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help / color / mirror / Atom feedFrom: Tomas Vondra <[email protected]>
Subject: [PATCH 2/2] review reworks
Date: Sat, 6 Jul 2019 16:39:17 +0200
---
src/backend/access/heap/tuptoaster.c | 47 +++++++++++++++-------------
src/common/pg_lzcompress.c | 19 +++++------
src/include/common/pg_lzcompress.h | 2 +-
3 files changed, 37 insertions(+), 31 deletions(-)
diff --git a/src/backend/access/heap/tuptoaster.c b/src/backend/access/heap/tuptoaster.c
index 1eb6ccaca2..809a52196c 100644
--- a/src/backend/access/heap/tuptoaster.c
+++ b/src/backend/access/heap/tuptoaster.c
@@ -62,7 +62,7 @@ typedef struct toast_compress_header
#define TOAST_COMPRESS_HDRSZ ((int32) sizeof(toast_compress_header))
#define TOAST_COMPRESS_RAWSIZE(ptr) (((toast_compress_header *) (ptr))->rawsize)
#define TOAST_COMPRESS_SIZE(ptr) ((int32) VARSIZE(ptr) - TOAST_COMPRESS_HDRSZ)
-#define TOAST_COMPRESS_DATA(ptr) \
+#define TOAST_COMPRESS_RAWDATA(ptr) \
(((char *) (ptr)) + TOAST_COMPRESS_HDRSZ)
#define TOAST_COMPRESS_SET_RAWSIZE(ptr, len) \
(((toast_compress_header *) (ptr))->rawsize = (len))
@@ -254,7 +254,7 @@ heap_tuple_untoast_attr(struct varlena *attr)
* Public entry point to get back part of a toasted value
* from compression or external storage.
*
- * Note if slicelength is negative, return suffix of the value.
+ * Note: when slicelength is negative, return suffix of the value.
* ----------
*/
struct varlena *
@@ -277,17 +277,23 @@ heap_tuple_untoast_attr_slice(struct varlena *attr,
return toast_fetch_datum_slice(attr, sliceoffset, slicelength);
/*
- * If only need the prefix slice, fetch enough datums to decompress.
- * Otherwise, fetch all datums.
+ * When a prefix of the value is requested, fetch enough slices to
+ * decompress. Otherwise, fetch all slices.
*/
if (slicelength > 0 && sliceoffset >= 0)
{
int32 max_size;
+
+ /*
+ * Determine maximum amount of compressed data needed for a prefix
+ * of a given length (after decompression).
+ */
max_size = pglz_maximum_compressed_size(sliceoffset + slicelength,
TOAST_COMPRESS_SIZE(attr));
+
/*
- * Be sure to get enough compressed slice
- * and compressed marker will get set automatically
+ * Fetch enough compressed slices, compressed marker will get set
+ * automatically.
*/
preslice = toast_fetch_datum_slice(attr, 0, max_size);
}
@@ -1409,7 +1415,7 @@ toast_compress_datum(Datum value)
*/
len = pglz_compress(VARDATA_ANY(DatumGetPointer(value)),
valsize,
- TOAST_COMPRESS_DATA(tmp),
+ TOAST_COMPRESS_RAWDATA(tmp),
PGLZ_strategy_default);
if (len >= 0 &&
len + TOAST_COMPRESS_HDRSZ < valsize - 2)
@@ -2050,7 +2056,8 @@ toast_fetch_datum(struct varlena *attr)
* in the toast relation
*
* Note that this function supports non-compressed external datums
- * and compressed external datum slices at the start of the object.
+ * and compressed external datums (in which case the requrested slice
+ * has to be a prefix, i.e. sliceoffset has to be 0).
* ----------
*/
static struct varlena *
@@ -2092,7 +2099,8 @@ toast_fetch_datum_slice(struct varlena *attr, int32 sliceoffset, int32 length)
/*
* It's meaningful to fetch slices at the start of a compressed datum,
- * since we can decompress the prefix raw data from it.
+ * since we can decompress the prefix raw data without decompressing the
+ * whole value.
*/
Assert(!VARATT_EXTERNAL_IS_COMPRESSED(toast_pointer) || 0 == sliceoffset);
@@ -2105,26 +2113,23 @@ toast_fetch_datum_slice(struct varlena *attr, int32 sliceoffset, int32 length)
length = 0;
}
+ /*
+ * When fetching a prefix of a compressed external datum, account for
+ * the rawsize tracking amount of raw data (it's stored at the beginning
+ * as an int32 value).
+ */
if (VARATT_EXTERNAL_IS_COMPRESSED(toast_pointer) && length > 0)
- {
- /*
- * If we are going to fetch the compressed external datum slice
- * at the start of the object, also should fetch rawsize field used
- * to record the size of the raw data.
- */
length = length + sizeof(int32);
- }
if (((sliceoffset + length) > attrsize) || length < 0)
length = attrsize - sliceoffset;
result = (struct varlena *) palloc(length + VARHDRSZ);
- if (VARATT_EXTERNAL_IS_COMPRESSED(toast_pointer)) {
+ if (VARATT_EXTERNAL_IS_COMPRESSED(toast_pointer))
SET_VARSIZE_COMPRESSED(result, length + VARHDRSZ);
- } else {
+ else
SET_VARSIZE(result, length + VARHDRSZ);
- }
if (length == 0)
return result; /* Can save a lot of work at this point! */
@@ -2307,7 +2312,7 @@ toast_decompress_datum(struct varlena *attr)
palloc(TOAST_COMPRESS_RAWSIZE(attr) + VARHDRSZ);
SET_VARSIZE(result, TOAST_COMPRESS_RAWSIZE(attr) + VARHDRSZ);
- if (pglz_decompress(TOAST_COMPRESS_DATA(attr),
+ if (pglz_decompress(TOAST_COMPRESS_RAWDATA(attr),
TOAST_COMPRESS_SIZE(attr),
VARDATA(result),
TOAST_COMPRESS_RAWSIZE(attr), true) < 0)
@@ -2334,7 +2339,7 @@ toast_decompress_datum_slice(struct varlena *attr, int32 slicelength)
result = (struct varlena *) palloc(slicelength + VARHDRSZ);
- rawsize = pglz_decompress(TOAST_COMPRESS_DATA(attr),
+ rawsize = pglz_decompress(TOAST_COMPRESS_RAWDATA(attr),
VARSIZE(attr) - TOAST_COMPRESS_HDRSZ,
VARDATA(result),
slicelength, false);
diff --git a/src/common/pg_lzcompress.c b/src/common/pg_lzcompress.c
index ac7d66db77..18766ade02 100644
--- a/src/common/pg_lzcompress.c
+++ b/src/common/pg_lzcompress.c
@@ -773,27 +773,28 @@ pglz_decompress(const char *source, int32 slen, char *dest,
}
-
/* ----------
* pglz_max_compressed_size -
*
- * Calculate the maximum size of the compressed slice corresponding to the
- * raw slice. Return the maximum size, or total compressed size if maximum
- * size is larger than total compressed size.
+ * Calculate the maximum compressed size for a given amount of raw data.
+ * Return the maximum size, or total compressed size if maximum size is
+ * larger than total compressed size.
* ----------
*/
int32
-pglz_maximum_compressed_size(int32 raw_slice_size, int32 total_compressed_size)
+pglz_maximum_compressed_size(int32 rawsize, int32 total_compressed_size)
{
- int32 result;
+ int32 compressed_size;
/*
* Use int64 to prevent overflow during calculation.
*/
- result = (int32)((int64)raw_slice_size * 9 + 8) / 8;
+ compressed_size = (int32) ((int64) rawsize * 9 + 8) / 8;
/*
- * Note that slice compressed size will never be larger than total compressed size.
+ * Maximum compressed size can't be larger than total compressed size.
*/
- return result > total_compressed_size ? total_compressed_size: result;
+ compressed_size = Min(compressed_size, total_compressed_size);
+
+ return compressed_size;
}
diff --git a/src/include/common/pg_lzcompress.h b/src/include/common/pg_lzcompress.h
index cda3e1d364..e59fe2eaea 100644
--- a/src/include/common/pg_lzcompress.h
+++ b/src/include/common/pg_lzcompress.h
@@ -87,6 +87,6 @@ extern int32 pglz_compress(const char *source, int32 slen, char *dest,
const PGLZ_Strategy *strategy);
extern int32 pglz_decompress(const char *source, int32 slen, char *dest,
int32 rawsize, bool check_complete);
-extern int32 pglz_maximum_compressed_size(int32 raw_slice_size, int32 raw_size);
+extern int32 pglz_maximum_compressed_size(int32 rawsize, int32 total_compressed_size);
#endif /* _PG_LZCOMPRESS_H_ */
--
2.20.1
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100000; do=0A=0A b=3D$((LEN - a))=0A=0A dropdb --if-exists test > /dev/null=
2>&1=0A createdb test > /dev/null 2>&1=0A=0A psql test -c "create table t =
(a text)" > /dev/null 2>&1=0A=0A psql test -c "create extension randomstrin=
g" > /dev/null 2>&1=0A=0A psql test -c "insert into t select random_string(=
$a) || repeat('a', $b) from generate_series(1,$ROWS) S(i)" > /dev/null 2>&1=
=0A=0A psql test -c "vacuum analyze t" > /dev/null 2>&1=0A=0A psql test -c =
"checkpoint" > /dev/null 2>&1=0A=0A for p in 0 100 1000 10000 100000; do=0A=
=0A for l in 100 1000 10000 100000; do=0A=0A for r in `seq 1 10`; do=0A =
psql test > tmp.log <<EOF=0A\timing on=0Aselect sum(length(substr(a,$p,$=
l))) from t=0AEOF=0A=0A t=3D`cat tmp.log | grep Time | awk '{print $2}'`=
=0A=0A echo $LEN $a $b $p $l $r random-first $t=0A=0A done=0A=0A done=
=0A=0A done=0A=0Adone=0A=0Afor a in 0 100 1000 10000 100000; do=0A=0A b=3D$=
((LEN - a))=0A=0A dropdb --if-exists test > /dev/null 2>&1=0A createdb test=
> /dev/null 2>&1=0A=0A psql test -c "create table t (a text)" > /dev/null =
2>&1=0A=0A psql test -c "create extension randomstring" > /dev/null 2>&1=0A=
=0A psql test -c "insert into t select repeat('a', $b) || random_string($a)=
from generate_series(1,$ROWS) S(i)" > /dev/null 2>&1=0A=0A psql test -c "v=
acuum analyze t" > /dev/null 2>&1=0A=0A psql test -c "checkpoint" > /dev/nu=
ll 2>&1=0A=0A for p in 0 100 1000 10000 100000; do=0A=0A for l in 100 1000=
10000 100000; do=0A=0A for r in `seq 1 10`; do=0A psql test > tmp.log=
<<EOF=0A\timing on=0Aselect sum(length(substr(a,$p,$l))) from t=0AEOF=0A=
=0A t=3D`cat tmp.log | grep Time | awk '{print $2}'`=0A=0A echo $LEN =
$a $b $p $l $r random-last $t=0A=0A done=0A=0A done=0A=0A done=0A=0Adone=
=0A
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