I'm reading a huge CSV with a date field in the format YYYYMMDD and I'm using the following lambda to convert it when reading:

import pandas as pd

df = pd.read_csv(filen,
                 date_parser=lambda t:pd.to_datetime(str(t),
                                            format='%Y%m%d', coerce=True))

This function is very slow though.

Any suggestion to improve it?


8 Answers 8


Note: As @ritchie46's answer states, this solution may be redundant since pandas version 0.25 per the new argument cache_dates that defaults to True

Try using this function for parsing dates:

def lookup(date_pd_series, format=None):
    This is an extremely fast approach to datetime parsing.
    For large data, the same dates are often repeated. Rather than
    re-parse these, we store all unique dates, parse them, and
    use a lookup to convert all dates.
    dates = {date:pd.to_datetime(date, format=format) for date in date_pd_series.unique()}
    return date_pd_series.map(dates)

Use it like:

df['date-column'] = lookup(df['date-column'], format='%Y%m%d')


$ python date-parse.py
to_datetime: 5799 ms
dateutil:    5162 ms
strptime:    1651 ms
manual:       242 ms
lookup:        32 ms

Source: https://github.com/sanand0/benchmarks/tree/master/date-parse

  • There's a problem with NaN: return s.apply(lambda v: dates[v]) KeyError: nan
    – ppaulojr
    Apr 29, 2015 at 18:51
  • 3
    Wow: this is super! I have 1M row test file. It takes 1 second to read it (no date parsing) but 1m20s if I turn on parse_dates. Your lookup() solution adds only 0.4 seconds to the initial 1 sec read_csv().
    – jdmarino
    Aug 10, 2015 at 19:20
  • 1
    @fixxer this is incredible..clever use of apply! what a great principle..can be applied as a function for any kind of dict look up.
    – JDE876
    Oct 9, 2015 at 20:16
  • 2
    The benchmark results above are based on parsing 100,000 identical dates. I haven't run into data like this before. I've re-run the same test using 100,000 random dates and now find that "manual" is much faster than "lookup". Unsurprisingly as I introduce more repeated dates, "lookup" performs better. On my system it surpasses "manual" at roughly 125 repetitions per date.
    – Ben Graham
    Oct 19, 2018 at 2:29
  • 1
    I also supplied the optimal format= argument in your pd.to_datetime line. Anyway, this piece of code sped it up like crazy. I had a 13 GB csv and each date was repeated about 340,000 times. I was previously including cache=True in pd.to_datetime, thinking that its performance would be similar, but this is wildly faster. Feb 26, 2019 at 22:48

Great suggestion @EdChum! As @EdChum suggests, using infer_datetime_format=True can be significantly faster. Below is my example.

I have a file of temperature data from a sensor log, which looks like this:

1,11/7/2013 20:53:01,13.60,"117","1",
2,11/7/2013 21:08:01,13.60,"117","1",
3,11/7/2013 21:23:01,13.60,"117","1",
4,11/7/2013 21:38:01,13.60,"117","1",

My code reads the csv and parses the date (parse_dates=['Date']). With infer_datetime_format=False, it takes 8min 8sec:

Tue Jan 24 12:18:27 2017 - Loading the Temperature data file.
Tue Jan 24 12:18:27 2017 - Temperature file is 88.172 MB.
Tue Jan 24 12:18:27 2017 - Loading into memory. Please be patient.
Tue Jan 24 12:26:35 2017 - Success: loaded 2,169,903 records.

With infer_datetime_format=True, it takes 13sec:

Tue Jan 24 13:19:58 2017 - Loading the Temperature data file.
Tue Jan 24 13:19:58 2017 - Temperature file is 88.172 MB.
Tue Jan 24 13:19:58 2017 - Loading into memory. Please be patient.
Tue Jan 24 13:20:11 2017 - Success: loaded 2,169,903 records.
  • Omitting infer_datetime_format also generates a very long and angry set of warnings telling you to not omit it even if it still runs with no error.
    – cardamom
    Jan 29 at 9:06

Unless you're stuck with a very old version of pandas, pre 0.25, this answer is not for you.

The functionality described here has been merged into pandas in version 0.25

Streamlined date parsing with caching

Reading all data and then converting it will always be slower than converting while reading the CSV. Since you won't need to iterate over all the data twice if you do it right away. You also don't have to store it as strings in memory.

We can define our own date parser that utilizes a cache for the dates it has already seen.

import pandas as pd

cache = {}

def cached_date_parser(s):
    if s in cache:
        return cache[s]
    dt = pd.to_datetime(s, format='%Y%m%d', coerce=True)
    cache[s] = dt
    return dt
df = pd.read_csv(filen,

Has the same advantages as @fixxxer s answer with only parsing each string once, with the extra added bonus of not having to read all the data and THEN parse it. Saving you memory and processing time.

  • I got error to_datetime() got an unexpected keyword argument 'coerce'. When I tried to pass the argument errors='coerce', I got NaT instead. Aug 23, 2019 at 3:12
  • Thank you for shating this, but as @ritchie46 indicated, since pandas 0.25 the caching is automatically done by default through cache_dates=boolean: stackoverflow.com/a/59682653/2906290 Oct 10, 2022 at 16:54

Since pandas version 0.25 the function pandas.read_csv accepts a cache_dates=boolean (which defaults to True) keyword argument. So no need to write your own function for caching as done in the accepted answer.


No need to specify a date_parser, pandas is able to parse this without any trouble, plus it will be much faster:

In [21]:

import io
import pandas as pd
df = pd.read_csv(io.StringIO(t), parse_dates=[0])
<class 'pandas.core.frame.DataFrame'>
Int64Index: 3 entries, 0 to 2
Data columns (total 2 columns):
date    3 non-null datetime64[ns]
val     3 non-null int64
dtypes: datetime64[ns](1), int64(1)
memory usage: 72.0 bytes
In [22]:

        date    val
0 2012-06-08  12321
1 2013-06-08  12321
2 2014-03-08  12321
  • 1
    isn't inferring going to make things even slower? Apr 30, 2015 at 9:12
  • @MarcusMüller don't know unless you try, the docs seem to imply that once it's sniffed the format it may optimise the date parsing rather than guessing each time
    – EdChum
    Apr 30, 2015 at 9:14

Try the standard library:

import datetime
parser = lambda t: datetime.datetime.strptime(str(t), "%Y%m%d")

However, I don't really know if this is much faster than pandas.

Since your format is so simple, what about

def parse(t):
     string_ = str(t)
     return datetime.date(int(string_[:4]), int(string[4:6]), int(string[6:]))

EDIT you say you need to take care of invalid data.

def parse(t):
     string_ = str(t)
         return datetime.date(int(string_[:4]), int(string[4:6]), int(string[6:]))
         return default_datetime #you should define that somewhere else

All in all, I'm a bit conflicted about the validity of your problem:

  • you need to be fast, but still you get your data from a CSV
  • you need to be fast, but still need to deal with invalid data

That's kind of contradicting; my personal approach here would be assuming that your "huge" CSV just needs to be brought into a better-performing format once, and you either shouldn't care about speed of that conversion process (because it only happens once) or you should probably bring whatever produces the CSV to give you better data--there's so many formats that don't rely on string parsing.

  • Unfortunately it does not work well with invalid dates in some rows (I'm not sure how to coerce using your method
    – ppaulojr
    Apr 29, 2015 at 21:46
  • you didn't mention that you need to take care of invalid data; that's a bit of an unfair problem Apr 30, 2015 at 9:13

If your datetime has UTC timestamp and you just need part of it. Convert it to a string, slice what you need and then apply the below for much faster access.

2018-01-31 15:15:08 UTC
2018-01-31 15:16:02 UTC
2018-01-31 15:27:10 UTC
2018-02-01 07:05:55 UTC
2018-02-01 08:50:14 UTC

df["date"]=  df["created_at"].apply(lambda x: str(x)[:10])

df["date"] = pd.to_datetime(df["date"])

I have a csv with ~150k rows. After trying almost all the suggestions in this post, I found 25% faster to:

  1. read the file row by row using Python3.7 native csv.reader
  2. convert all 4 numeric columns using float() and
  3. parse the date column with datetime.datetime.fromisoformat()

and Behold:

  1. finally convert the list to a DataFrame (!)**

It baffles me how can this be faster than native pandas pd.read_csv(...)... can someone explain?

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