Currently I have a pandas DataFrame like this:

```
ID A1 A2 A3 B1 B2 B3
Ku8QhfS0n_hIOABXuE 6.343 6.304 6.410 6.287 6.403 6.279
fqPEquJRRlSVSfL.8A 6.752 6.681 6.680 6.677 6.525 6.739
ckiehnugOno9d7vf1Q 6.297 6.248 6.524 6.382 6.316 6.453
x57Vw5B5Fbt5JUnQkI 6.268 6.451 6.379 6.371 6.458 6.333
```

This DataFrame is used with a statistic which then requires a permutation test (EDIT: to be precise, **random** permutation). The indices of each column need to be shuffled (sampled) 100 times. To give an idea of the size, the number of rows can be around 50,000.

EDIT: The permutation is along the rows, i.e. shuffle the index for each column.

The biggest issue here is one of performance. I want to permute things in a fast way.

An example I had in mind was:

```
import random
import joblib
def permutation(dataframe):
return dataframe.apply(random.sample, axis=1, k=len(dataframe))
permute = joblib.delayed(permutation)
pool = joblib.Parallel(n_jobs=-2) # all cores minus 1
result = pool(permute(dataframe) for item in range(100))
```

The issue here is that by doing this, the test is **not** stable: apparently the permutation works, but it is not as "random" as it would without being done in parallel, and thus there's a loss of stability in the results when I use the permuted data in follow-up calculations.

So my only "solution" was to precalculate all indices for all columns prior to doing the paralel code, which slows things down considerably.

My questions are:

- Is there a more efficient way to do this permutation? (not necessarily parallel)
- Is the parallel approach (using multiple processes, not threads) feasible?

EDIT: To make things clearer, here's what should happen for example to column A1 after one shuffling:

```
Ku8QhfS0n_hIOABXuE 6.268
fqPEquJRRlSVSfL.8A 6.343
ckiehnugOno9d7vf1Q 6.752
x57Vw5B5Fbt5JUnQk 6.297
```

(i.e. the row values were moving around).

EDIT2: Here's what I'm using now:

```
def _generate_indices(indices, columns, nperm):
random.seed(1234567890)
num_genes = indices.size
for item in range(nperm):
permuted = pandas.DataFrame(
{column: random.sample(genes, num_genes) for column in columns},
index=range(genes.size)
)
yield permuted
```

(in short, building a DataFrame of resampled indices for each column)

And later on (yes, I know it's pretty ugly):

```
# Data is the original DataFrame
# Indices one of the results of that generator
permuted = dict()
for column in data.columns:
value = data[column]
permuted[column] = value[indices[column].values].values
permuted_table = pandas.DataFrame(permuted, index=data.index)
```

itertools.permutations? docs.python.org/2/library/itertools.html#itertools.permutations And where is your testing point? Is it tested for each line, or is the test focus on the whole dataframe? – andrefsp Nov 15 '12 at 11:56