Overshoot builds AI infrastructure for real-time vision applications, enabling developers to build and run real-time vision applications with support for Vision Language Models. Target use cases span security, safety, gaming, robotics, and consumer products, with the company citing sub-200ms response times. It is based in the San Francisco Bay Area and is part of Y Combinator's Winter 2026 batch.
Overshoot
ActiveAI Infra for real-time vision applications
Total raised
$500K
1 round
Stage
Seed
Jan 2026
Team
1-10
since 2026
Pricing
—
Founded
2026
San Francisco, United States
Agent-ready
—
AI infrastructure purpose-built for real-time vision applications
Support for running Vision Language Models (VLMs)
Low-latency response, with the company citing sub-200ms times
Developer tooling to build and deploy real-time vision apps
Applicability across security and safety monitoring
Support for gaming and robotics vision use cases
Consumer-product vision application support
Real-time processing pipeline for video and image streams
12/100
Early
MCP server
Public API
Webhooks
OAuth 2.0
SDKs
No public agent surfaces detected yet.
Jan 2026 Seed $500K ● Y Combinator
Capital network
$500K raised ·1 backer·10 network links
- Backers1
- Shared portfoliocompanies these backers also fund
- Extended networkfunds that co-invest alongside them
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- What does Overshoot provide?
- Overshoot provides AI infrastructure for real-time vision applications, with support for Vision Language Models and low-latency response. It enables developers to build and run real-time vision apps without assembling the underlying stack themselves.
- What use cases does Overshoot target?
- Its target use cases span security, safety, gaming, robotics, and consumer products. The common thread is applications that need vision intelligence with real-time responsiveness.
- How fast is it?
- The company cites sub-200ms response times for its real-time vision infrastructure. Actual latency can depend on the specific models and workloads involved.
- Who is Overshoot for?
- Overshoot is built for developers creating real-time vision applications. It abstracts the infrastructure so teams can focus on building vision-powered products.
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