I have a problem with filetypes when converting a parquet file to a dataframe.
bucket = 's3://some_bucket/test/usages' import pyarrow.parquet as pq import s3fs s3 = s3fs.S3FileSystem() read_pq = pq.ParquetDataset(bucket, filesystem=s3).read_pandas()
When I do
read_pq, I get
pyarrow.Table _COL_0: decimal(9, 0) _COL_1: decimal(9, 0) _COL_2: decimal(9, 0) _COL_3: decimal(9, 0)
When I do
df = read_pd.to_pandas(); df.dtypes, I get
_COL_0 object _COL_1 object _COL_2 object _COL_3 object dtype: object
The original data are all integers. When I operate on the objects in the pandas dataframe, the operations are very slow.
- How can I convert the parquet columns to a format that will be read as an int or as a float in pandas?
- Or is it best to operate on the pandas dataframe as above and use
- Or is there an issue with the original dataformat
Or is it best to convert on the pandas dataframe directly?
read_pq.column('_COL_0').cast('int32') throws an error like
No cast implemented from decimal(9, 0) to int32