AI Chatbot Development

Custom AI Chatbots Grounded in Your Knowledge,Not the Model's

Off-the-shelf chatbots answer from the LLM’s training data and make up the rest. We build custom AI chatbots grounded in your documents, policies, product data, and ticket history — using RAG on Azure OpenAI, Snowflake Cortex, and open-source models. Deployed inside your tenant where the data stays private, with evaluation, fallback to humans, and monitoring that catches hallucinations before customers do.
Chatbot Development
  • kamedis

  • skandium

  • amg

  • TrueSpot

  • lumesca

  • mash-direct

Where Chatbots Usually Embarrass Their Owners

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Your chatbot confidently answered a customer with a policy that doesn’t exist. You found out in a support escalation.
01
You built a chatbot on ChatGPT. It doesn’t know your product, your pricing, or your return policy — so customers still email support.
02
Every time you update a document, someone has to remember to update the chatbot’s training. They don’t always remember.
03
Customer data flows through a third-party LLM API. Your compliance team hasn’t signed off.
04
The chatbot answers the easy questions. The hard ones get a “let me connect you with support” loop the customer can’t escape.
05

Where Are You Starting From?

Customer-support chatbot grounded in our help center and policies
Customer Support Chatbot
Internal knowledge bot for employees across SharePoint, Confluence, wikis
Internal Knowledge Bot
Sales / product chatbot for the website
Website Conversational AI
HR or IT self-service chatbot for employees
HR / IT Service Desk Bot
Existing chatbot hallucinating or losing context — need a rebuild
RAG Re-Architecture
Need to deploy in Microsoft Copilot Studio for Microsoft-heavy stack
Copilot Studio Build
Regulated industry — chatbot must stay in our tenant
In-Tenant Chatbot
Multilingual chatbot across customer languages
Multilingual Chatbot
What can I help with ?

    What Changes After We Engage

    Six scenarios the buyer can picture.

    Answers cite the source document

    A customer asks about the return policy. The chatbot answers accurately and links to the exact policy page. If the customer disputes the answer, you have the source citation — not a guess.

    Your documents update, the chatbot updates

    Your product team edits the user guide on Monday. The chatbot reflects it by Tuesday because the retrieval index refreshes automatically. Nobody has to remember to retrain.

    Hallucinations get caught before customers see them

    The evaluation pipeline scores every answer type against ground truth weekly. Drift triggers an alert. Known-bad answer patterns get added to the test set so they can't come back.

    Handoff to humans is smooth, not a loop

    The chatbot escalates to support with full conversation context, customer identity, and the exact question. The agent picks up where the bot left off — no "can you repeat the issue for me."

    Customer data stays in your tenant

    The LLM call runs on Azure OpenAI inside your Azure subscription. Customer messages don't leave your environment. Compliance signs off once and the deployment stays compliant.

    Support deflection is measurable

    Your dashboard shows the number of conversations resolved by the bot, the handoff rate, customer satisfaction on bot-handled tickets, and the $ value of hours saved. Real numbers, not "AI-powered engagement."

    How We Engage

    1

    Scope, source, and ground
    We identify the documents and data the chatbot will ground in (SharePoint, Confluence, Zendesk, product docs, CRM), agree conversation scope and handoff points, pick the LLM and retrieval stack for your tenancy and compliance needs.

    2

    Build with evaluation from day one
    Retrieval pipeline, prompt engineering, citation rendering, human-handoff logic, content safety filters, and an evaluation suite with ground-truth test cases — all wired in before the chatbot sees a real customer.

    3

    Deploy and operate
    Deploy into your chosen channels (web, Teams, Slack, WhatsApp, Zendesk), run evaluation weekly, tune prompts and retrieval on real data, and monitor deflection rate and handoff quality on an ongoing basis.

    Ship an Chatbot That Answers From Your Documents — Not From Its Training Data

    Book a chatbot scoping call. We’ll map the knowledge sources, pick the RAG and LLM stack for your tenancy, and come back with a build plan that gets a grounded, evaluated chatbot live in weeks.
    Round Shape

    Frameworks & References

    LLMs
    RAG & Retrieval
    Microsoft Bot Ecosystem
    Deployment Channels
    Evaluation & Safety

    What Clients Say About Working With Exillar

    Excellent work as always by Umair and team. Umair and team continue to provide excellent work product. Highly recommend, responsive and attention to detail. Umair + Exillar team continue to impress and innovate as business needs evolve

    D&K

    D&K | United States

    Thanks for the project. If you are an Executive, you need a PowerBI dashboard. Great working with the team. Many ongoing projects with Umair. Great person to work with.

    Growloup

    Royal Stone | Canada

    These guys are true professionals, they helped me improve the idea of ​​the work I wanted to develop, very kind and prepared. We will definitely do more work together. second work and I’m very statisfied

    willybesmart

    Willybesmart | United States

    The guys were great to work with, very fast to reply and have a deep understanding of PowerBI. This become a learning experience for me as they shared best practices for PowerBI.

    Darcy

    Darcy | United Kingdom

    Thanks for the exceptional work!

    Hans

    Industry MC | United States

    It was a great experience.

    Miguel

    Truespot | United States

    Umair handled my problem timely and efficiently. He is easy to collaborate with and I will be using him again.

    Travis

    United States

    Super good explanation, patience and a good sense of indagatory about the data, sources, etc. The solutions suggested were very safisfactory.

    Raul Rodriguez/F&K

    Chile

    It is always a pleasure to work with Umair and count on his skills to assist us. I highly recommend him. He has excellent communication skills, which makes my life much easier when conveying out needs to a plan, and executing it.

    Alex

    Austria

    Honestly, this has been an outstanding experience from start to finish.The team went far beyond my expectations — not only did they understand a very complex real-world operation, but they were also able to translate it into a functional and well-structured system.

    Latamsa

    Folding Production Control System | Mexico

    Working with Exillar has been amazing. Bhavisha has has gone above and beyond to get us what we need. Very pleased. ~Sherwin

    Loudermilk Homes

    Website development | USA

    It is always a pleasure to work with Umair and his team. Rock start service!

    Alex

    United Kingdom

    Industries We've Worked In

    Retail & E-Commerce
    Healthcare
    Finance & Banking
    Real Estate & Construction
    IoT & Technology
    Manufacturing & Industrial

    Retail & E-Commerce

    Customer analytics, inventory forecasting, and analytics engines that reduce churn and increase basket size.

    Healthcare

    Patient data platforms, clinical reporting, and HIPAA-compliant analytics environments for providers and health-tech.

    Finance & Banking

    Real-time transaction analytics, fraud detection, regulatory reporting, and risk dashboards.

    Real Estate & Construction

    Project data consolidation, budget tracking dashboards, and supply chain analytics across multi-site operations.

    IoT & Technology

    High-volume device data ingestion, stream processing, and analytics platforms for connected product companies.

    Manufacturing & Industrial

    Operational analytics, quality control monitoring, and supply chain visibility platforms.

    Got Questions?

    How do you stop a chatbot from hallucinating?
    Grounding first — retrieval-augmented generation pulls from your actual documents, so the answer has a source. System prompts constrain tone and scope. Evaluation suites test known failure cases every release. Content safety filters catch unsafe output. It’s layered; no single control is enough.
    Yes. Azure OpenAI and Snowflake Cortex run in your tenant. Self-hosted Llama or Mistral runs in your VPC. Customer text never hits a third-party API unless you explicitly choose that. Compliance signs off once on the architecture.
    Copilot Studio is fastest when you’re Microsoft-heavy and need a bot in Teams with minimal code. Azure OpenAI + custom orchestration is right when you need tighter control over RAG, tooling, or non-Microsoft channels. We run a scored comparison before recommending.
    Deflection rate (tickets the bot resolved), handoff quality (satisfaction when escalating), ground-truth accuracy (evaluated weekly against test cases), and cost per resolved conversation. All four are baselined at launch and tracked monthly.