Finance Systems Manager

RingCentralBelmont, CA
9h$104,450 - $143,500

About The Position

Say hello to opportunities. It’s not everyday that you consider starting a new career. We’re RingCentral, and we’re happy that someone as talented as you is considering this role. First, a little about us, we’re a $2 Billion annual revenue company with double digit Annual Recurring Revenue (ARR) and a $93 Billion market opportunity in UCaaS, Contact Center and AI-powered adjacencies. We invest more than $250 million annually to ensure our AI-enabled technology and platforms meet or exceed the needs of our customers. RingSense AI is our proprietary AI solution. It’s designed to fit the business needs of our customers, orchestrated to be accurate and precise, and built on the same open platform principles we apply to our core software solutions. We are seeking a Finance Systems Manager with deep experience in financial analytics, business intelligence, and enterprise reporting. This role will serve as a strategic and hands-on leader responsible for building, governing, and scaling a modern finance analytics ecosystem. The ideal candidate brings strong advanced technical expertise , and the ability to partner closely with Finance, FP&A, and Engineering stakeholders.

Requirements

  • Bachelor’s or Master’s degree in Computer Science, Data Analytics, or a related field
  • 8+ years of experience in Financial Analytics, Business Intelligence, or Data Analytics , with significant leadership experience
  • Advanced expertise in SQL for analytics-ready data modeling
  • Strong experience with Python for data transformation, analysis, and forecasting
  • Hands-on experience with Tableau (primary) and other BI tools
  • Strong understanding of financial and transactional data domains
  • Proven ability to define, govern, and scale financial metrics across the enterprise
  • Excellent communication and stakeholder management skills, with executive-level presence
  • SQL & Data Warehousing Advanced SQL skills for analytics, data modeling, and performance optimization
  • Strong hands-on experience with Snowflake (preferred) or similar cloud data warehouses
  • Experience building analytics-ready tables, aggregations, and reusable views
  • Ability to implement data quality checks, reconciliations, and audit controls in SQL
  • Python & Advanced Analytics Strong proficiency in Python for data transformation and analysis
  • Experience using Python libraries such as pandas, NumPy, and statsmodels (or equivalent)
  • Ability to implement business logic, data pivots, trend analysis, and lightweight forecasting
  • Experience handling missing data, outliers, and large datasets efficiently
  • BI & Visualization Tools Deep experience with Tableau (primary BI tool), including: Dashboard design for executive and finance audiences Performance optimization and best practices Semantic layers and governed metrics
  • Exposure to Power BI or similar BI tools is a plus
  • Data Pipelines & Analytics Engineering Experience working with end-to-end analytics pipelines from source systems to dashboards
  • Familiarity with ETL / ELT concepts and tools (e.g., Tableau Prep, dbt, or similar frameworks)
  • Ability to partner effectively with Data Engineering teams on scalable data architecture
  • Financial & Analytics Systems – Good to have Experience working with financial and transactional data (revenue, billing, payments, forecasting)
  • Familiarity integrating data from ERP, revenue, or billing systems into analytics platforms
  • Strong understanding of metric governance and financial data consistency

Nice To Haves

  • Background in fintech, banking, SaaS, or large-scale transactional environments
  • Experience working with high-volume, customer-level financial data
  • Prior experience leading enterprise-wide BI or financial transformation initiatives

Responsibilities

  • Data Pipeline & Architecture Ownership Oversee end-to-end finance analytics pipelines, including: SQL-based data extraction and aggregation Python-based transformation, business logic, and forecasting BI semantic layers and dashboard consumption AI-enabled analytics and self-service insights Ensure performance, scalability, and reliability of financial reporting datasets
  • Advanced Analytics & Insights Delivery Lead Python-driven analytics such as: Dataset reshaping and pivots for reporting and analysis Handling missing data, outliers, and data quality issues Trend analysis and customer-level performance monitoring Lightweight forecasting and scenario analysis for planning Translate complex financial data into clear, actionable insights for executive leadership
  • BI & Executive Reporting Design, govern, and optimize executive dashboards and KPI frameworks using Tableau and other BI platforms Ensure dashboards support intuitive drill-downs across customer, product, segment, region, and time Drive consistency between dashboards, reports, and AI-driven insights to maintain metric trust
  • AI & Analytics Enablement Support AI-driven finance analytics initiatives by ensuring: AI tools use governed, approved financial metrics Outputs are explainable, traceable, and auditable Role-based access and data security controls are enforced Establish guardrails to prevent incorrect metrics or misleading interpretations
  • Operational Excellence Drive continuous improvement in BI workflows, SQL performance, Python pipelines, and automation Improve efficiency, accuracy, and scalability of financial reporting systems Ensure smooth transitions between legacy and next-generation financial platforms

Benefits

  • health and wellness
  • 401k
  • ESPP
  • vacation
  • parental leave
© 2024 Teal Labs, Inc
Privacy PolicyTerms of Service