Tags
Language
Tags
June 2025
Su Mo Tu We Th Fr Sa
1 2 3 4 5 6 7
8 9 10 11 12 13 14
15 16 17 18 19 20 21
22 23 24 25 26 27 28
29 30 1 2 3 4 5
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    https://sophisticatedspectra.com/article/drosia-serenity-a-modern-oasis-in-the-heart-of-larnaca.2521391.html

    DROSIA SERENITY
    A Premium Residential Project in the Heart of Drosia, Larnaca

    ONLY TWO FLATS REMAIN!

    Modern and impressive architectural design with high-quality finishes Spacious 2-bedroom apartments with two verandas and smart layouts Penthouse units with private rooftop gardens of up to 63 m² Private covered parking for each apartment Exceptionally quiet location just 5–8 minutes from the marina, Finikoudes Beach, Metropolis Mall, and city center Quick access to all major routes and the highway Boutique-style building with only 8 apartments High-spec technical features including A/C provisions, solar water heater, and photovoltaic system setup.
    Whether for living or investment, this is a rare opportunity in a strategic and desirable location.

    Machine Learning (Python) For Neuroscience Practical Course

    Posted By: ELK1nG
    Machine Learning  (Python) For Neuroscience Practical Course

    Machine Learning (Python) For Neuroscience Practical Course
    Published 6/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 567.92 MB | Duration: 1h 2m

    Specially applied course for Machine Learning with Python for Neuroscience, short way to start use EEG in life

    What you'll learn

    Understanding Machine Learning for EEG feature extraction

    Python Programming for Machine Learning : Learners will receive scripts in Python for machine learning tasks

    ML for EEG Data: Learners will acquire the skills to make feature extraction from EEG data

    Applying Advanced Machine Learning Methods: Learners will be able to apply advanced ML methods with scikit-learn

    Requirements

    Knowledge of working with Python, Numpy, Pandas, Scipy etc

    Gmail

    Knowledge of signal processing for neuroscience

    Knowledge of Machine Learning

    Knowledge about neuroscience

    Description

    Lecture 1: IntroductionHere you will find a short introduction to the course. We outline the objectives, structure, and practical outcomes. This sets the stage for hands-on experience in machine learning with EEG signals.Lecture 2: Connect to Google ColabThis chapter provides a step-by-step guide on how to connect to and work in Google Colab. You’ll learn how to set up your environment, install required libraries, and ensure you are ready to run the code examples provided throughout the course.Lecture 3: Hardware for Brain-Computer InterfaceThis chapter covers the essential hardware used in EEG-based brain-computer interfaces. Lecture 4: Data EvaluationWe dive into evaluating the quality of your EEG data. This chapter explores techniques to inspect, clean, and annotate EEG recordings, ensuring that your data is reliable before moving forward with analysis or machine learning tasks.Lecture 5: Prepare the DatasetLearn how to transform raw EEG signals into structured datasets suitable for machine learning. This chapter includes labeling, segmenting, and feature extraction techniques—critical steps for successful model training and testing.Lecture 6: Machine Learning for Stress Detection via EEGThis is the core of the course. You’ll learn how to apply machine learning algorithms to classify stress states from EEG data. This includes model selection, training pipelines, and evaluation metrics using libraries such as Scikit-learn and TensorFlow.Lecture 7: Hyperparameter TuningImproving your model’s performance requires fine-tuning. This chapter covers strategies for hyperparameter optimization using grid search, ensuring you get the most accurate predictions from your EEG-based models.Lecture 8: Conclusion, Future Steps, and CollaborationIn the final chapter, we wrap up the course and discuss possible next steps. and opportunities to collaborate with the broader BCI and neuroscience community.

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Section 2: Lecture 2. Connect to Google Colab

    Lecture 2 Connect to Google Colab

    Section 3: Lecture 3. Hardware for Brain Computer Interface

    Lecture 3 Hardware for Brain Computer Interface

    Section 4: Lecture 4. Data Evaluation

    Lecture 4 Data Evaluation

    Section 5: Lecture 5. Prepare dataset

    Lecture 5 Prepare Dataset

    Section 6: Lecture 6. Machine Learning for stress detection via EEG

    Lecture 6 Lecture 6. Machine Learning for stress detection via EEG

    Section 7: Lecture 7. Hyperparameter tuning

    Lecture 7 Hyperparameter tuning

    Section 8: Lecture 8. Conclusion, Future steps and Collaboration

    Lecture 8 Conclusion, Future steps and Collaboration

    Individuals with a strong interest in EEG and brain-computer interfaces who want to explore the technical aspects of EEG signal processing as a hobby or personal project.,Graduate and advanced undergraduate students in fields such as neuroscience, biomedical engineering, data science, and psychology, as well as educators looking to integrate EEG signal processing into their curriculum.,Data Scientists and Machine Learning Practitioners: Those who are interested in applying data science and machine learning techniques to biosignals, with a specific focus on EEG data.,Biomedical Engineers and Technologists: Individuals working in the biomedical field who need to process and analyze EEG data as part of their work in developing medical devices or diagnostics.,Neuroscientists and Researchers: Professionals and academics who want to leverage Python for analyzing EEG data to advance their research in neuroscience and related fields.