[ 
https://issues.apache.org/jira/browse/ARROW-16843?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=17555618#comment-17555618
 ] 

Thomas Buhrmann commented on ARROW-16843:
-----------------------------------------

If the information about the types being tried in order 
[here|https://arrow.apache.org/docs/cpp/csv.html#data-types] is correct, 
wouldn't it make sense to simply introduce the UInt64 type either directly 
after Int64 or before Float64? Not sure at all about the underlying 
implementation, but it sounds kind of trivial, and would be a nice gain in 
"correctness" (e.g. being able to read Twitter datasets without mangling tweet 
or author IDs).

> [Python][CSV] CSV reader performs unsafe type conversion
> --------------------------------------------------------
>
>                 Key: ARROW-16843
>                 URL: https://issues.apache.org/jira/browse/ARROW-16843
>             Project: Apache Arrow
>          Issue Type: Bug
>          Components: Python
>    Affects Versions: 8.0.0
>            Reporter: Thomas Buhrmann
>            Priority: Major
>
> Hi, I've noticed that although pa.scalar and pa.array behave correctly when 
> given the largest possible (uint64) value (i.e. they fail correctly when 
> trying to cast to float e.g.), the CSV reader happily converts strings 
> representing uint64 values to float (see example below). Is this intended? 
> Would it be possible to have a safe-conversion-only option?
> The problem is that at the moment the only safe option to read a CSV whose 
> types are not known in advance is to read without any conversion (string 
> only) and perform the type inference oneself.
> It would be ok if Uint64 types couldn't be inferred, as long as the 
> corresponding columns aren't coerced in a destructive manner to float. I.e., 
> if they were left as string columns, one could then implement a custom 
> conversion, while still benefiting from the correct and automatic conversion 
> of the remaining columns.
>  
> The following correctly rejects the float type for uint64 values:
> {code:java}
> import pyarrow as pa
> uint64_max = 18_446_744_073_709_551_615
> type_ = pa.uint64()
> uint64_scalar = pa.scalar(uint64_max, type=type_)
> uint64_array = pa.array([uint64_max], type=type_)
> try:
>     f = pa.scalar(uint64_max, type=pa.float64())
> except Exception as exc:
>     print(exc)
>     
> try:
>     f = pa.scalar(uint64_max // 2, type=pa.float64())
> except Exception as exc:
>     print(exc) {code}
> {code:java}
> >> PyLong is too large to fit int64
> >> Integer value 9223372036854775807 is outside of the range exactly 
> >> representable by a IEEE 754 double precision value
> {code}
> The CSV reader, on the other hand, doesn't infer UInt64 types (which is fine, 
> as documented here 
> [https://arrow.apache.org/docs/cpp/csv.html#data-types),|https://arrow.apache.org/docs/cpp/csv.html#data-types)]
>   but does coerce values to float which shouldn't be coercable according to 
> above examples:
> {code:java}
> import io
> csv = "int64,uint64\n0,0\n4294967295,18446744073709551615"
> tbl = pa.csv.read_csv(io.BytesIO(csv.encode("utf-8")))
> print(tbl.schema)
> print(tbl.column("uint64")[1] == uint64_scalar)
> print(tbl.column("uint64")[1].cast(pa.uint64())) {code}
> {code:java}
> int64: int64
> uint64: double
> False
> 0
> {code}



--
This message was sent by Atlassian Jira
(v8.20.7#820007)

Reply via email to