AI's Road to the Mainstream
AI's Road to the Mainstream
Deep Learning, Big Data, and Machine Learning are pushing artificial intelligence into the main stream. Learn about the background and how far we have come since 1995.
Join the DZone community and get the full member experience.Join For Free
When I enrolled in Computer Science in 1995, Data Science didn’t exist yet, but a lot of the algorithms we are still using already did. And this is not just because of the return of the neural networks, but also because probably not that much has fundamentally changed since back then. At least it feels to me this way. Which is funny considering that starting this year or so AI seems to finally have gone mainstream.
1995 sounds like an awfully long time ago, before we had cloud computing, smartphones, or chatbots. But as I have learned these past years, it only feels like a long time ago if you haven’t been there yourself. There is something about the continuation of the self which pastes everything together and although a lot has changed, the world didn’t feel fundamentally different than it does today.
Not even Computer Science was nowhere as mainstream as it was today, that came later, with the first dot com bubble around the year 2000. Some people even questioned my choice to study computer science at all, because apparently programming computers were supposed to become so easy no specialists are required anymore.
Actually, artificial intelligence was one of the main reasons for me to study computer science. The idea to use it as a constructive approach to understanding the human mind seemed intriguing to me. I went through the first two years of training, made sure I picked up enough math for whatever would lie ahead, and finally arrived in my first AI lectured held by Joachim Buhmann, back then a professor at the University of Bonn (where Sebastian Thrun was just about to leave for the US).
I would have to look up where in his lecture cycle I joined but he had two lectures on computer vision, one on pattern recognition (mostly from the old editions of the Duda & Hart book), and one in information theory (following closely the book by Cover & Thomas). The material was interesting enough, but also somewhat disappointing. As I now know, people stopped working on symbolic AI and instead stuck to more statistical approaches to learning, where learning essentially was reduced to the problem of picking the right function based on a finite amount of observations.
The computer vision lecture was even less about learning and relied more on explicit physical modeling to derive the right estimators, for example, to reconstruct motion from a video. The approach back then was much more biologically and physically motivated than nowadays. Neural networks existed, but everybody was pretty clear that they were just “another kind of function approximators.”
Everyone with the exception of Rolf Eckmiller, another professor where I worked as a student. Eckmiller had built his whole lab around the premise that “neural computation” was somehow inherently better than “conventional computation”. This was back in the days when NIPS had full tracks devoted to studying the physiology and working mechanisms of neurons, and there were people who believed there is something fundamentally different happening in our brains, maybe on a quantum level, that gives rise to the human mind, and that this difference is a blocker for having truly intelligent machines.
While Eckmiller was really good at selling his vision, most of his staff was thankfully much more down to earth. Maybe it is a very German thing, but everybody was pretty matter of fact about what these computational models could or couldn’t do, and that has stuck with me throughout my studies.
I graduated in October 2000 with a pretty farfetched master thesis trying to make a connection between learning and hard optimization problems, then started on my PhD thesis and stuck around in this area of research till 2015.
While there had always been attempts to prove industry relevance, it was a pretty academic endeavor for a long while, and the community was pretty closed up. There were individual success stories, for example around handwritten character recognition, but many of the companies around machine learning failed. One of these companies I remember was called Biowulf Technologies and one NIPS they went around recruiting people with a video which promised it to be the next “mathtopia”. In essence, this was the story of DeepMind, recruiting a bunch of excellent researchers and then hoping it will take off.
The whole community also revolved around one fashion to the next. One odd thing about machine learning as a whole is that there exist only a handful of fundamentally different problems like classification, regression, clustering, and so on, but a whole zoo of approaches. It is not like in physics (I assume) or mathematics where some generally agreed upon unsolved hard problems exist whose solution would advance the state of the art. This means that progress is often done laterally, by replacing existing approaches with a new one, still solving the same problem in a different way. For example, first there were neural networks. Then support vector machines came, claiming to be better because the associated optimization problem is convex. Then there was boosting, random forests, and so on, till the return of neural networks. I remember that Chinese Restaurant Processes were “hot” for two years, no idea what their significance is now.
Big Data and Data Science
Then there came Big Data and Data Science. Being still in academia at the time, it always felt to me as if this was definitely coming from the outside, possibly from companies like Google who had to actually deal with enormous amounts of data. Large scale learning always existed, for example for genomic data in bioinformatics, but one usually tried to solve problems by finding more efficient algorithms and approximations, not by parallelizing brute force.
Companies like Google finally proved that you can do something with massive amounts of data, and that finally changed the mainstream perception. Technologies like Hadoop and NoSQL also seemed very cool, skillfully marketing themselves as approaches so new, they wouldn’t suffer from the technological limitations of existing systems.
But where did this leave the machine learning researchers? My impression always was that they were happy that they finally got some recognition, but they were also not happy about the way this happened. To understand this, one has to be aware that most ML researchers aren’t computer scientists or very good or interested in coding. Many come from physics, mathematics or other sciences, where their rigorous mathematical training was an excellent fit for the algorithm and modeling heavy approach central to machine learning.
Hadoop, on the other hand, was extremely technical. Written in Java, a language perceived as being excessively enterprise-y at the time, it felt awkward and clunky compared to the fluency and interactiveness of first Matlab and then Python. Even those who did code usually did so in C++, and to them, Java felt slow and heavy, especially for numerical calculations and simulations.
Still, there was no way around it, so they rebranded everything they did as Big Data, or began to stress, that Big Data only provides the infrastructure for large-scale computations, but you need someone who “knows what he is doing” to make sense of the data.
Which is probably also not entirely wrong. In a way, I think this divide is still there. Python is definitely one if the languages of choice for doing data analysis, and technologies like Spark try to tap into that by providing Python bindings, whether it makes sense from a performance point of view or not.
The Return of Deep Learning
Even before DeepDream, neural networks began making their return. Some people like Yann LeCun have always stuck to this approach, but maybe ten years ago, there where a few works which showed how to use layerwise pretraining and other tricks to train “deep” networks, that is larger networks than one previously thought possible.
The thing is, in order to train neural networks, you evaluate it on your training examples and then adjust all of the weights to make the error a bit smaller. If one writes the gradient across all weights down, it naturally occurs that one starts in the last layer and then propagate the error back. Somehow, the understanding was that the information about the error got smaller and smaller from layer to layer and that made it hard to train networks with many layers.
I’m not sure that is still true, as far as I know, many people are just using backprop nowadays. What has definitely changed is the amount of available data, as well as the availability of tools and raw computing power.
So first there were a few papers sparking the interest in neural networks, then people started using them again, and successively achieved excellent results for a number of application areas. First in computer vision, then also for speech processing, and so on.
I think the appeal here definitely is that you can have one approach for all. Why the hassle of understanding all those different approaches, which come from so many different backgrounds, when you can understand just one method and you are good to go. Also, neural networks have a nice modular structure, you can pick and put together different kinds of layers and architectures to adapt them to all kinds of problems.
Then Google published that ingenious deep dream paper where they let a learned network generate some data, and we humans with our immediate readiness to read structure and attribute intelligence picked up quickly on this.
I personally think they were surprised by how viral this went, but then decided the time is finally right to go all in on AI. So now Google is an “AI first” company and AI is gonna save the world, yes.
The Fundamental Problem Remains
Many academics I have talked to are unhappy about the dominance of deep learning right now, because it is an approach which works well, maybe even too well, but doesn’t bring us much closer to really understand how the human mind works.
I also think the fundamental problem remains unsolved. How do we understand the world? How do we create new concepts? Deep learning stays an imitation on a behavioral level and while that may be enough for some, it isn’t for me.
Also, I think it is dangerous to attribute too much intelligence to these systems. In raw numbers, they might work well enough, but when they fail they do so in ways that clearly show they operate in an entirely different fashion.
While Google translate lets you skim the content of a website in a foreign language, it is still abundantly clear that the system has no idea what it is doing.
Sometimes I feel like nobody cares, also because nobody gets hurt, right? But maybe it is still my German cultural background that would rather prefer we see things as they are, and take it from there.
First posted on July 30, 2016, on medium. This version contains minor corrections and a few links.
Published at DZone with permission of Mikio Braun , DZone MVB. See the original article here.
Opinions expressed by DZone contributors are their own.