From readwise
Builds personalized reader persona from Readwise Reader data using highlights searches, document lists, tags, and Python/Bash parsing for triage, quiz skills.
How this skill is triggered — by the user, by Claude, or both
Slash command
/readwise:build-personaThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
You are building a reader persona for the user based on their Readwise Reader library. This persona file is used by other skills (triage, quiz, etc.) to personalize their experience.
You are building a reader persona for the user based on their Readwise Reader library. This persona file is used by other skills (triage, quiz, etc.) to personalize their experience.
Check if Readwise MCP tools are available (e.g. mcp__readwise__reader_list_documents). If they are, use them throughout (and pass this context to the subagent). If not, use the equivalent readwise CLI commands instead (e.g. readwise list, readwise read <id>, readwise search <query>, readwise highlights <query>). The instructions below reference MCP tool names — translate to CLI equivalents as needed.
Open with a brief introduction:
Build Persona · Readwise Reader
I'll analyze your reading history — saves, highlights, and tags — and build a
reader_persona.mdprofile in the current directory. Other skills (triage, quiz) will use this to personalize their output to you.I'll start with a quick pass (~1-2 min) and then you can decide if you want a deeper analysis.
IMPORTANT: This skill involves fetching a lot of data. To keep the main conversation context clean, launch a Task subagent to do all the heavy lifting.
The subagent should do a focused scan to build a solid initial persona fast:
Gather data. Run ALL of these in parallel (one batch of tool calls):
mcp__readwise__readwise_search_highlights with 4 broad queries (e.g. "ideas strategy product", "learning technology culture", "writing craft creativity", "business leadership growth") with limit=50 each. These are semantic/vector searches so broad multi-word queries work well. Highlights are cheap and high-signal — cast a wide net.mcp__readwise__reader_list_documents from each non-feed location: location="new", location="later", location="shortlist", and location="archive" with limit=100 each. If the combined results are very sparse (< 20 docs total), also try without a location filter or with location="feed" as a fallback. Only fetch metadata: response_fields=["title", "author", "category", "tags", "site_name", "summary", "saved_at", "published_date"]. Do NOT fetch full content.mcp__readwise__reader_list_tags to understand their organizational system.Parse results efficiently. The JSON responses from document lists can be large (25k+ tokens). Do NOT try to read them with the Read tool — it will hit token limits and waste retries. Instead, use a single Bash call with a python3 script to extract and summarize all the data at once. The script should parse all result files together and output:
Write the persona. Write reader_persona.md to the current working directory with these sections:
Return a brief summary (3-5 sentences) of the persona AND the absolute path to the file.
Subagent speed rules:
readwise_list_highlights — it often errors and is redundant with search.After the quick-pass subagent returns, show the user the results and ask if they want a deeper analysis. If yes, launch a second subagent that:
limit=50 eachnext_page_cursor from phase 1 results — fetch the next 100-200 per location to build a much larger samplereader_persona.md and enriches/rewrites it with the additional data — more nuanced sections, stronger evidence, sharper triage guidancereader_persona.md was written to {absolute_path}. Display the full path so they can open it.npx claudepluginhub readwiseio/readwise-skills --plugin readwiseAnalyzes Readwise highlights, tags, and Reader documents to surface one surprising insight about reading patterns and interests.
Accesses Readwise highlights and Reader documents via CLI for searching, listing, reading, and creating highlights from the command line. Useful for terminal integration with reading libraries.
Searches, retrieves, and manages Readwise highlights, documents, and annotations. Delegates all Readwise operations to a librarian sub-agent.