Build RAG Chatbot with Llamaindex, Pgvector, Cohere Command, and AmazonBedrock cohere embed-english-v3
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.
- Pgvector: an open-source extension for PostgreSQL that enables efficient storage and querying of high-dimensional vector data, essential for machine learning and AI applications. Designed to handle embeddings, it supports fast approximate nearest neighbor (ANN) searches using algorithms like HNSW and IVFFlat. Since it is just a vector search add-on to traditional search rather than a purpose-built vector database, it lacks scalability and availability and many other advanced features required by enterprise-level applications. Therefore, if you prefer a much more scalable solution or hate to manage your own infrastructure, we recommend using Zilliz Cloud, which is a fully managed vector database service built on the open-source Milvus and offers a free tier supporting up to 1 million vectors.)
- Cohere Command: A generative AI model designed for high-accuracy text generation and instruction-following, optimized for business applications. Strengths include coherent output, robust handling of complex prompts, and enterprise-grade reliability. Ideal for automating customer interactions, generating structured content (reports, emails), data extraction, and summarization, enhancing operational efficiency and scalability.
- AmazonBedrock Cohere Embed-English-v3: A state-of-the-art text embedding model designed to convert English text into high-dimensional vector representations, excelling in semantic understanding and scalability. Its strengths include robust performance in semantic search, clustering, and retrieval-augmented generation (RAG), making it ideal for applications like recommendation systems, document similarity analysis, and AI-driven content organization within enterprise workflows.
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 Cohere Command
%pip install llama-index-llms-cohere
from llama_index.llms.cohere import Cohere
llm = Cohere(model="command", api_key=api_key)
Step 3: Install and Set Up AmazonBedrock cohere embed-english-v3
%pip install llama-index-embeddings-bedrock
from llama_index.embeddings.bedrock import BedrockEmbedding
ebed_model = BedrockEmbedding(model_name="cohere.embed-english-v3")
Step 4: Install and Set Up Pgvector
%pip install llama-index-vector-stores-postgres
from llama_index.core import VectorStoreIndex
from llama_index.vector_stores.postgres import PGVectorStore
vector_store = PGVectorStore.from_params(
database=db_name,
host=url.host,
password=url.password,
port=url.port,
user=url.username,
table_name="your_table_name",
embed_dim=1536, # openai embedding dimension
hnsw_kwargs={
"hnsw_m": 16,
"hnsw_ef_construction": 64,
"hnsw_ef_search": 40,
"hnsw_dist_method": "vector_cosine_ops",
},
)
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.
pgvector optimization tips
To optimize pgvector in a Retrieval-Augmented Generation (RAG) setup, consider indexing your vectors using GiST or IVFFlat to significantly speed up search queries and improve retrieval performance. Make sure to leverage parallelization for query execution, allowing multiple queries to be processed simultaneously, especially for large datasets. Optimize memory usage by tuning the vector storage size and using compressed embeddings where possible. To further enhance query speed, implement pre-filtering techniques to narrow down search space before querying. Regularly rebuild indexes to ensure they are up to date with any new data. Fine-tune vectorization models to reduce dimensionality without sacrificing accuracy, thus improving both storage efficiency and retrieval times. Finally, manage resource allocation carefully, utilizing horizontal scaling for larger datasets and offloading intensive operations to dedicated processing units to maintain responsiveness during high-traffic periods.
Cohere Command optimization tips
To optimize Cohere Command in a RAG setup, fine-tune parameters like temperature
(lower for factual accuracy, higher for creativity) and top_p
(narrow for precision). Use concise, structured input by chunking retrieved documents to fit context limits, and prepend clear instructions (e.g., "Answer using only the context"). Leverage Cohere’s built-in reranking to prioritize relevant passages. Regularly evaluate output quality with metrics like answer relevance and hallucination rates, and iteratively refine prompts and retrieval logic based on feedback.
AmazonBedrock Cohere Embed-English-v3 optimization tips
To optimize Cohere Embed-English-v3 in RAG, preprocess input text by removing redundant whitespace, normalizing casing, and filtering low-relevance content to reduce noise. Use batch embedding generation for bulk documents to minimize API calls and latency. Adjust the input_type
parameter (e.g., "document"
or "query"
) to align with use cases for context-aware embeddings. Experiment with chunk sizes (e.g., 256-512 tokens) to balance semantic capture and computational efficiency. Cache frequent or static embeddings to avoid reprocessing. Monitor embedding quality via cosine similarity checks and fine-tune retrieval thresholds for your dataset.
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 reaching the end of this tutorial! By now, you should feel truly excited about the powerful RAG (Retrieval-Augmented Generation) system you've just learned to build using an incredible blend of technologies. You’ve seen how the framework, represented by LlamaIndex, sets the foundation for seamless integration between a vector database powered by Pgvector, the high-performance LLM from Amazon Bedrock, and the versatile embedding model Cohere Command. Each component plays a distinct role — with the embedding model transforming your data into actionable insights, the vector database ensuring quick access to relevant information, and the LLM crafting coherent and contextually rich responses. This synergy not only enhances the efficiency of your applications but opens up new avenues for innovation.
In addition to building the core elements of your RAG pipeline, this tutorial provided some valuable optimization tips to help you get the most out of your system. And don’t forget the handy RAG cost calculator! It’s a fantastic tool to monitor your expenses while leveraging these cutting-edge technologies. So now, as you embark on this new journey, think about the creative applications you could develop. Whether it’s improving customer support, creating intelligent chatbots, or optimizing data retrieval processes, the possibilities are boundless! So dive in, start building, optimizing, and innovating your own RAG solutions today — the world is waiting for your unique contributions!
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!
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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 Cohere Command
- Step 3: Install and Set Up AmazonBedrock cohere embed-english-v3
- Step 4: Install and Set Up Pgvector
- 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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