The CSV file that I want to read does not fit into main memory. How can I read a few (~10K) random lines of it and do some simple statistics on the selected data frame?
Assuming no header in the CSV file:
import pandas import random n = 1000000 #number of records in file s = 10000 #desired sample size filename = "data.txt" skip = sorted(random.sample(xrange(n),n-s)) df = pandas.read_csv(filename, skiprows=skip)
would be better if read_csv had a keeprows, or if skiprows took a callback func instead of a list.
With header and unknown file length:
import pandas import random filename = "data.txt" n = sum(1 for line in open(filename)) - 1 #number of records in file (excludes header) s = 10000 #desired sample size skip = sorted(random.sample(xrange(1,n+1),n-s)) #the 0-indexed header will not be included in the skip list df = pandas.read_csv(filename, skiprows=skip)
If you can specify what percent of lines you want, rather than how many lines, you don't even need to get the file size and you just need to read through the file once. Assuming a header on the first row:
import pandas as pd import random p = 0.01 # 1% of the lines # keep the header, then take only 1% of lines # if random from [0,1] interval is greater than 0.01 the row will be skipped df = pd.read_csv( filename, header=0, skiprows=lambda i: i>0 and random.random() > p )
Or, if you want to take every
n = 100 # every 100th line = 1% of the lines df = pd.read_csv(filename, header=0, skiprows=lambda i: i % n != 0)
This is not in Pandas, but it achieves the same result much faster through bash, while not reading the entire file into memory:
shuf -n 100000 data/original.tsv > data/sample.tsv
shuf command will shuffle the input and the and the
-n argument indicates how many lines we want in the output.
Relevant question: https://unix.stackexchange.com/q/108581
Benchmark on a 7M lines csv available here (2008):
def pd_read(): filename = "2008.csv" n = sum(1 for line in open(filename)) - 1 #number of records in file (excludes header) s = 100000 #desired sample size skip = sorted(random.sample(range(1,n+1),n-s)) #the 0-indexed header will not be included in the skip list df = pandas.read_csv(filename, skiprows=skip) df.to_csv("temp.csv")
Timing for pandas:
%time pd_read() CPU times: user 18.4 s, sys: 448 ms, total: 18.9 s Wall time: 18.9 s
time shuf -n 100000 2008.csv > temp.csv real 0m1.583s user 0m1.445s sys 0m0.136s
shuf is about 12x faster and importantly does not read the whole file into memory.
Here is an algorithm that doesn't require counting the number of lines in the file beforehand, so you only need to read the file once.
Say you want m samples. First, the algorithm keeps the first m samples. When it sees the i-th sample (i > m), with probability m/i, the algorithm uses the sample to randomly replace an already selected sample.
By doing so, for any i > m, we always have a subset of m samples randomly selected from the first i samples.
See code below:
import random n_samples = 10 samples =  for i, line in enumerate(f): if i < n_samples: samples.append(line) elif random.random() < n_samples * 1. / (i+1): samples[random.randint(0, n_samples-1)] = line
The following code reads first the header, and then a random sample on the other lines:
import pandas as pd import numpy as np filename = 'hugedatafile.csv' nlinesfile = 10000000 nlinesrandomsample = 10000 lines2skip = np.random.choice(np.arange(1,nlinesfile+1), (nlinesfile-nlinesrandomsample), replace=False) df = pd.read_csv(filename, skiprows=lines2skip)
class magic_checker: def __init__(self,target_count): self.target = target_count self.count = 0 def __eq__(self,x): self.count += 1 return self.count >= self.target min_target=100000 max_target = min_target*2 nlines = randint(100,1000) seek_target = randint(min_target,max_target) with open("big.csv") as f: f.seek(seek_target) f.readline() #discard this line rand_lines = list(iter(lambda:f.readline(),magic_checker(nlines))) #do something to process the lines you got returned .. perhaps just a split print rand_lines print rand_lines.split(",")
something like that should work I think
import random from os import fstat from sys import exit f = open('/usr/share/dict/words') # Number of lines to be read lines_to_read = 100 # Minimum and maximum bytes that will be randomly skipped min_bytes_to_skip = 10000 max_bytes_to_skip = 1000000 def is_EOF(): return f.tell() >= fstat(f.fileno()).st_size # To accumulate the read lines sampled_lines =  for n in xrange(lines_to_read): bytes_to_skip = random.randint(min_bytes_to_skip, max_bytes_to_skip) f.seek(bytes_to_skip, 1) # After skipping "bytes_to_skip" bytes, we can stop in the middle of a line # Skip current entire line f.readline() if not is_EOF(): sampled_lines.append(f.readline()) else: # Go to the begginig of the file ... f.seek(0, 0) # ... and skip lines again f.seek(bytes_to_skip, 1) # If it has reached the EOF again if is_EOF(): print "You have skipped more lines than your file has" print "Reduce the values of:" print " min_bytes_to_skip" print " max_bytes_to_skip" exit(1) else: f.readline() sampled_lines.append(f.readline()) print sampled_lines
You'll end up with a sampled_lines list. What kind of statistics do you mean?
pip install subsample subsample -n 1000 file.csv > file_1000_sample.csv
You can also create a sample with the 10000 records before bringing it into the Python environment.
Using Git Bash (Windows 10) I just ran the following command to produce the sample
shuf -n 10000 BIGFILE.csv > SAMPLEFILE.csv
To note: If your CSV has headers this is not the best solution.