© Manuel Amunategui, Mehdi Roopaei 2018
Manuel Amunategui and Mehdi RoopaeiMonetizing Machine Learninghttps://doi.org/10.1007/978-1-4842-3873-8_12

12. Case Study Part 3: Enriching Content with Fundamental Financial Information

Manuel Amunategui1  and Mehdi Roopaei2
(1)
Portland, Oregon, USA
(2)
Platteville, Wisconsin, USA
 

Predicting the stock market with fundamental financial data aggregation on PythonAnywhere.

We’re going to keep adding features to our “ Pair Trading Booth ” web application (Figure 12-1).
../images/468330_1_En_12_Chapter/468330_1_En_12_Fig1_HTML.jpg
Figure 12-1

The final web application for this chapter

So far, we told our visitors about the best pair trade to make, showed them the related financial ...

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