Home / Services / AI Integration
AI Integration & Development

AI Integration — Add AI Features to Your App or Build AI-Native Products.

We add LLM-powered features to existing products and build AI-native apps from scratch. Using GPT-4, Claude, Gemini, and open-source models — integrated into your stack, ready for real users.

See How It Works →
20+
AI Features Shipped
GPT-4 · Claude · Gemini
LLMs We Work With
4–8 Weeks
to First AI Feature Live
AI
AI Assistant
RAG · GPT-4o
Online

What's our refund policy for annual subscriptions?

AI

Based on your knowledge base: annual subscribers are eligible for a pro-rated refund within 30 days of purchase. After 30 days, no refunds are issued but the plan remains active until renewal. 📄

Source: policy-v3.pdf
AI
Model
GPT-4o ✓ Claude 3.5 Gemini Pro Llama 3
99.2%
Accuracy
<1.2s
Response
RAG
Grounded
🚀
20+
AI Features Shipped
⚡
4+
LLM Providers Used
🌍
10+
Countries Served
🛠️
4-8
Weeks to First AI Feature
✅
98%
Client Retention

AI Features We Build

From adding a single AI feature to building a fully AI-native product

MOST POPULAR
💬
RAG System

AI Chatbots & Assistants

LLM-powered chatbots trained on your docs, product knowledge base, and support history. Accurate answers — not hallucinations.

Tech Stack:

LangChain Pinecone GPT-4o

What You Get:

  • Trained on your data (RAG)
  • Human escalation fallback
  • CRM / helpdesk integration
Feature Add-on

AI-Powered App Features

Smart summaries, AI writing assistants, auto-tagging, content generation, and intelligent recommendations wired into your existing app.

Tech Stack:

OpenAI API Claude API Node.js

What You Get:

  • Plug into your existing stack
  • Prompt engineering layer
  • Cost-optimised API usage
🔍
Semantic Search

AI-Powered Search

Replace keyword search with semantic search using vector embeddings. Users find what they mean, not just what they type.

Tech Stack:

pgvector Embeddings Pinecone

What You Get:

  • Intent-aware search results
  • Filters + ranking control
  • Integrates with existing DB
⚙️
Automation

AI Workflow Automation

Automate repetitive tasks using AI agents — document processing, email triage, data extraction, report generation, and classification pipelines.

Tech Stack:

LangChain n8n AWS Lambda

What You Get:

  • End-to-end automation flows
  • Human-in-the-loop triggers
  • Audit trail & monitoring
🚀
AI-Native

AI-Native SaaS Products

Build a product where AI is the core feature — not a bolt-on. Writing tools, research assistants, document analysers, and custom AI applications.

Tech Stack:

Next.js LlamaIndex PostgreSQL

What You Get:

  • Full SaaS with billing
  • AI as the core differentiator
  • Investor-ready architecture
🧠
Custom Models

Fine-Tuning & Custom ML

Fine-tune open-source LLMs on your data for domain-specific accuracy, or train custom ML models for classification, prediction, and anomaly detection.

Tech Stack:

Llama 3 HuggingFace AWS SageMaker

What You Get:

  • Domain-specific accuracy
  • On-premise deployable
  • No API cost per query

Complete AI Tech Stack

LLMs & Models

  • OpenAI GPT-4o / GPT-4
  • Anthropic Claude 3.5
  • Google Gemini Pro
  • Meta Llama 3
  • Mistral / Mixtral

AI Frameworks

  • LangChain
  • LlamaIndex
  • Vercel AI SDK
  • Hugging Face Transformers
  • Instructor (structured output)

Vector & Data

  • Pinecone
  • pgvector (PostgreSQL)
  • Weaviate
  • OpenAI Embeddings
  • Cohere Embeddings

Cloud & Infra

  • AWS SageMaker
  • AWS Lambda / EC2
  • Google Cloud Vertex AI
  • Azure OpenAI (private)
  • Ollama (on-premise)

Which LLM Is Right for Your Use Case?

We recommend the right model after understanding your requirements

Criteria GPT-4o Claude 3.5 Gemini Pro Llama 3 (OSS)
General Tasks Excellent Excellent Good Good
Long Documents Good Best (200k ctx) Good Limited
Coding Excellent Excellent Good Good
Multimodal (Vision) Yes Yes Best Limited
Privacy / On-Premise API only API only API only Self-hosted
API Cost Medium Medium Low Free (self-hosted)
Best For Most products Docs, writing, coding Vision + search Private / cost-sensitive

AI Use Cases We've Shipped

Real AI features for real products across industries

⚕️

Healthcare

Clinical note summarisation, symptom triage chatbots, patient intake automation, and HIPAA-compliant document processing.

See Case Study →
💰

Fintech

Transaction anomaly detection, AI-powered financial report generation, KYC document extraction, and fraud classification models.

See Case Study →
📚

EdTech

AI tutors, personalised learning path generation, essay grading assistants, and course content summarisation tools.

See Case Study →
🛍️

Ecommerce

AI-powered product descriptions, semantic product search, personalised recommendations, and review sentiment analysis.

See Case Study →
📊

SaaS & B2B

AI writing assistants inside SaaS tools, smart data insights, automated reporting, and internal knowledge base chatbots.

See Case Study →
📣

Marketing & Content

AI content generation platforms, SEO brief writers, ad copy generators, and brand voice fine-tuned writing assistants.

See Case Study →

Our AI Integration Process

From idea to AI feature in production — responsibly

1

Discovery

Understand the use case, data available, user expectations, and cost/latency constraints.

2

Model & Architecture

Select LLM, design prompt architecture, plan RAG pipeline or fine-tuning approach.

3

Build & Integrate

Build the AI layer, integrate with your existing backend, deploy to staging with real data.

4

Eval & Guardrails

Evaluate output quality, add hallucination guards, set fallback flows, and tune prompts.

5

Launch & Monitor

Go live, monitor latency + cost + quality, iterate on prompts and model version.

How to Work With Vxplore

Choose the model that fits your AI ambition

AI Feature Add-On

Add one or two AI features to your existing product. Fixed scope, fast delivery. Ideal for testing AI value before committing.

$3K–$10K

One-time project cost

  • 1–2 AI features scoped
  • Integrates with existing stack
  • 4–6 week delivery
  • Prompt engineering included
POPULAR

AI Product Build

Build a full AI-native product or a comprehensive AI layer across your platform. Includes architecture, RAG, and deployment.

$15K–$40K

Full AI product scope

  • Full AI architecture design
  • RAG pipeline + vector DB
  • Guardrails & eval framework
  • Cost & latency optimisation

AI Retainer

Ongoing AI development — iterating on prompts, adding features, monitoring quality, and keeping up with fast-moving LLM releases.

$2K–$8K

per month

  • Prompt & model iteration
  • Quality monitoring & evals
  • New AI feature sprints
  • LLM upgrade management

Why Choose Vxplore for AI Integration

What sets our AI engineering apart

🛡️

Guardrails Built In

We don't ship AI features that hallucinate freely. Every AI feature has output validation, confidence scoring, and fallback flows before it reaches users.

💸

Cost-Optimised by Design

LLM API costs can spiral. We implement caching, prompt compression, model routing (cheap model for simple queries, expensive for complex), and token budgets.

🔒

Privacy-First Architecture

PII stripped before LLM calls, on-premise options available with Llama, and GDPR-conscious data handling. We understand compliance requirements for AI.

📊

Evaluation Framework

We build evals from day one — automated test suites that score AI output quality, catch regressions when prompts change, and measure improvement over time.

🚀

We Ship AI Products Ourselves

Our own products — ClinikPe and PagarAI — use AI features we built and run in production. We know what works, what fails, and what costs too much.

🤝

Model-Agnostic Advice

We're not tied to any LLM provider. We recommend the right model for your needs — which means sometimes telling you not to use GPT-4 when a cheaper model does the job.

Common Questions

Everything you need to know about AI integration — FAQ

Answers to the questions we get asked most often before a project starts.

What AI technologies does Vxplore use?

We work with OpenAI GPT-4o, Anthropic Claude 3.5, Google Gemini, and open-source models (Llama 3, Mistral). For orchestration: Lang Chain and Llama Index. For vector search: Pinecone and pgvector.

Can you add AI features to my existing product?

Yes — this is our most common engagement. We integrate LLM APIs, build the prompt engineering layer, add vector search for RAG, and wire it into your existing backend without a full rebuild.

What is a RAG system and do I need one?

RAG (Retrieval-Augmented Generation) lets an LLM answer questions using your own data — documents, databases, knowledge bases. If you want an AI assistant that knows your product specifically, you need RAG.

How do you prevent AI hallucinations?

We use RAG to ground responses in factual data, output validation layers, confidence scoring, fallback flows for low-confidence answers, and human review triggers for high-stakes decisions.

Which AI model should I use — GPT-4, Claude, or Gemini?

GPT-4o for most general tasks. Claude for long documents and nuanced writing. Gemini for multimodal (vision + text). Open-source (Llama, Mistral) when privacy, on-premise, or cost is the priority. We recommend after scoping.

Can you build a custom AI chatbot for my website?

Yes. We build AI chatbots trained on your product docs, knowledge base, and support history using RAG. Accurate answers, human escalation built in, and integration with your existing helpdesk or CRM.

How do you handle data privacy with LLMs?

We never send sensitive user data to public LLMs without DPAs. We use PII stripping before API calls, support on-premise deployment with open-source models, and advise on GDPR/HIPAA requirements for your use case.

How much does AI integration cost?

A basic AI feature (chatbot, summarization, classification) starts from $3,000–$8,000. A full RAG system with chat UI ranges $8,000–$20,000. A custom AI-native SaaS product ranges $20,000–$60,000+. Plus ongoing LLM API costs based on usage.

Ready to Build?

Let's Add AI to Your Product.

Tell us what you want AI to do. We'll come back with an architecture recommendation and quote within 48 hours.

Fast Proposal Model-Agnostic Guardrails Included Post-Launch Support
Scroll to Top