Big Data Developer

Information Tech Consultants
City of London
5 days ago
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Job Title: Big Data Developer

Location: UK

Experience: 2–5 years

Education: Bachelors in Science (IT/Computer Science/Engineer)

Employment Type: Full-Time

UK based candidates only.


Essential skills required :


  1. Designing and implementing the systems of the software.
  2. Load operations by using Extract Transform (ETL Process).
  3. Developing systems for collecting and processing the data.
  4. Should have the ability to research new methods for gaining valuable data and improving its quality.
  5. Developing structured data solutions by using multiple programming languages and tools.
  6. Developing data architecture that meets the needs of the business.
  7. Collaborating with the other team members, data analysts, and data scientists.
  8. Mining data from various resources to construct efficient business models.



Soft skills required :


  1. Developing, maintaining, testing, analysing, and evaluating a company's data.
  2. Gathering large amounts of data from multiple sources.
  3. Ensuring data pipelines are scalable, secure, and able to serve multiple users.
  4. Converting structured, unstructured, and semi-structured data into actionable insights for a business.


Educational Criteria :


  1. Bachelor’s degree in computer science, Maths, IT, statistics or physics related field.
  2. You should be entitled to work in the UK with legal work authorization status.
  3. Must be willing to travel within the UK as per project/client requirements.
  4. Excellent communication skills and teamwork skills.

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