Data Science Lead
๐ต๐น Portugal | ๐ฌ๐ท Greece | ๐ต๐ฑ Poland | ๐ช๐ธ Spain | ๐จ๐ฟ Czechia | ๐ฆ๐ฑ Albania | ๐ง๐ฌ Bulgaria | ๐ช๐ช Estonia | ๐ญ๐บ Hungary | ๐ฎ๐น Italy | ๐ฑ๐ป Latvia | ๐ฑ๐น Lithuania | ๐ฒ๐ฉ Moldova | ๐ท๐ด Romania | ๐ธ๐ฐ Slovakia | ๐ธ๐ฎ Slovenia
Consulting
Python
AWS
Finance
Machine Learning
Data Science
SQL
Analyst
Data Science Lead
from ๐ต๐น Portugal | ๐ฌ๐ท Greece | ๐ต๐ฑ Poland | ๐ช๐ธ Spain | ๐จ๐ฟ Czechia | ๐ฆ๐ฑ Albania | ๐ง๐ฌ Bulgaria | ๐ช๐ช Estonia | ๐ญ๐บ Hungary | ๐ฎ๐น Italy | ๐ฑ๐ป Latvia | ๐ฑ๐น Lithuania | ๐ฒ๐ฉ Moldova | ๐ท๐ด Romania | ๐ธ๐ฐ Slovakia | ๐ธ๐ฎ Slovenia
About the project(description, duration, stage)
Hands-onData Science Lead on a new engagement with aregulated UK & Ireland credit and lending company. The client has consolidated data from multiple business entities into a newly centralized,anonymized data lake and wants to turn it into validated risk analytics โdelinquency, probability of default, credit-policy insight โ plus an executive-facingnatural-language insight layer.
This is afoundational data-science build, not an agentic-AI project. The early work is unglamorous and hands-on: validating data nobody can yet vouch for, then building defensible models on top. You are the senior data scientist the client is missing โ youdo the work and own the methodology, while leading a small pod and acting as the human-in-the-loop the client explicitly asked for.
Stage: pre-contract / scoping (Phase 1 = current-state assessment + data validation).Duration: multi-phase, multi-quarter ambition with strong extension probability.
Reporting: Engagement lead / CTO (@Alex Honchar); leads the pod's Data Engineer(s) and the client's offshore data team.
Full-time engagement is preferable.
What you'll actually do(example tasks)
Profile the anonymized lake hands-on โ interrogate tens-of-millions-of-row tables andreproduce and validate the team's existing descriptive statistics, so every number is traceable to source (the client cannot currently answerโhow do you know that's correct?โ).
Build and validate the core risk models yourself:PD, delinquency / roll-rate, early-warning, segmentation and scorecards (WOE / IV, logistic regression, gradient boosting).
Stand up themodel-validation discipline that makes outputs audit-defensible: train / test / out-of-time splits, Gini / AUC / KS, calibration, stability (PSI), backtesting and full model documentation.
Define feature logic with the Data Engineer andwrite it yourself in SQL / dbt / Python; specify the harmonized definitions the semantic layer must serve.
Prototype and validate thenatural-language insight layer (text-to-SQL / RAG over the semantic layer); check answer correctness and add guardrails.
Run acredit-policy / cut-off analysis showing where the client could tighten policy or reduce delinquency โ the concrete insight their own clients keep asking for.
Lead a small pod (Data Engineer, client's junior offshore data people): set tasks, review work, be the quality bar and the human-in-the-loop.
Front the client's data leadership: present findings, explain methodology to non-technical executives, and shape the phased roadmap / SoW.
Skills(hands-on first)
ExpertPython for data science (pandas / Polars, scikit-learn, statsmodels) and strongSQL over large tables
Credit-risk / financial modeling: scorecards, PD, delinquency, segmentation, model validation and governance
Data validation, profiling and feature engineering on messy enterprise data
dbt / semantic modeling; partnering with data engineering on the harmonization layer
GenAI insight layer: text-to-SQL, RAG over structured data, evaluation and guardrails
Methodology, lineage and documentation that survives audit; able to explain it to executives
Leadership of small delivery pods and distributed / offshore teams
Knowledge
GDPR fundamentals (anonymization vs pseudonymization, UK / EU data residency)
AWS analytics stack and Well-Architected (Analytics, Security) for BFSI
UK / EU credit & lending regulatory context (FCA, model governance, fair-lending / explainability) โ strong plus
Familiarity with credit-bureau / scoring data products โ strong plus
Experience
Key characteristics (ideally 4/4):
Hands-on data science at enterprise scale
Worked with financial-services / credit clients or in-house at a credit / lending company
Cloud hyperscaler experience (AWS preferred)
Technology consulting / client-facing delivery background
Role-specific characteristics:
7+ years hands-on data science, with realcredit-risk / financial modeling
Experiencebuilding and validating models in a regulated, audited context
Led small data-science teams while still coding personally
Demonstrably comfortable doing thedata-cleaning grunt work themselves, not just directing it






