Description
The Salesforce Cloud Economics and Capacity Management (CECM) team is looking for a Lead Software Engineer with experience across distributed systems to join us!
You will be working cross-functionally with engineers, FinOps analysts, and product managers to build the breakthrough features that our internal customers will love, adopt and use while ensuring stable and scalable applications. You'll be a part of a modern, lean, self-governing FinOps product engineering team where you have the ability to switch hats between coding to requirements gathering, to testing for quality and performance.
CECM develops intelligent, data-driven tools which enable strategic financial operations (FinOps) decision-making pertaining to Salesforce infrastructure expenditure and capacity management. We are building a platform that provides near real-time monitoring of cloud cost and capacity utilization of the infrastructure, which will help in optimizing resource allocation, forecasting spend, and minimizing costs. We incorporate advanced machine learning techniques to turn the petabytes of data generated by our global infrastructure into actionable predictions and business insights used by FinOps practitioners, internal service owners, and technical leaders daily. As an internal tooling team, engineers are expected to directly interact with customers to develop requirements and design, release and maintain distributed systems with visibility throughout Salesforce.
This is a fantastic opportunity for someone who is passionate about building scalable, resilient, distributed systems that collect, process, and analyze massive volumes of cloud cost and usage data. The skillset requires strong data architecture, ETL, SQL and a proven track record working with enterprise metrics to build automated data pipelines. Broad experience in distributed backend development is preferred.
Responsibilities
Develop, automate, enhance, maintain scalable ETL pipelines
Develop and maintain dashboards and reports to visualize cloud cost and usage trends
Collaborate with finance and engineering teams to understand and manage cloud spending
Automate cost anomaly detection, alerting, forecasting, budget process, and other FinOps capabilities
Independently design and develop resilient and reusable automation data frameworks
Lead distributed backend development pipeline development being delivered by multiple engineers (predominantly Python)
Lead and participate in requirement gathering, design, and development of complex datasets
Mentor team members in all aspects of the data maturity lifecycle
Work and collaborate with global teams across AMER and APAC regions
Required Skills/Experience
Bachelor’s degree in Computer Science or equivalent industry experience
7+ years of experience in data engineering, preferably in cloud or FinOps environments
Experience in distributed SQL analytics engines such as Spark and Trino, and cloud cost management platforms
Deep expertise in building ETL pipelines using tools like dbt, Airflow, or similar orchestration frameworks
Understanding of cloud cost management principles and FinOps methodologies
Strong communication and stakeholder management skills
Experience working in Agile and Scrum methodology, incremental delivery, and CI/CD
Experience in at least one cloud service providers including AWS or GCP
Experience in distributed backend software engineering environments
Experience with data visualization tools, preferably Tableau
For roles in San Francisco and Los Angeles: Pursuant to the San Francisco Fair Chance Ordinance and the Los Angeles Fair Chance Initiative for Hiring, Salesforce will consider for employment qualified applicants with arrest and conviction records.