API Features · Python
Build RAG with Embeddings
Build Retrieval-Augmented Generation pipelines with XALEN embedding models. Search classical texts and astrology knowledge bases.
1. Install
pip install xalen
2. Code
# Generate embeddings
result = client.embeddings.create(
model=#A6E3A1;">"e5-large-v2",
input=[#A6E3A1;">"What is Gajakesari Yoga?", "Jupiter Moon conjunction effects"]
)
vectors = [item.embedding #89B4FA;">for item in result.data]
#89B4FA;">print(f"Dimensions: {len(vectors[0])}") # 1024
# Use with your vector DB (Pinecone, pgvector, etc.)
# for semantic search over classical texts
Related Tutorials
Streaming Responses API Features · Python
Function Calling API Features · Python
JSON Mode API Features · Python
Batch Processing (50% Off) API Features · Python
Python Quickstart Getting Started · Python
JavaScript Quickstart Getting Started · JavaScript
200+ AI models. One API. Start building in 5 minutes.
Get API KeyLast updated: 2026-05-21