Junior AI/ML Engineer

Zagreb, Croatia


About the role

We are looking for an AI/ML Engineer to join a machine-learning–heavy project focused on photogrammetric reconstruction of multiple objects using 3D Gaussian Splatting. The project requires a custom implementation of SfM algorithms as COLMAP merged with new segmentation algorithms like SegmentAnything. You will work alongside experienced engineers to help develop, test, and deploy components of a computer vision / 3D reconstruction pipeline.


Responsibilities

  • Support development of a computer vision/photogrammetry pipeline (data preparation, experimentation, integration). 

  • Assist with monitoring, debugging, and troubleshooting during development and deployments.

  • Monitor and troubleshoot issues in development and production environments.

  • Contribute to project documentation and support periodic technical reporting (with team guidance).

What are we looking for

  • Master’s degree in Computer Science or a related field

  • Good Python skills and basic understanding of software engineering practices (Git, debugging, writing maintainable code).
  • Strong data analysis and evaluation skills, ability to clean and validate datasets, define meaningful metrics, and present results using clear, concise visualizations

  • Familiarity with machine learning basics and the ability to work with training/inference workflows and datasets. 

  • professional experience is  welcome: internships, student projects, or relevant personal projects

  • Experience with or willingness to learn Open3D, OpenCV

What we offer

  • Working on a cutting-edge project

  • Competitive salary based on experience and skills

  • High-end computer equipment tailored to your needs

  • A supportive, collaborative team that values initiative and creativity

  • Opportunities for professional growth and specialization

Interview process 

  • Intro call (fit and expectations)

  • Technical assignment

  • Final conversation/offer

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