Comprehensive payment platform with a focus on nationwide toll management for commercial fleets of all shapes and sizes
Lead Infrastructure Architect
Location
United States
Posted
3 days ago
Salary
0
Seniority
Senior
Job Description
Lead Infrastructure Architect
Bestpass
• Define and own the infrastructure architecture vision across Fleetworthy's production environments, including how systems are designed, connected, and operated • Establish centralized observability standards adopted across all teams • Define standards for how AI workloads are hosted, scaled, and integrated across the organization • Advise on security architecture, partnering with the security manager to ensure infrastructure decisions align with compliance requirements • Work alongside embedded architects in Technical Operations, setting standards and providing guidance • Partner closely with the Staff Software Architect to maintain clear, complementary standards across both domains
Job Requirements
- Deep expertise in infrastructure architecture, production systems design, and networking
- Strong background in observability, reliability engineering, automation, and production operations at scale
- Experience with AI infrastructure and platforming, with an eye toward architecture and security alignment
- Ability to define and socialize standards across multiple teams
- Strong prioritization skills, with a track record of focusing on the changes that will have the most meaningful impact
- Ability to influence and align across teams
- Demonstrated empathy for the teams implementing the standards they set, understanding and caring about the cost and impact of architectural decisions on others
- Clear communicator across infrastructure, development, and non-technical audiences
Benefits
- Health insurance
- Retirement plans
- Paid time off
- Flexible work arrangements
- Professional development
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