Data DevOps Engineer
Level: 3-5 years’ experience
Language English
Type of work: Full-time; Remote/hybrid (Warsaw)
As a Data DevOps Engineer, you will serve as a platform expert responsibile for the design, development, automation, testing, support and administration of the Enterprise Infrastructure for Big Data and Fast Data processing.
Requirements
Background in computer science, engineering, physics, mathematics or equivalent
Strong background in system administration and shell scripting
Strong hands on experience with Python, SQL
Strong problem-solving skills
Eagerness to learn new approaches and technologies
Nice to have
Experience with Azure cloud services
Experience with Databricks and Spark.
Experience with administration of large clusters
Experience with Private endpoint configuration
Understanding of modern Big Data technologies (Hadoop, Spark, Kafka, NoSQL)
Experience with virtualization
Experience with containerization (Docker, Kubernetes)
Experience with CI/CD tools
Experience with Infrastructure as code
Experience with configuration or infrastructure management tools
Responsibilities
Communicate effectively with technical and non-technical stakeholders.
Support and host discussions within a multidisciplinary team, with potentially difficult dynamics.
Be an advocate for the team externally, and can manage differing perspectives.
Understand and help teams to apply a range of techniques for data profiling.
Source system analysis from a different sources.
Bring multiple data sources together in a conformed model for analysis.
Establish enterprise-scale data integration procedures across the data development life cycle, and ensure that teams adhere to them.
Manage resources to ensure that data services work effectively at an enterprise level.
Identify areas of innovation in data tools and techniques, and recognise appropriate timing for adoption.
Establish standards, keep them up to date and ensure adherence to them.
Keep abreast of best practice in industry.
Understand the concepts and principles of data modelling and can produce relevant data models.
Recognise opportunities for the reuse and alignment of data models in different organisations.
Design the method to categorise data models within an organisation.
Design an appropriate metadata repository and present changes to existing metadata repositories.
Understand a range of tools for storing and working with metadata.
Provide oversight and advice to more inexperienced members of the team.
Ensure that the most appropriate actions are taken to resolve problems as they occur.
Co-ordinate teams to resolve problems and to implement solutions and preventative measures.
Use agreed standards and tools to design, code, test, correct and document moderate-to-complex programs and scripts from agreed specifications and subsequent iterations.
Collaborate with others to review specifications where appropriate.
Show a thorough understanding of the technical concepts required for the role, and can explain how these fit into the wider technical landscape.
Review requirements and specifications, and define test conditions.
Identify issues and risks associated with work.
Analyse and report test activities and results.
Client
A global leader with a sharp focus on lottery solutions. A confident step forward building on a long history of delivering safe and secure technology, demonstrating strong commitment to customers as a dedicated lottery service provider. Leveraging collective insight, experience, and expertise to create reliable and engaging solutions that help lottery clients achieve objectives, meet player needs, and deliver meaningful benefits to communities.
Data DevOps Engineer
Data DevOps Engineer