Ender-IT
Databricks Technical Lead
Location: Chicago, IL
Duration: 12+ Months
We’re looking for a Databricks Technical Lead who can guide the design and build‑out of our data engineering and transformation platforms. This person will be the go‑to expert on Databricks, Delta Lake, and Spark, and will help shape how data flows across our organization — from ingestion all the way through our curated layers.
This is a hands‑on leadership role. You won’t just review work — you’ll help solve hard problems, mentor engineers, set standards, and make architecture decisions that will influence the platform for years.
What You’ll Do
Lead the technical direction for Databricks‑based data pipelines and frameworks.
Design and review patterns for ingesting, transforming, and publishing data (Bronze → Silver → Gold).
Define best practices around Delta Lake, schema evolution, SCD handling, and metadata‑driven transformations.
Provide technical oversight across multiple engineering squads.
Work with architects, data modelers, quality engineers, and operations teams to ensure pipelines are built the right way.
Mentor data engineers and help elevate the overall engineering capability.
Oversee Unity Catalog governance, including RBAC, lineage, and schema enforcement.
Help troubleshoot complex performance issues and guide teams on tuning and optimization.
Support integration with orchestration tools and CI/CD processes.
What You Bring
Several years of hands‑on Spark experience and deep expertise with Databricks (Workflows, Delta Lake, Repos, Unity Catalog).
Strong understanding of data engineering patterns, especially medallion architecture.
Solid knowledge of AWS data services (S3, Glue, IAM, or equivalents).
Experience with structured streaming and Auto Loader is a plus.
Ability to lead and mentor engineers, give constructive feedback, and set engineering standards.
Strong communication skills — able to explain complex ideas in a clear and approachable way.
Recruiter Checklist — Databricks Technical Lead Must‑Have Skills
5+ years Databricks experience at a senior/lead level
Strong Spark (PySpark + Spark SQL), not just SQL users
Deep understanding of Delta Lake (OPTIMIZE, VACUUM, compaction, file layout)
Designed or owned a medallion architecture
Experience with schema evolution & SCD Type 1/2 handling
Hands‑on Unity Catalog experience (permissions, lineage, governance)
Built or maintained metadata‑driven frameworks
Streaming experience (Auto Loader / Structured Streaming)
Experience with Airflow, Glue, or Databricks Workflows
Working knowledge of cloud services (AWS)
Has led or mentored engineering teams
Performs architecture/design reviews
Sets standards and frameworks
Communicates clearly with tech and non‑tech teams
Red Flags
Only familiar with Databricks notebooks, not platform engineering
No Unity Catalog exposure
Has not worked on metadata‑driven patterns
Cannot explain SCD or schema evolution confidently
Seniority Level
Mid‑Senior level
Employment Type
Contract
Job Function
Information Technology
Industries
Staffing and Recruiting
#J-18808-Ljbffr
We’re looking for a Databricks Technical Lead who can guide the design and build‑out of our data engineering and transformation platforms. This person will be the go‑to expert on Databricks, Delta Lake, and Spark, and will help shape how data flows across our organization — from ingestion all the way through our curated layers.
This is a hands‑on leadership role. You won’t just review work — you’ll help solve hard problems, mentor engineers, set standards, and make architecture decisions that will influence the platform for years.
What You’ll Do
Lead the technical direction for Databricks‑based data pipelines and frameworks.
Design and review patterns for ingesting, transforming, and publishing data (Bronze → Silver → Gold).
Define best practices around Delta Lake, schema evolution, SCD handling, and metadata‑driven transformations.
Provide technical oversight across multiple engineering squads.
Work with architects, data modelers, quality engineers, and operations teams to ensure pipelines are built the right way.
Mentor data engineers and help elevate the overall engineering capability.
Oversee Unity Catalog governance, including RBAC, lineage, and schema enforcement.
Help troubleshoot complex performance issues and guide teams on tuning and optimization.
Support integration with orchestration tools and CI/CD processes.
What You Bring
Several years of hands‑on Spark experience and deep expertise with Databricks (Workflows, Delta Lake, Repos, Unity Catalog).
Strong understanding of data engineering patterns, especially medallion architecture.
Solid knowledge of AWS data services (S3, Glue, IAM, or equivalents).
Experience with structured streaming and Auto Loader is a plus.
Ability to lead and mentor engineers, give constructive feedback, and set engineering standards.
Strong communication skills — able to explain complex ideas in a clear and approachable way.
Recruiter Checklist — Databricks Technical Lead Must‑Have Skills
5+ years Databricks experience at a senior/lead level
Strong Spark (PySpark + Spark SQL), not just SQL users
Deep understanding of Delta Lake (OPTIMIZE, VACUUM, compaction, file layout)
Designed or owned a medallion architecture
Experience with schema evolution & SCD Type 1/2 handling
Hands‑on Unity Catalog experience (permissions, lineage, governance)
Built or maintained metadata‑driven frameworks
Streaming experience (Auto Loader / Structured Streaming)
Experience with Airflow, Glue, or Databricks Workflows
Working knowledge of cloud services (AWS)
Has led or mentored engineering teams
Performs architecture/design reviews
Sets standards and frameworks
Communicates clearly with tech and non‑tech teams
Red Flags
Only familiar with Databricks notebooks, not platform engineering
No Unity Catalog exposure
Has not worked on metadata‑driven patterns
Cannot explain SCD or schema evolution confidently
Seniority Level
Mid‑Senior level
Employment Type
Contract
Job Function
Information Technology
Industries
Staffing and Recruiting
#J-18808-Ljbffr