Learning Feasibility Study
by NeverSight
Assess technical, financial, operational, and organizational feasibility of learning projects including resource requirements, budget, timeline, and risk analysis. Use when evaluating project viability before committing resources. Activates on "feasibility study", "project viability", "resource planning", or "can we do this".
Skill Details
name: learning-feasibility-study description: Assess technical, financial, operational, and organizational feasibility of learning projects including resource requirements, budget, timeline, and risk analysis. Use when evaluating project viability before committing resources. Activates on "feasibility study", "project viability", "resource planning", or "can we do this".
Learning Feasibility Study
Evaluate whether a learning project is feasible given constraints and resources.
When to Use
- Before major learning initiatives
- Resource allocation decisions
- Risk assessment
- Go/no-go decisions
- Pilot program planning
Feasibility Dimensions
1. Technical Feasibility
- Platform/technology capabilities
- Content production capacity
- Technical infrastructure
- Integration requirements
2. Financial Feasibility
- Development costs
- Delivery costs
- Ongoing maintenance
- Revenue potential / ROI
3. Operational Feasibility
- Team capacity and skills
- Timeline realism
- Scalability analysis
- Support requirements
4. Organizational Feasibility
- Stakeholder buy-in
- Change management needs
- Cultural fit
- Competing priorities
CLI Interface
/learning.feasibility-study --project "enterprise LMS implementation" --budget "500k" --timeline "6 months"
/learning.feasibility-study --quick-assessment --scope "online MBA program"
Output
- Feasibility report (Go/No-Go/Conditional)
- Resource requirements
- Risk register
- Implementation roadmap
Composition
Input from: /learning.needs-analysis, /learning.market-research
Output to: Project planning, stakeholder decision
Exit Codes
- 0: Study complete
- 1: Insufficient information
- 2: Invalid parameters
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