Files
my-worker/modules/cms-ai/src/main/resources/config/jeesite-cms-ai.yml

140 lines
3.9 KiB
YAML
Raw Normal View History

# 温馨提示不建议直接修改此文件为了平台升级方便建议将需要修改的参数值复制到application.yml里进行覆盖该参数值。
spring:
ai:
# 云上大模型(使用该模型,请开启 enabled 参数)
openai:
base-url: https://api.siliconflow.cn
api-key: ${SFLOW_APP_KEY}
#base-url: https://ai.gitee.com
#api-key: ${GITEE_APP_KEY}
#base-url: https://dashscope.aliyuncs.com/compatible-mode
#api-key: ${BAILIAN_APP_KEY}
# 聊天对话模型
chat:
options:
model: deepseek-ai/DeepSeek-R1-Distill-Qwen-7B
#model: DeepSeek-R1-Distill-Qwen-14B
#model: deepseek-r1-distill-llama-8b
max-tokens: 1024
temperature: 0.6
top-p: 0.9
frequency-penalty: 0
#logprobs: true
# 向量库知识库模型(注意:不同的模型维度不同)
embedding:
options:
model: BAAI/bge-m3
#model: bge-large-zh-v1.5
dimensions: 512
#model: text-embedding-v3
#dimensions: 1024
# 是否启用工具调用
tool-calls: false
# 本地大模型配置(使用该模型,请开启 enabled 参数)
ollama:
base-url: http://localhost:11434
# 聊天对话模型
chat:
options:
model: qwen2.5
#model: deepseek-r1:7b
max-tokens: 1024
temperature: 0.6
top-p: 0.7
frequency-penalty: 0
# 向量库知识库模型(注意:不同的模型维度不同)
embedding:
# 维度 dimensions 设置为 384
#model: all-minilm:33m
# 维度 dimensions 设置为 768
#model: nomic-embed-text
# 维度 dimensions 设置为 1024
model: bge-m3
# 向量数据库配置
vectorstore:
2025-03-20 21:30:49 +08:00
# Chroma 向量数据库
chroma:
client:
host: http://testserver
2025-03-20 21:30:49 +08:00
port: 8000
initialize-schema: true
#collection-name: vector_store
collection-name: vector_store_1024
2025-03-20 21:30:49 +08:00
# 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
max-document-batch-size: 10000
# ES 向量数据库ES 连接配置,见下文)
elasticsearch:
index-name: vector-index
initialize-schema: true
dimensions: 1024
similarity: cosine
# Milvus 向量数据库
milvus:
client:
host: "localhost"
port: 19530
username: "root"
password: "milvus"
initialize-schema: true
database-name: "default"
collection-name: "vector_store"
embedding-dimension: 384
index-type: HNSW
metric-type: COSINE
# ========= 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
pool:
init: 0
minIdle: 0
breakAfterAcquireFailure: true
# ========= ES 向量数据库连接配置 =========
spring.elasticsearch:
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:
caffeine:
region:
# 对话消息的超期时间,默认 30天根据需要可以设置更久。
cmsChatCache: 100000, 30d
cmsChatMsgCache: 100000, 30d
#logging:
# level:
# org.springframework: debug