Data Engineer

Reply
London
1 month ago
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Overview

Data Engineer role at Data Reply in London. You will design and develop high-performance big data applications, manage complex data sets, and work across the full development lifecycle.

Responsibilities
  • Translate functional requirements into technical requirements as a big data consultant
  • Design and develop high performing, end-to-end big data applications to process large volumes of data (batch and real-time) in a multi-tenancy cloud environment
  • Develop and implement tools for data acquisition, extraction, transformation, management, and manipulation of large and complex data sets
  • Participate in all aspects of development - design, development, build, deployment, monitoring and operations
  • Research and experiment with emerging technologies and industry trends to bring business value through early adoption
About the candidate
  • A minimum Bachelor’s degree in Computer Science or related IT discipline
  • 1-2 years’ experience with big data projects using SQL and Python
  • Experience with AWS and Databricks
  • Excellent communication skills with the ability to articulate complex information to varied audiences
  • Strong interest in pursuing a specialist career path as a Big Data Engineer
  • Solid understanding of Python concepts for data engineering (e.g., Pandas, NumPy, JSON, file handling)
  • Understanding of AWS cloud environments (S3, Lambda, RDS, AWS CDK or Terraform, DynamoDB)
  • Flexibility regarding local business travel
About Data Reply

Data Reply is the Reply Group company offering analytics and data processing services across industries, helping clients build data strategies and realise the value of their data. We provide bespoke solutions and in-house training to ensure clients realise the full value of their big data solutions.

Reply is an Equal Opportunities Employer and is committed to embracing diversity in the workplace. We provide equal employment opportunities to all employees and applicants and prohibit discrimination and harassment of any type. We also support reasonable adjustments in the recruitment process.

Seniority level
  • Associate
Employment type
  • Full-time
Job function
  • Consulting, Information Technology, and Engineering
Industries
  • IT Services and IT Consulting, Business Consulting and Services, Software Development


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