A different breed of specialty technology distributor. #ClimbWithUs
Senior Software Engineer – AI Gateway
Location
United States
Posted
1 day ago
Salary
$129K - $162K / year
Seniority
Senior
Job Description
Senior Software Engineer – AI Gateway
Climb Channel Solutions NA
• Build new AI security features into our access proxy product, the point where agent and user traffic is inspected and controlled. • Treat protocols such as Model Context Protocol (MCP) as enforcement boundaries, and build controls for agent-to-agent communication. • Connect that product to the Delinea Platform and prove the experience with design and paying customers on live capability. • Move those features into the Delinea Platform as the product matures, keeping customers running smoothly throughout the transition. • Enforce just-in-time access and policy decisions in the request path, drawing on the platform's identity and authorization building blocks. • Partner with product and with the teams building the platform's proxy and access engine.
Job Requirements
- Typically 8 or more years building production backend or networking systems.
- Hands-on experience with proxies, gateways, API gateways, or other systems that sit in the request path and inspect or control traffic.
- Strong skills in a modern backend language such as Go, C#, Java, or Rust.
- Experience evolving a product across releases, including moving capabilities between systems without disrupting customers.
- Ability to work complex problems with limited direction and make sound design trade-offs.
Benefits
- competitive salaries
- meaningful bonus program
- excellent benefits, including healthcare insurance
- pension/retirement matching
- comprehensive life insurance
- employee assistance program
- time off plans
- paid company holidays
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