Data Engineering Consultant

Graduate Recruitment Bureau
London
9 months ago
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Shape the Future with Data

A leading global technology and consulting firm is seeking a talented Data Engineering Consultant to join its team. As a pioneer in digital transformation, they’re at the forefront of innovation, and you’ll be instrumental in driving client success.

Why Join Them?

Be part of a global team driving industry innovation. Access to world-class training and development opportunities. Enjoy a fulfilling career with a work-life balance. Contribute to projects with a positive societal impact.

What You’ll Do:

Design and implement cutting-edge data architectures. Collaborate with clients to deliver tailored data-driven solutions. Stay at the forefront of emerging data technologies and trends. Mentor and develop team members. Contribute to business growth initiatives.

What will make you right:

A proven track record in delivering complex data-driven projects within consulting. Exceptional analytical and problem-solving skills to extract actionable insights. Strong communication and stakeholder management for effective collaboration. Deep expertise in data engineering, including pipeline development and optimisation. Advanced knowledge of modern data architectures (Data Lakes, Data Warehouses, Data Mesh). Proficiency in cloud platforms (GCP, AWS, Azure) and data tools (Databricks, Snowflake). Comprehensive programming skills (Python, Java, Scala, SQL, NoSQL). Agile delivery experience within a matrixed organisational structure. A history of crafting and executing successful data-driven propositions. Relevant certifications (data architecture, engineering, or management). Proven success in a consulting or industry role with a consulting mindset.

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