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Operations AI

CRISP-DM Engine

Deployable data pipelines that convert raw business data into production-grade AI models.

CRISP-DM Engine

Ship Predictive Models Without Wandering Through Six Months of Notebooks

Most data science engagements collapse at the same point: brilliant exploration, no deployment. The CRISP-DM Methodology Engine is Forenly’s production framework that drives every predictive analytics initiative through six disciplined phases — from business question to live model — with full traceability and an exit gate at every stage.

📊 The Six-Phase Lifecycle We Execute

1. Business Understanding

  • Translate stakeholder pain into a measurable target variable.
  • Define success criteria (R², F1, ROC-AUC, business KPI) before any code is written.
  • Identify cost-of-failure and acceptable confidence intervals.

2. Data Understanding

  • Source inventory and schema reconciliation across operational systems.
  • Quality assessment: missingness, drift, distribution shifts, outlier topology.
  • Exploratory analysis with reproducible notebooks and statistical baselines.

3. Data Preparation

  • Cleaning, imputation strategy, and leakage controls.
  • Feature engineering, lag construction, and time-series segmentation.
  • Train / validation / test partitioning with documented stratification.

4. Modeling

  • Algorithm shortlist tailored to the problem class — linear, tree-based, gradient boosting, neural, ensembles.
  • Hyperparameter optimization with cross-validated search.
  • Pipeline comparison reports so business stakeholders see why one model wins.

5. Evaluation

  • Residual analysis, overfitting checks, and out-of-sample stress tests.
  • Bias and fairness audit where the use case demands it.
  • Go / no-go decision against the success criteria defined in phase 1.

6. Deployment

  • Final model packaged with inference pipeline, monitoring hooks, and rollback plan.
  • Documentation, model card, and operator handbook included.
  • Re-training cadence and drift triggers configured before launch.

📦 What’s Included

  • End-to-end pipeline in a reproducible repository, structured by CRISP-DM phase.
  • Comparative model report — multiple algorithms benchmarked against your success metric.
  • Deployable inference layer with monitoring, alerts, and re-training playbook.
  • Executive summary every stakeholder can read in under five minutes.

🎯 Who This Is For

  • Operations leaders sitting on operational data they cannot turn into decisions.
  • Data teams that need a senior delivery framework to escape proof-of-concept purgatory.
  • Compliance-sensitive industries where auditability of the modeling process is non-negotiable.

Stop prototyping. Start deploying. Book a discovery session and we will map your business question to a CRISP-DM delivery plan within 48 hours.

What it can do

Data Cleaning

Process and ingest raw files and database dumps automatically.

Model Training

Train predictive algorithms tailored to your metrics.

Pipeline Audits

Auditable pipelines ensure models remain stable and unbiased.

Production Ready

Expose models as lightning-fast REST APIs.

Deployment flow

01 — AI Audit

AI Audit

Map your business workflows, tech stack, and strategic growth opportunities.

02 — Configuration

Configuration

Configure the core platform and customize the integration layers for your stack.

03 — Deployment

Deployment

Launch live, high-performance AI workflows and customer experiences with zero friction.

04 — Optimization

Optimization

Continuous post-launch support, telemetry monitoring, and model alignment runs.

Built with modern AI infrastructure

CRISP-DM standard · Python ML · Docker · FastAPI

Forenly AI Platform

AI Deployment

Start with an AI Audit

Deploy CRISP-DM Engine on your business. The $499 diagnostics fee is 100% credited toward your deployment plan.

Start AI Audit
Security Solid Protocol
Deployment Rapid Scale