Merkle Science logo

Data Scientist — Blockchain Intelligence

Posted about 9 hours ago

RemoteNew York
⚡️ About Merkle Science
Merkle Science provides blockchain transaction monitoring and intelligence solutions for web3 companies, digital asset service providers, financial institutions, law enforcement and government agencies to detect, investigate, and prevent illicit use of cryptocurrencies. Our vision is to make cryptocurrencies safe and provide infrastructure for the safe and compliant growth of cryptocurrencies.

Merkle Science is headquartered in New York with offices in Singapore, Bangalore and London. The team has combined experience across Bank of America, Paypal, Luno, Thomson Reuters and Amazon. The company has raised over $27M from SIG, Beco, Republic, DCG, Kenetic, GGV and several others.

About the role

We turn raw on-chain activity into trustworthy intelligence — clustering addresses into real-world entities, attributing them to services and actors, and surfacing risk for compliance and investigations teams. We're looking for a data scientist who is as comfortable shipping a heuristic to production as they are designing it: someone who can move from a messy hypothesis to a working pipeline without waiting on someone else to wire up the data.


You'll work closely with our attribution and clustering leads on models and heuristics that run across billions of transactions and multiple chains (Bitcoin, Ethereum, Tron, Solana, and more).

What you'll do

  • Design, test, and ship clustering and attribution heuristics, and measure them with real precision/coverage metrics rather than vibes.

  • Own your data end to end — pull, clean, join, and model large on-chain datasets without depending on a separate team for every query.

  • Build and maintain the pipelines that take a heuristic from notebook to production, including backfills, incremental runs, and validation.

  • Investigate edge cases (mixers, bridges, exchange hot wallets, consolidation patterns) and translate findings into repeatable logic.

  • Partner with investigations and product to define what "correct" looks like and benchmark against ground truth.

  • Prototype quickly, then harden what works.

What we're looking for

  • 4+ years building data science or data engineering systems that actually shipped (not just notebooks).

  • Strong Python and SQL; comfortable with large datasets and the gotchas of joins, dedup, and skew at scale.

  • Solid grasp of clustering, graph/network analysis, or entity resolution — and a habit of validating results, not just producing them.

  • Ability to reason about precision vs. coverage trade-offs and defend your metrics.

  • Self-directed: you can scope an ambiguous problem, get the data yourself, and drive it to a result.

Our tech stack

You don't need to have used all of these, but here's what you'd be working with day to day:


  • Databricks — our lakehouse and processing backbone. Large-scale on-chain datasets are transformed and modeled here via Spark and SQL; most heuristics run as Databricks jobs against billions of transactions.

  • Kafka — real-time ingestion of on-chain and transaction data. New blocks and events stream in continuously, so a lot of our work is designed to run incrementally rather than as one-off batch jobs.

  • Python — the primary language for everything from exploratory analysis to production heuristics and pipeline code.

  • TigerGraph — our graph database, where addresses, transactions, and entities live as a network. Clustering, traversals, and relationship queries (who funds whom, consolidation paths, entity linkage) happen here.


Supporting cast you'll likely touch:


  • SQL everywhere — for ad-hoc analysis, validation, and defining ground-truth datasets.

  • Columnar / analytical stores (e.g., ClickHouse) for fast aggregate queries over large tables.

  • Orchestration & scheduling for backfills and recurring pipeline runs.

  • Git / GitHub for version control and code review — we expect pipelines and heuristics to be reviewed like any other code.

  • GCP as our cloud environment.

How we work

Small, high-trust team. You'll have a lot of ownership and very little bureaucracy. We prototype fast, measure honestly, and ship.


❤️ Well Being, Compensation and Benefits
We care about your well-being. Along with excellent health insurance, we offer flexible time off, learning & development initiatives and hours that are designed to provide work/life balance.  We regularly host team-building sessions and encourage discussions around mental health.  

We reward talent and believe in acknowledging people for their contributions.  We offer industry-leading compensation, along with generous equity.  As a rapidly growing business, there are endless opportunities to grow your career with Merkle Science.
Job details
Workplace
Remote
Location
New York
Merkle Science logo
Merkle Science
View company page

Next generation crypto threat detection, risk management and compliance for businesses, banks and government agencies. Sign up now

Key team members

Josh Burwick

Josh Burwick

Akriti Das

Akriti Das

Mriganka Pattnaik

Mriganka Pattnaik

Nirmal AK

Nirmal AK

Apply smarter with Jobr

Jobr aggregates jobs directly from company career portals — no middlemen. Our team applies on your behalf with AI-tailored resumes, reviewed by a human before submission.

Direct from company career pages
AI-personalised cover letters
Human review before every submit
Application tracking & follow-ups