# Pandas: after using qcut(data,3), how to find the range of the quantile

My data looks like this:

``````    spread                              CPB%    Bin
0  0.00000787  0.001270648030495552731893265565   B
1  0.00000785  0.003821656050955414012738853503   A
2  0.00000749  0.005821656050955414012738853503   C
3  0.00000788  0.004821656050955414012738853503   B
``````

So I have basically assigned a letter A,B or C according to the value of their spread. I have done this using this code:

``````s = (df['spread'] * 10**15).astype(np.int64)
df['Bin'] = pd.qcut(s, 3, labels=list('ABC'))
``````

What I need to do now, is that I have 100 spreads (from 0.000001 to 0.0001) and I need to know if they end-up in the Bin A,B or C. Is there a way to find let's say the 'range' of the above quantile?

More precisely I have the below spreads:

``````      spread
0   0.000100
1   0.000109
2   0.000118
3   0.000127
4   0.000136
5   0.000145
``````

How can I know if they end-up in the same bin as A-B-C of above? Thanks

I believe you need add parameter `retbins=True` for `qcut` for return intervals, so is possible reuse it in `cut`:

``````print (df1)
0  0.000008  0.001271   B
1  0.000008  0.003822   A
2  0.000007  0.005822   C
3  0.000008  0.004822   B

print (df2)
0  0.000008 <-change data sample for match
1  0.000109
2  0.000118
3  0.000127
4  0.000136
5  0.000145
``````

``````s = (df1['spread'] * 10**15).astype(np.int64)
v,b = pd.qcut(s, 3, labels=list('ABC'),retbins=True)
print (v)
0    B
1    A
2    A
3    C
Categories (3, object): [A < B < C]

print (b)
[7490000000 7849999999 7869999999 7880000000]

df2['new'] = pd.cut(s1, bins=b, labels=v.cat.categories)
print (df2)
0  0.000008    A
1  0.000109  NaN
2  0.000118  NaN
3  0.000127  NaN
4  0.000136  NaN
5  0.000145  NaN
``````
• Thanks again for your help @jezrael, I might still need your help in the coming hours :p – Viktor.w Jan 11 at 13:51
• @Viktor.w - hmmm, I am going home in next hour, so I think get help from another users in stackOveflow after this time ;) – jezrael Jan 11 at 13:52

If you use:

``````pd.qcut(s, 3)
``````

The output will tell you the bin intervals.