Junior Data Analyst

Information Tech Consultants
Greater London
1 month ago
Applications closed

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Job Description

!! IMMEDIATE JOINERS !!


💻 Junior Big Data Developer (Python & SQL Focus) 📊

We're looking for an enthusiastic and detail-oriented Junior Big Data Developer to join our data engineering team. This role is ideal for an early-career professional with foundational knowledge in data processing, strong proficiency in Python, and expert skills in SQL. You'll focus on building, testing, and maintaining data pipelines and ensuring data quality across our scalable Big Data platforms.


Key Responsibilities

  • Data Pipeline Development: Assist in the design, construction, and maintenance of robust ETL/ELT pipelines to integrate data from various sources into our data warehouse or data lake.
  • Data Transformation with Python: Write, optimize, and maintain production-grade Python scripts to clean, transform, aggregate, and process large volumes of data.
  • Database Interaction (SQL): Develop complex, high-performance SQL queries (DDL/DML) for data extraction, manipulation, and validation within relational and data warehousing environments.
  • Quality Assurance: Implement data quality checks and monitoring across pipelines, id...

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