Telecommunications Southeast Asia

Telco: Agent-Ready Data Platform

A telco's data warehouse was built for analysts — not AI agents. Rotavision rebuilt their data architecture for the agent era: faster, cheaper, and with context that stopped hallucinations.

Challenge

Data platform built for humans, not agents

The telco was deploying AI agents across operations: network anomaly detection, customer service, fraud detection, and churn prediction. But the data platform became the bottleneck:

Scale mismatch

  • Data warehouse designed for 50 analysts
  • AI agents generating 100x query volume
  • Query queues backing up, timeouts increasing

Context gaps

  • Agents hallucinating due to incomplete data
  • No semantic understanding of telco-specific terms
  • Customer context fragmented across 7 systems

Latency issues

  • Real-time network ops needed sub-second response
  • Data warehouse returning results in minutes
  • Agents making decisions on stale data

Cost explosion

  • Data platform costs up 300% in 6 months
  • No visibility into what was driving queries
  • Agents querying redundantly
Approach

SARP and ETL-C implementation

Phase 1 Weeks 1-3

Assessment

  • Analyzed agent query patterns
  • Identified context gaps causing hallucination
  • Mapped latency requirements by use case
  • Assessed current architecture limitations
Phase 2 Weeks 4-6

Architecture Design

  • Designed agent-ready data architecture (SARP)
  • Created context model for telco domain (ETL-C)
  • Specified semantic query layer
  • Planned migration approach
Phase 3 Weeks 7-16

Implementation

  • Deployed Context Engine for unified customer/network view
  • Built semantic query API for agents
  • Implemented agent-optimized caching layer
  • Created real-time streaming layer for network ops
Phase 4 Weeks 17-20

Optimization

  • Tuned caching based on actual patterns
  • Optimized query routing
  • Implemented cost attribution
  • Trained platform team
Solution

Agent-ready data architecture

SARP implementation

Layer Function Technology
Semantic Query API Natural language to structured query Custom + LLM
Agent Cache High-frequency query results Redis Cluster
Context Store Embeddings, metadata, relationships Pinecone + Neo4j
Streaming Layer Real-time network data Kafka + Flink
Data Lake Historical analysis BigQuery

ETL-C for telco

  • Unified customer context (CRM, billing, usage, support, network)
  • Network topology context (relationships, dependencies)
  • Temporal context (usage patterns, seasonal trends)
  • Semantic enrichment (telco terminology, product catalog)

Agent-specific optimizations

  • Pre-computed features for common agent queries
  • Materialized views for real-time dashboards
  • Query result caching with TTL by data type
  • Rate limiting by agent priority
Results

Data platform for the agent era

Metric Before After Change
Agent query latency (p95) 4.2s 180ms -96%
Query throughput 500/min 15,000/min +2,900%
Agent hallucination rate 18% 4% -78%
Data platform cost $180K/mo $95K/mo -47%
Network ops response time 45 min 3 min -93%

Additional outcomes

  • Network auto-remediation coverage expanded 5x
  • Customer service AI accuracy up 23%
  • Churn prediction precision improved 31%
  • Platform team able to support 3x more agents

"We had a data warehouse built for humans and AI agents that needed something completely different. Rotavision redesigned our data architecture for the agent era — faster, cheaper, and with context that stopped our agents from making things up."

— Chief Data Officer
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