a16z Podcast: AI, from 'Toy' Problems to Practical Application
Dec 2, 2017
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Guests Martin Casado, a general partner at Andreessen Horowitz, Joe Spisak from AWS, and Scott Clark, CEO of SigOpt, share insights on transitioning AI from theory to practical use. They discuss the complexities businesses face in adopting AI and the often misunderstood 'black box' of machine learning. Scott highlights how tuned simple systems outperform complex ones without proper optimization. The conversation also addresses the balance between innovation, data governance, and real business outcomes.
Understanding and properly tuning data is crucial for optimizing AI applications to ensure they meet specific business objectives effectively.
Organizations must prioritize clear problem definitions over the abundance of potential AI applications to achieve tangible business results and ROI.
Deep dives
Current Landscape of AI Adoption
The current environment for AI adoption is characterized by unprecedented optimism and accessibility. Companies now possess vast datasets and have access to advanced tools, including open-source frameworks like TensorFlow and MXNet, which facilitate the productionalization of AI applications. The integration of infrastructure from cloud providers such as AWS and the advent of powerful hardware have empowered smaller teams to make significant business impacts in a fraction of the time it once took. As businesses recognize the tangible value of AI, major corporations like Google and Microsoft have transitioned to identifying themselves as AI-first companies, indicating a fundamental shift in their operational focus.
Understanding Data's Role in AI
Effective use of AI hinges on understanding the data landscape and cleaning it for accurate analysis. Many companies mistakenly believe that simply possessing data qualifies them for AI implementation, but without a clear strategy to organize and leverage that data, their efforts are likely to fall flat. Businesses are encouraged to start with definitive problems and identify the outcomes they desire, as the vast number of potential AI use cases can lead to confusion. Sorting through hundreds of potential applications requires a clear focus on which problems will yield real returns on investment in order to prioritize efforts efficiently.
Taxonomy of AI Startups
The podcast introduces a taxonomy categorizing AI startups based on their understanding and application of AI technologies. The simplest category involves companies that retroactively label existing techniques as AI to align with the hype surrounding the term. The more sophisticated startups have a clear grasp of AI's capabilities and apply it effectively to known challenges. The most advanced are able to formulate applications without prior theoretical frameworks by leveraging vast amounts of data to derive insights and produce new theories, showcasing varying levels of innovation and understanding within the AI landscape.
The Role of Optimization in AI Implementation
Optimization emerges as a critical element in the effective application of AI, requiring unique strategies for diverse business problems. While sophisticated algorithms can potentially outperform simpler models, the success of AI systems heavily relies on their tuning and alignment with specific business objectives. Companies must recognize that configurations that worked for one dataset or problem may not translate to another, necessitating fresh approaches with each new challenge. Ultimately, identifying the unique features of each problem, supported by domain expertise, is essential to maximize the potential of AI solutions in practice.
When you have “a really hot, frothy space” like AI, even the most basic questions — like what is it good for, how do you make sure your data is in shape, and so on — aren’t answered. This is just as true for the companies eager to adopt the technology and get into the space, as it is for those building companies around that space, observes Joe Spisak, Head of Partnerships at Amazon Web Services. “People treat it like magic,” adds a16z general partner Martin Casado.
This magical realism is especially true of AI, because by definition — i.e., machines learning — there is a bit of a “black box” between what you put in and what you get out of it. Which may be fine… Except when you have to completely change the data being fed into that black box, or you’re shooting for a completely different target to come out of it. That’s why, observes Scott Clark, CEO and co-founder of SigOpt, “an untuned, sophisticated system will underperform a tuned simple system” almost every time.
So what does this mean for organizations going from so-called “toy” problems in R&D to real business results tied to KPIs and ROI? In this episode of the a16z Podcast, Casado, Clark, and Spisak (in conversation with Sonal Chokshi) share their thoughts on what’s happening and what’s needed for AI in practice, given their vantage points working with both large companies and AI startups. What does it mean for data scientists and domain experts? For differentiation and advantage? Because even though we finally have widely available building blocks for AI, we need the scaffolding too… and only then can we build something powerful on top of it.
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