I have a dataset of drivers' travel diaries. For each trip there is an associated start time, end time and day of week in a csv file. There are no dates associated with the trips.

I have now got the data into python where each start time and end time has the weekday attached to it like so:

```
time.struct_time(tm_year=1900, tm_mon=1, tm_mday=1, tm_hour=23,
tm_min=45, tm_sec=0, tm_wday=0, tm_yday=1, tm_isdst=-1)
print journey['BeginTime'][2].tm_wday, journey['BeginTime'][2].tm_hour
```

Which returns 0 for a Monday and 23 for the hour.

There's 11,000 of these trips and what I want to get is a weekly profile of the number of cars which are driving based on time of day.

This can be inferred by counting the number of trips that are between their respective ['BeginTime'] and ['EndTime'] interval over a specified time interval. A five minute interval is sufficient as the data is to the nearest five minutes.

Is there an elegant python way to do this? Something like:

```
for fiveMinutes in Week:
count = 0
for trip in range(len(journey['BeginTime']):
if journey['BeginTime'][trip] == fiveMinutes
or (journey['BeginTime'][trip] < fiveMinutes
and journey['EndTime'][trip] > fiveMinutes):
count = count + 1
carCount[fiveMinutes] = count
```