UseCase

Trade Surveillance and Market Abuse Detection

PiTech builds AI-augmented trade surveillance programs for broker-dealers and investment banks reducing false-positive alert volumes 30–50%, delivering full MAR and MiFID II manipulation typology coverage, and producing the regulatory methodology documentation that SEC and FINRA trade surveillance examiners expect to see. 30–50%

30–50%

False-positive alert reduction

Full Coverage

MAR/MiFID II typologies

$2.9B

Industry surveillance penalties (24 months)

Exam-ready

Methodology documentation

Client Snapshot

Industry

Capital Markets

Solution

AI, GenAI & ML | Data Solutions

Complexity

High

Delivery

Architecture + Implementation

The Problem

Surveillance programs at most mid-tier broker-dealers are rule-heavy and alert-light  hundreds of active detection rules generating alert volumes that analyst teams cannot fully review within policy-defined timeframes. When surveillance alert backlogs exceed review capacity, the program is operationally non-compliant even if documentation suggests otherwise. SEC and FINRA examiners have significantly increased trade surveillance scrutiny since 2022, focusing on whether programs generate appropriate alerts and whether those alerts are reviewed on time.

Market abuse patterns have evolved beyond static rule detection capability. Cross-product manipulation linking equity and options positions, layering schemes that exploit fragmented execution across multiple venues, and spoofing patterns that adapt to known detection rules all require detection approaches that combine multiple data streams across extended time windows. AI-driven surveillance that learns evolving manipulation patterns consistently outperforms static rule coverage for these complex schemes.

Ready to Start?

Schedule a Surveillance Program Assessment

Get a candid analysis of your current detection coverage, alert backlog, and examination readiness.

$2.9B

in SEC and FINRA enforcement penalties related to surveillance failures in a 24-month period. The most common finding: surveillance programs with documented rule coverage that failed to demonstrate alerts were reviewed within policy-defined timeframes. Alert backlog is the primary enforcement driver not coverage gaps.

How PiTech Delivers

01

Surveillance Coverage Assessment

Current rule library mapped to MAR Article 12, MiFID II, and FINRA manipulation typologies. Coverage gaps identified. False-positive rate analyzed by rule family and asset class. Output: prioritized enhancement roadmap with estimated alert volume impact.

02

AI-Augmented Detection Deployment

Machine learning models trained on historical surveillance outcomes for complex patterns  layering, spoofing, cross-product manipulation, wash trading  that static rules consistently miss. Unsupervised anomaly detection layer for emerging manipulation behaviors outside training history.

03

Alert Management Workflow Optimization

Pre-enrichment pipeline supplies investigation templates with relevant order, execution, communication, and position data before the alert reaches an analyst. Investigation time per alert reduced, enabling higher throughput without additional headcount addressing backlog compliance directly.

04

Regulatory Documentation Package

Surveillance methodology documentation, detection coverage matrix, alert review workflow evidence, and investigation completion records  structured for SEC, FINRA, FCA, and ESMA examination review. Documentation produced as a standard program deliverable, not assembled reactively before examination.

Proven Outcomes

30–50%

False-positive alert reduction in deployed surveillance programs

Full

MAR/MiFID II manipulation typology coverage in every engagement

18+ yrs

Capital markets regulatory experience SEC, FINRA, FCA, ESMA expertise

Proven Outcomes

18+

Years in Regulated Industries

What You Gain

30–50%

False-positive alert reduction through AI-augmented detection

Full

MAR/MiFID II manipulation typology coverage including cross-product schemes

Documented

Surveillance methodology and coverage matrix for regulatory examination

Reduced

Average analyst investigation time per alert through pre-enrichment

What's Included

Surveillance coverage matrix

Surveillance coverage matrix

Rule library mapped to MAR Article 12, MiFID II, and FINRA typologies with gap analysis

AI detection models

AI detection models

Layering, spoofing, cross-product manipulation, front-running, and wash trading detection models

Cross-asset surveillance data model

Cross-asset surveillance data model

Equity, fixed income, derivatives, FX, and commodity data integration for cross-product monitoring

Alert pre-enrichment pipeline

Alert pre-enrichment pipeline

Order book, execution, position, communication, and reference data assembled for investigation templates

Alert review workflow management

Alert review workflow management

Case creation, investigation status tracking, escalation, and regulatory reporting workflow

Communication surveillance integration

Fair lending monitoring module

Communication surveillance integration

Voice and electronic communication data linkage to trading activity for contextual investigation

Regulatory methodology documentation

Regulatory methodology documentation

Coverage matrix, detection methodology, alert review workflow, and investigation completion evidence

Frequently Asked Questions

What market abuse typologies does PiTech's AI surveillance detect?

PiTech deploys detection models for layering and spoofing (single and cross-venue), front-running, cross-product manipulation linking equity and derivatives positions, wash trading, marking the close, and painting the tape. An unsupervised anomaly detection layer handles novel manipulation patterns outside the historical training distribution.

PiTech integrates voice transcript, electronic messaging, and chat data with trading activity records for contextual alert enrichment. Examiners expect surveillance programs to correlate trader communications with potentially abusive trading patterns  PiTech’s architecture delivers this correlation as a standard investigation context component rather than a separate manual process.

Examiners focus on three dimensions: coverage (are the right manipulation typologies being detected), review (are all alerts being reviewed within policy-defined timeframes with complete documentation), and methodology (can the firm demonstrate the detection rationale is sound and the program is risk-based). PiTech designs programs to satisfy all three dimensions explicitly.

Yes. PiTech can enhance existing rule libraries, add AI detection layers on top of current surveillance platforms (NICE Actimize, SMARTS, Nasdaq Surveillance), and improve alert management workflows without platform replacement  the most cost-effective path for firms with established surveillance infrastructure.

Alert backlog is a workflow design problem, not a staffing problem at most firms. PiTech addresses it through three levers: reducing alert volume through AI-based false-positive reduction, reducing investigation time per alert through pre-enrichment automation, and implementing workflow prioritization that ensures policy-defined timeframe compliance for high-priority alerts first.

Trade surveillance program quality is a direct measure of regulatory relationship health. PiTech builds programs that satisfy examiners and protect the firm.

Contact PiTech to begin with a surveillance coverage and backlog assessment  specific to your product mix and regulatory jurisdiction.

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