and resolved by you, not escalated.

  • AI agents and tooling at Risk Labs are pulling data from a governed, deterministic, well-documented data layer, and you built the foundation that made that possible.

  • You manage your own priorities, communicate proactively when things shift, and rarely need to be told what to do next.

Skills and Experience

Required

  • Deep, demonstrable expertise in data modelling across multiple time horizons, dimensions, and levels of granularity

  • Advanced SQL: performant, readable, and warehouse-aware

  • Experience owning a transformation layer in production, including a meaningful refactor or migration

  • Hands-on experience designing and implementing data quality frameworks: testing, alerting, and lineage

  • Experience with event data and product analytics tooling (Amplitude, Segment, or similar)

  • Experience with crypto data, or data environments characterised by high normalisation, irregular schemas, and significant inherited complexity

  • Strong cross-functional communication; able to work closely with non-technical stakeholders without losing precision

  • Comfortable with ambiguity and able to manage a shifting backlog without losing momentum

Nice to Have

  • Experience with dbt

  • Familiarity with BigQuery: query optimisation, partitioning, clustering, materialisation strategies

  • Prior exposure to analytics work

  • Practical use of AI/LLM tooling to accelerate your own workflows

Tech Stack

BigQuery, dbt, Python, Airflow, Amplitude, Preset/Superset, Hex, GCP (Cloud Run, Cloud Build, Cloud Functions, Datastream), Slack, GitHub, Claude Code, Codex

Who Thrives Here
  • Strong opinions, loosely held. You arrive with a point of view and argue for it, but update when the evidence changes.

  • Bias towards less. Ten well-built models over fifty fragile ones. You're comfortable cutting rather than accumulating.

  • Genuinely excited about AI as a practical tool. You've already figured out how to use it to go faster and don't wait for permission to try something new.

  • An excellent async communicator. You over-communicate status, flag blockers early, and don't leave stakeholders wondering.

  • Comfortable in the unknown. You don't need everything documented before you make progress. You can read a system and form a view.

  • Self-managing. You triage, sequence, and execute independently. This is not a role with a well-defined sprint handed to you each week.

Compensation and Benefits

Competitive salary with a mix of salary, tokens, and equity. Our goal is to create a holistic package that meets your needs and provides exposure to the upside of what you're building and the impact you create.

  • Paid in stablecoins or fiat, your choice

  • Unlimited vacation, and we actually take it

  • Family care, training, and development support

  • 100% remote

  • At least two company-wide offsites per year

Closing

Studies show that women and people of colour are less likely to apply unless they meet every qualification. Risk Labs is committed to building a diverse, inclusive, and authentic workplace. If you're excited about this role, even if your experience doesn't align perfectly, we encourage you to apply.

Risk Labs is an equal opportunity employer and does not discriminate based on race, religion, gender, sexual orientation, age, disability, or veteran status.

Our Values
  1. We value curiosity.

  2. We value openness, honesty, and directness.

  3. We value integrity.

  4. We value iterative learning.

  5. We value taking smart risks.

  6. We value being high agency.

Why Work at Risk Labs?

We're a mission-driven team aligned with the ethos of crypto and focused on meaningful impact. We value ownership, adaptability, and kindness. We support personal wellness, professional growth, and flexible work environments, whether you're family-focused, nomadic, or somewhere in between.

Our Team and Backers

Our global team blends deep technical expertise with diverse business perspectives. Backed by investors including Placeholder, Blockchain Capital, Bain Capital, Coinbase, and Dragonfly.

Similar Jobs

2 Days Ago
Remote or Hybrid
United States
Senior level
Senior level
Automotive • Big Data • Information Technology • Robotics • Software • Transportation • Manufacturing
The AV Safety Engineering Analytics Engineer develops data analytics infrastructures, defines metrics for safety assurance, and creates visualizations for automated vehicle technologies, enhancing decision-making through data integration and analysis.
Top Skills: DockerGitJenkinsJIRAKubernetesNumpyPandasPlotly/DashPoetryPower BIPythonShinySQLTableauTerraform
10 Days Ago
Easy Apply
Remote
United States
Easy Apply
191K-265K Annually
Senior level
191K-265K Annually
Senior level
Big Data • Fintech • Mobile • Payments • Financial Services
The Staff Analytics Engineer will own the Financial Subledger Data Platform, build dbt models, implement data quality controls, and mentor a junior engineer, ensuring high operational reliability and cross-functional collaboration.
Top Skills: AWSDbtPythonSnowflakeSQL
2 Days Ago
Remote or Hybrid
115K-145K Annually
Senior level
115K-145K Annually
Senior level
AdTech • Cloud • Digital Media • Information Technology • News + Entertainment • App development
The Senior Analytics Engineer will design and implement ETL pipelines and dashboards, ensure data quality, train users, and develop advanced analytics solutions.
Top Skills: DataikuDbtLookerMicrostrategyPythonSnowflakeSQLTableau

What you need to know about the San Francisco Tech Scene

San Francisco and the surrounding Bay Area attracts more startup funding than any other region in the world. Home to Stanford University and UC Berkeley, leading VC firms and several of the world’s most valuable companies, the Bay Area is the place to go for anyone looking to make it big in the tech industry. That said, San Francisco has a lot to offer beyond technology thanks to a thriving art and music scene, excellent food and a short drive to several of the country’s most beautiful recreational areas.

Key Facts About San Francisco Tech

  • Number of Tech Workers: 365,500; 13.9% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: Google, Apple, Salesforce, Meta
  • Key Industries: Artificial intelligence, cloud computing, fintech, consumer technology, software
  • Funding Landscape: $50.5 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Sequoia Capital, Andreessen Horowitz, Bessemer Venture Partners, Greylock Partners, Khosla Ventures, Kleiner Perkins
  • Research Centers and Universities: Stanford University; University of California, Berkeley; University of San Francisco; Santa Clara University; Ames Research Center; Center for AI Safety; California Institute for Regenerative Medicine

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account