101

I have a question about idioms and readability, and there seems to be a clash of Python philosophies for this particular case:

I want to build dictionary A from dictionary B. If a specific key does not exist in B, then do nothing and continue on.

Which way is better?

try:
    A["blah"] = B["blah"]
except KeyError:
    pass

or

if "blah" in B:
    A["blah"] = B["blah"]

"Do and ask for forgiveness" vs. "simplicity and explicitness".

Which is better and why?

12
  • 1
    The second example might be better written as if "blah" in B.keys(), or if B.has_key("blah").
    – girasquid
    Dec 22 '10 at 18:50
  • 2
    does A.update(B) not work for you? Dec 22 '10 at 18:51
  • 21
    @Luke: has_key has been deprecated in favor of in and checking B.keys() changes an O(1) operation into an O(n) one.
    – kindall
    Dec 22 '10 at 18:52
  • 4
    @Luke: not it's not. .has_key is deprecated and keys creates unneeded list in py2k, and is redundant in py3k Dec 22 '10 at 18:52
  • 2
    'build' A, as in, A is empty to start out with? And we only want certain keys? Use a comprehension: A = dict((k, v) for (k, v) in B if we_want_to_include(k)). Dec 22 '10 at 19:22

11 Answers 11

79

Exceptions are not conditionals.

The conditional version is clearer. That's natural: this is straightforward flow control, which is what conditionals are designed for, not exceptions.

The exception version is primarily used as an optimization when doing these lookups in a loop: for some algorithms it allows eliminating tests from inner loops. It doesn't have that benefit here. It has the small advantage that it avoids having to say "blah" twice, but if you're doing a lot of these you should probably have a helper move_key function anyway.

In general, I'd strongly recommend sticking with the conditional version by default unless you have a specific reason not to. Conditionals are the obvious way to do this, which is usually a strong recommendation to prefer one solution over another.

6
  • 3
    I don't agree. If you say "do X, and if that doesn't work, do Y". Main reason against the conditional solution here, you have to write "blah" more often, which leads to a more error-prone situation.
    – glglgl
    Jul 18 '13 at 8:09
  • 6
    And, expecially in Python, EAFP is very widely used.
    – glglgl
    Jul 18 '13 at 8:09
  • 8
    This answer would be correct for any language I know except for Python. Nov 29 '16 at 22:02
  • 3
    If you're using exceptions as if they're conditionals in Python, I hope nobody else has to read it. Dec 6 '16 at 23:59
  • So, what is the final verdict? : ) Sep 15 '17 at 15:45
69

There is also a third way that avoids both exceptions and double-lookup, which can be important if the lookup is expensive:

value = B.get("blah", None)
if value is not None: 
    A["blah"] = value

In case you expect the dictionary to contain None values, you can use some more esoteric constants like NotImplemented, Ellipsis or make a new one:

MyConst = object()
def update_key(A, B, key):
    value = B.get(key, MyConst)
    if value is not MyConst: 
        A[key] = value

Anyway, using update() is the most readable option for me:

a.update((k, b[k]) for k in ("foo", "bar", "blah") if k in b)
0
14

From what I understand, you want to update dict A with key,value pairs from dict B

update is a better choice.

A.update(B)

Example:

>>> A = {'a':1, 'b': 2, 'c':3}
>>> B = {'d': 2, 'b':5, 'c': 4}
>>> A.update(B)
>>> A
{'a': 1, 'c': 4, 'b': 5, 'd': 2}
>>> 
2
  • "If a specific key does not exist in B" Sorry, should've been more clear, but I only want to copy over values if specific keys in B exist. Not all in B.
    – LeeMobile
    Dec 22 '10 at 19:04
  • 1
    @LeeMobile - A.update({k: v for k, v in B.iteritems() if k in specificset}) Dec 22 '10 at 19:14
10

Direct quote from Python performance wiki:

Except for the first time, each time a word is seen the if statement's test fails. If you are counting a large number of words, many will probably occur multiple times. In a situation where the initialization of a value is only going to occur once and the augmentation of that value will occur many times it is cheaper to use a try statement.

So it seems that both options are viable depending from situation. For more details you might like to check this link out: Try-except-performance

1
  • that's an interesting read, but I think somewhat incomplete. The dict used only has 1 element and I suspect larger dicts will have a significant impact on performance Sep 29 '18 at 14:14
3

I think the general rule here is will A["blah"] normally exist, if so try-except is good if not then use if "blah" in b:

I think "try" is cheap in time but "except" is more expensive.

2
  • 10
    Don't approach code from an optimization perspective by default; approach it from a readability and maintainability perspective. Unless the goal is specifically optimization, this is the wrong criteria (and if it is optimization, the answer is benchmarking, not guessing). Dec 22 '10 at 19:42
  • I should probably have put the last point in brackets or somehow vaguer - my main point was the first one and I think it has the added advantage of the second.
    – neil
    Dec 23 '10 at 12:31
3

I think the second example is what you should go for unless this code makes sense:

try:
    A["foo"] = B["foo"]
    A["bar"] = B["bar"]
    A["baz"] = B["baz"]
except KeyError:
    pass

Keep in mind that code will abort as soon as there is a key that isn't in B. If this code makes sense, then you should use the exception method, otherwise use the test method. In my opinion, because it's shorter and clearly expresses the intent, it's a lot easier to read than the exception method.

Of course, the people telling you to use update are correct. If you are using a version of Python that supports dictionary comprehensions, I would strongly prefer this code:

updateset = {'foo', 'bar', 'baz'}
A.update({k: B[k] for k in updateset if k in B})
1
  • 1
    "Keep in mind that code will abort as soon as there is a key that isn't in B." - this is why it's best practice to put only the absolute minimum in the try: block, usually this is a single line. The first example would be better as part of a loop, such as for key in ["foo", "bar", "baz"]: try: A[key] = B[key]
    – Zim
    Jun 16 '20 at 1:14
2

The rule in other languages is to reserve exceptions for exceptional conditions, i.e. errors that don't occur in regular use. Don't know how that rule applies to Python, as StopIteration shouldn't exist by that rule.

3
  • I think this chestnut originated from languages where exception handling is expensive and so can have a significant impact on performance. I've never seen any real justification or reasoning behind it. Dec 23 '10 at 2:09
  • @JohnLaRooy No, performance isn't really the reason. Exceptions are a kind of non-local goto, which some people consider to impede readability of the code. However, use of exceptions in this way is considered idiomatic in Python so the above doesn't apply.
    – Ian Goldby
    Nov 24 '17 at 9:07
  • conditional returns are also "non-local goto" and many people prefer that style instead of inspecting sentinels at the end of the code block.
    – cowbert
    Jan 16 '18 at 2:11
2

Starting Python 3.8, and the introduction of assignment expressions (PEP 572) (:= operator), we can capture the condition value dictB.get('hello', None) in a variable value in order to both check if it's not None (as dict.get('hello', None) returns either the associated value or None) and then use it within the body of the condition:

# dictB = {'hello': 5, 'world': 42}
# dictA = {}
if value := dictB.get('hello', None):
  dictA["hello"] = value
# dictA is now {'hello': 5}
2
  • 3
    This fails if value == 0
    – Eric
    Sep 21 '19 at 4:40
  • Note that dict.get(key, None) is the same as dict.get(key). (docs)
    – Grilse
    Dec 11 '20 at 0:47
1

Personally, I lean towards the second method (but using has_key):

if B.has_key("blah"):
  A["blah"] = B["blah"]

That way, each assignment operation is only two lines (instead of 4 with try/except), and any exceptions that get thrown will be real errors or things you've missed (instead of just trying to access keys that aren't there).

As it turns out (see the comments on your question), has_key is deprecated - so I guess it's better written as

if "blah" in B:
  A["blah"] = B["blah"]
0
1

Though the accepted answer's emphasize on "look before you leap" principle might apply to most languages, more pythonic might be the first approach, based on the python principles. Not to mention it is a legitimate coding style in python. Important thing is to make sure you are using the try except block in the right context and is following best practices. Eg. doing too many things in a try block, catching a very broad exception, or worse- the bare except clause etc.

Easier to ask for forgiveness than permission. (EAFP)

See the python docs reference here.

Also, this blog from Brett, one of the core devs, touches most of this in brief.

See another SO discussion here:

1

In addition to discussing readability, I think performance also matters in some scenarios. A quick timeit benchmark indicates that a test (i.e. “asking permission”) is actually slightly faster than handling the exception (i.e. “asking forgiveness”).

Here’s the code to set up the benchmark, generating a largeish dictionary of random key-value pairs:

setup = """
import random, string
d = {"".join(random.choices(string.ascii_letters, k=3)): "".join(random.choices(string.ascii_letters, k=3)) for _ in range(10000)}
"""

Then the if test:

stmt1 = """
key = "".join(random.choices(string.ascii_letters, k=3))
if key in d:
    _ = d[key]
"""

gives us:

>>> timeit.timeit(stmt=stmt1, setup=setup, number=1000000)
1.6444563979999884

whereas the approach utilizing the exception

stmt2 = """
key = "".join(random.choices(string.ascii_letters, k=3))
try:
    _ = d[key]
except KeyError:
    pass
"""

gives us:

>>> timeit.timeit(stmt=stmt2, setup=setup, number=1000000)
1.8868465850000575

Interestingly, hoisting the key generation from the actual benchmark into the setup and therewith looking for the same key over and over, delivers vastly different numbers:

>>> timeit.timeit(stmt=stmt1, setup=setup, number=100000000)
2.3290171539999847
>>> timeit.timeit(stmt=stmt2, setup=setup, number=100000000)
26.412447488999987

I don’t want to speculate whether this emphasizes the benefits of a test vs. exception handling, or if the dictionary buffers the result of the previous lookup and thus biases the benchmark results towards testing… 🤔

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