Help Center/ Cloud Search Service/ User Guide (ME-Abu Dhabi Region)/ Vector Retrieval/ Optimizing the Performance of Vector Retrieval
Updated on 2023-06-20 GMT+08:00

Optimizing the Performance of Vector Retrieval

Optimizing Write Performance

  • To reduce the cost of backup, disable the backup function before data import and enable it afterwards.
  • Set refresh_interval to 120s or a larger value. Larger segments can reduce the vector index build overhead caused by merging.
  • Increase the value of native.vector.index_threads (the default value is 4) to increase the number of threads for vector index build.
    PUT _cluster/settings
    {
      "persistent": {
        "native.vector.index_threads": 8
      }
    }

Optimizing Query Performance

  • After importing data in batches, you can run the forcemerge command to improve the query efficiency.
    POST index_name/_forcemerge?max_num_segments=1
  • If the off-heap memory required by the vector index exceeds the circuit breaker limit, index entry swap-in and swap-out occur, which affects the query performance. In this case, you can increase the circuit breaker threshold of off-heap memory.
    PUT _cluster/settings
    {
      "persistent": {
        "native.cache.circuit_breaker.cpu.limit": "75%"
      }
    }
  • If the end-to-end latency is greater than the took value in the returned result, you can configure _source to reduce the fdt file size and reduce the fetch overhead.
    PUT my_index
    {
      "settings": {
        "index": {
          "vector": "true"
        },
        "index.soft_deletes.enabled": false
      },
      "mappings": {
        "_source": {
          "excludes": ["my_vector"]
        },
        "properties": {
          "my_vector": {
            "type": "vector",
            "dimension": 128,
            "indexing": true,
            "algorithm": "GRAPH",
            "metric": "euclidean"
          }
        }
      }
    }