AI/ML Engineer Needed for Production RAG Chatbot and Workflow Automation System
Buget: $25.0 - $30.0
HOURLY / FULL_TIME
⭐ 5.00 (1)
PAK
We are looking for an experienced AI/ML Engineer to help us build a production-
ready AI assistant for our customer support and internal operations team.
We have a growing knowledge base made up of support tickets, PDFs, SOPs,
website content, customer documents, and internal training material. We want to
build an AI assistant that can answer questions accurately, provide source
references, summarize customer issues, and help our team reduce manual work.
This is not a simple ChatGPT wrapper. We need someone who has real experience
building AI chatbots, RAG pipelines, LangChain workflows, vector search, API
integrations, and production AI systems.
What we need:
Build a custom AI chatbot using LLMs and RAG
Connect the chatbot with documents, PDFs, website content, and internal
knowledge base
Implement vector search using Pinecone, Chroma, FAISS, pgvector, or
similar
Add source citations and confidence handling for answers
Build backend APIs using Python, FastAPI, or Django
Create workflows for ticket summarization, document Q&A, and customer
routing
Add prompt templates, fallback logic, guardrails, and conversation history
Deploy the system on AWS, Azure, or GCP
Set up logging, monitoring, and basic performance tracking
Optionally build a simple admin dashboard for uploads and knowledge
base management
Required skills:
Python
FastAPI or Django
LangChain or LlamaIndex
OpenAI API, Claude, Gemini, or similar LLMs
RAG and vector databases
NLP and document processing
API integration
Cloud deployment
Production AI system experience
Nice to have:
Experience with customer support automation
Experience with insurance, healthcare, SaaS, or contact center workflows
Experience building AI agents or automated business workflows
Experience with speech recognition, recommendation systems, or ML
pipelines
Ideal freelancer:
We want someone who can think beyond the model and help us design the full
system properly. You should be able to explain the architecture, identify risks
early, communicate clearly, and provide regular updates.
Please include:
1. Examples of AI chatbots, RAG systems, or LangChain projects you have
built
2. Your suggested architecture for this project
3. Which vector database and LLM stack you recommend
4. Estimated timeline for an MVP
5. Any risks we should consider before development
I try to read every proposal and will choose the best.
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