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Financial Variable Compensation Analyst
Magnit · United States
// classified as
Other (Adjacent or hard to classify.)
posted
2d ago
location
United States
languages
—
tools
excel
> stack
excel
> description
Position Summary
We are seeking a Financial Analyst to join the Global FP&A team. This role will support Variable Compensation (VC) analysis, vendor and non-labor expense forecasting, and financial reporting. The ideal candidate is analytical, detail-oriented, and enjoys partnering with cross-functional teams to deliver accurate forecasts, meaningful insights, and process improvements.
Location
US Based- Remote: Ideally working PST/MST hours or located in Dallas, TX
Key Responsibilities
Execute monthly and quarterly variable compensation calculations and analysis.
Support vendor and non-labor expense budgeting, forecasting, and variance analysis.
Partner with Finance and business leaders to improve forecast accuracy and spending visibility.
Prepare recurring financial reports, dashboards, and ad hoc analyses.
Build and maintain planning models in Anaplan and reporting dashboards in Power BI.
Automate reporting processes and recommend continuous improvements.
Support monthly close, forecasting, annual planning, and other FP&A initiatives.
Qualifications
Bachelor's degree in Finance, Accounting, Business, or related field.
3–5 years of FP&A, financial analysis, or accounting experience.
Strong analytical, communication, and problem-solving skills.
Experience with budgeting, forecasting, and financial reporting.
Advanced Excel skills; experience with Anaplan and Power BI preferred.
Experience working with large datasets and ERP systems is a plus.
Preferred Skills
Variable compensation or sales commission analysis
Vendor and non-labor cost forecasting
Financial modeling and dashboard development
Process automation and continuous improvement
Ability to manage multiple priorities and build strong cross-functional partnerships
Compensation: Salary range is $75,000-$85,000 USD annually
Salary rates are based on experience, skills, and geographical location