AI Movement Heuristic
(Redirected from AI Capability Expansion Rule)
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An AI Movement Heuristic is an AI evolution guidance safe trajectory development strategy that prescribes preferential sequences and safety constraints for expanding AI system capabilityes within an AI multidimensional space model.
- AKA: AI Evolution Heuristic, AI Capability Expansion Rule, AI Development Trajectory Principle, AI Safe Growth Strategy.
- Context:
- It can typically guide AI Capability Expansion through ordered progressions and prerequisite satisfaction.
- It can typically ensure AI Safety Maintenance via risk mitigation sequences and control preservation.
- It can typically optimize AI Development Paths through efficiency principles and resource allocation.
- It can typically prevent AI Dangerous Transitions by forbidden trajectorys and safety checkpoints.
- It can typically balance AI Growth Priorityes between capability advancements and risk management.
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- It can often specify Prerequisite Relationships among capability dimensions and development stages.
- It can often provide Contingency Protocols for unexpected behaviors and boundary violations.
- It can often enable Adaptive Planning through feedback integration and trajectory adjustment.
- It can often support Multi-Stakeholder Alignment via shared principles and consensus rules.
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- It can range from being a Simple AI Movement Heuristic to being a Complex AI Movement Heuristic, depending on its rule sophistication.
- It can range from being a Conservative AI Movement Heuristic to being an Aggressive AI Movement Heuristic, depending on its risk tolerance.
- It can range from being a Linear AI Movement Heuristic to being a Non-Linear AI Movement Heuristic, depending on its path structure.
- It can range from being a Universal AI Movement Heuristic to being a Domain-Specific AI Movement Heuristic, depending on its application scope.
- It can range from being a Static AI Movement Heuristic to being an Adaptive AI Movement Heuristic, depending on its flexibility.
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- It can integrate with AI Governance Surfaces for trajectory validation.
- It can interface with AI Risk Assessments for path safety evaluation.
- It can connect to AI Development Platforms for implementation guidance.
- It can communicate with AI Monitoring Systems for progress tracking.
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- Example(s):
- Foundational Movement Heuristics, such as:
- Context-First Heuristic, requiring context richness before agency increase.
- Understanding-Before-Action Heuristic, prioritizing comprehension over execution capability.
- Safety-Oriented Movement Heuristics, such as:
- Incremental Expansion Heuristic, limiting capability growth rates and step sizes.
- Reversibility Heuristic, maintaining rollback capability at each development stage.
- Efficiency Movement Heuristics, such as:
- Synergy Exploitation Heuristic, leveraging complementary capabilityes for accelerated growth.
- Resource Optimization Heuristic, minimizing development costs while maximizing benefits.
- Domain-Specific Movement Heuristics, such as:
- Medical AI Heuristic, prioritizing diagnostic accuracy before treatment recommendation.
- Financial AI Heuristic, ensuring risk models before trading authority.
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- Foundational Movement Heuristics, such as:
- Counter-Example(s):
- AI Performance Metric, which measures current state rather than evolution path.
- AI Capability Requirement, which defines end goals rather than journey rules.
- AI Architecture Pattern, which specifies structure rather than development sequence.
- See: AI Multidimensional Space Model, AI Evolution Path, AI Development Strategy, AI Safety Principle, AI Capability Planning, AI Risk Mitigation, AI Governance Framework, Software Development Heuristic.