# Find Unique Dates in Numpy Datetime Array

I have timeseries data (epoch, values) which i have transformed into (datetime, values), which is stored in Numpy arrays. Now i wish to find the indexes of the first row corresponding to a given day. Thus, only a single index per day is needed.

Following is a purely Python function which is very slow.

``````def day_wise_datetime(datetimes,dataseries):
unique_dates=[]
unique_indices=[]
for i in range(len(datetimes)):
if datetimes[i].day not in unique_dates:
unique_dates.append(datetimes[i])
unique_indices.append(i)
return [unique_dates,unique_indices]
``````

Numpy provides a unique method, but it says that it cannot sort datetime. So what Numpy based technique can be used for the same.

I know that Pandas is recommended, but while i am learning it, would like to know if some NumPy/SciPy solution might suffice.

EDIT The value in datetimes variable are like. I have just sliced the first five elements.

``````[datetime.datetime(2011, 4, 18, 18, 52, 9),
datetime.datetime(2011, 4, 18, 18, 52, 10),
datetime.datetime(2011, 4, 18, 18, 52, 11),
datetime.datetime(2011, 4, 18, 18, 52, 12),
datetime.datetime(2011, 4, 18, 18, 52, 13)]
``````
-
Is it possible to provide a simple example input? –  waitingkuo May 8 '13 at 11:09
@waitingkuo: Added sample input –  Nipun Batra May 8 '13 at 13:27
can my answer solve your problem? –  waitingkuo May 8 '13 at 15:41

pandas's DataFrame provides drop_duplictes which can easily achieve your goal:

``````In [121]: arr1 = np.array([dt.datetime(2013, 1, 1), dt.datetime(2013, 1, 1), dt.datetime(2013, 1, 2)])

In [122]: arr2 = np.array([1, 2, 3])

In [123]: df = pd.DataFrame({'date': arr1, 'value': arr2})

In [124]: df
Out[124]:
date  value
0 2013-01-01 00:00:00      1
1 2013-01-01 00:00:00      2
2 2013-01-02 00:00:00      3

In [125]: df.drop_duplicates('date')
Out[125]:
date  value
0 2013-01-01 00:00:00      1
2 2013-01-02 00:00:00      3
``````

## EDIT

I misunderstood your problem in the very beginning. Please try following one:

Seems sorting is one of your mainly problem, I create the example as a reversed datetime list:

``````In [74]: now = dt.datetime.utcnow()
In [75]: datetimes = [now - dt.timedelta(hours=6) * i for i in range(10)]

In [76]: datetimes
Out[76]:
[datetime.datetime(2013, 5, 8, 16, 47, 32, 60500),
datetime.datetime(2013, 5, 8, 10, 47, 32, 60500),
datetime.datetime(2013, 5, 8, 4, 47, 32, 60500),
datetime.datetime(2013, 5, 7, 22, 47, 32, 60500),
datetime.datetime(2013, 5, 7, 16, 47, 32, 60500),
datetime.datetime(2013, 5, 7, 10, 47, 32, 60500),
datetime.datetime(2013, 5, 7, 4, 47, 32, 60500),
datetime.datetime(2013, 5, 6, 22, 47, 32, 60500),
datetime.datetime(2013, 5, 6, 16, 47, 32, 60500),
datetime.datetime(2013, 5, 6, 10, 47, 32, 60500)]
``````

Create a `DataFrame` by `datetimes` and set the column name as `date`:

``````In [81]: df = pd.DataFrame(datetimes, columns=['date'])

In [82]: df
Out[82]:
date
0 2013-05-08 16:47:32.060500
1 2013-05-08 10:47:32.060500
2 2013-05-08 04:47:32.060500
3 2013-05-07 22:47:32.060500
4 2013-05-07 16:47:32.060500
5 2013-05-07 10:47:32.060500
6 2013-05-07 04:47:32.060500
7 2013-05-06 22:47:32.060500
8 2013-05-06 16:47:32.060500
9 2013-05-06 10:47:32.060500
``````

Next, sort your `DataFrame` by the `date` column:

``````In [83]: df = df.sort('date')
``````

And then append a new columns for `index`:

``````In [85]: df['index'] = df['date'].apply(lambda x:x.day)

In [86]: df
Out[86]:
date  index
9 2013-05-06 10:47:32.060500      6
8 2013-05-06 16:47:32.060500      6
7 2013-05-06 22:47:32.060500      6
6 2013-05-07 04:47:32.060500      7
5 2013-05-07 10:47:32.060500      7
4 2013-05-07 16:47:32.060500      7
3 2013-05-07 22:47:32.060500      7
2 2013-05-08 04:47:32.060500      8
1 2013-05-08 10:47:32.060500      8
0 2013-05-08 16:47:32.060500      8
``````

Then group your data by `index`, and then get the first one for each group. If you are familiar with SQL, it just like `SELECT FIRST(*) FROM table GROUP BY table.index`:

``````In [87]: df = df.groupby('index').first()
In [88]: df
Out[88]:
date
index
6     2013-05-06 10:47:32.060500
7     2013-05-07 04:47:32.060500
8     2013-05-08 04:47:32.060500
``````

Now you can get the unique indices:

``````In [91]: df.index.values
Out[91]: array([6, 7, 8])
``````

And get the unique dates:

``````In [92]: df['date'].values
Out[92]:
array(['2013-05-06T18:47:32.060500000+0800',
'2013-05-07T12:47:32.060500000+0800',
'2013-05-08T12:47:32.060500000+0800'], dtype='datetime64[ns]')
``````
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Since i would need to do data manipulation like averaging and other stuff for all records within a day, i would not like to delete other data. Moreover my datetime object also contains hour,minute,second information –  Nipun Batra May 8 '13 at 16:26
It just generate a new object but not replace the original one. –  waitingkuo May 8 '13 at 16:33
I've made some updates, does it meet your problem now? –  waitingkuo May 8 '13 at 17:07
Thats very well explained –  Nipun Batra May 9 '13 at 11:01