| name | project-development |
| description | This skill should be used when the user asks to "start an LLM project", "design batch pipeline", "evaluate task-model fit", "structure agent project", or mentions pipeline architecture, agent-assisted development, cost estimation, or choosing between LLM and traditional approaches. |
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
Not every problem benefits from LLM processing. The first step in any project is evaluating whether the task characteristics align with LLM strengths. This evaluation should happen before writing any code.
LLM-suited tasks share these characteristics:
| Characteristic | Why It Fits |
|---|---|
| Synthesis across sources | LLMs excel at combining information from multiple inputs |
| Subjective judgment with rubrics | LLMs handle grading, evaluation, and classification with criteria |
| Natural language output | When the goal is human-readable text, not structured data |
| Error tolerance | Individual failures do not break the overall system |
| Batch processing | No conversational state required between items |
| Domain knowledge in training | The model already has relevant context |
LLM-unsuited tasks share these characteristics:
| Characteristic | Why It Fails |
|---|---|
| Precise computation | Math, counting, and exact algorithms are unreliable |
| Real-time requirements | LLM latency is too high for sub-second responses |
| Perfect accuracy requirements | Hallucination risk makes 100% accuracy impossible |
| Proprietary data dependence | The model lacks necessary context |
| Sequential dependencies | Each step depends heavily on the previous result |
| Deterministic output requirements | Same input must produce identical output |
The evaluation should happen through manual prototyping: take one representative example and test it directly with the target model before building any automation.
The Manual Prototype Step
Before investing in automation, validate task-model fit with a manual test. Copy one representative input into the model interface. Evaluate the output quality. This takes minutes and prevents hours of wasted development.
This validation answers critical questions:
- Does the model have the knowledge required for this task?
- Can the model produce output in the format you need?
- What level of quality should you expect at scale?
- Are there obvious failure modes to address?
If the manual prototype fails, the automated system will fail. If it succeeds, you have a baseline for comparison and a template for prompt design.
Pipeline Architecture
LLM projects benefit from staged pipeline architectures where each stage is:
- Discrete: Clear boundaries between stages
- Idempotent: Re-running produces the same result
- Cacheable: Intermediate results persist to disk
- Independent: Each stage can run separately
The canonical pipeline structure:
acquire → prepare → process → parse → render
- Acquire: Fetch raw data from sources (APIs, files, databases)
- Prepare: Transform data into prompt format
- Process: Execute LLM calls (the expensive, non-deterministic step)
- Parse: Extract structured data from LLM outputs
- Render: Generate final outputs (reports, files, visualizations)
Stages 1, 2, 4, and 5 are deterministic. Stage 3 is non-deterministic and expensive. This separation allows re-running the expensive LLM stage only when necessary, while iterating quickly on parsing and rendering.
File System as State Machine
Use the file system to track pipeline state rather than databases or in-memory structures. Each processing unit gets a directory. Each stage completion is marked by file existence.
data/{id}/
├── raw.json # acquire stage complete
├── prompt.md # prepare stage complete
├── response.md # process stage complete
├── parsed.json # parse stage complete
To check if an item needs processing: check if the output file exists. To re-run a stage: delete its output file and downstream files. To debug: read the intermediate files directly.
This pattern provides:
- Natural idempotency (file existence gates execution)
- Easy debugging (all state is human-readable)
- Simple parallelization (each directory is independent)
- Trivial caching (files persist across runs)
Structured Output Design
When LLM outputs must be parsed programmatically, prompt design directly determines parsing reliability. The prompt must specify exact format requirements with examples.
Effective structure specification includes:
- Section markers: Explicit headers or prefixes for parsing
- Format examples: Show exactly what output should look like
- Rationale disclosure: "I will be parsing this programmatically"
- Constrained values: Enumerated options, score ranges, formats
Example prompt structure:
Analyze the following and provide your response in exactly this format:
## Summary
[Your summary here]
## Score
Rating: [1-10]
## Details
- Key point 1
- Key point 2
Follow this format exactly because I will be parsing it programmatically.
The parsing code must handle variations gracefully. LLMs do not follow instructions perfectly. Build parsers that:
- Use regex patterns flexible enough to handle minor formatting variations
- Provide sensible defaults when sections are missing
- Log parsing failures for later review rather than crashing
Agent-Assisted Development
Modern agent-capable models can accelerate development significantly. The pattern is:
- Describe the project goal and constraints
- Let the agent generate initial implementation
- Test and iterate on specific failures
- Refine prompts and architecture based on results
This is about rapid iteration: generate, test, fix, repeat. The agent handles boilerplate and initial structure while you focus on domain-specific requirements and edge cases.
Key practices for effective agent-assisted development:
- Provide clear, specific requirements upfront
- Break large projects into discrete components
- Test each component before moving to the next
- Keep the agent focused on one task at a time
Cost and Scale Estimation
LLM processing has predictable costs that should be estimated before starting. The formula:
Total cost = (items × tokens_per_item × price_per_token) + API overhead
For batch processing:
- Estimate input tokens per item (prompt + context)
- Estimate output tokens per item (typical response length)
- Multiply by item count
- Add 20-30% buffer for retries and failures
Track actual costs during development. If costs exceed estimates significantly, re-evaluate the approach. Consider:
- Reducing context length through truncation
- Using smaller models for simpler items
- Caching and reusing partial results
- Parallel processing to reduce wall-clock time (not token cost)
Detailed Topics
Choosing Single vs Multi-Agent Architecture
Single-agent pipelines work for:
- Batch processing with independent items
- Tasks where items do not interact
- Simpler cost and complexity management
Multi-agent architectures work for:
- Parallel exploration of different aspects
- Tasks exceeding single context window capacity
- When specialized sub-agents improve quality
The primary reason for multi-agent is context isolation, not role anthropomorphization. Sub-agents get fresh context windows for focused subtasks. This prevents context degradation on long-running tasks.
See multi-agent-patterns skill for detailed architecture guidance.
Architectural Reduction
Start with minimal architecture. Add complexity only when proven necessary. Production evidence shows that removing specialized tools often improves performance.
Vercel's d0 agent achieved 100% success rate (up from 80%) by reducing from 17 specialized tools to 2 primitives: bash command execution and SQL. The file system agent pattern uses standard Unix utilities (grep, cat, find, ls) instead of custom exploration tools.
When reduction outperforms complexity:
- Your data layer is well-documented and consistently structured
- The model has sufficient reasoning capability
- Your specialized tools were constraining rather than enabling
- You are spending more time maintaining scaffolding than improving outcomes
When complexity is necessary:
- Your underlying data is messy, inconsistent, or poorly documented
- The domain requires specialized knowledge the model lacks
- Safety constraints require limiting agent capabilities
- Operations are truly complex and benefit from structured workflows
See tool-design skill for detailed tool architecture guidance.
Iteration and Refactoring
Expect to refactor. Production agent systems at scale require multiple architectural iterations. Manus refactored their agent framework five times since launch. The Bitter Lesson suggests that structures added for current model limitations become constraints as models improve.
Build for change:
- Keep architecture simple and unopinionated
- Test across model strengths to verify your harness is not limiting performance
- Design systems that benefit from model improvements rather than locking in limitations
Practical Guidance
Project Planning Template
Task Analysis
- What is the input? What is the desired output?
- Is this synthesis, generation, classification, or analysis?
- What error rate is acceptable?
- What is the value per successful completion?
Manual Validation
- Test one example with target model
- Evaluate output quality and format
- Identify failure modes
- Estimate tokens per item
Architecture Selection
- Single pipeline vs multi-agent
- Required tools and data sources
- Storage and caching strategy
- Parallelization approach
Cost Estimation
- Items × tokens × price
- Development time
- Infrastructure requirements
- Ongoing operational costs
Development Plan
- Stage-by-stage implementation
- Testing strategy per stage
- Iteration milestones
- Deployment approach
Anti-Patterns to Avoid
Skipping manual validation: Building automation before verifying the model can do the task wastes significant time when the approach is fundamentally flawed.
Monolithic pipelines: Combining all stages into one script makes debugging and iteration difficult. Separate stages with persistent intermediate outputs.
Over-constraining the model: Adding guardrails, pre-filtering, and validation logic that the model could handle on its own. Test whether your scaffolding helps or hurts.
Ignoring costs until production: Token costs compound quickly at scale. Estimate and track from the beginning.
Perfect parsing requirements: Expecting LLMs to follow format instructions perfectly. Build robust parsers that handle variations.
Premature optimization: Adding caching, parallelization, and optimization before the basic pipeline works correctly.
Examples
Example 1: Batch Analysis Pipeline (Karpathy's HN Time Capsule)
Task: Analyze 930 HN discussions from 10 years ago with hindsight grading.
Architecture:
- 5-stage pipeline: fetch → prompt → analyze → parse → render
- File system state: data/{date}/{item_id}/ with stage output files
- Structured output: 6 sections with explicit format requirements
- Parallel execution: 15 workers for LLM calls
Results: $58 total cost, ~1 hour execution, static HTML output.
Example 2: Architectural Reduction (Vercel d0)
Task: Text-to-SQL agent for internal analytics.
Before: 17 specialized tools, 80% success rate, 274s average execution.
After: 2 tools (bash + SQL), 100% success rate, 77s average execution.
Key insight: The semantic layer was already good documentation. Claude just needed access to read files directly.
See Case Studies for detailed analysis.
Guidelines
- Validate task-model fit with manual prototyping before building automation
- Structure pipelines as discrete, idempotent, cacheable stages
- Use the file system for state management and debugging
- Design prompts for structured, parseable outputs with explicit format examples
- Start with minimal architecture; add complexity only when proven necessary
- Estimate costs early and track throughout development
- Build robust parsers that handle LLM output variations
- Expect and plan for multiple architectural iterations
- Test whether scaffolding helps or constrains model performance
- Use agent-assisted development for rapid iteration on implementation
Integration
This skill connects to:
- context-fundamentals - Understanding context constraints for prompt design
- tool-design - Designing tools for agent systems within pipelines
- multi-agent-patterns - When to use multi-agent versus single pipelines
- evaluation - Evaluating pipeline outputs and agent performance
- context-compression - Managing context when pipelines exceed limits
References
Internal references:
- Case Studies - Karpathy HN Capsule, Vercel d0, Manus patterns
- Pipeline Patterns - Detailed pipeline architecture guidance
Related skills in this collection:
- tool-design - Tool architecture and reduction patterns
- multi-agent-patterns - When to use multi-agent architectures
- evaluation - Output evaluation frameworks
External resources:
- Karpathy's HN Time Capsule project: https://github.com/karpathy/hn-time-capsule
- Vercel d0 architectural reduction: https://vercel.com/blog/we-removed-80-percent-of-our-agents-tools
- Manus context engineering: Peak Ji's blog on context engineering lessons
- Anthropic multi-agent research: How we built our multi-agent research system
Skill Metadata
Created: 2025-12-25 Last Updated: 2025-12-25 Author: Agent Skills for Context Engineering Contributors Version: 1.0.0