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STEP 01

BOOK A DEMO

Schedule a personalised demo to see OmniAgent in action, and discover how our  Al voice technology can transform your customer interactions.

STEP 02

CUSTOMISE AI AGENT

We'll work with you to design a custom voice

Al solution that matches your specific business requirements and customer service goals.

STEP 03

PROOF OF CONCEPT

Experience OmniAgent's capabilities firsthand with a focused proof of concept, demonstrating the power of natural conversations in your specific use case.

STEP 04

SEAMLESSLY SCALE

Deploy OmniAgent across your organisation with our enterprise-grade voice Al platform, delivering natural conversations that adapt and improve over time.

Multiply your productivity with Conversational AI 

Book a free consultation with our Al customer Success experts to discover how you can deliver efficient, high-quality conversations on every channel.

Deploying AI Voice Agents in 30 Days

Customers want to call you on their schedule, in their language, and get instant answers. AI voice agents are more than a help‑line shortcut - they’re a long‑term edge that shrink costs, expand global reach and capture customer insights around the clock. Gartner expects these “agentic” systems to solve 80 % of everyday support questions by 2029 and cut operating costs 30 % [1].

Another study projects US$ 80 billion in annual labour savings by 2026 [2].


Still, many projects stall in endless analysis. Below is a plain‑English, 30‑day plan to move from idea to live pilot.


Why 30 days works

Thirty days (four working weeks) is enough to gather data, create a “minimum lovable” agent and launch a safe pilot—yet short enough to stay focused and avoid scope creep. Companies that run sprints like this are 85 % more likely to get an AI pilot into production, according to a Gartner poll of service leaders [3].



Day 1 – 7 | Define the problem & gather data

Goal

Simple actions

Tangible output

Pick one simple use case

Inbound support, outbound promotion, cart abandonment, survey, reminder calls or something else

A one‑sentence objective

Set success metrics

How many calls should the bot handle? How fast? How happy should customers feel?

A short success memo

Estimate the payoff

Multiply today’s cost‑per‑call by the number you expect the bot to handle. Even small gains add up—72 % of leaders say AI improves service quality and cost at the same time [4].

Rough business case

Write “no‑go” rules

Decide when the call must switch to a person (for example, billing disputes).

One‑page guard‑rail doc



Day 8 – 14 | Choose tools & sketch the call flow

1. Pick a voice platform – Look for low delay (under 300 ms), natural conversational experience, clear voices in your key languages and easy integration with your systems.

2. Write the ideal call – Draft a friendly, step‑by‑step conversation in plain language. Include how the agent should greet, ask follow‑up questions and confirm it understood.

3. List the “intents” – Turn each common request into a label such as check‑order‑status or start‑return—nothing fancy, just names engineers can reference.

4. Identify data look‑ups – Note which systems the agent needs: order management, ticketing, CRM or payment. Make sure you have secure API keys ready. Start with a use case that has minimum integrations necessary, eg answering FAQs.

5. Plan a safety net – If the agent is unsure twice in a row, or if the customer asks to speak with a person, transfer immediately.

6. Define your brand’s tone of voice – Write clear guidelines for how the AI agent should sound (e.g., warm, professional, concise) to ensure every conversation stays on brand and consistent across all interactions.



Day 15 – 21 | Build & test

1. Set up a dedicated team of 2–3 people to make daily test calls to the AI agent.

2. During each call, carefully note any misunderstandings, pronunciation issues, or other problems encountered.

3. Feed these findings back into the system to improve the agent’s responses and robustness.

4. Update the agent’s guidelines and internal knowledge base as new issues or best practices are discovered.

5. Repeat this process daily to drive rapid improvement—early projects often see error rates drop by half after the first 50 tweaks.



Day 22 – 26 | Run a small pilot

Call volume

What to watch

Pass mark

10 % at quiet times

How often the bot understands the question

85 % or better

25 % mixed hours

First‑call resolution (solved without a human)

70 % or better

50 % peak hour

Transfers to a person

30 % or lower

If it's an outbound agent, start with a small pool of customers to be contacted and increase gradually over the week.



Day 27 – 30 | Fine-tune the agent

1. Morning review – Scan the previous day’s calls for issues and make necessary changes to fine-tune the AI agent.

2. Dashboard set‑up – Track calls handled, average talk time,resolution rate, conversion etc..

3. Widen coverage – If results meet the pass marks above, widen the audience.

4. Full launch decision – Present the before‑and‑after metrics to your sponsor and decide whether to route all calls.

5. Weekly tune‑ups – Schedule 30‑minute reviews; small changes keep accuracy climbing.



AI voice agents give you a 24x7 front line that never gets tired, gathers rich insight and frees your human team for exceptions and empathy. With a focused 30‑day roadmap you can move from idea to measurable impact before the next quarterly meeting.



Sources

 

 
 
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