Build RAG Chatbot with Llamaindex, HNSWlib, Mistral Pixtral Large, and Ollama mxbai-embed-large
Introduction to RAG
Retrieval-Augmented Generation (RAG) is a game-changer for GenAI applications, especially in conversational AI. It combines the power of pre-trained large language models (LLMs) like OpenAI’s GPT with external knowledge sources stored in vector databases such as Milvus and Zilliz Cloud, allowing for more accurate, contextually relevant, and up-to-date response generation. A RAG pipeline usually consists of four basic components: a vector database, an embedding model, an LLM, and a framework.
Key Components We'll Use for This RAG Chatbot
This tutorial shows you how to build a simple RAG chatbot in Python using the following components:
- Llamaindex: a data framework that connects large language models (LLMs) with various data sources, enabling efficient retrieval-augmented generation (RAG). It helps structure, index, and query private or external data, optimizing LLM applications for search, chatbots, and analytics.
- HNSWlib: a high-performance C++ and Python library for approximate nearest neighbor (ANN) search using the Hierarchical Navigable Small World (HNSW) algorithm. It provides fast, scalable, and efficient similarity search in high-dimensional spaces, making it ideal for vector databases and AI applications.
- Mistral Pixtral Large: A high-performance language model optimized for advanced natural language processing tasks, excelling in multilingual understanding, contextual accuracy, and scalable deployment. Its efficiency in processing complex queries and real-time data makes it ideal for enterprise applications like AI-driven analytics, dynamic content generation, and multilingual customer support automation.
- Ollama mxbai-embed-large: A high-performance embedding model optimized for converting text into dense vector representations, excelling in semantic similarity tasks. It features multilingual support, efficient processing of long documents, and low-latency inference, making it ideal for semantic search, document clustering, content recommendation, and retrieval-augmented generation (RAG) pipelines.
By the end of this tutorial, you’ll have a functional chatbot capable of answering questions based on a custom knowledge base.
Note: Since we may use proprietary models in our tutorials, make sure you have the required API key beforehand.
Step 1: Install and Set Up Llamaindex
pip install llama-index
Step 2: Install and Set Up Mistral Pixtral Large
%pip install llama-index-llms-mistralai
from llama_index.llms.mistralai import MistralAI
llm = MistralAI(model="pixtral-large-latest")
Step 3: Install and Set Up Ollama mxbai-embed-large
%pip install llama-index-embeddings-ollama
from llama_index.embeddings.ollama import OllamaEmbedding
embed_model = OllamaEmbedding(
model_name="mxbai-embed-large",
)
Step 4: Install and Set Up HNSWlib
%pip install llama-index-vector-stores-hnswlib
from llama_index.vector_stores.hnswlib import HnswlibVectorStore
from llama_index.core import (
VectorStoreIndex,
StorageContext,
SimpleDirectoryReader,
)
vector_store = HnswlibVectorStore.from_params(
space="ip",
dimension=embed_model._model.get_sentence_embedding_dimension(),
max_elements=1000,
)
Step 5: Build a RAG Chatbot
Now that you’ve set up all components, let’s start to build a simple chatbot. We’ll use the Milvus introduction doc as a private knowledge base. You can replace it with your own dataset to customize your RAG chatbot.
import requests
from llama_index.core import SimpleDirectoryReader
# load documents
url = 'https://raw.githubusercontent.com/milvus-io/milvus-docs/refs/heads/v2.5.x/site/en/about/overview.md'
example_file = 'example_file.md' # You can replace it with your own file paths.
response = requests.get(url)
with open(example_file, 'wb') as f:
f.write(response.content)
documents = SimpleDirectoryReader(
input_files=[example_file]
).load_data()
print("Document ID:", documents[0].doc_id)
storage_context = StorageContext.from_defaults(vector_store=vector_store)
index = VectorStoreIndex.from_documents(
documents, storage_context=storage_context, embed_model=embed_model
)
query_engine = index.as_query_engine(llm=llm)
res = query_engine.query("What is Milvus?") # You can replace it with your own question.
print(res)
Example output
Milvus is a high-performance, highly scalable vector database designed to operate efficiently across various environments, from personal laptops to large-scale distributed systems. It is available as both open-source software and a cloud service. Milvus excels in managing unstructured data by converting it into numerical vectors through embeddings, which facilitates fast and scalable searches and analytics. The database supports a wide range of data types and offers robust data modeling capabilities, allowing users to organize their data effectively. Additionally, Milvus provides multiple deployment options, including a lightweight version for quick prototyping and a distributed version for handling massive data scales.
Optimization Tips
As you build your RAG system, optimization is key to ensuring peak performance and efficiency. While setting up the components is an essential first step, fine-tuning each one will help you create a solution that works even better and scales seamlessly. In this section, we’ll share some practical tips for optimizing all these components, giving you the edge to build smarter, faster, and more responsive RAG applications.
LlamaIndex optimization tips
To optimize LlamaIndex for a Retrieval-Augmented Generation (RAG) setup, structure your data efficiently using hierarchical indices like tree-based or keyword-table indices for faster retrieval. Use embeddings that align with your use case to improve search relevance. Fine-tune chunk sizes to balance context length and retrieval precision. Enable caching for frequently accessed queries to enhance performance. Optimize metadata filtering to reduce unnecessary search space and improve speed. If using vector databases, ensure indexing strategies align with your query patterns. Implement async processing to handle large-scale document ingestion efficiently. Regularly monitor query performance and adjust indexing parameters as needed for optimal results.
HNSWlib optimization tips
To optimize HNSWlib for a Retrieval-Augmented Generation (RAG) setup, fine-tune the M parameter (number of connections per node) to balance accuracy and memory usage—higher values improve recall but increase indexing time. Adjust ef_construction
(search depth during indexing) to enhance retrieval quality. During queries, set ef_search
dynamically based on latency vs. accuracy trade-offs. Use multi-threading for faster indexing and querying. Ensure vectors are properly normalized for consistent similarity comparisons. If working with large datasets, periodically rebuild the index to maintain efficiency. Store the index on disk and load it efficiently for persistence in production environments. Monitor query performance and tweak parameters to achieve optimal speed-recall balance.
Mistral Pixtral Large optimization tips
To optimize Mistral Pixtral Large in a RAG setup, prioritize chunk sizing for retrieval—experiment with 256-512 token chunks to balance context and relevance. Use dense embeddings (e.g., SBERT) paired with hybrid search (ANN + keyword) for efficient document retrieval. Fine-tune the model on domain-specific data to enhance response accuracy. Adjust generation parameters: lower temperature (0.2-0.4) for factual consistency and limit top-k to 50-100. Implement query caching for repetitive inputs and use metadata filtering to prune irrelevant documents. Regularly evaluate retrieval hit rate and latency to refine thresholds and indexing strategies.
Ollama mxbai-embed-large optimization tips
Optimize Ollama mxbai-embed-large in RAG by preprocessing input text: clean, normalize, and chunk documents into 256-512 token segments for balanced context. Use batch inference to parallelize embedding generation, reducing latency. Fine-tune the model on domain-specific data if labeled pairs are available. Cache frequent or static embeddings to avoid recomputation. Ensure hardware acceleration (e.g., CUDA) is enabled. Test cosine similarity thresholds for retrieval accuracy and adjust based on downstream tasks. Regularly update the vector database with fresh data to maintain relevance.
By implementing these tips across your components, you'll be able to enhance the performance and functionality of your RAG system, ensuring it’s optimized for both speed and accuracy. Keep testing, iterating, and refining your setup to stay ahead in the ever-evolving world of AI development.
RAG Cost Calculator: A Free Tool to Calculate Your Cost in Seconds
Estimating the cost of a Retrieval-Augmented Generation (RAG) pipeline involves analyzing expenses across vector storage, compute resources, and API usage. Key cost drivers include vector database queries, embedding generation, and LLM inference.
RAG Cost Calculator is a free tool that quickly estimates the cost of building a RAG pipeline, including chunking, embedding, vector storage/search, and LLM generation. It also helps you identify cost-saving opportunities and achieve up to 10x cost reduction on vector databases with the serverless option.
Calculate your RAG cost
What Have You Learned?
Congratulations on making it through the tutorial! You’ve just unlocked an incredibly powerful combination to revolutionize how you access and manage information with the integration of a framework, vector database, LLM, and embedding model. By utilizing LlamaIndex to organize and retrieve your data, HNSWlib for efficient nearest neighbor searches within a vector space, and combining the capabilities of the Mistral Pixtral Large model with the Ollama mxbai-embed-large for superior embeddings, you’ve built a Retrieval-Augmented Generation (RAG) pipeline that is not only seamless but also robust. Each component brings its unique strengths—whether it's the precision of the LLM in generating contextually relevant responses or the speed of the vector database in fetching the right information quickly.
Moreover, we’ve also covered some essential optimization tips and even included a handy free RAG cost calculator to keep track of your project’s expenses and scalability. This insight equips you with the tools needed to not just build but refine your system over time. So, let that enthusiasm carry you forward! Dive into building your own applications, experiment with different configurations, and don’t hesitate to innovate beyond the limits we’ve discussed. The world of RAG technology is yours to explore—now go ahead and make something remarkable! Your journey starts here, and the possibilities are endless!
Further Resources
🌟 In addition to this RAG tutorial, unleash your full potential with these incredible resources to level up your RAG skills.
- How to Build a Multimodal RAG | Documentation
- How to Enhance the Performance of Your RAG Pipeline
- Graph RAG with Milvus | Documentation
- How to Evaluate RAG Applications - Zilliz Learn
- Generative AI Resource Hub | Zilliz
We'd Love to Hear What You Think!
We’d love to hear your thoughts! 🌟 Leave your questions or comments below or join our vibrant Milvus Discord community to share your experiences, ask questions, or connect with thousands of AI enthusiasts. Your journey matters to us!
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- Introduction to RAG
- Key Components We'll Use for This RAG Chatbot
- Step 1: Install and Set Up Llamaindex
- Step 2: Install and Set Up Mistral Pixtral Large
- Step 3: Install and Set Up Ollama mxbai-embed-large
- Step 4: Install and Set Up HNSWlib
- Step 5: Build a RAG Chatbot
- Optimization Tips
- RAG Cost Calculator: A Free Tool to Calculate Your Cost in Seconds
- What Have You Learned?
- Further Resources
- We'd Love to Hear What You Think!
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