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Popular repositories Loading

  1. Modeling-Tumor-Escape-Mechanisms-for-DC-Based-Immunotherapy-Insights-into-the-Role-of-Hypoxia-and-A Modeling-Tumor-Escape-Mechanisms-for-DC-Based-Immunotherapy-Insights-into-the-Role-of-Hypoxia-and-A Public

    Modeling Tumor Escape Mechanisms for DC-Based Immunotherapy

    MATLAB

  2. Linear-Regression-Gradient-Descent Linear-Regression-Gradient-Descent Public

    A simple implementation of Linear Regression using NumPy and Matplotlib

    Jupyter Notebook

  3. multi-linear-regression multi-linear-regression Public

    A basic implementation of multi linear regression using gradient descent. Synthetic housing price data is generated based on area and number of rooms. Includes data visualization and model training…

    Jupyter Notebook

  4. Mnist_Data Mnist_Data Public

    A simple implementation of a deep neural network (DNN) to classify handwritten digits from the MNIST dataset using TensorFlow and Keras. The model consists of a flattening layer, a hidden dense lay…

    Jupyter Notebook

  5. mnist_digit_recognition.py mnist_digit_recognition.py Public

    MNIST digit recognition implemented from scratch with NumPy, featuring customizable neuron count and learning rate.

    Jupyter Notebook

  6. mnist-leaky-relu-nn mnist-leaky-relu-nn Public

    A simple neural network implemented from scratch using NumPy to classify MNIST handwritten digits. Uses Leaky ReLU activation and softmax for output.

    Jupyter Notebook