The Agentic Query Engine

Ask. We answer. Sources cited.

Quaeris agents turn plain-language questions into governed, audited answers. No hallucinations. No guessing. Every number traces back to a certified metric in your semantic layer.

  • Zero hallucinationsAnswers retrieved from certified metrics, never generated

  • Full audit trailWho asked, what was returned, and why - logged automatically

  • Role-gated accessUsers see only what their warehouse role permits - enforced at query time

  • Plain-language inputNo SQL required. Any business user can ask and get a governed answer

Agent Query
"What was revenue last quarter by region?"
Q3 Revenue by Region (vs. Plan)
West$1.2M +8%
East$0.98M on target
Central$0.72M −3%
South$0.31M −11%
Sources verified: Revenue metric v3.2 · warehouse.revenue_metrics · Role: full access
ZeroHallucinations
14sAvg answer
100%Audited
Core Capabilities

The engine that turns a question
into a defensible answer.

From plain-language input to a certified, source-cited, role-verified result - every step governed, every step auditable.

Plain language in. Governed answer out.

Type a question the way you'd say it in a meeting. The agentic query engine resolves your intent against the certified semantic layer and returns a single, unambiguous answer - not a list of dashboards to dig through.

  • Intent parsed against certified metric definitions, not raw column names
  • Ambiguous terms resolved to one canonical business definition before execution
  • Answer delivered with the certified value, version, and owner shown inline
How agents work

Three steps. Zero hallucinations.

Every Quaeris agent answer follows a governed, auditable execution path - from question to source in seconds.

Step 01
Parse & Govern

Question → Intent

User types a business question in plain language. The agent parses intent, maps the question to available metrics in your semantic layer, and routes it to the correct agent workflow. No free-form SQL generation.

Semantic layer mapped
Step 02
Query & Verify

Metric → Answer

The agent queries only certified, role-gated metrics from your warehouse. It verifies the query shape against your semantic layer before execution. If a question can't be answered, the agent says so rather than hallucinating.

Query validated
Step 03
Cite & Audit

Answer → Source

The agent returns a precise answer with full source lineage: which metric definitions were used, which business rules applied, and which warehouse table was queried. Every answer is logged for compliance audit.

Audit log created
The hallucination problem solved

Most AI analytics tools generate answers.
Quaeris agents retrieve them.

The Problem

Hallucinations happen when AI models guess numbers from training data instead of querying governed sources.

Every other conversational BI tool relies on LLM creativity - it's fast but unreliable. When the model doesn't know an answer, it makes one up. Users don't know the difference between a retrieved fact and a fabricated one.

Business impact: conflicting numbers reported to the board, failed audits, lost trust in the data team.
The Quaeris Difference

Agents don't generate answers - they retrieve them from your certified semantic layer.

If a metric isn't defined, the agent says "I don't know" instead of guessing. Every number is grounded in a source. No training-data hallucinations. No free-form SQL. Just governed, auditable answers every time.

Trust restored: full lineage, full audit trail, zero hallucinations. Confidence-ready for board presentations.
What agents can do

Autonomous multi-step analysis. Governed from the start.

Six core capabilities, each constrained by your semantic layer. Agents don't go rogue - they're governed at every step.

Natural Language to Governed SQL

Users ask questions in plain English. Agents translate to SQL constrained by your semantic layer - no model-generated code. Every query is validated against certified metrics before execution.

Multi-Step Autonomous Workflows

Agents don't stop at a single query. They plan and execute fetch-filter-join-forecast sequences without human input. Anomaly detected? Agents root-cause automatically. Forecast needed? Done in one prompt.

Predictive & Proactive Analysis

Agents forecast trends, flag anomalies, and diagnose root causes without being asked. A revenue dip is flagged before the executive standup. A warehouse query slowdown is surfaced before users notice.

Governed at Every Step

Role-based access, data residency, audit trails - enforced at query time, not dashboard time. Users see only the data their role permits. Every answer is logged with who asked, what was returned, and why.

Smart Semantic Layer Learning

The semantic layer isn't static. It learns from agent interactions. Users define metrics once; agents use them everywhere. New business logic? Update the semantic layer once; all agent answers reflect the change immediately.

Autonomous Root-Cause Diagnosis

Revenue down 12%? Agents automatically investigate across regions, cohorts, campaigns, and product lines to find the driver - then surface the diagnosis with confidence scores. Manual troubleshooting replaced by agent rigor.

How we compare

How Quaeris agents compare

Most conversational BI tools bolt AI onto a dashboard. Quaeris builds agents on a governed semantic layer.

Quaeris vs. search-based BI, warehouse-native AI, cloud BI assistant, and embedded LookML BI - based on publicly available product documentation
CapabilityQuaerisSearch-based BIWarehouse-native AICloud BI AssistantEmbedded LookML BI
Plain-language questionsYesYesYesYesYes
Answers cited to metricsYes - every answerYesLimitedLimitedLimited
Governed semantic layerAuto-learnsManual modelingRequires YAMLManual configRequires LookML
Zero hallucinationsBy designPartialLLM-dependentLLM-dependentLLM-dependent
BYOM (pick your LLM)Swap anytimeModel-lockedWarehouse-lockedAWS-lockedGoogle-locked
Multi-step agent workflowsFull fetch/filter/join/forecastLimitedLimitedLimitedLimited
Autonomous anomaly detectionYesNoNoNoNo
Full audit trail (who/what/why)Yes - prompt + stepsLimitedLimitedLimitedLimited

Comparison based on publicly available product documentation. Data current as of Q2 2026. See detailed comparisons →

See it in action

Revenue by region - step by step

User question: "What was revenue last quarter by region, and which regions missed their plan?" Follow the agent's execution path below.

Step 01 - Intent Parse

Agent detects intent and maps to semantic layer

intent = metric-retrieval metric = revenue dimension = region time-filter = last-quarter analysis-type = vs-plan entities-found = 3 / 3 matched in semantic layer

All entities are mapped to certified metrics in the semantic layer. The agent does not proceed to generate SQL until mapping is confirmed complete.

Mapping complete - 0 ambiguous entities
Agent stepIntent ClassificationNLP parse → semantic entity match
Governance checkPassedAll metrics exist in certified semantic layer
Hallucination riskNoneAgent will not proceed if mapping fails
Who benefits

Agents work for your whole team

Every role gets governed self-serve access - without compromising the semantic layer your data team owns.

Data Analyst

Self-serve exploratory analysis without writing SQL. Agents handle the query mechanics; analysts focus on interpretation and action.

"Show me cohort churn by acquisition channel for new users signing up in Q2"

Business User

Instant answers to business questions - no tickets, no waiting. Governed answers without needing to understand the underlying data model.

"How much revenue came from our top 10 customers last month?"

Executive

Proactive insights without waiting on reports. Agents surface anomalies before the standup and flag underperformance before it becomes a board issue.

"Which product had the biggest month-over-month growth?"

Data Engineer

Governance enforcement and semantic layer ownership. Agents expose metric usage patterns, flag definition inconsistencies, and help prioritize semantic layer expansion.

"Which metrics are being queried most, and are definitions consistent?"
Governance at scale

Numbers that reflect a different approach

0
Hallucinated answers
Every answer grounded in certified metrics
87%
Reduction in ad-hoc requests
Within 90 days of deployment
14s
Avg. answer time
From question to audited answer
100%
Queries audited
Full trace from question to source
Agent Governance DashboardLive
1,247Questions answered
142Metrics cited
0Access violations
1,247Audit records - View all →

Dashboard metrics are illustrative. Book a Demo to see your data.

Common questions

Your questions answered

The agent says "I don't have enough information to answer that" rather than guessing. It surfaces which metrics or data sources would be needed. Your data team then evaluates whether to expand the semantic layer. Silence is better than hallucination.
Trusted by data leaders

Results that speak for themselves

Three teams that deployed Quaeris agents and measured the outcome.

Financial Services

Regional bank - Enterprise analytics team

Reduced ad-hoc analytics requests by 84% while expanding self-serve access to 600+ business users - without relaxing governance. Connected agents to Snowflake, migrated 120 certified metrics, deployed with row-level security.

84% fewer requests600+ self-serve users90 days to rollout
B2B SaaS

Growth-stage SaaS - Revenue operations team

Cut time-to-insight from 3 days to under 20 minutes - eliminating the request backlog that had blocked product launches. Agents answer product-usage and pipeline questions with sources cited in every response.

20 min avg answer time3× faster than tickets0 hallucinations
Retail / CPG

Multi-region retailer - Central data team

Unified conflicting metric definitions across 6 regional teams - giving executives a single, consistent view. Audited 300+ metric variants, consolidated to 80 certified definitions, retired four legacy BI dashboards.

6 teams aligned1 definition per KPI11× ROI
Ready to deploy?

Stop waiting on ad-hoc requests.
Start asking agents.

Book a demo. We'll walk through your warehouse setup, show you how agents work with your data, and deliver a live governed answer in 30 minutes.

The Governed Analytics Brief

Weekly insights on agentic AI and enterprise trust.

One practical read on governed analytics, agents, and semantic layers - every Thursday. No generic AI hype. Just rigorous patterns from data leaders deploying agents at scale.