Barking Up The Wrong GPTree: Building Better AI With A Cognitive Approach
May 5, 2024
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Peter Voss, a pioneer in cognitive AI, discusses the shift towards human-like intelligence in AI, emphasizing learning over statistical prediction. The podcast explores the evolution from narrow AI to AGI, contrasts generative systems with cognitive AI, and highlights the challenges and benefits of achieving human-level AGI. Voss advocates for maximizing AI capabilities, leveraging open-source resources, and prioritizing transparency and explainability in AI models.
DAGS-TUR provides a modern approach to building and managing data pipelines with declarative programming and integrated observability.
Peter Voss emphasizes the need for AGI to replicate human cognitive abilities through continuous learning and conceptualization.
Cognitive AI focuses on real-time conceptual learning, knowledge integration, and reliability to bridge the gap towards achieving true AGI.
Deep dives
DAGS-TUR Offering a New Approach to Data Platforms
DAGS-TUR provides a modern approach to building and managing data pipelines. It is an open-source orchestrator with declarative programming, integrated lineage, and observability, enabling teams to set up quickly through the DAGS-TUR Cloud. This enterprise-class solution supports serverless and hybrid deployments, enhanced security, and ephemeral test options.
Peter Voss's Mission for Human-Level Intelligence
Peter Voss, CEO of iGo.ai, is on a mission to bring human-like intelligence to AI. He emphasizes the need to move beyond traditional machine learning and focus on real artificial intelligence that can think, reason, and learn interactively. Voss envisions AGI as a way to achieve human-like cognitive capabilities through continuous learning and conceptualization.
Building Thinking Machines: AGI vs Conventional AI
The podcast delves into the differences between artificial general intelligence (AGI) and conventional AI. AGI aims to replicate human cognitive abilities by emphasizing conceptual learning, interactive reasoning, and continuous model updates. Unlike conventional AI, AGI focuses on building thinking machines capable of conceptualizing information like humans.
Enhancing Cognitive AI: The Path to True Artificial General Intelligence
The conversation highlights the importance of cognitive AI in achieving true artificial general intelligence (AGI). By embracing real-time conceptual learning, knowledge integration, and reliability, cognitive AI aims to bridge the gap between narrow AI approaches and the overarching goal of AGI. Cognitive AI offers an alternative strategy that prioritizes cognitive understanding and continuous learning over static knowledge models.
Challenges and Considerations in Cognitive AI Development
The podcast discusses challenges and considerations in the development of cognitive AI models. It emphasizes the need for a curated curriculum to effectively train AI systems in acquiring robust knowledge and reasoning skills. The cognitive AI approach prioritizes transparency, incremental learning, and reliability, enabling AI systems to adapt, learn interactively, and access validated knowledge sources for improved decision-making and problem-solving.
Summary Artificial intelligence has dominated the headlines for several months due to the successes of large language models. This has prompted numerous debates about the possibility of, and timeline for, artificial general intelligence (AGI). Peter Voss has dedicated decades of his life to the pursuit of truly intelligent software through the approach of cognitive AI. In this episode he explains his approach to building AI in a more human-like fashion and the emphasis on learning rather than statistical prediction. Announcements
Hello and welcome to the Data Engineering Podcast, the show about modern data management
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Your host is Tobias Macey and today I'm interviewing Peter Voss about what is involved in making your AI applications more "human"
Interview
Introduction
How did you get involved in machine learning?
Can you start by unpacking the idea of "human-like" AI?
How does that contrast with the conception of "AGI"?
The applications and limitations of GPT/LLM models have been dominating the popular conversation around AI. How do you see that impacting the overrall ecosystem of ML/AI applications and investment?
The fundamental/foundational challenge of every AI use case is sourcing appropriate data. What are the strategies that you have found useful to acquire, evaluate, and prepare data at an appropriate scale to build high quality models?
What are the opportunities and limitations of causal modeling techniques for generalized AI models?
As AI systems gain more sophistication there is a challenge with establishing and maintaining trust. What are the risks involved in deploying more human-level AI systems and monitoring their reliability?
What are the practical/architectural methods necessary to build more cognitive AI systems?
How would you characterize the ecosystem of tools/frameworks available for creating, evolving, and maintaining these applications?
What are the most interesting, innovative, or unexpected ways that you have seen cognitive AI applied?
What are the most interesting, unexpected, or challenging lessons that you have learned while working on desiging/developing cognitive AI systems?
When is cognitive AI the wrong choice?
What do you have planned for the future of cognitive AI applications at Aigo?
From your perspective, what is the biggest barrier to adoption of machine learning today?
Closing Announcements
Thank you for listening! Don't forget to check out our other shows. Podcast.__init__ covers the Python language, its community, and the innovative ways it is being used. The Machine Learning Podcast helps you go from idea to production with machine learning.
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