I'm using Dask to load an 11m row csv into a dataframe and perform calculations. I've reached a position where I need conditional logic - If this, then that, else other.
If I were to use pandas, for example, I could do the following, where a numpy select statement is used along with an array of conditions and results. This statement takes about 35 seconds to run - not bad, but not great:
df["AndHeathSolRadFact"] = np.select( [ (df['Month'].between(8,12)), (df['Month'].between(1,2) & df['CloudCover']>30) #Array of CONDITIONS ], #list of conditions [1, 1], #Array of RESULTS (must match conditions) default=0) #DEFAULT if no match
What I am hoping to do is use dask to do this, natively, in a dask dataframe, without having to first convert my dask dataframe to a pandas dataframe, and then back again. This allows me to: - Use multithreading - Use a dataframe that is larger than available ram - Potentially speed up the result.
Location,Date,Temperature,RH,WindDir,WindSpeed,DroughtFactor,Curing,CloudCover 1075,2019-20-09 04:00,6.8,99.3,143.9,5.6,10.0,93.0,1.0 1075,2019-20-09 05:00,6.4,100.0,93.6,7.2,10.0,93.0,1.0 1075,2019-20-09 06:00,6.7,99.3,130.3,6.9,10.0,93.0,1.0 1075,2019-20-09 07:00,8.6,95.4,68.5,6.3,10.0,93.0,1.0 1075,2019-20-09 08:00,12.2,76.0,86.4,6.1,10.0,93.0,1.0
Full Code for minimum viable sample
import dask.dataframe as dd import dask.multiprocessing import dask.threaded import pandas as pd import numpy as np # Dataframes implement the Pandas API import dask.dataframe as dd from timeit import default_timer as timer start = timer() ddf = dd.read_csv(r'C:\Users\i5-Desktop\Downloads\Weathergrids.csv') #Convert back to a Dask dataframe because we want that juicy parallelism ddf2 = dd.from_pandas(df,npartitions=4) del [df] print(ddf2.head()) #print(ddf.tail()) end = timer() print(end - start) #Clean up remaining dataframes del [[ddf2]