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Qutip

Skill Verifiziert Aktiv

Quantum physics simulation library for open quantum systems. Use when studying master equations, Lindblad dynamics, decoherence, quantum optics, or cavity QED. Best for physics research, open system dynamics, and educational simulations. NOT for circuit-based quantum computing—use qiskit, cirq, or pennylane for quantum algorithms and hardware execution.

Zweck

To enable AI agents to perform advanced quantum physics simulations for open quantum systems, supporting research, education, and analysis in areas like quantum optics and cavity QED.

Funktionen

  • Simulate open quantum systems with master equations
  • Analyze Lindblad dynamics and decoherence
  • Support quantum optics and cavity QED simulations
  • Provide tools for time evolution, analysis, and visualization
  • Offer examples for common quantum simulation workflows

Anwendungsfälle

  • Use when studying quantum master equations and Lindblad dynamics.
  • Use for simulating decoherence effects in quantum systems.
  • Use for educational purposes in quantum physics and optics.
  • Use for research in quantum optics and cavity QED.

Nicht-Ziele

  • NOT for circuit-based quantum computing or quantum algorithms.
  • NOT for direct quantum hardware execution.

Installation

npx skills add K-Dense-AI/claude-scientific-skills

Führt das Vercel skills CLI (skills.sh) via npx aus — benötigt Node.js lokal und mindestens einen installierten skills-kompatiblen Agent (Claude Code, Cursor, Codex, …). Setzt voraus, dass das Repo dem agentskills.io-Format folgt.

Qualitätspunktzahl

Verifiziert
99 /100
Analysiert 1 day ago

Vertrauenssignale

Letzter Commit3 days ago
Sterne21k
LizenzMIT
Status
Quellcode ansehen

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