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claude-code-complete-agent/examples/10-full-pipeline/prompt.md
Kjell Tore Guttormsen 0d0b83f98c feat: make examples cumulative with carry-forward chain and capstone
Add three new sections to all 14 examples:
- "Carry Forward": what output feeds into later examples (01-10)
- "The Cumulative Path": alternative prompt building on previous output (02-10)
- "Now Try It Yourself": personalized template with transferable pattern (all)
- "Building On" callout connecting back to previous examples (02-10)

Add Example 14: Build Your Personal Agent - capstone that guides reader
through writing their own CLAUDE.md, creating a personal skill, connecting
a messaging channel, setting up automation, and testing end-to-end.

Update README with cumulative path diagram, two usage modes, and example 14.
Update GETTING-STARTED.md with cross-references to relevant examples.

17 files changed, 703+ lines added. The examples now form a coherent
learning path from "see what it can do" to "build your own agent."

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-03-26 21:14:35 +01:00

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Markdown

# Example 10: Full Pipeline
**Capability:** A complete workflow combining web search, multi-agent orchestration,
file I/O, memory, hooks, and logging in a single Claude Code run.
**OpenClaw equivalent:** End-to-end agent pipeline with messaging, skills, and hooks.
> **Building on Examples 01-09.** This is the culmination. Every capability you explored individually now runs as a single, automated pipeline. If you followed the Cumulative Path, you already built the pieces. This example connects them.
---
## What This Demonstrates
Every capability from examples 01-09 working together:
| Step | Capability | Example |
|------|-----------|---------|
| 1 | Web search | 03-web-search |
| 2 | Researcher agent | 06-multi-agent |
| 3 | Writer agent | 06-multi-agent |
| 4 | Reviewer agent | 06-multi-agent |
| 5 | File I/O | 02-shell-and-files |
| 6 | Memory update | 05-memory-system |
| 7 | Security logging | 09-security-hooks |
| 8 | Agent runtime loop | 01-agent-runtime |
---
## The Prompt
```
Run a full research-to-output pipeline on the topic: "How Claude Code handles
permission modes: plan, autoEdit, and bypassPermissions"
Pipeline steps:
1. Use the researcher agent to gather information from the web and official docs
2. Pass the research to the writer agent to draft a 400-word explainer
3. Send the draft to the reviewer agent for accuracy and clarity feedback
4. Incorporate the reviewer's feedback into a final version
5. Save the final version to pipeline-output/permission-modes.md
6. Append a pipeline execution summary to memory/pipeline-log.md with:
- Date and time
- Topic researched
- Word count of final output
- Any issues encountered
7. Show me the first 10 lines of the output file to confirm everything worked
```
---
## What Happens
Claude Code will coordinate the full pipeline autonomously:
- The researcher agent uses WebSearch and WebFetch
- The writer agent produces structured prose
- The reviewer agent critiques and returns specific feedback
- A revision loop runs if needed (bounded by maxTurns in settings.json)
- File writes are intercepted by PostToolUse for audit logging
- Memory is updated so the next session knows this pipeline ran
You will see each agent invocation streamed in sequence. The entire pipeline
typically completes in 2-4 minutes depending on web fetch latency.
---
## Expected Output
The pipeline takes 2-4 minutes. You will see agent invocations streaming:
1. **Researcher agent** runs WebSearch and WebFetch (30-60 seconds)
2. **Writer agent** produces a ~400-word draft (15-30 seconds)
3. **Reviewer agent** critiques the draft (15-30 seconds)
4. **Revision** if needed (15-30 seconds)
5. **File writes** to pipeline-output/ and memory/
When complete, two new files exist:
`pipeline-output/permission-modes.md` (the article):
```markdown
# How Claude Code Handles Permission Modes
Claude Code provides three permission modes that control how much
autonomy the agent has...
[~400 words with accurate technical content]
```
`memory/pipeline-log.md` (the execution log):
```markdown
## Pipeline Run - March 26, 2026
- **Topic:** How Claude Code handles permission modes
- **Word count:** 412
- **Issues:** None
- **Duration:** ~3 minutes
```
**How you know it worked:**
- Both files exist in the expected directories
- The article is accurate (check against `security/permission-modes-explained.md`)
- The pipeline log has today's date and a word count
- You saw three distinct agent invocations in the terminal
---
## Why This Matters
This is what Claude Code looks like as an actual agent platform, not a
chat assistant. The same architecture, with different prompts and agents,
runs the article production pipeline at `fromaitochitta.com`.
The companion repo you are reading is the minimal version of that setup.
Clone it, open Claude Code, and run this prompt to see the full stack work.
---
## Carry Forward
You now have a working end-to-end pipeline. From here:
- **Examples 11-13** add advanced capabilities (desktop control, remote access, autonomous mode) that can extend this pipeline
- **Example 14** takes everything you learned and builds your own personalized agent
The pipeline pattern, research + draft + review + save + notify, works for any domain. Change the topic, swap the agents, adjust the output format. The architecture stays the same.
---
## The Cumulative Path
> If you followed the Cumulative Path through Examples 01-09, you already
> have most of the pipeline output. This prompt runs the complete flow from
> scratch on a new topic, proving the pipeline works end-to-end.
```
Run a full research-to-output pipeline on the topic: "What can Claude Code
do that I did not know about before running these examples?"
Pipeline steps:
1. Read memory/research-state.md to understand what has been explored
2. Use the researcher agent to search for capabilities not yet covered
3. Use the writer agent to draft a 400-word personal discovery summary
4. Use the reviewer agent to verify all claims
5. Save to pipeline-output/personal-discoveries.md
6. Append execution log to memory/pipeline-log.md
7. Show me the first 10 lines of the output file
```
This is a genuinely useful output: a personalized summary of what you learned, produced by the pipeline you just built.
---
## Now Try It Yourself
Replace the topic with something your pipeline should produce regularly:
```
Run a full research-to-output pipeline on: "[your recurring research topic]"
Pipeline steps:
1. [your research source: web, files, APIs]
2. Use the researcher agent to [gather what you need]
3. Use the writer agent to draft a [format] for [audience]
4. Use the reviewer agent to check [what matters most]
5. Save to pipeline-output/[your-output].md
6. Log to memory/pipeline-log.md
7. Show me the first 10 lines
```
**The pattern you just learned:** the full pipeline is a recipe with interchangeable ingredients. Swap the research topic, change the output format, adjust the audience. The agent orchestration, file I/O, memory, and logging stay the same.
Ideas worth trying:
- Weekly industry briefing for your team
- Automated due diligence report for vendors or partners
- Content pipeline that drafts, reviews, and delivers blog posts