How might AI
accelerate quantum?
Using natural language, you can ask AI agents to run real quantum experiments on real hardware: it's the era of Quantum Vibecoding
Get started vibecoding on real quantum hardware in under 15 minutes
hAIqu—
AI as the interface between humans & quantum
Quantum vibecoding?
Can AI actually support quantum computing work? We tested this by connecting Claude Code to real quantum hardware through MCP servers. Describe the experiment in natural language. The agent derives Hamiltonians (energy models for molecules), writes circuits, submits to real chips, and analyzes the results.
445 sessions. 349 prompts. 3 quantum chips. 0 lines of quantum code by hand.
> Replicate Sagastizabal 2019 on IBM Torino. Try every error mitigation strategy and rank them.
TREX (readout error correction) achieves 0.22 kcal/mol — 119x improvement over raw. Adding more mitigation makes it worse.
And it actually works
AI agents replicated 6 landmark quantum papers on real hardware and set a new state-of-the-art on quantum code generation.
27 claims tested across 6 landmark papers, 3 quantum chips.
Can LLMs write quantum code? We tested 12 models on Qiskit HumanEval — 151 hand-verified quantum programming tasks (circuit construction, transpilation, error mitigation, VQE).
General-purpose frontier models beat every fine-tuned quantum specialist — zero-shot, with no quantum training data. Adding dynamic RAG (feeding relevant Qiskit docs at inference) pushes accuracy to 70.9%.
We also benchmarked 12 frontier models on 151 Qiskit coding tasks. General-purpose LLMs beat every fine-tuned quantum specialist — and RAG pushes accuracy to 70.9%.
Making quantum intuitive
AI-generated visualizations, simulations, and interactive tools that build new mental models for quantum computing — designed for learners, not just experts.