AHMEDABAD · FULLTIME
ML Engineer (CE50SF RM 4206)

Rightsource
Ahmedabad · onsite · Posted 5d ago
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Section · 01
About this role
Position: ML Engineer (CE50SF RM 4206)
Shift timing : 02 PM to 10 PM Work Mode : Work From Office Required Industry Experience : 5+ years of total development experience Relevant Experience required : 2.5+ years of relevant Gen AI experience Education Required: Bachelor’s / Masters / PhD: Bachelor’s degree in engineering Must Have Skills
- Python for ML
- Scikit-learn, PySpark
- Supervised Learning – Logistic Regression, Random Forest, XGBoost/LightGBM/CatBoost, calibration
- Unsupervised Learning & Anomaly Detection, Imbalanced Data Techniques – Class weighting, focal loss, threshold tuning, cost-sensitive learning
- Model Evaluation & Calibration, Statistics & Probability
- Drift Monitoring – Data drift, concept drift, PSI, KL divergence, model performance monitoring, retraining strategies
- ML Architecture Design – End-to-end pipelines
- Databricks – Notebooks, Delta Lake, Jobs, Workflows, Feature Store, MLflow integration, Unity Catalog, MLOps Fundamentals
Good To Have Skills
- Experience in Azure
- Deep Learning – PyTorch / TensorFlow, sequence models (LSTM/Transformers) for fraud detection
- Git-based workflows (branching, pull requests, code reviews) and Agile/Scrum delivery
Any Special Or Skills Related Notes
- Hands-on and accountable for delivering working, supportable solutions
- Clear communicator who can translate between business needs and technical implementation
- Quality-focused (testing, monitoring, documentation) with attention to reliability and maintainability
- Calm under pressure when responding to incidents and prioritizing production work
- Ownership & accountability across the full ML lifecycle
- Mentoring other team members / knowledge sharing
Role focus: Core ML modelling Key responsibilities
- Design ML architecture (feature store, training pipelines, scoring)
- Build:
- Supervised diversion-risk model
- Unsupervised anomaly detection model
- Model evaluation, calibration, and drift monitoring
- Define reusable feature engineering framework
- Design response schema:
- Risk score
- Explainability layer
Required Skills
- Strong Python (scikit-learn, PySpark)
- Experience with anomaly detection techniques
- Experience with imbalanced datasets (fraud/risk domains preferred)
- Knowledge of MLOps (Databricks preferred) -
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Section · 02
Skills
Section · Company
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