Trillet AI: Gemini in Vertex AI + GKE to reduce call-center voice agent errors and costs

Trillet AI builds a voice application layer for enterprise that automates high-stakes customer interactions such as appointment rescheduling and government follow-ups. The company moved its infrastructure to Google Cloud, using Gemini in Vertex AI as the primary reasoning engine and Google Kubernetes Engine for autoscaling real-time voice traffic. It also used Speech-to-Text and Text-to-Speech for voice interactions, with the model ingesting extensive client-specific business logic and negative constraints.

Organization
Trillet AI
Industry
Tech & Comms
Published
May 2026

Reported outcomes

85%

calls resolved without human interventionAutomation & deflection

5 percentage points to under 1%error rate reduction80%infrastructure cost reduction2 secondslatency+10%conversion rate increase

Strategic outcomes

Risk & complianceReduced voice agent errorsCost efficiencyLowered infrastructure and operations costsSpeed & agilityAchieved sub-two-second latencyScale & capacityResolved most calls without humans

Primary read

Use case focus

Showing 3 of 3

  • 1Conversational AI
  • 2Customer Service Automation
  • 3Voice AI
  • Early voice assistants had high latency and spoke over callers.
  • The system violated hard business constraints and hallucinated appointment bookings.
  • Manual auditing of thousands of call logs created operational burden.
  • The business was operating with about a 5% error rate and high infrastructure costs.
  • Migrated the platform to Google Cloud to improve control and latency.
  • Used Gemini in Vertex AI as the main reasoning engine with a large context window for client-specific business rules.
  • Deployed the core real-time application on Google Kubernetes Engine to scale automatically during traffic spikes.
  • Used Speech-to-Text API and Text-to-Speech API to support conversational voice interactions.
  • Reduced error rate from about 5% to well below 1%.
  • Cut infrastructure and operations costs by about 80%.
  • Achieved sub-two-second latency.
  • Resolved 85% of customer service calls without human intervention.
  • Increased conversion rates by 10% for legal aid clients.
Architecture

Trillet AI runs its real-time voice application on Google Kubernetes Engine and uses Gemini in Vertex AI as the primary reasoning engine. The model receives large amounts of client-specific business logic and 'negative constraints' to avoid invalid actions, while Speech-to-Text and Text-to-Speech services support live conversations.

Sources & evidence1
Groundedness: 5/5Type: Customer StoryPublished: May 31, 2026Publisher: Google CloudEvidence: PrimaryConfidence: High

AI-generated summary. Verify important details with the linked sources before relying on this case.

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