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A Python module that allows conversion of a document into chunks to be inserted into Pinecone vector database

Project description

📚 PreVectorChunks

A lightweight utility for document chunking and vector database upserts — designed for developers building RAG (Retrieval-Augmented Generation) solutions.


✨ Who Needs This Module?

Any developer working with:

  • RAG pipelines
  • Vector Databases (like Pinecone, Weaviate, etc.)
  • AI applications requiring similar content retrieval

🎯 What Does This Module Do?

This module helps you:

  • Chunk documents into smaller fragments
  • Insert (upsert) fragments into a vector database
  • Fetch & update existing chunks from a vector database

📦 Installation

pip install prevectorchunks-core

How to import in a file:

from PreVectorChunks.services import chunk_documents_crud_vdb

Use .env for API keys:

PINECONE_API_KEY=YOUR_API_KEY
OPENAI_API_KEY=YOUR_API_KEY

📄 Functions

1. chunk_documents

chunk_documents(instructions, file_path="content_playground/content.json", splitter_config=SplitterConfig())

Splits the content of a document into smaller, manageable chunks.

Parameters

  • instructions (dict or str): Additional rules or guidance for how the document should be split.
    • Example: "split my content by biggest headings"
  • file_path (str): Path to the input JSON/text file containing the content or content of the file. Default: "content_playground/content.json".
  • splitter_config (optional) (SplitterConfig): (if none provided standard split takes place) Object that defines chunking behavior, e.g., chunk_size, chunk_overlap, separator, split_type.
  • i.e. splitter_config = SplitterConfig(chunk_size= 300, chunk_overlap= 0,separators=["\n"],split_type="RecursiveCharacterTextSplitter")
  • i.e. splitter_config = SplitterConfig(chunk_size= 300, chunk_overlap= 0,separators=["\n"],split_type="CharacterTextSplitter")
  • i.e. splitter_config = SplitterConfig(chunk_size= 300, chunk_overlap= 0,separators=["\n"],split_type="standard") Returns
  • A list of chunked strings including a unique id, a meaningful title and chunked text

Use Cases

  • Preparing text for LLM ingestion
  • Splitting text by structure (headings, paragraphs)
  • Vector database indexing

2. chunk_and_upsert_to_vdb

chunk_and_upsert_to_vdb(index_n, instructions, file_path="content_playground/content.json", splitter_config=SplitterConfig())

Splits a document into chunks (via chunk_documents) and inserts them into a Vector Database.

Parameters

  • index_n (str): The name of the VDB index where chunks should be stored.
  • instructions (dict or str): Rules for splitting content (same as chunk_documents).
  • file_path (str): Path to the document file or content of the file. Default: "content_playground/content.json".
  • splitter_config (SplitterConfig): Object that defines chunking behavior.

Returns

  • Confirmation of successful insert into the VDB.

Use Cases

  • Automated document preprocessing and storage for vector search
  • Preparing embeddings for semantic search

3. fetch_vdb_chunks_grouped_by_document_name

fetch_vdb_chunks_grouped_by_document_name(index_n)

Fetches existing chunks stored in the Vector Database, grouped by document name.

Parameters

  • index_n (str): The name of the VDB index.

Returns

  • A dictionary or list of chunks grouped by document name.

Use Cases

  • Retrieving all chunks of a specific document
  • Verifying what content has been ingested into the VDB

4. update_vdb_chunks_grouped_by_document_name

update_vdb_chunks_grouped_by_document_name(index_n, dataset)

Updates existing chunks in the Vector Database by document name.

Parameters

  • index_n (str): The name of the VDB index.
  • dataset (dict or list): The new data (chunks) to update existing entries.

Returns

  • Confirmation of update status.

Use Cases

  • Keeping VDB chunks up to date when documents change
  • Re-ingesting revised or corrected content

🚀 Example Workflow

from prevectorchunks_core.config import SplitterConfig

splitter_config = SplitterConfig(chunk_size=150, chunk_overlap=0, separator=["\n"], split_type="RecursiveCharacterTextSplitter")

# Step 1: Chunk a document
chunks = chunk_documents(
    instructions="split my content by biggest headings",
    file_path="content_playground/content.json",
    splitter_config=splitter_config
)

# Step 2: Insert chunks into VDB
chunk_and_upsert_to_vdb("my_index", instructions="split by headings", splitter_config=splitter_config)

# Step 3: Fetch stored chunks
docs = fetch_vdb_chunks_grouped_by_document_name("my_index")

# Step 4: Update chunks if needed
update_vdb_chunks_grouped_by_document_name("my_index", dataset=docs)

🛠 Use Cases

  • Preprocessing documents for LLM ingestion
  • Semantic search and Q&A systems
  • Vector database indexing and retrieval
  • Maintaining versioned document chunks

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