The DeepMind Strategy – How AI is Revolutionizing Business Models
This article was written by Francesco Corea.
Image Credit: Sergey Tarasov/Shutterstock
AI is introducing radical innovation even in the way we think about business, and the aim of this section is indeed to categorize different AI companies and business models.
It is possible to look at the AI sector as really similar in terms of business models to the biopharma industry: expensive and long R&D; long investment cycle; low-probability enormous returns; concentration of funding toward specific phases of development. There are anyway two differences between those two fields: the experimentation phase, that is much faster and painless for AI, and the (absent) patenting period, which forces AI to continuously evolve and to use alternative revenue models (e.g., freemium model).
II. The DeepMind Strategy and the Open Source Model:
If we look from the incumbents’ side, we might notice two different nuances in their business models evolution. First, the growth model is changing. Instead of competing with emerging startups, the biggest incumbents are pursuing an aggressive acquisition strategy.
I named this new expansion strategy the “DeepMind strategy” because it has become extremely common after the acquisition of DeepMind operated by Google.
The companies are purchased when they are still early stage, in their first 1–3 years of life, where the focus is more on people and pure technological advancements rather than revenues (AI is the only sector in which the pure team value exceeds the business one). They maintain elements of their original brand and retain the entire existing team (“acqui-hire”). Companies maintain full independence, both physically speaking — often they keep in place their original headquarters — as well as operationally. This independence is so vast to allow them to pursue acquisition strategies in turn (DeepMind bought Dark Blue Labs and Vision Factory in 2014). The parent company uses the subsidiary services and integrates rather than replaces the existing business (e.g., Google Brain and Deepmind).
It seems then that the acquisition costs are much lower than the opportunity cost of leaving around many brains, and it works better to (over)pay for a company today instead of being cutting out a few years later. In this sense, these acquisitions are pure real option tools: they represent future possible revenues and future possible underlying layers where incumbents might end up building on top of.
The second nuance to point out is the emerging of the open source model in the AI sector, which is quite difficult to reconcile with the traditional SaaS model. Many of the cutting-edge technologies and algorithms are indeed provided for free and can be easily downloaded. So why incumbents are paying huge money and startups are working so hard to give all away for free?
Well, there are a series of considerations to be made here. First, AI companies and departments are driven by scientists and academics, and their mindset encourages sharing and publicly presenting their findings. Second, open sourcing raises the bar of the current state of the art for potential competitors in the field: if it is publicly noted what you can build with TensorFlow, another company that wants to take over Google should publicly prove to provide at least what TensorFlow allows. It also fosters use cases that were not envisioned at all by the providing company and set up those tools as underlying technology everything should be built on top of which.
III. Implications of Open-Source:
Releasing free software that does not require presence of high-tech hardware is also a great way for 6 things to happen, as discussed below.
- Lowering the adoption barrier to entry, and get traction on products that would not have it otherwise.
- Troubleshooting, because many heads are more efficient in finding and fixing bugs as well as looking at things from a different perspective.
- (Crowd) validating, because often the mechanism, rationales, and implications might not be completely clear.
- Shortening the product cycle, because from the moment a technical paper is published or a software release it takes weeks to have augmentations of that product.
- To create a competitive advantage in data creation/collection, in attracting talents, and creating additive products based on that underlying technology.
- More importantly, to create a data network effect, i.e., a situation in which more (final or intermediate) users create more data using the software, which in turn make the algorithms smarter, then the product better, and eventually attract more users.
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