Customer-Facing AI Proposal

Extending OX Group's AI leadership to the front line: 24/7 automated service for every region.

Your internal productivity stack is already running. This proposal covers the other half — the customer-facing layer. A Voice AI Receptionist and a Dealer Portal Chat Widget, built once for ANZ and scaled across every region.

Project 01
Voice AI Receptionist
Project 02
Dealer Portal Chat Widget
Prepared for OX Group
By NxtLayr AI
22 May 2026
Your Business

OX Group — a global tool manufacturer already shipping AI in production

OX Group operates across six markets globally, with a centralised global purchasing function and a Philippines support centre. The Australian customer service team, led by Liza Moren, is the proving ground for global customer-service modernisation. This proposal extends an existing AI investment programme that already has live production components.

“We are very passionate about adopting AI in the business. Everyone should be, and we definitely are.”

Ben Truswell · Head of Global Systems & Business Processes

Global Footprint
6markets operated globally
AU · NZ · UK · Europe · US · Canada

Already investing heavily in AI

This proposal extends an existing AI investment programme, not a pioneering experiment. Your team is already shipping live AI capability across these initiatives:

Oxley — Internal Teams Chatbot

In build on Microsoft AI Foundry — internal productivity layer across NetSuite and freight data.

NetSuite AI Order Scanning

Live in production — dealer PDF orders auto-scanned and populated into NetSuite.

Power BI + Microsoft SQL Data Warehouse

Celigo-fed warehouse powering business intelligence and the Oxley brain.

Microsoft Copilot Premium

Deployed to sales managers and CS leadership for drafting and presentation generation.

What We Found

Where customer service time is actually going

The top five call drivers cover roughly 73% of inbound customer service volume. Each one is structured, repetitive, and well-suited to an AI agent that reads from a clean, read-only data layer.

Call drivers by volume

01Request Price & Availability
25.3%

Captured by agent, warm-transferred to a rep — agent never quotes price.

02Follow up on existing order
23.4%

ETA read-back from Celigo-fed order data.

03Transferred to / Looking for person
8.9%

Receptionist pattern with door-keeper logic.

04Product enquiry
8.0%

Mostly end-users — guide to stockist or dealer portal.

05Follow up on a backorder
7.8%

Inbound shipment date lookup against product code.

Five drivers, 73.4% of all inbound calls. Building the agent against these covers the bulk of customer service workload while staying within a tightly scoped data slice.

Operational context

ANZ customer service is a six-person team; three of them take inbound calls. After-hours coverage is currently zero — calls outside business hours bounce off the IVR.

All product, pricing, inventory, customer and order data lives in NetSuite. Celigo is already in place and licensed for data movement.

Existing IVR uses a press-1-press-2 menu structure. Caller experience is functional but unintelligent — no intent detection, no self-serve.

How the agent acts as a filter

From a messy “today” pile to a clean “tomorrow” split

Today
100% of calls → human
Price & Availability25.3%
Order Follow-up23.4%
Transferred / Looking8.9%
Product Enquiry8.0%
Backorder7.8%
Other26.6%
AI
Filter +
Intent
Future state
Split: AI vs Human
AI self-serves~30%
ETA · Backorder · Copy of invoice · Cold caller re-route
AI qualifies + warm-transfers~43%
CS team / Finance / Sales — pre-verified context whispered to rep
Human handles fully~27%
Complex / unknown / non-routine queries
Safety By Design

The agent cannot make up prices, ETAs, or shipment dates. It reads from a read-only data slice in Airtable — populated by Celigo from NetSuite with only the three to five columns each intent needs. If the data isn't in that slice, the agent says so and warm-transfers. No hallucinated prices, no leaked GP, no competitor exploits.

The Shift

Where customer service is today, and where it can be

Today

Current state

  • 100% of calls touched by a human

    Every caller waits in the IVR menu, navigates to the right team, and consumes a CSR's attention even for low-value tasks like an ETA lookup.

  • AEST business hours only

    Calls outside the operational window go to voicemail or bounce. After-hours demand is invisible to the team.

  • Known call drivers, no leverage

    Liza already pulls clean call-driver data from 3CX. The picture is sharp. The constraint is that knowing the drivers doesn't shrink the time spent on them — every ETA, invoice and back-order call still routes through a human.

  • Capacity scales with headcount

    Growth in any region requires hiring an additional CSR in that market.

  • Caller experience frustrating and slow with IVR

    Press-1-press-2 menu navigation costs every caller time before they reach a human. Tradies hate it, end users abandon, and dealers ring back through the front desk.

After deployment

Future state

  • 30% of calls fully self-served

    AI handles the simple ETA, copy-of-invoice, and back-order calls end-to-end, with verification and email confirmation.

  • 24/7 inbound coverage

    After-hours calls are captured, qualified, and either resolved or queued for follow-up. Zero calls bounce.

  • Every call transcribed and scored

    Retell Assure monitors 100% of calls for hallucinations, latency, and resolution quality. Monthly dashboards for Liza.

  • Capacity scales independently of headcount

    Adding a new region adds a Retell minute allocation, not a CSR hire.

  • Consistent caller experience in every region

    A voice localised to each region, with the same handling logic and the same verification flow everywhere.

Scale without hiring

If OX grows 30% across the next two years, the current operating model requires hiring an additional customer service rep in each region carrying that load. The proposed model absorbs that growth on the same retainer. The agent is a permanent capacity multiplier — once built, every additional dollar of revenue adds zero customer service cost until volume genuinely exceeds the platform's bandwidth.

Proposed Solution

Two projects, one shared data layer

Each project can be approved standalone or together. They share the same data architecture, so deploying both does not double the integration work.

Project 1Voice AI Receptionist

Voice AI Receptionist

Replaces the current 3CX IVR with a conversational AU female voice that detects intent, self-serves the contained drivers, and warm-transfers everything else with full context. Voice and vocabulary localise per region — Australian for ANZ, mid-Atlantic English for UK/Europe, North American for US/Canada, with regional terminology baked in (e.g. "tracking number" for AU/US vs "waybill" for UK trade).

The agent answers every inbound call on the existing 3CX line via a Twilio SIP trunk. It uses a soft, friendly Australian female voice with personality. It identifies the caller's intent in the first 10 seconds, captures verification details (order number plus name or email), reads from a Celigo-fed Airtable data slice with only the columns required for each intent, and routes appropriately. Customer service calls warm-transfer to Liza's team. Finance routes to the accounts extension. Sales rep enquiries go through a door-keeper gate before any mobile transfer. IT and supplier enquiries get diverted to email. Cold callers are politely re-routed to email, never hung up on.

Stack flow
Caller
3CX
Twilio SIP
Retell Agent
MCP Node
Airtable (Celigo-fed)

Intent flows

01Order ETA
23.4%
Greeting
Capture order #
Verify name/email
Read tracking + carrier
Offer email link
02Backorder lookup
7.8%
Greeting
Capture product code
Read next shipment date
Offer SMS reminder
Log to dashboard
03Copy of invoice
~6%
Greeting
Capture order/invoice #
Verify email
Queue to accounts
Promote dealer portal
04Warm transfer (CS / Finance / Sales)
~30%
Intent detect
Department route
Whisper context
Connect call
Log transcript
05Email re-route (IT / Suppliers / Cold)
~8%
Intent detect
Politely decline transfer
Capture details
Send email to right inbox
End on positive note
Project 2Dealer Portal Chat

Dealer Portal Chat Widget with Teams Escalation

An embedded chat agent on the new dealer e-commerce portal. Handles common queries from logged-in dealers, escalates complex cases directly into Microsoft Teams.

An embeddable chat widget sits on the new dealer portal (logged-in dealers only — no public access). The agent reuses the same Celigo-fed Airtable data layer as the voice receptionist, so there is no duplicate integration cost. Common dealer queries get handled in-widget. When escalation is required, the agent fires a webhook through Zapier that posts a card into Liza's Teams channel containing the full chat transcript. A CSR replies inside Teams, and the message relays back into the widget — the dealer's experience stays in the portal, but Liza's team never leaves the tool they already live in.

Stack flow
Dealer Portal
Retell Chat Widget
MCP Node
Airtable
Team Member Handoff →
Zapier
Microsoft Teams
Human-In-The-Loop · how escalation feels to the dealer
Dealer types in widget
On dealer portal
AI tries to resolve
Reads Airtable
Escalation triggered
Zapier → Teams card
CSR replies in Teams
With full chat context
Dealer sees reply in widget
Conversation seamless

The dealer never leaves the chat widget. Liza's CSR never leaves Teams. The handover is invisible from both sides.

Intent flows

01Dealer query — self-serve
Logged-in dealer opens chat
Intent classification
Airtable lookup
Answer in-widget
Conversation closed
02Escalation to Teams
AI hits unknown intent
Triggers Zapier webhook
Teams card posted
CSR replies in Teams
Relayed to widget
Sample Calls

Sample call recordings

Short demo recordings of the agent handling real-shaped scenarios with fake customer data, grouped by the Australian and New Zealand lines. Built specifically so the management team can hear exactly what this sounds like before approving the build.

🇦🇺

Australian calls

AU · 01

Catching a wrong email address

The caller gives an email address with the “.au” left off the end. Layla reads it back, picks up that it’s incomplete, and confirms the correct address before anything is sent.

AU · 02

CEO impersonation attempt

A caller claims to be a senior executive and pushes hard to get information released. Layla stays polite, holds the verification line, and doesn’t cave to the pressure.

🇳🇿

New Zealand calls

NZ · 01

Invoice request & order ETA

A dealer calls to request a copy of an invoice and check where an order is up to. Layla captures the request, looks the order up against the live data layer, and reads back the status and ETA.

NZ · 02

Name already known — collection skipped

The caller’s name is already known at the greeting, so Layla recognises it and skips straight past the name-collection step instead of asking for details it already has.

Investment

Investment

Two projects priced as separate engagements so the management team can approve one, both, or sequence them. All figures ex-GST. OX retains full ownership of every platform.

Voice AI Receptionist

ANZ Pilot Build
$22,000+ GST
One-time ANZ pilot build (Australia + New Zealand) — 5 conversational flows, integrations, scale testing, UAT, handover, training. 2 weeks post-launch support included.
Optional Retainer
$3,000/mo+ GST
Optional. Kicks in 2 weeks post-launch. Continuous monitoring & QA, maintenance, and monthly tuning.
Per Region — US & Canada
$3,500+ GST
Each additional region — US, then Canada, priced individually. Configuration work: clone agent, regional Airtable, voice/vocabulary localisation, routing.
Per Region Retainer
+$1,000/mo+ GST
Incremental, optional. Same monitoring + tuning as ANZ.
UK / Europe — scoped separately

Multilingual coverage, GDPR, and in-region voice validation make UK/Europe a larger configuration than a straight clone. It is quoted separately once the ANZ pilot is proven and the UK/Europe scope is confirmed.

Dealer Portal Chat Widget

Pilot Build
$9,000+ GST
Standalone build for one dealer portal. Retell Chat Agent, Teams handoff bridge, escalation logic, widget styling, UAT. 2 weeks post-launch support included.
Optional Retainer
$1,000/mo+ GST
Optional. Kicks in 2 weeks post-launch. Continuous monitoring & QA, maintenance, and monthly tuning.
TBC at scoping

The dealer portal is a single global site with one chat widget, so this $9,000 covers the full deployment. The variable to confirm at scoping is the human-handoff routing — whether escalations land in one global Teams queue or route to regional teams by customer region. That logic, and any retainer impact, is scoped at kickoff.

Platforms — Owned by OX

OX Group holds every platform account directly and pays each at its standard published rate. NxtLayr builds on these platforms and hands them over: no markup, no resale, and never sitting between you and the bills, the rates, the data or the residency. The table below estimates the ongoing platform cost OX carries directly, separate from the one-time build fee.

Platform Role Est. ongoing cost
Retell Voice & chat agent platform — the per-minute conversation cost, language model included. $750-900 / mo
Twilio Telephony / SIP trunk carrying calls between the phone network and the agent. ~$70-150 / mo*
Airtable Read-only data store the agent reads order, ETA and invoice data from, Celigo-fed from NetSuite. ~$30-60 / mo
Modal Serverless cloud hosting for the secure middleware that connects the agent to your data. $0-30 / mo
Cloudonix SBC Session border controller for 3CX-to-Retell call routing. Recommended only if detailed routing requirements call for it. Scoped at kickoff*

Indicative all-in: ~$850-1,150 / month, almost entirely Retell voice usage. These are estimates. OX is billed by each platform directly for actual usage. All figures AUD, ex-GST. * Twilio's exact AU SIP rate and whether an SBC is needed are confirmed at scoping.

How the Retell estimate scales

Modelled on ~45 inbound calls a day at the current ~$0.17/min agent rate and a 3.5-minute average call.

Monthly call volume Billable minutes Est. Retell cost
~990 — working days only 3,465 ~$590
~1,170 — incl. Saturdays 4,095 ~$695
~1,350 — every day, incl. after-hours 4,725 ~$805

A budget of $750-900 / month sits above expected usage and carries headroom for growth. If usage runs lighter, the bill runs lighter. OX pays Retell directly for actual minutes used.

Included With Build

2 weeks of post-launch support are baked into the build fee. Optional retainer kicks in from week 3 onwards. Liza's team validates the agent inside the workflow before any recurring fee starts.

The Opportunity

Grow the business, not the call centre.

OX Group is already putting AI to work across the business. This is the same move on the front line. Today, customer-service capacity is tied to headcount: every lift in call volume, and every new region, eventually means another hire. The agent breaks that link. It carries the routine, repetitive calls (order status, ETAs, backorders, after-hours) and scales with volume at almost no marginal cost. OX grows the customer base without growing the cost of serving it in step.

Customer-service cost as OX grows
Cost to serve customers Without the agent With the agent Capacity OX keeps as the business grows Today As OX grows →

Without the agent, serving more customers means more hires, one rep at a time. With it, the routine load is absorbed and the cost of serving stays close to flat. The widening gap is the capacity OX keeps as it grows.

The numbers behind it
Build payback
The one-time ANZ build, recovered from the capacity it returns.
~4 months
Growth headroom
More call volume before the next customer-service hire, on OX's own call-driver data.
~30%
Coverage
Every call answered, including the after-hours calls that bounce off the IVR today.
24/7

OX's AI advantage, now on the front line

As OX grows, the routine load grows into the agent, not the team. The customer base scales without scaling headcount, overhead, rosters, or cover for leave and sick days. Future cost is absorbed by the agent rather than added to the wage bill, and the cost of serving customers stops tracking the size of the business.

The detailed cost model is there if your team wants it. Happy to walk finance through it on a call.

Who you're working with

A partner who's supported some of the world's biggest businesses.

Chris Gulotta — Founder, NxtLayr AI

Chris Gulotta

Founder & CEO, NxtLayr AI

I've spent over a decade working with businesses — across sales, operations, and technology — and the one thing that's always been true is this: the businesses that move first win.

Before founding NxtLayr AI, I spent six years in technology — e-commerce and cybersecurity — selling to businesses of every size, sitting inside their operations, and seeing where they were leaving money on the table. The pattern was always the same: too much manual work, too many leads slipping through the cracks, not enough hours in the day.

NxtLayr AI exists because the AI tools that genuinely transform operations weren't reaching the businesses that needed them most — manufacturing, industrial, multi-region distributors, trade-facing companies. The kind of companies where AI can compound across thousands of conversations, orders and customer touchpoints. The kind of company OX Group is.

I work on every engagement personally. The Voice Receptionist build for OX would be designed, scoped, built, scale-tested and handed over by me — not handed off to a junior delivery team. That's deliberate: senior judgement on every routing rule, every escalation path and every line of the agent's script is a different quality bar to a template-driven implementation run by a delivery pool.

10+
Years in business and technology
6
Years inside tech companies
50+
AI solutions deployed
You own everything

Retell account, Twilio account, Airtable workspace, agent JSON — all transferred to OX ownership at handover. No platform lock-in, no markup, no NxtLayr in the middle of your data.

Senior production build

Every flow scale-tested across 50 scenarios via Retell Batch Testing before any live call is taken. Continuous monitoring and QA on 100% of production calls.

Timeline

Build timeline

01

Discovery & architecture sign-off

Week 1

Confirm Airtable schema, validate Celigo data pipe, lock routing extension map, finalise voice direction.

02

Middleware + integration

Weeks 2-3

MCP server built on Modal. Airtable read paths wired with column-level scoping per intent. Twilio SIP trunk configured against a test DID.

03

Agent build

Weeks 4-5

All five conversational flows built in Retell. Voice tuning. Door-keeper logic on rep transfers.

04

Scale testing

Week 6

Retell Batch Testing runs 50 realistic call scenarios. Edge cases logged and addressed before any live call is taken.

05

UAT with Liza's team

Weeks 7-8

Liza, her three inbound reps and the management team review live calls. Iterate on tone, transfer thresholds, escalation logic.

06

Soft launch on test DID

Week 9

Live calls on one test number. Monitored by Liza and NxtLayr. Performance dashboards spun up.

07

Full ANZ cutover + handover

Week 10

Main 3CX line cuts over. Full handover documentation delivered. Training session with Liza's team. Optional retainer activates from go-live with the 2-week waiver.

Next Steps

What happens next

1

Project confirmation & scope

Voice AI Receptionist, Chat Widget, or both? One email back to confirm scope.

2

50% deposit paid

NxtLayr issues the deposit invoice. Remaining 50% billed on cutover.

3

Project kickoff

ANZ pilot live within 10 weeks of kickoff. 2 weeks post-launch support included.

@
Email
hello@nxtlayrai.com
📅
Valid Until
28 May 2026
NxtLayr AI · OX Group · 14 May 2026