You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
I am getting response properly for queries while using BNP dataset. But while created my own custom dataset I'm receiving " AttributeError: Can only use .str accessor with string values! " error.
Data set:
title,paragraphs
Builder,"['Built by Shah Jahan, a Mughal Emperor and son of Jahangir','More than 20000 labourers were put in task and it took 14 years to build it']"
For whom,"['Taj Mahal is tomb of Mumtaj Mahal, wife of shah jahan','Mumtaj Mahal died while giving birth to her 14th child']"
location,"['Taj mahan is situated in Agra which is 4 hours drive from Delhi', 'One can reach Taj Mahal by road or Train']"
remarks,"['Taj Mahal is built with white marbels from rajasthan','it is one of the seven wonders of world']"
I am getting response properly for queries while using BNP dataset. But while created my own custom dataset I'm receiving " AttributeError: Can only use .str accessor with string values! " error.
Data set:
title,paragraphs
Builder,"['Built by Shah Jahan, a Mughal Emperor and son of Jahangir','More than 20000 labourers were put in task and it took 14 years to build it']"
For whom,"['Taj Mahal is tomb of Mumtaj Mahal, wife of shah jahan','Mumtaj Mahal died while giving birth to her 14th child']"
location,"['Taj mahan is situated in Agra which is 4 hours drive from Delhi', 'One can reach Taj Mahal by road or Train']"
remarks,"['Taj Mahal is built with white marbels from rajasthan','it is one of the seven wonders of world']"
This is the Code-
`df = pd.read_csv('./data/gokul.csv', converters={'paragraphs': literal_eval})
df = filter_paragraphs(df) #error
#instantiate cdQA pipeline
cdqa_pipeline = QAPipeline(reader='./models/bert_qa.joblib')
cdqa_pipeline.fit_retriever(df=df)`
error is in line filter_paragraphs(df)
The text was updated successfully, but these errors were encountered: