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From Data to Decisions, With Audit- Ready Model Risk Management

NexML is an AutoML + MLOps platform for banks, lenders, and credit unions. Build, deploy, and monitor ML with continuous drift detection, explainable AI for risk management, and examiner-ready documentation — while data stays on your servers.


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    About NexML

    What Is NexML?

    NexML unifies data/feature management, model training, deployment, monitoring, and documentation behind rigorous machine learning governance in credit unions and financial institutions.

    Result: fewer audit surprises, faster remediation, lower losses, and smoother collaboration across Risk, Finance, Data, and Tech without sending data off-prem. Our credit union AI solutions ensure regulatory AI tools work seamlessly with your existing infrastructure.

    The Problems We Solve

    • Slow Model Development Weeks spent manually tuning models, complex handovers between data science and engineering teams are key reasons why models fail audits that credit unions face today.
    • Fragile Deployments Broken pipelines in production, deployment failures, and lack of proper version control in MLOps for credit unions.
    • Blind Spots in Production No automated model monitoring tools, delayed drift detection, and reactive rather than proactive AI risk management.
    • Compliance Gaps Audit difficulties, lack of explainable AI for risk management, missing documentation, and NCUA model risk guidance 2025 requirements not being met.
    Problems

    Solution by Role

    Outcomes That Matter

    Outcomes
    • Hours/Days MTTA to drift: months → hours/days with automated model monitoring tools
    • < 7 Days Time to remediation with tracked owners & SLAs for credit union model risk management
    • 50-70% Validation cycle time reduction via auto-generated audit-ready machine learning credit unions documentation
    • 100% Production models monitored with coverage through continuous model validation finance processes
    • Built-in Fairness & overrides: thresholds, alerts, review workflows for model monitoring for credit unions

    Platform Capabilities

    Data & Features

    Data & Features

    Data & Features

    Connect to core banking, LOS/LMS, cards/txn, bureau data. Governed feature store with reuse and time-travel for AutoML for credit unions.

    AutoML & Training

    AutoML & Training

    AutoML & Training

    Classification, regression; automated feature engineering & hyper-opt with leakage/imbalance guardrails. Specialized credit risk AutoML credit unions can trust.

    Deployment & Serving

    Deployment & Serving

    Deployment & Serving

    Batch & real-time scoring, champion-challenger, canary releases, rollback capabilities designed as regulator-friendly AI for banks/credit unions.

    Monitoring & Governance

    Monitoring & Governance

    Monitoring & Governance

    Advanced model drift detection, stability (PSI/CSI), bias monitoring, performance SLAs; comprehensive model governance software that US credit unions require with registry, lineage, approvals, and immutable audit logs.

    Security & Compliance

    Security & Compliance

    Security & Compliance

    RBAC, SSO/SAML, SIEM hooks, BYO KMS/HSM; on-prem/VPC and air-gapped options ensuring credit union compliance with AI standards are met.

    Finance Use Case

    1
    Credit Risk & Underwriting

    Auto, cards, unsecured lending with automated decisioning and loan default prediction AI

    2
    Fraud & Anomaly Detection

    Cards/ACH/ATO protection with fraud detection, AutoML credit unions need

    3
    AML Alert Triage

    Reduce false positives and streamline compliance with AI compliance solutions for credit unions

    4
    Limit Management

    Cross-sell propensity and dynamic limit optimization

    5
    Loss Forecasting

    Stress testing and portfolio risk management

    6
    Early Delinquency Detection

    Collections prioritization with predictive analytics

    ROI Snapshot

    Outcomes

    50-70%

    Validation & documentation effort reduction with audit-ready machine learning credit unions

    Months → Day

    Drift remediation timeline improvement through automated model monitoring tools

    60%

    Reduction in deployment failures using MLOps for credit unions

    30-50%

    Savings on AutoML infrastructure costs for credit union model risk management

    Frequently Asked Questions

    No—hybrid/on-prem deployment ensures data remains on your servers/VPC. You maintain complete control over your data and intellectual property while meeting credit union compliance AI requirements.

    Yes—model cards, lineage tracking, approval workflows, and audit logs export to PDF/HTML format for regulatory review, fully compliant with NCUA compliance tools standards and audit-ready AI requirements.

    Yes—local explanations generate compliant reason codes for regulatory requirements and customer transparency through credit risk AutoML credit unions.

    Built-in diagnostics with configurable thresholds, automated alerts, and mitigation workflows to ensure responsible AI deployment as part of our comprehensive AI risk management approach.

    Yes—register, monitor, and document your existing models alongside new NexML models in a unified model governance software US credit unions can rely on.

    Yes—keep your existing data science stack while we add governance, deployment capabilities, and production monitoring through our MLOps for financial institutions platform.

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