Lending without guessing, with Christo Georgiev (LenderLink)
It unlocks two other elements :the first one is the real-time sharing of information which otherwise would be impossible, but the second one is that when we are connected by API to a financial institution, every time we ping their database, they actually have a record that allows us to pay them. Essentially, we pay on a portion of the fee that the network captures back to the same financial institutions.
Now, that means that they can either run this as a data monetization channel - and by the way for some of the landers that we work with in the Philippines that's been the case - or it also means that they can use the same payments for then increased consumption through the platform. The increased consumption then reduces their data pool cost, and ultimately that makes it two to three times cheaper than any other alternatives.
Unleashing CreditPy, with Ayhan Diş
CreditPy is including some functionalities regarding to develop credit risk scorecards, a PD model, basic data analysis, and it checks the informative variables in an automated way to determine which features is going to be passed to the predictive model. It also generates an automated model framework that is actually searching for the best predictive model across the different feature sets that potentially can be used during the model development.
And after this, there are actually many functions that has been defined to create the rating scale. And also, after creating the rating scale, its offers to do some validation, like univariate gini check, information value checks, basic multicollinearity checks, stability checks on the futures to see if there will be any drift on the predictions on the auto sample set bit applies a basic rate of evidence transformation on the data.
And finally, it allows the user to validate the created rating scale, predictive power of the model and the calibration.
Have you talked to your kids about data science? With Daniele Forni
But effectively, if you think about it, there is no company in the world, maybe just a few, whose whole businesses is data, noone really just creates data, noone really just handles data. However, every company, whether you're logistics, retailer, bank insurance, your mom and pop shops on a corner, they all deal with data - you've got prices, you've got sales, you've got measurements, if you are building a house.
However, as you said, often in organisations, they try to put a silo around data, they say, I have a Chief Data Office, I have a data function, I have specifically data processing, and data is a bit like the blood of an organisation. It goes everywhere, however, because it goes everywhere, you cannot just silo it somewhere. Of course, you need to have some patterns, some standards around data, but every part of the of a business has to be responsible for the data.

