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I need a data structure which can handle the following:

date_from (datetime)
date_to (datetime)
value (float)

...and I need to be able to 'query' this data structure based on a datetime (e.g. in pseudocode: SELECT * FROM data_structure WHERE a_datetime >= date_from AND a_datetime <= date_to;).

If there isn't a result from this 'query', I would need to be able to insert a new value into the data structure.

What's the best way of doing this? (I'm a bit stuck at the moment)

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Please elaborate a little bit more, hard to tell where is Python and where is a database involved –  Kos Jun 27 '12 at 10:28
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How about a list with tuples: [(datetime_1, object_1), (datetime_2, object_2), ..., (datetime_n, object_n)] and filter based on the associated datetime? –  Simeon Visser Jun 27 '12 at 10:29
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I think you're asking how to cache date-series information. If all dates are post 1st Jan 1970, you may benefit by caching your dates as Unix time for quick integer comparison. How many entries are in your dataset? May they overlap? –  MattH Jun 27 '12 at 10:35
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If you want to select data with a 'query', then why don't you use sqlite with these three columns, which returns a list of tuples with these three items? Maybe I'm understanding the question wrong, but could you explain this to me? –  BrtH Jun 27 '12 at 10:37
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@johneth If you want to lessen the load on the database, wouldn't it be simpler to just copy the relevant table into memory: con = sqlite3.connect(":memory:") and then copy the table with something like ATTACH "old.db" as olddb'); CREATE TABLE bar AS SELECT * FROM olddb.foo'); 'DETACH olddb' –  BrtH Jun 27 '12 at 10:52

1 Answer 1

up vote 2 down vote accepted

Have a look at this SortedCollection Recipe. It uses the bisect module and lets you created a keyed collection. E.g.:

>>> from SortedCollection import SortedCollection
>>> from operator import itemgetter
>>> s = SortedCollection(key=itemgetter(0))
>>> s.insert((1,2,'a'))
>>> s.insert((10,20,'b'))
>>> s.insert((20,30,'c'))
>>> s.find_le(10)
(10, 20, 'b')

May help you create your cache of time period information, the bisect approach should let you access your date-keyed information efficiently.

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