Catalog
concept#AI#Machine Learning#Analytics#Data#Product

Applied Artificial Intelligence

Practical approach to applying AI methods to real business and technical problems, focusing on operationalization, data integration and measurable outcomes.

Applied Artificial Intelligence refers to the pragmatic use of AI methods to address concrete business and technical problems.
Emerging
High

Classification

  • High
  • Business
  • Architectural
  • Intermediate

Technical context

Data platforms (data lake, feature store)CI/CD systems for models (e.g. MLOps pipelines)Monitoring and observability tools

Principles & goals

Purpose orientation: models must support measurable business goals.Operationalization: plan for deployment, monitoring and maintenance from the start.Data governance: quality, traceability and privacy are prerequisites.
Discovery
Enterprise, Domain, Team

Use cases & scenarios

Compromises

  • Incorrect decisions due to unnoticed model bias.
  • Privacy breaches from improper data handling.
  • Misplaced expectations and missing ROI when poorly integrated.
  • Engage domain experts and stakeholders early.
  • Implement automated tests for data, models and endpoints.
  • Ensure versioning of models and training data.

I/O & resources

  • Relevant datasets with label or event information
  • Domain requirements and success criteria
  • Infrastructure for training and deployment
  • Production-ready models and APIs
  • Monitoring and alerting metrics
  • Documentation for testing and governance requirements

Description

Applied Artificial Intelligence refers to the pragmatic use of AI methods to address concrete business and technical problems. It emphasizes translating prototypes into production systems, integrating data pipelines and aligning outcomes with measurable business objectives. Operation, monitoring and continuous validation are core concerns.

  • Automation of complex decisions with data support.
  • Scalable personalization and efficiency improvements in processes.
  • New business models via data-driven products.

  • Data dependence: poor or biased data limit effectiveness.
  • Explainability is limited for complex models.
  • Operational overhead for infrastructure and monitoring is high.

  • Model accuracy (e.g. F1 score)

    Measures model predictive quality considering precision and recall.

  • Concept drift rate

    Indicates how often data distributions change and the model needs retraining.

  • Time-to-production deployment

    Measures duration from prototype to production as an efficiency KPI.

Retail personalization platform

A retailer integrated recommendation systems to increase conversion and basket value; focus on data integration and A/B measurement.

Predictive maintenance in manufacturing

A manufacturer deployed models to predict failures and reduced unplanned downtime through targeted maintenance.

AI-assisted creditworthiness assessment

FinTech combined ML models with rule-based checks to accelerate decisions and monitor risk.

1

Define problem: set targets and success criteria.

2

Ingest, clean and perform exploratory data analysis.

3

Build prototype, evaluate and iteratively move to production.

4

Establish monitoring, retraining and governance processes.

⚠️ Technical debt & bottlenecks

  • Ad-hoc scripts instead of reproducible pipelines.
  • Lack of model and data versioning.
  • Monolithic deployment paths without rollback strategy.
Data preparation and accessModel serving and infrastructure costsCross-functional collaboration between domain and ML
  • Rolling out an untested model into critical processes without checks.
  • Using sensitive personal data without anonymization.
  • Using ML to justify vague business goals without measurable KPIs.
  • Underestimating effort for data cleaning.
  • Missing tests for data quality and drift.
  • Ignoring regulatory requirements in early phases.
Data analysis and feature engineeringModeling and validation (ML/statistics)Software engineering and deployment skills
Data availability and qualityLatency and throughput requirements for production systemsTraceability, fairness and compliance
  • Privacy and compliance constraints
  • Limited data volumes for rare events
  • Budget and infrastructure capacity