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I'm currently trying to optimize some sub-routines of a small backtesting app I've built for myself. I have a 'current_data' pandas panel where all the data is held.

I'm trying to access it as follows:[order['instrument'], self.current_day, 'low']

However, this is very slow. From the documentation, it seems that this should return a view - since I'm not setting any value. I'm using the latest pandas (0.11.0).

Would you be able to tell why this is going on? And maybe a faster way to do this?

By the way, I know that this is a copy because the profiler shows that is being called every time, and if I reduce the size of the object this line speeds up tremendously.



Here's how to re-create my issue. I see now that the issue is probably not in .at.

items = ['A', 'B', 'C', 'D']
cols = ['a', 'b', 'c', 'd']

indices = pd.date_range(, periods=1000, freq="D")
res = {}
for item in items:
    res[item] = pd.DataFrame(np.random.randn(1000, 4), columns=cols, index=indices)

first = pd.Panel(res)

print timeit.Timer("""
for i in range(100, 200):
    today = indices[i]
    first_change = first.ix[:, :i + 1, :]["A", today, "a"]["A", today, "b"]["A", today, "c"]
""", setup="from __main__ import first, indices").timeit(number=50)/50.0

#--- Time: 0.0307311664639

indices = pd.date_range(, periods=10000, freq="D")
res = {}
for item in items:
    res[item] = pd.DataFrame(np.random.randn(10000, 4), columns=cols, index=indices)
second = pd.Panel(res)

print timeit.Timer("""
for i in range(8100, 8200):
    today = indices[i]
    second_change = second.ix[:, :i + 1, :]["A", today, "a"]["A", today, "b"]["A", today, "c"]
""", setup="from __main__ import second, indices").timeit(number=50)/50.0

#--- Time: 0848793384464

Anyways, this is basically what's going on. It is probably in the .ix function, but it is simply returning a view so I don't see why it would take more time.

The issue is probably not in .at then, I think.

share|improve this question
This by definition returns a scalar value. If you are enlarging, then it will create and return a new object, see:…, what are you trying to do? – Jeff May 28 '13 at 0:06
I just need to get a specific scalar from the panel, at a specific position. order['instrument'] is like AAPL, self.current_day is the index of the current day, and 'low' is the column name. I tried to use ix to perform the same operation but it takes even more time. – Eduardo Sahione May 28 '13 at 1:23
transpose so that your dims are like: items (low) x major (dates) x minor (ids), will give better perf – Jeff May 28 '13 at 1:48
up vote 0 down vote accepted

You must be measuring something else, at is a constant time operation. Pls show some more detail in what you are doing (e.g. a sample panel and accessors)

In [24]: p = Panel(randn(1,1,1))

In [25]: %timeit[0,0,0]
100000 loops, best of 3: 5.33 us per loop

In [26]: p = Panel(randn(10,10,10))

In [27]: %timeit[0,0,0]
100000 loops, best of 3: 5.34 us per loop

In [28]: p = Panel(randn(100,100,100))

In [29]: %timeit[0,0,0]
100000 loops, best of 3: 5.28 us per loop

In [30]: p = Panel(randn(1000,1000,1000))

In [31]: %timeit[0,0,0]
100000 loops, best of 3: 5.36 us per loop
share|improve this answer
You're right - it's not in .at. Check out the edit. The strange thing is that the function where the .at is increases in cumulative run time. It could be a bug in cProfile, but I don't really know. – Eduardo Sahione May 28 '13 at 16:27
.ix in this case might not always be returing a view, it actually depends on how numpy is aligning the memory. If you try this with a transposed panel (e.g. your major is your items dim), then I think you will always get a view, but since you are iterating over another dim, I am not 100% sure. This could explain the diff. – Jeff May 28 '13 at 16:54
Thank you! I've chosen to refactor everything a little bit instead of handling all of these small performance issues. I'm now using dataframes and dictionaries, and it is basically taking 1s to do all the work that was done in 8 seconds before. Since I don't have to manipulate a lot of ranges/slices, I think this is the best option. – Eduardo Sahione May 28 '13 at 18:46

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