Data Engineer

Technopride Ltd
City of London
1 week ago
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We are looking to hire Data Engineer- Advanced Analytics role for one of our renowned IT client in UK. This is a contract role and remote working. If interested, please share your CV at


Responsibilities

  • Build secure, repeatable data ingestion and transformation pipelines.
  • Implement data cleansing rules and produce auditable, reproducible outputs.
  • Establish Import/export patterns, handle data extracts, schema discovery, incremental loads, and multiple source instances.
  • Capability in data transformation-heavy pipelines from data profiling to cleansing, standardization, conformance, and publishing.
  • Advanced knowledge of SQL for profiling, joins/merges, deduplication, anomaly detection, and performance tuning.
  • Scripting knowledge in Python for automation, parsing, rules engines, data quality checks, and writing maintainable code. Experience with data wrangling (Pandas, Polars), modelling (scikit-learn), and visualization (matplotlib).
  • Experience with modern data tooling (e.g., Spark, Azure Data Factory) or equivalent code implementation.
  • Proven experience working with geospatial data, including spatial formats (vector, raster, GeoJSON, shapefiles), coordinate reference systems, and spatial analysis workflows.
  • Ability to interpret and apply geographical context in data processing pipelines, aggregating, upscaling, or translating local/regional geospatial insights into national or regional-level datasets and analytical outputs.
  • Experience with publicly available official datasets, particularly Office for National Statistics (ONS) open data products (census boundaries, geographic lookups, deprivation indices, or mid-year population estimates).
  • Able to build rules for completeness/validity/consistency, and implement exception handling.

Qualifications

  • Skill in SF - SME - Logical DBA, MySQL.
  • Strong SQL, Python, and data tooling experience.
  • Geospatial data expertise.
  • Experience with official datasets such as ONS open data.

Work location: London / Remote


Eligible for BPSS


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