onboard

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Quick protocol recommendation from recent sessions, or quest-based learning through scenario, trial, and quiz.

jongwony By jongwony schedule Updated 6/11/2026

name: onboard description: "Quick protocol recommendation from recent sessions, or quest-based learning through scenario, trial, and quiz."

Onboard Skill

Start with a quick recommendation based on recent sessions, then optionally continue to guided learning — so users experience value first, learn second.

Invoke directly with /onboard when the user wants onboarding or protocol discovery.

When to Use

Invoke this skill when:

  • A new user wants to discover which epistemic protocols fit their workflow
  • A user wants to experience protocols through guided practice
  • Re-onboarding after new protocols are added or workflow changes

Skip when:

  • User wants analytical report with evidence and HTML artifact (use /report)
  • User already knows which protocol to use (direct invocation)
  • Quick single-protocol question (answer directly)

Workflow Overview

Quick Proof:    ENTRY → QUICKSCAN → PICK-1 → EVIDENCE → TRIAL → INSIGHT → NEXT
Targeted:       ENTRY → QUICKSCAN → MAP → SCENARIO → TRIAL → QUIZ → GUIDE
Targeted + std: ENTRY → SCENARIO → TRIAL → QUIZ → GUIDE
Phase Owner Tool Purpose
0. Entry Main Gate Path selection: quick/targeted
1. Quick Scan Main Glob, Read User Context Profile extraction
2a. Pick-1 Main Quick path: select 1 recommendation
2b. Evidence Main Quick path: show 1 evidence card
2. Map Main Targeted path: Profile → Protocol matching
3. Scenario Main Gate Targeted path: context-personalized intervention point
4. Trial Main Gate Real protocol execution (quick: mini trial, targeted: full trial)
4→Q. Insight Main Quick path: post-trial insight card
4→Q. Next Main Gate Quick path: simplified navigation
4→5 LOOP Main Gate Targeted path: post-trial navigation
5. Quiz Main Gate Targeted path: Socratic protocol recognition quiz
6. Guide Main Gate Targeted path: summary + /report CTA

Data Sources

Compact mapping for inline use. For full Primary/Secondary/Tertiary tables with detection methods and rationale, refer to /report SKILL.md.

Protocol Cluster When to Use Key Patterns
Aitesis /inquire Planning AI is about to answer without enough observable context External fact queries, verifiable grounding (for prior-session recall → use /recollect)
Euporia /elicit Planning Intent articulated but axis-undetermined; decision coordinates implicit in codebase / rules / past sessions Multi-axis intent without single axis-specific protocol fit; substrate-implicit coordinates surface through cycle-emergent dimensions
Prothesis /frame Analysis Unsure which analytical perspective to use Exploration ratio 3:1+ (Read+Grep+Glob vs Edit+Write)
Analogia /ground Analysis Checking if abstract advice fits your situation Abstract pattern application without domain validation
Periagoge /induce Analysis Concrete cases accumulating into an unnamed essence — crystallize the emerging abstraction 3+ instances with essence intuition but no located abstraction; /ground misfit where colimit is forced into substitution
Syneidesis /gap Decision Right before committing, checking for blind spots Same file 3+ edits (different concerns), excessive_changes friction
Prosoche /attend Execution Guardrail compilation — execution boundaries become verifiable goal conditions before an autonomous run Imminent autonomous/unattended execution, stated done-criteria or budget cues, wrong_file_edited friction
Epharmoge /contextualize Verification Output is correct but doesn't fit the accumulated conversation context Mismatch against session-built constraints (user-aware context accumulation)
Elenchus /sublate Verification About to externalize a working context whose apparent sufficiency has decayed Dialectical antithesis per source (provenance / counterfactual / cross-source consistency) before pre-execution sync
Horismos /bound Cross-cutting Deciding what to delegate to AI Boundary probe, domain classification, BoundaryMap
Anamnesis /recollect Cross-cutting Resolving vague recall of prior sessions or discussions Cross-session state recovery via narrative recognition (Recognition over Retrieval)
Anagoge /ascend Cross-cutting A vague recall whose right unit is supra-session — a connected line of work, topic cluster, or already-sedimented concept across many sessions Read-time deposit-graph reconstruction (discover related deposits by shared anchors/keywords/metadata); higher-unit recognition (Recognition over Aggregation)
Katalepsis /grasp Cross-cutting Rapid comprehension verification via intent-scented entry points User-intent grasp for AI-completed work, reviews, plans, docs, or code changes
Diylisis /distill Cross-cutting Distilling a session-tethered working context into a self-contained portable handoff for a fresh zero-memory recipient Handoff brief / fresh-context subagent dispatch / resumable plan with undefined jargon, deictic anchors, or dangling task ids
Hyphegesis /conduct Cross-cutting Conducting the method of a multi-move work prospect before object-level cognition — order, independence, reconciliation, termination, routing Multi-move work with non-trivial conduct (migrations, staged investigations, entangled adversarial/parallel/synthesis); "how should I approach this whole thing?" meta-questions

Phase Execution

Phase 0: Entry (Path Selection)

Begin with a concise welcome and path selection, reserving the full catalog for the Browse-all path.

Gate #1:

  • Text: Path selection prompt
  • Options:
    • Quick recommendation (Recommended)
    • Learn a specific protocol
    • Browse all protocols

If Quick recommendation: set path = quick, proceed to Phase 1.

If Browse all: Present the protocol catalog (check installation status via Glob ~/.claude/plugins/cache/epistemic-protocols/*/, then render the 15 protocols from Data Sources as a numbered list grouped by Cluster with name + "When to Use" + installation badge). After catalog, present:

  • Text: Post-catalog path selection
  • Options:
    • Quick recommendation
    • Learn a specific protocol (type name in Other)

Then proceed based on selection.

If Targeted + Other contains protocol name: proceed directly to session source question.

If Targeted + no protocol specified:

Present a condensed catalog as text output: render the Data Sources table grouped by Cluster, each protocol as /command — When to Use description.

Then Gate #2:

  • Text: Protocol selection (type name or number in Other)
  • Options:
    • Pre-execution (Planning) — /bound, /inquire, /elicit
    • Analysis/Decision — /frame, /ground, /induce, /gap
    • Execution/Verification/Understanding — /attend, /contextualize, /sublate, /recollect, /ascend, /distill, /conduct, /grasp

Gate #3 (Targeted only, session source):

  • Text: Session source selection
  • Options:
    • Personalize with my recent sessions
    • Use standard examples (no session needed)

State after Phase 0:

  • path: quick | targeted
  • target_protocol: (targeted only) selected protocol name
  • session_source: (targeted only) scan | standard — Quick path always runs Quick Scan

Skip rule: If targeted + standard → skip Phases 1-2, jump to Phase 3 with preset scenarios from references/scenarios.md.

Phase 1: Quick Scan (User Context Profile) — Inline

Build a User Context Profile from recent session metadata. Runs inline with Glob + Read (no subagent delegation). Both Quick and Targeted paths share this phase.

Step 1: Collect session metadata

Glob ~/.claude/projects/*/sessions-index.json (exclude directories containing -worktrees-). Read the 2-3 most recently modified indexes. For each, parse entries and extract the 5 most recent entries' firstPrompt and summary fields.

Step 2: Infer User Context Profile

From collected metadata, infer:

  • Work domains: What areas the user works in (e.g., API development, infrastructure, data pipeline)
  • Conversation patterns: Request clarity level, incremental vs. batch requests, question types (how/why/what)
  • Task types: Ratio of feature development, debugging, refactoring, documentation

If no sessions-index.json files found: Quick path proceeds to Pick-1 with fallback (/elicit); Targeted path falls back to Onboarding Pool (/elicit, /gap, /frame).

Output for Phase 2: User Context Profile (work domains, conversation patterns, task types). Quick Scan infers user context for protocol matching and scenario personalization — behavioral pattern extraction and session diagnostics belong in /report.

Phase 2a: Pick-1 (Quick Path — Single Recommendation)

Quick path only. Select exactly 1 protocol recommendation from the auto-recommend pool.

Onboarding Pool: /elicit (Euporia), /gap (Syneidesis), /frame (Prothesis). These three are chosen because users can quickly experience their value. Protocols like /grasp are user-initiated by nature and should not be proactively suggested in the first encounter.

Recommendation rules (applied to Quick Scan Profile):

Protocol Signal patterns Priority
/elicit Vague first prompts ("improve", "optimize", "ideas for", "make it better", "help me plan"); intent articulated but axis-undetermined; substrate-implicit decision coordinates Highest (also fallback)
/gap Multiple revisions on same topic in summary; finalization language ("wrap up", "ready", "finalize", "ship", "merge") Medium
/frame Exploration/comparison language ("approach", "options", "tradeoffs", "compare", "architecture", "which way") Medium

Decision logic:

  1. Score each protocol by signal match count from firstPrompt and summary fields
  2. Select the single strongest match
  3. Tie-break: /elicit > /gap > /frame
  4. Fallback: If no signals detected (no sessions, sparse metadata), recommend /elicit

Output: Present exactly one recommendation as a single sentence.

Format: Present as a single sentence stating which protocol is most likely to help right now.

Phase 2b: Evidence (Quick Path — Evidence Card)

Quick path only. Present exactly 1 evidence card explaining why this recommendation was made.

Evidence generation (per protocol, referencing Data Sources table):

  • Line 1: Cite the specific signal pattern from Quick Scan Profile that matched this protocol's "Key Patterns" column in Data Sources
  • Line 2: State the expected benefit, derived from the protocol's "When to Use" column in Data Sources

Fallback (no session data): State that no patterns were detected, then cite the protocol's core value proposition from Data Sources "When to Use."

Rules:

  • Evidence is maximum 2 lines — a focused cue.
  • Do not show confidence scores or numbers.
  • Do not quote session content verbatim.

After presenting evidence, present:

  • Text: Trial invitation
  • Options:
    • Try it now
    • Learn more about this recommendation
    • See a different recommendation
    • Go to full learning path

Branch: Try it now → Phase 4 (quick trial), Learn more about this recommendation → show Data Sources row for the recommended protocol then re-ask, See a different recommendation → pick next from pool and re-present from Phase 2a, Go to full learning path → set path = targeted and go to Phase 0 targeted flow.

Phase 2: Map (Targeted Path — Protocol Matching)

Targeted path only. Apply User Context Profile to match protocols to the user's context.

  1. Match Profile against the compact mapping table (Data Sources section). Select 2-3 protocols most relevant to the user's work domains and conversation patterns, defaulting to Onboarding Pool (/elicit, /gap, /frame).
  2. Targeted sub-path: Filter to target protocol, use Profile for scenario personalization. Note related protocols from the compact mapping table.
  3. Fallback: If Profile quality is insufficient (no sessions, sparse metadata) → use Onboarding Pool (/elicit, /gap, /frame). Proceed immediately without blocking the onboarding flow.

For detailed mapping logic (Primary/Secondary/Tertiary tables, session diagnostics, anti-pattern detection), refer to /report SKILL.md.

Phase 3: Scenario (Targeted Path — Intervention Point)

Targeted path only. Present a concrete scenario showing where the protocol would have helped.

Scenario construction (2-tier fallback):

  • Tier 1 (User Context Profile available): Generate a hypothetical scenario grounded in the user's work context (domains, task types, conversation patterns from Quick Scan). Personalize standard scenarios from references/scenarios.md using Profile data.
  • Tier 2 (no data / Onboarding Pool fallback): Use preset scenarios directly from references/scenarios.md.

Present scenarios for each of the top 2-3 protocols sequentially.

Scenario format:

Scenario: /X (Protocol Name)

[Situation]: [Concrete situation grounded in user's work context — or preset from scenarios.md]

[Intervention]: If you had called /X at this point:
- [what the protocol would have done — step 1]
- [step 2]
Expected outcome: [e.g., reduced rework, clearer direction]

Clarity rule: Scenarios must present clear-cut protocol fits where the mapping is unambiguous. If a situation could plausibly map to multiple protocols (e.g., "exploration" could be /elicit or /frame), reserve it for Phase 5 quiz material instead of using it as a scenario. The scenario phase builds confidence through recognition; the quiz phase builds discrimination through ambiguity.

Anti-pattern: Scenarios must be self-contained (situation + intervention) with unambiguous protocol fit. Ambiguous patterns belong in Phase 5 quiz.

Present each scenario as regular text output (Tier 1/2 format above). Then present for navigation only:

Gate (per scenario):

  • Text: Scenario navigation
  • Options:
    • Try it — practice this protocol
    • Show another example
    • Skip to quiz

Phase 4: Trial (Protocol Execution)

Guide the user through a real, abbreviated protocol experience.

Quick Path Trial

Mini practice prompt: Present a single realistic request (one sentence) that naturally triggers the selected protocol's deficit. When User Context Profile is available, adapt the domain to match the user's work context. Source from references/scenarios.md Trial prompt field, or generate from Data Sources context. Follow with gate interaction:

  • Text: Trial scenario confirmation (user can also define their own)
  • Options:
    • Start with this scenario — call /X
    • Start with my own scenario (type in Other)

Execution: The user invokes the actual protocol (e.g., type /elicit). The protocol runs in the same session with the mini prompt as context. Trial ends when the invoked protocol reaches its natural termination (convergence or user Esc). After protocol termination, proceed to Quick Post-Trial below.

Quick Post-Trial Insight (2 lines max):

Generate from the protocol just experienced:

  • Line 1: Name the epistemic operation performed (source: protocol's deficit → resolution type, or references/scenarios.md Philosophy field)
  • Line 2: Connect to a concrete workflow benefit

Epistemic Ink Tip (1 line, after Post-Trial Insight): "Tip: Run /config to enable Epistemic Ink — an Output Style that enhances protocol interactions with structured formatting."

Quick Post-Trial Navigation:

Present via gate interaction:

  • Text: Post-trial navigation
  • Options:
    • That's enough for today
    • Try a different protocol
    • Continue to full onboarding

Branch: That's enough for today → end session with brief closing (include text mention: For deeper analysis, try /report.), Try a different protocol → check pool exhaustion: if unrecommended protocols remain in Onboarding Pool, pick next and restart from Phase 2a; if pool exhausted (all 3 recommended in session), present You've experienced all core recommendations and offer Targeted transition, Continue to full onboarding → set path = targeted and go to Phase 2 MAP with Quick Scan results.

Targeted Path Trial

"Try it" selection from Phase 3 already signals intent — enter trial directly without additional confirmation.

Mini practice prompts (scoped for 2-3 exchanges): Use the Trial prompt field from references/scenarios.md for the target protocol. Present the trial guidance as regular text output.

Execution: Prompt the user to invoke the actual protocol (e.g., type /inquire). The protocol runs in the same session with the mini prompt as context. Trial ends when the invoked protocol reaches its natural termination (convergence or user Esc). After protocol termination, present Post-Trial Insight and LOOP.

Offer trial for the top-recommended protocol first. If user completes it, optionally offer trial for the second recommendation.

Post-Trial Insight (presented after trial completion):

After each trial, present a brief insight card sourced from the Philosophy field in references/scenarios.md. Structure:

Protocol Insight: /X (Greek name)

[Core principle — one sentence]
[Workflow position — where this protocol sits and why]
[Game feel — the experiential pattern you just went through]

Post-Trial LOOP:

After the Post-Trial Insight, present:

  • Text: Post-trial navigation
  • Options:
    • Quiz — test my understanding
    • Another scenario — see more examples
    • Try a different protocol
    • Guide — see my learning summary

Branch: Quiz → Phase 5, Another scenario → Phase 3, Different protocol → Phase 3 with next MAP protocol or Phase 0 with cached MAP, Guide → Phase 6.

Phase 5: Quiz (Socratic Verification)

Test protocol recognition through situation-based questions. Question format differs by path.

Question sourcing (in priority order):

  1. Ambiguous scenarios from Phase 3 filtering — situations that were too ambiguous for scenarios are ideal quiz material (e.g., "exploration" that could be /elicit or /frame)
  2. Protocols from TRIAL + MAP results (personalized)
  3. Profile-personalized variants of preset scenarios (if User Context Profile available)
  4. Preset scenarios from references/scenarios.md

Targeted Path

Type 1 — Binary recognition (2-3 questions):

Present via gate interaction for each:

  • Text: Present a situation (2-3 sentences), ask "Is this a /X situation?"
  • Options: "Yes" / "No"
  • Mix: 1-2 true positives + 1 true negative (situation that fits a neighbor protocol)
  • On "No" answer for a true negative: briefly introduce the correct protocol as a natural distinction point

Type 2 — Reverse recognition (1 question):

Present via gate interaction:

  • Text: Present 3 short scenarios numbered 1-3, ask "Which of these are /X situations?"
  • Options: "1 and 2" / "2 and 3" / "1 and 3" / "All three"

Type 3 — Design thinking (1 question):

Present via gate interaction:

  • Text: Present a situation, ask "How would you formulate your request to AI to avoid this problem?"
  • Options: "Show me a hint" / "Show me a model answer"
  • The user's primary input channel is Other (free text). Evaluate based on whether the response demonstrates protocol awareness.

Multi-Protocol Path

Type 1 — Situation recognition (3-4 questions):

Present via gate interaction for each:

  • Text: Present a situation (2-3 sentences), ask "Which protocol fits?"
  • Options: 4 protocol choices (correct answer + 3 plausible distractors)

Type 2 — Design thinking (1 question):

Same format as Targeted Path Type 3.

Feedback (both paths)

Immediate feedback after each question:

  • Correct: Reinforce with the core principle + why the distinction matters. "Correct — /gap surfaces blind spots at decision points (what you haven't considered), while /attend compiles execution boundaries (scope, budget, done-criteria) into verifiable conditions before an autonomous run. /gap audits before action (decision quality), /attend equips the run with guardrails (execution safety)."

  • Incorrect (reasoning inquiry → targeted correction):

    1. Reasoning inquiry: Present via gate interaction 2-3 reasoning hypotheses inferred from the user's wrong answer (context-specific, not templates). Do not reveal the correct answer. "Other" always available.
    2. Targeted correction: Using the user's stated reasoning, explain the distinction through the design axis that separates the confused pair. Directly address the reasoning — e.g., "You mentioned timing — that's the right axis. The key difference is direction: /inquire catches missing context before execution (User→AI), while /contextualize checks context fit after (AI→User)."
    3. Resume: Proceed to next question.

    Reasoning inquiry cap: Apply reasoning inquiry for the first 2 incorrect answers per quiz session. Subsequent incorrect answers receive direct targeted correction (step 2 only) without the reasoning inquiry step.

Distinction depth: Quiz feedback should go beyond "A, not B" to explain the design dimension that separates confused pairs. Reference the distractor pairs from Quiz Design section. The goal is that even wrong answers teach — the user leaves understanding why two protocols that sound similar serve different purposes.

Phase 6: Guide (Summary + Next Steps)

Summarize the learning experience, connect it to the broader epistemic workflow, and provide actionable next steps.

  1. Learning summary:

    • Protocols experienced (trial) and tested (quiz)
    • Quiz accuracy + key distinctions learned
    • Personalized strength: "You naturally recognize [pattern] — /X formalizes this"
  2. Epistemic Map (connect the dots):

    Present the Epistemic Concern Clusters from references/workflow.md. Highlight protocols the user experienced with emphasis (e.g., bold or ).

  3. Report CTA: "Run /report for a comprehensive analysis with evidence-backed recommendations and an HTML profile."

  4. Next protocol suggestion: Based on quiz results and MAP data, suggest the next protocol to explore — preferring related protocols in the same cluster.

  5. Advanced Usage (bonus tips after main guide):

    Present 3-5 tips from references/advanced-usage.md (protocol chaining, multi-protocol sessions, invocation techniques, etc.), prioritizing tips related to protocols from TRIAL and QUIZ. If they quizzed on /gap vs /attend, show the three-step chain: context → decision audit → guardrail compilation (inquire → gap → attend).

  6. Continue exploring (when MAP results contain unexplored protocols):

    Present via gate interaction:

    • Text: "Want to experience another protocol?"
    • Options: "Yes — show me another" / "Done — I have enough"

    If "Yes" → return to Phase 3, using the next recommended protocol from MAP results.

Quiz Design

Difficulty progression: Start with high-contrast pairs (e.g., /elicit vs /attend), progress to subtle distinctions (e.g., /elicit vs /inquire, /gap vs /attend).

Distractor selection: Choose protocols that share surface similarity with the correct answer:

  • /elicit/gap: both surface "something wrong" but different targets — /elicit reverse-traces decision coordinates from substrate before action (Planning: axis-undetermined intent), /gap audits blind spots at a decision point (Decision: "Am I overlooking something?")
  • /elicit/inquire: both about "unclear starting point" but different layers — Aitesis asks the user for facts (information layer), Euporia surfaces coordinate values from substrate (coordinate-explication layer)
  • /gap/attend: both about risk awareness but /gap audits decision quality before committing, /attend compiles execution boundaries into verifiable goal conditions before an autonomous run
  • /inquire/contextualize: both about "context" but different timing (pre vs. post execution)
  • /frame/ground: both about structuring how to think about a problem, but different operations (lens selection vs. mapping validation)
  • /bound/inquire: both pre-execution and AI-directed, but different targets (ownership boundaries vs. missing context)

Path-specific question counts:

  • Targeted: 2-3 binary + 1 reverse + 1 design = 4-5 questions
  • Multi-protocol: 3-4 situation + 1 design = 4-5 questions

Gate Interaction Budget

Quick path targets 3-4 calls. Targeted path targets 6-12 calls.

Phase Calls (Quick) Calls (Targeted) Purpose
0. Entry 1-2 2-3 Path + protocol + session source
2b. Evidence 1 Trial confirmation
3. Scenario 1-2 Navigation after scenario text
4. Trial 1 0 Quick: situation choice. Targeted: direct entry
4→Q. Next 1 Quick: post-trial navigation
4→5 LOOP 1 Targeted: post-trial navigation
5. Quiz 4-7 MC/design or binary/reverse/design + reasoning inquiry
6. Guide 0-1 Optional continue exploring

Rules

  1. Value before learning: Quick path proves value in under 3 minutes. Learning (scenarios, quizzes) is available but not the default entry.
  2. One at a time: Quick path shows exactly 1 recommendation, 1 evidence card, 1 trial.
  3. Onboarding Pool: /elicit, /gap, /frame are the unified recommendation set for both Quick path auto-recommend and Targeted path fallback. User-initiated protocols (/grasp, /attend) and specialized protocols (/contextualize) are excluded. When pool is exhausted in Quick path, transition to Targeted path.
  4. Experience over analysis: This skill teaches through doing. Analytical output (HTML reports, pattern evidence tables) belongs in /report.
  5. Privacy: Never transmit session data externally. All analysis runs locally.
  6. No subagent delegation: Both Quick and Targeted paths use inline Quick Scan. Deep pattern extraction belongs in /report.
  7. Trial authenticity: Trial phase must execute the actual protocol, not simulate it. The user invokes the real slash command.
  8. Immediate feedback: Quiz answers get instant feedback. For incorrect answers, reasoning inquiry precedes correction (per Feedback section). Never batch quiz results.
  9. No auto-install: Guide installation but never install plugins automatically.
  10. Session index access: Access sessions-index.json via Glob + Read. Parse entries for firstPrompt and summary fields only. Never Read entire session JSONL files.
  11. Preset as safety net: references/scenarios.md ensures every user gets a complete experience regardless of session history availability.
  12. Single session: The entire onboarding completes in one session. No cross-session state required.

Acknowledgments

  • @zzsza — Quiz-based participatory UX design contribution
Install via CLI
npx skills add https://github.com/jongwony/epistemic-protocols --skill onboard
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