Data Engineer

Arrow Global Group
Manchester
2 weeks ago
Create job alert
Description

We are seeking highly skilled and experienced Azure Data Engineers to join a newly formed group concentrating on Data. Within this role you will be a key member of the team, working on a complex and challenging project within the Financial Services/Capital Markets industry. The primary focus of the role would be on building resilient, reusable Data Pipelines to extract, load, and transform raw data into a relational data model. The successful candidate will work across complex, multi-source datasets including loan servicing systems, property and valuation platforms, collections systems, and third-party data providers, delivering reliable and auditable data at scale.


Department

IT & Change


Location

Manchester, UK


Key Responsibilities

  • Serve as the team’s ADF, Databricks, Python, PySpark & Spark SQL technical expert
  • Responsible for day-to-day collection & ingestion of raw data into corporate data assets
  • Work with the team to formalize data flows and data standards
  • Enable trusted datasets for portfolio analytics, asset strategy, finance, and risk
  • Supervise all data ingestion & integration processes from source to target including the data warehouse, data lake, etc
  • Performance tune and optimize all data ingestion and data integration processes
  • Partner with Data Stewards and Business Analysts to understand the nature of the data being handled and what an optimal Data Pipeline for it should look like
  • Design solutions that are aligned to the target state Data Architecture

About You

  • Degree in Computer Science, Information Systems, Data Science, or a related field is preferable
  • Proven experience building resilient, reusable Data Pipelines as a Data Engineer or equivalent
  • Resourceful, motivated self-starter with the ability to collaborate across business and technology
  • Strong analytical, verbal, and written communication skills
  • A background in financial data domains (IBOR/ABOR, transactions, market data, reference data)
  • Strong experience as a Data Engineer within Real Estate, Credit, Banking, or NPL Asset Management
  • Microsoft certification a plus


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