About Us:
SiFi is a corporate expense management platform designed to empower /accounting teams with seamless control over corporate spending. Our platform allows companies to issue cards with specific spending restrictions, ensuring that funds are used efficiently and only for approved expenses.
About the Role:
We are looking for a skilled Data Scientist to join our team and work closely with business stakeholders, engineers, and analysts. This role involves building and maintaining data pipelines, designing and managing data warehouses (DWH), and developing reports and dashboards to drive business decisions. The ideal candidate has experience with data modeling, machine learning, and analytics, ensuring that insights are actionable and aligned with business goals.
Key Responsibilities:
1. Data Management & Engineering
• Design, build, and maintain ETL/ELT data pipelines for collecting, processing, and storing structured and unstructured data.
• Develop and manage the data warehouse (DWH) architecture to ensure scalability and efficiency.
• Integrate and optimize data from multiple sources, including databases, APIs, third-party tools, and business applications.
• Ensure data integrity, consistency, and security across all systems.
2. Business Intelligence & Reporting
• Collaborate with business teams to understand data needs and develop dashboards and reports for key performance indicators (KPIs).
• Use SQL, Python, R, or BI tools (Tableau, Power BI, Looker, etc.) to analyze and visualize data effectively.
• Provide actionable insights to drive business strategies, optimize operations, and improve customer experiences.
3. Data Science & Advanced Analytics
• Apply machine learning and statistical modeling to uncover trends, predict outcomes, and drive strategic decisions.
• Implement A/B testing frameworks and experiments to measure business impact.
• Optimize algorithms for fraud detection, customer segmentation, demand forecasting, and operational efficiency.
4. Cross-functional Collaboration
• Work closely with engineers to optimize data infrastructure and pipelines.
• Partner with business stakeholders to define data-driven strategies and objectives.
• Act as a bridge between technical and non-technical teams, ensuring that analytics solutions align with business needs.