sfc-gh-saya commented on code in PR #461:
URL: https://github.com/apache/parquet-format/pull/461#discussion_r1878991799
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VariantShredding.md:
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@@ -25,276 +25,299 @@
The Variant type is designed to store and process semi-structured data
efficiently, even with heterogeneous values.
Query engines encode each Variant value in a self-describing format, and store
it as a group containing `value` and `metadata` binary fields in Parquet.
Since data is often partially homogenous, it can be beneficial to extract
certain fields into separate Parquet columns to further improve performance.
-We refer to this process as **shredding**.
-Each Parquet file remains fully self-describing, with no additional metadata
required to read or fully reconstruct the Variant data from the file.
-Combining shredding with a binary residual provides the flexibility to
represent complex, evolving data with an unbounded number of unique fields
while limiting the size of file schemas, and retaining the performance benefits
of a columnar format.
+This process is **shredding**.
-This document focuses on the shredding semantics, Parquet representation,
implications for readers and writers, as well as the Variant reconstruction.
-For now, it does not discuss which fields to shred, user-facing API changes,
or any engine-specific considerations like how to use shredded columns.
-The approach builds upon the [Variant Binary Encoding](VariantEncoding.md),
and leverages the existing Parquet specification.
+Shredding enables the use of of Parquet's columnar representation for more
compact data encoding, the use of column statistics for data skipping, and
partial projections from Parquet's columnar layout.
-At a high level, we replace the `value` field of the Variant Parquet group
with one or more fields called `object`, `array`, `typed_value`, and
`variant_value`.
-These represent a fixed schema suitable for constructing the full Variant
value for each row.
+For example, the query `SELECT variant_get(event, '$.event_ts', 'timestamp')
FROM tbl` only needs to load field `event_ts`, and shredding can enable
columnar projection that ignores the rest of the `event` Variant.
+Similarly, for the query `SELECT * FROM tbl WHERE variant_get(event,
'$.event_type', 'string') = 'signup'`, the `event_type` shredded column
metadata can be used for skipping and to lazily load the rest of the Variant.
-Shredding allows a query engine to reap the full benefits of Parquet's
columnar representation, such as more compact data encoding, min/max statistics
for data skipping, and I/O and CPU savings from pruning unnecessary fields not
accessed by a query (including the non-shredded Variant binary data).
-Without shredding, any query that accesses a Variant column must fetch all
bytes of the full binary buffer.
-With shredding, we can get nearly equivalent performance as in a relational
(scalar) data model.
+## Variant Metadata
-For example, `select variant_get(variant_col, ‘$.field1.inner_field2’,
‘string’) from tbl` only needs to access `inner_field2`, and the file scan
could avoid fetching the rest of the Variant value if this field was shredded
into a separate column in the Parquet schema.
-Similarly, for the query `select * from tbl where variant_get(variant_col,
‘$.id’, ‘integer’) = 123`, the scan could first decode the shredded `id`
column, and only fetch/decode the full Variant value for rows that pass the
filter.
+Variant metadata is stored in the top-level Variant group in a binary
`metadata` column regardless of whether the Variant value is shredded.
-# Parquet Example
+All `value` columns within the Variant must use the same `metadata`.
+All field names of a Variant, whether shredded or not, must be present in the
metadata.
-Consider the following Parquet schema together with how Variant values might
be mapped to it.
-Notice that we represent each shredded field in `object` as a group of two
fields, `typed_value` and `variant_value`.
-We extract all homogenous data items of a certain path into `typed_value`, and
set aside incompatible data items in `variant_value`.
-Intuitively, incompatibilities within the same path may occur because we store
the shredding schema per Parquet file, and each file can contain several row
groups.
-Selecting a type for each field that is acceptable for all rows would be
impractical because it would require buffering the contents of an entire file
before writing.
+## Value Shredding
-Typically, the expectation is that `variant_value` exists at every level as an
option, along with one of `object`, `array` or `typed_value`.
-If the actual Variant value contains a type that does not match the provided
schema, it is stored in `variant_value`.
-An `variant_value` may also be populated if an object can be partially
represented: any fields that are present in the schema must be written to those
fields, and any missing fields are written to `variant_value`.
-
-The `metadata` column is unchanged from its unshredded representation, and may
be referenced in `variant_value` fields in the shredded data.
+Variant values are stored in Parquet fields named `value`.
+Each `value` field may have an associated shredded field named `typed_value`
that stores the value when it matches a specific type.
+For example, a Variant field, `measurement` may be shredded as long values by
adding `typed_value` with type `int64`:
```
-optional group variant_col {
- required binary metadata;
- optional binary variant_value;
- optional group object {
- optional group a {
- optional binary variant_value;
- optional int64 typed_value;
- }
- optional group b {
- optional binary variant_value;
- optional group object {
- optional group c {
- optional binary variant_value;
- optional binary typed_value (STRING);
- }
- }
- }
- }
+optional group measurement (VARIANT) {
+ required binary metadata;
+ optional binary value;
+ optional int64 typed_value;
}
```
-| Variant Value | Top-level variant_value | b.variant_value | a.typed_value |
a.variant_value | b.object.c.typed_value | b.object.c.variant_value | Notes |
-|---------------|-------------------------|-----------------|---------------|-----------------|------------------------|--------------------------|-------|
-| {a: 123, b: {c: “hello”}} | null | null | 123 | null | hello | null | All
values shredded |
-| {a: 1.23, b: {c: “123”}} | null | null | null | 1.23 | 123 | null | a is not
an integer |
-| {a: 123, b: {c: null}} | null | null | null | 123 | null | null | b.object.c
set to non-null to indicate VariantNull |
-| {a: 123, b: {} | null | null | null | 123 | null | null | b.object.c set to
null, to indicate that c is missing |
-| {a: 123, d: 456} | {d: 456} | null | 123 | null | null | null | Extra field
d is stored as variant_value |
-| [{a: 1, b: {c: 2}}, {a: 3, b: {c: 4}}] | [{a: 1, b: {c: 2}}, {a: 3, b: {c:
4}}] | null | null | null | null | null | Not an object |
+The series of measurements `34, null, "n/a", 100` would be stored as:
-# Parquet Layout
+| Value | `metadata` | `value` | `typed_value` |
+|---------|------------------|-----------------------|---------------|
+| 34 | `01 00` v1/empty | null | `34` |
+| null | `01 00` v1/empty | `00` (null) | null |
+| "n/a" | `01 00` v1/empty | `13 6E 2F 61` (`n/a`) | null |
+| 100 | `01 00` v1/empty | null | `100` |
-The `array` and `object` fields represent Variant array and object types,
respectively.
-Arrays must use the three-level list structure described in
https://github.com/apache/parquet-format/blob/master/LogicalTypes.md.
+Both `value` and `typed_value` are optional fields used together to encode a
single value.
+Values in the two fields must be interpreted according to the following table:
-An `object` field must be a group.
-Each field name of this inner group corresponds to the Variant value's object
field name.
-Each inner field's type is a recursively shredded variant value: that is, the
fields of each object field must be one or more of `object`, `array`,
`typed_value` or `variant_value`.
+| `value` | `typed_value` | Meaning
|
+|----------|---------------|----------------------------------------------------------|
+| null | null | The value is missing
|
+| non-null | null | The value is present and may be any type,
including null |
+| null | non-null | The value is present and is the shredded type
|
+| non-null | non-null | The value is present and a partially shredded
object |
-Similarly the elements of an `array` must be a group containing one or more of
`object`, `array`, `typed_value` or `variant_value`.
+An object is _partially shredded_ when the `value` is an object and the
`typed_value` is a shredded object.
-Each leaf in the schema can store an arbitrary Variant value.
-It contains an `variant_value` binary field and a `typed_value` field.
-If non-null, `variant_value` represents the value stored as a Variant binary.
-The `typed_value` field may be any type that has a corresponding Variant type.
-For each value in the data, at most one of the `typed_value` and
`variant_value` may be non-null.
-A writer may omit either field, which is equivalent to all rows being null.
+If both fields are non-null and either is not an object, the value is invalid.
Readers must either fail or return the `typed_value`.
Review Comment:
IMHO, trying to make the projection of an object to another one without
having to read the value is too spark specific. For example, with keys "a" and
"b" shredded, If I am casting {"a":2, "b":3, "c":4} to a struct with keys "a"
and "b", I can easily imagine a cast semantic that will fail that cast and such
a semantic will force us reading both the typed_value and value unless value is
null.
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