Fraud Detection

Detect label misuse and track anomalies and coordinated account fraud at scale with this reasoning-capable GenAI solution.

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Goverment_Finance_Solutions_Fraud Monitoring

Executive summary

Detecting label misuse and coordinated account fraud requires real-time reasoning across distributed shipping data. Our Fraud Detection Agent helps agencies and logistics providers identify reused, spoofed, or misrouted labels while tracing anomalies across accounts, facilities, and routes. Built on SeekrFlow’s agentic architecture and Edge-Compatible Data Engine, it retrieves and analyzes scan logs, label files, and route metadata to deliver explainable, grounded insights. The result is faster, more transparent fraud detection that reduces audit overhead and strengthens the integrity of global networks.

Problem

Every industry that relies on labels, tags, or tracking IDs faces serious fraud risks. These identifiers tie into billing, security, and compliance workflows—and misuse is growing. Common tactics include:

Reuse of valid labels across unauthorized accounts

Misuse of programs like Global Direct Entry (GDE)

Inconsistent scan patterns across facilities

Fake return addresses to bypass scrutiny

Much of this data lives at the edge, scattered across scan logs, label files, and route metadata. Because of this, centralized detection is difficult and often reactive.

The impact:

Revenue loss and chargeback risk

Higher cost of manual audits and investigations

Undetected fraud across large, distributed operations

Solution

Our pre-built Fraud Detection Assistant helps organizations detect, investigate, and explain misuse across labeling and tracking systems.

It empowers fraud and compliance teams to:

Detect reused, spoofed, or misrouted labels

Identify mismatches between sender, account, and return data

Trace anomalous activity across time, geography, and user profiles

Correlate systemic patterns for deeper investigations

Generate explainable, auditable summaries for decision-makers

Value

Detects emerging fraud tactics before they escalate

Delivers explainable, auditable results

Reduces manual audit overhead

Enables proactive prevention at the edge

Adapts to evolving industry regulations and fraud strategies

How it works

The solution runs on a reasoning-capable agentic architecture, powered by SeekrFlow. It ingests structured scan data (markdown files, logs, manifests), retrieves relevant patterns, supplements with external context, and generates grounded insights using language models.

Planner Agent

Understands fraud-focused questions like: “Which accounts had reused tracking numbers scanned at multiple origins?”

FileSearch Tool

Mines markdown logs from edge systems for label, scan, and account data

WebSearch Tool

Augments investigations with insights about known global fraud methods

LLM-RAG Tool

Provides natural language explanations grounded in file data, not guesses

Thread-Aware Memory

Enables analysts to follow up, revise queries, and trace prior evidence

Key capabilities

Accepts prompts like: “Which accounts shared label IDs across different facilities?”

Retrieves and analyzes label, scan, and routing data from files

Enriches context with public policy references and online fraud indicators

Explains suspicious activity in natural language, with traceable logic

Supports follow-ups and iterative analysis across investigations

Ideal users

Postal Services

Validate label use and prevent billing fraud and misrouted packages

Customs & Border Agencies

Detect illicit use of entry/return programs

Global Logistics Providers

Detect internal and third-party label anomalies

E-Commerce Platforms & Retailers

Identify account abuse and return fraud

National Security Organizations

Track patterns tied to illicit networks

Built on SeekrFlow

Edge-Compatible Data Engine

Parses scan logs, label files, and routing data from decentralized systems

FileSearch

Searches markdown-based scan events and historic fraud patterns

WebSearch

Retrieves policy references and external fraud indicators (e.g. GDE misuse)

LLM-RAG

Generates grounded, natural language explanations for suspicious label behavior

Agent Framework

Planner and Evaluator agents coordinate multi-step fraud investigations

Session Memory

Maintains context across analyst queries and follow-ups

UI or SDK Access

Supports visual analysis or programmatic workflows

Where you can extend it

Integrate with billing systems to block fraudulent charges

Train on historical fraud cases for improved precision

Add dashboards for visual scan route anomaly detection

Expand data inputs to include images, customs forms, or metadata

Refine reasoning models with internal audit policies

Takeaway

Seekr’s Fraud Detection solution transforms fragmented data into actionable intelligence. It gives organizations across industries a scalable, explainable, and adaptable way to detect and investigate label misuse — not after the fact, but as it unfolds.

See it in action

See how this AI solution works for your team. Request a live walkthrough with one of our experts and explore how it can adapt to your unique workflows and data.

Request a demo

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