Senior Software Engineer, Data Platforms & Monetization
Senior engineer responsible for data infrastructure powering product usage tracking, billing, and CRM integrations. Requires 8+ years experience with PHP/Laravel, AWS, relational databases, and React.
Salary not listed
Remote8+ YOEData Engineering
About the role
Key Responsibilities
Ensure every byte of product usage is accurately captured, transformed, and monetized
Participate in architectural decisions for data pipeline transitions
Work with AWS Lake Formation, AWS Glue, and other data lake and ETL tooling for reliable data ingestion, transformation, and availability for cross-system reporting
Bring modern patterns (Hexagonal Architecture, DDD) to modern Laravel (v11+) codebase
Integrate and maintain connections between internal systems and third-party platforms (billing, CRM, payment providers, etc.)
Maintain and evolve customer-facing account management UIs built with JavaScript, TypeScript, and React
Participate in code reviews, architectural discussions, and sprint ceremonies
Collaborate with remote teammates across time zones via video conference and async communication
Requirements
8+ years of professional software engineering experience
Strong hands-on experience with modern PHP and the Laravel framework
Solid understanding of relational databases (MySQL or similar) and data modeling
Experience with cloud infrastructure, particularly AWS (EC2, RDS, S3, Lambda, or similar)
Experience building and maintaining REST API integrations with third-party platforms
Skilled with front-end technologies including JavaScript, TypeScript, and React
Track record of inheriting legacy systems, assessing technical debt, and executing pragmatic improvements
Strong written and verbal communication skills
Self-directed and comfortable working as part of a geographically distributed team
Nice To Have
Experience with AI-assisted development tools such as Claude Code
Experience with CPQ/billing platforms such as Zuora
Experience integrating with CRM/CPQ platforms such as HubSpot or Salesforce
Experience with containerization and orchestration tools (Docker, Kubernetes)
Experience with Infrastructure as Code (Terraform, Pulumi, etc.)
Familiarity with Scrum/Agile or Kanban methodologies
Skills
PHPLaravelMySQLAWSJavaScriptTypeScriptReactREST APIsAws GlueAws Lake Formation
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