Phoring
PHORINGScenario Intelligence

From raw signals,
structured foresight.

Build knowledge graphs from documents. Run multi-agent simulations. Generate source-cited intelligence reports with confidence scoring.

4
StagePipeline
3
ModelConsensus
100%
SourceCited
11
ServicesIntegrated
What Phoring Does

From documents and scenarios
to simulation-backed intelligence.

SIGNAL

Signal Processing

Ingests documents, extracts entities and relationships, and constructs a structured knowledge graph. Raw information becomes queryable intelligence.

MODEL

Scenario Simulation

Deploys LLM-generated agent personas into synthetic social environments. Multi-agent dynamics model how events, opinions, and decisions could unfold.

OUTPUT

Structured Foresight

Generates source-cited intelligence reports with confidence scoring. Every claim traces back to evidence — graph data, web sources, or simulation outcomes.

How It Works

Four-stage pipeline.
Each step is discrete and inspectable.

01
Active

Graph Build

Upload documents — PDF, Markdown, or text. Phoring parses content, extracts entities and relationships via LLM-driven ontology generation, and constructs a knowledge graph in Zep.

02
Active

Agent Setup

LLM-generated agent profiles emerge from graph entities. Each carries a persona, stance, behavioral parameters, and platform-specific interaction models tuned to the scenario.

03
Active

Simulation

OASIS deploys agents into synthetic Twitter and Reddit environments. Actions, reactions, and emergent discourse unfold across configurable rounds — streamed in real time.

04
Active

Intelligence Report

The Report Agent synthesizes graph data, web intelligence, and simulation outcomes into a structured document — source-cited with inline references and per-section confidence scoring.

Applications

Built for structured thinking
about uncertain futures.

Policy Impact Analysis

Model how regulatory changes propagate through public discourse. Simulate stakeholder reactions across platforms before policy announcements.

Market Reaction Forecasting

Feed financial signals and market context into the pipeline. Surface how trader sentiment and media narratives could evolve after key events.

Crisis Response Modeling

Upload crisis documentation and simulate rapid-response scenarios. Identify which narratives gain traction and where sentiment fractures.

Technology Adoption

Map the stakeholder landscape around emerging technologies. Simulate adoption patterns, resistance points, and discourse evolution over time.

Geopolitical Scenarios

Build entity graphs from geopolitical briefs. Run scenario simulations across multiple possible outcomes with confidence-weighted forecasts.

Public Discourse Simulation

Understand how information spreads through social platforms. Model opinion formation, polarization dynamics, and consensus pathways.

Why Phoring

Different by architecture,
not by marketing.

Not a chatbot.

A simulation engine.

Phoring doesn't generate answers from a single model prompt. It runs structured multi-agent simulations where synthetic personas interact, debate, and surface emergent patterns across configurable rounds.

Not prediction from thin air.

Grounded in evidence.

Every forecast traces back to document-sourced entities, web-retrieved intelligence, and simulation-observed dynamics. The quality of the input directly shapes the output.

Not a black box.

Source-cited and scored.

Reports include inline references [1][2][3] to specific sources. Each section carries a confidence tag — HIGH, MEDIUM, or LOW — based on how many independent data points support it.

Not a single perspective.

Multi-agent, multi-model.

Optional multi-model consensus validation runs independent LLMs as validators — scoring on coherence, precedent, and risk before producing a consensus summary appended to the report.

Methodology

Transparent by design.
Every step is auditable.

01
KNOWLEDGE GRAPH

LLM-driven ontology extraction → entity and relationship mapping → Zep Cloud storage → downstream querying for agent profiles, simulation context, and report generation.

02
WEB ENRICHMENT

Entity-scoped queries via Serper and NewsAPI. Articles scraped and processed up to 4,000 characters each. Social content sourced via Google Search indexing.

03
SIMULATION ENGINE

OASIS framework spawns synthetic environments where LLM-generated agents interact based on assigned personas, stances, and behavioral parameters. Results stream in real time.

04
REPORT GENERATION

ReACT loop pulls from knowledge graph, web intelligence, and simulation data. Claims are backed by inline numbered references with a full sources section.

05
CONFIDENCE SCORING

Each report section tagged [HIGH], [MEDIUM], or [LOW] based on independent tool-sourced data points. Reflects evidence density — not a guarantee of accuracy.

06
CONSENSUS VALIDATION

Optional. Up to 3 independent LLM validators score predictions on coherence, precedent, and risk. A consensus summary is appended to the final report.

Built onOASISCAMEL AIZep CloudSerperNewsAPIOpenAI
New Simulation

Upload documents,
define your scenario.

Drop your source files and describe the scenario you want to simulate. Phoring handles the rest.

Drop files here or click to browse

PDF · MD · TXT — up to 50 MB

Source-Cited ReportsKnowledge GraphOASIS Simulation
Phoring
Ready to Begin

Start mapping
what's ahead.

Upload your documents, define a scenario, and let Phoring build the intelligence.