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Generate a diff between two CSV files on the command-line.
csvdiff
allows you to compare the semantic contents of two CSV files, ignoring things like row and column ordering in order to get to what's actually changed. This is useful if you're comparing the output of an automatic system from one day to the next, so that you can look at just what's changed.
It's also useful for maintaining patches to third-party data. Diffs generated by csvdiff
are a subset of JSON and can be stored and applied using the matching csvpatch
command. If upstream data changes, you can fetch the new version and re-apply your changes to it easily.
You'll firstly need Python and pip. Then run::
pip install csvdiff
For example, suppose we have a.csv
::
id,name,amount
1,bob,20
2,eva,63
3,sarah,7
4,jeff,19
6,fred,10
After some changes and corrections to the data, we now have b.csv
::
id,name,amount
1,bob,23 <--- changed
3,sarah,7
4,jeff,19
5,mira,81 <--- added
6,fred,13 <--- changed
Now we can ask for a summary of differences::
$ csvdiff --style=summary id a.csv b.csv
1 rows removed (20.0%)
1 rows added (20.0%)
2 rows changed (40.0%)
Or look at the full diff pretty printed, to make it more readable::
$ csvdiff --style=pretty --output=diff.json id a.csv b.csv
$ cat diff.json
{
"_index": [
"id"
],
"added": [
{
"amount": "81",
"id": "5",
"name": "mira"
}
],
"changed": [
{
"fields": {
"amount": {
"from": "20",
"to": "23"
}
},
"key": [
"1"
]
},
{
"fields": {
"amount": {
"from": "10",
"to": "13"
}
},
"key": [
"6"
]
}
],
"removed": [
{
"amount": "63",
"id": "2",
"name": "eva"
}
]
}
If you want to ignore a column from the comparison then you can do so by specifying a comma seperated list of column names to ignore. For example::
$ csvdiff --style=summary --ignore-columns=amount id a.csv b.csv
1 rows removed (20.0%)
1 rows added (20.0%)
0 rows changed (0%)
You can also choose to compare numeric fields only up to a certain number of significant figures. Use negative significant figures for orders of magnitude::
$ csvdiff --style=summary id a.csv c.csv
0 rows removed (0.0%)
0 rows added (0.0%)
2 rows changed (40.0%)
$ csvdiff --style=summary id --significance=-1 a.csv c.csv
files are identical
Diffs generated this way contain all the data that's changed, and can be reapplied later if the original data changes. For example, suppose more data gets added to a.csv
, giving us a-plus.csv
::
id,name,amount
1,bob,20
2,eva,63
3,sarah,7
4,jeff,19
6,fred,10
8,henry,9
We can reapply our changes with the csvpatch
command::
$ csvpatch --input=diff.json --output=b-plus.csv a-plus.csv
$ cat b-plus.csv
id,name,amount
1,bob,23
3,sarah,7
4,jeff,19
5,mira,81
6,fred,13
8,henry,9
This can be useful if you're using csvdiff to transform data that's outside your control. In this case, you maintain the patch file and simply reapply it when the upstream data provider gives you a fresh file.
For more usage options, run csvdiff --help
or csvpatch --help
.
The main entry points are the diff_files
and diff_records
methods:
.. code-block:: python
import csvdiff
patch = csvdiff.diff_files('a.csv', 'b.csv', ['id'])
# just show the changed rows
print(patch['changed'])
Using diff_records
instead:
.. code-block:: python
import csvdiff
records_a = [{'id': 1, 'name': 'Alice'},
{'id': 2, 'name': 'Bob'}]
records_b = [{'id': 1, 'name': 'Alice'},
{'id': 2, 'name': 'Jeff'}]
patch = csvdiff.diff_records(records_a, records_b, ['id'])
print(patch['changed'])
See the matching patch_file
and patch_records
methods for working with patches.
BSD license