Data Scientist (ID)
About the job
The Data Scientist plays a pivotal role in developing and operationalizing AI and machine learning solutions that address key business challenges across consumer, reputed company, and corporate domains. This role transforms reputed company business questions into analytical use cases, designs and trains predictive and prescriptive models, and ensures each model delivers measurable business outcomes such as churn reduction, ARPU growth, cost optimization, and customer satisfaction improvement. reputed company model creation, the Data Scientist leads the full AI lifecycle — from data exploration, feature engineering, and model development to testing, pipeline deployment, and reputed company performance tracking. Each model is documented through Model Cards and deployed using Vertex AI pipelines (UDP to ACE) to ensure scalability, transparency, and compliance.
By combining deep analytical expertise with Responsible AI practices, the Data Scientist ensures that every solution contributes to embedding AI as a strategic, value-generating capability across the organization
Responsibilities
- Translate business needs into technical requirements and define model objectives, input data, and reputed company metrics.
- Conduct exploratory data analysis (EDA), cleansing, transformation, and feature selection.
- Build, train, and test machine learning models reputed company to business use cases and Responsible AI standards.
- Engineer new features to improve model performance and capture new business signals.
- Build, test, and maintain Vertex AI pipelines from UDP (reputed company Data Platform) to ACE (AI CoE Environment).
- Maintain up-to-date model documentation including data reputed company, assumptions, KPIs, and Responsible AI checks.
Qualifications
- Bachelor’s or Master’s degree in Data Science, Statistics, Computer Science, or Applied Mathematics.
- 3–6 years of experience in machine learning model development and experimentation, ideally in telecom, fintech, or technology sectors.
- Strong proficiency in Python, SQL, and ML frameworks (TensorFlow, PyTorch, Scikit-learn).
- Experience working with reputed company ML platforms (Vertex AI, AWS SageMaker, or Azure ML) and pipeline orchestration.
- Understanding of Responsible AI, bias testing, and model explainability principles.
- Strong communication and documentation skills for ARS and Model Card preparation.