Tersedia sekarang
Google

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.

EmbeddingTools2K
InputGratis
OutputGratis
TipeEmbedding
Endpointembedding

Performa

Memuat data performa...
§ 01

Harga

Harga input$0.00 · 1M token
Harga output$0.00 · 1M token
Jendela konteks2K token
Endpoint kompatibelembedding
VendorGoogle
§ 02

Panggil gemini-embedding-001 dari kode Anda

Arahkan SDK kompatibel OpenAI apa pun ke UnoRouter dan minta model berdasarkan nama. Ganti YOUR_API_KEY dengan kunci asli dari dashboard Anda.

bash
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!"}]
  }'

Masuk untuk mengisi otomatis kunci API Anda

§ 03

Pertanyaan yang sering diajukan

Berapa biaya gemini-embedding-001 per 1M token?

Input diberi harga $0.00 per 1M token, output $0.00 per 1M token. Penagihan per token, tanpa pembulatan ke ukuran batch.

Bagaimana cara saya mengakses gemini-embedding-001 melalui API?

Kirim permintaan ke endpoint UnoRouter /v1/chat/completions dengan model=gemini-embedding-001. Library klien yang kompatibel dengan OpenAI mana pun bekerja. Autentikasi menggunakan token Bearer standar.

Apa jendela konteks gemini-embedding-001?

gemini-embedding-001 mendukung jendela konteks 2K token, dibagikan antara prompt Anda dan respons model.

§ 04

Model serupa

Coba gemini-embedding-001 sekarang

Buat kunci API dan mulai membuat permintaan dalam waktu kurang dari satu menit.

Lihat semua model