0

First off, in my real situation I handel much bigger data sets, but here for this minimal, reproducible example (reprex) let's assume:

I have two .csv files. They look like this: File 1 is called "ObjectList.csv"

"Object","ProductName","ID"
"Radio","ICF-306",1112
"TV","Q60R",1113
"Computer","EliteBook745",1114
"Keyboard","LX410",1115
"Camera","D7500",1116
"USB-Stick","CruzerBlade",1117
"HDMI-Cable","AmazonBasic",1118
"Console","XBOXOne",1119
"Controller","XBOXOne",1120
"Antivirus","AntiVirusPlus",1121
"Game","HaloWars2",1122

File 2 is called "PropertyList.csv

"ID","Manufacturer","Category","Price","Release"
1112,"SONY","Electronics",50,"1.3.2015"
1113,"SAMSUNG","Electronics",800,"1.7.2016"
1114,"HP","Electronics",1500,"1.3.2018"
1115,"FUJITSU","Electronics","80","1.2.2016"
1116,"NIKON","Electronics","250","1.8.2017"
1117,"SANDISK","Accessories","20","1.6.2007"
1118,"AMAZON","Cables",15,"1.8.2015"
1119,"MICROSOFT","Entertainment",450,"22.11.2013"
1120,"MICROSOFT","Entertainment",50,"22.11.2013"
1121,"NORTON","Programme",100,"1.8.2016"
1122,"MicrosoftStudios","Programme",70,"21.2.2017"

As you can see the two .csv files have one column with overlapping information, the "ID" column. What I would like to do is 1. search for a specific property in file 2 (for example the most expensive product) 2. getting back the "ID" as the search result 3. use the computationally optained "ID" as a search term for file 1 to 4. as a final result get the clear object data.

So far I was able to do this manually, meaning I have a Python/Pandas script that extracts the IDs, then I manually have to look up the result and hard code the result into the script:

import pandas as pd

ObjectList="/media/jk/DE88159688156E71/Statistik/StackOverflow/ObjectList.csv"
PropertyList="/media/jk/DE88159688156E71/Statistik/StackOverflow/PropertyList.csv"

OL = pd.read_csv(ObjectList)
PL = pd.read_csv(PropertyList)

SN = PL[PL['Price']==PL['Price'].max()]['ID']
print(SN)

print(OL[OL.ID == 1114])

This script works and gives this result:

jk@debian:~$ python3 "/media/jk/DE88159688156E71/Statistik/StackOverflow/DataManipulation.py" 
2    1114
Name: ID, dtype: int64
     Object   ProductName    ID
2  Computer  EliteBook745  1114

Having to do manual look ups for computational results is bad for obvious reasons. Therefore my question is: How to use the search result from one .csv file as a search term for a second .csv file?

I tried this:

print(OL[OL['ID'] == SN])

But this just gives me an error.

Final remark: What I can NOT do in my real scenario is merging of the two files because they are too big for such an operation.

0

You can access the values of the series like: SN.values
In your example:

import pandas as pd

OL = pd.read_csv('ol.csv')
PL = pd.read_csv('pl.csv')

SN = PL[PL['Price']==PL['Price'].max()]['ID']

print(OL[OL.ID == SN.values[0]])
  • Thank you for your answer! This solution worked here for the reprex and also for my real, bigger dataset - thanks! – PolII Jun 12 at 16:10

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.