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Senior Data Engineer

Pragmatike
City of London
2 weeks ago
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Overview

Join to apply for the Senior Data Engineer role at Pragmatike.

Job Description

Location: Fully remote, EU timezone (CET +/- 2 hours)

Start date: ASAP

Languages: English is mandatory; French is a plus

Industry: Cloud Computing / Blockchain services - European SaaS

We are hiring at Pragmatike to expand our team and drive the growth of our internal projects. Our focus is on developing cutting-edge solutions in Cloud Computing, Blockchain, and Artificial Intelligence, while fostering a culture of collaboration and innovation. Joining us means being part of a passionate team where your ideas and skills directly contribute to shaping tomorrow\'s technologies. If you\'re excited about working on ambitious projects in a dynamic and flexible environment, we\'d love to hear from you!

Responsibilities
  • Design, build, and maintain scalable data pipelines and ETL processes to support analytics and business intelligence initiatives
  • Create and maintain dashboards using modern visualization tools (DOMO is a must-have, Tableau, etc.)
  • Collaborate with Product and Engineering teams to define and manage data instrumentation strategies (Mixpanel, Google Analytics, or similar)
  • Ensure data quality, integrity, and reliability across multiple sources (product, marketing, etc.)
  • Implement and optimize data storage, transformation, and retrieval processes
  • Build and maintain monitoring and alerting mechanisms for data operations
  • Perform data analysis and support predictive and forecasting models using modern tools and methodologies
  • Proactively suggest and implement data engineering and data science best practices to meet business needs
  • Educate and support collaborators to become data-driven in their decision-making
Required Qualifications
  • 5+ years of proven working experience as a Data Engineer
  • Strong analytical and technical skills with the ability to manage and process large, complex datasets
  • DOMO expertise is mandatory; proficiency with other visualization tools (Tableau, etc.) is a plus
  • Solid experience in data transformation (ETL, data flows) and building robust pipelines
  • Good knowledge of SQL and data modeling principles
  • Experience with Python for automation, predictive analytics, or machine learning projects is a strong advantage
  • Excellent problem-solving, project management, and communication skills
  • Proficiency in English
Company and Compliance

Pragmatike is dedicated to a fair, transparent, and inclusive recruitment process. We ensure that no applicant is discriminated against based on age, disability, gender, gender identity or expression, marital or civil partner status, pregnancy or maternity, race, religion or belief, sex, or sexual orientation.

In accordance with the General Data Protection Regulation (GDPR), your personal data will be processed lawfully, fairly, and securely. We collect and use your personal data solely for recruitment purposes, including sharing it with our client(s) for employment consideration. You have the right to request access, correction, or deletion of your data at any time. We are committed to maintaining the confidentiality and security of your information throughout the recruitment process.

Employment details
  • Seniority level: Not Applicable
  • Employment type: Full-time
  • Job function: Information Technology
  • Industries: IT Services and IT Consulting


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