Data Science Conversations

著者: Damien Deighan and Philipp Diesinger
  • サマリー

  • Welcome to the Data Science Conversations Podcast hosted by Damien Deighan and Dr Philipp Diesinger. We bring you interesting conversations with the world’s leading Academics working on cutting edge topics with potential for real world impact. We explore how their latest research in Data Science and AI could scale into broader industry applications, so you can expand your knowledge and grow your career. Every 4 or 5 episodes we will feature an industry trailblazer from a strong academic background who has applied research effectively in the real world. Podcast Website: www.datascienceconversations.com
    Copyright 2024 Damien Deighan and Philipp Diesinger
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あらすじ・解説

Welcome to the Data Science Conversations Podcast hosted by Damien Deighan and Dr Philipp Diesinger. We bring you interesting conversations with the world’s leading Academics working on cutting edge topics with potential for real world impact. We explore how their latest research in Data Science and AI could scale into broader industry applications, so you can expand your knowledge and grow your career. Every 4 or 5 episodes we will feature an industry trailblazer from a strong academic background who has applied research effectively in the real world. Podcast Website: www.datascienceconversations.com
Copyright 2024 Damien Deighan and Philipp Diesinger
エピソード
  • KP Reddy: How AI is Reshaping Startup Dynamics and VC Strategies
    2024/09/24

    KP Reddy, founder and managing partner of Shadow Ventures, explains how AI is set to redefine the startup landscape and the venture capital model. KP shares his unique perspective on the rapidly evolving role of AI in entrepreneurship, offering insights into:

    • GENAI adoption in large companies is still limited
    • How AI is empowering leaner, more efficient startups
    • The potential for AI to disrupt traditional venture capital strategies
    • The emergence of new business models driven by AI capabilities
    • Real-world applications of AI in industries like construction, life sciences, and professional services

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    1 時間 2 分
  • The Evolution of GenAI: From GANs to Multi-Agent Systems
    2024/08/29

    Early Interest in Generative AI

    • Martin's initial exposure to Generative AI in 2016 through a conference talk in Milano, Italy, and his early work with Generative Adversarial Networks (GANs).

    Development of GANs and Early Language Models since 2016

    • The evolution of Generative AI from visual content generation to text generation with models like Google's Bard and the increasing popularity of GANs in 2018.


    Launch of GenerativeAI.net and Online Course

    • Martin's creation of GenerativeAI.net and an online course, which gained traction after being promoted on platforms like Reddit and Hacker News.


    Defining Generative AI

    • Martin’s explanation of Generative AI as a technology focused on generating content, contrasting it with Discriminative AI, which focuses on classification and selection.


    Evolution of GenAI Technologies

    • The shift from LSTM models to Transformer models, highlighting key developments like the "Attention Is All You Need" paper and the impact of Transformer architecture on language models.


    Impact of Computing Power on GenAI

    • The role of increasing computing power and larger datasets in improving the capabilities of Generative AI


    Generative AI in Business Applications

    • Martin’s insights into the real-world applications of GenAI, including customer service automation, marketing, and software development.


    Retrieval Augmented Generation (RAG) Architecture

    • The use of RAG architecture in enterprise AI applications, where documents are chunked and queried to provide accurate and relevant responses using large language models.


    Technological Drivers of GenAI

    • The advancements in chip design, including Nvidia’s focus on GPU improvements and the emergence of new processing unit architectures like the LPU.


    Small vs. Large Language Models

    • A comparison between small and large language models, discussing their relative efficiency, cost, and performance, especially in specific use cases.


    Challenges in Implementing GenAI Systems

    • Common challenges faced in deploying GenAI systems, including the costs associated with training and fine-tuning large language models and the importance of clean data.


    Measuring GenAI Performance

    • Martin’s explanation of the complexities in measuring the performance of GenAI systems, including the use of the Hallucination Leaderboard for evaluating language models.


    Emerging Trends in GenAI

    • Discussion of future trends such as the rise of multi-agent frameworks, the potential for AI-driven humanoid robots, and the path towards Artificial General Intelligence (AGI).


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    43 分
  • Future AI Trends: Strategy, Hardware & AI Security at Intel
    2024/07/24

    In this episode, we sit down with Steve Orrin, Federal Chief Technology Officer at Intel Corporation. Steve shares his extensive experience and insights on the transformative power of AI and its parallels with past technological revolutions. He discusses Intel’s pioneering role in enabling these shifts through innovations in microprocessors, wireless connectivity, and more.

    Steve highlights the pervasive role of AI in various industries and everyday technology, emphasizing the importance of a heterogeneous computing architecture to support diverse AI environments. He talks about the challenges of operationalizing AI, ensuring real-world reliability, and the critical need for robust AI security. Confidential computing emerges as a key solution for protecting AI workloads across different platforms.

    The episode also explores Intel’s strategic tools like oneAPI and OpenVINO, which streamline AI development and deployment. This episode is a must-listen for anyone interested in the evolving landscape of AI and its real-world applications.

    Intel's Legacy and Technological Revolutions

    • Historical parallels between past tech revolutions (PC era, internet era) and current AI era.
    • Intel's contributions to major technological shifts, including the development of wireless technology, USB, and cloud computing.

    AI's Current and Future Landscape

    • AI's pervasive role in everyday technology and various industries.
    • Importance of computing hardware in facilitating AI advancements.
    • AI's integration across different environments: cloud, network, edge, and personal devices.

    Intel's Approach to AI

    • Focus on heterogeneous computing architectures for diverse AI needs.
    • Development of software tools like oneAPI and OpenVINO to enable cross-platform AI development.

    Challenges and Solutions in AI Deployment

    • Scaling AI from lab experiments to real-world applications.
    • Ensuring AI security and trustworthiness through transparency and lifecycle management.
    • Addressing biases in AI datasets and continuous monitoring for maintaining AI integrity.

    AI Security Concerns

    • Protection of AI models and data through hardware security measures like confidential computing.
    • Importance of data privacy and regulatory compliance in AI deployments.
    • Emerging threats such as AI model poisoning, prompt injection attacks, and adversarial attacks.

    Innovations in AI Hardware and Software

    • Confidential computing as a critical technology for securing AI.
    • Research into using AI for chip layout optimization and process improvements in various industries.
    • Future trends in AI applications, including generative AI for fault detection and process optimization.

    Collaboration and Standards in AI Security

    • Intel's involvement in developing industry standards and collaborating with competitors and other stakeholders.
    • The role of industry forums and standards bodies like NIST in advancing AI security.

    Advice for Aspiring AI Security Professionals

    • Importance of hands-on experience with AI technologies.
    • Networking and collaboration with peers and industry experts.
    • Staying informed through industry news, conferences, and educational resources.

    Exciting Developments in AI

    • Fusion of multiple AI applications for complex problem-solving.
    • Advancements in AI hardware, such as AI PCs and edge devices.

    • Potential transformative impacts of AI on everyday life and business operations.


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    1 時間 3 分

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