Role Description
We are looking for a Senior Data Scientist to drive predictive analytics and machine learning initiatives for enterprise use cases. This role focuses on building scalable, production-ready ML solutions using traditional machine learning techniques across domains such as forecasting, risk modeling, and customer analytics.
The ideal candidate will be a hands-on leader who can translate business problems into data-driven solutions, define modeling strategies, and lead end-to-end implementation on AWS while ensuring measurable business impact.
Key Responsibilities:
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Lead end-to-end data science initiatives for predictive analytics use cases such as demand forecasting, churn prediction, and risk modeling.
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Translate business requirements into ML problem statements and define appropriate modeling approaches.
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Design, build, and deploy machine learning models using traditional ML techniques (regression, classification, clustering, time series).
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Drive feature engineering, data preparation, and exploratory data analysis to improve model performance.
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Develop and manage scalable ML pipelines from data ingestion to model deployment.
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Deploy and manage models on AWS using services such as SageMaker.
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Ensure model performance through validation, monitoring, and periodic retraining.
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Collaborate with data engineering and MLOps teams to productionize ML solutions.
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Apply best practices for model governance, explainability, and responsible AI.
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Mentor junior data scientists and provide technical leadership while remaining hands-on.
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Communicate insights, model outputs, and recommendations effectively to business stakeholders.
Qualifications
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8+ years of relevant hands-on technical experience implementing and developing cloud solutions on AWS.
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Strong experience leading predictive analytics initiatives using traditional ML techniques including regression, classification, clustering, and time series forecasting.
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Hands-on experience with time series forecasting models including SARIMA, Prophet, and other ML-based forecasting approaches.
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Proficiency in Python with experience in libraries such as scikit-learn, XGBoost, Pandas, NumPy.
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Knowledge of a variety of machine learning techniques (Supervised/unsupervised, clustering, decision tree learning, artificial neural networks, etc.) and their real-world advantages/drawbacks.
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Proven ability to translate complex business problems into scalable ML solutions, driving feature engineering strategies and end-to-end model development.
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Hands-on experience on AWS Machine Learning services.
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Proven experience using AWS Sagemaker leveraging different types of data sources, Training jobs, real-time and batch Inference, and Processing Jobs.
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Experience leading model deployment on AWS SageMaker with a strong focus on performance optimization, model governance, and measurable business impact.
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Implement and manage MLOps based model lifecycle and best practices for ML architecture in production environments.
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Experience with at least one of the workflow orchestration tools, Airflow, StepFunctions, SageMaker Pipelines, Kubeflow etc.
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Ability to create end-to-end solution architecture for model training, deployment, and retraining using native AWS services such as Sagemaker, Lambda functions, etc.
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Experience in building model monitoring and explainability workflows in production environments.
Requirements
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Experience defining and driving model governance frameworks and performance monitoring strategies in production environments.
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Ability to collaborate with cross-functional teams such as Developers, QA, Project Managers, and other stakeholders to understand their requirements and implement solutions.
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Experience with Generative AI development.
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Experience working on Infrastructure as Code (IaC) and CI/CD pipelines.
Benefits
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Make an impact at one of the worldโs fastest-growing AI-first digital engineering companies.
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Upskill and discover your potential as you solve complex challenges in cutting-edge areas of technology alongside passionate, talented colleagues.
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Work where innovation happens - work with disruptive innovators in a research-focused organization with 60+ patents filed across various disciplines.
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Stay ahead of the curveโimmerse yourself in breakthrough AI, ML, data, and cloud technologies and gain exposure working with Fortune 500 companies.
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If you like wild growth and working with happy, enthusiastic over-achievers, you'll enjoy your career with us!