Deep Learning Enginer

Deep Learning Enginer

Resumen

Localización

Area

Tipo de contrato

Fecha de publicación

09-01-2026

Descripción de la oferta

A Quantum Computing & AI software company based in Barcelona are seeking to bolster their team with a Deep Learning engineer. Se pueden requerir diversas habilidades interpersonales y experiencia para el siguiente puesto. Por favor, asegúrese de consultar la descripción a continuación con atención.Please note this is a fixed term contract until June 2026 Responsibilities: Lead the end-to-end design, training, optimization, and evaluation of deep learning models (LLMs and computer vision), from data preparation through large-scale distributed training and deployment. Research, apply, and advance state-of-the-art model compression techniques—including pruning, distillation, quantization, and architectural optimisation—to balance accuracy, latency, cost, and hardware constraints. Build and maintain reproducible, automated pipelines for large-model training and compression, incorporating ablation studies, benchmarking, and systematic evaluation. Develop and curate datasets and fine-tuning strategies (e.G., SFT, preference optimisation, prompt engineering) tailored to domain-specific and real-world use cases. Integrate compressed models into production systems, collaborating closely with cross-functional teams while maintaining high engineering standards, documentation, and code quality. Responsibilities: Master’s or Ph.D. in Computer Science, Machine Learning, Electrical Engineering, Physics, or a closely related technical field. 3+ years of hands-on experience training deep learning models from scratch, including architecture design, data pipelines, training loops, and distributed training. Strong expertise in model compression methods (pruning, distillation, low-rank factorisation, quantization) and performance analysis through ablations and error diagnostics. Deep understanding of modern model architectures (LLMs and/or computer vision), training dynamics, optimisation techniques, and the full model lifecycle. Proficiency with Python, PyTorch, and modern ML tooling, along with experience building scalable, reproducible training pipelines and optimizing models for real-world deployment constraints. xsgfvud If this role is of interest please apply directly on LinkedIn or send a copy of your CV to. By applying to this role you understand that we may collect your personal data and store and process it on our systems. For more information please see our Privacy Notice (

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