240

I am trying to read a large csv file (aprox. 6 GB) in pandas and i am getting a memory error:

MemoryError                               Traceback (most recent call last)
<ipython-input-58-67a72687871b> in <module>()
----> 1 data=pd.read_csv('aphro.csv',sep=';')

...

MemoryError: 

Any help on this?

3

15 Answers 15

336

The error shows that the machine does not have enough memory to read the entire CSV into a DataFrame at one time. Assuming you do not need the entire dataset in memory all at one time, one way to avoid the problem would be to process the CSV in chunks (by specifying the chunksize parameter):

chunksize = 10 ** 6
for chunk in pd.read_csv(filename, chunksize=chunksize):
    process(chunk)

The chunksize parameter specifies the number of rows per chunk. (The last chunk may contain fewer than chunksize rows, of course.)


pandas >= 1.2

read_csv with chunksize returns a context manager, to be used like so:

chunksize = 10 ** 6
with pd.read_csv(filename, chunksize=chunksize) as reader:
    for chunk in reader:
        process(chunk)

See GH38225

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  • 23
    you generally need 2X the final memory to read in something (from csv, though other formats are better at having lower memory requirements). FYI this is true for trying to do almost anything all at once. Much better to chunk it (which has a constant memory usage). – Jeff Sep 21 '14 at 17:57
  • 29
    @altabq: The problem here is that we don't have enough memory to build a single DataFrame holding all the data. The solution above tries to cope with this situation by reducing the chunks (e.g. by aggregating or extracting just the desired information) one chunk at a time -- thus saving memory. Whatever you do, DO NOT call DF.append(chunk) inside the loop. That will use O(N^2) copying operations. It is better to append the aggregated data to a list, and then build the DataFrame from the list with one call to pd.DataFrame or pd.concat (depending on the type of aggregated data). – unutbu Feb 17 '16 at 18:29
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    @altabq: Calling DF.append(chunk) in a loop requires O(N^2) copying operations where N is the size of the chunks, because each call to DF.append returns a new DataFrame. Calling pd.DataFrame or pd.concat once outside the loop reduces the amount of copying to O(N). – unutbu Feb 17 '16 at 18:33
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    @Pyderman: Yes, the chunksize parameter refers to the number of rows per chunk. The last chunk may contain fewer than chunksize rows, of course. – unutbu May 11 '16 at 18:06
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    @Pyderman: Yes; calling pd.concat([list_of_dfs]) once after the loop is much faster than calling pd.concat or df.append many times within the loop. Of course, you'll need a considerable amount of memory to hold the entire 6GB csv as one DataFrame. – unutbu May 11 '16 at 18:27
119

Chunking shouldn't always be the first port of call for this problem.

  1. Is the file large due to repeated non-numeric data or unwanted columns?

    If so, you can sometimes see massive memory savings by reading in columns as categories and selecting required columns via pd.read_csv usecols parameter.

  2. Does your workflow require slicing, manipulating, exporting?

    If so, you can use dask.dataframe to slice, perform your calculations and export iteratively. Chunking is performed silently by dask, which also supports a subset of pandas API.

  3. If all else fails, read line by line via chunks.

    Chunk via pandas or via csv library as a last resort.

0
46

For large data l recommend you use the library "dask"
e.g:

# Dataframes implement the Pandas API
import dask.dataframe as dd
df = dd.read_csv('s3://.../2018-*-*.csv')

You can read more from the documentation here.

Another great alternative would be to use modin because all the functionality is identical to pandas yet it leverages on distributed dataframe libraries such as dask.

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  • 16
    Any benefits over pandas, could appreciate adding a few more pointers – PirateApp Apr 21 '18 at 11:38
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    I haven't used Dask for very long but the main advantages in my use cases were that Dask can run parallel on multiple machines, it can also fit data as slices into memory. – Simbarashe Timothy Motsi Apr 23 '18 at 7:42
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    thanks! is dask a replacement for pandas or does it work on top of pandas as a layer – PirateApp Apr 28 '18 at 12:30
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    Welcome, it works as a wrapper for Numpy, Pandas, and Scikit-Learn. – Simbarashe Timothy Motsi Apr 28 '18 at 12:35
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    I've tried to face several problems with Dask and always throws an error for everything. Even with chunks It throws Memory errors too. See stackoverflow.com/questions/59865572/… – Genarito Jan 24 '20 at 14:43
37

I proceeded like this:

chunks=pd.read_table('aphro.csv',chunksize=1000000,sep=';',\
       names=['lat','long','rf','date','slno'],index_col='slno',\
       header=None,parse_dates=['date'])

df=pd.DataFrame()
%time df=pd.concat(chunk.groupby(['lat','long',chunk['date'].map(lambda x: x.year)])['rf'].agg(['sum']) for chunk in chunks)
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    Is there a reason you switched from read_csv to read_table? – Pyderman May 9 '16 at 22:06
12

The above answer is already satisfying the topic. Anyway, if you need all the data in memory - have a look at bcolz. Its compressing the data in memory. I have had really good experience with it. But its missing a lot of pandas features

Edit: I got compression rates at around 1/10 or orig size i think, of course depending of the kind of data. Important features missing were aggregates.

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    Please improve this answer by telling us a) what compression ratios you get and b) what main features of pandas it's missing? Can it handle NAs? strings? categoricals? dates? – smci Nov 26 '16 at 15:14
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    Huh? Can it handle NAs? strings? categoricals? dates? These are the things that make pandas csv reading slow and flabby. NAs and objects like strings (even short ones) are a killer. Btw the .ipynb referenced from your blog is down. – smci Nov 29 '16 at 15:23
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    @smci i was reading you note. but i suggest you have a look at the docs. i would need to read them myself. – PlagTag Nov 30 '16 at 10:59
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    Ok so it can't handle NAs, strings, or dates. I doubt it can handle floats either. – smci Dec 10 '16 at 20:28
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    I suppose you could preprocess with pandas using the chunks method mentioned, then use bcolz if you need all the data in memory to do an analysis. Just a thought. – JakeCowton Jun 19 '17 at 11:32
7

You can read in the data as chunks and save each chunk as pickle.

import pandas as pd 
import pickle

in_path = "" #Path where the large file is
out_path = "" #Path to save the pickle files to
chunk_size = 400000 #size of chunks relies on your available memory
separator = "~"

reader = pd.read_csv(in_path,sep=separator,chunksize=chunk_size, 
                    low_memory=False)    


for i, chunk in enumerate(reader):
    out_file = out_path + "/data_{}.pkl".format(i+1)
    with open(out_file, "wb") as f:
        pickle.dump(chunk,f,pickle.HIGHEST_PROTOCOL)

In the next step you read in the pickles and append each pickle to your desired dataframe.

import glob
pickle_path = "" #Same Path as out_path i.e. where the pickle files are

data_p_files=[]
for name in glob.glob(pickle_path + "/data_*.pkl"):
   data_p_files.append(name)


df = pd.DataFrame([])
for i in range(len(data_p_files)):
    df = df.append(pd.read_pickle(data_p_files[i]),ignore_index=True)
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    If your final df fits entirely in memory (as implied) and contains the same amount of data as your input, surely you don't need to chunk at all? – jpp Feb 19 '19 at 9:15
  • You would need to chunk in this case if, for example, your file is very wide (like greater than 100 columns with a lot of string columns). This increases the memory needed to hold the df in memory. Even a 4GB file like this could end up using between 20 and 30 GB of RAM on a box with 64 GB RAM. – cdabel Oct 14 '19 at 23:20
5

I want to make a more comprehensive answer based off of the most of the potential solutions that are already provided. I also want to point out one more potential aid that may help reading process.

Option 1: dtypes

"dtypes" is a pretty powerful parameter that you can use to reduce the memory pressure of read methods. See this and this answer. Pandas, on default, try to infer dtypes of the data.

Referring to data structures, every data stored, a memory allocation takes place. At a basic level refer to the values below (The table below illustrates values for C programming language):

The maximum value of UNSIGNED CHAR = 255                                    
The minimum value of SHORT INT = -32768                                     
The maximum value of SHORT INT = 32767                                      
The minimum value of INT = -2147483648                                      
The maximum value of INT = 2147483647                                       
The minimum value of CHAR = -128                                            
The maximum value of CHAR = 127                                             
The minimum value of LONG = -9223372036854775808                            
The maximum value of LONG = 9223372036854775807

Refer to this page to see the matching between NumPy and C types.

Let's say you have an array of integers of digits. You can both theoretically and practically assign, say array of 16-bit integer type, but you would then allocate more memory than you actually need to store that array. To prevent this, you can set dtype option on read_csv. You do not want to store the array items as long integer where actually you can fit them with 8-bit integer (np.int8 or np.uint8).

Observe the following dtype map.

Source: https://pbpython.com/pandas_dtypes.html

You can pass dtype parameter as a parameter on pandas methods as dict on read like {column: type}.

import numpy as np
import pandas as pd

df_dtype = {
        "column_1": int,
        "column_2": str,
        "column_3": np.int16,
        "column_4": np.uint8,
        ...
        "column_n": np.float32
}

df = pd.read_csv('path/to/file', dtype=df_dtype)

Option 2: Read by Chunks

Reading the data in chunks allows you to access a part of the data in-memory, and you can apply preprocessing on your data and preserve the processed data rather than raw data. It'd be much better if you combine this option with the first one, dtypes.

I want to point out the pandas cookbook sections for that process, where you can find it here. Note those two sections there;

Option 3: Dask

Dask is a framework that is defined in Dask's website as:

Dask provides advanced parallelism for analytics, enabling performance at scale for the tools you love

It was born to cover the necessary parts where pandas cannot reach. Dask is a powerful framework that allows you much more data access by processing it in a distributed way.

You can use dask to preprocess your data as a whole, Dask takes care of the chunking part, so unlike pandas you can just define your processing steps and let Dask do the work. Dask does not apply the computations before it is explicitly pushed by compute and/or persist (see the answer here for the difference).

Other Aids (Ideas)

  • ETL flow designed for the data. Keeping only what is needed from the raw data.
    • First, apply ETL to whole data with frameworks like Dask or PySpark, and export the processed data.
    • Then see if the processed data can be fit in the memory as a whole.
  • Consider increasing your RAM.
  • Consider working with that data on a cloud platform.
4

The function read_csv and read_table is almost the same. But you must assign the delimiter “,” when you use the function read_table in your program.

def get_from_action_data(fname, chunk_size=100000):
    reader = pd.read_csv(fname, header=0, iterator=True)
    chunks = []
    loop = True
    while loop:
        try:
            chunk = reader.get_chunk(chunk_size)[["user_id", "type"]]
            chunks.append(chunk)
        except StopIteration:
            loop = False
            print("Iteration is stopped")

    df_ac = pd.concat(chunks, ignore_index=True)
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  • It would help if stated what your question is in this post. Like "What is the difference between read_csv and read_table?" or "Why does read table need a delimiter?" – nate_weldon Apr 26 '17 at 15:44
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    It depends how your file looks. Some files have common delimiters such as "," or "|" or "\t" but you may see other files with delimiters such as 0x01, 0x02 (making this one up) etc. So read_table is more suited to uncommon delimiters but read_csv can do the same job just as good. – Naufal Jun 10 '18 at 18:46
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Solution 1:

Using pandas with large data

Solution 2:

TextFileReader = pd.read_csv(path, chunksize=1000)  # the number of rows per chunk

dfList = []
for df in TextFileReader:
    dfList.append(df)

df = pd.concat(dfList,sort=False)
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    Here again we are loading the 6 GB file totally to the memory, Is there any options, we can process the current chunk and then read the next chunk – debaonline4u Dec 20 '18 at 9:08
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    just don't do dfList.append, just process each chunk ( df ) separately – gokul_uf Dec 20 '18 at 14:13
3

Here follows an example:

chunkTemp = []
queryTemp = []
query = pd.DataFrame()

for chunk in pd.read_csv(file, header=0, chunksize=<your_chunksize>, iterator=True, low_memory=False):

    #REPLACING BLANK SPACES AT COLUMNS' NAMES FOR SQL OPTIMIZATION
    chunk = chunk.rename(columns = {c: c.replace(' ', '') for c in chunk.columns})

    #YOU CAN EITHER: 
    #1)BUFFER THE CHUNKS IN ORDER TO LOAD YOUR WHOLE DATASET 
    chunkTemp.append(chunk)

    #2)DO YOUR PROCESSING OVER A CHUNK AND STORE THE RESULT OF IT
    query = chunk[chunk[<column_name>].str.startswith(<some_pattern>)]   
    #BUFFERING PROCESSED DATA
    queryTemp.append(query)

#!  NEVER DO pd.concat OR pd.DataFrame() INSIDE A LOOP
print("Database: CONCATENATING CHUNKS INTO A SINGLE DATAFRAME")
chunk = pd.concat(chunkTemp)
print("Database: LOADED")

#CONCATENATING PROCESSED DATA
query = pd.concat(queryTemp)
print(query)
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You can try sframe, that have the same syntax as pandas but allows you to manipulate files that are bigger than your RAM.

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2

If you use pandas read large file into chunk and then yield row by row, here is what I have done

import pandas as pd

def chunck_generator(filename, header=False,chunk_size = 10 ** 5):
   for chunk in pd.read_csv(filename,delimiter=',', iterator=True, chunksize=chunk_size, parse_dates=[1] ): 
        yield (chunk)

def _generator( filename, header=False,chunk_size = 10 ** 5):
    chunk = chunck_generator(filename, header=False,chunk_size = 10 ** 5)
    for row in chunk:
        yield row

if __name__ == "__main__":
filename = r'file.csv'
        generator = generator(filename=filename)
        while True:
           print(next(generator))
2

Before using chunksize option if you want to be sure about the process function that you want to write inside the chunking for-loop as mentioned by @unutbu you can simply use nrows option.

small_df = pd.read_csv(filename, nrows=100)

Once you are sure that the process block is ready, you can put that in the chunking for loop for the entire dataframe.

1

In case someone is still looking for something like this, I found that this new library called modin can help. It uses distributed computing that can help with the read. Here's a nice article comparing its functionality with pandas. It essentially uses the same functions as pandas.

import modin.pandas as pd
pd.read_csv(CSV_FILE_NAME)
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0

In addition to the answers above, for those who want to process CSV and then export to csv, parquet or SQL, d6tstack is another good option. You can load multiple files and it deals with data schema changes (added/removed columns). Chunked out of core support is already built in.

def apply(dfg):
    # do stuff
    return dfg

c = d6tstack.combine_csv.CombinerCSV([bigfile.csv], apply_after_read=apply, sep=',', chunksize=1e6)

# or
c = d6tstack.combine_csv.CombinerCSV(glob.glob('*.csv'), apply_after_read=apply, chunksize=1e6)

# output to various formats, automatically chunked to reduce memory consumption
c.to_csv_combine(filename='out.csv')
c.to_parquet_combine(filename='out.pq')
c.to_psql_combine('postgresql+psycopg2://usr:pwd@localhost/db', 'tablename') # fast for postgres
c.to_mysql_combine('mysql+mysqlconnector://usr:pwd@localhost/db', 'tablename') # fast for mysql
c.to_sql_combine('postgresql+psycopg2://usr:pwd@localhost/db', 'tablename') # slow but flexible

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