Senior Data Engineer - Databricks
New
I
InteticsSoftware Development
Poland. United Kingdom. Germany. Spain. Romania. SlovakiaFull-TimeSenior
Salary not disclosed
Apply NowOpens the employer's application page
Job Details
- Experience
- 4+ years of data engineering experience.
- Required Skills
- AWSPostgreSQLPythonSQLETLAzureSparkDatabricksPySpark
Requirements
- 4+ years of data engineering experience.
- At least 2 years of experience with Databricks or the Apache Spark ecosystem across Azure and/or AWS.
- Proficiency in PySpark, SQL, and Python with a strong track record of building and operating production-grade pipelines under SLA constraints.
- Hands-on experience with Delta Lake, including schema evolution, ACID transactions, optimize/vacuum lifecycle, and both incremental and streaming processing patterns.
- Hands-on experience with pipeline performance tuning and compute optimization in production Databricks environments.
- Solid working knowledge of PostgreSQL, including query optimization, schema design, and use as a source or sink in production data pipelines.
- Experience supporting and maintaining legacy ETL tooling (SSIS, Informatica, custom Python/SQL pipelines, or similar) in production.
- Experience supporting large-scale multi-tenant architectures with a focus on tenant isolation, per-tenant performance, and data privacy.
- Proven ability to work collaboratively across data science, product, and infrastructure teams, owning end-to-end delivery in a cross-functional environment.
- Strong understanding of data governance, security, and compliance principles, including access control, data privacy, and protection of sensitive enterprise data across multi-tenant environments.
Responsibilities
- Own Databricks production support for the company's data platform, including monitoring, alerting, and incident response across all production data flows.
- Maintain and report on SLA performance metrics for data pipeline delivery, ensuring visibility into platform health and accountability across internal and external stakeholders.
- Identify and implement pipeline optimizations that reduce Databricks compute costs, improve throughput, and reduce processing windows while tracking impacts through measurable KPIs.
- Migrate legacy ETL/ELT pipelines to Databricks, building automation tooling to reduce manual intervention and ensure uninterrupted data delivery during transitions.
- Support new customer onboarding by provisioning, validating, and hardening tenant data pipelines that deliver reliable, isolated data from day one.
- Design and build high-performance Databricks pipelines that ingest, transform, and serve ERP and CRM data at scale across both Azure and AWS environments.
- Own the Delta Lake architecture, including schema design, partitioning strategies, data quality enforcement, and incremental processing patterns.
- Enforce data security best practices across Databricks environments, including role-based access control, secrets management, and compliance requirements for enterprise business data.
- Implement data quality monitoring and observability across pipeline health and ML model inputs, ensuring data integrity that directly supports predictive analytics.
- Apply and enforce multi-tenant data isolation patterns, ensuring reliable and secure data delivery across enterprise customers.
- Partner with the Enterprise Architecture team to ensure data pipelines integrate seamlessly with the broader AI and analytics ecosystem.
- Support a globally distributed operation through on-call rotation and after-hours incident response, meeting SLAs across multiple time zones.
- Maintain technical documentation, runbooks, and architectural decision records, contributing to team knowledge sharing and operational readiness across on-call and incident response scenarios.
- Apply CI/CD best practices to data pipeline development, including version control, automated testing, and deployment tooling to ensure reliable and repeatable pipeline delivery.
View Full Description & ApplyYou'll be redirected to the employer's site