wagey.ggwagey.ggv1.0-0f5e85e-22-May
Browse Tech JobsCompaniesFeaturesPricingFAQs
Log InGet Started Free
Jobs/Analytics Engineer Role/Coinbase isn't for the faint of heart. - Senior Analytics Engineer (Platform
Coinbase isn't for the faint of heart.

Coinbase isn't for the faint of heart. - Senior Analytics Engineer (Platform

Remote - USA - Hybrid$180k - $180k+ Equity2mo ago
RemoteSeniorNACryptocurrencyFintechAnalytics EngineerSenior Data ScientistJob AnalystReportingKafkaSnowflakeGoogle SheetsSQL

Upload My Resume

Drop here or click to browse · Tap to choose · PDF, DOCX, DOC, RTF, TXT

Apply in One Click
Apply in One Click

Requirements

• Experience with financial reconciliation, controllership/accounting reporting, audit/SOX-style controls, or regulated environments. • Familiarity with ledger/event-based financial models and concepts like double-entry accounting. • Experience with streaming/event-driven systems (e.g., Kafka/Kinesis) and/or near-real-time data validation patterns. • Experience with table replication/synchronization patterns between lakehouse and warehouse environments. • Fintech/crypto domain experience. • New York City location presence preferred. The role is remote-friendly but we prefer candidates who can commute to our NYC office for stakeholder meetings and project work as needed. • Pay Transparency Notice: Depending on your work location, the target annual base salary for this position can range as detailed below. Total compensation may also include equity and bonus eligibility and benefits (including medical, dental, vision and 401(k)). • Pay Transparency Notice: • Annual base salary range (excluding equity and bonus): • $180,370—$212,200 USD • Please be advised that each candidate may submit a maximum of four applications within any 30-day period. We encourage you to carefully evaluate how your skills and interests align with Coinbase's roles before applying. • Commitment to Equal Opportunity

Responsibilities

• This is a hybrid Data Engineer/Data Scientist/Business Analyst role that has the expertise to understand data flows end to end, and the engineering toolkit to extract the most value out of it indirectly (building tables) or directly (solving problems, delivering insights). • Be the expert: Quickly build subject matter expertise in a specific business area and data domain. Understand the data flows from creation, ingestion, transformation, and delivery. • Step into a new line of business and work with Engineering and Product partners to deliver first data pipelines and insights. • Communicate with engineering teams to fix data gaps for downstream data users. • Take initiative and accountability for fixing issues anywhere in the stack. • Perform reconciliation-style validation across sources (internal systems and/or external statements/vendors), identifying discrepancies and driving fixes with upstream owners. • Generate business value: Interface with stakeholders on data and product teams to deliver the most commercial value from data (directly or indirectly). • Build curated data models that streamline ledger verification and accounting workflows, helping finance teams accelerate time-to-close for new product launches. • Leverage deep understanding of the reconciliation engine alongside statistical and data expertise to propose engineering improvements that drive faster execution and higher match accuracy. • Work with PMs to tie together new x-PG, and x-Product data into one holistic framework to optimize key financing product business metrics. • Collaborate cross-functionally with Finance/Accounting to translate requirements into durable data models, and with upstream engineering teams to improve source data contracts. • Focus on outcomes not tools: Use a variety of frameworks and paradigms to identify the best-fit tools to deliver value. • Develop new abstractions (e.g. UDFs, Python packages, dashboards) to support scalable data workflows/infra. • Stand up a framework for debugging AI skills/data apps internally, enabling other non-tech stakeholders to quickly add value. • Use established tools with mastery (e.g. Google Sheets, SQL) to quickly deliver impact when speed is top priority. • Ensure financial correctness & reliability: Implement strong data quality guarantees (tests, monitoring, alerting, SLAs) and partner with stakeholders to define "done" for financial correctness. Improve reliability and operational excellence for critical pipelines (incident response, retro/action items, performance tuning, cost optimization). • What We Look For in You: • Strong understanding of best practices for designing modular and reusable data models (e.g., star schemas, snowflake schemas). Experience designing curated datasets for analytics/reporting with clear definitions and change management. • Proficiency in advanced SQL techniques for data transformation, querying, and optimization. • Expertise in scripting and automation, with experience in Object-Oriented Programming (OOP) and building scalable frameworks. • Strong ability to translate technical concepts into business value for cross-functional stakeholders. Proven ability to manage projects and communicate effectively across teams. • Strong cross-functional communication skills and ability to work effectively with Finance/Accounting partners and navigate ambiguity. • Experience building, maintaining, and optimizing ETL/ELT pipelines, using modern tools like dbt, Airflow, or similar. Experience orchestrating data workflows with Airflow (DAG design, scheduling patterns, backfills, operational ownership). • Proficiency in building polished dashboards using tools like Looker, Tableau, Superset, or Python visualization libraries (Matplotlib, Plotly). • Familiarity with version control (GitHub), CI/CD, and modern development workflows. • Knowledge of modern data lake/warehouse architectures (e.g., Snowflake, Databricks) and transformation frameworks. Hands-on experience with Snowflake and/or Databricks in production environments. • Track record of building for correctness and reliability: data quality frameworks, monitoring/alerting, incident response, and stakeholder-facing SLAs. • Ability to understand and address business challenges through analytics engineering. • Familiarity with statistics and probability. • Expertise in prompt engineering and design for LLMs (e.g., GPT), including creating, refining, and optimizing prompts to improve response accuracy, relevance, and performance for internal tools and use cases. • Demonstrate the ability to responsibly use generative AI tools and copilots (e.g., LibreChat, Gemini, Glean) in daily workflows, continuously learn as tools evolve, and apply human-in-the-loop practices to deliver business-ready outputs and drive measurable improvements in efficiency, cost, and quality.

Benefits

• Medical Plan, Dental and Vision Plan with generous employee contributions • Health Savings Account with company contributions each pay period • Disability and Life Insurance • 401(k) plan with company match • Wellness Stipend • Mobile/Internet Reimbursement • Volunteer Time Off • Fertility Counseling and Benefits • Generous Time off/Leave Policy • The option of getting paid in digital currency

Get Started Free

No credit card. Takes 10 seconds.

Privacy·Terms··Contact·FAQ·Wagey on X