How to use Python and Pandas to find bests opportunities in triangular arbitrage

I have a Pandas DataFrame like this (it's a triangular arbitrage problem)

``````>>> df_diff_rel
a         b         c         d
a -0.833333 -1.666667 -2.500000  0.833333
b  0.000000 -0.840336 -1.680672  1.680672
c -1.652893 -2.479339 -3.305785  0.000000
d -2.459016 -3.278689 -4.098361 -0.819672
``````

I need to know row name and column name of positive values (sorted from highest value to lowest)

In my example I would like to get

``````1.680672 b d
0.833333 a d
0        b a
0        c d
``````

I did this

``````lst_arbitrage_opportunities = list(df_diff_rel[df_diff_rel>0])
lst_arbitrage_opportunities.sort(reverse=True)
``````

But now I don't know how to get row and column name for a given value.

Here is full code to get my sample:

``````import pandas as pd
import numpy as np

class Ticker:
self.bid = bid

def __repr__(self):

str = str + """

return(str)

markets = ['a', 'b', 'c', 'd']

markets_tickers = dict()
markets_tickers['a'] = Ticker(1.20, 1.19)
markets_tickers['b'] = Ticker(1.19, 1.18)
markets_tickers['c'] = Ticker(1.21, 1.17)
markets_tickers['d'] = Ticker(1.22, 1.21)

df_bid = pd.DataFrame(index=markets, columns=markets)

size = 1.0

for mk in markets:
print("="*5+mk+"="*5)
print(markets_tickers[mk])
df_bid[mk]=markets_tickers[mk].bid

df_arbitrage_opportunities = df_diff_rel>0

lst_arbitrage_opportunities = list(df_diff_rel[df_diff_rel>0])
lst_arbitrage_opportunities.sort(reverse=True)

print("Bid")
print(df_bid)
print("Diff abs")
print(df_diff_abs)
print("Diff rel")
print(df_diff_rel)
print("Arbitrage opportunities")
print(df_arbitrage_opportunities)
print("List of opportunities (from the best to the worst)")
print(lst_arbitrage_opportunities)
``````
-

Here's a simple one-line solution:

To get the data in the shape you want you can use the unstack method:

``````In [2]: df.unstack()
Out[2]:
a  a   -0.833333
b    0.000000
c   -1.652893
d   -2.459016
b  a   -1.666667
b   -0.840336
c   -2.479339
...
``````

You can then filter this list like so to find values >= 0 :

``````In [3]: df.unstack()[df.unstack() >= 0]
Out[3]:
a  b    0.000000
d  a    0.833333
b    1.680672
c    0.000000
``````

Finally, you can access the index of the above object to return a list of labels:

``````In [1]: df.unstack()[df.unstack() >= 0].index.tolist()
Out[1]: [('a', 'b'), ('d', 'a'), ('d', 'b'), ('d', 'c')]
``````

Update:

To sort in descending order use the `Series.order` method instead of `sort`:

``````In [1]: tmp = df.unstack()[df.unstack() >= 0]

In [2]: tmp = tmp.order(ascending=False)

In [3]: tmp
Out[3]:
d  b    1.680672
a    0.833333
c    0.000000
a  b    0.000000

In [4]: tmp.index.tolist()
Out[4]: [('d', 'b'), ('d', 'a'), ('d', 'c'), ('a', 'b')]
``````
-
Thanks but there is still a problem... values are not descending sorted !!! –  working4coins Mar 4 at 6:34
I did this ```df_arbitrage_opportunities = df_diff_rel.unstack() df_arbitrage_opportunities = df_arbitrage_opportunities[df_arbitrage_opportunities>0] df_arbitrage_opportunities.sort() print(df_arbitrage_opportunities) print(df_arbitrage_opportunities.index.tolist())``` but it's ascending sorted –  working4coins Mar 4 at 6:46
you can reverse it by `data[::-1]` to have a descending order –  pravin Mar 4 at 10:06
You would think `sort` would do what you want, but pandas uses `order` instead. I've updated my answer. –  Zelazny7 Mar 4 at 14:25