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π MyTorch Refined MNIST Dataset
Curated by Aryan Singh Chandel (Shiro) at Rustamji Institute of Technology (RJIT).
This dataset contains the refined version of the MNIST handwritten digit database, specifically pre-processed for compatibility with the MyTorch deep learning framework.
ποΈ Dataset Structure
The data is stored in a compressed NumPy format (mnist_raw.npz) containing:
- X_train / y_train: 60,000 samples for training.
- X_test / y_test: 10,000 samples for final validation.
β‘ Pre-processing Specification
Every image in this dataset has undergone the following transformation logic used in the MyTorch 98.59% accuracy run:
- Flattening: $28 \times 28$ spatial grids converted to $\mathbb{R}^{784}$ feature vectors.
- Global Scaling: Pixel values $P \in [0, 255]$ normalized to $P' \in [0, 1]$ via $P' = P / 255.0$.
- Refinement: Standardized tensor shapes for high-speed matrix multiplication in NumPy-based linear layers.
π Usage
To load this dataset into your own MyTorch project:
import numpy as np
data = np.load('mnist_raw.npz')
X_train, y_train = data['X_train'], data['y_train']
π Citation If you use this refined dataset in your research, please attribute: Chandel, A. S. (2026). MyTorch: Deep Learning from Scratch at RJIT.
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