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Your Brand. Elevated.
Payment Analytics Engineer
Location
California
Posted
118 days ago
Salary
$170K - $220K / year
Seniority
Lead
Job Description
Payment Analytics Engineer
HighNote
• Network Reporting & Regulatory Compliance • Interchange Analysis & Revenue Attribution • Strategic Modeling & Network Economics • Data Engineering & Upstream Influence
Job Requirements
- Experience: 8+ years in data engineering, analytics, or reporting; with 5+ years of experience in Payments and Fintech.
- Domain Expertise: Deep knowledge of payment domains, specifically card network file structures and specifications, fund movement, and interchange qualifications.
- Technical Proficiency: Expertise in SQL and Python (or Java) for building data processing jobs and automating complex reporting workflows.
- Data Modeling: Proven ability to model data structures that ensure scalability and performance in high-volume environments.
- Attention to Detail: A zero error mindset with the ability to document and maintain workflows to support the reliability of reporting and analytics systems.
- Financial Literacy: A background in Accounting or Finance, either through formal education or professional experience, to support complex financial data tracking.
Benefits
- Flexible Paid Time Off
- 100% healthcare coverage + 75% coverage for dependents
- 401k program
- Paid Parental Leave: Up to 16 weeks paid leave for the birth parent, and up to 6 weeks paid leave for the non-birth parent
- Equity in Highnote
- Stipend to build out your home office; internet reimbursement
- At Highnote we have built a total rewards philosophy that includes fair, equitable, geo-based compensation that is performance and potential based. Our compensation packages are competitive based on robust market research and are a combination of a cash salary, equity, and benefits.
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