INSERT statement
Impala supports inserting into tables and partitions that you create with the Impala
CREATE TABLE
statement, or pre-defined tables and partitions created through
Hive.
Syntax:
[with_clause]
INSERT [hint_clause] { INTO | OVERWRITE } [TABLE] table_name
[(column_list)]
[ PARTITION (partition_clause)]
{
[hint_clause] select_statement
| VALUES (value [, value ...]) [, (value [, value ...]) ...]
}
partition_clause ::= col_name [= constant] [, col_name [= constant] ...]
hint_clause ::=
hint_with_dashes |
hint_with_cstyle_delimiters |
hint_with_brackets
hint_with_dashes ::= -- +SHUFFLE | -- +NOSHUFFLE -- +CLUSTERED
hint_with_cstyle_comments ::= /* +SHUFFLE */ | /* +NOSHUFFLE */ | /* +CLUSTERED */
hint_with_brackets ::= [SHUFFLE] | [NOSHUFFLE]
(With this hint format, the square brackets are part of the syntax.)
Appending or replacing (INTO and OVERWRITE clauses):
The INSERT INTO
syntax appends data to a table. The existing data files are left as-is, and
the inserted data is put into one or more new data files.
The INSERT OVERWRITE
syntax replaces the data in a table.
Currently, the overwritten data files are deleted immediately; they do not go through the HDFS trash
mechanism.
Complex type considerations:
The INSERT
statement currently does not support writing data files
containing complex types (ARRAY
, STRUCT
, and
MAP
). To prepare Parquet data for such tables, you generate the data
files outside Impala and then use LOAD DATA
or CREATE EXTERNAL
TABLE
to associate those data files with the table. Currently, such tables must
use the Parquet file format.
Kudu considerations:
Currently, the INSERT OVERWRITE
syntax cannot be used with Kudu tables.
Kudu tables require a unique primary key for each row. If an INSERT
statement attempts to insert a row with the same values for the primary key columns
as an existing row, that row is discarded and the insert operation continues.
When rows are discarded due to duplicate primary keys, the statement finishes
with a warning, not an error. (This is a change from early releases of Kudu
where the default was to return in error in such cases, and the syntax
INSERT IGNORE
was required to make the statement succeed.
The IGNORE
clause is no longer part of the INSERT
syntax.)
For situations where you prefer to replace rows with duplicate primary key values,
rather than discarding the new data, you can use the UPSERT
statement instead of INSERT
. UPSERT
inserts
rows that are entirely new, and for rows that match an existing primary key in the
table, the non-primary-key columns are updated to reflect the values in the
upserted
data.
If you really want to store new rows, not replace existing ones, but cannot do so because of the primary key uniqueness constraint, consider recreating the table with additional columns included in the primary key.
Usage notes:
Impala currently supports:
-
Copy data from another table using
SELECT
query. In Impala 1.2.1 and higher, you can combineCREATE TABLE
andINSERT
operations into a single step with theCREATE TABLE AS SELECT
syntax, which bypasses the actualINSERT
keyword. - An optional
WITH
clause before theINSERT
keyword, to define a subquery referenced in theSELECT
portion. -
Create one or more new rows using constant expressions through
VALUES
clause. (TheVALUES
clause was added in Impala 1.0.1.) -
By default, the first column of each newly inserted row goes into the first column of the table, the second column into the second column, and so on.
You can also specify the columns to be inserted, an arbitrarily ordered subset of the columns in the destination table, by specifying a column list immediately after the name of the destination table. This feature lets you adjust the inserted columns to match the layout of a
SELECT
statement, rather than the other way around. (This feature was added in Impala 1.1.)The number of columns mentioned in the column list (known as the
column permutation
) must match the number of columns in theSELECT
list or theVALUES
tuples. The order of columns in the column permutation can be different than in the underlying table, and the columns of each input row are reordered to match. If the number of columns in the column permutation is less than in the destination table, all unmentioned columns are set toNULL
. - An optional hint clause immediately either before the
SELECT
keyword or after theINSERT
keyword, to fine-tune the behavior when doing anINSERT ... SELECT
operation into partitioned Parquet tables. The hint clause cannot be specified in multiple places. The hint keywords are[SHUFFLE]
and[NOSHUFFLE]
, including the square brackets. Inserting into partitioned Parquet tables can be a resource-intensive operation because it potentially involves many files being written to HDFS simultaneously, and separate large memory buffers being allocated to buffer the data for each partition.
Statement type: DML (but still affected by the SYNC_DDL
query
option)
Usage notes:
When you insert the results of an expression, particularly of a built-in function call, into a small numeric
column such as INT
, SMALLINT
, TINYINT
, or
FLOAT
, you might need to use a CAST()
expression to coerce values into the
appropriate type. Impala does not automatically convert from a larger type to a smaller one. For example, to
insert cosine values into a FLOAT
column, write CAST(COS(angle) AS FLOAT)
in the INSERT
statement to make the conversion explicit.
File format considerations:
Because Impala can read certain file formats that it cannot write, the
INSERT
statement does not work for all kinds of Impala tables. See
How Impala works with Hadoop file formats for details about what file formats
are supported by the INSERT
statement.
Any INSERT
statement for a Parquet table requires enough free space in the HDFS filesystem
to write one block. Because Parquet data files use a block size of 1 GB by default, an
INSERT
might fail (even for a very small amount of data) if your HDFS is running low on
space.
If you connect to different Impala nodes within an
impala-shell session for load-balancing purposes, you can enable the
SYNC_DDL
query option to make each DDL statement wait before returning,
until the new or changed metadata has been received by all the Impala nodes.
Examples:
The following example sets up new tables with the same definition as the TAB1
table using different file formats, and demonstrates inserting data into the tables created
with the STORED AS TEXTFILE
and STORED AS PARQUET
clauses:
CREATE DATABASE IF NOT EXISTS file_formats;
USE file_formats;
DROP TABLE IF EXISTS text_table;
CREATE TABLE text_table
( id INT, col_1 BOOLEAN, col_2 DOUBLE, col_3 TIMESTAMP )
STORED AS TEXTFILE;
DROP TABLE IF EXISTS parquet_table;
CREATE TABLE parquet_table
( id INT, col_1 BOOLEAN, col_2 DOUBLE, col_3 TIMESTAMP )
STORED AS PARQUET;
With the INSERT INTO TABLE
syntax, each new set of inserted rows is appended to any existing
data in the table. This is how you would record small amounts of data that arrive continuously, or ingest new
batches of data alongside the existing data. For example, after running 2 INSERT INTO TABLE
statements with 5 rows each, the table contains 10 rows total:
[localhost:21000] > insert into table text_table select * from default.tab1;
Inserted 5 rows in 0.41s
[localhost:21000] > insert into table text_table select * from default.tab1;
Inserted 5 rows in 0.46s
[localhost:21000] > select count(*) from text_table;
+----------+
| count(*) |
+----------+
| 10 |
+----------+
Returned 1 row(s) in 0.26s
With the INSERT OVERWRITE TABLE
syntax, each new set of inserted rows replaces any existing
data in the table. This is how you load data to query in a data warehousing scenario where you analyze just
the data for a particular day, quarter, and so on, discarding the previous data each time. You might keep the
entire set of data in one raw table, and transfer and transform certain rows into a more compact and
efficient form to perform intensive analysis on that subset.
For example, here we insert 5 rows into a table using the INSERT INTO
clause, then replace
the data by inserting 3 rows with the INSERT OVERWRITE
clause. Afterward, the table only
contains the 3 rows from the final INSERT
statement.
[localhost:21000] > insert into table parquet_table select * from default.tab1;
Inserted 5 rows in 0.35s
[localhost:21000] > insert overwrite table parquet_table select * from default.tab1 limit 3;
Inserted 3 rows in 0.43s
[localhost:21000] > select count(*) from parquet_table;
+----------+
| count(*) |
+----------+
| 3 |
+----------+
Returned 1 row(s) in 0.43s
The VALUES
clause lets you insert one or more rows by specifying constant
values for all the columns. The number, types, and order of the expressions must match the
table definition.
The following example shows how to insert one row or multiple rows, with expressions of different types, using literal values, expressions, and function return values:
create table val_test_1 (c1 int, c2 float, c3 string, c4 boolean, c5 timestamp);
insert into val_test_1 values (100, 99.9/10, 'abc', true, now());
create table val_test_2 (id int, token string);
insert overwrite val_test_2 values (1, 'a'), (2, 'b'), (-1,'xyzzy');
These examples show the type of not implemented
error that you see when attempting to insert data into
a table with a file format that Impala currently does not write to:
DROP TABLE IF EXISTS sequence_table;
CREATE TABLE sequence_table
( id INT, col_1 BOOLEAN, col_2 DOUBLE, col_3 TIMESTAMP )
STORED AS SEQUENCEFILE;
DROP TABLE IF EXISTS rc_table;
CREATE TABLE rc_table
( id INT, col_1 BOOLEAN, col_2 DOUBLE, col_3 TIMESTAMP )
STORED AS RCFILE;
[localhost:21000] > insert into table rc_table select * from default.tab1;
Remote error
Backend 0:RC_FILE not implemented.
[localhost:21000] > insert into table sequence_table select * from default.tab1;
Remote error
Backend 0:SEQUENCE_FILE not implemented.
The following examples show how you can copy the data in all the columns from one table to another, copy the data from only some columns, or specify the columns in the select list in a different order than they actually appear in the table:
-- Start with 2 identical tables.
create table t1 (c1 int, c2 int);
create table t2 like t1;
-- If there is no () part after the destination table name,
-- all columns must be specified, either as * or by name.
insert into t2 select * from t1;
insert into t2 select c1, c2 from t1;
-- With the () notation following the destination table name,
-- you can omit columns (all values for that column are NULL
-- in the destination table), and/or reorder the values
-- selected from the source table. This is the "column permutation" feature.
insert into t2 (c1) select c1 from t1;
insert into t2 (c2, c1) select c1, c2 from t1;
-- The column names can be entirely different in the source and destination tables.
-- You can copy any columns, not just the corresponding ones, from the source table.
-- But the number and type of selected columns must match the columns mentioned in the () part.
alter table t2 replace columns (x int, y int);
insert into t2 (y) select c1 from t1;
Sorting considerations: Although you can specify an ORDER BY
clause in an
INSERT ... SELECT
statement, any ORDER BY
clause is ignored and the
results are not necessarily sorted. An INSERT ... SELECT
operation potentially creates
many different data files, prepared by different executor Impala daemons, and therefore the notion of the data being
stored in sorted order is impractical.
Concurrency considerations: Each INSERT
operation creates new data files with unique names, so you can run
multiple INSERT INTO
statements simultaneously without
filename conflicts. While data is being inserted into an Impala table,
the data is staged temporarily in a subdirectory inside the data
directory; during this period, you cannot issue queries against that
table in Hive. If an INSERT
operation fails, the
temporary data file and the subdirectory could be left behind in the
data directory. If so, remove the relevant subdirectory and any data
files it contains manually, by issuing an hdfs dfs -rm
-r
command, specifying the full path of the work
subdirectory, whose name ends in _dir
.
VALUES clause
The VALUES
clause is a general-purpose way to specify the columns of one
or more rows, typically within an INSERT
statement.
The following examples illustrate:
- How to insert a single row using a
VALUES
clause. - How to insert multiple rows using a
VALUES
clause. - How the row or rows from a
VALUES
clause can be appended to a table throughINSERT INTO
, or replace the contents of the table throughINSERT OVERWRITE
. - How the entries in a
VALUES
clause can be literals, function results, or any other kind of expression. See Impala SQL literals for the notation to use for literal values, especially for quoting and escaping conventions for strings. See Impala SQL operators and Impala built-in functions for other things you can include in expressions with theVALUES
clause.
[localhost:21000] > describe val_example;
Query: describe val_example
Query finished, fetching results ...
+-------+---------+---------+
| name | type | comment |
+-------+---------+---------+
| id | int | |
| col_1 | boolean | |
| col_2 | double | |
+-------+---------+---------+
[localhost:21000] > insert into val_example values (1,true,100.0);
Inserted 1 rows in 0.30s
[localhost:21000] > select * from val_example;
+----+-------+-------+
| id | col_1 | col_2 |
+----+-------+-------+
| 1 | true | 100 |
+----+-------+-------+
[localhost:21000] > insert overwrite val_example values (10,false,pow(2,5)), (50,true,10/3);
Inserted 2 rows in 0.16s
[localhost:21000] > select * from val_example;
+----+-------+-------------------+
| id | col_1 | col_2 |
+----+-------+-------------------+
| 10 | false | 32 |
| 50 | true | 3.333333333333333 |
+----+-------+-------------------+
When used in an INSERT
statement, the Impala VALUES
clause can specify some or all of the columns in the destination table, and the columns can
be specified in a different order than they actually appear in the table. To specify a
different set or order of columns than in the table, use the syntax:
INSERT INTO destination
(col_x, col_y, col_z)
VALUES
(val_x, val_y, val_z);
Any columns in the table that are not listed in the INSERT
statement are
set to NULL
.
HDFS considerations:
Impala physically writes all inserted files under the ownership of its default user,
typically impala
. Therefore, this user must have HDFS write permission in
the corresponding table directory.
The permission requirement is independent of the authorization
performed by the Ranger framework. (If the connected user is not
authorized to insert into a table, Ranger blocks that operation
immediately, regardless of the privileges available to the
impala
user.) Files created by Impala are not owned
by and do not inherit permissions from the connected user.
The number of data files produced by an INSERT
statement depends on the
size of the cluster, the number of data blocks that are processed, the partition key columns
in a partitioned table, and the mechanism Impala uses for dividing the work in parallel. Do
not assume that an INSERT
statement will produce some particular number of
output files. In case of performance issues with data written by Impala, check that the
output files do not suffer from issues such as many tiny files or many tiny partitions. (In
the Hadoop context, even files or partitions of a few tens of megabytes are considered
tiny
.)
The INSERT
statement has always left behind a hidden work directory inside the data
directory of the table. Formerly, this hidden work directory was named
.impala_insert_staging . In Impala 2.0.1 and later, this directory name is changed to
_impala_insert_staging . (While HDFS tools are expected to treat names beginning
either with underscore and dot as hidden, in practice names beginning with an underscore are more widely
supported.) If you have any scripts, cleanup jobs, and so on that rely on the name of this work directory,
adjust them to use the new name.
HBase considerations:
You can use the INSERT
statement with HBase tables as follows:
-
You can insert a single row or a small set of rows into an HBase table with the
INSERT ... VALUES
syntax. This is a good use case for HBase tables with Impala, because HBase tables are not subject to the same kind of fragmentation from many small insert operations as HDFS tables are. -
You can insert any number of rows at once into an HBase table using the
INSERT ... SELECT
syntax. -
If more than one inserted row has the same value for the HBase key column, only the last inserted row with that value is visible to Impala queries. You can take advantage of this fact with
INSERT ... VALUES
statements to effectively update rows one at a time, by inserting new rows with the same key values as existing rows. Be aware that after anINSERT ... SELECT
operation copying from an HDFS table, the HBase table might contain fewer rows than were inserted, if the key column in the source table contained duplicate values. -
You cannot
INSERT OVERWRITE
into an HBase table. New rows are always appended. -
When you create an Impala or Hive table that maps to an HBase table, the column order you specify with the
INSERT
statement might be different than the order you declare with theCREATE TABLE
statement. Behind the scenes, HBase arranges the columns based on how they are divided into column families. This might cause a mismatch during insert operations, especially if you use the syntaxINSERT INTO hbase_table SELECT * FROM hdfs_table
. Before inserting data, verify the column order by issuing aDESCRIBE
statement for the table, and adjust the order of the select list in theINSERT
statement.
Amazon S3 considerations:
In Impala 2.6 and higher, the Impala DML
statements (INSERT
, LOAD DATA
, and CREATE TABLE AS
SELECT
) can write data into a table or partition that resides in the Amazon
Simple Storage Service (S3). The syntax of the DML statements is the same as for any other
tables, because the S3 location for tables and partitions is specified by an
s3a://
prefix in the LOCATION
attribute of
CREATE TABLE
or ALTER TABLE
statements. If you bring
data into S3 using the normal S3 transfer mechanisms instead of Impala DML statements, issue
a REFRESH
statement for the table before using Impala to query the S3 data.
Because of differences between
S3 and traditional filesystems, DML operations for S3 tables can take longer than for tables
on HDFS. For example, both the LOAD DATA
statement and the final stage of
the INSERT
and CREATE TABLE AS SELECT
statements involve
moving files from one directory to another. (In the case of INSERT
and
CREATE TABLE AS SELECT
, the files are moved from a temporary staging
directory to the final destination directory.) Because S3 does not support a rename
operation for existing objects, in these cases Impala actually copies the data files from
one location to another and then removes the original files. In Impala 2.6, the
S3_SKIP_INSERT_STAGING
query option provides a way to speed up
INSERT
statements for S3 tables and partitions, with the tradeoff that a
problem during statement execution could leave data in an inconsistent state. It does not
apply to INSERT OVERWRITE
or LOAD DATA
statements.
ADLS considerations:
In Impala 2.9 and higher, the Impala DML statements
(INSERT
, LOAD DATA
, and CREATE TABLE AS
SELECT
) can write data into a table or partition that resides in the Azure Data
Lake Store (ADLS). ADLS Gen2 is supported in Impala 3.1 and higher.
In theCREATE TABLE
or
ALTER TABLE
statements, specify the ADLS location for
tables and partitions with the adl://
prefix for ADLS
Gen1 and abfs://
or abfss://
for ADLS
Gen2 in the LOCATION
attribute.
If you bring data into ADLS
using the normal ADLS transfer mechanisms instead of Impala DML
statements, issue a REFRESH
statement for the table
before using Impala to query the ADLS data.
Security considerations:
If these statements in your environment contain sensitive literal values such as credit card numbers or tax identifiers, Impala can redact this sensitive information when displaying the statements in log files and other administrative contexts.
Cancellation: Can be cancelled. To cancel this statement, use Ctrl-C from the impala-shell interpreter, the Cancel button from the Watch page in Hue, Actions > Cancel from the Queries list in Cloudera Manager, or Cancel from the list of in-flight queries (for a particular node) on the Queries tab in the Impala web UI (port 25000).
HDFS permissions:
The user ID that the impalad daemon runs under, typically the
impala
user, must have read permission for the files in the source
directory of an INSERT ... SELECT
operation, and write permission for all
affected directories in the destination table. (An INSERT
operation could
write files to multiple different HDFS directories if the destination table is partitioned.)
This user must also have write permission to create a temporary work directory in the
top-level HDFS directory of the destination table. An INSERT OVERWRITE
operation does not require write permission on the original data files in the table, only on
the table directories themselves.
Restrictions:
For INSERT
operations into CHAR
or VARCHAR
columns, you
must cast all STRING
literals or expressions returning STRING
to to a
CHAR
or VARCHAR
type with the appropriate length.
Related startup options:
By default, if an
INSERT
statement creates any new subdirectories
underneath a partitioned table, those subdirectories are assigned
default HDFS permissions for the impala
user. To make
each subdirectory have the same permissions as its parent directory in
HDFS, specify the
‑‑insert_inherit_permissions
startup
option for the impalad daemon.
Inserting into partitioned tables with PARTITION clause
For a partitioned table, the optional PARTITION
clause identifies which
partition or partitions the values are inserted into.
All examples in this section will use the table declared as below:
CREATE TABLE t1 (w INT) PARTITIONED BY (x INT, y STRING);
- Static partition inserts
-
In a static partition insert where a partition key column is given a constant value, such as
PARTITION
(year=2012, month=2)
, the rows are inserted with the same values specified for those partition key columns.The number of columns in the
SELECT
list must equal the number of columns in the column permutation.The
PARTITION
clause must be used for static partitioning inserts.Example:
The following statement will insert thesome_other_table.c1
values for thew
column, and all the rows inserted will have the samex
value of10
, and the samey
value of‘a’
.INSERT INTO t1 PARTITION (x=10, y='a') SELECT c1 FROM some_other_table;
- Dynamic partition inserts
-
In a dynamic partition insert where a partition key column is in the
INSERT
statement but not assigned a value, such as inPARTITION (year, region)
(both columns unassigned) orPARTITION(year, region='CA')
(year
column unassigned), the unassigned columns are filled in with the final columns of theSELECT
orVALUES
clause. In this case, the number of columns in theSELECT
list must equal the number of columns in the column permutation plus the number of partition key columns not assigned a constant value.The following rules apply to dynamic partition inserts.
-
The columns are bound in the order they appear in the
INSERT
statement.The table below shows the values inserted with the
INSERT
statements of different column orders.
Column w
ValueColumn x
ValueColumn y
ValueINSERT INTO t1 (w, x, y) VALUES (1, 2, 'c');
1
2
‘c’
INSERT INTO t1 (x,w) PARTITION (y) VALUES (1, 2, 'c');
2
1
‘c’
- When a partition clause is specified but the non-partition columns are not
specified in the
INSERT
statement, as in the first example below, the non-partition columns are treated as though they had been specified before thePARTITION
clause in the SQL.Example: These three statements are equivalent, inserting
1
tow
,2
tox
, and‘c’
toy
columns.INSERT INTO t1 PARTITION (x,y) VALUES (1, 2, ‘c’); INSERT INTO t1 (w) PARTITION (x, y) VALUES (1, 2, ‘c’); INSERT INTO t1 PARTITION (x, y='c') VALUES (1, 2);
- The
PARTITION
clause is not required for dynamic partition, but all the partition columns must be explicitly present in theINSERT
statement in the column list or in thePARTITION
clause. The partition columns cannot be defaulted toNULL
.Example:
The following statements are valid because the partition columns,
x
andy
, are present in theINSERT
statements, either in thePARTITION
clause or in the column list.INSERT INTO t1 PARTITION (x,y) VALUES (1, 2, ‘c’); INSERT INTO t1 (w, x) PARTITION (y) VALUES (1, 2, ‘c’);
The following statement is not valid for the partitioned table as defined above because the partition columns,
x
andy
, are not present in theINSERT
statement.INSERT INTO t1 VALUES (1, 2, 'c');
- If partition columns do not exist in the source table, you can specify a specific
value for that column in the
PARTITION
clause.Example: The
source
table only contains the columnw
andy
. The value,20
, specified in thePARTITION
clause, is inserted into thex
column.INSERT INTO t1 PARTITION (x=20, y) SELECT * FROM source;
-
TRUNCATE on Insert-Only Transactional Tables
The TRUNCATE table statement on Insert-Only Transactional tables creates new empty ACID base directories and does not remove the files. To maintain transactional isolation TRUNCATE statement will NOT delete the previous base and delta directories.