CohereEmbedder class is used to embed text data into vectors using the Cohere API. You can get started with Cohere from here
Get your key from here.
Usage
cohere_embedder.py
from agno.knowledge.knowledge import Knowledge
from agno.vectordb.pgvector import PgVector
from agno.knowledge.embedder.cohere import CohereEmbedder
# Add embedding to database
embeddings = CohereEmbedder(id="embed-english-v3.0").get_embedding("The quick brown fox jumps over the lazy dog.")
# Print the embeddings and their dimensions
print(f"Embeddings: {embeddings[:5]}")
print(f"Dimensions: {len(embeddings)}")
# Use an embedder in a knowledge base
knowledge = Knowledge(
vector_db=PgVector(
db_url="postgresql+psycopg://ai:ai@localhost:5532/ai",
table_name="cohere_embeddings",
embedder=CohereEmbedder(id="embed-english-v3.0"),
),
max_results=2,
)
Params
| Parameter | Type | Default | Description |
|---|---|---|---|
model | str | "embed-english-v3.0" | The name of the model used for generating embeddings. |
input_type | str | search_query | The type of input to embed. You can find more details here |
embedding_types | Optional[List[str]] | - | The type of embeddings to generate. Optional. |
api_key | str | - | The Cohere API key used for authenticating requests. |
request_params | Optional[Dict[str, Any]] | - | Additional parameters to include in the API request. Optional. |
client_params | Optional[Dict[str, Any]] | - | Additional parameters for configuring the API client. Optional. |
cohere_client | Optional[CohereClient] | - | An instance of the CohereClient to use for making API requests. Optional. |
enable_batch | bool | False | Enable batch processing to reduce API calls and avoid rate limits |
batch_size | int | 100 | Number of texts to process in each API call for batch operations. |
Developer Resources
- View Cookbook