Artificial Intelligence Researcher-Perception

Gloo
London
1 week ago
Applications closed

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About the Role

We are seeking anAI Research Scientistspecializing inHuman-Computer Interaction (HCI), Perception-Emotion Recognition, and Expression Recognitionto join our cutting-edge AI research team. You will work at the intersection of machine learning, computer vision, and human psychology, developing models that interpret and respond to human emotions, expressions, and behaviors. Your work will drive innovation in AI-driven human interaction systems, enhancing natural communication between humans and machines.

Key Responsibilities

  • Conduct cutting-edge research inperception-aware AI, emotion recognition, and expression analysis.
  • Develop deep learning models that accurately analyze and interpretfacial expressions, gestures, and vocal cues.
  • Build real-time perception systems forhuman-computer interaction (HCI)applications, improving the responsiveness and adaptability of AI agents.
  • Design and implement machine learning models foraffective computing, integrating multi-modal data (visual, audio, physiological signals).
  • Collaborate with cross-functional teams to enhance AI-driven human interaction in applications such asavatars, virtual assistants, and interactive experiences.
  • Publish research findings in top-tier journals and conferences, contributing to the broader scientific community.
  • Optimize deep learning pipelines for efficient inference in real-time or low-latency applications.

Qualifications

  • Ph.D. or equivalent experiencein Computer Science, AI, Machine Learning, Cognitive Science, or related fields.
  • Strong expertise incomputer vision, affective computing, and multi-modal machine learning.
  • Hands-on experience with deep learning frameworks such asPyTorch or TensorFlow.
  • Proficiency inPython and C++, with experience in real-time AI system development.
  • A track record ofpublished research in top AI/ML or HCI conferences (ICCV, CVPR, NeurIPS, SIGGRAPH, CHI, etc.).
  • Experience withfacial expression recognition, gaze tracking, and voice-based emotion analysisis a plus.
  • Strong analytical skills, creativity, and a passion for human-centered AI.

Why Join Us?

  • Work onpioneering AI researchthat enhances human-computer interaction.
  • Collaborate with world-class researchers and engineers.
  • Opportunity to impactAI-driven communication technologiesacross industries.
  • Competitive salary, benefits, and an innovative work environment.

If you’re passionate aboutpushing the boundaries of AI perception and emotion recognition, we’d love to hear from you!

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