Computer Vision Engineer - (Remote - UK, Ireland and Hungary)

Jobgether
gb
2 months ago
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For one of our clients, we are looking for a Computer Vision Engineer, remotely from the UK, Ireland, and Hungary.

As a Computer Vision Engineer, you will play a pivotal role in the development and optimization of computer vision systems designed to enhance safety standards across global factories and warehouses. Your expertise will drive the creation of real-time models for object detection, classification, and pose estimation, contributing to the safety of thousands of workers worldwide. You will be working in a fast-paced environment, collaborating closely with cross-functional teams to integrate cutting-edge technologies into production pipelines, ensuring high-performance solutions. Your efforts will directly impact the continued evolution of AI-driven safety systems.

Accountabilities:

  • Develop and optimize computer vision models focused on object detection, classification, and pose estimation.
  • Curate and manage specialized datasets, ensuring data integrity for training and validation.
  • Work collaboratively with cross-functional teams to integrate solutions into production pipelines.
  • Continuously improve model accuracy, reduce inference time, and enhance overall system performance.
  • Maintain high standards of model quality and ensure readiness for deployment.
  • Manage multiple concurrent projects, ensuring timely and successful delivery.

Requirements

  • Bachelor's degree in Computer Science, Engineering, or a related field.
  • 5+ years of experience in computer vision or a similar field.
  • Expertise in deep learning frameworks, especially PyTorch and TensorFlow.
  • Strong proficiency in Python and experience with C++.
  • Experience with AWS cloud services (S3, EC2, Lambda) and handling compute-intensive workloads.
  • Proven experience deploying computer vision models in production environments.
  • Strong understanding of computer vision techniques and methodologies.
  • Experience managing data annotation projects.
  • Familiarity with MLOps tools such as Voxel 51, AWS Batch, and Weights & Biases.

Benefits

  • Competitive salary with performance-based incentives.
  • Opportunity to work with cutting-edge AI and computer vision technologies.
  • Flexible remote working options.
  • A collaborative, fast-paced environment that encourages personal growth.
  • Access to continuous learning and development opportunities.
  • Health and wellness benefits tailored to employee needs.

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