# Melt the Upper Triangular Matrix of a Pandas Dataframe

Given a square pandas DataFrame of the following form:

a  b  c
a  1 .5 .3
b .5  1 .4
c .3 .4  1

How can the upper triangle be melted to get a matrix of the following form

Row     Column    Value
a        a       1
a        b       .5
a        c       .3
b        b       1
b        c       .4
c        c       1

#Note the combination a,b is only listed once.  There is no b,a listing

I'm more interested in an idiomatic pandas solution, a custom indexer would be easy enough to write by hand...

First I convert lower values of df to NaN by where and numpy.triu and then stack, reset_index and set column names:

import numpy as np

print df
a    b    c
a  1.0  0.5  0.3
b  0.5  1.0  0.4
c  0.3  0.4  1.0

print np.triu(np.ones(df.shape)).astype(np.bool)
[[ True  True  True]
[False  True  True]
[False False  True]]

df = df.where(np.triu(np.ones(df.shape)).astype(np.bool))
print df
a    b    c
a   1  0.5  0.3
b NaN  1.0  0.4
c NaN  NaN  1.0

df = df.stack().reset_index()
df.columns = ['Row','Column','Value']
print df

Row Column  Value
0   a      a    1.0
1   a      b    0.5
2   a      c    0.3
3   b      b    1.0
4   b      c    0.4
5   c      c    1.0
• I the only thing to watch out for is if you have any NaN values that you want to preserve in the upper triangle (stack will drop them all). You might have to explicitly construct the multi-index and then reindex if that is the case. Commented Dec 22, 2015 at 16:47
• @jezrael how would you go back from the last df to the triangular one? I've built the triangular matrix, converted to long, processed, and now I want to have it back to triangular, but some NAs go to the upper triangular
– Sos
Commented May 8, 2018 at 13:11
• @Sosi - I think need pivot like df = df.pivot('Row', 'Column', 'Value') Commented May 8, 2018 at 13:17
• @jezrael thank you. however, this still yields a non-triangular matrix. Maybe I will create a new thread and ping you
– Sos
Commented May 8, 2018 at 13:20
• @Sosi - No problem :) pivot always sorting data :) Commented May 8, 2018 at 13:29

Building from solution by @jezrael, boolean indexing would be a more explicit approach:

import numpy
from pandas import DataFrame

df = DataFrame({'a':[1,.5,.3],'b':[.5,1,.4],'c':[.3,.4,1]},index=list('abc'))
print df,'\n'
keep = np.triu(np.ones(df.shape)).astype('bool').reshape(df.size)
print df.stack()[keep]

output:

a    b    c
a  1.0  0.5  0.3
b  0.5  1.0  0.4
c  0.3  0.4  1.0

a  a    1.0
b    0.5
c    0.3
b  b    1.0
c    0.4
c  c    1.0
dtype: float64

Also buildin on solution by @jezrael, here's a version adding a function to do the inverse operation (from xy to matrix), usefull in my case to work with covariance / correlation matrices.

def matrix_to_xy(df, columns=None, reset_index=False):
bool_index = np.triu(np.ones(df.shape)).astype(bool)
xy = (
df.where(bool_index).stack().reset_index()
if reset_index
else df.where(bool_index).stack()
)
if reset_index:
xy.columns = columns or ["row", "col", "val"]
return xy

def xy_to_matrix(xy):
df = xy.pivot(*xy.columns).fillna(0)
df_vals = df.to_numpy()
df = pd.DataFrame(
np.triu(df_vals, 1) + df_vals.T, index=df.index, columns=df.index
)
return df
df = pd.DataFrame(
{"a": [1, 0.5, 0.3], "b": [0.5, 1, 0.4], "c": [0.3, 0.4, 1]},
index=list("abc"),
)
print(df)
xy = matrix_to_xy(df, reset_index=True)
print(xy)
mx = xy_to_matrix(xy)
print(mx)

output:

a    b    c
a  1.0  0.5  0.3
b  0.5  1.0  0.4
c  0.3  0.4  1.0

row col  val
0   a   a  1.0
1   a   b  0.5
2   a   c  0.3
3   b   b  1.0
4   b   c  0.4
5   c   c  1.0

row    a    b    c
row
a    1.0  0.5  0.3
b    0.5  1.0  0.4
c    0.3  0.4  1.0