I want to read a 28Gb csv file and print the contents. However, my code:
import json import sys from datetime import datetime from hashlib import md5 import dask.dataframe as dd import dask.multiprocessing import pandas as pd from kyotocabinet import * class IndexInKyoto: def hash_string(self, string): return md5(string.encode('utf-8')).hexdigest() def dbproc(self, db): db[self.hash_string(self.row)] = self.row def index_row(self, row): self.row = row DB.process(self.dbproc, "index.kch") start_time = datetime.utcnow() row_counter = 0 ob = IndexInKyoto() df = dd.read_csv("/Users/aviralsrivastava/dev/levelsdb-learning/10gb.csv", blocksize=1000000) df = df.compute(scheduler='processes') # convert to pandas df = df.to_dict(orient='records') for row in df: ob.index_row(row) print("Total time:") print(datetime.utcnow-start_time)
is not working. When I run the command
htop I can see dask running but there is no output whatsoever. Nor there is any index.kch file created.
I rant the same thing without using dask and it was running fine; I was using Pandas streaming api (
chunksize) but it was too slow and hence, I want to use dask.