͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏ ͏
First Gemini Embedding model is here 🚀 |
|
|
The new Gemini Embedding model is now live in the Gemini API. Start building better Retrieval-Augmented Generation (RAG), classification, and search today. | It's our most powerful and versatile text embedding model ever, achieving top-ranking scores on the Massive Text Embedding Benchmark (MTEB) leaderboard, and is priced at $0.15 USD per million tokens. Gemini Embedding supports 100+ languages and has a controllable embedding size. | You can generate text embeddings by using the embed_content method: |
|
|
from google import genai client = genai.Client()
result = client.models.embed_content(
model="gemini-embedding-001", contents="What is the meaning of life?" ) print(result.embeddings)
|
|
|
|
| The Google AI Studio team |
|
|
Building with multimodal AI | Discover how Gemini's multimodal understanding is unlocking a new class of vision-powered apps and context-aware software with insights from Gemini's multimodal product lead, Ani Baddepudi. Watch the video |
|
|
|
| You can get significantly higher request limits and flexible pay-as-you-go pricing with a paid tier. | |
|
|
|
| This email was sent to sundoelcoy@gmail.com because you signed up to receive emails about Google AI. If you do not wish to receive these emails, please unsubscribe. |
|
|

Tidak ada komentar:
Posting Komentar