Senior Data Engineer

Advanced Resource Managers Ltd
Dorking
3 weeks ago
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Senior Data Engineer (Trino/Starburst)

Full Time


Permanent


Hybrid - London SE1 (1-2 days per week onsite)


£75-90K basic + benefits (5% pension, 25 days hols, life insurance, medical cover)


Are you an experienced Senior Data Engineer looking for a new challenge?


Do you have a strong background in Data Engineering with a high level understanding of Trino/Starburst Enterprise, along with Big Data, Cloud tech, Kubernetes/OpenShift and Unix/Linux skills?


Here at ARM we are recruiting for a full time permanent Senior Data Engineer for a global IT services and consultancy client of ours.


Our client:

They're a leading business with a global reach that empowers local teams, and they undertake hugely exciting work that is genuinely changing the world. Their advanced portfolio of consulting, applications, business process, cloud, and infrastructure services will allow you to achieve great things by working with brilliant colleagues, and clients, on exciting projects.


Overview:

We are seeking a talented Senior Data Engineer specializing in Starburst (Trino) and Dell Data Lakehouse to join our AI & Data team. You will be responsible for deploying, maintaining and optimizing Starburst installations & Dell Data Lakehouse, enabling our clients to seamlessly access their data across multiple platforms. The ideal candidate will have excellent communication skills, an advanced understanding of Starburst & Dell Data Lakehouse, and proficiency with troubleshooting and root cause analysis.


Role:

  • Deploy and manage Starburst Enterprise/Galaxy and Dell Data Lakehouse installations, overseeing environment setup, configuration, maintenance, upgrades, and ensuring optimal performance.
  • Configure various server and application settings and parameters.
  • Integrate Starburst with various data sources to create a unified data platform.
  • Design and tune the container solution for performance and scalability.
  • Set up and configure data catalogs in various modes.
  • Implement robust security controls for data access, ensure compliance with data regulations, and manage potential vulnerabilities.
  • Coordinate with various support partners and vendor teams.
  • Troubleshoot and investigate server related issues and provide root cause analysis for incidents.
  • Perform daily server administration and monitoring, and leverage automation (such as Ansible) for efficient maintenance.
  • Plan and execute disaster recovery testing.
  • Create documentation and provide training on Starburst administration and best practices.

Required Skills & Experience:

  • Bachelor's degree in Computer Science, Information Systems, Data Science, Engineering or related field (or equivalent work experience).
  • Proven experience with Trino/Starburst Enterprise/Galaxy administration / CLI.
  • Implementation experience with container orchestration solutions (Kubernetes/OpenShift).
  • Knowledge of Big Data (Hadoop/Hive/Spark) and Cloud technologies (AWS, Azure, GCP).
  • Understanding of distributed system architecture, high availability, scalability, and fault tolerance.
  • Familiarity with security authentication systems such as LDAP, Active Directory, OAuth2, Kerberos.
  • Excellent Unix/Linux skills.
  • Familiarity with JDBC / ODBC

Preferred Skills:

  • Certification: Starburst Certified Practitioner.
  • Experience Python and/or Java programming.
  • Proficient with infrastructure automation tools such as Ansible.
  • Knowledge of data requirements for AI and machine learning workloads.
  • Familiarity with Data Federation and Cached Services
  • Familiarity with Data pipeline (Series of steps that move and transform data from one source to another for analyses and storage)
  • Experience with Dell Data Lakehouse administration.
  • Experience in Demand Driven Adaptive Enterprise (DDAE) administration

Working Conditions

  • This position may require evening and weekend work for time-sensitive project implementations.

Some of the benefits include:

  • Healthcare and dental insurance
  • Company pension is matched up to 5%
  • 25 days annual leave entitlement plus bank holidays and the option to purchase 5 extra days
  • Life assurance - 4 x annual salary
  • Cycle to work scheme
  • Client prioritises internal development opportunities and offer access to our Udemy training platform with over 5000 training courses

Disclaimer:

This vacancy is being advertised by either Advanced Resource Managers Limited, Advanced Resource Managers IT Limited or Advanced Resource Managers Engineering Limited ("ARM"). ARM is a specialist talent acquisition and management consultancy. We provide technical contingency recruitment and a portfolio of more complex resource solutions. Our specialist recruitment divisions cover the entire technical arena, including some of the most economically and strategically important industries in the UK and the world today. We will never send your CV without your permission.


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