Posted on: 06/10/2025
KEY RESPONSIBILITIES :
- Develop, validate, and deploy predictive, prescriptive, and scoring models to power product features and business decisions.
- Partner with the product management and data engineering teams to design and implement algorithms that directly impact customer experience and business growth.
- Drive feature engineering, model selection, and performance evaluation across diverse modeling use cases (scoring, forecasting, optimization, segmentation, simulation, NLP, etc.).
- Make analytical and technical decisions on modeling trade-offs (accuracy, interpretability, scalability).
- Ensure models are production-grade, explainable, monitored, and continuously improved as data and market conditions evolve.
- Stay up to date with emerging ML/AI techniques and proactively evaluate their applicability to business use cases.
REQUIRED SKILLS :
- Strong foundation in Machine Learning, Statistical Modeling, and Applied Mathematics, with proven experience in real-world problem-solving.
- Hands-on expertise in Python and R, including ML libraries (scikit-learn, XGBoost, PyTorch/TensorFlow for deep learning)
- Solid understanding of data preprocessing, feature engineering, and handling large-scale structured and unstructured datasets.
- Experience in building and deploying models such as : Scoring/response models, recommendation systems, forecasting, optimization, segmentation, causal inference.
- Excellent communication and stakeholder management skills, with the ability to effectively influence, align, and drive consensus across product, engineering, and business teams.
- Proven track record of leading analytics/modeling projects end-to-end.
DESIRED SKILLS :
- Exposure to Text Mining and NLP (topic modeling, sentiment analysis, embeddings)
- Knowledge of LLM-based applications is a plus.
- Knowledge of Bayesian analysis and probabilistic modeling.
- Experience with optimization algorithms, reinforcement learning, or simulation modeling.
- Working knowledge of cloud platforms (AWS) and ML pipelines is a plus.
- Exposure to Deep Learning
- Familiarity with digital marketing, SEO, and search-related modeling is a plus.
QUALIFICATIONS :
- Master's or PhD in a quantitative field (Computer Science, Statistics, Applied Mathematics, Data Science, Operations Research, Economics, Engineering).
- 4-6 years of experience in applied data science/modeling, ideally with projects spanning predictive modeling, NLP, optimization, and business-focused analytics.
- Experience delivering models into production environments (not just research/prototyping).
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Posted By
Marktine Technology Solutions
Director at MARKTINE TECHNOLOGY SOLUTIONS PRIVATE LIMITED
Last Active: 13 Oct 2025
Posted in
AI/ML
Functional Area
Data Science
Job Code
1556026
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