History of Generative AI Video
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.
- 5:27
- 1522 views
-
Societal Implications of Generative AI
- 5:58
- Viewed 1672 times
-
Adaptation Strategies for Organizations and Individuals
- 3:49
- Viewed 1436 times
-
What is Generative AI ?
- 2:40
- Viewed 1580 times
-
The Impact of Generative AI on Truth and Trust
- 3:16
- Viewed 1453 times
-
Image and Video Manipulation : The Impact of Deepfakes
- 1:51
- Viewed 1412 times
-
Generative AI : Between Extreme Personalization and Digital Ethics
- 2:17
- Viewed 1580 times
-
Composing with AI : Exploring AIVA and Generative Music
- 2:04
- Viewed 1826 times
-
Societal Implications of Generative AI
- 5:58
- Viewed 1672 times
-
Deciphering AI-Assisted Marketing: Navigating Personalization, Ethics, and User Engagement in the Digital Age
- 5:34
- Viewed 1666 times
-
Optimizing Customer Journeys with AI: A Deep Dive
- 4:39
- Viewed 1632 times
-
AI & Education : Technological Innovation Redefining Learning
- 2:23
- Viewed 1630 times
-
What is Generative AI ?
- 2:40
- Viewed 1580 times
-
Generative AI : Between Extreme Personalization and Digital Ethics
- 2:17
- Viewed 1580 times
-
AI in Education : Technology and Innovation in Teacher Training
- 3:31
- Viewed 1568 times
-
Generative AI : Revolution, Efficiency, and Applications in the Modern World
- 1:52
- Viewed 1532 times
-
Creative Symbiosis : When Generative AI Shapes Our Future
- 3:46
- Viewed 1523 times
-
Writing with Intelligence : Exploring GPT-4's Capabilities in Generative Writing
- 2:21
- Viewed 1487 times
-
From Data to Discoveries : The Art of Innovation with Generative AI
- 4:38
- Viewed 1476 times
-
The Impact of Generative AI on Truth and Trust
- 3:16
- Viewed 1453 times
-
The Impact of AI in the World of Science
- 1:44
- Viewed 1448 times
-
Adaptation Strategies for Organizations and Individuals
- 3:49
- Viewed 1436 times
-
Image and Video Manipulation : The Impact of Deepfakes
- 1:51
- Viewed 1412 times
-
Generative AI Prompts : Harnessing the Power of Models
- 3:01
- Viewed 1399 times
-
Generative AI in Marketing : Revolutionize Your Advertising Campaigns
- 4:09
- Viewed 1392 times
-
The Essence of Generative AI in Artistic Creation
- 1:27
- Viewed 1371 times
-
Keys to Success, Pitfalls to Avoid, and Best Practices
- 2:29
- Viewed 1370 times
-
AI in Professional and Continuing Education
- 2:26
- Viewed 1350 times
-
Educational Revolution : Shaping the Future of Learning with Artificial Intelligence
- 6:39
- Viewed 1335 times
-
Discovering Plugins in Chat GPT-4 : Maximizing Generative AI's Capabilities
- 2:12
- Viewed 1322 times
-
Other Wonders of AI : The Revolution in Image Creation
- 1:19
- Viewed 1319 times
-
DALL·E : Turning Words into Artworks
- 1:18
- Viewed 1314 times
-
AI and Automated Assessment
- 4:55
- Viewed 1312 times
-
Generative AI in the Digital Space : From Ideation to Presentation
- 2:09
- Viewed 1289 times
-
AI & Education : Interactive Learning and Adaptive Assessment
- 2:55
- Viewed 1276 times
-
Exploring Innovation: Applications of Generative AI in Modern Commerce
- 3:25
- Viewed 1276 times
-
Midjourney : The Symbiosis of Imagination and AI
- 1:32
- Viewed 1267 times
-
Navigating the Neural Forest : Secrets of AI Prompts
- 2:05
- Viewed 1261 times
-
Unveiling Prompts : The Evolution and Future of Human-Machine Interaction
- 2:39
- Viewed 1256 times
-
Advanced Data Analysis with Chat GPT-4 : Unleashing the Power of Data Analysis
- 2:17
- Viewed 1141 times
-
Deep Dive into NVIDIA Omniverse in 3D Modeling
- 2:25
- Viewed 965 times
-
Shaping the Educational Future : AI, Diversity, Inclusion & Innovative Case Studies
- 3:48
- Viewed 923 times
-
Configurate a page with copilot
- 01:47
- Viewed 35 times
-
Connect Copilot to a third party app
- 01:11
- Viewed 32 times
-
Microsoft Copilot Academy
- 00:42
- Viewed 31 times
-
Use the narrative Builder
- 01:31
- Viewed 31 times
-
Share a document with copilot
- 00:36
- Viewed 27 times
-
Use the narrative Builder
- 01:31
- Viewed 31 times
-
Microsoft Copilot Academy
- 00:42
- Viewed 31 times
-
Connect Copilot to a third party app
- 01:11
- Viewed 32 times
-
Share a document with copilot
- 00:36
- Viewed 27 times
-
Configurate a page with copilot
- 01:47
- Viewed 35 times
-
Use Copilot with Right-Click
- 00:58
- Viewed 28 times
-
Draft a Service Memo with Copilot
- 02:21
- Viewed 44 times
-
Extract Invoice Data and Generate a Pivot Table
- 02:34
- Viewed 42 times
-
Summarize Discussions and Schedule a Meeting Slot
- 02:25
- Viewed 60 times
-
Formulate a Request for Pricing Conditions via Email
- 02:20
- Viewed 87 times
-
Analyze a Supply Catalog Based on Needs and Budget
- 02:52
- Viewed 88 times
-
Making changes to a text
- 00:38
- Viewed 49 times
-
Consult the adoption of Copilot through Viva Insights
- 00:52
- Viewed 64 times
-
Search from emails with Copilot
- 00:53
- Viewed 276 times
-
Using Copilot in OneNote with Right-Click
- 01:21
- Viewed 50 times
-
Organizing OneNote with Copilot
- 00:46
- Viewed 58 times
-
Tracking changes in a Loop page with Copilot
- 01:16
- Viewed 55 times
-
Summarizing a Loop Page with Copilot
- 00:55
- Viewed 50 times
-
Generating Loop Content with Copilot
- 01:18
- Viewed 48 times
-
Send invitations or reminders with Copilot
- 00:53
- Viewed 81 times
-
Generate formulas from a concept
- 01:02
- Viewed 52 times
-
Analyzing a OneDrive file with Copilot
- 01:25
- Viewed 54 times
-
Analyzing multiple OneDrive documents with Copilot
- 01:01
- Viewed 73 times
-
Survey Consumer Satisfaction Panel with ChatGPT
- 01:55
- Viewed 205 times
-
Enhance Your Product on Social Media with ChatGPT
- 02:13
- Viewed 227 times
-
Write a Product Description with ChatGPT
- 02:30
- Viewed 196 times
-
Structure Your Product Launch Project
- 01:51
- Viewed 220 times
-
Initiate a Market Research Study with ChatGPT
- 02:08
- Viewed 175 times
-
Personality and tone for a realistic rendering
- 01:18
- Viewed 314 times
-
Format and example for optimal results
- 01:50
- Viewed 311 times
-
The importance of context in your requests
- 01:44
- Viewed 315 times
-
Precise task in conversational AI
- 01:55
- Viewed 318 times
-
Basics of prompting with conversational AI
- 02:29
- Viewed 329 times
-
What is a prompt ?
- 01:14
- Viewed 316 times
-
Survey Consumer Satisfaction Panel
- 02:38
- Viewed 388 times
-
Promote Your Product on Social Networks with Copilot
- 02:41
- Viewed 340 times
-
Write a Product Description with Copilot
- 02:36
- Viewed 389 times
-
Structure Your Product Launch Project
- 02:15
- Viewed 382 times
-
Initiate a Market Study with Copilot
- 03:15
- Viewed 380 times
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 :
-
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. -
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. -
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. -
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. -
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. -
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. -
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.