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AITX Community x NVIDIA Claw Agent Hackathon

lumaHosted on Luma

Fetched about 2 hours ago

Friday, July 17, 2026

to Sunday, July 19, 2026

•

2 days long

Artificial Intelligence

Event Type

in person

156

Participants

14

Est. Projects

AITX Community is partnering with NVIDIA for a hands-on Claw Agents hackathon focused on building real autonomous agent applications. Participants will build agents that do more than chat: they should take action, coordinate tools, and produce a working demo by the end of the event. This is built for AI engineers, builders, founders, researchers, and technical operators who want to experiment with the next generation of agentic systems. What you’ll build Teams will build a working autonomous agent application. Strong projects will show: A real user or enterprise workflowMulti-step autonomous executionTool use, MCP integration, or API orchestrationThoughtful handling of permissions, privacy, and securityA live demo that proves the agent can actually do the work Potential project directions Personal AI operators that manage complex recurring workflowsSecure enterprise agents for internal tools, data, and operationsDeveloper agents that inspect repos, open PRs, run tests, or manage issuesResearch agents that gather, verify, and synthesize informationLocal-first or privacy-aware agents that minimize unnecessary cloud exposureMulti-agent systems that divide work across specialized roles Who should apply? This event is ideal for builders with experience in AI engineering, full-stack development, infrastructure, automation, agents, open-source tooling, or applied ML. You do not need to be an expert in building Agents before arriving, but you should be comfortable learning quickly and shipping a demo. Why attend? You’ll get hands-on time with emerging NVIDIA agent infrastructure, meet other serious AI builders in Austin, and build alongside a community focused on practical, technically ambitious AI applications. Expect a fast-moving builder environment, technical support, team formation, sponsor resources, live demos, and prizes for the strongest projects. Their support makes this Hackathon possible. Red Hat AI Red Hat AI is a big player in the open-source AI ecosystem. It actively contributes to numerous projects, including InstructLab, which enables fine-tuning of large language models (LLMs) on consumer-grade hardware, and vLLM, a library designed for efficient LLM inference and model serving. Additionally, Red Hat offers an enterprise-grade AI platform that supports end-to-end development of AI-powered applications. HiddenLayer HiddenLayer is a leading AI security company focused on protecting machine learning models, generative AI applications, and agentic systems from emerging threats. HiddenLayer is built for organizations deploying AI at scale that need to secure models, prevent misuse, protect intellectual property, and maintain compliance without slowing down AI adoption. Featherless Featherless AI is a serverless inference platform that gives developers and organizations instant access to tens of thousands of open-weight AI models through a single OpenAI-compatible API. Featherless is built for teams that want to experiment with, benchmark, and deploy models such as Llama, Qwen, Mistral, and DeepSeek without managing GPUs, model weights, scaling configurations, or other inference infrastructure. Its flat-rate pricing and broad model catalog enable users to rapidly test new models, control inference costs, and build production AI applications without being locked into a small set of proprietary providers.

Judge Accessibility

Organizer email available25/25
Student-run event15/15
Actively looking for judges25/25
Small event (120 participants)10/10
No corporate sponsors10/10
New or emerging organizer10/10
Public registration available5/5
Online format (judge from anywhere)10/10

Top signals

Organizer email available
Student-run event
Actively looking for judges

Organizers

Alex Johnson

alex@example.org

Jamie Rivera

jamie@example.org

Sam Chen

sam@example.org

Estimated Audience

Mostly Students
ExperienceStudent
OccupationStudents
Beginner Friendly
Women in Tech

Technical Focus

AI95%
Web80%
Mobile25%

Industries

Healthcare
Education
Climate

Technologies

Python
React
OpenAI

Why this estimate

  • • Hosted by a university
  • • Open to students
  • • MLH member event

Estimate inferred from event metadata, not actual attendee data.

Quality Score

Quality Score

72/100
High confidence
Organiser16/20
Event Maturity14/20
Sponsors18/25
Participants12/20
Operations12/15

Why this score

Strong organiser track record
Returning event
Well-sponsored

Missing data

Prize details
Code of conduct