embedContent
curl --request POST \
--url https://openp.ai/v1beta/models/{model}:embedContentimport requests
url = "https://openp.ai/v1beta/models/{model}:embedContent"
response = requests.post(url)
print(response.text)const options = {method: 'POST'};
fetch('https://openp.ai/v1beta/models/{model}:embedContent', options)
.then(res => res.json())
.then(res => console.log(res))
.catch(err => console.error(err));<?php
$curl = curl_init();
curl_setopt_array($curl, [
CURLOPT_URL => "https://openp.ai/v1beta/models/{model}:embedContent",
CURLOPT_RETURNTRANSFER => true,
CURLOPT_ENCODING => "",
CURLOPT_MAXREDIRS => 10,
CURLOPT_TIMEOUT => 30,
CURLOPT_HTTP_VERSION => CURL_HTTP_VERSION_1_1,
CURLOPT_CUSTOMREQUEST => "POST",
]);
$response = curl_exec($curl);
$err = curl_error($curl);
curl_close($curl);
if ($err) {
echo "cURL Error #:" . $err;
} else {
echo $response;
}package main
import (
"fmt"
"net/http"
"io"
)
func main() {
url := "https://openp.ai/v1beta/models/{model}:embedContent"
req, _ := http.NewRequest("POST", url, nil)
res, _ := http.DefaultClient.Do(req)
defer res.Body.Close()
body, _ := io.ReadAll(res.Body)
fmt.Println(string(body))
}HttpResponse<String> response = Unirest.post("https://openp.ai/v1beta/models/{model}:embedContent")
.asString();require 'uri'
require 'net/http'
url = URI("https://openp.ai/v1beta/models/{model}:embedContent")
http = Net::HTTP.new(url.host, url.port)
http.use_ssl = true
request = Net::HTTP::Post.new(url)
response = http.request(request)
puts response.read_bodyGoogle Gemini
embedContent
POST /v1beta/models/:embedContent —— Gemini 嵌入向量
POST
/
v1beta
/
models
/
{model}
:embedContent
embedContent
curl --request POST \
--url https://openp.ai/v1beta/models/{model}:embedContentimport requests
url = "https://openp.ai/v1beta/models/{model}:embedContent"
response = requests.post(url)
print(response.text)const options = {method: 'POST'};
fetch('https://openp.ai/v1beta/models/{model}:embedContent', options)
.then(res => res.json())
.then(res => console.log(res))
.catch(err => console.error(err));<?php
$curl = curl_init();
curl_setopt_array($curl, [
CURLOPT_URL => "https://openp.ai/v1beta/models/{model}:embedContent",
CURLOPT_RETURNTRANSFER => true,
CURLOPT_ENCODING => "",
CURLOPT_MAXREDIRS => 10,
CURLOPT_TIMEOUT => 30,
CURLOPT_HTTP_VERSION => CURL_HTTP_VERSION_1_1,
CURLOPT_CUSTOMREQUEST => "POST",
]);
$response = curl_exec($curl);
$err = curl_error($curl);
curl_close($curl);
if ($err) {
echo "cURL Error #:" . $err;
} else {
echo $response;
}package main
import (
"fmt"
"net/http"
"io"
)
func main() {
url := "https://openp.ai/v1beta/models/{model}:embedContent"
req, _ := http.NewRequest("POST", url, nil)
res, _ := http.DefaultClient.Do(req)
defer res.Body.Close()
body, _ := io.ReadAll(res.Body)
fmt.Println(string(body))
}HttpResponse<String> response = Unirest.post("https://openp.ai/v1beta/models/{model}:embedContent")
.asString();require 'uri'
require 'net/http'
url = URI("https://openp.ai/v1beta/models/{model}:embedContent")
http = Net::HTTP.new(url.host, url.port)
http.use_ssl = true
request = Net::HTTP::Post.new(url)
response = http.request(request)
puts response.read_body获取 Gemini 嵌入向量。也可批量调用
返回:
:batchEmbedContents。
请求
curl "https://openp.ai/v1beta/models/text-embedding-004:embedContent" \
-H "x-goog-api-key: $OPENPAI_API_KEY" \
-H "Content-Type: application/json" \
-d '{
"content": {"parts": [{"text": "hello world"}]}
}'
字段
| 字段 | 类型 | 必填 | 说明 |
|---|---|---|---|
content.parts | array | ✅ | 文本片段数组 |
taskType | string | RETRIEVAL_QUERY / RETRIEVAL_DOCUMENT / SEMANTIC_SIMILARITY / CLASSIFICATION / CLUSTERING | |
title | string | 当 taskType=RETRIEVAL_DOCUMENT 时可附 | |
outputDimensionality | integer | 截断维度(仅 gemini-embedding-001) |
响应
{
"embedding": {
"values": [0.012, -0.034, ..., 0.001]
}
}
批量嵌入
curl "https://openp.ai/v1beta/models/text-embedding-004:batchEmbedContents" \
-H "x-goog-api-key: $OPENPAI_API_KEY" \
-H "Content-Type: application/json" \
-d '{
"requests": [
{"model": "models/text-embedding-004", "content": {"parts": [{"text": "a"}]}},
{"model": "models/text-embedding-004", "content": {"parts": [{"text": "b"}]}}
]
}'
{
"embeddings": [
{"values": [...]},
{"values": [...]}
]
}
⌘I