Capgemini Engineering
AI

Mlops ( Aws) Híbrido Barcelona

Capgemini Engineering · Ontario · $97k - $112k

Actively hiring Posted 8 months ago

MLOps 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 starting from €55,000, based on experience and qualifications.
• 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.

As a MLOps Engineer, you will:
• Deploy cutting-edge ML/LLMs models to Fortune Global 500 clients.
• Join a world-class team of Quantum experts with an extensive track record in both academia and industry.
• Collaborate with the founding team in a fast-paced startup environment.
• Design, develop, and implement Machine Learning (ML) and Large Language Model (LLM) pipelines, encompassing data acquisition, preprocessing, model training and tuning, deployment, and monitoring.
• Employ automation tools such as GitOps, CI/CD pipelines, and containerization technologies (Docker, Kubernetes) to enhance ML/LLM processes throughout the Large Language Model lifecycle.
• Establish and maintain comprehensive monitoring and alerting systems to track Large Language Model performance, detect data drift, and monitor key metrics, proactively addressing any issues.
• Conduct truth analysis to evaluate the accuracy and effectiveness of Large Language Model outputs against known, accurate data.
• Collaborate closely with Product and DevOps teams and Generative AI researchers to optimize model performance and resource utilization.
• Manage and maintain cloud infrastructure (e.G., AWS, Azure) for Large Language Model workloads, ensuring both cost-efficiency and scalability.
• Stay updated with the latest developments in ML/LLM Ops, integrating these advancements into generative AI platforms and processes.
• Communicate effectively with both technical and non-technical stakeholders, providing updates on Large Language Model performance and status.

Required Qualification
• Bachelor's or master's degree in computer science, Engineering, or a related field.
• Mid or Senior: 3+ years of experience as an ML/LLM engineer in public cloud platforms.
• Proven experience in MLOps, LLMOps, or related roles, with hands-on experience in managing machine/deep learning and large language model pipelines from development to deployment and monitoring.
• Expertise in cloud platforms (e.G., AWS, Azure) for ML workloads, MLOps, DevOps, or Data Engineering.
• Expertise in model parallelism in model training and serving, and data parallelism/hyperparameter tuning.
• Proficiency in programming languages such as Python, distributed computing tools such as Ray, model parallelism frameworks such as DeepSpeed, Fully Sharded Data Parallel (FSDP), or Megatron LM.
• Expertise in generative AI applications and domains, including content creation, data augmentation, and style

Tags & focus areas

Used for matching and alerts on DevFound
Aws Docker Kubernetes Python Azure Fulltime
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