Finally, the ground truth / AlexNet’s original source code is available to all. Context: AlexNet had a historic win in the 2012 ImageNet Large Scale Visual Recognition Challenge (ILSVRC), reducing error rate from 26% (previous best) to 15.3%. It’s a deep CNN with 8 layers (5 convolutional + 3 fully connected), pioneering the use of ReLU activations for faster training, dropout for regularization, and GPU acceleration for large-scale learning. This moment marked the beginning of the deep learning revolution, inspiring architectures like VGG, ResNet, and modern transformers. Code: https://github.com/computerhistory/AlexNet-Source-Code
📢 If you're looking for translating massive dataset of JSON-lines / CSV data with various set of source fields, then the following update would be relevant. So far and experimenting with adapting language specific Sentiment Analysis model, got a change to reforge and relaese bulk-translate 0.25.2. ⭐️ https://github.com/nicolay-r/bulk-translate/releases/tag/0.25.2
The update has the following major features - Supporting schemas: all the columns to be translated are now could be declared within the same prompt-style format. using json this automatically allows to map them onto output fields - The related updates for shell execution mode: schema parameter is now available alongside with just a prompt usage before.
Benefit is that your output is invariant. You can extend and stack various translators with separated shell laucnhes.
Screenshot below is the application of the google-translate engine in manual batching mode. 🚀 Performance: 2.5 it / sec (in the case of a single field translation)