About the project
Join Neurons Lab as a Data Engineer on a new engagement with a regulated UK & Ireland credit and lending company. The client has lifted data from multiple business entities into a newly centralized, anonymized data lake, but lacks the data-engineering depth to make it trustworthy and analytics-ready: current pipelines were assembled quickly (partly AI-assisted), and the descriptive statistics cannot yet be validated or reproduced.
You put that foundation on solid ground so the Data Science Lead can model on it with confidence — validate and re-engineer the pipelines, build the harmonization / semantic layer across entities, enforce data quality and lineage, and prepare clean, feature-ready datasets.
This is a foundational data-engineering role on a regulated data estate; data protection and reproducibility are the primary constraints on every decision.
Full-time engagement preferable.
What you'll actually do
- **Reproduce a descriptive-statistics report end-to-end** so any figure traces back to raw source — closing the gap the client admitted (numbers they can't currently defend).
- Profile and **reconcile differing source schemas** across acquired entities: map differing field names, types, encodings and business definitions for the same concept into one conformed model.
- Build **dbt staging → intermediate → mart models** with tests; codify the harmonized definitions the Data Science Lead specifies.
- Write **Great Expectations suites** (null / range / uniqueness / referential checks) and wire them into the pipeline so bad data fails loudly rather than silently corrupting analysis.
- Implement **entity / identity resolution** (deterministic + fuzzy matching) where there is no clean shared key for the same customer or account across sources.
- Implement and **verify anonymization / pseudonymization** (hashing / tokenization / k-anonymity) and evidence that re-identification risk is controlled for the client's IT / compliance team.
- **Optimize Spark / Glue jobs over tens of millions of rows** — partitioning, file formats (Parquet), incremental loads, cost control.
- Orchestrate with **Airflow / Step Functions**; build repeatable, scheduled pipelines rather than one-off scripts.
- Prepare **clean, documented, feature-ready datasets** for the PD / delinquency models.
- Document **runbooks** so the offshore team can operate the pipelines and handover takes days, not weeks; help scope onboarding of the remaining (Ireland + additional) sources.