
Learn like Google
We learn new ways of behaving when we reflect on the experiences we have. That means listening to feedback from a variety of sources; gathering data and listening to our critics. Once we gather data, we need quiet time to be able to process the many strands of insight and decide to make changes in our behaviour. We then need to make changes in real time the way Google does.Each year, Google changes its search algorithm around 500–600 times. That means making almost two amendments a day. This includes minor tweaks to its algorithm. Several minor tweaks when combined make the case for a major rethink of the algorithm. Each time we perform a search, we contribute to .000000003% of improvement in the search algorithm. With more than 3 billion searches per day, Google is continuously improving its algorithm in real time.
Humans resist change – machines don’t
Last year Danny Lange, the head of Machine Learning at Uber, made an insightful observation. He describes what it means to live in a world where uncertainty and probability. He said,
“Basically we’re now using experience, using data, to have learning algorithms build and use these models and get results that are really predictions with probabilities, rather than having finite deterministic programs. And as the world changes, the data changes and we rebuild the models. This allows us to continuously have a software system that is more in line with the real world,”
Machines don’t get tired. They can parse through mountains of data and keep refining their understanding. Affectiva is using computer vision and deep learning to gather data and building the world’s largest emotion data repository. This massive database of human emotions is being used to teach machines how to perceive human emotions by recognising their expressions.The result is that the machine is able to differentiate between cultural nuances of human emotions. It knows how a Japanese smile and a Brazilian smile are different. It is learning how women express emotions in ways that are distinct from emotional expressions of males.
Softer emotions need more data points

