
Brain-computer Interface Scientist
Noïa Labs
Posted about 7 hours ago
BCI Scientist - Neural Decoding
Paris, hybrid
Noïa Labs is an early-stage neurotechnology company building the next generation of human-AI interfaces.
We are working on one of the most ambitious problems in human-AI interaction: creating a more natural way for people to control, guide, and collaborate with AI systems by relying directly on brain activity. Our approach combines optimized non-invasive neural sensors with large-scale AI models trained across many users to decode human intent from brain signals, without surgery.
Noïa Labs was founded by the team behind NextMind (acquired by Snap) and is backed by tier-1 investors. We are at the beginning of the journey and are building a team of outstanding engineers and scientists where each person can have a major impact on the product and technology.
Role summary
We are seeking a talented BCI Scientist to lead the neural decoding efforts behind our non-invasive neural interface. You will work on identifying the brain-state markers that are stable, generalizable, and decodable at scale, and turning neuroscience insight into practical ML-ready approaches.
This is a hands-on scientific role at the intersection of neuroscience and machine learning: you will design experiments, analyze neural and behavioral data, and own the decoding validation pipeline. The role spans experimental design, signal analysis, decoding metrics, user studies, and collaboration with ML and product teams.
In this role, you will:
Develop machine learning models for decoding neural and physiological time-series
Design experiments, benchmarks, and ablations to evaluate performance, robustness, latency, and generalisation.
Study how models adapt across users, sessions, tasks, sensors, and contexts
Work with data-collection teams to define labels, tasks, and annotation protocols for training-ready neural data
Collaborate with ML engineers to turn promising methods into reliable training and inference workflows
For this role, you must:
5+ years of experience in ML, computational neuroscience, or a related field.
Experience building ML or deep-learning models for time-series data
Experience with neural or physiological signals such as EEG, MEG, ECoG, EMG, ECG, eye tracking, PPG, or related modalities
Strong experience with Python and modern ML frameworks such as PyTorch, JAX, or TensorFlow
Strong understanding of signal processing, statistics, model evaluation, and experimental design
Experience with personalization, domain adaptation, transfer learning, few-shot learning, or online adaptation
Experience with real-time inference, edge deployment, or low-latency ML systems
Experience with MNE, Braindecode, scikit-learn, NumPy/SciPy, or similar tools
Ideally, you have:
Experience with transformers, self-supervised learning, representation learning, foundation models, or multimodal models for neural or sensor data
Experience translating research into products or deployed systems
Experience working in a fast-moving startup or research-to-product environment
In case of any doubts or questions, please contact - [email protected]



