Vapi + KrosAI: Deploying Conversational AI to Emerging Markets

Vapi + KrosAI: Deploying Conversational AI to Emerging Markets
Learn how Vapi and KrosAI work together to deploy low-latency conversational AI voice agents with real phone numbers across Africa and other emerging markets.

Conversational AI has reached a turning point.

With modern LLMs and voice models, it’s now possible to build AI agents that can hold real conversations over the phone. Handling tasks like support calls, booking appointments, and even sales outreach is where we are now.

But deploying these agents in emerging markets introduces a new set of challenges:

  • Local phone number availability
  • Latency across fragmented telecom networks
  • Reliable call routing and transcription
  • Infrastructure that wasn’t designed for AI

This is where the combination of Vapi and KrosAI becomes powerful.

Together, they make it possible to deploy production-ready conversational AI voice agents across Africa and other emerging markets.

The Problem: Great AI, Broken Deployment

Many teams start with a strong conversational AI stack:

  • An LLM for reasoning
  • A TTS engine for speech
  • ASR for transcription

The AI works perfectly in demos.

Then deployment begins, and things break:

  • Calls fail to connect
  • Latency makes conversations unnatural
  • Local users can’t reach the agent
  • Telephony setup becomes the bottleneck

The issue isn’t the AI. It’s the voice infrastructure.

What Vapi Does Best

Vapi focuses on the AI orchestration layer.

It allows developers to:

  • Build conversational voice agents quickly
  • Connect LLMs, TTS, and ASR
  • Define conversational logic and flows
  • Iterate fast on AI behavior

Vapi is excellent at answering the question:

“How should my AI agent think and speak?”

But on its own, Vapi isn’t responsible for:

  • Local telecom integration
  • Phone number provisioning in Africa
  • WebRTC ↔ SIP conversion
  • Network-level latency optimization

That’s where infrastructure matters.

What KrosAI Solves

KrosAI focuses on the hard parts of voice deployment in emerging markets.

It handles:

  • Connecting AI voice agents to real local phone numbers
  • WebRTC ↔ SIP conversion
  • Low-latency audio routing
  • Real-time call events, recordings, and transcripts
  • Telephony infrastructure across Africa and MENA

KrosAI answers a different question:

“How does this AI agent actually talk to people over the phone?”

Why Vapi + KrosAI Works So Well Together

Vapi and KrosAI are complementary by design.

  • Vapi → the conversational brain
  • KrosAI → the voice and telephony backbone

Together, they enable:

  • Real phone calls, not demos
  • Sub-second conversational latency
  • Local phone numbers users trust
  • Scalable deployment across multiple countries

This separation of concerns keeps systems clean and flexible.

A Typical Deployment Flow

Here’s how a Vapi + KrosAI setup works in practice:

  1. A user dials a local phone number provisioned by KrosAI
  2. KrosAI handles call routing and converts SIP ↔ WebRTC
  3. Audio streams in real time to the Vapi agent
  4. Vapi processes speech, runs LLM logic, and generates responses
  5. Audio responses stream back instantly to the caller
  6. KrosAI provides:
    • Call events
    • Transcripts
    • Recordings
    • Analytics

The result: a natural, real-time AI conversation, even on variable networks.

Vapi + KrosAI works because:

  • The AI layer is flexible
  • The infrastructure is local-first
  • Latency is treated as a core product feature
  • Telecom complexity is abstracted away from developers

Use Cases That Work Especially Well

This combination is ideal for:

  • AI customer support phone agents
  • Appointment booking and reminders
  • Outbound sales and lead qualification
  • After-hours call handling
  • Voice-first products for African users
  • Anywhere voice matters, and reliability is non-negotiable.

Vapi proves that conversational AI can be built quickly and intelligently. KrosAI proves that it can be deployed reliably in the real world.

Together, they make conversational AI practical and useful for Africa and other emerging markets.