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I just discovered a logical bug in my code which was causing all sorts of problems. I was inadvertently doing a bitwise AND instead of a logical AND.

I changed the code from:

r = mlab.csv2rec(datafile, delimiter=',', names=COL_HEADERS)
mask = ((r["dt"] >= startdate) & (r["dt"] <= enddate))
selected = r[mask]


r = mlab.csv2rec(datafile, delimiter=',', names=COL_HEADERS)
mask = ((r["dt"] >= startdate) and (r["dt"] <= enddate))
selected = r[mask]

To my surprise, I got the rather cryptic error message:

ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()

Why was a similar error not emitted when I use a bitwise operation - and how do I fix this?

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What is the value of r["dt"] –  Joel Cornett Apr 8 '12 at 13:06
Pandas offers documentation for this as well –  Greg Jun 9 at 7:35

2 Answers 2

up vote 33 down vote accepted

r is a numpy (rec)array. So r["dt"] >= startdate is also a (boolean) array. For numpy arrays the & operation returns the bitwise-and of the two boolean arrays.

The NumPy developers felt and was ambiguous: it could mean True if any two elements are bitwise True, or it could mean True if all elements are bitwise True.

Since different users might have different needs and different assumptions, the NumPy developers refused to guess and instead decided to raise a ValueError whenever one tries to use and on two numpy arrays.

Your original code

mask = ((r["dt"] >= startdate) & (r["dt"] <= enddate))
selected = r[mask]

looks correct. However, if you do want and, then instead of a and b use (a-b).any() or (a-b).all().

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You're right. The original code was correct. The bug appears to lie somewhere else in the code. –  Homunculus Reticulli Apr 8 '12 at 13:22
Excellent explanation. It implies, however, that NumPy is quite inefficient: it fully evaluates both boolean arrays, whereas an efficient implementation would evaluate cond1(i)&&cond2(i) inside one single loop, and skip cond2 unless cond1 is true. –  Joachim Wuttke Aug 19 '13 at 7:18
@JoachimWuttke: Although np.all and np.any are capable of short-circuiting, the argument passed to it is evaluated before np.all or np.any has a chance to short-circuit. To do better, currently, you'd have to write specialized C/Cython code similar to this‌​. –  unutbu Aug 19 '13 at 13:22

I had the same problem (i.e. indexing with multi-conditions, here it's finding data in a certain date range). The (a-b).any() or (a-b).all() seem not working, at least for me.

Alternatively I found another solution which works perfectly for my desired functionality (http://stackoverflow.com/questions/12647471/the-truth-value-of-an-array-with-more-than-one-element-is-ambigous-when-trying-t).

Instead of using suggested code above, simply using a logical_and(a,b) would work. Here you may want to rewrite the code as

selected = r(logical_and(r["dt"] >= startdate, r["dt"] <= enddate))

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Yes, numpy.logical_and(cond1, cond2) works perfectly. Thank you. –  Zhubarb Oct 4 '13 at 10:26

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