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  1. Ian J. Goodfellow (born 1987) is an American computer scientist, engineer, and executive, most noted for his work on artificial neural networks and deep learning.

  2. www.deeplearningbook.orgDeep Learning

    Ian Goodfellow and Yoshua Bengio and Aaron Courville. Exercises &nbsp Lectures &nbsp External Links &nbsp. The Deep Learning textbook is a resource intended to help students and practitioners enter the field of machine learning in general and deep learning in particular.

  3. Ian Goodfellow. DeepMind. Verified email at deepmind.com - Homepage. Deep Learning. Articles 1–20. ‪DeepMind‬ - ‪‪Cited by 290,653‬‬ - ‪Deep Learning‬.

  4. Ian Goodfellow is a leading expert in deep learning, the field of artificial intelligence that uses neural networks to model complex data. He has developed the first defenses against adversarial examples, studied the security and privacy of neural networks, and co-authored the MIT Press textbook Deep Learning.

  5. La noche que Ian Goodfellow intentaba ayudar a unos amigos con un problema, no sabía que estaba a punto de hacer uno de los mayores avances de la historia de la inteligencia artificial: las redes generativas antagónicas, que permiten a los ordenadores crear y manipular la realidad. por Martin Giles | traducido por Mariana Díaz. 02 Marzo, 2018.

  6. 6 de sept. de 2023 · Ian Goodfellow, conocido por ser el creador de las Redes Generativas Adversarias (GANs), es uno de los principales expertos en el campo de la inteligencia artificial. Con la IA generativa transformando industrias enteras, aprovechamos la oportunidad para conversar con Goodfellow sobre sus perspectivas y visiones acerca de este ...

  7. 21 de feb. de 2018 · Ian Goodfellow is a research scientist at Google Brain who invented the GAN, a technique that lets machines generate realistic images and text by themselves. Learn how he pitted neural networks against one another, how he faced the consequences of his innovation, and how he works to prevent its misuse.