Project Description
\n
We are seeking a highly skilled Databricks Platform Engineer with strong experience in data engineering. The candidate will have a deep understanding of both data platforms and software engineering, enabling them to effectively integrate and operate the platform within a broader IT ecosystem.
\n
This role requires a hands-on individual contributor who takes full ownership of deliverables end-to-end, including design, development, testing, deployment, and ongoing support.
\n
Responsibilities
\n
- Manage and optimize Databricks data platform including workspace setup, cluster policies, job orchestration, Unity Catalog, cost controls, multi-tenancy.
- Design, write and maintain APIs used for Platform automation, Serverless workflows, Deployment pipelines, release management and repository management
- Ensure high availability, security, and performance of data systems which includes access control, secrets management, RBAC, monitoring, alerting, RLS, incident handling, performance tuning.
- Provide valuable insights about the data platform (Databricks) usage which includes cost attribution, usage analytics, workload patterns, telemetry.
- Implementing new features of Databricks, including serverless, Declarative Pipelines, Agents, lakebase, etc.
- Design and maintain system libraries (Python) used in ETL pipelines and platform governance (Databricks).
- Optimize ETL Processes - Enhance and tune existing ETL processes for better performance, scalability, and reliability.
\n
Mandatory Skills Description
\n
- Minimum 10 Years of experience in IT/Data.
- Minimum 5 years of experience as a Databricks Data Platform Engineer.
- 3+ years of experience in designing, writing, and maintaining APIs used for Platform automation, Serverless workflows, Deployment pipelines, release management and repository management
- Bachelor's in IT or related field.
- Infrastructure & Cloud: Azure, AWS (expertise in storage, networking, compute).
- Programming: Proficiency in PySpark for distributed computing.
- minimum 4 years of Python experience for ETL development.
- SQL: Expertise in writing and optimizing SQL queries, preferably with experience in databases such as PostgreSQL, MySQL, Oracle, or Snowflake.
- Data Warehousing: Experience working with data warehousing concepts and Databricks platform.
- ETL Tools: Familiarity with ETL tools & processes
- Data Modelling: Experience with dimensional modelling, normalization/denormalization, and schema design.
- Version Control: Proficiency with version control tools like Git to manage codebases and collaborate on development.
- Data Pipeline Monitoring: Familiarity with monitoring tools (e.G., Prometheus, Grafana, or custom monitoring scripts) to track pipeline performance.
- Data Quality Tools: Experience implementing data validation, cleaning, and quality frameworks, ideally Monte Carlo.
\n
Nice-to-Have Skills Description:
\n
- Containerization & Orchestration: Docker, Kubernetes.
- Infrastructure as Code (IaC): Terraform.
- Understanding of Investment Data domain (desired).
\n
Languages
\n
English: C1 Advanced