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Computer Vision Engineer
Industry: AI/ML | DeepTech
Application Areas: Computer Vision · Artificial Intelligence · Machine Learning
Work Location: Remote (Argentina-based candidates only)
We are supporting one of our clients—an innovative leader in the AI and DeepTech space—in their search for a Computer Vision Engineer. This is an excellent opportunity to join a pioneering team that is building scalable, real-world computer vision and machine learning solutions.
If you're excited about cutting-edge CV/ML systems and enjoy working in a remote-first, fast-paced environment, this role might be a great fit for you.
Key Responsibilities:
- Design, develop, and optimize computer vision algorithms for object detection and recognition.
- Implement CV/ML models using Python, OpenCV, and C++ with GPU acceleration via CUDA.
- Deploy scalable models on cloud platforms (AWS, Azure, or Vertex AI).
- Collaborate with cross-functional teams to integrate CV pipelines into production-grade applications.
What You Bring:
- Strong experience with OpenCV, object detection frameworks, and Python.
- Solid C++ development skills for high-performance computer vision tasks.
- Knowledge of CUDA for GPU-based acceleration.
- Familiarity with cloud ML services (AWS SageMaker, Azure ML, or Google Vertex AI).
- Experience with training, tuning, and deploying ML models in production.
Bonus Points:
- Contributions to open-source CV/ML projects.
- Experience with edge deployment or real-time video analytics.
- Familiarity with MLOps practices and CI/CD for ML pipelines.