‘Big Data @Work’ by Thomas H Davenport
March 21, 2014 Leave a comment
March 5, 2014 4:15 pm
‘Big Data @Work’ by Thomas H Davenport
By Hannah Kuchler
Like bacteria, big data is lurking in the stomachs of cows. Some farmers are using sensors and software to analyse it and predict when a cow is getting ill.
Just like customers, cows do not always speak out when something is wrong. But companies can use data to predict potential risks and opportunities in cows and customers alike.
The message of Big Data @Work by Thomas Davenport, a fellow of the MIT Center for Digital Business, is that companies are only beginning to understand the questions they can ask of their vast stores of data – and how to build the internal structures to make the most of it.
Big data is a fashionable, sometimes overused term for the vast amounts of information that can now be stored because of the growth of online activity and the low cost of storage. While companies are busy talking the talk and hoarding the information, according to studies cited by Davenport, only 0.5 per cent is analysed in any way and by only 28 per cent of companies.
He has written a guide for those leaders still puzzling about how this fashion fits their business. He insists companies think up questions to ask the data rather than just playing with it in the hope that magic will happen. Previously, companies used data to help solve problems but now they need to develop the “always on” capability to search out opportunities, he argues.
The book is at its best when offering examples that could spark ideas. The casino Caesars uses data to spot when a gambler has lost so many times at the slot machines they might not come back: “If the company can present, say, a free meal coupon to such customers while they’re still at the slot machine, they are much more likely to return to the casino later.”
That example may sound somewhat cynical. But elsewhere Davenport notes how London’s Heathrow airport increased the number of on-time flights from 65 per cent to 80 per cent in just two months after using an algorithm to co-ordinate everything that goes into a flight turnround process.
Verizon, the US telecoms company, has a unit that analyses location data for other businesses, for example, telling a basketball team where the fans at their stadium came from.
But Davenport underplays these examples, running them alongside case studies of managers stressing the (quite obvious) importance of return on investment. He focuses a tad too little on enticing examples of big data’s uses, such as the farmers who analyse the information in their cows’ stomachs. He also has a penchant for “idiot’s guide”-style checklists.
More importantly, Davenport shies away from the frontiers of big data, skating over, for example, its use in workplace monitoring to understand employee productivity. The book fantasises about a future where facial recognition can spot poorly behaved dogs in a pet food shop – but neglects to mention the ways facial recognition is already being used by some companies.
Big Data @Work is full of advice on the kind of technologies used in big data analysis and how to get the right workforce – a real problem as universities are only just starting to create big data courses.
However, for a “how to” guide that itself scorns “techno speak”, it is surprisingly heavy on the jargon. It is not clear what there is to be learnt from paragraph upon paragraph about which companies call their head of big data “chief digital officer” or “chief analysis officer” or “vice-president of customer optimisation and data”.
For managers unsure what to do with the data piling up in their vaults, the book is worth persisting with. However, by the end, the cow’s stomach may be healthy but the reader’s stomach is heavy with the weight of the big data equivalent of porridge.
‘Big Data @Work: Dispelling the myths, uncovering the opportunities’, By Thomas H Davenport, Harvard Business Review Press $30; £20
