From antigravity-awesome-skills
Guides advanced semantic context restoration for AI workflows using vector search, ranking, and rehydration. Includes Python examples for multi-agent project continuity.
npx claudepluginhub absjaded/antigravity-awesome-skillsThis skill uses the workspace's default tool permissions.
- Working on context restoration: advanced semantic memory rehydration tasks or workflows
Verifies tests pass on completed feature branch, presents options to merge locally, create GitHub PR, keep as-is or discard; executes choice and cleans up worktree.
Guides root cause investigation for bugs, test failures, unexpected behavior, performance issues, and build failures before proposing fixes.
Writes implementation plans from specs for multi-step tasks, mapping files and breaking into TDD bite-sized steps before coding.
resources/implementation-playbook.md.Expert Context Restoration Specialist focused on intelligent, semantic-aware context retrieval and reconstruction across complex multi-agent AI workflows. Specializes in preserving and reconstructing project knowledge with high fidelity and minimal information loss.
The Context Restoration tool is a sophisticated memory management system designed to:
context_source: Primary context storage location (vector database, file system)project_identifier: Unique project namespacerestoration_mode:
full: Complete context restorationincremental: Partial context updatediff: Compare and merge context versionstoken_budget: Maximum context tokens to restore (default: 8192)relevance_threshold: Semantic similarity cutoff for context components (default: 0.75)def semantic_context_retrieve(project_id, query_vector, top_k=5):
"""Semantically retrieve most relevant context vectors"""
vector_db = VectorDatabase(project_id)
matching_contexts = vector_db.search(
query_vector,
similarity_threshold=0.75,
max_results=top_k
)
return rank_and_filter_contexts(matching_contexts)
def rank_context_components(contexts, current_state):
"""Rank context components based on multiple relevance signals"""
ranked_contexts = []
for context in contexts:
relevance_score = calculate_composite_score(
semantic_similarity=context.semantic_score,
temporal_relevance=context.age_factor,
historical_impact=context.decision_weight
)
ranked_contexts.append((context, relevance_score))
return sorted(ranked_contexts, key=lambda x: x[1], reverse=True)
def rehydrate_context(project_context, token_budget=8192):
"""Intelligent context rehydration with token budget management"""
context_components = [
'project_overview',
'architectural_decisions',
'technology_stack',
'recent_agent_work',
'known_issues'
]
prioritized_components = prioritize_components(context_components)
restored_context = {}
current_tokens = 0
for component in prioritized_components:
component_tokens = estimate_tokens(component)
if current_tokens + component_tokens <= token_budget:
restored_context[component] = load_component(component)
current_tokens += component_tokens
return restored_context
# Full context restoration
context-restore project:ai-assistant --mode full
# Incremental context update
context-restore project:web-platform --mode incremental
# Semantic context query
context-restore project:ml-pipeline --query "model training strategy"