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Data Engineer

Insight Global
Chester
3 days ago
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Insight Global are seeking a Senior Data Engineer with expertise in building scalable data pipelines for AI/ML applications. This role focuses on sourcing, processing, and preparing structured and unstructured data for Generative AI solutions.


Responsibilities

  • Build and maintain robust data pipelines to support AI/ML workflows.
  • Source data from multiple channels, including regulatory websites, internal policy documents, and SharePoint repositories.
  • Process, manipulate, and store data in formats optimized for Data Scientists, enabling effective LLM-based prompting.
  • Work with diverse data types (PDFs, Word documents) to extract, structure, and create logical data units for downstream use.
  • Design and implement solutions where no existing systems are in place for these processes.
  • End-to-end responsibility for sourcing, formatting, and preparing data for AI/ML applications.
  • Handle structured and unstructured data, ensuring readiness for advanced modelling and analysis.

Qualifications

  • Proven track record in complex Generative AI projects, with expertise in:
  • Data ingestion, vectorization, and chunking.
  • Modelling structured and unstructured data.
  • Strong knowledge of DevOps, CI/CD pipelines, and modern development principles (TDD, BDD).
  • Demonstrated ability to influence design decisions within collaborative development teams.
  • Advanced proficiency in Python, SQL, and distributed processing frameworks (e.g., Spark).

Seniority Level

  • Mid-Senior level

Employment Type

  • Contract

Job Function

  • Information Technology


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