Data Engineer

Hyper Recruitment Solutions
London
6 days ago
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Join to apply for the Data Engineer role at Hyper Recruitment Solutions.


An exciting contract role has arisen for a Senior Data Engineer to join a leading biopharma company based in central London, with the flexibility of working two days from home. As a Senior Data Engineer, you will play a crucial role in managing and optimising data processes, with a strong focus on machine learning applications.


Key Duties And Responsibilities

  • Develop and maintain robust data pipelines using Python, ensuring efficient data loading and dataset management with PyTorch.
  • Manage and optimise blob storage for unstructured data, preferably using Google Cloud Storage (GCS) or AWS S3.
  • Utilise BigQuery in Google Cloud Platform (GCP) and SQL databases such as Microsoft SQL Server or PostgreSQL to manage and query large datasets.
  • Implement effective memory management strategies to enhance data processing efficiency.

Role Requirements

  • Relevant degree in a related field such as Computer Science, Data Science, or Engineering.
  • Extensive industry experience in cloud data engineering, with a strong preference for experience in GCP.
  • A working knowledge and practical experience with PyTorch, particularly in data loading and dataset management.

Key Words: Data Engineer / Senior Data Engineer / Python / PyTorch / Google Cloud Platform / GCP / BigQuery / SQL / Cloud Storage / Machine Learning / Data Pipelines / Remote Work


Hyper Recruitment Solutions Ltd (HRS) is an Equal Opportunities employer.


We welcome applications from anyone who meets the role requirements.


HRS exclusively supports the Life Science sectors, combining recruitment expertise with scientific knowledge to help you advance your career.


Seniority level

Mid-Senior level


Employment type

Contract


Job function

Information Technology


Industries

Biotechnology Research and Pharmaceutical Manufacturing


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