Job Purpose
The purpose of this role is to drive end-to-end analytics initiatives by leveraging data science, machine learning, and modern data platforms to deliver scalable and business-impacting solutions. The role involves translating business problems into analytical frameworks, developing robust models, and enabling data-driven decision-making to support strategic and operational objectives.
Job Context
The role requires working across business functions to design, develop, and deploy analytics solutions using advanced data science and machine learning techniques. It involves translating business requirements into analytical problem statements, building scalable data pipelines, and enabling insights through dashboards and reporting tools. The role also requires continuous monitoring and optimization of models, ensuring alignment with business objectives and adoption of best practices in analytics and model lifecycle management. The individual will collaborate with cross-functional teams, including business stakeholders, data engineers, and technology teams, to deliver actionable insights and scalable solutions. Additionally, the role demands staying updated with emerging trends in AI/ML, including NLP and LLMs, to drive innovation.
Major Challenges
- Data Complexity & Quality:Managing large, complex datasets from multiple sources with varying levels of data quality
- Business Translation:Converting ambiguous business problems into structured analytical solutions
- Scalability:Building reusable and scalable analytics frameworks and pipelines
- Model Lifecycle Management:Ensuring continuous monitoring, validation, and performance tracking of models
- Technological Advancements:Keeping pace with rapidly evolving tools, platforms, and AI/ML advancements
- Stakeholder Alignment:Managing expectations and ensuring adoption of analytics solutions across functions
Key Result Areas
Analytics Solution Development
- Lead development and deployment of analytics solutions across business use cases
- Build, validate, and optimize machine learning models
Business Problem Translation
- Translate business requirements into analytical frameworks
- Define problem statements and solution approaches
Model Performance & Monitoring
- Track model performance and ensure continuous improvement
- Implement best practices in model validation and monitoring
Reporting & Visualization
- Develop dashboards and reporting solutions using Power BI and DAX
- Deliver actionable insights to stakeholders
Framework & Pipeline Development
- Build scalable and reusable data science frameworks and pipelines
Stakeholder Collaboration
- Work with cross-functional teams to deliver business insights
- Communicate results effectively
Innovation & Capability Building
- Stay updated with AI/ML trends including NLP and LLMs
- Drive adoption of modern analytics tools and techniques