From antigravity-awesome-skills
Prunes redundant context, allocates token budgets, and enforces filler-free, functional responses in long-running AI agent workflows with large codebases or docs.
How this skill is triggered — by the user, by Claude, or both
Slash command
/antigravity-awesome-skills:recursive-context-pruning-token-budgetingThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
This skill implements a "Gatekeeper" logic to prevent context window bloat and unnecessary token expenditure. It ensures the agent only processes relevant data shards and adheres to an Atomic Precision protocol—delivering functional answers with zero conversational filler. By recursively summarizing state and stripping "bridge phrases," it maximizes the longevity and speed of long-running devel...
This skill implements a "Gatekeeper" logic to prevent context window bloat and unnecessary token expenditure. It ensures the agent only processes relevant data shards and adheres to an Atomic Precision protocol—delivering functional answers with zero conversational filler. By recursively summarizing state and stripping "bridge phrases," it maximizes the longevity and speed of long-running development workflows.
Scan the available data for headers, summaries, and key indicators. Create a "map" of the context rather than injecting the full source. Never pull the entire file into the prompt unless a specific, narrowed fragment is requested.
Calculate a "Safe Response Limit" based on the current context window. Allocate 30% for current logic processing, 20% for immediate output, and 50% for a future context buffer.
Strip all "Bridge Phrases" (e.g., "I've updated the code," "Based on your request," "Sure"). Start the response immediately with the solution or the code block.
Before executing Step 3, scan for missing critical variables (e.g., specific file names or environment types). If the prompt is too ambiguous, bypass the atomic output and generate exactly one concise question to resolve the blocker.
Summarize the current turn into a "compressed state string" (e.g., [Project: Feasify | State: Auth-Fixed | Remaining-Tasks: 2]) to discard redundant conversational data before the next prompt.
User: "Update the Firebase config to use environment variables."
const firebaseConfig = {
apiKey: process.env.VITE_FIREBASE_API_KEY,
authDomain: process.env.VITE_FIREBASE_AUTH_DOMAIN,
projectId: process.env.VITE_FIREBASE_PROJECT_ID
};
User: "Deploy the function."
"Specify environment: production or staging?"
// crucial step) for critical notes.Problem: The response is so brief it lacks the context needed for implementation. Solution: Use concise inline code comments instead of separate paragraphs of text.
Problem: The agent loses the overarching goal due to over-compression. Solution: Always pin the "Primary Objective" to the top of every pruned prompt.
@atomic-precision-response - Specifically for removing conversational filler.@context-sharding - For managing large-scale documentation mapping.npx claudepluginhub sickn33/antigravity-awesome-skills --plugin antigravity-awesome-skillsPrunes redundant context and manages token budgets to maintain long-running AI agent sessions. Uses metadata sharding, atomic output filtering, and abstractive compression to eliminate filler and prevent context bloat.
Teaches the four operations of context engineering — Write, Select, Compress, Isolate — for managing token budgets, compaction strategies, and context partitioning to keep AI sessions sharp and efficient.
Enforces concise responses, parallel tool execution, no redundant work, exploration tracking, and proactive context compression in every Claude Code session. Auto-applies at start.