Subscribe to the latest remote jobs:

Senior Analytics Engineer - Databricks, Semantic Layer & AI Readiness

🇱🇻 Latvia

Unity

Python

Finance

Machine Learning

SQL

Analyst

Senior Analytics Engineer - Databricks, Semantic Layer & AI Readiness

from 🇱🇻 Latvia

Trading since 2017, Gravity Team is one of the leading crypto market makers and liquidity providers, with cumulative trading volumes to date in excess of $400 billion.

We provide 24/7 liquidity across 1,400+ crypto-asset pairs on 30+ exchanges in 15+ countries, representing roughly 1% of global spot trading volume.

We’re looking for a Data Analytics Engineer to help build and scale our next-generation analytics platform in Databricks, powering trusted data products, real-time insights, self-service analytics, and the future of AI-driven decision-making.


What You’ll Do:

  • Databricks ingestion and warehouse execution

  • Gold models, marts, and semantic layer delivery

  • Genie and AI-readiness of the data layer

  • Data quality, monitoring, and validation

  • Stakeholder enablement and warehouse adoption

  • Financial and business reporting support

Team collaboration and ways of working

  • Work closely with the BI Lead to turn roadmap items into concrete technical deliverables.

  • Provide effort estimates, implementation tradeoffs, and delivery risks.

  • Participate in code review, documentation, and shared standards for SQL, notebooks, jobs, and data assets.

  • Help strengthen self-service analytics by creating reusable assets and reducing manual workflows.

Qualifications:

Strong fit

  • Strong SQL skills and solid Python skills.

  • Hands-on experience with Databricks, Spark, Delta Lake, or a similar modern cloud data platform.

  • Experience building and maintaining ELT/ETL pipelines, especially with incremental or CDC-based patterns.

  • Experience with dimensional modeling, marts, semantic layers, and warehouse-first business logic.

  • Experience supporting self-service analytics or BI platforms used by multiple teams.

  • Ability to work directly with stakeholders and translate messy business requirements into clean data products.

  • Strong debugging, validation, and documentation habits.

Good to have

  • Experience with Power BI, Grafana, dbt, Airflow, Kafka, or similar tooling.

  • Familiarity with Unity Catalog, fine-grained access patterns, or governed data products.

  • Exposure to natural-language BI, semantic metadata, or preparing datasets for AI-facing analytics tools.

  • Experience in financial, trading, or crypto-adjacent environments.

  • Familiarity with GitLab, Jira, notebooks, and collaborative analytics development workflows.

by @maxrusakovic