I'm reading a csv file, using DictReader(). The function returns a dictionary, where the header items are the keys and the cells are the values. Pretty cool.

But I'm trying to account for rows where the data may not be what I expect it to be. In that case (I'm catching a ValueError exception), I would like the rows that are 'suspect' to go into a separate dictionary, for manual processing.

My question is this: since my first dictionary (the object returned by DictReader) has all of its keys set up properly, how do I copy just the keys into my second dictionary, the one which I want to be just a dictionary of suspect rows, to be manually processed?

I've been toying around with dict.fromkeys() and such for a while now and I'm just not getting anywhere. Halp!

EDIT: Pasting some of my erroneous code. Going to go hide in shame of my code. Don't judge me! ;-)

unsure_rows = dict.fromkeys(dict(csv_reader).keys(), [])
for row in csv_reader:
#   if row['Start Time'] != 'None':
        if before_date > strptime(row['Start Time'], '%Y-%m-%d %H:%M:%S') > after_date:
    except ValueError:
        unsure_rows += row

ValueError: dictionary update sequence element #0 has length 13; 2 is required


You are close. Try:


This will initialize a dictionary with the same keys that you parsed from your CSV file, and each one will map to an empty list (to which, I assume, you will append your suspect row values).

Try this. (There are several subtler changes here that are all necessary, like how you can't initialize unsure_rows before you start reading the CSV.)

unsure_rows = None
for row in csv_reader:
#   if row['Start Time'] != 'None':
        if before_date > strptime(row['Start Time'], '%Y-%m-%d %H:%M:%S') > after_date:
    except ValueError:
        if not unsure_rows:
            # Initialize the unsure rows dictionary
            unsure_rows = dict.fromkeys(csv_reader.fieldnames,[])
        for key in unsure_rows:
  • Hrm. It seems to be having type errors, I have pasted a portion of the code in question above. – Harv Sep 10 '11 at 3:00
  • I want unsure_rows to also be a dictionary, so that I can reference the values easily. – Harv Sep 10 '11 at 3:12
  • I understand, but you'll have to clarify further. In your present code, when you reference a dictionary key, there is only one value to return since you are working with a single row. But in your unsure_rows structure, a single key will be referencing the values of [potentially] numerous rows. Do you want each dictionary key to map to the list of cell values for the column with which that key is associated? – cheeken Sep 10 '11 at 3:14
  • Ooh. Yes, I think that's exactly what I want! – Harv Sep 10 '11 at 3:15
  • 1
    The first suggestion will add the same list under all keys in the dictionary. Someone is in for a nasty surprise. – panda-34 Apr 3 '16 at 13:53

Have you tried:

newd = dict.fromkeys(origdict)

? If that doesn't work for you then please add more details about the error you are getting.


You wouldn't want to copy "just the keys" into another dictionary, but if you have "just the keys" you will have a set.

To get the keys from dict d, you need only say d.keys().

This returns a list (with keys in arbitrary order), which you can keep as a list or copy into a set with



>>> d = {'one': 1, 'three': 3, 'two': 2, 'four': 4} 
>>> set(d.keys())
set(['four', 'one', 'three', 'two'])


Now I see that you intend to capture suspect key-value pairs as you catch exceptions. In this case, just start with an empty dictionary

suspect = {}

And inside your code, which I would imagine is some kind of loop, add the suspect key value pairs like so:

while something():
    k, v = generate_pair()
        suspect[k] = v
  • Arg. Badly formed question. As I catch the exceptions, I want to append them into my 2nd dictionary. You're right, that means I don't want to just copy the keys, or to have a set. My train of thought is that the dictionary needs to have at least the keys, so that I can append the values later. Am I wrong? – Harv Sep 10 '11 at 2:43
  • Oh, I see. Just start with an empty dictionary, and add the suspect key-value pairs one by one as you detect them. I've updated the answer to show this. – Ray Toal Sep 10 '11 at 2:46

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