Data Scientist II

Coinbase Global
united kingdom
2 weeks ago
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Ready to be pushed beyond what you think you're capable of?

At Coinbase, our mission is to increase economic freedom in the world. It's a massive, ambitious opportunity that demands the best of us, every day, as we build the emerging onchain platform - and with it, the future global financial system.

To achieve our mission, we're seeking a very specific candidate. We want someone who is passionate about our mission and who believes in the power of crypto and blockchain technology to update the financial system. We want someone who is eager to leave their mark on the world, who relishes the pressure and privilege of working with high caliber colleagues, and who actively seeks feedback to keep leveling up. We want someone who will run towards, not away from, solving the company's hardest problems.

Our work culture is intense and isn't for everyone. But if you want to build the future alongside others who excel in their disciplines and expect the same from you, there's no better place to be.

Data Science is an integral component of Coinbase's product and decision-making process: we work in partnership with Product, Engineering, and Design to influence the roadmap and better understand our users. With a deep expertise in experimentation, analytics, and advanced modeling, we produce insights which directly move the company's bottom line.

What you'll be doing

  1. Perform analyses on products to answer open-ended questions and provide strategic recommendations.
  2. Design and guide experiments/analysis to measure impact and drive product improvements.
  3. Develop and maintain key metrics and reports, enhancing data infrastructure for better analysis.

What we look for in you:

  1. At least a BA/BS in a quantitative field (ex Math, Stats, Physics, or Computer Science) with ≥2+ years of relevant experience.
  2. Experience driving impact for a digital product with an iterative development cycle.
  3. Understanding of statistical concepts and practical experience applying them (in A|B testing, causal inference, ML, etc.).
  4. Experience in data analyses using SQL.
  5. Experience in programming/modeling in Python.
  6. Demonstration of our core cultural values: clear communication, positive energy, continuous learning, and efficient execution.

Pay Transparency Notice:The target annual salary for this position can range as detailed below. Full-time offers from Coinbase also include target bonus + target equity + benefits (including medical, dental, and vision).

Pay Range:

£97,650-£108,500 GBP

Commitment to Equal Opportunity

Coinbase is committed to diversity in its workforce and is proud to be an Equal Opportunity Employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, creed, gender, national origin, age, disability, veteran status, sex, gender expression or identity, sexual orientation or any other basis protected by applicable law. Coinbase will also consider for employment qualified applicants with criminal histories in a manner consistent with applicable federal, state, and local law.

Coinbase is also committed to providing reasonable accommodations to individuals with disabilities. If you need a reasonable accommodation because of a disability for any part of the employment process, please contact us at accommodations[at]coinbase.com to let us know the nature of your request and your contact information.#J-18808-Ljbffr

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