Quantum Software Engineer (non-US) at Zapata Quantum
, , -
Full Time


Start Date

Immediate

Expiry Date

22 Jul, 26

Salary

0.0

Posted On

23 Apr, 26

Experience

2 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Python, LLM APIs, AI Agents, Machine Learning, Quantum Computing, Software Engineering, CI/CD, Prompt Engineering, Qiskit, Cirq, PennyLane, LangGraph, Pytest, NumPy, SciPy, Docker

Industry

Software Development

Description
About the role We are seeking a Quantum Software Engineer to build AI-powered tools that massively accelerate how quantum applications are designed and resource-estimated. You will fuse modern AI—LLMs, coding agents, and ML-based heuristics—with quantum circuit construction, compilation, and analysis, compressing workflows that currently take weeks of expert effort into hours. Your tooling will directly shape Zapata’s ability to evaluate and deliver quantum solutions across cryptography, pharmaceuticals, finance, materials discovery, and defense. This position offers a high level of individual ownership and is well-suited to engineers who are excited to push the frontier of AI-assisted scientific software within a small, focused team. You will partner closely with algorithm scientists and customers to understand their design and resource-estimation workflows, then build tools that turn those workflows into automated, scalable pipelines. This position is classified as exempt under applicable wage and hour laws. What you'll do Design and build AI-powered tools that accelerate quantum application design—from problem intake through algorithm selection, circuit construction, and validation Develop automated resource estimation pipelines that use LLMs and ML models to rapidly predict qubit counts, gate counts, and runtime for candidate quantum solutions Build agentic workflows that orchestrate quantum SDKs, compilation passes, simulators, and analysis tools Integrate state-of-the-art AI coding assistants and LLM APIs directly into internal scientific tooling to compress expert-led workflows into automated pipelines Benchmark and continuously improve the accuracy, speed, and reliability of AI-driven tooling against expert-curated baselines Collaborate closely with quantum algorithm scientists to capture their reasoning and encode it into reusable AI-driven tools Deliver high-quality software with minimal supervision, demonstrating autonomy in execution and technical decision-making Qualifications Strong software engineering fundamentals, including testing, code review, and CI/CD practices BS or MS in Computer Science, Physics, Engineering, or a related field, or equivalent professional experience Demonstrated experience shipping software that leverages LLMs, AI agents, or other machine learning components Proficient programming skills in Python, with working knowledge of modern LLM APIs (Anthropic, OpenAI, or equivalent) and tool-use / function-calling patterns Deep familiarity with AI-assisted development workflows (Claude Code, Cursor, or similar) and a drive to use them to massively accelerate your own output and that of the team Familiarity with quantum computing concepts and a willingness to learn quantum algorithms and resource estimation in depth Ability to work independently and manage deliverables with minimal oversight Strong judgment about when to apply AI and when not to A commitment to measuring tool quality against expert baselines Desired Programming Skills Python — for tooling, scientific code, and LLM-powered applications LLM APIs and tool-use / function-calling patterns (Anthropic, OpenAI, or similar) Agent frameworks and orchestration (LangGraph, pydantic-ai, or custom harnesses) Quantum SDKs (Qiskit, Cirq, PennyLane, or similar) for scripting design and estimation workflows AI-assisted development (e.g., Claude Code) Git and modern CI/CD tooling Evals and benchmark design for AI systems Software testing frameworks (pytest, hypothesis) NumPy, SciPy, and the scientific Python stack Retrieval-augmented generation and vector databases Containerization (Docker) and cloud infrastructure (AWS, Azure, or GCP) Prompt Engineering Preferred Experience Demonstrated experience shipping software that leverages LLMs, AI agents, or other machine learning components Experience building developer tools, scientific workflows, or research automation that leverages AI to speed up expert work Strong communication skills and comfort collaborating across research and engineering teams
Responsibilities
Design and build AI-powered tools to automate quantum application design, resource estimation, and circuit construction. Collaborate with algorithm scientists to integrate LLMs and agentic workflows into scalable scientific pipelines.
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