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Use Cases in Action!
Successfully Creating and Utilizing AI Use Cases.

Imagine you are tasked with advancing AI in your company—there are ideas everywhere, but no one knows exactly where the greatest benefits lie. This is where use cases come in: they create clarity, priorities, and a common language between strategy, business units, data science, and IT. Instead of planning abstract AI initiatives, use cases reveal which applications create real added value and what data and resources are needed to achieve this.

In the following article, you will learn what a use case is in the context of data & AI, why it is so effective, and how you can successfully implement it in your organization.

Lesedauer: 6-7 min.

Use Case vs. User Story

Was ist der Unterschied zwischen einem Anwendungsfall und einer User Story?

Obwohl beide Konzepte, Use Case und User Story, aus dem Bereich Software Engineering stammen, operieren sie auf unterschiedlichen Abstraktionsebenen.
Zusammen helfen sie dabei, die Lücke zwischen strategischer Absicht und praktischer Umsetzung bei Daten- und KI-Initiativen zu schließen.

Use Case vs. User Story: What is the Difference?

A Use Case is a strategic, lifecycle-oriented artifact that spans from the initial idea to operational use and scaling.
It serves as a conceptual and functional reference across this entire journey — connecting business goals, data foundations, technical implementation, and governance.

User Stories, on the other hand, are operational work items created within individual phases — for example, during a PoC — to describe concrete development or integration tasks.
They are time-bound, managed within task or sprint frameworks, and completed once delivered.

ℹ️ In short, the Use Case provides the continuous steering framework across the lifecycle of an AI initiative with big picture view, while User Stories represent the tactical execution steps that bring it to life.

Comparison: Use Case vs. User Story in the Data & AI Context

Aspect Use Case User Story
Level Strategic / Business-oriented Operational / Technical
Purpose Lifecycle artifact that manages an AI initiative from idea to production. Provides a common framework linking business, data, and technology. Short-term work item describing a concrete development or integration task.
Scope Covers the full lifecycle (Ideation → Scoping → PoC → Pilot → Operation → Scale). Exists within a specific phase (e.g., PoC or sprint).
Focus Business objective, process context, data, KPIs, governance, and value creation. Implementation detail: functionality, feature, or interaction.
Duration Long-term, continuously updated and versioned (living artifact). Time-bound and completed once delivered.
Relationship Framework from which multiple user stories are derived. Contributes to the realization of a Use Case.
Responsibility Product/Business Owner, Data Science Lead, Governance. Product Owner, Development or Data Team.
Output Documented Data & AI application (e.g., Use Case Card) that evolves across the lifecycle. Completed feature or task contributing to the Use Case’s implementation.
Example “Predictive Maintenance to reduce unplanned downtime by 10%.” “As a technician, I want to receive an alert when a sensor threshold is exceeded.”

Agile Perspektive:

From an agile standpoint, a Use Case often corresponds to an Epic – a broader, higher-level unit of work that can include multiple User Stories and Tasks. It serves as a living artifact, evolving throughout the lifecycle as insights, requirements, and data mature.

While User Stories primarily guide execution within the development team, the Use Case acts as a shared reference point between business and tech – from the initial idea to production and beyond.

Use Cases in Aktion

Warum sind Use Cases für Daten- und KI-Initiativen so hilfreich?

AI projects rarely fail due to poor model quality alone, but rather due to a lack of clarity about the goal, users, and integration. A clearly formulated use case can help here:

  • 💰 Focus on business value: Every data processing operation is linked to clear KPIs and hypotheses (e.g., „−20% processing time,“ „+8% conversion“).
  • 💎 Prioritization & transparency: Benefits, feasibility, risks, and maturity become comparable—ideal for portfolios and roadmaps.
  • 🛠️ Deliverability: From scoping to implementation, expectations, processes (happy/edge cases), and proof of success are documented.
  • ⚖️ Governance & Compliance: Data origin, rights, bias/safety risks, GDPR/industry rules, and operation (monitoring, drift) are addressed.
  • 📑 Common ground: Use cases create a common language between business, data science, and IT.

What is an use case-driven AI transformation.

In many organizations today, working with use cases is part of what is known as use case-driven AI transformation. This means that strategic goals are not pursued top-down via large technology programs, but bottom-up via concrete, measurable use cases. The basic idea: Instead of first building expensive data platforms or AI infrastructures „in reserve,“ the question is asked from the outset:

  • Which use cases create the greatest strategic added value?
  • What data and technologies are necessary for this – and can then be reused for other use cases?

This results in incremental, value-oriented technological development. Infrastructure, data access, and expertise are created where they contribute directly to implementation – and step by step form a solid basis for further use cases.

This approach prevents long waterfall projects without tangible results and ensures that investments are aligned with real business outcomes. At the same time, it promotes a learning organization that continuously prioritizes, evaluates, and scales use cases.

In short, strategy, technology, and organization develop in a use case-driven manner rather than a technology-driven one, always with an eye on operational added value.

Use Case Kategorien

Arten von Use Cases

In der Praxis wird zwischen zwei Perspektiven und – innerhalb der Black Box – zwei Ebenen unterschieden. Diese Struktur hilft dabei, das Ziel, den Nutzen und die Umsetzung klar miteinander zu verknüpfen.

Black Box vs. White Box

  • Black Box Use Case (business-focused):
    Describes what the system should do and why this creates value (outcome, KPI, user perspective) without revealing how it works internally. These are often expanded by business use cases and KPIs (business objectives at the process level).
  • White Box Use Case (technology/governance supplement):
    Documents how the performance is generated: data flows, models/prompts, components, interfaces, guardrails, MLOps.

Examples of AI-specific use case subtypes

  • Analytics/BI: KPI reports, root cause analysis, monitoring.
  • Predictive/prescriptive: forecasts, scores, recommendations.
  • GenAI/LLM: Knowledge assistance, text/code generation, RAG.
  • Automation: document extraction, classification, decision workflows.

 

Casebase combines these views in a consistent model

A black-box specification for portfolio & stakeholders is supplemented by white-box details for technology & governance – consistently throughout the entire lifecycle (idea → scoping → discovery → PoC → pilot → production → scale).
Goals, data, models/prompts, KPIs, risks, and operations thus remain consistently linked.

Erlebe Use Cases live in Aktion.

Entdecken Sie, wie Casebase Teams dabei hilft, Strategie und Umsetzung über den gesamten KI-Lebenszyklus hinweg zu verbinden.

LEBENDIGES ARTEFACT

Der Prozess der Erstellung eines Data Analytics & KI- Use Case

Ein Use Case für Daten und KI ist kein statisches Dokument, sondern ein lebendiges Artefakt, das sich im Laufe des Projekts weiterentwickelt. Von der ersten Idee bis zur produktiven Umsetzung wird der Use Case schrittweise spezifiziert, bewertet und dokumentiert. Das Ziel besteht darin, den geschäftlichen Nutzen, die Datenanforderungen und die technische Machbarkeit aufeinander abzustimmen – entlang klar definierter Reifegrade und Qualitätskontrollen.

Use Case Funnel Management – From Idea to Implementation.

The path of a data & AI use case usually follows a structured funnel or maturity model: From the initial idea (ideation) to scoping & evaluation and discovery/prototyping to pilot, operation, and scaling, the use case is gradually specified, evaluated, and implemented. Each phase has clear quality gates – this keeps the focus on business value, feasibility, and risk.

Building a Use Case Artifact

Traditionally, a use case consists of a specification (text) and, where appropriate, a diagram (e.g., UML) that visualizes actors, system boundaries, and relationships.
In the context of data and AI, additional dimensions are added: data, models, operation, and governance.

A practical Data Analytics & AI Use Case includes, among other things:

📘 Data & AI Use Case – Recommended Structure

Category Field / Element Description / Purpose
Business Context Problem Definition Initial situation, business pain, or opportunity addressed by the Use Case.
Goal / Job-to-be-Done What should be improved, automated, or decided?
Value Contribution Assessment Expected KPIs, value drivers, benefits, or quantified potential (€ / %).
Value Driver Description Explanation of how value is created (internal vs. external).
Added Value Summary Short narrative of the improvement or business impact.
Target Vision / Desired Outcome Description of the future state once the Use Case is implemented.
Strategic Alignment Link to strategic initiatives, products, or corporate priorities.
Organisational Ownership Responsible business unit or department.
Feasibility & Scope Feasibility Assessment Data availability, technological maturity, and skill/resource requirements.
Actors & Target Groups Who uses or benefits from the solution?
Process Context & Trigger Where and when does the Use Case occur in the business process?
Process Flow & Logic Normal flow, alternative paths, and edge cases.
Data Requirements Required data sources, availability, quality, timeliness, and access rights.
Output & Integration Point Score, decision, text, API, workflow, or dashboard output.
Use Case Type e.g., Personalization & Recommendation / NLP / Computer Vision / GenAI.
Technical & Operational Solution Approach Short description of the envisioned method, model, or architecture.
Technology Mapping Link to technologies, platforms, and toolchains used.
Non-Functional Requirements Latency, scalability, cost limits, explainability, and security.
Success Measurement ML metrics and business KPIs, including experiment or A/B test plan.
Risks & Compliance Bias, IP/copyright, GDPR, hallucinations, AI Act considerations.
Operation & Monitoring MLOps / LLMOps setup, drift detection, guardrails, feedback loops.
Linked Artefacts References to Model Cards, Data Cards, and (future) Agent Cards.

Standardized Artifacts with Casebase

In Casebase, each use case is documented as a use case card – a structured, versionable artifact that combines business and technical perspectives.

The following can be added as supplements:

  • Model Cards: document ML/LLM models, versions, metrics, and deployment limits.
  • Data Cards: describe data sets used, origin, quality, rights, and risks.
  • Agent Cards: for AI agents, LLM chains, and autonomous workflows.

These standardized artifacts create transparency, traceability, and governance throughout the entire AI lifecycle – from the initial idea to productive use. This turns the use case into more than just a project document; it becomes a central, living control instrument for data & AI initiatives.

Prozessimplementierung

Integration von Data Analytics und KI- Use Cases in Ihre KI-Transformation

Ein Use Case ist immer ein Team-Artefakt – er richtet sich an alle, die gemeinsam für den Erfolg einer KI-Initiative verantwortlich sind:

Roles that benefit from use cases

    👩‍🚀Produkt- oder Geschäftsinhaber … die die technischen Ziele und den erwarteten Mehrwert definieren.

    👩‍🚀 IT- und Architekturteams … die Infrastruktur, Datenplattformen und Integrationspfade bereitstellen.

    👩‍🚀Compliance- und Datenschutzmanager … die dafür sorgen, dass rechtliche und ethische Rahmenbedingungen gegeben sind.

    👩‍🚀 Data Scientists und ML-Ingenieure …, die Methoden, Modelle und technische Machbarkeit entwerfen.

    👩‍🚀Manager und Entscheidungsträger …, die Prioritäten setzen und die Auswirkungen auf das Geschäft bewerten.

    For a use case to work in practice, it should not be viewed in isolation, but rather as an integrated component of the overall AI transformation.

    It helps to align strategy, technology, and organization:

    • Strategically through clearly prioritized use case portfolios,
    • operationally through shared artifacts and language,
    • culturally through continuous learning and adaptation along the maturity levels.

    Practical tip: Successful teams see the use case as a „living document“ – a central control instrument that evolves with each step of insight and is regularly reviewed.

    Divide large projects into deliverable Use Cases

    For larger products or programs, several use cases can together form this strategic initiative. This is because individual use cases can in turn be defined within this initiative – separable areas of responsibility that can be implemented separately.

    Example: Chatbot development

    • One use case covers speech processing (intent recognition, dialogue control).
    • Another relates to image interpretation (visual inputs).
    • A third generates speech responses or uses generative AI for more natural dialogues.

    Each use case has clear hypotheses, metrics, and termination criteria.
    This avoids lengthy PoCs with no effect and provides genuine feedback from practice at an early stage.

    Practical Do´s & Dont´s

    Good use case practice means: „Think big, start small, learn fast“ – but always with a documented, verifiable business goal.

    ✅ Do´s

    🟢 Clarify the business outcome first

    🟢 Check data quality and compliance early on

    🟢 Use dual metrics (ML + business)

    🟢 Define slices with clear termination criteria

    🟢 Actively support change and adoption

    🟢 Keep artifacts (use case, model, data card) up to date

      ❌ Dont´s

      🔴 Technology without a clear business fit

      🔴 Endless PoCs without integration

      🔴 Only looking at offline metrics

      🔴 Ignoring drift, safety, or costs

      🔴 Leaving governance and ownership unclear

        Data Analytics & KI Use Cases

        Fazit

        Data Analytics & AI Use Cases are the common language between business, data/IT, and governance.
        In the data & AI environment, they ensure that ideas become effective, measurable solutions – structured across the entire lifecycle, from the initial hypothesis to productive operation.

        Their roots in software engineering (Jacobson) – the outside view of interaction – are more relevant today than ever: only those who understand what problem they are solving for whom can anchor data & AI in the long term.
        Tools such as Casebase support this approach by combining use cases, data, models, and governance in a consistent structure – so that AI visions can be turned into demonstrable added value.

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