AI 增加 Chroma 向量库

This commit is contained in:
thinkgem
2025-03-20 21:30:49 +08:00
parent 1356893d4e
commit 0ee7337789
3 changed files with 49 additions and 34 deletions

View File

@@ -43,7 +43,7 @@
特别适合处理复杂的企业知识库。
此外该模块支持云上大模型和本地部署的大模型DeepSeek、通义千问理论上支持所有 OpenAPI 标准接口的 AI 提供商。
并能无缝集成多种嵌入式 AI 模型的向量数据库,如 PGVector、Elasticsearch、Milvus 等,实现高效的数据存储、检索及分析。
并能无缝集成多种嵌入式 AI 模型的向量数据库,如 Chroma、PGVector、Elasticsearch、Milvus 等,实现高效的数据存储、检索及分析。
无论是大规模数据集还是高度专业化的领域知识JeeSite CMS + RAG + AI 都能提供定制化解决方案,满足企业多样化的业务需求和技术要求。
企业可以轻松管理和访问复杂的信息资源,促进内部知识共享和创新,从而在竞争激烈的市场环境中保持领先地位。
@@ -65,6 +65,7 @@
支持的向量库列表:<https://docs.spring.io/spring-ai/reference/1.0/api/vectordbs.html>
* Chroma
* PGVector
* Elasticsearch
* Milvus

View File

@@ -49,11 +49,17 @@
<artifactId>spring-ai-ollama-spring-boot-starter</artifactId>
</dependency>
<!-- PG 向量数据库 -->
<!-- Chroma 向量数据库 -->
<dependency>
<groupId>org.springframework.ai</groupId>
<artifactId>spring-ai-chroma-store-spring-boot-starter</artifactId>
</dependency>
<!-- PG 向量数据库
<dependency>
<groupId>org.springframework.ai</groupId>
<artifactId>spring-ai-pgvector-store-spring-boot-starter</artifactId>
</dependency>
</dependency> -->
<!-- ES 向量数据库
<dependency>

View File

@@ -54,37 +54,45 @@ spring:
# 向量数据库配置
vectorstore:
# Postgresql 向量数据库PG 连接配置,见下文,需要手动建表)
pgvector:
initialize-schema: false
id-type: TEXT
index-type: HNSW
distance-type: COSINE_DISTANCE
#table-name: vector_store_384
#dimensions: 384
#table-name: vector_store_786
#dimensions: 768
table-name: vector_store_1024
dimensions: 1024
batching-strategy: TOKEN_COUNT
max-document-batch-size: 10000
# Chroma 向量数据库
chroma:
client:
host: http://localhost
port: 8000
initialize-schema: true
collection-name: vector_store
# # Postgresql 向量数据库PG 连接配置,见下文,需要手动建表)
# pgvector:
# id-type: TEXT
# index-type: HNSW
# distance-type: COSINE_DISTANCE
# initialize-schema: false
# #table-name: vector_store_384
# #dimensions: 384
# #table-name: vector_store_786
# #dimensions: 768
# table-name: vector_store_1024
# dimensions: 1024
# batching-strategy: TOKEN_COUNT
# max-document-batch-size: 10000
# # ES 向量数据库ES 连接配置,见下文)
# elasticsearch:
# initialize-schema: true
# index-name: vector-index
# initialize-schema: true
# dimensions: 1024
# similarity: cosine
# batching-strategy: TOKEN_COUNT
# # Milvus 向量数据库字符串长度不超过65535
# milvus:
# initialize-schema: true
# client:
# host: "localhost"
# port: 19530
# username: "root"
# password: "milvus"
# initialize-schema: true
# database-name: "default2"
# collection-name: "vector_store2"
# embedding-dimension: 384
@@ -93,24 +101,24 @@ spring:
# ========= Postgresql 向量数据库数据源 =========
jdbc:
ds_pgvector:
type: postgresql
driver: org.postgresql.Driver
url: jdbc:postgresql://127.0.0.1:5433/jeesite-ai
username: postgres
password: postgres
testSql: SELECT 1
#jdbc:
# ds_pgvector:
# type: postgresql
# driver: org.postgresql.Driver
# url: jdbc:postgresql://127.0.0.1:5433/jeesite-ai
# username: postgres
# password: postgres
# testSql: SELECT 1
# ========= ES 向量数据库连接配置 =========
spring.elasticsearch:
enabled: true
socket-timeout: 120s
connection-timeout: 120s
uris: http://127.0.0.1:9200
username: elastic
password: elastic
#spring.elasticsearch:
# enabled: true
# socket-timeout: 120s
# connection-timeout: 120s
# uris: http://127.0.0.1:9200
# username: elastic
# password: elastic
# 对话消息存缓存,可自定义存数据库
j2cache: