Dense vector field type
Dense vector field type
The dense_vector
field type stores dense vectors of numeric values. Dense vector fields are primarily used for k-nearest neighbor (kNN) search.
The dense_vector
type does not support aggregations or sorting.
You add a dense_vector
field as an array of numeric values based on element_type with float
by default:
resp = client.indices.create(
index="my-index",
mappings={
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 3
},
"my_text": {
"type": "keyword"
}
}
},
)
print(resp)
resp1 = client.index(
index="my-index",
id="1",
document={
"my_text": "text1",
"my_vector": [
0.5,
10,
6
]
},
)
print(resp1)
resp2 = client.index(
index="my-index",
id="2",
document={
"my_text": "text2",
"my_vector": [
-0.5,
10,
10
]
},
)
print(resp2)
response = client.indices.create(
index: 'my-index',
body: {
mappings: {
properties: {
my_vector: {
type: 'dense_vector',
dims: 3
},
my_text: {
type: 'keyword'
}
}
}
}
)
puts response
response = client.index(
index: 'my-index',
id: 1,
body: {
my_text: 'text1',
my_vector: [
0.5,
10,
6
]
}
)
puts response
response = client.index(
index: 'my-index',
id: 2,
body: {
my_text: 'text2',
my_vector: [
-0.5,
10,
10
]
}
)
puts response
const response = await client.indices.create({
index: "my-index",
mappings: {
properties: {
my_vector: {
type: "dense_vector",
dims: 3,
},
my_text: {
type: "keyword",
},
},
},
});
console.log(response);
const response1 = await client.index({
index: "my-index",
id: 1,
document: {
my_text: "text1",
my_vector: [0.5, 10, 6],
},
});
console.log(response1);
const response2 = await client.index({
index: "my-index",
id: 2,
document: {
my_text: "text2",
my_vector: [-0.5, 10, 10],
},
});
console.log(response2);
PUT my-index
{
"mappings": {
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 3
},
"my_text" : {
"type" : "keyword"
}
}
}
}
PUT my-index/_doc/1
{
"my_text" : "text1",
"my_vector" : [0.5, 10, 6]
}
PUT my-index/_doc/2
{
"my_text" : "text2",
"my_vector" : [-0.5, 10, 10]
}
Unlike most other data types, dense vectors are always single-valued. It is not possible to store multiple values in one dense_vector
field.
Index vectors for kNN search
A k-nearest neighbor (kNN) search finds the k nearest vectors to a query vector, as measured by a similarity metric.
Dense vector fields can be used to rank documents in script_score queries. This lets you perform a brute-force kNN search by scanning all documents and ranking them by similarity.
In many cases, a brute-force kNN search is not efficient enough. For this reason, the dense_vector
type supports indexing vectors into a specialized data structure to support fast kNN retrieval through the knn option in the search API
Unmapped array fields of float elements with size between 128 and 4096 are dynamically mapped as dense_vector
with a default similariy of cosine
. You can override the default similarity by explicitly mapping the field as dense_vector
with the desired similarity.
Indexing is enabled by default for dense vector fields and indexed as int8_hnsw
. When indexing is enabled, you can define the vector similarity to use in kNN search:
resp = client.indices.create(
index="my-index-2",
mappings={
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 3,
"similarity": "dot_product"
}
}
},
)
print(resp)
response = client.indices.create(
index: 'my-index-2',
body: {
mappings: {
properties: {
my_vector: {
type: 'dense_vector',
dims: 3,
similarity: 'dot_product'
}
}
}
}
)
puts response
const response = await client.indices.create({
index: "my-index-2",
mappings: {
properties: {
my_vector: {
type: "dense_vector",
dims: 3,
similarity: "dot_product",
},
},
},
});
console.log(response);
PUT my-index-2
{
"mappings": {
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 3,
"similarity": "dot_product"
}
}
}
}
Indexing vectors for approximate kNN search is an expensive process. It can take substantial time to ingest documents that contain vector fields with index
enabled. See k-nearest neighbor (kNN) search to learn more about the memory requirements.
You can disable indexing by setting the index
parameter to false
:
resp = client.indices.create(
index="my-index-2",
mappings={
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 3,
"index": False
}
}
},
)
print(resp)
response = client.indices.create(
index: 'my-index-2',
body: {
mappings: {
properties: {
my_vector: {
type: 'dense_vector',
dims: 3,
index: false
}
}
}
}
)
puts response
const response = await client.indices.create({
index: "my-index-2",
mappings: {
properties: {
my_vector: {
type: "dense_vector",
dims: 3,
index: false,
},
},
},
});
console.log(response);
PUT my-index-2
{
"mappings": {
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 3,
"index": false
}
}
}
}
Elasticsearch uses the HNSW algorithm to support efficient kNN search. Like most kNN algorithms, HNSW is an approximate method that sacrifices result accuracy for improved speed.
Automatically quantize vectors for kNN search
The dense_vector
type supports quantization to reduce the memory footprint required when searching float
vectors. The three following quantization strategies are supported:
int8
- Quantizes each dimension of the vector to 1-byte integers. This reduces the memory footprint by 75% (or 4x) at the cost of some accuracy.int4
- Quantizes each dimension of the vector to half-byte integers. This reduces the memory footprint by 87% (or 8x) at the cost of accuracy.bbq
- [preview] This functionality is in technical preview and may be changed or removed in a future release. Elastic will work to fix any issues, but features in technical preview are not subject to the support SLA of official GA features. Better binary quantization which reduces each dimension to a single bit precision. This reduces the memory footprint by 96% (or 32x) at a larger cost of accuracy. Generally, oversampling during query time and reranking can help mitigate the accuracy loss.
When using a quantized format, you may want to oversample and rescore the results to improve accuracy. See oversampling and rescoring for more information.
To use a quantized index, you can set your index type to int8_hnsw
, int4_hnsw
, or bbq_hnsw
. When indexing float
vectors, the current default index type is int8_hnsw
.
Quantization will continue to keep the raw float vector values on disk for reranking, reindexing, and quantization improvements over the lifetime of the data. This means disk usage will increase by ~25% for int8
, ~12.5% for int4
, and ~3.1% for bbq
due to the overhead of storing the quantized and raw vectors.
int4
quantization requires an even number of vector dimensions.
[preview] This functionality is in technical preview and may be changed or removed in a future release. Elastic will work to fix any issues, but features in technical preview are not subject to the support SLA of official GA features. bbq
quantization only supports vector dimensions that are greater than 64.
Here is an example of how to create a byte-quantized index:
resp = client.indices.create(
index="my-byte-quantized-index",
mappings={
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 3,
"index": True,
"index_options": {
"type": "int8_hnsw"
}
}
}
},
)
print(resp)
response = client.indices.create(
index: 'my-byte-quantized-index',
body: {
mappings: {
properties: {
my_vector: {
type: 'dense_vector',
dims: 3,
index: true,
index_options: {
type: 'int8_hnsw'
}
}
}
}
}
)
puts response
const response = await client.indices.create({
index: "my-byte-quantized-index",
mappings: {
properties: {
my_vector: {
type: "dense_vector",
dims: 3,
index: true,
index_options: {
type: "int8_hnsw",
},
},
},
},
});
console.log(response);
PUT my-byte-quantized-index
{
"mappings": {
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 3,
"index": true,
"index_options": {
"type": "int8_hnsw"
}
}
}
}
}
Here is an example of how to create a half-byte-quantized index:
resp = client.indices.create(
index="my-byte-quantized-index",
mappings={
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 4,
"index": True,
"index_options": {
"type": "int4_hnsw"
}
}
}
},
)
print(resp)
const response = await client.indices.create({
index: "my-byte-quantized-index",
mappings: {
properties: {
my_vector: {
type: "dense_vector",
dims: 4,
index: true,
index_options: {
type: "int4_hnsw",
},
},
},
},
});
console.log(response);
PUT my-byte-quantized-index
{
"mappings": {
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 4,
"index": true,
"index_options": {
"type": "int4_hnsw"
}
}
}
}
}
[preview] This functionality is in technical preview and may be changed or removed in a future release. Elastic will work to fix any issues, but features in technical preview are not subject to the support SLA of official GA features. Here is an example of how to create a binary quantized index:
resp = client.indices.create(
index="my-byte-quantized-index",
mappings={
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 64,
"index": True,
"index_options": {
"type": "bbq_hnsw"
}
}
}
},
)
print(resp)
const response = await client.indices.create({
index: "my-byte-quantized-index",
mappings: {
properties: {
my_vector: {
type: "dense_vector",
dims: 64,
index: true,
index_options: {
type: "bbq_hnsw",
},
},
},
},
});
console.log(response);
PUT my-byte-quantized-index
{
"mappings": {
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 64,
"index": true,
"index_options": {
"type": "bbq_hnsw"
}
}
}
}
}
Parameters for dense vector fields
The following mapping parameters are accepted:
element_type
(Optional, string) The data type used to encode vectors. The supported data types are float
(default), byte
, and bit.
Valid values for element_type
float
indexes a 4-byte floating-point value per dimension. This is the default value.
byte
indexes a 1-byte integer value per dimension.
bit
indexes a single bit per dimension. Useful for very high-dimensional vectors or models that specifically support bit vectors. NOTE: when using bit
, the number of dimensions must be a multiple of 8 and must represent the number of bits.
dims
(Optional, integer) Number of vector dimensions. Can’t exceed 4096
. If dims
is not specified, it will be set to the length of the first vector added to the field.
index
(Optional, Boolean) If true
, you can search this field using the kNN search API. Defaults to true
.
similarity
(Optional*, string) The vector similarity metric to use in kNN search. Documents are ranked by their vector field’s similarity to the query vector. The _score
of each document will be derived from the similarity, in a way that ensures scores are positive and that a larger score corresponds to a higher ranking. Defaults to l2_norm
when element_type: bit
otherwise defaults to cosine
.
* This parameter can only be specified when index
is true
.
bit
vectors only support l2_norm
as their similarity metric.
Valid values for similarity
l2_norm
Computes similarity based on the L2 distance (also known as Euclidean distance) between the vectors. The document _score
is computed as 1 / (1 + l2_norm(query, vector)^2)
.
For bit
vectors, instead of using l2_norm
, the hamming
distance between the vectors is used. The _score
transformation is (numBits - hamming(a, b)) / numBits
dot_product
Computes the dot product of two unit vectors. This option provides an optimized way to perform cosine similarity. The constraints and computed score are defined by element_type
.
When element_type
is float
, all vectors must be unit length, including both document and query vectors. The document _score
is computed as (1 + dot_product(query, vector)) / 2
.
When element_type
is byte
, all vectors must have the same length including both document and query vectors or results will be inaccurate. The document _score
is computed as 0.5 + (dot_product(query, vector) / (32768 * dims))
where dims
is the number of dimensions per vector.
cosine
Computes the cosine similarity. During indexing Elasticsearch automatically normalizes vectors with cosine
similarity to unit length. This allows to internally use dot_product
for computing similarity, which is more efficient. Original un-normalized vectors can be still accessed through scripts. The document _score
is computed as (1 + cosine(query, vector)) / 2
. The cosine
similarity does not allow vectors with zero magnitude, since cosine is not defined in this case.
max_inner_product
Computes the maximum inner product of two vectors. This is similar to dot_product
, but doesn’t require vectors to be normalized. This means that each vector’s magnitude can significantly effect the score. The document _score
is adjusted to prevent negative values. For max_inner_product
values < 0
, the _score
is 1 / (1 + -1 * max_inner_product(query, vector))
. For non-negative max_inner_product
results the _score
is calculated max_inner_product(query, vector) + 1
.
Although they are conceptually related, the similarity
parameter is different from text field similarity and accepts a distinct set of options.
index_options
(Optional*, object) An optional section that configures the kNN indexing algorithm. The HNSW algorithm has two internal parameters that influence how the data structure is built. These can be adjusted to improve the accuracy of results, at the expense of slower indexing speed.
* This parameter can only be specified when index
is true
.
Properties of index_options
type
(Required, string) The type of kNN algorithm to use. Can be either any of:
hnsw
- This utilizes the HNSW algorithm for scalable approximate kNN search. This supports allelement_type
values.int8_hnsw
- The default index type for float vectors. This utilizes the HNSW algorithm in addition to automatically scalar quantization for scalable approximate kNN search withelement_type
offloat
. This can reduce the memory footprint by 4x at the cost of some accuracy. See Automatically quantize vectors for kNN search.int4_hnsw
- This utilizes the HNSW algorithm in addition to automatically scalar quantization for scalable approximate kNN search withelement_type
offloat
. This can reduce the memory footprint by 8x at the cost of some accuracy. See Automatically quantize vectors for kNN search.- [preview] This functionality is in technical preview and may be changed or removed in a future release. Elastic will work to fix any issues, but features in technical preview are not subject to the support SLA of official GA features.
bbq_hnsw
- This utilizes the HNSW algorithm in addition to automatically binary quantization for scalable approximate kNN search withelement_type
offloat
. This can reduce the memory footprint by 32x at the cost of accuracy. See Automatically quantize vectors for kNN search. flat
- This utilizes a brute-force search algorithm for exact kNN search. This supports allelement_type
values.int8_flat
- This utilizes a brute-force search algorithm in addition to automatically scalar quantization. Only supportselement_type
offloat
.int4_flat
- This utilizes a brute-force search algorithm in addition to automatically half-byte scalar quantization. Only supportselement_type
offloat
.- [preview] This functionality is in technical preview and may be changed or removed in a future release. Elastic will work to fix any issues, but features in technical preview are not subject to the support SLA of official GA features.
bbq_flat
- This utilizes a brute-force search algorithm in addition to automatically binary quantization. Only supportselement_type
offloat
.
m
(Optional, integer) The number of neighbors each node will be connected to in the HNSW graph. Defaults to
16
. Only applicable tohnsw
,int8_hnsw
,int4_hnsw
andbbq_hnsw
index types.ef_construction
(Optional, integer) The number of candidates to track while assembling the list of nearest neighbors for each new node. Defaults to
100
. Only applicable tohnsw
,int8_hnsw
,int4_hnsw
andbbq_hnsw
index types.confidence_interval
(Optional, float) Only applicable to
int8_hnsw
,int4_hnsw
,int8_flat
, andint4_flat
index types. The confidence interval to use when quantizing the vectors. Can be any value between and including0.90
and1.0
or exactly0
. When the value is0
, this indicates that dynamic quantiles should be calculated for optimized quantization. When between0.90
and1.0
, this value restricts the values used when calculating the quantization thresholds. For example, a value of0.95
will only use the middle 95% of the values when calculating the quantization thresholds (e.g. the highest and lowest 2.5% of values will be ignored). Defaults to1/(dims + 1)
forint8
quantized vectors and0
forint4
for dynamic quantile calculation.
Synthetic _source
Synthetic _source
is Generally Available only for TSDB indices (indices that have index.mode
set to time_series
). For other indices synthetic _source
is in technical preview. Features in technical preview may be changed or removed in a future release. Elastic will work to fix any issues, but features in technical preview are not subject to the support SLA of official GA features.
dense_vector
fields support synthetic _source .
Indexing & Searching bit vectors
When using element_type: bit
, this will treat all vectors as bit vectors. Bit vectors utilize only a single bit per dimension and are internally encoded as bytes. This can be useful for very high-dimensional vectors or models.
When using bit
, the number of dimensions must be a multiple of 8 and must represent the number of bits. Additionally, with bit
vectors, the typical vector similarity values are effectively all scored the same, e.g. with hamming
distance.
Let’s compare two byte[]
arrays, each representing 40 individual bits.
[-127, 0, 1, 42, 127]
in bits 1000000100000000000000010010101001111111
[127, -127, 0, 1, 42]
in bits 0111111110000001000000000000000100101010
When comparing these two bit, vectors, we first take the hamming distance.
xor
result:
1000000100000000000000010010101001111111
^
0111111110000001000000000000000100101010
=
1111111010000001000000010010101101010101
Then, we gather the count of 1
bits in the xor
result: 18
. To scale for scoring, we subtract from the total number of bits and divide by the total number of bits: (40 - 18) / 40 = 0.55
. This would be the _score
betwee these two vectors.
Here is an example of indexing and searching bit vectors:
resp = client.indices.create(
index="my-bit-vectors",
mappings={
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 40,
"element_type": "bit"
}
}
},
)
print(resp)
const response = await client.indices.create({
index: "my-bit-vectors",
mappings: {
properties: {
my_vector: {
type: "dense_vector",
dims: 40,
element_type: "bit",
},
},
},
});
console.log(response);
PUT my-bit-vectors
{
"mappings": {
"properties": {
"my_vector": {
"type": "dense_vector",
"dims": 40,
"element_type": "bit"
}
}
}
}
The number of dimensions that represents the number of bits |
resp = client.bulk(
index="my-bit-vectors",
refresh=True,
operations=[
{
"index": {
"_id": "1"
}
},
{
"my_vector": [
127,
-127,
0,
1,
42
]
},
{
"index": {
"_id": "2"
}
},
{
"my_vector": "8100012a7f"
}
],
)
print(resp)
const response = await client.bulk({
index: "my-bit-vectors",
refresh: "true",
operations: [
{
index: {
_id: "1",
},
},
{
my_vector: [127, -127, 0, 1, 42],
},
{
index: {
_id: "2",
},
},
{
my_vector: "8100012a7f",
},
],
});
console.log(response);
POST /my-bit-vectors/_bulk?refresh
{"index": {"_id" : "1"}}
{"my_vector": [127, -127, 0, 1, 42]}
{"index": {"_id" : "2"}}
{"my_vector": "8100012a7f"}
5 bytes representing the 40 bit dimensioned vector | |
A hexidecimal string representing the 40 bit dimensioned vector |
Then, when searching, you can use the knn
query to search for similar bit vectors:
resp = client.search(
index="my-bit-vectors",
filter_path="hits.hits",
query={
"knn": {
"query_vector": [
127,
-127,
0,
1,
42
],
"field": "my_vector"
}
},
)
print(resp)
const response = await client.search({
index: "my-bit-vectors",
filter_path: "hits.hits",
query: {
knn: {
query_vector: [127, -127, 0, 1, 42],
field: "my_vector",
},
},
});
console.log(response);
POST /my-bit-vectors/_search?filter_path=hits.hits
{
"query": {
"knn": {
"query_vector": [127, -127, 0, 1, 42],
"field": "my_vector"
}
}
}
{
"hits": {
"hits": [
{
"_index": "my-bit-vectors",
"_id": "1",
"_score": 1.0,
"_source": {
"my_vector": [
127,
-127,
0,
1,
42
]
}
},
{
"_index": "my-bit-vectors",
"_id": "2",
"_score": 0.55,
"_source": {
"my_vector": "8100012a7f"
}
}
]
}
}
Updatable field type
To better accommodate scaling and performance needs, updating the type
setting in index_options
is possible with the Update Mapping API, according to the following graph (jumps allowed):
flat --> int8_flat --> int4_flat --> hnsw --> int8_hnsw --> int4_hnsw
For updating all HNSW types (hnsw
, int8_hnsw
, int4_hnsw
) the number of connections m
must either stay the same or increase. For scalar quantized formats (int8_flat
, int4_flat
, int8_hnsw
, int4_hnsw
) the confidence_interval
must always be consistent (once defined, it cannot change).
Updating type
in index_options
will fail in all other scenarios.
Switching types
won’t re-index vectors that have already been indexed (they will keep using their original type
), vectors being indexed after the change will use the new type
instead.
For example, it’s possible to define a dense vector field that utilizes the flat
type (raw float32 arrays) for a first batch of data to be indexed.
resp = client.indices.create(
index="my-index-000001",
mappings={
"properties": {
"text_embedding": {
"type": "dense_vector",
"dims": 384,
"index_options": {
"type": "flat"
}
}
}
},
)
print(resp)
const response = await client.indices.create({
index: "my-index-000001",
mappings: {
properties: {
text_embedding: {
type: "dense_vector",
dims: 384,
index_options: {
type: "flat",
},
},
},
},
});
console.log(response);
PUT my-index-000001
{
"mappings": {
"properties": {
"text_embedding": {
"type": "dense_vector",
"dims": 384,
"index_options": {
"type": "flat"
}
}
}
}
}
Changing the type
to int4_hnsw
makes sure vectors indexed after the change will use an int4 scalar quantized representation and HNSW (e.g., for KNN queries). That includes new segments created by merging previously created segments.
resp = client.indices.put_mapping(
index="my-index-000001",
properties={
"text_embedding": {
"type": "dense_vector",
"dims": 384,
"index_options": {
"type": "int4_hnsw"
}
}
},
)
print(resp)
const response = await client.indices.putMapping({
index: "my-index-000001",
properties: {
text_embedding: {
type: "dense_vector",
dims: 384,
index_options: {
type: "int4_hnsw",
},
},
},
});
console.log(response);
PUT /my-index-000001/_mapping
{
"properties": {
"text_embedding": {
"type": "dense_vector",
"dims": 384,
"index_options": {
"type": "int4_hnsw"
}
}
}
}
Vectors indexed before this change will keep using the flat
type (raw float32 representation and brute force search for KNN queries).
In order to have all the vectors updated to the new type, either reindexing or force merging should be used.
For debugging purposes, it’s possible to inspect how many segments (and docs) exist for each type
with the Index Segments API.