You will get AI chatbots and RAG agents with LangChain, OpenAI, Pinecone, Hugging face
Rising Talent

Project details
Are you looking to build a powerful AI chatbot that can answer questions using your own documents or knowledge base? I specialize in building RAG (Retrieval-Augmented Generation) agents and intelligent chatbots using:
LangChain for dynamic LLM pipelines
OpenAI GPT-4/GPT-3.5 for high-quality natural language responses
Pinecone as a fast and scalable vector database
Hugging Face models (optional open-source LLMs and embeddings)
What I Offer:
Custom chatbot trained on your PDFs, website, Notion, or other content
End-to-end RAG pipeline using LangChain (context retrieval + response)
Embedding generation using OpenAI or Hugging Face
Vector storage & search with Pinecone
Frontend chat interface (React, Streamlit, or simple UI)
Source references & fallback answers
Optional: Voice input, chat history (memory), or multilingual support
Use Cases:
Internal knowledge assistants
AI-powered customer support
Research assistants
Legal, medical, or academic Q&A bots
Company or product-specific chatbots
Let’s bring your AI assistant idea to life. Message me to get started with a fully functional, smart, and context-aware chatbot system
LangChain for dynamic LLM pipelines
OpenAI GPT-4/GPT-3.5 for high-quality natural language responses
Pinecone as a fast and scalable vector database
Hugging Face models (optional open-source LLMs and embeddings)
What I Offer:
Custom chatbot trained on your PDFs, website, Notion, or other content
End-to-end RAG pipeline using LangChain (context retrieval + response)
Embedding generation using OpenAI or Hugging Face
Vector storage & search with Pinecone
Frontend chat interface (React, Streamlit, or simple UI)
Source references & fallback answers
Optional: Voice input, chat history (memory), or multilingual support
Use Cases:
Internal knowledge assistants
AI-powered customer support
Research assistants
Legal, medical, or academic Q&A bots
Company or product-specific chatbots
Let’s bring your AI assistant idea to life. Message me to get started with a fully functional, smart, and context-aware chatbot system
Machine Learning Tools
Accord.NET Framework, AnyLogic, Apache Mahout, Azure Machine Learning, ChatGPT, Cloudera, deeplearn.js, Google AutoML, GPT-3, Microsoft Excel, Microsoft Power BI, Open Neural Network Exchange, SAS, Scrapy, SQL, Tableau, TextBlob, Vertex AIWhat's included
| Service Tiers |
Starter
$100
|
Standard
$250
|
Advanced
$450
|
|---|---|---|---|
| Delivery Time | 3 days | 5 days | 7 days |
Number of Revisions | 0 | 0 | 0 |
Model Validation/Testing | - | - | - |
Model Documentation | - | - | - |
Data Source Connectivity | - | - | - |
Source Code | - | - | - |
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JT
Jesse T.
Apr 28, 2026
N8n flows for guru seo
MB
Murtaza B.
Mar 23, 2025
A4 Booklet Creation
Good work overall.
About Maryam
GTM Engineer | HubSpot, Clay & n8n Automation | CRM & Lead Generation
100%
Job Success
Akure, Nigeria - 12:46 pm local time
If you're facing:
* Inconsistent or low-quality leads
* Manual prospecting and data entry
* Poor CRM structure or messy pipelines
* Disconnected sales and marketing workflows
* Lack of scalable outbound systems
I design automation systems that fix these bottlenecks.
What I build:
* Automated lead generation & enrichment (Clay, scraping, APIs)
* CRM automation & pipeline management (HubSpot and other CRMs)
* Workflow automation (n8n, Zapier, Make)
* Email outreach & marketing automation systems
* Real-time data integration & reporting pipelines
Let’s turn your GTM operations into a predictable lead and revenue engine.
Message me if you want a fully automated system that generates qualified leads consistently.
Steps for completing your project
After purchasing the project, send requirements so Maryam can start the project.
Delivery time starts when Maryam receives requirements from you.
Maryam works on your project following the steps below.
Revisions may occur after the delivery date.
Step 1
I will get started with the project when the requirement is submitted and deliver before the deadline