Senior Databricks Data Engineer
Job Description
Project Description:
We are seeking a Senior Data Engineer with strong hands-on expertise in Databricks, PySpark, and cloud-based data platforms to support the development, migration, and optimization of our enterprise data platform within the investment domain.
This role will focus on building and maintaining scalable data pipelines and lakehouse data models that support investment analytics, portfolio management, risk analysis, and trading data workflows.
The successful candidate will work closely with data engineers, quantitative analysts, and investment stakeholders to deliver high-quality, reliable, and performant data solutions. Experience with financial datasets such as market data, portfolio holdings, transactions, pricing data, and risk metrics is highly valuable.
Responsibilities:
Data Engineering & Pipeline Development:
- Build, optimize, and maintain end-to-end data pipelines using Databricks, PySpark, and SQL
- Develop and manage Declarative Pipelines (e.g., Lakeflow / DLT-style pipelines) to support scalable
- Implement robust transformations and modelling patterns to deliver trusted datasets for
downstream consumption (analytics, operations, reporting, applications).
Data Quality, Controls & Operational Excellence:
- Implement data quality validation, monitoring, reconciliation, and alerting to ensure datasets meet
- Debug pipeline failures, resolve production incidents, and continuously improve pipeline stability,
- Apply best practices around auditability, lineage, and data correctness — particularly in time-series
and historically tracked datasets.
Data Modelling & Domain Delivery- Contribute to the design and evolution of data models supporting the organization's investment
pricing, risk, etc.).
- Partner with business stakeholders to translate requirements into implementable data solutions
- Support integration of multi-vendor and internal data sources into curated datasets that align with
ADIA's operational and analytical needs.
Platform & Engineering Standards- Follow and enhance engineering standards for version control, CI/CD, testing, documentation, and
- Optimize compute and storage usage through partitioning/clustering strategies, incremental
- Contribute reusable libraries, patterns, templates, and approaches that improve delivery speed
and consistency across the team.
Mandatory Skills Description:
- Bachelor's degree (Computer Science, Engineering, Information Systems, or related discipline).
- 5+ years experience in data engineering roles (flexible based on depth of capability).
- Strong hands-on experience with Databricks in production environments (prerequisite).
- Strong programming experience with PySpark (must) and strong SQL (must).
- Proven experience with Declarative Pipelines / pipeline orchestration on Databricks (prerequisite).
- Strong understanding of data engineering fundamentals: ingestion patterns, transformation
- Experience delivering production-ready datasets with appropriate operational controls
- Experience with modern Lakehouse concepts (Delta tables, optimization strategies, file skipping,
- Exposure to data governance practices: cataloguing, documentation, business glossary/terms,
- Experience working in enterprise environments with CI/CD pipelines and structured release
- Familiarity with vendor market data feeds (e.g., Bloomberg, Refinitiv, MSCI, FactSet) or similar
multi-source mastering patterns.
Nice-to-Have Skills Description:
- Strong Hands-on Expertise in Palantir Foundry. Proven experience with Foundry pipelines, ontologies, data lineage, transformations, and platform governance.
- Proven Migration Experience from Palantir / to Databricks. Demonstrated experience leading or executing platform migrations, including pipeline conversion, data model redesign, and production cutover.
- Familiarity with Dynatrace or Datadog for system observability and monitoring.
- Databricks certification, cloud certifications (Azure/AWS), or enterprise data architecture certifications.
Languages:
English: C1 Advanced