# How to categorize and count imported data

Suppose there’s a sensor which records the date and time at every activation. I have this data stored as a list in a .json file in the format (e.g.) "2000-01-01T00:30:15+00:00".

Now, what I want to do is import this file in python and use NumPy/ Mathplotlib to plot how many times this sensor is activated per day.

My problem is, using this data, I don’t know how to write an algorithm which counts how many times the sensor is activated daily. (This should be simple, but due to limited Python knowledge, I’m stuck). Supposedly there is a way to split this list wrt T, bin each recording by date (e.g. “2000-01-01”) and then count the recordings on this date.

How would you count how many times the sensor is activated? (to then make a plot showing the number of activations each day?)

-

First of all you need to load your JSON file:

``````import json
with open("logfile.json", "r") as logfile:
``````

Records will be a list or dictionary containing your records.

Assuming that your logfile looks like:

``````[u"2000-01-01T00:30:15+00:00",
u"2000-01-01T00:30:16+00:00",
...
]
``````

Records will be a list of strings. So parsing the dates is just:

``````import datetime
for record in records:
datepart, _ = record.split("T")
date = datetime.datetime.strptime(datepart, "%Y-%m-%d")
``````

Hopefully that's clear enough. Using "string".split and datetime.strptime should do the trick, although you don't have to parse this into a date object just to bin it but it may make things easier later on.

Finally, binning should be pretty straightforward using a dictionary of lists. Starting from what we've got above let's add binning:

``````import collections
import datetime
date_bins = collections.defaultdict(list)
for record in records:
datepart, _ = record.split("T")
date = datetime.datetime.strptime(datepart, "%Y-%m-%d")
date_bins[date].append(record)
``````

This should give you a dictionary where each key is a date and each value is the list of records that were logged on that day.

You'll probably want to sort this by date (although you may be able to use collections.OrderedDict if the data is already in order).

Counting activations per day could be something like:

``````for date in date_bins:
print "activations on %s: %s"%(date, len(date_bins[date]))
``````

Of course it's a little bit more work to take that information and massage it into a format that matplotlib needs but it shouldn't be too bad from here.

-
Thanks for the help! This forum is a life-saver. However, I'm not quite following in how to parse out the date: My json file looks like: `[u'2000-01-01T00:30:15+00:00', u'2000-01-01T00:30:15+00:00',...]` So, there is no key `timestamp`, and that leaves me confused as to how to correctly define a string to be split. (Again, apologise if this is obvious) –  ehertele Jul 22 '12 at 8:58
Okay, so the json file just contains a list of timestamps? Just delete the line `timestamp = record['timestamp']` and change the `timestamp.split` line to `datepart, _ = record.split("T")`. I updated my answer to work with just a list of strings. –  Mike Steder Jul 22 '12 at 13:44
Thanks again. (I think the unicode strings made me panic) However, I'm getting a few errors. I have a value error that `'%Y-%m-%d' does not match format '2001-01-01'` and a type error for default.dict([]) `first argument must be callable`. Should the arguments in .strptime be in the other order maybe? –  ehertele Jul 22 '12 at 19:08
Ok, I think I understand now. The arguments for .strptime should be switched from above. Also, the argument for `default.dict([])` needs something callable, such as `list`. Then everything works. –  ehertele Jul 22 '12 at 23:27
Good catch! Fixed my answer. –  Mike Steder Jul 23 '12 at 0:02
show 5 more comments

if your json file load a list like:

``````j_list = [('2000-01-01T00:30:15+00:00', 'xx'),
('2000-01-01T00:30:15+00:00', 'yyy'),
('2000-01-02T00:30:15+00:00', 'zzz')]
``````

Note: this assumes the json file returns a list of lists with the timestamp as the first element. Adjust accordingly.

There are parsers in dateutil and datetime to parse the timestamp. If counting is really all you are doing, even that might be overkill. You could:

``````>>> from itertools import groupby
>>> [(k,len(list(l))) for k,l in groupby(j_list,lambda x: x[0][:10])]
[('2000-01-01', 2), ('2000-01-02', 1)]
``````
-