ArangoDB v3.8 reached End of Life (EOL) and is no longer supported.
This documentation is outdated. Please see the most recent version at docs.arangodb.com
Features and Improvements in ArangoDB 3.6
The following list shows in detail which features have been added or improved in ArangoDB 3.6. ArangoDB 3.6 also contains several bug fixes that are not listed here.
AQL
Early pruning of non-matching documents
Previously, AQL queries with filter conditions that could not be satisfied by any index required all documents to be copied from the storage engine into the AQL scope in order to be fed into the filter.
An example query execution plan for such query from ArangoDB 3.5 looks like this:
Query String (75 chars, cacheable: true):
FOR doc IN test FILTER doc.value1 > 9 && doc.value2 == 'test854' RETURN doc
Execution plan:
Id NodeType Est. Comment
1 SingletonNode 1 * ROOT
2 EnumerateCollectionNode 100000 - FOR doc IN test /* full collection scan */
3 CalculationNode 100000 - LET #1 = ((doc.`value1` > 9) && (doc.`value2` == "test854"))
4 FilterNode 100000 - FILTER #1
5 ReturnNode 100000 - RETURN doc
ArangoDB 3.6 adds an optimizer rule move-filters-into-enumerate
which allows
applying the filter condition directly while scanning the documents, so copying
of any documents that don’t match the filter condition can be avoided.
The query execution plan for the above query from 3.6 with that optimizer rule applied looks as follows:
Query String (75 chars, cacheable: true):
FOR doc IN test FILTER doc.value1 > 9 && doc.value2 == 'test854' RETURN doc
Execution plan:
Id NodeType Est. Comment
1 SingletonNode 1 * ROOT
2 EnumerateCollectionNode 100000 - FOR doc IN test /* full collection scan */ FILTER ((doc.`value1` > 9) && (doc.`value2` == "test854")) /* early pruning */
5 ReturnNode 100000 - RETURN doc
Note that in this execution plan the scanning and filtering are combined in one node, so the copying of all non-matching documents from the storage engine into the AQL scope is completely avoided.
This optimization will be beneficial if the filter condition is very selective and will filter out many documents, and if documents are large. In this case a lot of copying will be avoided.
The optimizer rule also works if an index is used, but there are also filter conditions that cannot be satisfied by the index alone. Here is a 3.5 query execution plan for a query using a filter on an indexed value plus a filter on a non-indexed value:
Query String (101 chars, cacheable: true):
FOR doc IN test FILTER doc.value1 > 10000 && doc.value1 < 30000 && doc.value2 == 'test854' RETURN
doc
Execution plan:
Id NodeType Est. Comment
1 SingletonNode 1 * ROOT
6 IndexNode 26666 - FOR doc IN test /* hash index scan */
7 CalculationNode 26666 - LET #1 = (doc.`value2` == "test854")
4 FilterNode 26666 - FILTER #1
5 ReturnNode 26666 - RETURN doc
Indexes used:
By Name Type Collection Unique Sparse Selectivity Fields Ranges
6 idx_1649353982658740224 hash test false false 100.00 % [ `value1` ] ((doc.`value1` > 10000) && (doc.`value1` < 30000))
In 3.6, the same query will be executed using a combined index scan & filtering approach, again avoiding any copies of non-matching documents:
Query String (101 chars, cacheable: true):
FOR doc IN test FILTER doc.value1 > 10000 && doc.value1 < 30000 && doc.value2 == 'test854' RETURN
doc
Execution plan:
Id NodeType Est. Comment
1 SingletonNode 1 * ROOT
6 IndexNode 26666 - FOR doc IN test /* hash index scan */ FILTER (doc.`value2` == "test854") /* early pruning */
5 ReturnNode 26666 - RETURN doc
Indexes used:
By Name Type Collection Unique Sparse Selectivity Fields Ranges
6 idx_1649353982658740224 hash test false false 100.00 % [ `value1` ] ((doc.`value1` > 10000) && (doc.`value1` < 30000))
Subquery Splicing Optimization
In earlier versions of ArangoDB, on every execution of a subquery the following happened for each input row:
- The subquery tree issues one initializeCursor cascade through all nodes
- The subquery node pulls rows until the subquery node is empty for this input
On subqueries with many results per input row (10000 or more) the above steps did not contribute significantly to query execution time. On subqueries with few results per input, there was a serious performance impact.
Subquery splicing inlines the execution of subqueries using an optimizer rule
called splice-subqueries
. Only suitable queries can be spliced.
A subquery becomes unsuitable if it contains a LIMIT
node or a
COLLECT WITH COUNT INTO …
construct (but not due to a
COLLECT var = <expr> WITH COUNT INTO …
). A subquery also becomes
unsuitable if it is contained in a (sub)query containing unsuitable parts
after the subquery.
Consider the following query to illustrate the difference.
FOR x IN c1
LET firstJoin = (
FOR y IN c2
FILTER y._id == x.c2_id
LIMIT 1
RETURN y
)
LET secondJoin = (
FOR z IN c3
FILTER z.value == x.value
RETURN z
)
RETURN { x, firstJoin, secondJoin }
The execution plan without subquery splicing:
Execution plan:
Id NodeType Est. Comment
1 SingletonNode 1 * ROOT
2 EnumerateCollectionNode 0 - FOR x IN c1 /* full collection scan */
9 SubqueryNode 0 - LET firstJoin = ... /* subquery */
3 SingletonNode 1 * ROOT
18 IndexNode 0 - FOR y IN c2 /* primary index scan */
7 LimitNode 0 - LIMIT 0, 1
8 ReturnNode 0 - RETURN y
15 SubqueryNode 0 - LET secondJoin = ... /* subquery */
10 SingletonNode 1 * ROOT
11 EnumerateCollectionNode 0 - FOR z IN c3 /* full collection scan */
12 CalculationNode 0 - LET #11 = (z.`value` == x.`value`) /* simple expression */ /* collections used: z : c3, x : c1 */
13 FilterNode 0 - FILTER #11
14 ReturnNode 0 - RETURN z
16 CalculationNode 0 - LET #13 = { "x" : x, "firstJoin" : firstJoin, "secondJoin" : secondJoin } /* simple expression */ /* collections used: x : c1 */
17 ReturnNode 0 - RETURN #13
Optimization rules applied:
Id RuleName
1 use-indexes
2 remove-filter-covered-by-index
3 remove-unnecessary-calculations-2
Note in particular the SubqueryNode
s, followed by a SingletonNode
in
both cases.
When using the optimizer rule splice-subqueries
the plan is as follows:
Execution plan:
Id NodeType Est. Comment
1 SingletonNode 1 * ROOT
2 EnumerateCollectionNode 0 - FOR x IN c1 /* full collection scan */
9 SubqueryNode 0 - LET firstJoin = ... /* subquery */
3 SingletonNode 1 * ROOT
18 IndexNode 0 - FOR y IN c2 /* primary index scan */
7 LimitNode 0 - LIMIT 0, 1
8 ReturnNode 0 - RETURN y
19 SubqueryStartNode 0 - LET secondJoin = ( /* subquery begin */
11 EnumerateCollectionNode 0 - FOR z IN c3 /* full collection scan */
12 CalculationNode 0 - LET #11 = (z.`value` == x.`value`) /* simple expression */ /* collections used: z : c3, x : c1 */
13 FilterNode 0 - FILTER #11
20 SubqueryEndNode 0 - ) /* subquery end */
16 CalculationNode 0 - LET #13 = { "x" : x, "firstJoin" : firstJoin, "secondJoin" : secondJoin } /* simple expression */ /* collections used: x : c1 */
17 ReturnNode 0 - RETURN #13
Optimization rules applied:
Id RuleName
1 use-indexes
2 remove-filter-covered-by-index
3 remove-unnecessary-calculations-2
4 splice-subqueries
The first subquery is unsuitable for the optimization because it contains
a LIMIT
statement and is therefore not spliced. The second subquery is
suitable and hence is spliced – which one can tell from the different node
type SubqueryStartNode
(beginning of spliced subquery). Note how it is
not followed by a SingletonNode
. The end of the spliced subquery is
marked by a SubqueryEndNode
.
Late document materialization (RocksDB)
With the late document materialization optimization ArangoDB tries to read only documents that are absolutely necessary to compute the query result, reducing load to the storage engine. This is only supported for the RocksDB storage engine.
In 3.6 the optimization can only be applied to queries retrieving data from a
collection or an ArangoSearch View and that contain a SORT
+LIMIT
combination.
For the collection case the optimization is possible if and only if:
- there is an index of type
primary
,hash
,skiplist
,persistent
oredge
picked by the optimizer - all attribute accesses can be covered by indexed attributes
// Given we have a persistent index on attributes [ "foo", "bar", "baz" ]
FOR d IN myCollection
FILTER d.foo == "someValue" // hash index will be picked to optimize filtering
SORT d.baz DESC // field "baz" will be read from index
LIMIT 100 // only 100 documents will be materialized
RETURN d
For the ArangoSearch View case the optimization is possible if and only if:
- all attribute accesses can be covered by attributes stored in the View index
(e.g. using
primarySort
) - the primary sort order optimization is not applied, because it voids the need for late document materialization
// Given primarySort is {"field": "foo", "asc": false}, i.e.
// field "foo" covered by index but sort optimization not applied
// (sort order of primarySort and SORT operation mismatch)
FOR d IN myView
SORT d.foo
LIMIT 100 // only 100 documents will be materialized
RETURN d
// Given primarySort contains field "foo"
FOR d IN myView
SEARCH d.foo == "someValue"
SORT BM25(d) DESC // BM25(d) will be evaluated by the View node above
LIMIT 100 // only 100 documents will be materialized
RETURN d
// Given primarySort contains fields "foo" and "bar", and "bar" is not the
// first field or at least not sorted by in descending order, i.e. the sort
// optimization can not be applied but the late document materialization instead
FOR d IN myView
SEARCH d.foo == "someValue"
SORT d.bar DESC // field "bar" will be read from the View
LIMIT 100 // only 100 documents will be materialized
RETURN d
The respective optimizer rules are called late-document-materialization
(collection source) and late-document-materialization-arangosearch
(ArangoSearch View source). If applied, you will find MaterializeNode
s
in execution plans.
Parallelization of cluster AQL queries
ArangoDB 3.6 can parallelize work in many cluster AQL queries when there are multiple DB-Servers involved. The parallelization is done in the GatherNode, which then can send parallel cluster-internal requests to the DB-Servers attached. The DB-Servers can then work fully parallel for the different shards involved.
When parallelization is used, one or multiple GatherNodes in a query’s
execution plan will be tagged with parallel
as follows:
Id NodeType Site Est. Comment
1 SingletonNode DBS 1 * ROOT
2 EnumerateCollectionNode DBS 1000000 - FOR doc IN test /* full collection scan, 5 shard(s) */
6 RemoteNode COOR 1000000 - REMOTE
7 GatherNode COOR 1000000 - GATHER /* parallel */
3 ReturnNode COOR 1000000 - RETURN doc
Parallelization is currently restricted to certain types and parts of queries. GatherNodes will go into parallel mode only if the DB-Server query part above it (in terms of query execution plan layout) is a terminal part of the query. To trigger the optimization, there must not be other nodes of type ScatterNode, GatherNode or DistributeNode present in the query.
Please note that the parallelization of AQL execution may lead to a different resource usage pattern for eligible AQL queries in the cluster. In isolation, queries are expected to complete faster with parallelization than when executing their work serially on all involved DB-Servers. However, working on multiple DB-Servers in parallel may also mean that more work than before is happening at the very same time. If this is not desired because of resource scarcity, there are options to control the parallelization:
The startup option --query.parallelize-gather-writes
can be used to control
whether eligible write operation parts will be parallelized. This option
defaults to true
, meaning that eligible write operations are also parallelized
by default. This can be turned off so that potential I/O overuse can be avoided
for write operations when used together with a high replication factor.
Additionally, the startup option --query.optimizer-rules
can be used to
globally toggle the usage of certain optimizer rules for all queries.
By default, all optimizations are turned on. However, specific optimizations
can be turned off using the option.
For example, to turn off the parallelization entirely (including parallel gather writes), one can use the following configuration:
--query.optimizer-rules "-parallelize-gather"
This toggle works for any other non-mandatory optimizer rules as well. To specify multiple optimizer rules, the option can be used multiple times, e.g.
--query.optimizer-rules "-parallelize-gather" --query.optimizer-rules "-splice-subqueries"
You can overrule which optimizer rules to use or not use on a per-query basis
still. --query.optimizer-rules
merely defines a default. However,
--query.parallelize-gather-writes false
turns off parallel gather writes
completely and it cannot be re-enabled for individual queries.
Optimizations for simple UPDATE and REPLACE queries
Cluster query execution plans for simple UPDATE
and REPLACE
queries that
modify multiple documents and do not use LIMIT
are now more efficient as
several steps were removed. The existing optimizer rule
undistribute-remove-after-enum-coll
has been extended to cover these cases
too, in case the collection is sharded by _key
and the UPDATE
/REPLACE
operation is using the full document or the _key
attribute to find it.
For example, a query such as:
FOR doc IN test UPDATE doc WITH { updated: true } IN test
… is executed as follows in 3.5:
Id NodeType Site Est. Comment
1 SingletonNode DBS 1 * ROOT
3 CalculationNode DBS 1 - LET #3 = { "updated" : true }
2 EnumerateCollectionNode DBS 1000000 - FOR doc IN test /* full collection scan, 5 shard(s) */
11 RemoteNode COOR 1000000 - REMOTE
12 GatherNode COOR 1000000 - GATHER
5 DistributeNode COOR 1000000 - DISTRIBUTE /* create keys: false, variable: doc */
6 RemoteNode DBS 1000000 - REMOTE
4 UpdateNode DBS 0 - UPDATE doc WITH #3 IN test
7 RemoteNode COOR 0 - REMOTE
8 GatherNode COOR 0 - GATHER
In 3.6 the execution plan is streamlined to just:
Id NodeType Site Est. Comment
1 SingletonNode DBS 1 * ROOT
3 CalculationNode DBS 1 - LET #3 = { "updated" : true }
13 IndexNode DBS 1000000 - FOR doc IN test /* primary index scan, index only, projections: `_key`, 5 shard(s) */
4 UpdateNode DBS 0 - UPDATE doc WITH #3 IN test
7 RemoteNode COOR 0 - REMOTE
8 GatherNode COOR 0 - GATHER /* parallel */
As can be seen above, the benefit of applying the optimization is that the extra communication between the Coordinator and DB-Server is removed. This will mean less cluster-internal traffic and thus can result in faster execution. As an extra benefit, the optimization will also make the affected queries eligible for parallel execution. It is only applied in cluster deployments.
The optimization will also work when a filter is involved:
Query String (79 chars, cacheable: false):
FOR doc IN test FILTER doc.value == 4 UPDATE doc WITH { updated: true } IN test
Execution plan:
Id NodeType Site Est. Comment
1 SingletonNode DBS 1 * ROOT
5 CalculationNode DBS 1 - LET #5 = { "updated" : true }
2 EnumerateCollectionNode DBS 1000000 - FOR doc IN test /* full collection scan, projections: `_key`, `value`, 5 shard(s) */
3 CalculationNode DBS 1000000 - LET #3 = (doc.`value` == 4)
4 FilterNode DBS 1000000 - FILTER #3
6 UpdateNode DBS 0 - UPDATE doc WITH #5 IN test
9 RemoteNode COOR 0 - REMOTE
10 GatherNode COOR 0 - GATHER
AQL Date functionality
AQL now enforces a valid date range for working with date/time in AQL. The valid date ranges for any AQL date/time function are:
- for string date/time values:
"0000-01-01T00:00:00.000Z"
(including) up to"9999-12-31T23:59:59.999Z"
(including) - for numeric date/time values: -62167219200000 (including) up to 253402300799999
(including). These values are the numeric equivalents of
"0000-01-01T00:00:00.000Z"
and"9999-12-31T23:59:59.999Z"
.
Any date/time values outside the given range that are passed into an AQL date
function will make the function return null
and trigger a warning in the
query, which can optionally be escalated to an error and stop the query.
Any date/time operations that produce date/time outside the valid ranges stated
above will make the function return null
and trigger a warning too.
An example for this is:
DATE_SUBTRACT("2018-08-22T10:49:00+02:00", 100000, "years")
The performance of AQL date operations that work on date strings has been improved compared to previous versions.
Finally, ArangoDB 3.6 provides a new AQL function
DATE_ROUND()
to bin a date/time into a set of equal-distance buckets.
Miscellaneous AQL changes
In addition, ArangoDB 3.6 provides the following new AQL functionality:
-
a function
GEO_AREA()
for area calculations (also added to v3.5.1) -
a query option
maxRuntime
to restrict the execution to a given time in seconds (also added to v3.5.4). Also see HTTP API. -
a startup option
--query.optimizer-rules
to turn certain AQL query optimizer rules off (or on) by default. This can be used to turn off certain optimizations that would otherwise lead to undesired changes in server resource usage patterns.
ArangoSearch
Analyzers
-
Added UTF-8 support and ability to mark beginning/end of the sequence to the
ngram
Analyzer type.The following optional properties can be provided for an
ngram
Analyzer definition:-
startMarker
:<string>
, default: ““
this value will be prepended to n-grams at the beginning of input sequence -
endMarker
:<string>
, default: ““
this value will be appended to n-grams at the beginning of input sequence -
streamType
:"binary"|"utf8"
, default: “binary”
type of the input stream (support for UTF-8 is new)
-
-
Added edge n-gram support to the
text
Analyzer type. The input gets tokenized as usual, but then n-grams are generated from each token. UTF-8 encoding is assumed (whereas thengram
Analyzer has a configurable stream type and defaults to binary).The following optional properties can be provided for a
text
Analyzer definition:edgeNgram
(object, optional):min
(number, optional): minimal n-gram lengthmax
(number, optional): maximal n-gram lengthpreserveOriginal
(boolean, optional): include the original token if its length is less than min or greater than max
Dynamic search expressions with arrays
ArangoSearch now accepts SEARCH expressions with array comparison operators in the form of:
<array> [ ALL|ANY|NONE ] [ <=|<|==|!=|>|>=|IN ] doc.<attribute>
i.e. the left-hand side operand is always an array, which can be dynamic.
LET tokens = TOKENS("some input", "text_en") // ["some", "input"]
FOR doc IN myView SEARCH tokens ALL IN doc.title RETURN doc // dynamic conjunction
FOR doc IN myView SEARCH tokens ANY IN doc.title RETURN doc // dynamic disjunction
FOR doc IN myView SEARCH tokens NONE IN doc.title RETURN doc // dynamic negation
FOR doc IN myView SEARCH tokens ALL > doc.title RETURN doc // dynamic conjunction with comparison
FOR doc IN myView SEARCH tokens ANY <= doc.title RETURN doc // dynamic disjunction with comparison
In addition, both the TOKENS()
and the PHRASE()
functions were
extended with array support for convenience.
TOKENS() accepts recursive arrays of strings as the first argument:
TOKENS("quick brown fox", "text_en") // [ "quick", "brown", "fox" ]
TOKENS(["quick brown", "fox"], "text_en") // [ ["quick", "brown"], ["fox"] ]
TOKENS(["quick brown", ["fox"]], "text_en") // [ ["quick", "brown"], [["fox"]] ]
In most cases you will want to flatten the resulting array for further usage,
because nested arrays are not accepted in SEARCH
statements such as
<array> ALL IN doc.<attribute>
:
LET tokens = TOKENS(["quick brown", ["fox"]], "text_en") // [ ["quick", "brown"], [["fox"]] ]
LET tokens_flat = FLATTEN(tokens, 2) // [ "quick", "brown", "fox" ]
FOR doc IN myView SEARCH ANALYZER(tokens_flat ALL IN doc.title, "text_en") RETURN doc
PHRASE() accepts an array as the second argument:
FOR doc IN myView SEARCH PHRASE(doc.title, ["quick brown fox"], "text_en") RETURN doc
FOR doc IN myView SEARCH PHRASE(doc.title, ["quick", "brown", "fox"], "text_en") RETURN doc
LET tokens = TOKENS("quick brown fox", "text_en") // ["quick", "brown", "fox"]
FOR doc IN myView SEARCH PHRASE(doc.title, tokens, "text_en") RETURN doc
It is equivalent to the more cumbersome and static form:
FOR doc IN myView SEARCH PHRASE(doc.title, "quick", 0, "brown", 0, "fox", "text_en") RETURN doc
You can optionally specify the number of skipTokens in the array form before every string element:
FOR doc IN myView SEARCH PHRASE(doc.title, ["quick", 1, "fox", "jumps"], "text_en") RETURN doc
It is the same as the following:
FOR doc IN myView SEARCH PHRASE(doc.title, "quick", 1, "fox", 0, "jumps", "text_en") RETURN doc
SmartJoins and Views
ArangoSearch Views are now eligible for SmartJoins in AQL, provided that their underlying collections are eligible too.
All collections forming the View must be sharded equally. The other join operand can be a collection or another View.
OneShard
This option is only available in the Enterprise Edition, including the ArangoGraph Insights Platform.
Not all use cases require horizontal scalability. In such cases, a OneShard deployment offers a practicable solution that enables significant performance improvements by massively reducing cluster-internal communication.
A database created with OneShard enabled is limited to a single DB-Server node but still replicated synchronously to ensure resilience. This configuration allows running transactions with ACID guarantees on shard leaders.
This setup is highly recommended for most graph use cases and join-heavy queries.
Unlike a (flexibly) sharded cluster, where the Coordinator distributes access to shards across different DB-Server nodes, collects and processes partial results, the Coordinator in a OneShard setup moves the query execution directly to the respective DB-Server for local query execution. The Coordinator receives only the final result. This can drastically reduce resource consumption and communication effort for the Coordinator.
An entire cluster, selected databases or selected collections can be made eligible for the OneShard optimization. See OneShard cluster architecture for details and usage examples.
HTTP API
The following APIs have been expanded / changed:
-
Database creation API,
HTTP routePOST /_api/database
The database creation API now handles the
replicationFactor
,writeConcern
andsharding
attributes. All these attributes are optional, and only meaningful in a cluster.The values provided for the attributes
replicationFactor
andwriteConcern
will be used as default values when creating collections in that database, allowing to omit these attributes when creating collections. However, the values set here are just defaults for new collections in the database. The values can still be adjusted per collection when creating new collections in that database via the web UI, the arangosh or drivers.In an Enterprise Edition cluster, the
sharding
attribute can be given a value of"single"
, which will make all new collections in that database use the same shard distribution and use one shard by default (OneShard configuration). This can still be overridden by setting the values ofnumberOfShards
anddistributeShardsLike
when creating new collections in that database via the web UI, arangosh or drivers (unless the startup option--cluster.force-one-shard
is enabled). -
Database properties API,
HTTP routeGET /_api/database/current
The database properties endpoint returns the new additional attributes
replicationFactor
,writeConcern
andsharding
in a cluster. A description of these attributes can be found above. -
Collection / Graph APIs,
HTTP routesPOST /_api/collection
,GET /_api/collection/{collection-name}/properties
and various/_api/gharial/*
endpointsminReplicationFactor
has been renamed towriteConcern
for consistency. The old attribute name is still accepted and returned for compatibility. -
Hot Backup API,
HTTP routePOST /_admin/backup/create
New attribute
force
, see Hot Backup below. -
New Metrics API,
HTTP routeGET /_admin/metrics
Returns the instance’s current metrics in Prometheus format. The returned document collects all instance metrics, which are measured at any given time and exposes them for collection by Prometheus.
The new endpoint can be used instead of the additional tool arangodb-exporter.
Web interface
The web interface now shows the shards of all collections (including system
collections) in the shard distribution view. Displaying system collections here
is necessary to access the prototype collections of a collection sharded via
distributeShardsLike
in case the prototype is a system collection, and the
prototype collection shall be moved to another server using the web interface.
The web interface now also allows setting a default replication factor when a creating a new database. This default replication factor will be used for all collections created in the new database, unless explicitly overridden.
Startup options
Metrics API option
The new option
--server.export-metrics-api
allows you to disable the metrics API by setting
it to false
, which is otherwise turned on by default.
OneShard cluster option
The option
--cluster.force-one-shard
enables the new OneShard feature for the entire
cluster deployment. It forces the cluster into creating all future collections
with only a single shard and using the same DB-Server as these collections’
shards leader. All collections created this way will be eligible for specific
AQL query optimizations that can improve query performance and provide advanced
transactional guarantees.
Cluster upgrade option
The new option --cluster.upgrade
toggles the cluster upgrade mode for Coordinators. It supports the following
values:
-
auto
: perform a cluster upgrade and shut down afterwards if the startup option--database.auto-upgrade
is set to true. Otherwise, don’t perform an upgrade. -
disable
: never perform a cluster upgrade, regardless of the value of--database.auto-upgrade
. -
force
: always perform a cluster upgrade and shut down, regardless of the value of--database.auto-upgrade
. -
online
: always perform a cluster upgrade but don’t shut down afterwards
The default value is auto
. The option only affects Coordinators. It does not
have any affect on single servers, Agents or DB-Servers.
Other cluster options
The following options have been added:
-
--cluster.max-replication-factor
: maximum replication factor for new collections. A value of0
means that there is no restriction. The default value is10
. -
--cluster.min-replication-factor
: minimum replication factor for new collections. The default value is1
. This option can be used to prevent the creation of collections that do not have any or enough replicas. -
--cluster.write-concern
: default write concern value used for new collections. This option controls the number of replicas that must successfully acknowledge writes to a collection. If any write operation gets less acknowledgements than configured here, the collection will go into read-only mode until the configured number of replicas are available again. The default value is1
, meaning that writes to just the leader are sufficient. To ensure that there is at least one extra copy (i.e. one follower), set this option to2
. -
--cluster.max-number-of-shards
: maximum number of shards allowed for new collections. A value of0
means that there is no restriction. The default value is1000
.
Note that the above options only have an effect when set for Coordinators, and only for collections that are created after the options have been set. They do not affect already existing collections.
Furthermore, the following network related options have been added:
-
--network.idle-connection-ttl
: default time-to-live for idle cluster-internal connections (in milliseconds). The default value is60000
. -
--network.io-threads
: number of I/O threads for cluster-internal network requests. The default value is2
. -
--network.max-open-connections
: maximum number of open network connections for cluster-internal requests. The default value is1024
. -
--network.verify-hosts
: if set totrue
, this will verify peer certificates for cluster-internal requests when TLS is used. The default value isfalse
.
RocksDB exclusive writes option
The new option --rocksdb.exclusive-writes
allows to make all writes to the
RocksDB storage exclusive and therefore avoids write-write conflicts.
This option was introduced to open a way to upgrade from MMFiles to RocksDB
storage engine without modifying client application code. Otherwise it should
best be avoided as the use of exclusive locks on collections will introduce a
noticeable throughput penalty.
Note that the MMFiles engine is deprecated from v3.6.0 on and will be removed in a future release. So will be this option, which is a stopgap measure only.
AQL options
The new startup option --query.optimizer-rules
can be used to to selectively
enable or disable AQL query optimizer rules by default. The option can be
specified multiple times, and takes the same input as the query option of the
same name.
For example, to turn off the rule use-indexes-for-sort
, use
--query.optimizer-rules "-use-indexes-for-sort"
The purpose of this startup option is to be able to enable potential future experimental optimizer rules, which may be shipped in a disabled-by-default state.
Hot Backup
-
Force Backup
When creating backups there is an additional option
--force
for arangobackup and in the HTTP API. This option aborts ongoing write transactions to obtain the global lock for creating the backup. Most likely this is not what you want to do because it will abort valid ongoing write operations, but it makes sure that backups can be acquired more quickly. The force flag currently only aborts Stream Transactions but no JavaScript Transactions. -
View Data
HotBackup now includes View data. Previously the Views had to be rebuilt after a restore. Now the Views are available immediately.
TLS v1.3
Added support for TLS 1.3 for the arangod server and the client tools (also added to v3.5.1).
The arangod server can be started with option --ssl.protocol 6
to make it require
TLS 1.3 for incoming client connections. The server can be started with option
--ssl.protocol 5
to make it require TLS 1.2, as in previous versions of arangod.
The default TLS protocol for the arangod server is now generic TLS
(--ssl.protocol 9
), which will allow the negotiation of the TLS version between
the client and the server.
All client tools also support TLS 1.3, by using the --ssl.protocol 6
option when
invoking them. The client tools will use TLS 1.2 by default, in order to be
compatible with older versions of ArangoDB that may be contacted by these tools.
To configure the TLS version for arangod instances started by the ArangoDB starter,
one can use the --all.ssl.protocol=VALUE
startup option for the ArangoDB starter,
where VALUE is one of the following:
- 4 = TLSv1
- 5 = TLSv1.2
- 6 = TLSv1.3
- 9 = generic TLS
Note: TLS v1.3 support has been added in ArangoDB v3.5.1 already, but the default TLS version in ArangoDB 3.5 was still TLS v1.2. ArangoDB v3.6 uses “generic TLS” as its default TLS version, which will allows clients to negotiate the TLS version with the server, dynamically choosing the highest mutually supported version of TLS.
Miscellaneous
-
Remove operations for documents in the cluster will now use an optimization, if all sharding keys are specified. Should the sharding keys not match the values in the actual document, a not found error will be returned.
-
Collection names in ArangoDB can now be up to 256 characters long, instead of 64 characters in previous versions.
-
Disallow using
_id
or_rev
as shard keys in clustered collections.Using these attributes for sharding was not supported before, but didn’t trigger any errors. Instead, collections were created and silently using
_key
as the shard key, without making the caller aware of that an unsupported shard key was used. -
Make the scheduler enforce the configured queue lengths. The values of the options
--server.scheduler-queue-size
,--server.prio1-size
and--server.maximal-queue-size
will now be honored and not exceeded.The default queue sizes in the scheduler for requests buffering have also been changed as follows:
request type before now ----------------------------------- high priority 128 4096 medium priority 1048576 4096 low priority 4096 4096
The queue sizes can still be adjusted at server start using the above- mentioned startup options.
Internal
Release packages for Linux are now built using inter-procedural optimizations (IPO).
We have moved from C++14 to C++17, which allows us to use some of the simplifications, features and guarantees that this standard has in stock. To compile ArangoDB 3.6 from source, a compiler that supports C++17 is now required.
The bundled JEMalloc memory allocator used in ArangoDB release packages has been upgraded from version 5.2.0 to version 5.2.1.
The bundled version of the Boost library has been upgraded from 1.69.0 to 1.71.0.
The bundled version of xxhash has been upgraded from 0.5.1 to 0.7.2.