project-development
Project Development Methodology
This skill covers the principles for identifying tasks suited to LLM processing, designing effective project architectures, and iterating rapidly using agent-assisted development. The methodology applies whether building a batch processing pipeline, a multi-agent research system, or an interactive agent application.
When to Activate
Activate this skill when:
- Starting a new project that might benefit from LLM processing
- Evaluating whether a task is well-suited for agents versus traditional code
- Designing the architecture for an LLM-powered application
- Planning a batch processing pipeline with structured outputs
- Choosing between single-agent and multi-agent approaches
- Estimating costs and timelines for LLM-heavy projects
Core Concepts
Task-Model Fit Recognition
Evaluate task-model fit before writing any code, because building automation on a fundamentally mismatched task wastes days of effort. Run every proposed task through these two tables to decide proceed-or-stop.
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