Close Menu
    DevStackTipsDevStackTips
    • Home
    • News & Updates
      1. Tech & Work
      2. View All

      Sunshine And March Vibes (2025 Wallpapers Edition)

      June 2, 2025

      The Case For Minimal WordPress Setups: A Contrarian View On Theme Frameworks

      June 2, 2025

      How To Fix Largest Contentful Paint Issues With Subpart Analysis

      June 2, 2025

      How To Prevent WordPress SQL Injection Attacks

      June 2, 2025

      How Red Hat just quietly, radically transformed enterprise server Linux

      June 2, 2025

      OpenAI wants ChatGPT to be your ‘super assistant’ – what that means

      June 2, 2025

      The best Linux VPNs of 2025: Expert tested and reviewed

      June 2, 2025

      One of my favorite gaming PCs is 60% off right now

      June 2, 2025
    • Development
      1. Algorithms & Data Structures
      2. Artificial Intelligence
      3. Back-End Development
      4. Databases
      5. Front-End Development
      6. Libraries & Frameworks
      7. Machine Learning
      8. Security
      9. Software Engineering
      10. Tools & IDEs
      11. Web Design
      12. Web Development
      13. Web Security
      14. Programming Languages
        • PHP
        • JavaScript
      Featured

      `document.currentScript` is more useful than I thought.

      June 2, 2025
      Recent

      `document.currentScript` is more useful than I thought.

      June 2, 2025

      Adobe Sensei and GenAI in Practice for Enterprise CMS

      June 2, 2025

      Over The Air Updates for React Native Apps

      June 2, 2025
    • Operating Systems
      1. Windows
      2. Linux
      3. macOS
      Featured

      You can now open ChatGPT on Windows 11 with Win+C (if you change the Settings)

      June 2, 2025
      Recent

      You can now open ChatGPT on Windows 11 with Win+C (if you change the Settings)

      June 2, 2025

      Microsoft says Copilot can use location to change Outlook’s UI on Android

      June 2, 2025

      TempoMail — Command Line Temporary Email in Linux

      June 2, 2025
    • Learning Resources
      • Books
      • Cheatsheets
      • Tutorials & Guides
    Home»Development»Machine Learning»A Code Implementation to Use Ollama through Google Colab and Building a Local RAG Pipeline on Using DeepSeek-R1 1.5B through Ollama, LangChain, FAISS, and ChromaDB for Q&A

    A Code Implementation to Use Ollama through Google Colab and Building a Local RAG Pipeline on Using DeepSeek-R1 1.5B through Ollama, LangChain, FAISS, and ChromaDB for Q&A

    April 8, 2025
    A Code Implementation to Use Ollama through Google Colab and Building a Local RAG Pipeline on Using DeepSeek-R1 1.5B through Ollama, LangChain, FAISS, and ChromaDB for Q&A

    In this tutorial, we’ll build a fully functional Retrieval-Augmented Generation (RAG) pipeline using open-source tools that run seamlessly on Google Colab. First, we will look into how to set up Ollama and use models through Colab. Integrating the DeepSeek-R1 1.5B large language model served through Ollama, the modular orchestration of LangChain, and the high-performance ChromaDB vector store allows users to query real-time information extracted from uploaded PDFs. With a combination of local language model reasoning and retrieval of factual data from PDF documents, the pipeline demonstrates a powerful, private, and cost-effective alternative.

    Copy CodeCopiedUse a different Browser
    !pip install colab-xterm
    %load_ext colabxterm

    We use the colab-xterm extension to enable terminal access directly within the Colab environment. By installing it with !pip install collab and loading it via %load_ext colabxterm, users can open an interactive terminal window inside Colab, making it easier to run commands like llama serve or monitor local processes.

    Copy CodeCopiedUse a different Browser
    %xterm

    The %xterm magic command is used after loading the collab extension to launch an interactive terminal window within the Colab notebook interface. This allows users to execute shell commands in real time, just like a regular terminal, making it especially useful for running background services like llama serve, managing files, or debugging system-level operations without leaving the notebook.

    Here, we install ollama using curl https://ollama.ai/install.sh | sh.

    Then, we start the ollama using ollama serve.

    At last, we download the DeepSeek-R1:1.5B through ollama locally that can be utilized for building the RAG pipeline.

    Copy CodeCopiedUse a different Browser
    !pip install langchain langchain-community sentence-transformers chromadb faiss-cpu

    To set up the core components of the RAG pipeline, we install essential libraries, including langchain, langchain-community, sentence-transformers, chromadb, and faiss-cpu. These packages enable document processing, embedding, vector storage, and retrieval functionalities required to build an efficient and modular local RAG system.

    Copy CodeCopiedUse a different Browser
    from langchain_community.document_loaders import PyPDFLoader
    from langchain.text_splitter import RecursiveCharacterTextSplitter
    from langchain_community.vectorstores import Chroma
    from langchain_community.embeddings import HuggingFaceEmbeddings
    from langchain_community.llms import Ollama
    from langchain.chains import RetrievalQA
    from google.colab import files
    import os
    from langchain_core.prompts import ChatPromptTemplate
    from langchain_ollama.llms import OllamaLLM

    We import key modules from the langchain-community and langchain-ollama libraries to handle PDF loading, text splitting, embedding generation, vector storage with Chroma, and LLM integration via Ollama. It also includes Colab’s file upload utility and prompt templates, enabling a seamless flow from document ingestion to query answering using a locally hosted model.

    Copy CodeCopiedUse a different Browser
    print("Please upload your PDF file...")
    uploaded = files.upload()
    
    
    file_path = list(uploaded.keys())[0]
    print(f"File '{file_path}' successfully uploaded.")
    
    
    if not file_path.lower().endswith('.pdf'):
        print("Warning: Uploaded file is not a PDF. This may cause issues.")

    To allow users to add their knowledge sources, we prompt for a PDF upload using google.colab.files.upload(). It verifies the uploaded file type and provides feedback, ensuring that only PDFs are processed for further embedding and retrieval.

    Copy CodeCopiedUse a different Browser
    !pip install pypdf
    import pypdf
    loader = PyPDFLoader(file_path)
    documents = loader.load()
    print(f"Successfully loaded {len(documents)} pages from PDF")

    To extract content from the uploaded PDF, we install the pypdf library and use PyPDFLoader from LangChain to load the document. This process converts each page of the PDF into a structured format, enabling downstream tasks like text splitting and embedding.

    Hostinger
    Copy CodeCopiedUse a different Browser
    text_splitter = RecursiveCharacterTextSplitter(
        chunk_size=1000,
        chunk_overlap=200
    )
    chunks = text_splitter.split_documents(documents)
    print(f"Split documents into {len(chunks)} chunks")

    The loaded PDF is split into manageable chunks using RecursiveCharacterTextSplitter, with each chunk sized at 1000 characters and a 200-character overlap. This ensures better context retention across chunks, which improves the relevance of retrieved passages during question answering.

    Copy CodeCopiedUse a different Browser
    embeddings = HuggingFaceEmbeddings(
        model_name="all-MiniLM-L6-v2",
        model_kwargs={'device': 'cpu'}
    )
    
    
    persist_directory = "./chroma_db"
    
    
    vectorstore = Chroma.from_documents(
        documents=chunks,
        embedding=embeddings,
        persist_directory=persist_directory
    )
    
    
    vectorstore.persist()
    print(f"Vector store created and persisted to {persist_directory}")

    The text chunks are embedded using the all-MiniLM-L6-v2 model from sentence-transformers, running on CPU to enable semantic search. These embeddings are then stored in a persistent ChromaDB vector store, allowing efficient similarity-based retrieval across sessions.

    Copy CodeCopiedUse a different Browser
    llm = OllamaLLM(model="deepseek-r1:1.5b")
    retriever = vectorstore.as_retriever(
        search_type="similarity",
        search_kwargs={"k": 3}  
    )
    
    
    qa_chain = RetrievalQA.from_chain_type(
        llm=llm,
        chain_type="stuff",  
        retriever=retriever,
        return_source_documents=True  
    )
    
    
    print("RAG pipeline created successfully!")

    The RAG pipeline is finalized by connecting the local DeepSeek-R1 model (via OllamaLLM) with the Chroma-based retriever. Using LangChain’s RetrievalQA chain with a “stuff” strategy, the model retrieves the top 3 most relevant chunks to a query and generates context-aware answers, completing the local RAG setup.

    Copy CodeCopiedUse a different Browser
    def query_rag(question):
        result = qa_chain({"query": question})
       
        print("nQuestion:", question)
        print("nAnswer:", result["result"])
       
        print("nSources:")
        for i, doc in enumerate(result["source_documents"]):
            print(f"Source {i+1}:n{doc.page_content[:200]}...n")
       
        return result
    
    
    question = "What is the main topic of this document?"  
    result = query_rag(question)
    

    To test the RAG pipeline, a query_rag function takes a user question, retrieves relevant context using the retriever, and generates an answer using the LLM. It also displays the top source documents, providing transparency and traceability for the model’s response.

    In conclusion, this tutorial combines ollama, the retrieval power of ChromaDB, the orchestration capabilities of LangChain, and the reasoning abilities of DeepSeek-R1 via Ollama. It showcased building a lightweight yet powerful RAG system that runs efficiently on Google Colab’s free tier. The solution enables users to ask questions grounded in up-to-date content from uploaded documents, with answers generated through a local LLM. This architecture provides a foundation for building scalable, customizable, and privacy-friendly AI assistants without incurring cloud costs or compromising performance.


    Here is the Colab Notebook. Also, don’t forget to follow us on Twitter and join our Telegram Channel and LinkedIn Group. Don’t Forget to join our 85k+ ML SubReddit.

    🔥 [Register Now] miniCON Virtual Conference on OPEN SOURCE AI: FREE REGISTRATION + Certificate of Attendance + 3 Hour Short Event (April 12, 9 am- 12 pm PST) + Hands on Workshop [Sponsored]

    The post A Code Implementation to Use Ollama through Google Colab and Building a Local RAG Pipeline on Using DeepSeek-R1 1.5B through Ollama, LangChain, FAISS, and ChromaDB for Q&A appeared first on MarkTechPost.

    Source: Read More 

    Hostinger
    Facebook Twitter Reddit Email Copy Link
    Previous ArticleBuilding a Fully-Featured 3D World in the Browser with Blender and Three.js
    Next Article This AI Paper Introduces Inference-Time Scaling Techniques: Microsoft’s Deep Evaluation of Reasoning Models on Complex Tasks

    Related Posts

    Machine Learning

    How to Evaluate Jailbreak Methods: A Case Study with the StrongREJECT Benchmark

    June 2, 2025
    Machine Learning

    MiMo-VL-7B: A Powerful Vision-Language Model to Enhance General Visual Understanding and Multimodal Reasoning

    June 2, 2025
    Leave A Reply Cancel Reply

    Hostinger

    Continue Reading

    CVE-2025-4721 – iSourcecode Placement Management System SQL Injection

    Common Vulnerabilities and Exposures (CVEs)

    CVE-2025-49069 – Cimatti Consulting Contact Forms CSRF

    Common Vulnerabilities and Exposures (CVEs)

    CL Duplicate Remover

    Development

    CVE-2022-44618 – Apache HTTP Server Remote Code Execution Vulnerability

    Common Vulnerabilities and Exposures (CVEs)

    Highlights

    Rickrack – color palette generator

    December 16, 2024

    Rickrack (Real-time Color Kit) is a user-friendly color editor. It is designed to generate a…

    Classic Outlook finally receives Copilot

    June 12, 2024

    Rilasciato KDE Frameworks 6.10: Nuove Funzionalità e Miglioramenti per Sviluppatori e Utenti

    January 10, 2025

    Towards Robust Evaluation: A Comprehensive Taxonomy of Datasets and Metrics for Open Domain Question Answering in the Era of Large Language Models

    July 8, 2024
    © DevStackTips 2025. All rights reserved.
    • Contact
    • Privacy Policy

    Type above and press Enter to search. Press Esc to cancel.