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Posted to commits@arrow.apache.org by ne...@apache.org on 2020/08/25 08:46:19 UTC
[arrow] branch rust-parquet-arrow-writer updated (710cf41 ->
8f83f22)
This is an automated email from the ASF dual-hosted git repository.
nevime pushed a change to branch rust-parquet-arrow-writer
in repository https://gitbox.apache.org/repos/asf/arrow.git.
discard 710cf41 ARROW-8423: [Rust] [Parquet] Serialize Arrow schema metadata
discard 00b2b3b ARROW-8289: [Rust] Parquet Arrow writer with nested support
add 0cced8f ARROW-9793: [Rust] [DataFusion] Fixed unit tests
add 41fa221 ARROW-9792: [Rust] [DataFusion] Aggregate expression functions should not return result
add 5abe72f ARROW-9788: [Rust] [DataFusion] Rename SelectionExec to FilterExec
add 2ebde1c ARROW-9800: [Rust][Parquet] Remove println! when writing column statistics
add 01f06cf ARROW-9778: [Rust] [DataFusion] Implement Expr.nullable() and make consistent between logical and physical plans
add 3cb0bd8 ARROW-9760: [Rust] [DataFusion] Added DataFrame::explain
add f0f02c6 ARROW-9784: [Rust][DataFusion] Make running TPCH benchmark repeatable
add 9e73081 ARROW-9733: [Rust] [DataFusion] Added support for COUNT/MIN/MAX on string columns
add 25b0b1b ARROW-9790: [Rust][Parquet] Fix PrimitiveArrayReader boundary conditions
add c90ad63 ARROW-9532: [Python][Doc] Use Python3_EXECUTABLE instead of PYTHON_EXECUTABLE for finding Python executable
add de8bfdd ARROW-9808: [Python] Update read_table doc string
add 60987f5 ARROW-8773: [Python] Preserve nullability of fields in schema.empty_table()
add cb7d1c1 ARROW-9388: [C++] Division kernels
add 0576da6 ARROW-9768: [Python] Check overflow in conversion of datetime objects to nanosecond timestamps
add 5d9ccb7 ARROW-6437: [R] Add AWS SDK to system dependencies for macOS and Windows
add 36d267b [MINOR] Fix typo and use more concise word in README.md
add 597a26e ARROW-9807: [R] News update/version bump post-1.0.1
add 5e7be07 ARROW-9678: [Rust] [DataFusion] Improve projection push down to remove unused columns
add f98de24 ARROW-9815 [Rust] [DataFusion] Fixed deadlock caused by accessing the scalar functions' registry.
add 085b44d ARROW-9490: [Python][C++] Bug in pa.array when input mixes int8 with float
add 0a698c0 ARROW-9831: [Rust][DataFusion] Fixed compilation error
add 2e8fcd4 ARROW-9762: [Rust] [DataFusion] ExecutionContext::sql now returns DataFrame
add 85f4324 ARROW-9819: [C++] Bump mimalloc to 1.6.4
add 735c870 ARROW-9809: [Rust][DataFusion] Fixed type coercion, supertypes and type checking.
add 657b3d3 ARROW-9833: [Rust] [DataFusion] TableProvider.scan now returns ExecutionPlan
add d1d85db ARROW-9464: [Rust] [DataFusion] Remove Partition trait
add 3fb1356 ARROW-9554: [Java] FixedWidthInPlaceVectorSorter sometimes produces wrong result
add 5e19200 ARROW-9840: [Python] fs documentation out of date with code (FileStats -> FileInfo)
add 55defbf ARROW-9405: [R] Switch to cpp11
add 0943924 ARROW-9835: [Rust][DataFusion] Removed FunctionMeta and FunctionType
add f0bda5f ARROW-9815: [Rust][DataFusion] Add a trait for looking up scalar functions by name
add 7b2307f ARROW-9841: [Rust] Update checked-in fbs files
new c424f5c ARROW-8289: [Rust] Parquet Arrow writer with nested support
new 8f83f22 ARROW-8423: [Rust] [Parquet] Serialize Arrow schema metadata
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Summary of changes:
README.md | 4 +-
ci/scripts/PKGBUILD | 9 +-
ci/scripts/r_windows_build.sh | 10 +-
cpp/src/arrow/compute/api_scalar.cc | 1 +
cpp/src/arrow/compute/api_scalar.h | 14 +
cpp/src/arrow/compute/kernels/codegen_internal.h | 3 +-
cpp/src/arrow/compute/kernels/scalar_arithmetic.cc | 59 +
.../compute/kernels/scalar_arithmetic_benchmark.cc | 2 +
.../compute/kernels/scalar_arithmetic_test.cc | 82 +
cpp/src/arrow/python/helpers.cc | 2 +
cpp/src/arrow/python/python_to_arrow.cc | 17 +-
cpp/src/arrow/util/int_util_internal.h | 1 +
cpp/thirdparty/versions.txt | 2 +-
dev/release/rat_exclude_files.txt | 2 +
.../homebrew-formulae/autobrew/apache-arrow.rb | 7 +-
dev/tasks/homebrew-formulae/travis.osx.r.yml | 5 +-
docs/source/cpp/compute.rst | 4 +
docs/source/developers/python.rst | 10 +-
docs/source/python/filesystems.rst | 22 +-
.../sort/FixedWidthInPlaceVectorSorter.java | 2 +
.../sort/FixedWidthOutOfPlaceVectorSorter.java | 12 +
.../sort/VariableWidthOutOfPlaceVectorSorter.java | 17 +
.../sort/TestFixedWidthInPlaceVectorSorter.java | 28 +
.../sort/TestFixedWidthOutOfPlaceVectorSorter.java | 36 +
.../algorithm/sort/TestFixedWidthSorting.java | 172 +
.../arrow/algorithm/sort/TestSortingUtil.java | 166 +
.../algorithm/sort/TestVariableWidthSorting.java | 165 +
.../arrow/vector/testing/RandomDataGenerator.java} | 34 +-
python/pyarrow/parquet.py | 2 +-
python/pyarrow/tests/test_convert_builtin.py | 30 +-
python/pyarrow/tests/test_schema.py | 17 +-
python/pyarrow/types.pxi | 12 +-
python/setup.py | 1 +
r/DESCRIPTION | 5 +-
r/NAMESPACE | 1 -
r/NEWS.md | 24 +-
r/R/arrow-package.R | 1 -
r/R/arrowExports.R | 36 +-
r/R/json.R | 13 +-
r/R/parquet.R | 3 +-
r/R/schema.R | 5 +-
r/R/struct.R | 2 +-
r/R/table.R | 6 +-
r/README.md | 8 +-
r/configure | 5 +-
r/configure.win | 13 +-
r/data-raw/codegen.R | 27 +-
r/inst/include/cpp11.hpp | 25 +
r/inst/include/cpp11/R.hpp | 49 +
r/inst/include/cpp11/altrep.hpp | 44 +
r/inst/include/cpp11/as.hpp | 339 ++
r/inst/include/cpp11/attribute_proxy.hpp | 50 +
r/inst/include/cpp11/data_frame.hpp | 102 +
r/inst/include/cpp11/declarations.hpp | 53 +
r/inst/include/cpp11/doubles.hpp | 136 +
r/inst/include/cpp11/environment.hpp | 75 +
r/inst/include/cpp11/external_pointer.hpp | 165 +
r/inst/include/cpp11/function.hpp | 78 +
r/inst/include/cpp11/integers.hpp | 142 +
r/inst/include/cpp11/list.hpp | 138 +
r/inst/include/cpp11/list_of.hpp | 53 +
r/inst/include/cpp11/logicals.hpp | 140 +
r/inst/include/cpp11/matrix.hpp | 111 +
r/inst/include/cpp11/named_arg.hpp | 51 +
r/inst/include/cpp11/protect.hpp | 286 ++
r/inst/include/cpp11/r_string.hpp | 92 +
r/inst/include/cpp11/r_vector.hpp | 986 ++++
r/inst/include/cpp11/raws.hpp | 148 +
r/inst/include/cpp11/sexp.hpp | 79 +
r/inst/include/cpp11/strings.hpp | 187 +
r/src/Makevars.in | 2 +-
r/src/array.cpp | 49 +-
r/src/array_from_vector.cpp | 171 +-
r/src/array_to_vector.cpp | 487 +-
r/src/arraydata.cpp | 7 +-
r/src/arrowExports.cpp | 5008 ++++++++++----------
r/src/arrow_cpp11.h | 312 ++
r/src/arrow_exports.h | 13 +-
r/src/arrow_rcpp.h | 186 -
r/src/arrow_types.h | 77 +-
r/src/buffer.cpp | 18 +-
r/src/chunkedarray.cpp | 13 +-
r/src/compression.cpp | 4 +-
r/src/compute.cpp | 42 +-
r/src/csv.cpp | 44 +-
r/src/dataset.cpp | 7 +-
r/src/datatype.cpp | 55 +-
r/src/feather.cpp | 14 +-
r/src/filesystem.cpp | 10 +-
r/src/io.cpp | 8 +-
r/src/json.cpp | 14 +-
r/src/memorypool.cpp | 2 +-
r/src/message.cpp | 2 -
r/src/parquet.cpp | 18 +-
r/src/py-to-r.cpp | 54 +-
r/src/recordbatch.cpp | 80 +-
r/src/recordbatchreader.cpp | 2 +-
r/src/recordbatchwriter.cpp | 2 -
r/src/schema.cpp | 39 +-
r/src/symbols.cpp | 54 +-
r/src/table.cpp | 107 +-
r/tests/testthat/helper-roundtrip.R | 43 +
r/tests/testthat/test-Array-errors.txt | 25 -
r/tests/testthat/test-Array.R | 74 +-
r/tests/testthat/test-RecordBatch.R | 22 +-
r/tests/testthat/test-Table.R | 18 +-
r/tests/testthat/test-chunked-array.R | 10 +-
r/tests/testthat/test-data-type.R | 4 +-
r/tests/testthat/test-python.R | 2 +
r/tools/autobrew | 7 +-
r/vignettes/install.Rmd | 4 +-
rust/arrow/src/ipc/gen/File.rs | 2 +-
rust/arrow/src/ipc/gen/Message.rs | 255 +
rust/arrow/src/ipc/gen/Schema.rs | 156 +-
rust/arrow/src/ipc/gen/SparseTensor.rs | 442 +-
rust/arrow/src/ipc/gen/Tensor.rs | 70 +-
rust/benchmarks/README.md | 26 +-
rust/benchmarks/src/bin/nyctaxi.rs | 2 +-
rust/benchmarks/src/bin/tpch.rs | 12 +-
rust/datafusion/README.md | 2 +-
rust/datafusion/benches/aggregate_query_sql.rs | 3 +-
rust/datafusion/examples/csv_sql.rs | 3 +-
rust/datafusion/examples/flight_server.rs | 2 +-
rust/datafusion/examples/parquet_sql.rs | 3 +-
rust/datafusion/src/bin/repl.rs | 3 +-
rust/datafusion/src/dataframe.rs | 20 +-
rust/datafusion/src/datasource/csv.rs | 29 +-
rust/datafusion/src/datasource/datasource.rs | 7 +-
rust/datafusion/src/datasource/memory.rs | 64 +-
rust/datafusion/src/datasource/parquet.rs | 129 +-
rust/datafusion/src/execution/context.rs | 212 +-
rust/datafusion/src/execution/dataframe_impl.rs | 61 +-
.../src/execution/physical_plan/common.rs | 11 +
rust/datafusion/src/execution/physical_plan/csv.rs | 115 +-
.../src/execution/physical_plan/datasource.rs | 59 -
.../src/execution/physical_plan/explain.rs | 26 +-
.../src/execution/physical_plan/expressions.rs | 573 ++-
.../physical_plan/{selection.rs => filter.rs} | 139 +-
.../src/execution/physical_plan/hash_aggregate.rs | 84 +-
.../src/execution/physical_plan/limit.rs | 89 +-
.../src/execution/physical_plan/memory.rs | 67 +-
.../src/execution/physical_plan/merge.rs | 95 +-
rust/datafusion/src/execution/physical_plan/mod.rs | 39 +-
.../src/execution/physical_plan/parquet.rs | 110 +-
.../src/execution/physical_plan/planner.rs | 256 +-
.../src/execution/physical_plan/projection.rs | 45 +-
.../datafusion/src/execution/physical_plan/sort.rs | 54 +-
rust/datafusion/src/execution/physical_plan/udf.rs | 14 +-
rust/datafusion/src/lib.rs | 4 +-
rust/datafusion/src/logicalplan.rs | 204 +-
rust/datafusion/src/optimizer/filter_push_down.rs | 140 +-
.../src/optimizer/projection_push_down.rs | 447 +-
rust/datafusion/src/optimizer/type_coercion.rs | 203 +-
rust/datafusion/src/optimizer/utils.rs | 125 +-
rust/datafusion/src/sql/planner.rs | 62 +-
rust/datafusion/src/test/mod.rs | 9 +-
rust/datafusion/tests/sql.rs | 64 +-
rust/parquet/src/arrow/array_reader.rs | 62 +-
rust/parquet/src/arrow/arrow_reader.rs | 39 +
159 files changed, 10909 insertions(+), 5467 deletions(-)
create mode 100644 java/algorithm/src/test/java/org/apache/arrow/algorithm/sort/TestFixedWidthSorting.java
create mode 100644 java/algorithm/src/test/java/org/apache/arrow/algorithm/sort/TestSortingUtil.java
create mode 100644 java/algorithm/src/test/java/org/apache/arrow/algorithm/sort/TestVariableWidthSorting.java
copy java/vector/src/{main/java/org/apache/arrow/vector/types/pojo/ExtensionTypeRegistry.java => test/java/org/apache/arrow/vector/testing/RandomDataGenerator.java} (54%)
create mode 100644 r/inst/include/cpp11.hpp
create mode 100644 r/inst/include/cpp11/R.hpp
create mode 100644 r/inst/include/cpp11/altrep.hpp
create mode 100644 r/inst/include/cpp11/as.hpp
create mode 100644 r/inst/include/cpp11/attribute_proxy.hpp
create mode 100644 r/inst/include/cpp11/data_frame.hpp
create mode 100644 r/inst/include/cpp11/declarations.hpp
create mode 100644 r/inst/include/cpp11/doubles.hpp
create mode 100644 r/inst/include/cpp11/environment.hpp
create mode 100644 r/inst/include/cpp11/external_pointer.hpp
create mode 100644 r/inst/include/cpp11/function.hpp
create mode 100644 r/inst/include/cpp11/integers.hpp
create mode 100644 r/inst/include/cpp11/list.hpp
create mode 100644 r/inst/include/cpp11/list_of.hpp
create mode 100644 r/inst/include/cpp11/logicals.hpp
create mode 100644 r/inst/include/cpp11/matrix.hpp
create mode 100644 r/inst/include/cpp11/named_arg.hpp
create mode 100644 r/inst/include/cpp11/protect.hpp
create mode 100644 r/inst/include/cpp11/r_string.hpp
create mode 100644 r/inst/include/cpp11/r_vector.hpp
create mode 100644 r/inst/include/cpp11/raws.hpp
create mode 100644 r/inst/include/cpp11/sexp.hpp
create mode 100644 r/inst/include/cpp11/strings.hpp
create mode 100644 r/src/arrow_cpp11.h
delete mode 100644 r/src/arrow_rcpp.h
create mode 100644 r/tests/testthat/helper-roundtrip.R
delete mode 100644 r/tests/testthat/test-Array-errors.txt
delete mode 100644 rust/datafusion/src/execution/physical_plan/datasource.rs
rename rust/datafusion/src/execution/physical_plan/{selection.rs => filter.rs} (53%)
[arrow] 01/02: ARROW-8289: [Rust] Parquet Arrow writer with nested
support
Posted by ne...@apache.org.
This is an automated email from the ASF dual-hosted git repository.
nevime pushed a commit to branch rust-parquet-arrow-writer
in repository https://gitbox.apache.org/repos/asf/arrow.git
commit c424f5ceb8260ef21330931bee4ae5554536a92d
Author: Neville Dipale <ne...@gmail.com>
AuthorDate: Thu Aug 13 18:47:34 2020 +0200
ARROW-8289: [Rust] Parquet Arrow writer with nested support
**Note**: I started making changes to #6785, and ended up deviating a lot, so I opted for making a new draft PR in case my approach is not suitable.
___
This is a draft to implement an arrow writer for parquet. It supports the following (no complete test coverage yet):
* writing primitives except for booleans and binary
* nested structs
* null values (via definition levels)
It does not yet support:
- Boolean arrays (have to be handled differently from numeric values)
- Binary arrays
- Dictionary arrays
- Union arrays (are they even possible?)
I have only added a test by creating a nested schema, which I tested on pyarrow.
```jupyter
# schema of test_complex.parquet
a: int32 not null
b: int32
c: struct<d: double, e: struct<f: float>> not null
child 0, d: double
child 1, e: struct<f: float>
child 0, f: float
```
This PR potentially addresses:
* https://issues.apache.org/jira/browse/ARROW-8289
* https://issues.apache.org/jira/browse/ARROW-8423
* https://issues.apache.org/jira/browse/ARROW-8424
* https://issues.apache.org/jira/browse/ARROW-8425
And I would like to propose either opening new JIRAs for the above incomplete items, or renaming the last 3 above.
___
**Help Needed**
I'm implementing the definition and repetition levels on first principle from an old Parquet blog post from the Twitter engineering blog. It's likely that I'm not getting some concepts correct, so I would appreciate help with:
* Checking if my logic is correct
* Guidance or suggestions on how to more efficiently extract levels from arrays
* Adding tests - I suspect we might need a lot of tests, so far we only test writing 1 batch, so I don't know how paging would work when writing a large enough file
I also don't know if the various encoding levels (dictionary, RLE, etc.) and compression levels are applied automagically, or if that'd be something we need to explicitly enable.
CC @sunchao @sadikovi @andygrove @paddyhoran
Might be of interest to @mcassels @maxburke
Closes #7319 from nevi-me/arrow-parquet-writer
Lead-authored-by: Neville Dipale <ne...@gmail.com>
Co-authored-by: Max Burke <ma...@urbanlogiq.com>
Co-authored-by: Andy Grove <an...@gmail.com>
Co-authored-by: Max Burke <ma...@gmail.com>
Signed-off-by: Neville Dipale <ne...@gmail.com>
---
rust/arrow/src/array/mod.rs | 2 +-
rust/parquet/src/arrow/arrow_writer.rs | 682 +++++++++++++++++++++++++++++++++
rust/parquet/src/arrow/mod.rs | 5 +-
rust/parquet/src/schema/types.rs | 6 +-
4 files changed, 692 insertions(+), 3 deletions(-)
diff --git a/rust/arrow/src/array/mod.rs b/rust/arrow/src/array/mod.rs
index 3abc142..68a2dd6 100644
--- a/rust/arrow/src/array/mod.rs
+++ b/rust/arrow/src/array/mod.rs
@@ -115,7 +115,7 @@ pub use self::array::StructArray;
pub use self::null::NullArray;
pub use self::union::UnionArray;
-pub(crate) use self::array::make_array;
+pub use self::array::make_array;
pub type BooleanArray = PrimitiveArray<BooleanType>;
pub type Int8Array = PrimitiveArray<Int8Type>;
diff --git a/rust/parquet/src/arrow/arrow_writer.rs b/rust/parquet/src/arrow/arrow_writer.rs
new file mode 100644
index 0000000..0c1c490
--- /dev/null
+++ b/rust/parquet/src/arrow/arrow_writer.rs
@@ -0,0 +1,682 @@
+// Licensed to the Apache Software Foundation (ASF) under one
+// or more contributor license agreements. See the NOTICE file
+// distributed with this work for additional information
+// regarding copyright ownership. The ASF licenses this file
+// to you under the Apache License, Version 2.0 (the
+// "License"); you may not use this file except in compliance
+// with the License. You may obtain a copy of the License at
+//
+// http://www.apache.org/licenses/LICENSE-2.0
+//
+// Unless required by applicable law or agreed to in writing,
+// software distributed under the License is distributed on an
+// "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY
+// KIND, either express or implied. See the License for the
+// specific language governing permissions and limitations
+// under the License.
+
+//! Contains writer which writes arrow data into parquet data.
+
+use std::rc::Rc;
+
+use arrow::array as arrow_array;
+use arrow::datatypes::{DataType as ArrowDataType, SchemaRef};
+use arrow::record_batch::RecordBatch;
+use arrow_array::Array;
+
+use crate::column::writer::ColumnWriter;
+use crate::errors::{ParquetError, Result};
+use crate::file::properties::WriterProperties;
+use crate::{
+ data_type::*,
+ file::writer::{FileWriter, ParquetWriter, RowGroupWriter, SerializedFileWriter},
+};
+
+/// Arrow writer
+///
+/// Writes Arrow `RecordBatch`es to a Parquet writer
+pub struct ArrowWriter<W: ParquetWriter> {
+ /// Underlying Parquet writer
+ writer: SerializedFileWriter<W>,
+ /// A copy of the Arrow schema.
+ ///
+ /// The schema is used to verify that each record batch written has the correct schema
+ arrow_schema: SchemaRef,
+}
+
+impl<W: 'static + ParquetWriter> ArrowWriter<W> {
+ /// Try to create a new Arrow writer
+ ///
+ /// The writer will fail if:
+ /// * a `SerializedFileWriter` cannot be created from the ParquetWriter
+ /// * the Arrow schema contains unsupported datatypes such as Unions
+ pub fn try_new(
+ writer: W,
+ arrow_schema: SchemaRef,
+ props: Option<Rc<WriterProperties>>,
+ ) -> Result<Self> {
+ let schema = crate::arrow::arrow_to_parquet_schema(&arrow_schema)?;
+ let props = match props {
+ Some(props) => props,
+ None => Rc::new(WriterProperties::builder().build()),
+ };
+ let file_writer = SerializedFileWriter::new(
+ writer.try_clone()?,
+ schema.root_schema_ptr(),
+ props,
+ )?;
+
+ Ok(Self {
+ writer: file_writer,
+ arrow_schema,
+ })
+ }
+
+ /// Write a RecordBatch to writer
+ ///
+ /// *NOTE:* The writer currently does not support all Arrow data types
+ pub fn write(&mut self, batch: &RecordBatch) -> Result<()> {
+ // validate batch schema against writer's supplied schema
+ if self.arrow_schema != batch.schema() {
+ return Err(ParquetError::ArrowError(
+ "Record batch schema does not match writer schema".to_string(),
+ ));
+ }
+ // compute the definition and repetition levels of the batch
+ let mut levels = vec![];
+ batch.columns().iter().for_each(|array| {
+ let mut array_levels =
+ get_levels(array, 0, &vec![1i16; batch.num_rows()][..], None);
+ levels.append(&mut array_levels);
+ });
+ // reverse levels so we can use Vec::pop(&mut self)
+ levels.reverse();
+
+ let mut row_group_writer = self.writer.next_row_group()?;
+
+ // write leaves
+ for column in batch.columns() {
+ write_leaves(&mut row_group_writer, column, &mut levels)?;
+ }
+
+ self.writer.close_row_group(row_group_writer)
+ }
+
+ /// Close and finalise the underlying Parquet writer
+ pub fn close(&mut self) -> Result<()> {
+ self.writer.close()
+ }
+}
+
+/// Convenience method to get the next ColumnWriter from the RowGroupWriter
+#[inline]
+#[allow(clippy::borrowed_box)]
+fn get_col_writer(
+ row_group_writer: &mut Box<dyn RowGroupWriter>,
+) -> Result<ColumnWriter> {
+ let col_writer = row_group_writer
+ .next_column()?
+ .expect("Unable to get column writer");
+ Ok(col_writer)
+}
+
+#[allow(clippy::borrowed_box)]
+fn write_leaves(
+ mut row_group_writer: &mut Box<dyn RowGroupWriter>,
+ array: &arrow_array::ArrayRef,
+ mut levels: &mut Vec<Levels>,
+) -> Result<()> {
+ match array.data_type() {
+ ArrowDataType::Int8
+ | ArrowDataType::Int16
+ | ArrowDataType::Int32
+ | ArrowDataType::Int64
+ | ArrowDataType::UInt8
+ | ArrowDataType::UInt16
+ | ArrowDataType::UInt32
+ | ArrowDataType::UInt64
+ | ArrowDataType::Float16
+ | ArrowDataType::Float32
+ | ArrowDataType::Float64
+ | ArrowDataType::Timestamp(_, _)
+ | ArrowDataType::Date32(_)
+ | ArrowDataType::Date64(_)
+ | ArrowDataType::Time32(_)
+ | ArrowDataType::Time64(_)
+ | ArrowDataType::Duration(_)
+ | ArrowDataType::Interval(_)
+ | ArrowDataType::LargeBinary
+ | ArrowDataType::Binary
+ | ArrowDataType::Utf8
+ | ArrowDataType::LargeUtf8 => {
+ let mut col_writer = get_col_writer(&mut row_group_writer)?;
+ write_leaf(
+ &mut col_writer,
+ array,
+ levels.pop().expect("Levels exhausted"),
+ )?;
+ row_group_writer.close_column(col_writer)?;
+ Ok(())
+ }
+ ArrowDataType::List(_) | ArrowDataType::LargeList(_) => {
+ // write the child list
+ let data = array.data();
+ let child_array = arrow_array::make_array(data.child_data()[0].clone());
+ write_leaves(&mut row_group_writer, &child_array, &mut levels)?;
+ Ok(())
+ }
+ ArrowDataType::Struct(_) => {
+ let struct_array: &arrow_array::StructArray = array
+ .as_any()
+ .downcast_ref::<arrow_array::StructArray>()
+ .expect("Unable to get struct array");
+ for field in struct_array.columns() {
+ write_leaves(&mut row_group_writer, field, &mut levels)?;
+ }
+ Ok(())
+ }
+ ArrowDataType::FixedSizeList(_, _)
+ | ArrowDataType::Null
+ | ArrowDataType::Boolean
+ | ArrowDataType::FixedSizeBinary(_)
+ | ArrowDataType::Union(_)
+ | ArrowDataType::Dictionary(_, _) => Err(ParquetError::NYI(
+ "Attempting to write an Arrow type that is not yet implemented".to_string(),
+ )),
+ }
+}
+
+fn write_leaf(
+ writer: &mut ColumnWriter,
+ column: &arrow_array::ArrayRef,
+ levels: Levels,
+) -> Result<i64> {
+ let written = match writer {
+ ColumnWriter::Int32ColumnWriter(ref mut typed) => {
+ let array = arrow::compute::cast(column, &ArrowDataType::Int32)?;
+ let array = array
+ .as_any()
+ .downcast_ref::<arrow_array::Int32Array>()
+ .expect("Unable to get int32 array");
+ typed.write_batch(
+ get_numeric_array_slice::<Int32Type, _>(&array).as_slice(),
+ Some(levels.definition.as_slice()),
+ levels.repetition.as_deref(),
+ )?
+ }
+ ColumnWriter::BoolColumnWriter(ref mut _typed) => {
+ unreachable!("Currently unreachable because data type not supported")
+ }
+ ColumnWriter::Int64ColumnWriter(ref mut typed) => {
+ let array = arrow_array::Int64Array::from(column.data());
+ typed.write_batch(
+ get_numeric_array_slice::<Int64Type, _>(&array).as_slice(),
+ Some(levels.definition.as_slice()),
+ levels.repetition.as_deref(),
+ )?
+ }
+ ColumnWriter::Int96ColumnWriter(ref mut _typed) => {
+ unreachable!("Currently unreachable because data type not supported")
+ }
+ ColumnWriter::FloatColumnWriter(ref mut typed) => {
+ let array = arrow_array::Float32Array::from(column.data());
+ typed.write_batch(
+ get_numeric_array_slice::<FloatType, _>(&array).as_slice(),
+ Some(levels.definition.as_slice()),
+ levels.repetition.as_deref(),
+ )?
+ }
+ ColumnWriter::DoubleColumnWriter(ref mut typed) => {
+ let array = arrow_array::Float64Array::from(column.data());
+ typed.write_batch(
+ get_numeric_array_slice::<DoubleType, _>(&array).as_slice(),
+ Some(levels.definition.as_slice()),
+ levels.repetition.as_deref(),
+ )?
+ }
+ ColumnWriter::ByteArrayColumnWriter(ref mut typed) => match column.data_type() {
+ ArrowDataType::Binary | ArrowDataType::Utf8 => {
+ let array = arrow_array::BinaryArray::from(column.data());
+ typed.write_batch(
+ get_binary_array(&array).as_slice(),
+ Some(levels.definition.as_slice()),
+ levels.repetition.as_deref(),
+ )?
+ }
+ ArrowDataType::LargeBinary | ArrowDataType::LargeUtf8 => {
+ let array = arrow_array::LargeBinaryArray::from(column.data());
+ typed.write_batch(
+ get_large_binary_array(&array).as_slice(),
+ Some(levels.definition.as_slice()),
+ levels.repetition.as_deref(),
+ )?
+ }
+ _ => unreachable!("Currently unreachable because data type not supported"),
+ },
+ ColumnWriter::FixedLenByteArrayColumnWriter(ref mut _typed) => {
+ unreachable!("Currently unreachable because data type not supported")
+ }
+ };
+ Ok(written as i64)
+}
+
+/// A struct that represents definition and repetition levels.
+/// Repetition levels are only populated if the parent or current leaf is repeated
+#[derive(Debug)]
+struct Levels {
+ definition: Vec<i16>,
+ repetition: Option<Vec<i16>>,
+}
+
+/// Compute nested levels of the Arrow array, recursing into lists and structs
+fn get_levels(
+ array: &arrow_array::ArrayRef,
+ level: i16,
+ parent_def_levels: &[i16],
+ parent_rep_levels: Option<&[i16]>,
+) -> Vec<Levels> {
+ match array.data_type() {
+ ArrowDataType::Null => unimplemented!(),
+ ArrowDataType::Boolean
+ | ArrowDataType::Int8
+ | ArrowDataType::Int16
+ | ArrowDataType::Int32
+ | ArrowDataType::Int64
+ | ArrowDataType::UInt8
+ | ArrowDataType::UInt16
+ | ArrowDataType::UInt32
+ | ArrowDataType::UInt64
+ | ArrowDataType::Float16
+ | ArrowDataType::Float32
+ | ArrowDataType::Float64
+ | ArrowDataType::Utf8
+ | ArrowDataType::LargeUtf8
+ | ArrowDataType::Timestamp(_, _)
+ | ArrowDataType::Date32(_)
+ | ArrowDataType::Date64(_)
+ | ArrowDataType::Time32(_)
+ | ArrowDataType::Time64(_)
+ | ArrowDataType::Duration(_)
+ | ArrowDataType::Interval(_)
+ | ArrowDataType::Binary
+ | ArrowDataType::LargeBinary => vec![Levels {
+ definition: get_primitive_def_levels(array, parent_def_levels),
+ repetition: None,
+ }],
+ ArrowDataType::FixedSizeBinary(_) => unimplemented!(),
+ ArrowDataType::List(_) | ArrowDataType::LargeList(_) => {
+ let array_data = array.data();
+ let child_data = array_data.child_data().get(0).unwrap();
+ // get offsets, accounting for large offsets if present
+ let offsets: Vec<i64> = {
+ if let ArrowDataType::LargeList(_) = array.data_type() {
+ unsafe { array_data.buffers()[0].typed_data::<i64>() }.to_vec()
+ } else {
+ let offsets = unsafe { array_data.buffers()[0].typed_data::<i32>() };
+ offsets.to_vec().into_iter().map(|v| v as i64).collect()
+ }
+ };
+ let child_array = arrow_array::make_array(child_data.clone());
+
+ let mut list_def_levels = Vec::with_capacity(child_array.len());
+ let mut list_rep_levels = Vec::with_capacity(child_array.len());
+ let rep_levels: Vec<i16> = parent_rep_levels
+ .map(|l| l.to_vec())
+ .unwrap_or_else(|| vec![0i16; parent_def_levels.len()]);
+ parent_def_levels
+ .iter()
+ .zip(rep_levels)
+ .zip(offsets.windows(2))
+ .for_each(|((parent_def_level, parent_rep_level), window)| {
+ if *parent_def_level == 0 {
+ // parent is null, list element must also be null
+ list_def_levels.push(0);
+ list_rep_levels.push(0);
+ } else {
+ // parent is not null, check if list is empty or null
+ let start = window[0];
+ let end = window[1];
+ let len = end - start;
+ if len == 0 {
+ list_def_levels.push(*parent_def_level - 1);
+ list_rep_levels.push(parent_rep_level);
+ } else {
+ list_def_levels.push(*parent_def_level);
+ list_rep_levels.push(parent_rep_level);
+ for _ in 1..len {
+ list_def_levels.push(*parent_def_level);
+ list_rep_levels.push(parent_rep_level + 1);
+ }
+ }
+ }
+ });
+
+ // if datatype is a primitive, we can construct levels of the child array
+ match child_array.data_type() {
+ ArrowDataType::Null => unimplemented!(),
+ ArrowDataType::Boolean => unimplemented!(),
+ ArrowDataType::Int8
+ | ArrowDataType::Int16
+ | ArrowDataType::Int32
+ | ArrowDataType::Int64
+ | ArrowDataType::UInt8
+ | ArrowDataType::UInt16
+ | ArrowDataType::UInt32
+ | ArrowDataType::UInt64
+ | ArrowDataType::Float16
+ | ArrowDataType::Float32
+ | ArrowDataType::Float64
+ | ArrowDataType::Timestamp(_, _)
+ | ArrowDataType::Date32(_)
+ | ArrowDataType::Date64(_)
+ | ArrowDataType::Time32(_)
+ | ArrowDataType::Time64(_)
+ | ArrowDataType::Duration(_)
+ | ArrowDataType::Interval(_) => {
+ let def_levels =
+ get_primitive_def_levels(&child_array, &list_def_levels[..]);
+ vec![Levels {
+ definition: def_levels,
+ repetition: Some(list_rep_levels),
+ }]
+ }
+ ArrowDataType::Binary
+ | ArrowDataType::Utf8
+ | ArrowDataType::LargeUtf8 => unimplemented!(),
+ ArrowDataType::FixedSizeBinary(_) => unimplemented!(),
+ ArrowDataType::LargeBinary => unimplemented!(),
+ ArrowDataType::List(_) | ArrowDataType::LargeList(_) => {
+ // nested list
+ unimplemented!()
+ }
+ ArrowDataType::FixedSizeList(_, _) => unimplemented!(),
+ ArrowDataType::Struct(_) => get_levels(
+ array,
+ level + 1, // indicates a nesting level of 2 (list + struct)
+ &list_def_levels[..],
+ Some(&list_rep_levels[..]),
+ ),
+ ArrowDataType::Union(_) => unimplemented!(),
+ ArrowDataType::Dictionary(_, _) => unimplemented!(),
+ }
+ }
+ ArrowDataType::FixedSizeList(_, _) => unimplemented!(),
+ ArrowDataType::Struct(_) => {
+ let struct_array: &arrow_array::StructArray = array
+ .as_any()
+ .downcast_ref::<arrow_array::StructArray>()
+ .expect("Unable to get struct array");
+ let mut struct_def_levels = Vec::with_capacity(struct_array.len());
+ for i in 0..array.len() {
+ struct_def_levels.push(level + struct_array.is_valid(i) as i16);
+ }
+ // trying to create levels for struct's fields
+ let mut struct_levels = vec![];
+ struct_array.columns().into_iter().for_each(|col| {
+ let mut levels =
+ get_levels(col, level + 1, &struct_def_levels[..], parent_rep_levels);
+ struct_levels.append(&mut levels);
+ });
+ struct_levels
+ }
+ ArrowDataType::Union(_) => unimplemented!(),
+ ArrowDataType::Dictionary(_, _) => unimplemented!(),
+ }
+}
+
+/// Get the definition levels of the numeric array, with level 0 being null and 1 being not null
+/// In the case where the array in question is a child of either a list or struct, the levels
+/// are incremented in accordance with the `level` parameter.
+/// Parent levels are either 0 or 1, and are used to higher (correct terminology?) leaves as null
+fn get_primitive_def_levels(
+ array: &arrow_array::ArrayRef,
+ parent_def_levels: &[i16],
+) -> Vec<i16> {
+ let mut array_index = 0;
+ let max_def_level = parent_def_levels.iter().max().unwrap();
+ let mut primitive_def_levels = vec![];
+ parent_def_levels.iter().for_each(|def_level| {
+ if def_level < max_def_level {
+ primitive_def_levels.push(*def_level);
+ } else {
+ primitive_def_levels.push(def_level - array.is_null(array_index) as i16);
+ array_index += 1;
+ }
+ });
+ primitive_def_levels
+}
+
+macro_rules! def_get_binary_array_fn {
+ ($name:ident, $ty:ty) => {
+ fn $name(array: &$ty) -> Vec<ByteArray> {
+ let mut values = Vec::with_capacity(array.len() - array.null_count());
+ for i in 0..array.len() {
+ if array.is_valid(i) {
+ let bytes = ByteArray::from(array.value(i).to_vec());
+ values.push(bytes);
+ }
+ }
+ values
+ }
+ };
+}
+
+def_get_binary_array_fn!(get_binary_array, arrow_array::BinaryArray);
+def_get_binary_array_fn!(get_large_binary_array, arrow_array::LargeBinaryArray);
+
+/// Get the underlying numeric array slice, skipping any null values.
+/// If there are no null values, it might be quicker to get the slice directly instead of
+/// calling this function.
+fn get_numeric_array_slice<T, A>(array: &arrow_array::PrimitiveArray<A>) -> Vec<T::T>
+where
+ T: DataType,
+ A: arrow::datatypes::ArrowNumericType,
+ T::T: From<A::Native>,
+{
+ let mut values = Vec::with_capacity(array.len() - array.null_count());
+ for i in 0..array.len() {
+ if array.is_valid(i) {
+ values.push(array.value(i).into())
+ }
+ }
+ values
+}
+
+#[cfg(test)]
+mod tests {
+ use super::*;
+
+ use std::io::Seek;
+ use std::sync::Arc;
+
+ use arrow::array::*;
+ use arrow::datatypes::ToByteSlice;
+ use arrow::datatypes::{DataType, Field, Schema};
+ use arrow::record_batch::{RecordBatch, RecordBatchReader};
+
+ use crate::arrow::{ArrowReader, ParquetFileArrowReader};
+ use crate::file::reader::SerializedFileReader;
+ use crate::util::test_common::get_temp_file;
+
+ #[test]
+ fn arrow_writer() {
+ // define schema
+ let schema = Schema::new(vec![
+ Field::new("a", DataType::Int32, false),
+ Field::new("b", DataType::Int32, true),
+ ]);
+
+ // create some data
+ let a = Int32Array::from(vec![1, 2, 3, 4, 5]);
+ let b = Int32Array::from(vec![Some(1), None, None, Some(4), Some(5)]);
+
+ // build a record batch
+ let batch = RecordBatch::try_new(
+ Arc::new(schema.clone()),
+ vec![Arc::new(a), Arc::new(b)],
+ )
+ .unwrap();
+
+ let file = get_temp_file("test_arrow_writer.parquet", &[]);
+ let mut writer = ArrowWriter::try_new(file, Arc::new(schema), None).unwrap();
+ writer.write(&batch).unwrap();
+ writer.close().unwrap();
+ }
+
+ #[test]
+ fn arrow_writer_list() {
+ // define schema
+ let schema = Schema::new(vec![Field::new(
+ "a",
+ DataType::List(Box::new(DataType::Int32)),
+ false,
+ )]);
+
+ // create some data
+ let a_values = Int32Array::from(vec![1, 2, 3, 4, 5, 6, 7, 8, 9, 10]);
+
+ // Construct a buffer for value offsets, for the nested array:
+ // [[false], [true, false], null, [true, false, true], [false, true, false, true]]
+ let a_value_offsets =
+ arrow::buffer::Buffer::from(&[0, 1, 3, 3, 6, 10].to_byte_slice());
+
+ // Construct a list array from the above two
+ let a_list_data = ArrayData::builder(DataType::List(Box::new(DataType::Int32)))
+ .len(5)
+ .add_buffer(a_value_offsets)
+ .add_child_data(a_values.data())
+ .build();
+ let a = ListArray::from(a_list_data);
+
+ // build a record batch
+ let batch =
+ RecordBatch::try_new(Arc::new(schema.clone()), vec![Arc::new(a)]).unwrap();
+
+ let file = get_temp_file("test_arrow_writer_list.parquet", &[]);
+ let mut writer = ArrowWriter::try_new(file, Arc::new(schema), None).unwrap();
+ writer.write(&batch).unwrap();
+ writer.close().unwrap();
+ }
+
+ #[test]
+ fn arrow_writer_binary() {
+ let string_field = Field::new("a", DataType::Utf8, false);
+ let binary_field = Field::new("b", DataType::Binary, false);
+ let schema = Schema::new(vec![string_field, binary_field]);
+
+ let raw_string_values = vec!["foo", "bar", "baz", "quux"];
+ let raw_binary_values = vec![
+ b"foo".to_vec(),
+ b"bar".to_vec(),
+ b"baz".to_vec(),
+ b"quux".to_vec(),
+ ];
+ let raw_binary_value_refs = raw_binary_values
+ .iter()
+ .map(|x| x.as_slice())
+ .collect::<Vec<_>>();
+
+ let string_values = StringArray::from(raw_string_values.clone());
+ let binary_values = BinaryArray::from(raw_binary_value_refs);
+ let batch = RecordBatch::try_new(
+ Arc::new(schema.clone()),
+ vec![Arc::new(string_values), Arc::new(binary_values)],
+ )
+ .unwrap();
+
+ let mut file = get_temp_file("test_arrow_writer.parquet", &[]);
+ let mut writer =
+ ArrowWriter::try_new(file.try_clone().unwrap(), Arc::new(schema), None)
+ .unwrap();
+ writer.write(&batch).unwrap();
+ writer.close().unwrap();
+
+ file.seek(std::io::SeekFrom::Start(0)).unwrap();
+ let file_reader = SerializedFileReader::new(file).unwrap();
+ let mut arrow_reader = ParquetFileArrowReader::new(Rc::new(file_reader));
+ let mut record_batch_reader = arrow_reader.get_record_reader(1024).unwrap();
+
+ let batch = record_batch_reader.next_batch().unwrap().unwrap();
+ let string_col = batch
+ .column(0)
+ .as_any()
+ .downcast_ref::<StringArray>()
+ .unwrap();
+ let binary_col = batch
+ .column(1)
+ .as_any()
+ .downcast_ref::<BinaryArray>()
+ .unwrap();
+
+ for i in 0..batch.num_rows() {
+ assert_eq!(string_col.value(i), raw_string_values[i]);
+ assert_eq!(binary_col.value(i), raw_binary_values[i].as_slice());
+ }
+ }
+
+ #[test]
+ fn arrow_writer_complex() {
+ // define schema
+ let struct_field_d = Field::new("d", DataType::Float64, true);
+ let struct_field_f = Field::new("f", DataType::Float32, true);
+ let struct_field_g =
+ Field::new("g", DataType::List(Box::new(DataType::Int16)), false);
+ let struct_field_e = Field::new(
+ "e",
+ DataType::Struct(vec![struct_field_f.clone(), struct_field_g.clone()]),
+ true,
+ );
+ let schema = Schema::new(vec![
+ Field::new("a", DataType::Int32, false),
+ Field::new("b", DataType::Int32, true),
+ Field::new(
+ "c",
+ DataType::Struct(vec![struct_field_d.clone(), struct_field_e.clone()]),
+ false,
+ ),
+ ]);
+
+ // create some data
+ let a = Int32Array::from(vec![1, 2, 3, 4, 5]);
+ let b = Int32Array::from(vec![Some(1), None, None, Some(4), Some(5)]);
+ let d = Float64Array::from(vec![None, None, None, Some(1.0), None]);
+ let f = Float32Array::from(vec![Some(0.0), None, Some(333.3), None, Some(5.25)]);
+
+ let g_value = Int16Array::from(vec![1, 2, 3, 4, 5, 6, 7, 8, 9, 10]);
+
+ // Construct a buffer for value offsets, for the nested array:
+ // [[1], [2, 3], null, [4, 5, 6], [7, 8, 9, 10]]
+ let g_value_offsets =
+ arrow::buffer::Buffer::from(&[0, 1, 3, 3, 6, 10].to_byte_slice());
+
+ // Construct a list array from the above two
+ let g_list_data = ArrayData::builder(struct_field_g.data_type().clone())
+ .len(5)
+ .add_buffer(g_value_offsets)
+ .add_child_data(g_value.data())
+ .build();
+ let g = ListArray::from(g_list_data);
+
+ let e = StructArray::from(vec![
+ (struct_field_f, Arc::new(f) as ArrayRef),
+ (struct_field_g, Arc::new(g) as ArrayRef),
+ ]);
+
+ let c = StructArray::from(vec![
+ (struct_field_d, Arc::new(d) as ArrayRef),
+ (struct_field_e, Arc::new(e) as ArrayRef),
+ ]);
+
+ // build a record batch
+ let batch = RecordBatch::try_new(
+ Arc::new(schema.clone()),
+ vec![Arc::new(a), Arc::new(b), Arc::new(c)],
+ )
+ .unwrap();
+
+ let file = get_temp_file("test_arrow_writer_complex.parquet", &[]);
+ let mut writer = ArrowWriter::try_new(file, Arc::new(schema), None).unwrap();
+ writer.write(&batch).unwrap();
+ writer.close().unwrap();
+ }
+}
diff --git a/rust/parquet/src/arrow/mod.rs b/rust/parquet/src/arrow/mod.rs
index 02f50fd..c8739c2 100644
--- a/rust/parquet/src/arrow/mod.rs
+++ b/rust/parquet/src/arrow/mod.rs
@@ -51,10 +51,13 @@
pub(in crate::arrow) mod array_reader;
pub mod arrow_reader;
+pub mod arrow_writer;
pub(in crate::arrow) mod converter;
pub(in crate::arrow) mod record_reader;
pub mod schema;
pub use self::arrow_reader::ArrowReader;
pub use self::arrow_reader::ParquetFileArrowReader;
-pub use self::schema::{parquet_to_arrow_schema, parquet_to_arrow_schema_by_columns};
+pub use self::schema::{
+ arrow_to_parquet_schema, parquet_to_arrow_schema, parquet_to_arrow_schema_by_columns,
+};
diff --git a/rust/parquet/src/schema/types.rs b/rust/parquet/src/schema/types.rs
index e1227c2..cd74824 100644
--- a/rust/parquet/src/schema/types.rs
+++ b/rust/parquet/src/schema/types.rs
@@ -788,7 +788,7 @@ impl SchemaDescriptor {
result.clone()
}
- fn column_root_of(&self, i: usize) -> &Rc<Type> {
+ fn column_root_of(&self, i: usize) -> &TypePtr {
assert!(
i < self.leaves.len(),
"Index out of bound: {} not in [0, {})",
@@ -810,6 +810,10 @@ impl SchemaDescriptor {
self.schema.as_ref()
}
+ pub fn root_schema_ptr(&self) -> TypePtr {
+ self.schema.clone()
+ }
+
/// Returns schema name.
pub fn name(&self) -> &str {
self.schema.name()
[arrow] 02/02: ARROW-8423: [Rust] [Parquet] Serialize Arrow schema
metadata
Posted by ne...@apache.org.
This is an automated email from the ASF dual-hosted git repository.
nevime pushed a commit to branch rust-parquet-arrow-writer
in repository https://gitbox.apache.org/repos/asf/arrow.git
commit 8f83f228af96f6b1405d61a40928967dd4bcdb56
Author: Neville Dipale <ne...@gmail.com>
AuthorDate: Tue Aug 18 18:39:37 2020 +0200
ARROW-8423: [Rust] [Parquet] Serialize Arrow schema metadata
This will allow preserving Arrow-specific metadata when writing or reading Parquet files created from C++ or Rust.
If the schema can't be deserialised, the normal Parquet > Arrow schema conversion is performed.
Closes #7917 from nevi-me/ARROW-8243
Authored-by: Neville Dipale <ne...@gmail.com>
Signed-off-by: Neville Dipale <ne...@gmail.com>
---
rust/parquet/Cargo.toml | 3 +-
rust/parquet/src/arrow/arrow_writer.rs | 27 ++-
rust/parquet/src/arrow/mod.rs | 4 +
rust/parquet/src/arrow/schema.rs | 322 +++++++++++++++++++++++++++------
rust/parquet/src/file/properties.rs | 6 +-
5 files changed, 297 insertions(+), 65 deletions(-)
diff --git a/rust/parquet/Cargo.toml b/rust/parquet/Cargo.toml
index 7fc5b8a..bec0c93 100644
--- a/rust/parquet/Cargo.toml
+++ b/rust/parquet/Cargo.toml
@@ -40,6 +40,7 @@ zstd = { version = "0.5", optional = true }
chrono = "0.4"
num-bigint = "0.3"
arrow = { path = "../arrow", version = "2.0.0-SNAPSHOT", optional = true }
+base64 = { version = "*", optional = true }
serde_json = { version = "1.0", features = ["preserve_order"] }
[dev-dependencies]
@@ -52,4 +53,4 @@ zstd = "0.5"
arrow = { path = "../arrow", version = "2.0.0-SNAPSHOT" }
[features]
-default = ["arrow", "snap", "brotli", "flate2", "lz4", "zstd"]
+default = ["arrow", "snap", "brotli", "flate2", "lz4", "zstd", "base64"]
diff --git a/rust/parquet/src/arrow/arrow_writer.rs b/rust/parquet/src/arrow/arrow_writer.rs
index 0c1c490..1ca8d50 100644
--- a/rust/parquet/src/arrow/arrow_writer.rs
+++ b/rust/parquet/src/arrow/arrow_writer.rs
@@ -24,6 +24,7 @@ use arrow::datatypes::{DataType as ArrowDataType, SchemaRef};
use arrow::record_batch::RecordBatch;
use arrow_array::Array;
+use super::schema::add_encoded_arrow_schema_to_metadata;
use crate::column::writer::ColumnWriter;
use crate::errors::{ParquetError, Result};
use crate::file::properties::WriterProperties;
@@ -53,17 +54,17 @@ impl<W: 'static + ParquetWriter> ArrowWriter<W> {
pub fn try_new(
writer: W,
arrow_schema: SchemaRef,
- props: Option<Rc<WriterProperties>>,
+ props: Option<WriterProperties>,
) -> Result<Self> {
let schema = crate::arrow::arrow_to_parquet_schema(&arrow_schema)?;
- let props = match props {
- Some(props) => props,
- None => Rc::new(WriterProperties::builder().build()),
- };
+ // add serialized arrow schema
+ let mut props = props.unwrap_or_else(|| WriterProperties::builder().build());
+ add_encoded_arrow_schema_to_metadata(&arrow_schema, &mut props);
+
let file_writer = SerializedFileWriter::new(
writer.try_clone()?,
schema.root_schema_ptr(),
- props,
+ Rc::new(props),
)?;
Ok(Self {
@@ -495,7 +496,7 @@ mod tests {
use arrow::record_batch::{RecordBatch, RecordBatchReader};
use crate::arrow::{ArrowReader, ParquetFileArrowReader};
- use crate::file::reader::SerializedFileReader;
+ use crate::file::{metadata::KeyValue, reader::SerializedFileReader};
use crate::util::test_common::get_temp_file;
#[test]
@@ -584,7 +585,7 @@ mod tests {
)
.unwrap();
- let mut file = get_temp_file("test_arrow_writer.parquet", &[]);
+ let mut file = get_temp_file("test_arrow_writer_binary.parquet", &[]);
let mut writer =
ArrowWriter::try_new(file.try_clone().unwrap(), Arc::new(schema), None)
.unwrap();
@@ -674,8 +675,16 @@ mod tests {
)
.unwrap();
+ let props = WriterProperties::builder()
+ .set_key_value_metadata(Some(vec![KeyValue {
+ key: "test_key".to_string(),
+ value: Some("test_value".to_string()),
+ }]))
+ .build();
+
let file = get_temp_file("test_arrow_writer_complex.parquet", &[]);
- let mut writer = ArrowWriter::try_new(file, Arc::new(schema), None).unwrap();
+ let mut writer =
+ ArrowWriter::try_new(file, Arc::new(schema), Some(props)).unwrap();
writer.write(&batch).unwrap();
writer.close().unwrap();
}
diff --git a/rust/parquet/src/arrow/mod.rs b/rust/parquet/src/arrow/mod.rs
index c8739c2..2bdb07c 100644
--- a/rust/parquet/src/arrow/mod.rs
+++ b/rust/parquet/src/arrow/mod.rs
@@ -58,6 +58,10 @@ pub mod schema;
pub use self::arrow_reader::ArrowReader;
pub use self::arrow_reader::ParquetFileArrowReader;
+pub use self::arrow_writer::ArrowWriter;
pub use self::schema::{
arrow_to_parquet_schema, parquet_to_arrow_schema, parquet_to_arrow_schema_by_columns,
};
+
+/// Schema metadata key used to store serialized Arrow IPC schema
+pub const ARROW_SCHEMA_META_KEY: &str = "ARROW:schema";
diff --git a/rust/parquet/src/arrow/schema.rs b/rust/parquet/src/arrow/schema.rs
index c31f9db..d4cfe1f 100644
--- a/rust/parquet/src/arrow/schema.rs
+++ b/rust/parquet/src/arrow/schema.rs
@@ -26,24 +26,33 @@
use std::collections::{HashMap, HashSet};
use std::rc::Rc;
+use arrow::datatypes::{DataType, DateUnit, Field, Schema, TimeUnit};
+
use crate::basic::{LogicalType, Repetition, Type as PhysicalType};
use crate::errors::{ParquetError::ArrowError, Result};
-use crate::file::metadata::KeyValue;
+use crate::file::{metadata::KeyValue, properties::WriterProperties};
use crate::schema::types::{ColumnDescriptor, SchemaDescriptor, Type, TypePtr};
-use arrow::datatypes::TimeUnit;
-use arrow::datatypes::{DataType, DateUnit, Field, Schema};
-
-/// Convert parquet schema to arrow schema including optional metadata.
+/// Convert Parquet schema to Arrow schema including optional metadata.
+/// Attempts to decode any existing Arrow shcema metadata, falling back
+/// to converting the Parquet schema column-wise
pub fn parquet_to_arrow_schema(
parquet_schema: &SchemaDescriptor,
- metadata: &Option<Vec<KeyValue>>,
+ key_value_metadata: &Option<Vec<KeyValue>>,
) -> Result<Schema> {
- parquet_to_arrow_schema_by_columns(
- parquet_schema,
- 0..parquet_schema.columns().len(),
- metadata,
- )
+ let mut metadata = parse_key_value_metadata(key_value_metadata).unwrap_or_default();
+ let arrow_schema_metadata = metadata
+ .remove(super::ARROW_SCHEMA_META_KEY)
+ .map(|encoded| get_arrow_schema_from_metadata(&encoded));
+
+ match arrow_schema_metadata {
+ Some(Some(schema)) => Ok(schema),
+ _ => parquet_to_arrow_schema_by_columns(
+ parquet_schema,
+ 0..parquet_schema.columns().len(),
+ key_value_metadata,
+ ),
+ }
}
/// Convert parquet schema to arrow schema including optional metadata, only preserving some leaf columns.
@@ -71,9 +80,7 @@ where
}
}
- let metadata = parse_key_value_metadata(key_value_metadata)
- .map(|m| m.clone())
- .unwrap_or(HashMap::default());
+ let metadata = parse_key_value_metadata(key_value_metadata).unwrap_or_default();
base_nodes
.into_iter()
@@ -83,12 +90,86 @@ where
.map(|fields| Schema::new_with_metadata(fields, metadata))
}
+/// Try to convert Arrow schema metadata into a schema
+fn get_arrow_schema_from_metadata(encoded_meta: &str) -> Option<Schema> {
+ let decoded = base64::decode(encoded_meta);
+ match decoded {
+ Ok(bytes) => {
+ let slice = if bytes[0..4] == [255u8; 4] {
+ &bytes[8..]
+ } else {
+ bytes.as_slice()
+ };
+ let message = arrow::ipc::get_root_as_message(slice);
+ message
+ .header_as_schema()
+ .map(arrow::ipc::convert::fb_to_schema)
+ }
+ Err(err) => {
+ // The C++ implementation returns an error if the schema can't be parsed.
+ // To prevent this, we explicitly log this, then compute the schema without the metadata
+ eprintln!(
+ "Unable to decode the encoded schema stored in {}, {:?}",
+ super::ARROW_SCHEMA_META_KEY,
+ err
+ );
+ None
+ }
+ }
+}
+
+/// Encodes the Arrow schema into the IPC format, and base64 encodes it
+fn encode_arrow_schema(schema: &Schema) -> String {
+ let mut serialized_schema = arrow::ipc::writer::schema_to_bytes(&schema);
+
+ // manually prepending the length to the schema as arrow uses the legacy IPC format
+ // TODO: change after addressing ARROW-9777
+ let schema_len = serialized_schema.len();
+ let mut len_prefix_schema = Vec::with_capacity(schema_len + 8);
+ len_prefix_schema.append(&mut vec![255u8, 255, 255, 255]);
+ len_prefix_schema.append((schema_len as u32).to_le_bytes().to_vec().as_mut());
+ len_prefix_schema.append(&mut serialized_schema);
+
+ base64::encode(&len_prefix_schema)
+}
+
+/// Mutates writer metadata by storing the encoded Arrow schema.
+/// If there is an existing Arrow schema metadata, it is replaced.
+pub(crate) fn add_encoded_arrow_schema_to_metadata(
+ schema: &Schema,
+ props: &mut WriterProperties,
+) {
+ let encoded = encode_arrow_schema(schema);
+
+ let schema_kv = KeyValue {
+ key: super::ARROW_SCHEMA_META_KEY.to_string(),
+ value: Some(encoded),
+ };
+
+ let mut meta = props.key_value_metadata.clone().unwrap_or_default();
+ // check if ARROW:schema exists, and overwrite it
+ let schema_meta = meta
+ .iter()
+ .enumerate()
+ .find(|(_, kv)| kv.key.as_str() == super::ARROW_SCHEMA_META_KEY);
+ match schema_meta {
+ Some((i, _)) => {
+ meta.remove(i);
+ meta.push(schema_kv);
+ }
+ None => {
+ meta.push(schema_kv);
+ }
+ }
+ props.key_value_metadata = Some(meta);
+}
+
/// Convert arrow schema to parquet schema
pub fn arrow_to_parquet_schema(schema: &Schema) -> Result<SchemaDescriptor> {
let fields: Result<Vec<TypePtr>> = schema
.fields()
.iter()
- .map(|field| arrow_to_parquet_type(field).map(|f| Rc::new(f)))
+ .map(|field| arrow_to_parquet_type(field).map(Rc::new))
.collect();
let group = Type::group_type_builder("arrow_schema")
.with_fields(&mut fields?)
@@ -217,45 +298,51 @@ fn arrow_to_parquet_type(field: &Field) -> Result<Type> {
Type::primitive_type_builder(name, PhysicalType::FIXED_LEN_BYTE_ARRAY)
.with_logical_type(LogicalType::INTERVAL)
.with_repetition(repetition)
- .with_length(3)
+ .with_length(12)
+ .build()
+ }
+ DataType::Binary | DataType::LargeBinary => {
+ Type::primitive_type_builder(name, PhysicalType::BYTE_ARRAY)
+ .with_repetition(repetition)
.build()
}
- DataType::Binary => Type::primitive_type_builder(name, PhysicalType::BYTE_ARRAY)
- .with_repetition(repetition)
- .build(),
DataType::FixedSizeBinary(length) => {
Type::primitive_type_builder(name, PhysicalType::FIXED_LEN_BYTE_ARRAY)
.with_repetition(repetition)
.with_length(*length)
.build()
}
- DataType::Utf8 => Type::primitive_type_builder(name, PhysicalType::BYTE_ARRAY)
- .with_logical_type(LogicalType::UTF8)
- .with_repetition(repetition)
- .build(),
- DataType::List(dtype) | DataType::FixedSizeList(dtype, _) => {
- Type::group_type_builder(name)
- .with_fields(&mut vec![Rc::new(
- Type::group_type_builder("list")
- .with_fields(&mut vec![Rc::new({
- let list_field = Field::new(
- "element",
- *dtype.clone(),
- field.is_nullable(),
- );
- arrow_to_parquet_type(&list_field)?
- })])
- .with_repetition(Repetition::REPEATED)
- .build()?,
- )])
- .with_logical_type(LogicalType::LIST)
- .with_repetition(Repetition::REQUIRED)
+ DataType::Utf8 | DataType::LargeUtf8 => {
+ Type::primitive_type_builder(name, PhysicalType::BYTE_ARRAY)
+ .with_logical_type(LogicalType::UTF8)
+ .with_repetition(repetition)
.build()
}
+ DataType::List(dtype)
+ | DataType::FixedSizeList(dtype, _)
+ | DataType::LargeList(dtype) => Type::group_type_builder(name)
+ .with_fields(&mut vec![Rc::new(
+ Type::group_type_builder("list")
+ .with_fields(&mut vec![Rc::new({
+ let list_field =
+ Field::new("element", *dtype.clone(), field.is_nullable());
+ arrow_to_parquet_type(&list_field)?
+ })])
+ .with_repetition(Repetition::REPEATED)
+ .build()?,
+ )])
+ .with_logical_type(LogicalType::LIST)
+ .with_repetition(Repetition::REQUIRED)
+ .build(),
DataType::Struct(fields) => {
+ if fields.is_empty() {
+ return Err(ArrowError(
+ "Parquet does not support writing empty structs".to_string(),
+ ));
+ }
// recursively convert children to types/nodes
let fields: Result<Vec<TypePtr>> = fields
- .into_iter()
+ .iter()
.map(|f| arrow_to_parquet_type(f).map(Rc::new))
.collect();
Type::group_type_builder(name)
@@ -269,9 +356,6 @@ fn arrow_to_parquet_type(field: &Field) -> Result<Type> {
let dict_field = Field::new(name, *value.clone(), field.is_nullable());
arrow_to_parquet_type(&dict_field)
}
- DataType::LargeUtf8 | DataType::LargeBinary | DataType::LargeList(_) => {
- Err(ArrowError("Large arrays not supported".to_string()))
- }
}
}
/// This struct is used to group methods and data structures used to convert parquet
@@ -431,9 +515,9 @@ impl ParquetTypeConverter<'_> {
ref type_length, ..
} => *type_length,
_ => {
- return Err(ArrowError(format!(
- "Expected a physical type, not a group type"
- )))
+ return Err(ArrowError(
+ "Expected a physical type, not a group type".to_string(),
+ ))
}
};
@@ -515,7 +599,7 @@ impl ParquetTypeConverter<'_> {
let item_type = match list_item.as_ref() {
Type::PrimitiveType { .. } => {
if item_converter.is_repeated() {
- item_converter.to_primitive_type_inner().map(|dt| Some(dt))
+ item_converter.to_primitive_type_inner().map(Some)
} else {
Err(ArrowError(
"Primitive element type of list must be repeated."
@@ -557,12 +641,16 @@ impl ParquetTypeConverter<'_> {
mod tests {
use super::*;
- use std::collections::HashMap;
+ use std::{collections::HashMap, convert::TryFrom, sync::Arc};
- use arrow::datatypes::{DataType, DateUnit, Field, TimeUnit};
+ use arrow::datatypes::{DataType, DateUnit, Field, IntervalUnit, TimeUnit};
- use crate::file::metadata::KeyValue;
- use crate::schema::{parser::parse_message_type, types::SchemaDescriptor};
+ use crate::file::{metadata::KeyValue, reader::SerializedFileReader};
+ use crate::{
+ arrow::{ArrowReader, ArrowWriter, ParquetFileArrowReader},
+ schema::{parser::parse_message_type, types::SchemaDescriptor},
+ util::test_common::get_temp_file,
+ };
#[test]
fn test_flat_primitives() {
@@ -1197,6 +1285,17 @@ mod tests {
}
#[test]
+ #[should_panic(expected = "Parquet does not support writing empty structs")]
+ fn test_empty_struct_field() {
+ let arrow_fields = vec![Field::new("struct", DataType::Struct(vec![]), false)];
+ let arrow_schema = Schema::new(arrow_fields);
+ let converted_arrow_schema = arrow_to_parquet_schema(&arrow_schema);
+
+ assert!(converted_arrow_schema.is_err());
+ converted_arrow_schema.unwrap();
+ }
+
+ #[test]
fn test_metadata() {
let message_type = "
message test_schema {
@@ -1218,4 +1317,123 @@ mod tests {
assert_eq!(converted_arrow_schema.metadata(), &expected_metadata);
}
+
+ #[test]
+ fn test_arrow_schema_roundtrip() -> Result<()> {
+ // This tests the roundtrip of an Arrow schema
+ // Fields that are commented out fail roundtrip tests or are unsupported by the writer
+ let metadata: HashMap<String, String> =
+ [("Key".to_string(), "Value".to_string())]
+ .iter()
+ .cloned()
+ .collect();
+
+ let schema = Schema::new_with_metadata(
+ vec![
+ Field::new("c1", DataType::Utf8, false),
+ Field::new("c2", DataType::Binary, false),
+ Field::new("c3", DataType::FixedSizeBinary(3), false),
+ Field::new("c4", DataType::Boolean, false),
+ Field::new("c5", DataType::Date32(DateUnit::Day), false),
+ Field::new("c6", DataType::Date64(DateUnit::Millisecond), false),
+ Field::new("c7", DataType::Time32(TimeUnit::Second), false),
+ Field::new("c8", DataType::Time32(TimeUnit::Millisecond), false),
+ Field::new("c13", DataType::Time64(TimeUnit::Microsecond), false),
+ Field::new("c14", DataType::Time64(TimeUnit::Nanosecond), false),
+ Field::new("c15", DataType::Timestamp(TimeUnit::Second, None), false),
+ Field::new(
+ "c16",
+ DataType::Timestamp(
+ TimeUnit::Millisecond,
+ Some(Arc::new("UTC".to_string())),
+ ),
+ false,
+ ),
+ Field::new(
+ "c17",
+ DataType::Timestamp(
+ TimeUnit::Microsecond,
+ Some(Arc::new("Africa/Johannesburg".to_string())),
+ ),
+ false,
+ ),
+ Field::new(
+ "c18",
+ DataType::Timestamp(TimeUnit::Nanosecond, None),
+ false,
+ ),
+ Field::new("c19", DataType::Interval(IntervalUnit::DayTime), false),
+ Field::new("c20", DataType::Interval(IntervalUnit::YearMonth), false),
+ Field::new("c21", DataType::List(Box::new(DataType::Boolean)), false),
+ Field::new(
+ "c22",
+ DataType::FixedSizeList(Box::new(DataType::Boolean), 5),
+ false,
+ ),
+ Field::new(
+ "c23",
+ DataType::List(Box::new(DataType::List(Box::new(DataType::Struct(
+ vec![
+ Field::new("a", DataType::Int16, true),
+ Field::new("b", DataType::Float64, false),
+ ],
+ ))))),
+ true,
+ ),
+ Field::new(
+ "c24",
+ DataType::Struct(vec![
+ Field::new("a", DataType::Utf8, false),
+ Field::new("b", DataType::UInt16, false),
+ ]),
+ false,
+ ),
+ Field::new("c25", DataType::Interval(IntervalUnit::YearMonth), true),
+ Field::new("c26", DataType::Interval(IntervalUnit::DayTime), true),
+ // Field::new("c27", DataType::Duration(TimeUnit::Second), false),
+ // Field::new("c28", DataType::Duration(TimeUnit::Millisecond), false),
+ // Field::new("c29", DataType::Duration(TimeUnit::Microsecond), false),
+ // Field::new("c30", DataType::Duration(TimeUnit::Nanosecond), false),
+ // Field::new_dict(
+ // "c31",
+ // DataType::Dictionary(
+ // Box::new(DataType::Int32),
+ // Box::new(DataType::Utf8),
+ // ),
+ // true,
+ // 123,
+ // true,
+ // ),
+ Field::new("c32", DataType::LargeBinary, true),
+ Field::new("c33", DataType::LargeUtf8, true),
+ Field::new(
+ "c34",
+ DataType::LargeList(Box::new(DataType::LargeList(Box::new(
+ DataType::Struct(vec![
+ Field::new("a", DataType::Int16, true),
+ Field::new("b", DataType::Float64, true),
+ ]),
+ )))),
+ true,
+ ),
+ ],
+ metadata,
+ );
+
+ // write to an empty parquet file so that schema is serialized
+ let file = get_temp_file("test_arrow_schema_roundtrip.parquet", &[]);
+ let mut writer = ArrowWriter::try_new(
+ file.try_clone().unwrap(),
+ Arc::new(schema.clone()),
+ None,
+ )?;
+ writer.close()?;
+
+ // read file back
+ let parquet_reader = SerializedFileReader::try_from(file)?;
+ let mut arrow_reader = ParquetFileArrowReader::new(Rc::new(parquet_reader));
+ let read_schema = arrow_reader.get_schema()?;
+ assert_eq!(schema, read_schema);
+ Ok(())
+ }
}
diff --git a/rust/parquet/src/file/properties.rs b/rust/parquet/src/file/properties.rs
index 81d739b..5eff262 100644
--- a/rust/parquet/src/file/properties.rs
+++ b/rust/parquet/src/file/properties.rs
@@ -89,8 +89,8 @@ pub type WriterPropertiesPtr = Rc<WriterProperties>;
/// Writer properties.
///
-/// It is created as an immutable data structure, use [`WriterPropertiesBuilder`] to
-/// assemble the properties.
+/// All properties except the key-value metadata are immutable,
+/// use [`WriterPropertiesBuilder`] to assemble these properties.
#[derive(Debug, Clone)]
pub struct WriterProperties {
data_pagesize_limit: usize,
@@ -99,7 +99,7 @@ pub struct WriterProperties {
max_row_group_size: usize,
writer_version: WriterVersion,
created_by: String,
- key_value_metadata: Option<Vec<KeyValue>>,
+ pub(crate) key_value_metadata: Option<Vec<KeyValue>>,
default_column_properties: ColumnProperties,
column_properties: HashMap<ColumnPath, ColumnProperties>,
}