Built for regulated investment teams

Governed
quant workflows
for investment teams

Alpha Quant Agent is the governed quant analytics platform built by Nexqion Analytics.

Alpha Quant Agent runs 150+ deterministic quant methods on your data, with approval gates and a full audit trail — built for the teams where Aladdin is out of reach and ChatGPT is banned by compliance.

< 2 min
Automated report generation
150+
Deterministic methods
0
Fund data transmitted to external AI APIs
Portfolio AnalyticsQ4 2025 Prediction
Ready
Performance Report
Low
Risk Analysis
Core Offer + Expansion

Start with one governed workflow, then expand around it

Governed quant workflows

Institutional validation, risk oversight, and decision-ready reporting delivered through deterministic analytics and controlled execution.

Open solution

Custom research engineering

Build client-specific models, diagnostics, and validation logic, then integrate them into the workflow.

Open solution

Workflow automation & integration

Connect data ingestion, document flows, approvals, and distribution around the core workflow.

Open solution

Azure deployment for regulated teams

Design the landing zone, identity, storage, and governance needed to run workflows securely in production.

Open solution
Who this is for

For the segment Aladdin ignores — and where ChatGPT is banned.

Aladdin requires $100B+ AUM and multi-year enterprise contracts. General LLMs are prohibited at JPMorgan, Goldman, Deutsche Bank, Citi, and most regulated asset managers for liability and compliance reasons. Alpha Quant Agent is built for the $200M–$2B mid-market segment — institutional-grade governance, without the institutional price tag.

Aladdin
Out of reach
Enterprise pricing and implementation built for $100B+ funds — not practical for mid-market
ChatGPT / Copilot
Banned by compliance
No audit trail · Data leaves your environment · No deterministic output
Excel + manual process
Too slow
3 days to rebuild the report the PM changes in the room
Alpha Quant Agent
Built for you
Governed, deterministic, audit-ready — Azure-hosted, client-isolated compute and storage
Core Solution

Institutional quant depth — without the quant team

Your analysts spend three days rebuilding the attribution report that the PM changes in the room anyway. Alpha Quant Agent runs the full analysis in minutes — factor attribution, anomaly flags, compliance narrative, and a governed PDF — so your team is adding judgment, not building spreadsheets.

Human approval gates before every sensitive transition — enforced at the API level, not just the UI
150+ governed methods: from Sharpe and VaR to CPCV, deflated Sharpe, and Fama-French 5-factor — in production from day one
Anomaly detection after every run: flags when any metric is statistically unusual vs. your own run history
Mandate alerting: automatically checks every output against your configured thresholds — breaches logged in the audit trail
Standard reports on demand: monthly factsheets, quarterly LP letters, GIPS composites, risk committee packs
Signal research and portfolio construction under the same governed framework — walk-forward validated backtests, factor attribution, and optimisation with immutable run records

CCO/CRO and PM/Quant teams work from the same platform — same governance layer, same audit trail, same Azure tenant.

Data and methods
Documents, APIs
Workflow runtime
Planning, analytics, approvals
Built for every stakeholder on the investment team
CCO
Chief Compliance Officer

Every run produces an immutable record: inputs, methods, outputs, approvals — structured for regulatory examination by SEC, FCA, and ESMA.

Audit trail · SR 11-7 · Reproducibility
CRO
Chief Risk Officer

150+ validated deterministic methods. No probabilistic output, no hallucination risk. Every number is traceable to a model, a dataset, and a timestamp. Your risk team can validate every figure.

Deterministic · Model validation · Anomaly detection
CIO
Chief Investment Officer

Your analysts run factor attribution, anomaly detection, and a compliance narrative in minutes — not days. The report the PM needs for the committee meeting is ready before the meeting.

Speed to insight · Factor attribution · Alpha
CTO
Chief Technology Officer

Azure-native deployment. No multi-tenant model training. No fund data touches a shared inference endpoint. Enterprise deployments run in your own Azure tenant — full infrastructure ownership on the cloud you already trust.

Data sovereignty · Azure tenant · No vendor lock-in
PM
Quant PM / Head of Research

Walk-forward validated backtests, Fama-French attribution, and portfolio optimisation — governed runs with immutable records, the same audit trail as your risk committee pack.

Signal research · Factor attribution · Portfolio construction
Engagement Model

How engagements move from diagnostic to deployment

We start with one workflow, prove the value, then add research engineering, automation, or Azure delivery only when it improves the outcome.

Workflow diagnostic aligned to your data, outputs, and governance needs
Pilot one high-value workflow before broad rollout
Expand with integrations, custom models, or Azure hardening when required
01
Diagnose
Map the workflow, inputs, outputs, and controls
02
Pilot
Deliver one governed workflow with usable outputs
03
Deploy
Harden for team use with approvals and operations
04
Expand
Add research, automation, or Azure modules as needed
What Clients Buy

Quant depth packaged into outputs stakeholders can use

The workflow is the product. Research engineering, automation, and cloud delivery support it when they strengthen the result.

Institutional validation and model-risk diagnostics
Risk oversight and PM decision support
Report-ready outputs with method notes and review checkpoints
Validation memos
Delivery artifacts
Decision packs
Delivery artifacts
Workflow and control notes
Delivery artifacts

Why investment teams buy NexQion

Quant-first depth

Sophisticated analytics and validation logic, not generic AI wrappers.

Governed delivery

Audit-ready outputs and explicit human approval gates — built for compliance-aware investment teams, not generic enterprise AI.

Expand without replatforming

Add research, automation, or Azure deployment around the core workflow as needs grow.

Alpha Quant Agent vs general AI

Not just an AI assistant. A governed analytics engine.

General LLMs generate text that looks like quant finance. Alpha Quant Agent runs the actual methods — deterministic, reproducible, and defensible to a risk committee or regulator.

CapabilityGeneral LLMAlpha Quant Agent
Sharpe / Sortino / CalmarDescribes the formulaComputes from your data — same inputs, same result, every time
VaR backtest (Kupiec / Christoffersen)Can explain the testRuns the statistical test, flags breach rate, logs result
Fama-French 5-factor regressionText description onlyRegression computed, rolling exposures charted, attribution decomposed
CPCV / Deflated Sharpe RatioCan describe the conceptRuns the algorithm, quantifies overfitting risk, returns a p-value
SEC Form ADV / PF / 13F validationGeneric text guidanceSchema validation with field-level breach log and deadline check
LP pitchbook or monthly factsheetCan draft proseGenerates a formatted multi-section PDF — no hallucinated exhibits
Fund data stays privateData sent to OpenAIRuns on Azure — fund data stays within the Azure environment, not sent to external AI APIs
Human approval before sensitive runsNo concept of approvalsEnforced checkpoint at API level with full audit trail

LLMs generate. Alpha Quant Agent executes.

LLMs pattern-match on text that looks like correct output — they don't run the math. Alpha Quant Agent routes every calculation through a governed computation engine: same inputs, same result, every time. Reproducible, citable by methodology, defensible to a regulator.

Your data never leaves your environment.

No fund data is sent to third-party AI APIs. Alpha Quant Agent runs on Azure with AES-256 encryption and client-isolated storage. Enterprise deployments run in your own Azure tenant.

Governance that general AI cannot provide.

Explicit human approval checkpoints, full audit trails, and reproducible runs — designed for regulated investment teams from day one.

Your data, your Azure tenant

Your fund data stays in your Azure environment. Method execution and computations run in isolation — no portfolio data is sent to external AI APIs.

Deterministic reproducibility

Same inputs · same method · same output — every time. Auditable, citable, reproducible months later.

Full audit chain

Every run logs: who, which data, which method version, who approved, when. Downloadable audit report.

Human approval gates

Enforced checkpoints before any governed output. No bypass possible. SR 11-7 · EU AI Act · ESMA 2024.

Performance alpha — what the agent surfaces after every run

Governance that actively improves performance

Most analytics tools show you numbers. Alpha Quant Agent tells you when something is statistically wrong, when a mandate is at risk, and what the numbers mean — every single run.

Active after 5 runs

Cross-run anomaly detection

After every run, every metric is compared against your own trailing history. Anything more than 2 standard deviations from your average is flagged — with context: '3.3σ below your 14-month average, based on 14 runs.' Activates automatically after 5 runs.

Runs on every analysis

Mandate threshold alerting

Set limits once in Settings — beta cap, drawdown floor, VaR ceiling, any metric. Every run checks the output against your limits automatically. Breaches are flagged, recorded in the audit trail, and surfaced in the Flags tab. No dashboard to remember to open.

Every paragraph is cited

Compliance narrative from verified numbers

After every analytics run, a plain-English commentary is generated from the computed numbers only — not from general knowledge. Every sentence cites which metric it came from. Your PM gets a narrative that a compliance officer can stand behind.

Regulatory guidance

What the SEC expects from AI-assisted investment analytics

A practical framework for CCOs and CROs evaluating AI analytics tools — covering audit trail requirements, explainability standards, and the recordkeeping obligations that apply to every AI-informed investment decision.