- Tune for disk usage
- Tune for disk usage
- Disable the features you do not need
- Don’t use default dynamic string mappings
- Watch your shard size
- Disable
_source
- Use
best_compression
- Force merge
- Shrink index
- Use the smallest numeric type that is sufficient
- Use index sorting to colocate similar documents
- Put fields in the same order in documents
- Roll up historical data
- Tune for disk usage
Tune for disk usage
Tune for disk usage
Disable the features you do not need
By default, Elasticsearch indexes and adds doc values to most fields so that they can be searched and aggregated out of the box. For instance, if you have a numeric field called foo
that you need to run histograms on but that you never need to filter on, you can safely disable indexing on this field in your mappings:
PUT index
{
"mappings": {
"properties": {
"foo": {
"type": "integer",
"index": false
}
}
}
}
text fields store normalization factors in the index to facilitate document scoring. If you only need matching capabilities on a text
field but do not care about the produced scores, you can use the match_only_text type instead. This field type saves significant space by dropping scoring and positional information.
Don’t use default dynamic string mappings
The default dynamic string mappings will index string fields both as text and keyword. This is wasteful if you only need one of them. Typically an id
field will only need to be indexed as a keyword
while a body
field will only need to be indexed as a text
field.
This can be disabled by either configuring explicit mappings on string fields or setting up dynamic templates that will map string fields as either text
or keyword
.
For instance, here is a template that can be used in order to only map string fields as keyword
:
PUT index
{
"mappings": {
"dynamic_templates": [
{
"strings": {
"match_mapping_type": "string",
"mapping": {
"type": "keyword"
}
}
}
]
}
}
Watch your shard size
Larger shards are going to be more efficient at storing data. To increase the size of your shards, you can decrease the number of primary shards in an index by creating indices with fewer primary shards, creating fewer indices (e.g. by leveraging the Rollover API), or modifying an existing index using the Shrink API.
Keep in mind that large shard sizes come with drawbacks, such as long full recovery times.
Disable _source
The _source field stores the original JSON body of the document. If you don’t need access to it you can disable it. However, APIs that needs access to _source
such as update and reindex won’t work.
Use best_compression
The _source
and stored fields can easily take a non negligible amount of disk space. They can be compressed more aggressively by using the best_compression
codec.
Force merge
Indices in Elasticsearch are stored in one or more shards. Each shard is a Lucene index and made up of one or more segments - the actual files on disk. Larger segments are more efficient for storing data.
The force merge API can be used to reduce the number of segments per shard. In many cases, the number of segments can be reduced to one per shard by setting max_num_segments=1
.
Force merge should only be called against an index after you have finished writing to it. Force merge can cause very large (>5GB) segments to be produced, and if you continue to write to such an index then the automatic merge policy will never consider these segments for future merges until they mostly consist of deleted documents. This can cause very large segments to remain in the index which can result in increased disk usage and worse search performance.
Shrink index
The shrink API allows you to reduce the number of shards in an index. Together with the force merge API above, this can significantly reduce the number of shards and segments of an index.
Use the smallest numeric type that is sufficient
The type that you pick for numeric data can have a significant impact on disk usage. In particular, integers should be stored using an integer type (byte
, short
, integer
or long
) and floating points should either be stored in a scaled_float
if appropriate or in the smallest type that fits the use-case: using float
over double
, or half_float
over float
will help save storage.
Use index sorting to colocate similar documents
When Elasticsearch stores _source
, it compresses multiple documents at once in order to improve the overall compression ratio. For instance it is very common that documents share the same field names, and quite common that they share some field values, especially on fields that have a low cardinality or a zipfian distribution.
By default documents are compressed together in the order that they are added to the index. If you enabled index sorting then instead they are compressed in sorted order. Sorting documents with similar structure, fields, and values together should improve the compression ratio.
Put fields in the same order in documents
Due to the fact that multiple documents are compressed together into blocks, it is more likely to find longer duplicate strings in those _source
documents if fields always occur in the same order.
Roll up historical data
Keeping older data can useful for later analysis but is often avoided due to storage costs. You can use data rollups to summarize and store historical data at a fraction of the raw data’s storage cost. See Rolling up historical data.