Data Engineer

Revolent Group
Glasgow
1 week ago
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Are you ready to start your career as a Data Engineer?

Location: Glasgow, Scotland


The opportunity of a lifetime

Are you someone who is keen to learn new things? Do you want to take your existing skill set and apply it to a new, growing, in-demand technology?


We are currently recruiting experienced IT professionals to cross-train as Data Engineers, and subsequently place at our client. This is an amazing opportunity to join a large organization and create a real impact by becoming part of their unique journey.


The Role

As a world-leading cloud talent creation expert, we’re committed to helping people just like you become one of the best Data Engineer professionals in the world.


If you take this opportunity, you’ll learn everything you need to know to become an expert in Data Engineering, in an instructor-led group surrounded by your peers. .


As part of this incredible, two-year opportunity, you’ll receive:



  • Fully funded certifications and paid training (a full salary from day one!)
  • Specialist training with a focus on practical application of your new skill set
  • A paid work placement with one of our market-leading clients

As a trained Data Engineer, your role could involve:



  • Design and implement scalable and robust data pipelines to support analytics and data processing needs.
  • Ensure data quality and consistency through data cleaning, transformation, and validation processes.
  • Collaborate with stakeholders to gather requirements and deliver data solutions that support business objectives.
  • Optimise data retrieval and develop dashboards and reports for various user needs.
  • Implement data security and privacy policies to comply with legal and regulatory requirements

Plus, we’ll also equip you with a tailored learning and development plan, and your very own personal success coach who will work with you throughout your two years with us.


What we are looking for

To apply for this program, you’ll need:



  • A minimum of 12-24 months experience in software development using SQL or Python
  • Experience writing complex SQL queries related to data manipulation strategies
  • Experience building or working with metadata-driven ETL / ELT patterns and concepts.
  • Exposure using ETL tools (Azure Data Factory, AWS Glue, Informatica, Talend, IBM DataStage, etc.), database platforms (Snowflake, Redshift, Azure Synapse, or Oracle), and data visualization tools (Tableau, Power BI, Looker).
  • Experience Experience with Spark, Databricks, Kafka, Kinesis, Hadoop, and/or Lambda.

Plus, attitude is key. We’re looking for someone adaptable and resilient, who’s invested in their growth and passionate about taking their career to the next level. Someone who wants to make a real difference to the organisation they’re working for, with a keen sense of social responsibility.


You’ll also need to be:



  • Willing to commit to a minimum of 24 months working with Revolent, post-training (with the possibility of converting to the client’s permanent headcount, following the successful completion of your work placement)

As part of our 24 month training program, we offer a competitive salary, company benefits, and the opportunity to gain experience working with fantastic clients.


You will also receive:



  • Paid annual leave
  • Comprehensive, fully funded training to become a Data Engineer
  • Support to gain further certifications during your journey with us
  • A professional development plan tailored to your career goals and professional aspirations
  • Access to mentoring and support programs and networking opportunities
  • Charity experience with Revols for Good: volunteering opportunities with our charity partners

About Revolent

We help people launch incredible new careers in the cloud. Our career programs help professionals like you to cross-train into a specialist and in-demand technology like AWS, Google Cloud, Microsoft, and Salesforce.


By joining Revolent, you’ll gain access to a global community with one of the highest first-time cloud certification pass rates in the world. You’ll learn in an expert instructor-led environment, surrounded by your peers, with a focus on practical, hands-on experience. You’ll be given a career development plan that is tailored to your career aspirations, as well as your own personal success coach. That’s our promise to each and every individual (or ‘Revol’) that joins us.


We’re also committed to giving back to the ecosystem we believe in. We support a diverse range of causes all around the world, allowing our Revols to gain extra experience by helping charities that need them most.


Want to find out more about Revolent? Visit our website


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