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AlexNet

A rede neural convolucional que venceu a competição ImageNet 2012 por uma margem massiva, desencadeando a revolução do deep learning. Criada por Alex Krizhevsky, Ilya Sutskever e Geoffrey Hinton, AlexNet reduziu a taxa de erro de classificação de imagens de 26% para 16% — um gap tão grande que convenceu a comunidade de visão computacional de que deep learning era fundamentalmente superior a features feitas à mão.

Por que importa

AlexNet é o momento “antes e depois” na história da IA. Antes de 2012, a maioria dos pesquisadores IA trabalhava em feature engineering e métodos não-neurais. Depois do AlexNet, deep learning se tornou o paradigma dominante. Cada sistema IA moderno — GPT, Claude, Stable Diffusion — traça sua linhagem à mudança de paradigma que o AlexNet desencadeou. É o Big Bang da IA moderna.

Deep Dive

AlexNet's architecture was relatively simple by modern standards: 5 convolutional layers, 3 fully connected layers, ReLU activation, max pooling, and dropout. The total parameter count was ~60 million. What made it special was training on GPUs (two GTX 580s with 3GB VRAM each — tiny by today's standards), using data augmentation, and being applied to ImageNet's 1.2 million training images — a scale that previous neural approaches hadn't attempted.

The Three Key Ingredients

AlexNet's success came from three things that are now obvious but were revolutionary in 2012: (1) large dataset (ImageNet, 1.2M images), (2) GPU training (making the computation feasible), and (3) deep architecture with ReLU (avoiding the vanishing gradient problem that had limited earlier networks). These three ingredients — data, compute, and architectural innovation — remain the recipe for AI breakthroughs today, just at a much larger scale.

The Aftermath

AlexNet's impact was immediate and permanent. Within a year, every competitive ImageNet entry was a deep CNN. Within three years, VGGNet and GoogLeNet pushed deeper. ResNet (2015) reached 152 layers. The computer vision community pivoted almost entirely to deep learning, and the approach spread to NLP (word embeddings, then RNNs, then Transformers), speech, and eventually every AI domain. The co-author Ilya Sutskever went on to co-found OpenAI.

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