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Product Tour

The product, in motion.

Watch one conversation pass through ingest, redaction, summarization, sentiment, classification, scoring, coaching, training, Next Best Actions, Six Layers attribution, and real-time alerting. Nine steps. Three minutes. No signup. No demo call required.

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Sample call: Aria (AI) and Sarah Mitchell
Financial services / Acme Finance / 6 turns / 1m 47s
Walkthrough
Step 1 of 9
Step 1 / Ingest

The call arrives over an authenticated, encrypted channel.

OAuth 2.0 bearer-token authentication from the CCaaS. AES-256 at rest. TLS 1.2+ in transit. Stored temporarily on an IP-restricted Etech server, region-local. Hosted on AWS today; Azure and GCP next. No model has read a word yet.

Raw transcript / Call AT-7712
OAuth 2.0 / AES-256 / TLS 1.2+ / IP-restricted
AgentAI"Hi, this is Aria with Acme Finance. May I confirm you're Sarah Mitchell, born April 12, 1978?" CustomerSM"Yes." AgentAI"Great. I see you're calling about your card ending 9012. The balance is $4,283.42." CustomerSM"That doesn't sound right. Last I checked it was around twelve hundred." AgentAI"Let me re-verify. Card 4532-1234-5678-9012, expires 09/27?" CustomerSM"Yes, that's the card." AgentAI"I can email the statement to 412 Maple Street, Austin, Texas 78704?" CustomerSM"Yes please." AgentAI"Done."
Value for each seat at the table
CXOEvery channel lands in one scoring queue. Omnichannel CSAT runs on one data backbone, not six stitched tools.
COOUnder 4 minutes from call-end to scored. Monday's calls are graded before Monday's standup.
QAVoice, chat, email, SMS on one scorecard. No tool-switching tax. One calibration loop.
ComplianceConsent, redaction, retention tagged at capture. Audit trail starts at minute zero.
Step 2 / Redact + Extract

Two things happen in 800 to 1200 ms. Sensitive data removed, useful entities tagged.

The NER pipeline runs in both directions at once: PII, PHI, and PCI are masked into typed tokens; non-PII entities (intent, product, account, organization) are extracted as structured tags for the MoE to consume. The original media is deleted at the end of this step.

After NER
800 to 1200 ms / Original media deleted
AgentAI"Hi, this is Aria with Acme Finance. May I confirm you're [PII:NAME], born [PII:DOB]?" CustomerSM"Yes." AgentAI"Great. I see you're calling about your card ending 9012. The balance is $4,283.42." CustomerSM"That doesn't sound right. Last I checked it was around twelve hundred." AgentAI"Let me re-verify. Card [PCI:CARD], expires 09/27?" CustomerSM"Yes, that's the card." AgentAI"I can email the statement to [PII:ADDRESS]?" CustomerSM"Yes please." AgentAI"Done."
Non-PII entities extracted
INTENTbalance_inquiry PRODUCTcredit_card ACCOUNT****9012 ORGAcme Finance CHANNELvoice VERTICALfinancial_services
Value for each seat at the table
CXOPII never reaches a third-party model. Trust story has architectural receipts, not promises.
COONER runs at ingest in 800-1200 ms. Pipeline lag stays under 4 minutes end-to-end.
QAEntity tags feed scorecards downstream. Intent, product, account flow without manual labeling.
CompliancePHI, PCI, PII redacted before any model reads. Original media deleted on ingest.
Step 3 / Transcribe + Summarize

Speech-to-text with speaker diarization. LLM-generated structured summary on every call.

Mono-channel capable. Speaker turns labeled. The MoE drafts a structured summary every interaction (purpose, key events, resolution, follow-up). About 60 seconds of wrap-up time saved per call. 326M classifications every 5 minutes across production. 35+ languages including LATAM Spanish, Hindi, and Tagalog.

Diarized turn summaries
Speaker-labeled, condensed
AgentConfirm name + DOB. CustomerConfirms. AgentStates balance $4,283.42. CustomerPushes back. Recalls ~$1,200. AgentVerifies card number + expiry. CustomerConfirms card. AgentOffers to email statement. CustomerAccepts. AgentCloses.
AI Call Summary
Generated by MoE
PurposeBalance inquiry on credit card account ****9012.
Key eventsIdentity verified. Balance stated ($4,283.42). Customer disputed amount. Card re-verified. Statement requested.
ResolutionPartial. Statement sent. Balance discrepancy unresolved.
Follow-up requiredYes. Verify actual balance against CRM and contact customer.
Value for each seat at the table
CXO60 seconds saved per call across thousands of agents shifts capacity without headcount change.
COOWrap-up time drops without retraining. Same conversation count, more handle-time recovered.
QASpeaker-diarized transcripts feed the scorecard directly. 35+ languages. No "who said that?"
ComplianceStructured summary on every call: purpose, resolution, follow-up. Audit-friendly record by default.
Step 4 / Sentiment + Predict

Sentiment is a trajectory, not a single number. And it predicts what happens next.

Multi-dimensional sentiment tracks empathy, frustration, and resolution across turns. Speech analytics layer adds silence detection, talk-over flags, and 500+ intent categories tracked automatically. Predictive outcomes on top: predicted CSAT, churn risk, dispute risk. Predicted scores fill the gap on the 80%+ of calls customers never survey.

Sentiment trajectory across the call
6 turns / frustration spike at turn 3
T1 confirm T2 balance T3 dispute T4 verify T5 email T6 close
Predicted CSAT
5.1/10
Below target
Churn risk
HIGH
Action needed
Dispute risk
MED
Monitor
Value for each seat at the table
CXOPredicted CSAT closes the gap on the 80%+ of calls customers never survey.
COOSilence, talk-over, and handoff patterns surface as team-level coaching themes, not anecdotes.
QASentiment trajectory + 500+ intent categories feed scorecard logic. Measurable per turn.
ComplianceFrustration spikes flag supervisor attention before the call closes. Risk surfaces in real time.
Step 5 / Classify + Score

The MoE routes each scorecard item to a vertical compliance expert. Then the call is graded.

The Classification Engine routes by intent + vertical. For this Financial Services call, the Financial expert sub-model handles disclosure, suitability, and Reg E checks. 94%+ classification accuracy SLA, contractual. Inter-rater agreement targets 100% against your QA team's grade. Six lanes shown here; twelve verticals on the Compliance page.

CollectionsFDCPA
HealthcareHIPAA
FinancialTILA / Reg E
InsuranceNAIC
TelecomTCPA
RetailFTC TSR
D+
Compliance62%
Empathy78%
Resolution41%
Brand voice84%
Value for each seat at the table
CXOThe scorecard your exec team signed off on is the scorecard every interaction is graded against.
COOPass, fail, and coaching notes land before the agent clocks out. Same-day coaching, not next-week.
QAInter-rater agreement target: 100% against your QA team's grade. Calibration moves in days, not quarters.
ComplianceEvery scoring decision logged, timestamped, reproducible. Auditable by design.
Step 6 / Auto Coach AI

Auto Coach AI works both ways. Supervisor side and agent side.

The score is the start of the work, not the end. Auto Coach AI gives the supervisor an evidence-anchored coaching recommendation, and at the same time tells the agent which behavior to focus on, the potential impact, and routes them the right training. Same engine, two audiences. 40% faster agent improvement cycles documented in production.

For the supervisor
Aria misstated the account balance at turn 3 ($4,283.42 stated; actual $1,283.42). Verify with CRM before quoting figures. Evidence: turn 3 of CALL_AT-7712
Estimated impact+14 pts compliance
Repeat-contact risk-32%
One-Click Coaching session ready
For Aria, the agent
Focus area: verify the account balance with CRM before stating it to the customer. What went wrong at turn 3 of CALL_AT-7712
Potential impact+14 pts on next 5 calls
Repeat-contact risk-32%
Training routed: Balance verification protocol 18 min
Value for each seat at the table
CXOCoaching frequency lifts 300%, improvement cycles run 40% faster in production. Performance shows in weeks.
COOSupervisor capacity scales 3x in production. Coaching becomes proactive routing, not reactive review.
QAAuto Coach flags the specific transcript moment. Calibration moves from sample-grading to model-tuning.
ComplianceEvery recommendation tied to evidence. The coaching record is the audit trail.
Step 7 / Train + Next Best Actions

One score routes the right action to the right role automatically.

Automated Training Allocation assigns the agent a targeted LMS module based on the scored skill gap. Then per-role Next Best Actions fan out so every person in the chain knows what to do, with an estimated impact attached. The system doesn't just flag a problem; it routes the fix.

Automated training allocation

"Balance verification protocol" module assigned to Aria.

Auto-allocated based on the compliance gap identified at turn 3. Estimated completion: 18 min. Re-test on next 5 calls.

In LMS queue
Agent NBA
Re-verify balance with CRM before stating to customer. Take the 18-min training module today.
Supervisor NBA
15-min coaching session with Aria on balance verification. Generate from Step 6 recommendation.
Manager NBA
Audit AI agent CRM-field access. Three hallucination events flagged this week across LOB.
Executive NBA
AI agent compliance gap in Financial Services. Schedule with risk team on AI governance posture.
Value for each seat at the table
CXOPer-role NBAs put the right action in front of the right seat. The org acts faster on the same data.
COOLMS routes to the actual skill gap, not a generic curriculum. Completion and re-test built in.
QATraining assignments traced to scorecard misses. Effectiveness measurable on the next 5 calls.
ComplianceCompliance gaps route to compliance-specific modules. Pattern visibility across LOBs.
Step 8 / Six Layers Attribution

One conversation. Six Layers. Value attributed to each.

The Six Layers framework attributes business value beyond Layer 1 QA. For this one call, here's where the value lives, in dollars. QA captured $48. The other five layers captured $1,817.

L1
Quality + ComplianceAvoided Reg E disclosure violation on this call.
$48
L2
Customer IntelligenceChurn risk averted via fast follow-up routing.
$312
L3
Revenue IntelligenceDispute prevented; account balance retained.
$1,283
L4
Operational IntelligenceCallback avoided via auto-routed follow-up.
$84
L5
Training IntelligenceAuto-allocated LMS module value over 90 days.
$42
L6
Strategic IntelligenceCross-LOB AI hallucination pattern detected.
$96
Attributed value from this sample call 82% of total comes from L2-L6. QA was 3% of the value here. Illustrative; your call mix will vary.
$1,865
Value for each seat at the table
CXOValue attribution across all six layers. The CFO conversation has dollar arithmetic, not slides.
COOOperational savings (callbacks avoided, capacity recovered) quantified per call, not aggregated quarterly.
QAQuality is the floor (Layer 1), not the ceiling. The other five layers are also your team's output.
ComplianceCompliance risk reduction quantified inside the same attribution model. One spreadsheet for legal.
Step 9 / Real-time (parallel to step 1)

Steps 1 to 8 process the call after it ends. This happens while it is still going.

The same MoE that scores the call retrospectively also flags critical violations live, in parallel with ingestion. Same engine, two timelines. 380 ms from violation flagged to alert dispatched. Five channels, customer-configurable per program.

Live call in progress / Turn 3 of 6 / 1m 12s elapsed
Call AT-7712
Compliance violation flagged. Account balance misstated against CRM source of truth. AI hallucination detected.
Disclosure miss
380ms
Dispatch
From the moment the MoE flagged the misstatement at turn 3 to the moment the alert reached the supervisor's configured channel.
Email SMS Teams Slack Voice call
#qeval-alerts on Slack / @compliance-officer
Just now / 380 ms after flag
Aria (AI) misstated account balance on Call AT-7712. Stated $4,283.42; CRM source of truth is $1,283.42. Customer disputed during call. Reg E disclosure not delivered.
Listen live Open scorecard Take call over
Value for each seat at the table
CXOSaves happen in the call, not in the postmortem. Retention and CSAT move in weeks, not quarters.
COOSupervisors stop reacting to yesterday's calls. Coaching compresses into the moment the agent needs it.
QAThe scorecard runs live. Agents see next-best-action at the criterion, not at shift-end.
ComplianceTCPA, PHI, and PCI risks get intercepted in-call. Findings never become findings.
Use arrows
That was QEval®, end to end

One call. Nine steps. $1,865 attributed across six layers.

QA captured $48 of it. The other five layers captured the rest. Real product interface, real scoring, real summaries, real attribution. The same components your team uses in production.

9Steps
3 minRead time
$1,865Attributed
6 of 6Layers shown
After the tour

Bring your conversations. We will show you $1,865 calls.

Send the tour to your VP, then book a working session. We will run QEval® against a real call from your operation, ship the attribution back, and pilot toward ROI in 120 days, contractually.

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Contractual commitments

Four numbers no peer publishes.

94%+
Accuracy SLA
Written into the master agreement
30 days
Deployment
Money-back guarantee
60 days
Exit clause
Cancel with notice, no penalty
120 days
ROI window
Documented against your KPIs, contractually