Friday, July 13, 2007
Discovering Business Models
The problem with discovering business models is that what works for some does not work for all. Back in 1998 and 1999 the stock answer provided by just about any competitive local exchange carrier executive essentially was that the firm in question would get "one percent of a $250 billion market."
These days people ask how Facebook, messaging, collaboration, video or other portals will make any money. The most popular answer is some variant of the old CLEC standby. U.S. advertising currently is about a $153 billion a year business. Portal X will get one percent of that.
Look, it clearly works for four companies: Google, AOL, Yahoo! and MSN. The "four horsemen" get about 60 percent of all Internet advertising. It isn't going to work for most application, communications or portal providers, just as it never worked for most CLECs.
The biggest two "CLECs"--the former AT&T and WorldCom/MCI--threw in the towel in defeat. And those two had more than 40 percent of all "CLEC" revenues between them.
So people assume that fast-growing and useful sites such as Facebook will find some way to make money besides traditional advertising. And there is precedent for such discovery.
Google was equally clueless about its business model, but managed to discover one.
So just because a company has no idea how it will make money, doesn't mean it will not discover a means.
On the other hand, that doesn't mean it ALWAYS will find the answer. And though I'd have to say I am fairly confident Facebook will discover a model, as Google did, that doesn't mean thousands of other sites will be so lucky. Thousands of sites obviously cannot use the Internet advertising model, even if it is fast growing, because most fo the rewards will go a relative handful of companies.
Gary Kim has been a digital infra analyst and journalist for more than 30 years, covering the business impact of technology, pre- and post-internet. He sees a similar evolution coming with AI. General-purpose technologies do not come along very often, but when they do, they change life, economies and industries.
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