History of Generative AI Tutorial

Let's explore together the captivating evolution of generative AI. From its humble beginnings in the 1950s, through the era of neural networks in the 1980s, the explosion of Big Data at the turn of the millennium, to the rise of GANs and major advancements in the 2020s.

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Objectifs :

This document aims to provide a comprehensive overview of the history and evolution of generative AI, highlighting key developments, concepts, and implications for the future.


Chapitres :

  1. Introduction to Generative AI
    Generative AI represents a significant advancement in artificial intelligence, evolving from early concepts of machine learning to complex systems capable of creating content. This document explores the historical context and key milestones that have shaped generative AI.
  2. The Early Days of AI Research
    In the early stages of artificial intelligence research, pioneers aimed to create machines that could simulate human thought processes. They sought to develop systems that could think, learn, and evolve rather than merely execute predefined tasks. This ambition led to fundamental questions about machine cognition, such as: - Can a machine think? - Can it learn like a child? These inquiries guided AI research for decades, laying the groundwork for future innovations.
  3. The Revival of Neural Networks in the 1980s
    The 1980s marked a resurgence in AI, particularly with the advent of neural networks. Inspired by the human brain's structure, these networks aimed to replicate how neurons process and transmit information. Despite limited computational resources, researchers believed that this approach could lead to more advanced AI systems. Key characteristics of neural networks include: - Digital imitation of the human brain - Processing information through artificial neurons - Learning from data rather than following rigid programming rules This period initiated a revolution in AI, allowing machines to learn from experiences.
  4. The Impact of Big Data and Deep Learning in the 2000s
    The 2000s represented a turning point for AI, driven by the explosion of the Internet and the availability of vast amounts of data. Coupled with advancements in computing power, this era saw the rise of deep learning, characterized by: - Deep neural networks with multiple layers - Enhanced capabilities for processing large datasets - Applications in voice recognition, automatic translation, and image detection AI transitioned from a research tool to a transformative technology in everyday life.
  5. The Emergence of Generative Adversarial Networks (GANs)
    In the 2010s, Generative Adversarial Networks (GANs) emerged, allowing AI to generate creative content across various mediums. GANs operate by: - Utilizing two networks: one generates content, while the other evaluates its quality - Engaging in an iterative process to improve output Dr. Ian Goodfellow, recognized as the pioneer of GANs, introduced this concept in 2014, revolutionizing deep learning and generative AI. The creations produced by GANs, such as: - Imaginary landscapes - Unique works of art - Music compositions have sparked discussions about the nature of creativity and the role of machines in artistic expression.
  6. The Consolidation of Generative AI in the 2020s
    The 2020s solidified the era of generative AI, with advancements in computing power, particularly through GPUs and cloud infrastructures. Notable models like GPT-3 and GPT-4 emerged, showcasing: - The ability to generate text, music, and designs with remarkable accuracy - Versatility in applications ranging from writing to programming These developments have expanded the boundaries of what AI can achieve, making it an invaluable tool for creators and researchers worldwide.
  7. Conclusion and Future Perspectives
    Generative AI has evolved dramatically over the past few decades, transforming our interaction with technology and challenging our perceptions of creativity and innovation. As we look to the future, generative AI is poised to continue evolving, surprising us and redefining the limits of what machines can accomplish. This ongoing journey invites us to explore the fascinating world of AI and its implications for society.

FAQ :

What is generative AI?

Generative AI refers to algorithms that can create new content, such as text, images, or music, by learning from existing data. It includes technologies like Generative Adversarial Networks (GANs) and models like GPT.

How do neural networks work?

Neural networks consist of layers of interconnected nodes (neurons) that process input data. Each neuron receives information, processes it, and passes it to the next layer, allowing the network to learn from examples.

What are the applications of deep learning?

Deep learning is used in various applications, including image and speech recognition, natural language processing, and autonomous systems. It enables machines to learn from large amounts of data and improve their performance over time.

What are the ethical implications of AI?

The rise of AI raises ethical questions about creativity, authorship, and the potential impact on jobs and society. It challenges our understanding of what it means to be creative and the role of machines in our lives.

Who is Ian Goodfellow?

Ian Goodfellow is a prominent researcher in the field of AI, known for introducing Generative Adversarial Networks (GANs) in 2014. His work has significantly influenced the development of generative AI technologies.


Quelques cas d'usages :

Content Creation

Generative AI can be used by writers and marketers to create articles, social media posts, and marketing materials quickly and efficiently, allowing for more creative freedom and faster turnaround times.

Art and Design

Artists and designers can leverage GANs to generate unique artworks or design concepts, providing inspiration and new ideas that push the boundaries of traditional creativity.

Voice Recognition Systems

AI technologies, particularly deep learning models, are used in voice recognition systems to improve accuracy in understanding and processing spoken language, enhancing user experience in applications like virtual assistants.

Automated Translation

Generative AI models can facilitate real-time translation services, making communication across different languages more accessible and efficient, which is particularly useful in global business environments.

Game Development

Game developers can utilize generative AI to create dynamic and responsive game environments, characters, and narratives, enhancing player engagement and experience.


Glossaire :

Artificial Intelligence (AI)

A branch of computer science focused on creating systems capable of performing tasks that typically require human intelligence, such as learning, reasoning, and problem-solving.

Neural Networks

Computational models inspired by the human brain, consisting of interconnected nodes (neurons) that process information and learn from data.

Deep Learning

A subset of machine learning that uses neural networks with many layers (deep networks) to analyze various forms of data, enabling complex pattern recognition.

Generative Adversarial Networks (GANs)

A class of AI algorithms that generate new content by having two networks compete against each other: one creates content while the other evaluates its quality.

Big Data

Extremely large data sets that can be analyzed computationally to reveal patterns, trends, and associations, especially relating to human behavior and interactions.

GPT (Generative Pre-trained Transformer)

A type of AI model designed for natural language processing tasks, capable of generating human-like text based on the input it receives.

Ethical Questions in AI

Concerns regarding the implications of AI technologies on society, including issues of creativity, authorship, and the potential for machines to replicate human-like qualities.

00:00:04
To understand generative AI,
00:00:05
let's dive into its history.
00:00:07
The early researchers in artificial
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intelligence were driven by a bold
00:00:12
vision to build machines capable of
00:00:14
simulating human thought processes.
00:00:16
They were not content with creating
00:00:18
programs to execute specific tasks.
00:00:20
They wanted these machines to think,
00:00:22
learn and evolve.
00:00:23
This ambition, although complex, was the
00:00:26
driving force behind many innovations.
00:00:29
The first AI models were rudimentary,
00:00:31
but they raised fundamental questions.
00:00:34
Can a machine think?
00:00:35
Can it learn like a child?
00:00:38
These questions guided
00:00:39
AI research for decades.
00:00:41
The 1980s marked a revival in the
00:00:43
field of artificial intelligence,
00:00:45
the era of neural networks.
00:00:48
Inspired by biology and the
00:00:50
workings of the human brain,
00:00:51
these networks attempted to replicate how
00:00:54
our neurons process and transmit information.
00:00:57
Despite limited resources
00:00:58
and less powerful computers,
00:01:00
researchers persevered,
00:01:01
convinced that this approach could lead
00:01:03
to more advanced and adaptable AI.
00:01:06
This was the beginning of a revolution where
00:01:08
AI was no longer just following rigid rules,
00:01:11
but learning from data,
00:01:13
just like a brain learns from
00:01:15
its experiences.
00:01:16
Neural networks are at the
00:01:18
heart of many advances in AI.
00:01:20
Imagine them as a digital
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imitation of the human brain.
00:01:24
Each artificial neuron,
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or node receives information,
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processes it, and then transmits it
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to other neurons through connections,
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just like our biological
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neurons do with synapses.
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Initially,
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these networks were simple,
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with few layers of neurons,
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but the idea was revolutionary.
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Rather than explicitly programming
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a machine to perform a task,
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why not train it by providing examples?
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Just like teaching a child,
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this data hungry and computationally
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intensive learning approach paved the way for
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machines capable of learning on their own.
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The 2000s marked a turning point
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for artificial intelligence.
00:02:01
With the explosion of the Internet,
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a phenomenal amount of data
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became accessible.
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These data,
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coupled with significant
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advances in computing power,
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provided fertile ground for AI.
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Algorithms evolved,
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becoming more sophisticated and capable of
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processing increasingly large data sets.
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This was the era of deep learning,
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where neural networks became
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deep with many layers,
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enabling feats unimaginable a decade earlier.
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Big data became the fuel for AI companies,
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and researchers quickly
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realized the potential of data.
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In training more powerful AI models,
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applications like voice recognition,
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automatic translation,
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and image detection became
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possible and efficient.
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AI was no longer just a research tool.
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It began to transform our daily lives,
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making technologies more intuitive
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and tailored to our needs.
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The 2010 S saw the emergence of Gans,
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or Generative Adversarial Networks.
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These algorithms allowed AI to
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generate creative content from
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images to sounds and even texts.
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Jans work by pitting 2 networks
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against each other.
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One generates content while the
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other evaluates its quality.
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This iterative process has enabled
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the creation of high quality works,
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sometimes indistinguishable
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from those created by humans.
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Dr.
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Ian Goodfellow is widely recognized
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as the pioneer of Gans.
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In 2014,
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while a doctoral student,
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Goodfellow introduced the concept
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of Jans in a paper and since then
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this approach has revolutionized
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the field of deep
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learning and generative AI.
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Since the introduction of Jans,
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many researchers and institutions
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have contributed to their
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development and refinement,
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but Goodfellow is often cited as the
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father of Gans due to his crucial role in
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their creation and initial popularization.
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The creations generated by Gans have
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fascinated the world faces of people who
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never existed, imaginary landscapes,
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unique works of art and even music.
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These advances have raised ethical
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and philosophical questions.
00:04:03
What is creativity?
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Can a machine be considered creative?
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As AI continues to evolve,
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it challenges our understanding of creation,
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art, and innovation.
00:04:14
The 2020 S consolidated
00:04:16
the era of generative AI.
00:04:19
With advances in computing power,
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notably through GPUs and
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cloud infrastructures,
00:04:24
AI models became larger and more complex.
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This was the time when models
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like GPT 3 and GPT 4 emerged.
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Capable of generating text,
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music, designs, and much more.
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With astonishing accuracy and nuance,
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these new AI models demonstrated
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unprecedented versatility.
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Whether for writing articles,
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designing objects,
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or even programming,
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their ability to understand and
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generate content pushed the boundaries
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of what we thought possible.
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AI has become a valuable tool for creators,
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engineers, and researchers around the world.
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In just a few decades,
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generative AI has evolved from simple
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experiments in laboratories to a force
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that profoundly shapes our world.
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It has transformed how we interact
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with technology, how we create,
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and how we perceive the boundary
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between man and machine.
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As we look to the future,
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one thing is certain,
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generative AI will continue to evolve,
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surprise, and redefine our limits.
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Stay with us to explore more
00:05:23
of this fascinating world.

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00:00:04
Para entender a IA generativa,
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Vamos mergulhar na sua história.
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Os primeiros pesquisadores em artificial
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a inteligência foi impulsionada por uma ousadia
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visão para construir máquinas capazes de
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simulação de processos de pensamento humano.
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Não se contentaram em criar
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programas para executar tarefas específicas.
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Eles queriam que essas máquinas pensassem,
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aprender e evoluir.
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Esta ambição, apesar de complexa, era a
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força motriz por detrás de muitas inovações.
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Os primeiros modelos de IA eram rudimentares,
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Mas levantaram questões fundamentais.
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Uma máquina pode pensar?
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Pode aprender como uma criança?
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Estas perguntas orientaram
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Investigação em IA há décadas.
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A década de 1980 marcou um renascimento na
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domínio da inteligência artificial,
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A era das redes neurais.
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Inspirado pela biologia e pelo
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funcionamento do cérebro humano,
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estas redes tentaram replicar como
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Os nossos neurónios processam e transmitem informação.
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Apesar dos recursos limitados
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e computadores menos potentes,
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os investigadores perseveraram,
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convictos de que esta abordagem poderia conduzir
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para uma IA mais avançada e adaptável.
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Este foi o início de uma revolução onde
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A IA já não estava apenas a seguir regras rígidas,
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mas aprendendo com os dados,
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assim como um cérebro aprende com
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suas experiências.
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As redes neurais estão na
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coração de muitos avanços em IA.
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Imagine-os como um digital
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imitação do cérebro humano.
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Cada neurónio artificial,
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ou nó recebe informações,
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processa-o e, em seguida, transmite-o
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a outros neurónios através de ligações,
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assim como o nosso biológico
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os neurónios fazem com sinapses.
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Inicialmente,
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estas redes eram simples,
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com poucas camadas de neurónios,
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Mas a ideia era revolucionária.
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Em vez de programar explicitamente
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uma máquina para executar uma tarefa,
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Por que não treiná-lo dando exemplos?
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Assim como ensinar uma criança,
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estes dados famintos e computacionalmente
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A abordagem de aprendizagem intensiva abriu caminho para
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máquinas capazes de aprender por conta própria.
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Os anos 2000 marcaram um ponto de viragem
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para a inteligência artificial.
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Com a explosão da Internet,
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uma quantidade fenomenal de dados
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tornou-se acessível.
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Estes dados,
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juntamente com
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avanços no poder de computação,
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proporcionou um terreno fértil para a IA.
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Os algoritmos evoluíram,
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tornar-se mais sofisticado e capaz de
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processamento de conjuntos de dados cada vez maiores.
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Esta era a era do deep learning,
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onde as redes neurais se tornaram
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profundo com muitas camadas,
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possibilitando feitos inimagináveis uma década antes.
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Big data tornou-se o combustível para as empresas de IA,
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e investigadores rapidamente
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percebeu o potencial dos dados.
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No treinamento de modelos de IA mais poderosos,
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aplicações como reconhecimento de voz,
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tradução automática,
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e a deteção de imagens tornou-se
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possível e eficiente.
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A IA deixou de ser apenas uma ferramenta de investigação.
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Começou a transformar o nosso quotidiano,
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Tornar as tecnologias mais intuitivas
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e adaptado às nossas necessidades.
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O S de 2010 viu o surgimento de Gans,
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ou Redes Generativas Contraditórias.
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Esses algoritmos permitiram que a IA
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gerar conteúdo criativo a partir de
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imagens a sons e até textos.
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Jans trabalho pitting 2 redes
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uns contra os outros.
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Um gera conteúdo enquanto o
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outro avalia a sua qualidade.
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Este processo iterativo permitiu
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a criação de obras de elevada qualidade,
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por vezes indistinguível
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daqueles criados por seres humanos.
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O dr.
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Ian Goodfellow é amplamente reconhecido
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como o pioneiro de Gans.
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Em 2014,
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enquanto estudante de doutoramento,
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Goodfellow introduziu o conceito
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de Jans em um jornal e desde então
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Esta abordagem revolucionou
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o campo das profundezas
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aprendizagem e IA generativa.
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Desde a introdução de Jans,
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muitos investigadores e instituições
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contribuíram para a sua
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desenvolvimento e aperfeiçoamento,
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mas Goodfellow é frequentemente citado como o
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pai de Gans devido ao seu papel crucial em
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sua criação e popularização inicial.
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As criações geradas por Gans têm
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fascinou os rostos do mundo de pessoas que
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nunca existiram, paisagens imaginárias,
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obras de arte únicas e até música.
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Estes avanços elevaram a ética
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e questões filosóficas.
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O que é criatividade?
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Uma máquina pode ser considerada criativa?
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À medida que a IA continua a evoluir,
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desafia a nossa compreensão da criação,
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arte e inovação.
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O S de 2020 consolidado
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a era da IA generativa.
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Com avanços no poder de computação,
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nomeadamente através de GPUs e
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infraestruturas de computação em nuvem,
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Os modelos de IA tornaram-se maiores e mais complexos.
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Esta era a época em que os modelos
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como GPT 3 e GPT 4 surgiram.
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Capaz de gerar texto,
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música, designs e muito mais.
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Com precisão e nuance surpreendentes,
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estes novos modelos de IA demonstrados
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versatilidade sem precedentes.
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Seja para escrever artigos,
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conceção de objetos,
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ou mesmo programação,
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a sua capacidade de compreender e
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gerar conteúdo ultrapassou os limites
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do que pensávamos ser possível.
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A IA tornou-se uma ferramenta valiosa para os criadores,
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engenheiros e investigadores de todo o mundo.
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Em apenas algumas décadas,
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A IA generativa evoluiu de uma IA simples
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experiências em laboratórios a uma força
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que molda profundamente o nosso mundo.
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Transformou a forma como interagimos
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com a tecnologia, como criamos,
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e como percebemos o limite
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entre o homem e a máquina.
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Ao olharmos para o futuro,
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Uma coisa é certa,
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a IA generativa continuará a evoluir,
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surpreender e redefinir os nossos limites.
00:05:21
Fique connosco para explorar mais
00:05:23
deste mundo fascinante.

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