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Edge Deployment Engineer (Fixed-term contract) Technical · Madrid, Barcelona, Zaragoza

Hyperproof

Madrid

Presencial

EUR 40.000 - 70.000

Jornada completa

Hoy
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Descripción de la vacante

A leading deep-tech company in Spain is seeking an Edge Deployment Engineer to optimize machine learning models on constrained devices. You will work with cutting-edge technologies in AI and quantum computing and collaborate with expert teams. Candidates should have 3–5 years of experience in embedded systems and proficiency in Python and C/C++. Competitive compensation, bonuses, and flexible working hours are offered.

Servicios

Competitive annual salary
Signing bonus
Retention bonus
Relocation package
Flexible working hours

Formación

  • 3–5 years of experience in embedded systems or firmware development.
  • Strong proficiency in Python and C/C++.
  • Excellent communication and collaboration skills.

Responsabilidades

  • Optimize machine learning models for deployment on constrained devices.
  • Work with cross-functional teams to implement solutions.
  • Develop software for embedded systems and AI acceleration.

Conocimientos

Embedded systems experience
Firmware development
Machine learning model optimization
Python proficiency
C/C++ programming
Communication skills

Educación

Bachelor’s degree in Computer Science or related field

Herramientas

Git
TensorRT
ONNX Runtime
Descripción del empleo
Edge Deployment Engineer (Fixed-term contract)

We are looking to fill this role immediately and are reviewing applications daily. Expect a fast, transparent process with quick feedback.

Why join us?

We are a European deep-tech leader in quantum and AI, backed by major global strategic investors and strong EU support. Our groundbreaking technology is already transforming how AI is deployed worldwide — compressing large language models by up to 95% without losing accuracy and cutting inference costs by 50–80%. Joining us means working on cutting‑edge solutions that make AI faster, greener, and more accessible — and being part of a company often described as a “quantum‑AI unicorn in the making.”

We offer

  • Competitive annual salary
  • Two unique bonuses: signing bonus at incorporation and retention bonus at contract completion.
  • Relocation package (if applicable).
  • Fixed‑term contract ending in June 2026.
  • Hybrid role and flexible working hours.
  • Be part of a fast‑scaling Series B company at the forefront of deep tech.
  • Equal pay guaranteed.
  • International exposure in a multicultural, cutting‑edge environment.

Required Qualifications

  • Bachelor’s degree or higher in Computer Science, Electrical Engineering, Physics, or related field; or equivalent industry experience
  • 3–5 years of hands‑on experience in embedded systems, firmware development, or systems programming
  • Demonstrated experience optimizing machine learning models for deployment on constrained devices
  • Strong proficiency in Python, C, or C++; experience with system‑level programming languages is essential
  • Solid understanding of quantization techniques and model compression strategies. Experience with inference optimization frameworks (TensorRT, ONNX Runtime, LLM, vLLM, or equivalent)
  • Familiarity with embedded architectures: ARM processors, mobile GPUs, and AI accelerators
  • Strong fundamentals in computer architecture, memory management, and performance optimization
  • Experience with version control (Git), testing frameworks, and CI/CD pipelines
  • Excellent communication and collaboration skills in cross‑functional teams

Preferred Qualifications

  • Master’s degree in Computer Science, Electrical Engineering, or related field
  • Hands‑on experience with large language model inference and deployment
  • Experience optimizing neural networks using mixed‑precision computation or dynamic quantization
  • Familiarity with edge computing frameworks such as NVIDIA’s Triton Inference Server or similar platforms
  • Background in mobile or IoT development
  • Knowledge of hardware acceleration techniques and specialized instruction sets (SIMD, NPU‑specific optimizations)
  • Contributions to open‑source embedded AI or ML optimization projects
  • Experience with real‑time operating systems or embedded Linux environments

About Multiverse Computing

Founded in 2019, we are a well‑funded, fast‑growing deep‑tech company with a team of 180+ employees worldwide. Recognized by CB Insights (2023 & 2025) as one of the Top 100 most promising AI companies globally, we are also the largest quantum software company in the EU. Our flagship products address critical industry needs:

  • CompactifAI → a groundbreaking compression tool for foundational AI models, reducing their size by up to 95% while maintaining accuracy, enabling portability across devices from cloud to mobile and beyond.
  • Singularity → a quantum and quantum‑inspired optimization platform used by blue‑chip companies in finance, energy, and manufacturing to solve complex challenges with immediate performance gains.

You’ll be working alongside world‑leading experts in quantum computing and AI, developing solutions that deliver real‑world impact for global clients. We are committed to an inclusive, ethics‑driven culture that values sustainability, diversity, and collaboration — a place where passionate people can grow and thrive. Come and join us!

As an equal opportunity employer, Multiverse Computing is committed to building an inclusive workplace. The company welcomes people from all different backgrounds, including age, citizenship, ethnic and racial origins, gender identities, individuals with disabilities, marital status, religions and ideologies, and sexual orientations to apply.

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