Databricks Data Engineer

Promade Solutions Ltd
Manchester
23 hours ago
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As Promade Solutions continues to grow and deliver cutting-edge data and analytics solutions to both existing and new customers, we are looking for experienced Databricks Data Engineers who are passionate about building scalable, reliable, and high-performance data platforms.


As a Databricks Data Engineer, you will play a key role in designing, developing, and optimising modern data pipelines and lakehouse architectures. You will work closely with analytics, product, and engineering teams to deliver trusted, production-ready datasets that power reporting, advanced analytics, and data-driven decision-making.


We are looking for engineers with an inquisitive mindset, a strong understanding of data engineering best practices, and a passion for continuous learning. You should be comfortable taking ownership, influencing technical decisions, and contributing ideas as part of a collaborative and growing engineering team.


We value close collaboration over excessive documentation, so strong communication and interpersonal skills are essential. To succeed in this agile and forward-thinking environment, you should have solid experience with Databricks, cloud platforms, and modern data engineering tools and architectures.


Key Responsibilities

  • Design, build, and maintain scalable ETL/ELT pipelines for batch and streaming data workloads
  • Develop and optimise Databricks Lakehouse solutions using Apache Spark and Delta Lake
  • Design and maintain data models, data warehouses, and lake/lakehouse architectures
  • Implement data quality, validation, observability, and monitoring frameworks
  • Optimise data pipelines for performance, reliability, and cost efficiency
  • Collaborate with cross-functional teams to deliver trusted, production-grade datasets
  • Work extensively with Azure cloud services, including Azure Databricks, Azure Data Factory, Azure SQL DB, Azure Synapse, and Azure Storage
  • Develop and manage stream-processing systems using tools such as Kafka and Azure Stream Analytics
  • Write clean, maintainable Python and SQL code and develop high-quality Databricks notebooks
  • Support CI/CD pipelines, source control, and automated deployments for data workloads
  • Contribute to improving data engineering standards, frameworks, and best practices across the organisation

Essential Skills & Experience

  • 7+ years of experience in Data Engineering roles
  • Strong hands-on experience with Databricks and Apache Spark
  • Mandatory: Databricks Certified Professional credential
  • Excellent proficiency in SQL and Python
  • Strong understanding of distributed data processing, data modelling, and modern data architectures
  • Experience working with cloud data platforms such as Azure Synapse, Snowflake, Redshift, or BigQuery
  • Hands-on experience with batch and streaming data pipelines
  • Experience with orchestration and transformation tools such as Airflow, dbt, or similar
  • Solid understanding of CI/CD, Git, and DevOps practices for data platforms
  • Ability to work autonomously, take ownership, and deliver high-quality solutions
  • Strong communication skills with the ability to explain technical concepts clearly to both technical and non-technical stakeholders

Desirable Skills

  • Experience with real-time data streaming and event-driven architectures
  • Exposure to data governance, security, and access control in cloud environments
  • Experience across multiple cloud platforms (AWS, Azure, GCP)
  • Familiarity with DataOps, MLOps, or analytics engineering practices


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