# Scorecard Developer (Machine Learning Specialist)

> GoTymeX · Mumbai, India (Hybrid) · Full-time · Posted 2026-03-18

**Workplace:** hybrid

**Department:** Data

## Description

### Role purpose

As a Scorecard Developer, you’ll develop and maintain credit scoring components and associated calibrations that support approval and risk strategies across products and markets. You’ll focus on building high-quality features, ensuring scores are stable and explainable, and delivering robust PD-to-bad-rate calibrations that translate model outputs into decision-ready risk measures.

### Key responsibilities

·        Develop and maintain scoring solutions and supporting artefacts used in credit decisioning (application and/or behavioural scoring, segmentation, risk signals).

·        Own feature engineering for scoring: create, test and document variables from bureau, application, transactional and repayment data; ensure stability, interpretability and data quality.

·        Contribute to model development and tuning using modern machine learning approaches where appropriate, ensuring outputs are robust, stable and suitable for decisioning.

·        Apply best-in-class machine learning practices for credit scoring, including disciplined hyperparameter optimisation, robust validation, and repeatable model selection workflows appropriate for production decisioning.

·        Define and maintain feature specifications for production (definitions, transformations, edge-case handling, missing value logic, consistency checks).

·        Produce PD / score calibrations to observed bad rates (overall and by segment), including calibration curves, stability tracking, and recalibration recommendations.

·        Support cut-off / limit strategy analysis using calibrated risk outputs (approval rate vs bad rate vs loss trade-offs).

·        Run ongoing monitoring: drift and stability of inputs/features, score distribution shifts, performance by segment and cohort/vintage, data pipeline health.

·        Partner with Engineering / Decisioning teams to operationalise scoring outputs and ensure reproducibility (versioning, back-testing, change control).

·        Maintain clear documentation suitable for internal review/audit (feature catalogue, calibration approach, monitoring packs, change logs).

## Requirements

### Required experience and qualifications

·        2–4 years’ experience in credit scoring / risk modelling / decisioning analytics in a lender, bank, bureau, or fintech setting.

·        Strong SQL plus Python/R for feature engineering, analysis, monitoring and calibration work.

·        Practical experience with advanced machine learning concepts (e.g., ensemble methods, feature selection, hyperparameter tuning, cross-validation) and the discipline to balance predictive power with stability and governance needs.

·        Experience translating model outputs into business-ready risk measures via calibration and performance tracking.

·        Ability to produce implementation-ready specifications and work closely with engineering/decisioning stakeholders.

### Nice to have

·        Exposure to multi-country portfolios and different bureau ecosystems.

·        Familiarity with model risk governance, validation support, and evidence pack preparation.

·        Experience with real-time/batch scoring pipelines and feature stores.

### Personal attributes

·        Detail-oriented and quality-driven; enjoys building reliable, production-ready data logic.

·        Practical communicator who can translate analytics into deployable specs and monitoring.

·        Comfortable operating across analytics + implementation + monitoring.

### Reporting line and location

·        Reports to: Credit Risk Modelling Lead / Scorecards Lead.

·        Location: Mumbai, India; collaboration with product and in-country credit risk teams.

## Apply

[Apply at GoTymeX](https://apply.workable.com/gotymex/j/6D19AAE037/apply)

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