Greg Brockman (OpenAI Co-founder) – AI at the Cutting Edge – MIT AI Conference 2019 (2019)
Chapters
Abstract
AI Revolution: Balancing Innovation and Responsibility
The Journey into AI: Brockman and D’Angelo’s Early Passions
Greg Brockman and Adam D’Angelo, prominent figures at OpenAI, share a common thread in their early fascination with mathematics, chemistry, and programming, which eventually steered them towards AI. D’Angelo’s initial passion for chemistry led him to create a chemistry textbook with a mathematical focus. To share his knowledge, he ventured into programming and became captivated by its ability to translate complex ideas into tangible outcomes. Inspired by Alan Turing’s 1950 paper on the Turing test, which highlighted the need for machines capable of learning beyond human comprehension, D’Angelo resolved to dedicate his life to developing machines that could learn.
Shifting Gears: From Academia to AI’s Real-World Impact
D’Angelo’s academic pursuits at Harvard and MIT pivoted towards practical AI applications, driven by a realization in 2008 that AI technologies were underperforming. His subsequent focus on startups, coinciding with the advent of deep learning around 2015, marked a transition from theoretical study to tangible societal contributions.
Deep Learning’s Resurgence and Potential
Deep learning’s rise, as observed by D’Angelo, reignited early aspirations in AI, transforming once far-fetched ideas into achievable goals. This shift indicates a profound belief in AI’s potential to benefit society at large, reinforcing D’Angelo’s commitment to its advancement.
Strategic Investment in AI: OpenAI and Microsoft’s Partnership
OpenAI’s billion-dollar backing from Microsoft raises questions about investment allocation. D’Angelo draws parallels with large-scale physics research, asserting AI’s high return on investment. The primary expenditure at OpenAI focuses on constructing massive supercomputers, validating the efficacy of scaling up systems in AI development.
Scaling vs. Research Salaries: OpenAI’s Approach
D’Angelo notes that despite significant researcher salaries, computing costs dominate OpenAI’s budget. This allocation reflects their strategy to scale AI systems, diverging from traditional academic norms of prioritizing algorithmic improvements.
Compute Scaling in Historical Context
Referencing OpenAI’s data, D’Angelo highlights the exponential growth in computing power used in AI since 2012, surpassing Moore’s Law. Historical perspectives, like those of Moravec and Rich Sutton, suggest that major AI advances are closely linked to increased computational resources.
The Bitter Lesson: Practicality in AI Development
The “Bitter Lesson,” as coined by AI researcher Rich Sutton, encapsulates the idea that AI has historically favored practical scaling over novel ideas. OpenAI’s pragmatism in focusing on larger-scale computing systems reflects a strategic shift that has shown tangible progress in AI.
GPT-2’s Ethical Dilemma: A Case Study in Responsibility
OpenAI’s decision to initially withhold the GPT-2 model underscored ethical concerns about AI’s misuse, such as generating fake news. This move sparked internal debates and a cautious policy approach, reflecting the growing emphasis on ethical considerations in AI research.
Changing AI Research Norms: The Impact of GPT-2
OpenAI’s handling of GPT-2 marks a pivotal shift towards responsible research, advocating for a staged release process that considers potential impacts. This approach influenced the wider AI community, fostering a more responsible and impact-conscious scientific process.
OpenAI 5 and Dota 2: AI in Complex Environments
OpenAI 5: Advancements and Implications in AI and Esports
Introduction to OpenAI 5: OpenAI developed an AI system, OpenAI 5, to play Dota, a highly popular video game known for its complexity, large player base, and emphasis on strategy and teamwork.
OpenAI’s Achievement in Dota: OpenAI 5 initially lost to professional players at the world championships but eventually defeated the reigning world champions. This achievement highlights the generality and adaptability of AI systems.
Broader Goals Beyond Gaming: OpenAI’s focus extends beyond gaming. The training system used for Dota was successfully applied to robotics, leading to a breakthrough in controlling a robotic hand.
Addressing the Critique of AI in Gaming: Critics argue that AI advantages in gaming are primarily due to reaction times. However, in Dota, rapid clicking is not crucial, suggesting that OpenAI 5’s success is more about strategy than reaction speed.
Public Perception of AI’s Gaming Capabilities: Initially, AI’s loss to humans was seen as a lack of strategic depth. However, upon winning, critics attributed the victory to faster reaction times. This change in perception illustrates the evolving understanding of AI’s capabilities.
Influence of AI on Human Gameplay: Intriguingly, the human team defeated by OpenAI 5 later adopted similar strategies, suggesting that AI can influence and improve human gameplay strategies.
The Influence of AI in Gaming and Beyond
OpenAI 5’s evolution from initial losses to defeating world champions in Dota 2 exemplifies AI’s growing strategic sophistication. D’Angelo highlights the bidirectional influence between AI development and human gameplay strategies, indicating a dynamic interaction between AI and human cognition.
AI Hype and Reality: Balancing Expectations
Balancing Hype and Results in AI Research
Hype and the Potential for an AI Winter: Hype surrounding AI’s potential could lead to unrealistic expectations and an AI winter similar to past setbacks.
Commercial Value Driving AI Research: Funding for AI research has shifted from academia to commercial entities, driven by the potential for commercial value and profits.
Importance of Results: Funding should be based on results and value creation, not solely on hype. Researchers should be honest about AI’s capabilities and limitations.
Calibration and Honesty: Avoiding fear of excitement over results is essential to communicate the benefits of AI.
Balancing hype with realistic expectations is crucial to avoid an AI winter. Commercial value drives research, but funding should be tied to results. Honest communication about AI’s capabilities is vital for progress and public support.
OpenAI’s Mission and Ethical Stewardship
OpenAI’s Mission and Strategy in Balancing Openness with Responsibility
Question on Openness and Release of Work: An audience member questions OpenAI’s commitment to openness and its decision not to release certain AI technologies.
OpenAI’s Founding Goal: OpenAI was founded with the aim of ensuring that advancements in general intelligence and AI would benefit everyone. The initial strategy involved inclusive development, inspired by the successes of the internet and open-source software.
Realization of Dual-Use Implications: Over time, OpenAI recognized the potential for negative applications of AI technologies. This led to a reevaluation of their strategy.
Responsibility in AI Development: Developers of powerful AI technologies have a responsibility to keep these technologies safe and secure. This responsibility has shifted OpenAI’s focus from inclusive development to ensuring that everyone benefits from AI advancements.
Structural Changes in OpenAI: In alignment with this new strategy, OpenAI transitioned from a nonprofit to a capped profit structure. This change was designed to ensure that the benefits of their AI advancements are distributed more broadly.
Conclusion: OpenAI remains committed to its mission, balancing the need for openness with the responsibility of ensuring safe and beneficial use of AI technologies.
Charting AI’s Future
In sum, the evolution of OpenAI’s strategy, from investment decisions to ethical considerations in research dissemination, reflects a nuanced approach to AI development. Balancing innovation with responsibility, OpenAI’s journey offers insights into the complex dynamics shaping the AI landscape, illustrating a commitment to harnessing AI’s potential while conscientiously addressing its implications for society.
Notes by: WisdomWave