Senior Data Engineer_London_Hybrid

London
8 months ago
Applications closed

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About Role :

As a Data Engineer, you will play a crucial role in designing, developing, and maintaining data architecture and infrastructure. The successful candidate should possess a strong foundation in Python, Pyspark, SQL, and ETL processes, with a demonstrated ability to implement solutions in a cloud environment.

Position - Senior Data Engineer
Experience - 6+ yrs
Location - London
Job Type - Hybrid, Permanent

Mandatory Skills :

  • Design, build, maintain data pipelines using Python, Pyspark and SQL

  • Develop and maintain ETL processes to move data from various data sources to our data warehouse on AWS/AZURE/GCP .

  • Collaborate with data scientists, business analysts to understand their data needs & develop solutions that meet their requirements.

  • Develop & maintain data models and data dictionaries for our data warehouse.

  • Develop & maintain documentation for our data pipelines and data warehouse.

  • Continuously improve the performance and scalability of our data solutions.

    Qualifications :

  • Minimum 6+ years of Total experience.

  • At least 4 years of Hands on Experience using The Mandatory skills - Python, Pyspark, SQL

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