The name "giant panda" is sometimes used to distinguish it from the red panda. In captivity, they may receive honey, eggs, fish, yams, shrub leaves , oranges, or bananas along with specially prepared food. The giant panda lives in a few mountain ranges in central China, mainly in Sichuan , but also in neighbouring Shaanxi and Gansu. The giant panda is a conservation-reliant vulnerable species. While the dragon has often served as China's national symbol , internationally the giant panda has often filled this role. As such, it is becoming widely used within China in international contexts, for example, appearing since on gold panda bullion coins and as one of the five Fuwa mascots of the Beijing Olympics.
Group By: split-apply-combine — pandas documentation
Elastic net regression combines the power of ridge and lasso regression into one algorithm. What this means is that with elastic net the algorithm can remove weak variables altogether as with lasso or to reduce them to close to zero as with ridge. All of these algorithms are examples of regularized regression. This post will provide an example of elastic net regression in Python. Below are the steps of the analysis.
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Missing Data In pandas Dataframes
The course is being given by the amazing Prof. Tucker Balch at Georgia Tech Institute. The course aims to teach building equities portfolios using python, and it does make a heavy use of numpy and pandas. The first assignment we had is to select four stock equities using data from last year, and to build a portfolio out of those four.