Submitting more applications increases your chances of landing a job.
Here’s how busy the average job seeker was last month:
Opportunities viewed
Applications submitted
Keep exploring and applying to maximize your chances!
Looking for employers with a proven track record of hiring women?
Click here to explore opportunities now!You are invited to participate in a survey designed to help researchers understand how best to match workers to the types of jobs they are searching for
Would You Be Likely to Participate?
If selected, we will contact you via email with further instructions and details about your participation.
You will receive a $7 payout for answering the survey.
Project description We are seeking an expert with deep proficiency as a DataBricks Platform Engineer, possessing experience in data engineering. This individual should have a comprehensive understanding of both data platforms and software engineering, enabling them to integrate the platform effectively within an IT ecosystem. Responsibilities Manage and optimize Databricks data platform. Ensure high availability, security, and performance of data systems. Provide valuable insights about data platform usage. Optimize computing and storage for large-scale data processing. Design and maintain system libraries (Python) used in ETL pipelines and platform governance. Optimize ETL Processes Enhance and tune existing ETL processes for better performance, scalability, and reliability. Skills Must have Minimum 10 Years of experience in IT/Data. Minimum 3 years of experience as a Databricks Data Platform Engineer. Bachelor's in IT or related field. Infrastructure & Cloud: Azure, AWS (expertise in storage, networking, compute). Programming: Proficiency in PySpark for distributed computing. Proficiency in Python 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. Nice to have Containerization & Orchestration: Docker, Kubernetes. Infrastructure as Code (IaC): Terraform. Understanding of Investment Data domain (desired). Other Languages English: C1 Advanced Seniority Lead
You'll no longer be considered for this role and your application will be removed from the employer's inbox.