The AI agent for model deployment, inference optimization and hardware acceleration

PyTorch
ONNX
+ Validation Data & App Code
(e.g. Pre/Post-Processing)
Hypothesize
Transform
Compile
Benchmark
Learn
RunLocal
NVIDIA
Qualcomm
+ Ambarella & TI in September

The RunLocal Environment

RunLocal specializes generic coding agents for on-device optimization with purpose-built tools, context management and orchestration. It enables robust on-device testing, tracks experimentation, and continously learns what actually drives performance - feeding insights to the agent so that it can optimize better, faster and cheaper.

Why teams choose RunLocal

30%

Better Performance

Faster runtime, same accuracy
70%

Faster Timelines

Deploy in days, not weeks
90%

Less Manual Work

AI agent executes, you oversee

Supercharging Generic Coding Agents

Our environment specializes agents for on-device model optimization. Connect to your repos and target hardware for seamless integration, and deploy in your own infra for data security.

RunLocal EnvironmentDeployed on a server in your own infraInsights &RecommendationsOn-Device TestingPerformance FeedbackYour RepositoriesModels · Code · DataOff-the-shelf coding agentCodex / Claude / GeminiRunLocal CLIAgent ToolsRunLocal EngineManages Context & OrchestrationYour Real HardwareNVIDIA · Qualcomm

Avoid Costly Bottlenecks

RunLocal enables faster time-to-market, more optimized models in production and less engineering cost.

Performance Bugs

Investigating and fixing poorly supported layers, performance drop-offs after quantizing certain layers, and other silent but deadly issues.

Manual Trial-And-Error

Manually experimenting with model optimizations, getting lost in all the experimentation data, and going around in circles.

Missed Performance Gains

Not knowing if you're near the limit or leaving gains on the table. Optimizing without knowing if further investment is worth it.

Inside The RunLocal Environment

Robust hardware-in-the-loop experimentation and continuous learning. RunLocal refines experimentation into an understanding of what drives performance - enabling better, faster and cheaper optimization.

Experiment Tracking

Git-like version control over experimentation data. Tracking the agent's hypotheses, changes, artifacts, results and learnings.

Bayesian Causal Modelling

Turns experimentation data into an understanding of how specific changes affect performance, i.e. the agent's “predictive model”

Persistent Knowledge

Long-term memory of what works on specific hardware, transferrable across your various optimization projects

Chip Vendor SDK Encoding

Curated references and commands so the agent doesn't invent or hallucinate flags

Managed device execution

Handles on-device benchmarking queuing, dispatching, retries, and more, so that continuous experimentation and testing runs reliably

Dockerized Environments

Reproducible environments the agent mounts into, so HW/SW dependencies are set up correctly and results are comparable across runs

Backed By

468 Capital
Y Combinator
Ritual Capital

and more

Frequently Asked Questions

Things you might want to know before trying RunLocal