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Coding the Brain: AI & Machine Learning for BCIs
Last updated 12/2025
Duration: 5h 47m | .MP4 1280x720 30fps(r) | AAC, 44100Hz, 2ch | 4.05 GB
Genre: eLearning | Language: English
Hands-on deep learning for brain-computer interfaces using EEGNet and real motor imagery EEG data
What you'll learn
- Decode real EEG signals using modern preprocessing techniques such as filtering, epoching, artifact removal, and frequency-band analysis.
- Build deep-learning BCI models, including EEGNet and other architectures optimized for motor imagery, cognitive state detection, and real-time prediction.
- Implement complete BCI pipelines - from dataset loading and feature extraction to model training, evaluation, and deployment.
- Develop real-time BCI applications using BrainFlow, LSL, and edge devices for interactive control, neurofeedback, and mind-controlled interfaces.
- Optimize machine learning models for real-time scenarios through quantization, pruning, lightweight architectures, and latency-aware design.
- Deploy BCI models on-device for portable and low-latency brain-computer interaction with Jetson Nano, Raspberry Pi, and mobile platforms.
Requirements
- Basic Python knowledge (variables, functions, simple scripts)
- Familiarity with machine learning fundamentals (train/test split, accuracy, basic model training) - helpful but not required
- A computer capable of running Python, TensorFlow/Keras, and MNE
Description
"This course contains the use of artificial intelligence"
Unlock the power ofbrain-computer interfaces (BCIs)by learning how to decode human intention directly fromEEG signalsusingEEGNet, one of the most widely adopted deep-learning models in neurotechnology. This hands-on course teaches you how to build a completeMotor Imagery Classificationpipeline-from loading real EEG datasets to training, evaluating, and deploying a fully functional model.
You will work extensively with theBNCI-Horizon 004 (BCI Competition IV 2a)dataset, a gold-standard benchmark used in academic research and industry. You'll learn how to performsignal preprocessing, includingbandpass filtering,epoch creation, andstandardization, followed by constructing a full training workflow usingTensorFlow/Keras. The course also coversmodel optimization,performance evaluation, and interpreting neural patterns that distinguish left-hand, right-hand, feet, and both-hands imagery tasks.
Beyond training EEGNet, you will gain practical experience inreal-time BCI concepts, enabling you to extend your model toward interactive control systems. The step-by-step practical labs ensure you not only understand the theory but also build a working BCI system from scratch.
By the end of this course, you will be able to confidently preprocess EEG data, train and validate deep-learning models formotor imagery, and understand how BCIs transform neural activity into real-world applications such asprosthetics,gaming,assistive robotics, andneurofeedback systems.
This course is ideal for anyone interested inAI,neuroscience,machine learning, orhuman-computer interaction, and requires no prior experience with BCI systems.
Who this course is for:
- Aspiring BCI developers and AI enthusiasts who want hands-on experience with real EEG datasets and deep learning models like EEGNet.
- Machine learning and deep learning learners looking to expand into neural signal processing and neurotechnology.
- Software engineers and hobbyists interested in building brain-controlled apps, games, robotics, or real-time focus/attention tools.
- Neuroscience or cognitive science students who want practical coding experience instead of purely theoretical knowledge.
- Researchers and practitioners seeking a structured, end-to-end workflow for EEG preprocessing, feature extraction, and real-time model deployment.
More Info
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