Introduction: David Hundley is a Machine Learning Engineer who has been deeply involved with experimenting with Large Language Models (LLMs). Follow along on his twitter
Key Insights & Discussions:
-
Discoveries with LLMs:
- David recently explored a unique function of LLMs that acted as a 'dummy agent'. This function would prompt the LLM to search the internet for a current movie, bypassing its training limitations.
- David attempted to utilize this function to generate trivia questions, envisaging a trivia game powered by the LLM. However, he faced challenges in getting the agent to converge on the desired output. Parsing the LLM's responses into a structured output proved especially difficult.
-
Autonomous Agents & AGI:
- David believes that AGI (Artificial General Intelligence) essentially comprises autonomous agents. The prospect of these agents executing commands directly on one's computer can be unnerving.
- However, when LLMs run code, they operate within a contained environment, ensuring safety.
-
Perceptions of AI:
- There's a constant cycle of learning and revisiting motivations and goals in the realm of AI.
- David warns against anthropomorphizing LLMs, as they don't possess human motivations. He stresses that the math underpinning AI doesn't align with human emotions or motivations.
-
Emergent Behavior & Consciousness:
- David postulates that everything in the universe sums up to a collective result. There's debate over whether living organisms possess true consciousness, and what it means for AGI.
- The concept of AGI emulating human intelligence is complex. The human psyche is shaped by countless historical experiences and stimuli. So, if AGI were to truly replicate human thought, it would require vast amounts of multimodal input.
- A challenging question raised is how one tests for consciousness in AGI. David believes that as we continue to push technological boundaries, our definition of consciousness will keep shifting.
-
Rights & Ethics of AI:
- With advancing AI capabilities, the debate around the rights of AI entities intensifies.
- David also touches upon the topic of transhumanism, discussing the trajectory of the universe and the evolution of humans. He contemplates the potential paths of evolution, like physically merging with technology or digitizing our consciousness.
-
AI's Impact on Coding & Jobs:
- David reflects on the early days of AI in coding. He acknowledges the transformative potential of AI in the field but remains unworried about AI taking over his job. Instead, he focuses on how AI can aid in problem-solving.
- He describes LLMs as "naive geniuses" - incredibly capable, yet still requiring guidance.
-
Open Source & OpenAI:
- David discusses the concept of open source, emphasizing the transparency it offers in understanding the data and architecture behind AI models.
- He acknowledges OpenAI's significant role in the AI landscape and predicts that plugins like ChatGPT will bridge the gap to further automation.
-
Math's Role in AI:
- The conversation delves into the importance of math in AI, with David detailing concepts like gradient descent and its role in building neural networks.
- David also touches on the evolution of AI models, comparing the capabilities of models with 70 billion parameters to those with 7 billion. He predicts that models with even more parameters, perhaps in the trillions, will emerge, further emulating human intelligence.
-
Future Prospects & Speculations:
- David muses on the future trajectory of LLMs, drawing parallels with the evolution of AlphaGo to AlphaZero.
- The episode concludes with philosophical musings on the nature of consciousness and its implications on world religions.