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POST
/
v1
/
embeddings
from openai import OpenAI

client = OpenAI(
    base_url="https://api.cometapi.com/v1",
    api_key="<COMETAPI_KEY>",
)

response = client.embeddings.create(
    model="text-embedding-3-small",
    input="The food was delicious and the waiter was friendly.",
)

print(response.data[0].embedding[:5])  # First 5 dimensions
print(f"Dimensions: {len(response.data[0].embedding)}")
{
  "object": "list",
  "data": [
    {
      "object": "embedding",
      "index": 0,
      "embedding": [
        -0.0021,
        -0.0491,
        0.0209,
        0.0314,
        -0.0453
      ]
    }
  ],
  "model": "text-embedding-3-small",
  "usage": {
    "prompt_tokens": 2,
    "total_tokens": 2
  }
}

Documentation Index

Fetch the complete documentation index at: https://apidoc.cometapi.com/llms.txt

Use this file to discover all available pages before exploring further.

CometAPI støtter embedding-modeller fra flere leverandører gjennom ett enkelt endepunkt. Send inn én eller flere tekststrenger og motta numeriske vektorer for semantisk søk, klynging, klassifisering eller retrieval-augmented generation (RAG). Se modellisten for tilgjengelige embedding-modeller og priser.
Modellene text-embedding-3-* støtter parameteren dimensions, som forkorter embedding-vektoren uten vesentlig tap av nøyaktighet. Dette kan redusere lagringskostnadene samtidig som det meste av den semantiske informasjonen beholdes.
For å embedde flere tekster i én enkelt forespørsel, send et array med strenger til parameteren input. Batch-input er betydelig mer effektivt enn å gjøre individuelle forespørsler.

Autorisasjoner

Authorization
string
header
påkrevd

Bearer token authentication. Use your CometAPI key.

Kropp

application/json
model
string
påkrevd

The embedding model to use. See the Models page for current embedding model IDs.

Eksempel:

"text-embedding-3-small"

input
påkrevd

The text to embed. Can be a single string, an array of strings, or an array of token arrays. Each input must not exceed the model's maximum token limit (8,191 tokens for text-embedding-3-* models).

encoding_format
enum<string>
standard:float

The format of the returned embedding vectors. float returns an array of floating-point numbers. base64 returns a base64-encoded string representation, which can reduce response size for large batches.

Tilgjengelige alternativer:
float,
base64
dimensions
integer

The number of dimensions for the output embedding vector. Only supported by text-embedding-3-* models. Reducing dimensions can lower storage costs while maintaining most of the embedding's utility.

Nødvendig område: x >= 1
user
string

A unique identifier for your end-user, which can help monitor and detect abuse.

Svar

200 - application/json

A list of embedding vectors for the input text(s).

object
enum<string>

The object type, always list.

Tilgjengelige alternativer:
list
Eksempel:

"list"

data
object[]

An array of embedding objects, one per input text. When multiple inputs are provided, results are returned in the same order as the input.

model
string

The model used to generate the embeddings.

Eksempel:

"text-embedding-3-small"

usage
object

Token usage statistics for this request.