Data Manipulation
This section describes the statements supported by CQL to insert, update, delete and query data.
SELECT
Querying data from data is done using a SELECT
statement:
select_statement::= SELECT [ JSON | DISTINCT ] ( select_clause | '*' )
FROM `table_name`
[ WHERE `where_clause` ]
[ GROUP BY `group_by_clause` ]
[ ORDER BY `ordering_clause` ]
[ PER PARTITION LIMIT (`integer` | `bind_marker`) ]
[ LIMIT (`integer` | `bind_marker`) ]
[ ALLOW FILTERING ]
select_clause::= `selector` [ AS `identifier` ] ( ',' `selector` [ AS `identifier` ] )
selector::== `column_name`
| `term`
| CAST '(' `selector` AS `cql_type` ')'
| `function_name` '(' [ `selector` ( ',' `selector` )_ ] ')'
| COUNT '(' '_' ')'
where_clause::= `relation` ( AND `relation` )*
relation::= column_name operator term
'(' column_name ( ',' column_name )* ')' operator tuple_literal
TOKEN '(' column_name# ( ',' column_name )* ')' operator term
operator::= '=' | '<' | '>' | '<=' | '>=' | '!=' | IN | CONTAINS | CONTAINS KEY
group_by_clause::= column_name ( ',' column_name )*
ordering_clause::= column_name [ ASC | DESC ] ( ',' column_name [ ASC | DESC ] )*
For example:
SELECT name, occupation FROM users WHERE userid IN (199, 200, 207);
SELECT JSON name, occupation FROM users WHERE userid = 199;
SELECT name AS user_name, occupation AS user_occupation FROM users;
SELECT time, value
FROM events
WHERE event_type = 'myEvent'
AND time > '2011-02-03'
AND time <= '2012-01-01'
SELECT COUNT (*) AS user_count FROM users;
The SELECT
statements reads one or more columns for one or more rows
in a table. It returns a result-set of the rows matching the request,
where each row contains the values for the selection corresponding to
the query. Additionally, functions including
aggregations can be applied to the result.
A SELECT
statement contains at least a selection clause and the name of the table on which
the selection is executed.
CQL does not execute joins or sub-queries and a select statement only apply to a single table.
A select statement can also have a where clause that can further narrow the query results.
Additional clauses can order or limit the results.
Lastly, queries that require full cluster filtering can append ALLOW FILTERING
to any query.
Selection clause
The select_clause
determines which columns will be queried and returned in the result set.
This clause can also apply transformations to apply to the result before returning.
The selection clause consists of a comma-separated list of specific selectors or, alternatively, the wildcard character (*
) to select all the columns defined in the table.
Selectors
A selector
can be one of:
-
A column name of the table selected, to retrieve the values for that column.
-
A term, which is usually used nested inside other selectors like functions (if a term is selected directly, then the corresponding column of the result-set will simply have the value of this term for every row returned).
-
A casting, which allows to convert a nested selector to a (compatible) type.
-
A function call, where the arguments are selector themselves. See the section on functions for more details.
-
The special call
COUNT(*)
to the COUNT function, which counts all non-null results.
Aliases
Every top-level selector can also be aliased (using AS). If so, the name of the corresponding column in the result set will be that of the alias. For instance:
// Without alias
SELECT intAsBlob(4) FROM t;
// intAsBlob(4)
// --------------
// 0x00000004
// With alias
SELECT intAsBlob(4) AS four FROM t;
// four
// ------------
// 0x00000004
Currently, aliases aren’t recognized in the |
WRITETIME
and TTL
function
Selection supports two special functions that aren’t allowed anywhere
else: WRITETIME
and TTL
.
Both functions take only one argument, a column name.
These functions retrieve meta-information that is stored internally for each column:
-
WRITETIME
stores the timestamp of the value of the column -
TTL
stores the remaining time to live (in seconds) for the value of the column if it is set to expire; otherwise the value isnull
.
The WRITETIME
and TTL
functions can’t be used on multi-cell columns such as non-frozen
collections or non-frozen user-defined types.
The WHERE
clause
The WHERE
clause specifies which rows are queried. It specifies
a relationship for PRIMARY KEY
columns or a column that has
a secondary index defined, along with a set value.
Not all relationships are allowed in a query. For instance, only an equality
is allowed on a partition key. The IN
clause is considered an equality for one or more values.
The TOKEN
clause can be used to query for partition key non-equalities.
A partition key must be specified before clustering columns in the WHERE
clause. The relationship
for clustering columns must specify a contiguous set of rows to order.
For instance, given:
CREATE TABLE posts (
userid text,
blog_title text,
posted_at timestamp,
entry_title text,
content text,
category int,
PRIMARY KEY (userid, blog_title, posted_at)
);
The following query is allowed:
SELECT entry_title, content FROM posts
WHERE userid = 'john doe'
AND blog_title='John''s Blog'
AND posted_at >= '2012-01-01' AND posted_at < '2012-01-31';
But the following one is not, as it does not select a contiguous set of rows (and we suppose no secondary indexes are set):
// Needs a blog_title to be set to select ranges of posted_at
SELECT entry_title, content FROM posts
WHERE userid = 'john doe'
AND posted_at >= '2012-01-01' AND posted_at < '2012-01-31';
When specifying relationships, the TOKEN
function can be applied to the PARTITION KEY
column to query.
Rows will be selected based on the token of the PARTITION_KEY
rather than on the value.
The token of a key depends on the partitioner in use, and that
in particular the |
For example:
SELECT * FROM posts
WHERE token(userid) > token('tom') AND token(userid) < token('bob');
The IN
relationship is only allowed on the last column of the
partition key or on the last column of the full primary key.
It is also possible to “group” CLUSTERING COLUMNS
together in a
relation using the tuple notation.
For example:
SELECT * FROM posts
WHERE userid = 'john doe'
AND (blog_title, posted_at) > ('John''s Blog', '2012-01-01');
This query will return all rows that sort after the one having “John’s Blog” as
blog_tile
and '2012-01-01' for posted_at
in the clustering order. In
particular, rows having a post_at ⇐ '2012-01-01'
will be returned, as
long as their blog_title > 'John''s Blog'
.
That would not be the case for this example:
SELECT * FROM posts
WHERE userid = 'john doe'
AND blog_title > 'John''s Blog'
AND posted_at > '2012-01-01';
The tuple notation may also be used for IN
clauses on clustering columns:
SELECT * FROM posts
WHERE userid = 'john doe'
AND (blog_title, posted_at) IN (('John''s Blog', '2012-01-01'), ('Extreme Chess', '2014-06-01'));
The CONTAINS
operator may only be used for collection columns (lists,
sets, and maps). In the case of maps, CONTAINS
applies to the map
values. The CONTAINS KEY
operator may only be used on map columns and
applies to the map keys.
Grouping results
The GROUP BY
option can condense all selected
rows that share the same values for a set of columns into a single row.
Using the GROUP BY
option, rows can be grouped at the partition key or clustering column level.
Consequently, the GROUP BY
option only accepts primary key columns in defined order as arguments.
If a primary key column is restricted by an equality restriction, it is not included in the GROUP BY
clause.
Aggregate functions will produce a separate value for each group.
If no GROUP BY
clause is specified, aggregates functions will produce a single value for all the rows.
If a column is selected without an aggregate function, in a statement
with a GROUP BY
, the first value encounter in each group will be
returned.
Ordering results
The ORDER BY
clause selects the order of the returned results.
The argument is a list of column names and each column’s order
(ASC
for ascendant and DESC
for descendant,
The possible orderings are limited by the clustering order defined on the table:
-
if the table has been defined without any specific
CLUSTERING ORDER
, then the order is as defined by the clustering columns or the reverse -
otherwise, the order is defined by the
CLUSTERING ORDER
option and the reversed one.
Limiting results
The LIMIT
option to a SELECT
statement limits the number of rows
returned by a query. The PER PARTITION LIMIT
option limits the
number of rows returned for a given partition by the query. Both types of limits can used in the same statement.
Allowing filtering
By default, CQL only allows select queries that don’t involve a full scan of all partitions.
If all partitions are scanned, then returning the results may experience a significant latency proportional to the
amount of data in the table. The ALLOW FILTERING
option explicitly executes a full scan. Thus, the performance of
the query can be unpredictable.
For example, consider the following table of user profiles with birth year and country of residence. The birth year has a secondary index defined.
CREATE TABLE users (
username text PRIMARY KEY,
firstname text,
lastname text,
birth_year int,
country text
);
CREATE INDEX ON users(birth_year);
The following queries are valid:
// All users are returned
SELECT * FROM users;
// All users with a particular birth year are returned
SELECT * FROM users WHERE birth_year = 1981;
In both cases, the query performance is proportional to the amount of data returned.
The first query returns all rows, because all users are selected.
The second query returns only the rows defined by the secondary index, a per-node implementation; the results will
depend on the number of nodes in the cluster, and is indirectly proportional to the amount of data stored.
The number of nodes will always be multiple number of magnitude lower than the number of user profiles stored.
Both queries may return very large result sets, but the addition of a LIMIT
clause can reduced the latency.
The following query will be rejected:
SELECT * FROM users WHERE birth_year = 1981 AND country = 'FR';
Cassandra cannot guarantee that large amounts of data won’t have to scanned amount of data, even if the result is small.
If you know that the dataset is small, and the performance will be reasonable, add ALLOW FILTERING
to allow the query to
execute:
SELECT * FROM users WHERE birth_year = 1981 AND country = 'FR' ALLOW FILTERING;
INSERT
Inserting data for a row is done using an INSERT
statement:
insert_statement::= INSERT INTO table_name ( names_values | json_clause )
[ IF NOT EXISTS ]
[ USING update_parameter ( AND update_parameter )* ]
names_values::= names VALUES tuple_literal
json_clause::= JSON string [ DEFAULT ( NULL | UNSET ) ]
names::= '(' column_name ( ',' column_name )* ')'
For example:
INSERT INTO NerdMovies (movie, director, main_actor, year)
VALUES ('Serenity', 'Joss Whedon', 'Nathan Fillion', 2005)
USING TTL 86400;
INSERT INTO NerdMovies JSON '{"movie": "Serenity", "director": "Joss Whedon", "year": 2005}';
The INSERT
statement writes one or more columns for a given row in a
table.
Since a row is identified by its PRIMARY KEY
, at least one columns must be specified.
The list of columns to insert must be supplied with the VALUES
syntax.
When using the JSON
syntax, VALUES
are optional.
See the section on JSON support for more detail.
All updates for an INSERT
are applied atomically and in isolation.
Unlike in SQL, INSERT
does not check the prior existence of the row by default.
The row is created if none existed before, and updated otherwise.
Furthermore, there is no means of knowing which action occurred.
The IF NOT EXISTS
condition can restrict the insertion if the row does not exist.
However, note that using IF NOT EXISTS
will incur a non-negligible performance cost, because Paxos is used,
so this should be used sparingly.
Please refer to the UPDATE section for informations on the update_parameter
.
Also note that INSERT
does not support counters, while UPDATE
does.
UPDATE
Updating a row is done using an UPDATE
statement:
update_statement ::= UPDATE table_name
[ USING update_parameter ( AND update_parameter )* ]
SET assignment( ',' assignment )*
WHERE where_clause
[ IF ( EXISTS | condition ( AND condition)*) ]
update_parameter ::= ( TIMESTAMP | TTL ) ( integer | bind_marker )
assignment: simple_selection'=' term
`| column_name'=' column_name ( '+' | '-' ) term
| column_name'=' list_literal'+' column_name
simple_selection ::= column_name
| column_name '[' term']'
| column_name'.' field_name
condition ::= `simple_selection operator term
For instance:
UPDATE NerdMovies USING TTL 400
SET director = 'Joss Whedon',
main_actor = 'Nathan Fillion',
year = 2005
WHERE movie = 'Serenity';
UPDATE UserActions
SET total = total + 2
WHERE user = B70DE1D0-9908-4AE3-BE34-5573E5B09F14
AND action = 'click';
The UPDATE
statement writes one or more columns for a given row in a
table.
The WHERE`clause is used to select the row to update and must include all columns of the `PRIMARY KEY
.
Non-primary key columns are set using the SET
keyword.
In an UPDATE
statement, all updates within the same partition key are applied atomically and in isolation.
Unlike in SQL, UPDATE
does not check the prior existence of the row by default.
The row is created if none existed before, and updated otherwise.
Furthermore, there is no means of knowing which action occurred.
The IF
condition can be used to choose whether the row is updated or not if a particular condition is met.
However, like the IF NOT EXISTS
condition, a non-negligible performance cost can be incurred.
Regarding the SET
assignment:
-
c = c + 3
will increment/decrement counters, the only operation allowed. The column name after the '=' sign must be the same than the one before the '=' sign. Increment/decrement is only allowed on counters. See the section on counters for details. -
id = id + <some-collection>
andid[value1] = value2
are for collections. See the collections for details. -
id.field = 3
is for setting the value of a field on a non-frozen user-defined types. See the UDTs for details.
Update parameters
UPDATE
and INSERT
statements support the following parameters:
-
TTL
: specifies an optional Time To Live (in seconds) for the inserted values. If set, the inserted values are automatically removed from the database after the specified time. Note that the TTL concerns the inserted values, not the columns themselves. This means that any subsequent update of the column will also reset the TTL (to whatever TTL is specified in that update). By default, values never expire. A TTL of 0 is equivalent to no TTL. If the table has a default_time_to_live, a TTL of 0 will remove the TTL for the inserted or updated values. A TTL ofnull
is equivalent to inserting with a TTL of 0.
UPDATE
, INSERT
, DELETE
and BATCH
statements support the following parameters:
-
TIMESTAMP
: sets the timestamp for the operation. If not specified, the coordinator will use the current time (in microseconds) at the start of statement execution as the timestamp. This is usually a suitable default.
DELETE
Deleting rows or parts of rows uses the DELETE
statement:
delete_statement::= DELETE [ simple_selection ( ',' simple_selection ) ]
FROM table_name
[ USING update_parameter ( AND update_parameter# )* ]
WHERE where_clause
[ IF ( EXISTS | condition ( AND condition)*) ]
For example:
DELETE FROM NerdMovies USING TIMESTAMP 1240003134
WHERE movie = 'Serenity';
DELETE phone FROM Users
WHERE userid IN (C73DE1D3-AF08-40F3-B124-3FF3E5109F22, B70DE1D0-9908-4AE3-BE34-5573E5B09F14);
The DELETE
statement deletes columns and rows. If column names are
provided directly after the DELETE
keyword, only those columns are
deleted from the row indicated by the WHERE
clause. Otherwise, whole
rows are removed.
The WHERE
clause specifies which rows are to be deleted. Multiple rows
may be deleted with one statement by using an IN
operator. A range of
rows may be deleted using an inequality operator (such as >=
).
DELETE
supports the TIMESTAMP
option with the same semantics as in
updates.
In a DELETE
statement, all deletions within the same partition key are
applied atomically and in isolation.
A DELETE
operation can be conditional through the use of an IF
clause, similar to UPDATE
and INSERT
statements. However, as with
INSERT
and UPDATE
statements, this will incur a non-negligible
performance cost because Paxos is used, and should be used sparingly.
BATCH
Multiple INSERT
, UPDATE
and DELETE
can be executed in a single
statement by grouping them through a BATCH
statement:
batch_statement ::= BEGIN [ UNLOGGED | COUNTER ] BATCH
[ USING update_parameter( AND update_parameter)* ]
modification_statement ( ';' modification_statement )*
APPLY BATCH
modification_statement ::= insert_statement | update_statement | delete_statement
For instance:
BEGIN BATCH
INSERT INTO users (userid, password, name) VALUES ('user2', 'ch@ngem3b', 'second user');
UPDATE users SET password = 'ps22dhds' WHERE userid = 'user3';
INSERT INTO users (userid, password) VALUES ('user4', 'ch@ngem3c');
DELETE name FROM users WHERE userid = 'user1';
APPLY BATCH;
The BATCH
statement group multiple modification statements
(insertions/updates and deletions) into a single statement. It serves
several purposes:
-
It saves network round-trips between the client and the server (and sometimes between the server coordinator and the replicas) when batching multiple updates.
-
All updates in a
BATCH
belonging to a given partition key are performed in isolation. -
By default, all operations in the batch are performed as logged, to ensure all mutations eventually complete (or none will). See the notes on UNLOGGED batches for more details.
Note that:
-
BATCH
statements may only containUPDATE
,INSERT
andDELETE
statements (not other batches for instance). -
Batches are not a full analogue for SQL transactions.
-
If a timestamp is not specified for each operation, then all operations will be applied with the same timestamp (either one generated automatically, or the timestamp provided at the batch level). Due to Cassandra’s conflict resolution procedure in the case of timestamp ties, operations may be applied in an order that is different from the order they are listed in the
BATCH
statement. To force a particular operation ordering, you must specify per-operation timestamps. -
A LOGGED batch to a single partition will be converted to an UNLOGGED batch as an optimization.
UNLOGGED
batches
By default, Cassandra uses a batch log to ensure all operations in a batch eventually complete or none will (note however that operations are only isolated within a single partition).
There is a performance penalty for batch atomicity when a batch spans
multiple partitions. If you do not want to incur this penalty, you can
tell Cassandra to skip the batchlog with the UNLOGGED
option. If the
UNLOGGED
option is used, a failed batch might leave the patch only
partly applied.
COUNTER
batches
Use the COUNTER
option for batched counter updates. Unlike other
updates in Cassandra, counter updates are not idempotent.