gemini-embedding-001
Provides text embedding models for generating embeddings for words, phrases, sentences, and code. These foundational embeddings support advanced NLP tasks such as semantic search, classification, and clustering, offering more accurate and context-aware search results compared to keyword-based approaches. Building Retrieval Augmented Generation (RAG) systems is a common use case for embeddings. Embeddings play a crucial role in significantly enhancing model outputs, improving factual accuracy, coherence, and contextual richness. They enable efficient retrieval of relevant information from knowledge bases (represented as embeddings), which is then passed as additional background information in the input prompt to the language model, guiding it to generate more informed and accurate responses.
性能
价格
| 输入价格 | $0.00 · 百万 Token |
| 输出价格 | $0.00 · 百万 Token |
| 上下文窗口 | 2K Token |
| 兼容端点 | embedding |
| 供应商 |
在您的代码中调用 gemini-embedding-001
将任意 OpenAI 兼容 SDK 指向 UnoRouter,并按名称请求模型。将 YOUR_API_KEY 替换为您控制台中的真实密钥。
curl https://api.unorouter.ai/v1/chat/completions \
-H "Authorization: Bearer YOUR_API_KEY" \
-H "Content-Type: application/json" \
-d '{
"model": "gemini-embedding-001",
"messages": [{"role": "user", "content": "Hello!"}]
}'常见问题
gemini-embedding-001 每百万 Token 多少钱?
输入价格 $0.00 / 百万 Token,输出价格 $0.00 / 百万 Token。按 Token 计费,不按批次大小取整。
如何通过 API 访问 gemini-embedding-001?
向 UnoRouter 的 /v1/chat/completions 端点发送请求,指定 model=gemini-embedding-001。任意 OpenAI 兼容客户端库均可使用。鉴权采用标准 Bearer Token。
gemini-embedding-001 的上下文窗口是多少?
gemini-embedding-001 支持 2K Token 的上下文窗口,由您的提示词和模型响应共同占用。