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shiva-bhaga

pjt222
Aktualisiert 2 days ago
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Über

Die shiva-bhaga-Fähigkeit führt ein kontrolliertes Löschen des Kontexts durch, indem sie überholte Muster abbaut, veraltete Annahmen bereinigt und nicht mehr genutzte Denkstrukturen entfernt. Sie wurde für Entwickler konzipiert, um gezielt angesammelte technische Schulden, gescheiterte Ansätze oder verwaiste Aufgaben zu verwerfen und so einen Neuanfang zu ermöglichen. Dadurch schafft sie notwendigen Freiraum, indem die Bindung an veraltete Lösungen aufgelöst wird, bevor ein größerer Richtungswechsel oder eine neue Entwicklungsphase beginnt.

Schnellinstallation

Claude Code

Empfohlen
Primär
npx skills add pjt222/agent-almanac -a claude-code
Plugin-BefehlAlternativ
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternativ
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/shiva-bhaga

Kopieren Sie diesen Befehl und fügen Sie ihn in Claude Code ein, um diese Fähigkeit zu installieren

Dokumentation

Shiva Bhaga

Controlled destruction and dissolution of stale patterns, outdated assumptions, accumulated noise — clear ground so new growth can emerge.

When Use

  • Context has accumulated stale assumptions silently distorting reasoning
  • Previous approach failed and temptation is to patch rather than discard
  • Conversation grown long, earlier decisions may no longer serve current goal
  • Dead code, abandoned plans, zombie tasks creating noise and confusion
  • Before major pivot — clearing must precede creation
  • Attachment to particular approach prevents consideration of alternatives

Inputs

  • Required: Current conversation state or project context (available implicit)
  • Optional: Specific target for dissolution (e.g., "this approach isn't working," "clear all assumptions about database layer")
  • Optional: Scope boundary — what must be preserved through destruction

Steps

Step 1: Identify What Must End

Survey current state. Mark what is stale, broken, or no longer serving goal.

Dissolution Triage:
+---------------------+---------------------------+------------------------+
| Category            | Symptoms                  | Action                 |
+---------------------+---------------------------+------------------------+
| Stale Assumptions   | Decisions made early that | List and re-evaluate   |
|                     | no longer match current   | each against current   |
|                     | understanding             | reality                |
+---------------------+---------------------------+------------------------+
| Failed Approaches   | Approaches attempted and  | Acknowledge failure    |
|                     | abandoned but still       | explicitly; release    |
|                     | influencing thinking      | the sunk cost          |
+---------------------+---------------------------+------------------------+
| Accumulated Noise   | Context, variables, or    | Identify and mark for  |
|                     | plans that are no longer  | removal                |
|                     | referenced or relevant    |                        |
+---------------------+---------------------------+------------------------+
| Attachment Points   | "We already decided..."   | Question whether the   |
|                     | beliefs that resist       | decision still holds   |
|                     | re-examination            |                        |
+---------------------+---------------------------+------------------------+
| Zombie Artifacts    | Code, tasks, or plans     | Delete or archive;     |
|                     | that exist but serve no   | do not leave in limbo  |
|                     | current purpose           |                        |
+---------------------+---------------------------+------------------------+
  1. Scan each category honestly — resistance to examining a category is itself a signal
  2. For each item found, ask: "If I were starting fresh right now, would I create this?"
  3. If the answer is no, mark it for dissolution

Got: Clear inventory of what needs to be released, with specific items in each category.

If fail: Nothing seems stale? Assessment may be too shallow. Pick oldest decision in current context, justify from scratch — justification feels forced? Candidate for dissolution.

Step 2: Establish Preservation Boundary

Not everything should be destroyed. Identify what must survive clearing.

  1. Core requirements: What did the user actually ask for? This survives.
  2. Verified knowledge: Facts confirmed through tool use (file reads, test results) survive.
  3. User preferences: Explicitly stated preferences and constraints survive.
  4. Working components: Code or approaches that are demonstrably functioning survive.

Draw the boundary: everything inside is preserved, everything outside is subject to dissolution.

Got: Clear distinction between what is kept and what is released.

If fail: Boundary unclear? Ask: "What would I need reconstruct if I started this task from scratch?" Answer defines preservation boundary.

Step 3: Dissolve with Intention

Execute dissolution — not abandonment but intentional clearing.

  1. For each marked item, release it explicitly:
    • Stale assumption: "I assumed X, but current evidence shows Y. Releasing X."
    • Failed approach: "Approach A was attempted and did not work because Z. Releasing attachment to A."
    • Noise: "Variable/plan/context Q is no longer relevant. Removing from consideration."
  2. Do not justify or defend what is being dissolved — the point is release, not analysis
  3. If dissolving a large body of accumulated context, summarize what was dissolved and why in one sentence
  4. Clear the workspace: if applicable, close abandoned files, reset mental model, acknowledge the clean slate

Got: Lighter, cleaner context with stale elements removed. Remaining context should feel accurate and current.

If fail: Dissolution feels incomplete — released items keep influencing thinking? Name them again explicit. "I notice I am still reasoning as if X is true. X was dissolved. Proceeding without X."

Step 4: Sit in Void

After destruction, resist urge to immediately rebuild. Space between destruction and creation has value.

  1. Acknowledge the cleared space: "The following has been dissolved: [list]"
  2. Note what remains: "What survives: [list]"
  3. Resist premature reconstruction — do not immediately propose a replacement for what was dissolved
  4. Allow the cleared space to inform what comes next
  5. The void is not emptiness — it is potential. The next step (creation via brahma-bhaga or preservation via vishnu-bhaga) emerges from this space

Got: Moment of clarity between old and new. Next direction becomes apparent from what remains rather than being forced.

If fail: Void feels uncomfortable, strong pull to immediately rebuild? Urgency itself a signal — may indicate attachment to dissolved pattern. Sit longer. Right next step will emerge.

Checks

  • Stale assumptions identified and explicit released
  • Failed approaches acknowledged without defensiveness
  • Accumulated noise cleared from working context
  • Preservation boundary established before dissolution
  • Core requirements and user preferences preserved
  • Cleared space acknowledged before moving to creation

Pitfalls

  • Destroy too much: Dissolution without preservation boundary destroys working components along with stale ones. Always draw boundary first
  • Destroy too little: Polite dissolution that "releases" things while still letting them influence reasoning. True dissolution needs actually letting go
  • Skip void: Rush from destruction to creation without sitting in cleared space produces recreation of old pattern with superficial changes
  • Perform destruction: Going through motions of clearing without actually updating internal model. Same assumptions reappear in next response? Dissolution was performative
  • Destruction as avoidance: Use dissolution to escape difficult problem rather than clear genuine staleness. Problem persists after clearing? Was not the stale context — was the problem itself

See Also

  • brahma-bhaga — creation follows destruction; after clearing, new patterns emerge from void
  • vishnu-bhaga — preservation complements destruction; what survives dissolution is sustained
  • heal — subsystem assessment may reveal what needs dissolution before healing can proceed
  • meditate — clearing context noise before dissolution prevents reactive over-destruction
  • dissolve-form — morphic equivalent for architectural dismantling with imaginal disc preservation

GitHub Repository

pjt222/agent-almanac
Pfad: i18n/caveman/skills/shiva-bhaga
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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