エピソード

  • UNMASKING: This #AIResearch Paper Revealed the Impact of Bias in Facial Recognition AI
    2024/01/02

    In this episode from The Expert Voices of AI we unmask the critical findings of a pivotal #AIResearch paper: 'Gender Shades: Intersectional Accuracy Disparities in Commercial Gender Classification', authored by Dr Joy Buolamwini and Dr Timnit Gebru. This revelatory study shone a light on the often-overlooked issue of bias in facial recognition technology. #AIEthics #FacialRecognition 🔍 What's Inside: - Dive deep into the 'Gender Shades' research and explore how it revealed significant biases in commercial AI systems. - Understand the implications of these biases on different genders and ethnic groups, highlighting a crucial challenge in AI development. #TechInclusion - Discuss the broader impact of these findings on the AI community and how it's shaping the future of ethical AI development. #techethics 🌟 Why It Matters: 'Gender Shades' isn't just a research paper; it's a wake-up call for the AI industry. It emphasizes the need for more inclusive and equitable AI systems. We explore how this paper has influenced policies and practices within tech companies and sparked a global conversation about AI fairness. #diversityintech Read the Original Research Paper Below: Gender Shades: Intersectional Accuracy Disparities in Commercial Gender Classification 👥 Join the Discussion: How can the AI community work towards eliminating bias in AI? What steps should developers take to ensure ethical AI practices? 📕 Dr Joy Buolamwini published her book Unmasking AI (buy it at Amazon - NOT an affiliate link, just shortened for ease) ✨ Subscribe to TEVO.AI for more insightful breakdowns of AI research papers. Stay ahead in the rapidly evolving world of AI. #AIResearch #GenerativeArt #AIEthics #FacialRecognition #GenerativeAI #TEVOAI #YearOfAI #YOAI24

    続きを読む 一部表示
    11 分
  • TRANSFORMING: This #AIResearch Paper Introduced the Game-Changing Transformer Model
    2023/12/26

    In this episode, we're visually exploring the groundbreaking "Attention Is All You Need" paper, a cornerstone in modern AI research that has revolutionized natural language processing and introduced us to the Transformer Model.


    Be sure to subscribe to our YouTube channel, @TheExpertVociesOfAI for additional informative, entertaining and behind the scenes footage.

    The Chapter Section in this AI Research Paper are: 0:00 - Opening to the 'Attention is All You Need' AI Research Paper 00:51 - Section 1: Introduction 01:53 - Section 2: Background 03:01 - Section 3: Model Architecture 04:42 - Section 4: Why Self-Attention 05:54 - Section 5: Training 07:27 - Section 6: Results 08:41 - Section 7: Conclusion 🔍 What's Inside: Introduction: Discover how the Transformer model, born from this influential paper, reshaped our understanding of language processing, influencing tools like ChatGPT and beyond. Background: We trace the journey from traditional language models to the innovative Transformer, highlighting the limitations of earlier models and the challenges they faced. Model Architecture: A deep dive into the Transformer model. Learn about its unique self-attention mechanism, encoder-decoder architecture, and how it revolutionizes parallel processing in AI. Why Self-Attention Matters: Uncover the brilliance of self-attention and how it grants Transformers a comprehensive understanding of language, setting new benchmarks in AI. Training Techniques: We explore the intricacies of training the Transformer, discussing data batching, hardware requirements, optimization strategies, and regularization techniques. Impactful Results: Witness the transformative effects of the Transformer across various AI applications, from machine translation to creative text generation. Conclusion: Reflect on the lasting impact of the Transformer model in AI, its applications in various fields, and a peek into the future it's shaping. Read the Original Research Paper Below: Attention is All You Need 👉🏾 https://arxiv.org/abs/1706.03762 🌟 Stay Engaged: Don't forget to like, subscribe, and hit the bell icon for updates on future content! #AI #MachineLearning #NaturalLanguageProcessing #TransformerModel #ChatGPT #GoogleTech #TEVOAI #GoogleBERT #ArtTech #VSEX #VisuallyStimulatingExperience #AIResearch

    続きを読む 一部表示
    10 分
  • WEIGHTING: This #AIResearch Paper Innovated Neural Network Training Efficiency
    2023/12/24

    In our second episode from 'The Expert Voices of AI,' join us as we delve into OpenAI's FIRST-EVER published research paper, 'Weight Normalization: A Simple Reparameterization to Accelerate Training of Deep Neural Networks.' authored by AI Experts Tim Salimans and Diederik P. Kingma. Published on 25th February 2016, this groundbreaking work introduced a method to speed up and enhance the efficiency of AI learning. Watch this 10 minute AI Research Paper Visualisation to learn more.


    The Chapter Section in this AI Research Paper are: 0:00 - Introduction to the Weight Normalization: A Simple Reparameterization to Accelerate Training of Deep Neural Networks AI Research Paper 01:46 - Section 1: Introduction 02:50 - Section 2: Weight Normalization 04:18 - Section 3: Data-Dependant Initialization 05:39 - Section 4: Mean-only Batch Normalization 06:46 - Section 5: Experiments 08:59 - Section 6: Conclusion From the intriguing concepts of weight normalization and mean-only batch normalization to data-dependent initialization of parameters, we dissect each aspect with clear, visual explanations. Dive into the paper's experiments across various AI domains, such as image classification and game-playing AI, and see how a simple change can significantly boost AI performance. Our journey doesn't just explore the technicalities; it reflects on the paper's profound impact on the AI community and its contributions to advancing deep learning. Read the Original Research Paper Below: Weight Normalization: A Simple Reparameterization to Accelerate Training of Deep Neural Networks #WeightNormalization #OpenAI #DeepLearning #AIResearch #MachineLearning #NeuralNetworks #TechInnovation #DataScience #ArtificialIntelligence #googlegemini #phd #phdresearch #tevoai #AIForEveryone #ArtTech #AIEd #AIEducation

    続きを読む 一部表示
    10 分
  • THINKING: Can Machines Think? RIP to One of the Founding Fathers of AI
    2023/12/23

    In our first Episode of The Expert Voices of AI, we unpack the remarkable story of a 73-year-old research paper that not only predicted but also pioneered the world of Artificial Intelligence as we know it today. It was written by Alan Turing OBE.


    This isn't just a history lesson; it's a journey through the visionary mind of a genius who foresaw the AI revolution decades before it happened. From the inception of the Turing Test to the philosophical questions about machine intelligence, we unravel how this groundbreaking paper laid the foundation for AI and continues to influence our understanding of technology and consciousness. Whether you're a PhD student looking for inspiration, an AI enthusiast, a Developer, or just curious about the AI origin story, this video is a must-watch. Dive in and discover how the past shapes our technological future. Read the Original Research Paper Below - Computing Machinery and Intelligence: From Oxford Academic - Mind Volume LIX, Issue 236, October 1950, Pages 433–460 From The Turing Digital Archive #ArtificialIntelligence #AITechnology #TechHistory #TuringTest #AlanTuring #AIRevolution #FutureOfAI #TechInnovation #AIExplained #DigitalWorld #TechInsights #Phd #researchpaper #AIEducation #AIEd #VisuallyStimulatingExperience #VSEX

    続きを読む 一部表示
    12 分