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usage-optimization

vamseeachanta
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Dieses Claude Skill unterstützt Entwickler dabei, die Effizienz der KI-Nutzung zu optimieren, indem es skriptbasierte Ansätze, Batch-Operationen und vorbereitete Eingabedateien fördert. Es bewertet die Wirksamkeit verschiedener Methoden und betont Ausführung statt Beschreibung, um die Produktivität zu maximieren. Nutzen Sie es, wenn Sie die Interaktionszeit mit der KI reduzieren und mehr umsetzbare, automatisierte Ergebnisse von Claude erhalten möchten.

Schnellinstallation

Claude Code

Empfohlen
Primär
npx skills add vamseeachanta/workspace-hub
Plugin-BefehlAlternativ
/plugin add https://github.com/vamseeachanta/workspace-hub
Git CloneAlternativ
git clone https://github.com/vamseeachanta/workspace-hub.git ~/.claude/skills/usage-optimization

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

Dokumentation

Usage Optimization Skill

Version: 1.0.0 Category: Optimization Triggers: High usage alerts, efficiency improvements, batch operations

Quick Reference

Effectiveness Ratings

ApproachRatingTime Saved
Script + AI Input + AI Command⭐⭐⭐⭐⭐90%
Git Operations (Claude)⭐⭐⭐⭐⭐80%
Script + Input File⭐⭐⭐⭐70%
Preparing Input Files⭐⭐⭐⭐75%
Script Only (no input)⭐⭐⭐40%
LLM Descriptions-20%

Best Practice: Execution Over Description

❌ BAD: "Can you describe what analyze_data.py does?"
    Result: Long description, no actionable output

✅ GOOD: "Prepare input file for data analysis and provide command"
    Result: Working configuration + executable command + actual results

Optimal Workflow Pattern

1. ⭐⭐⭐⭐⭐ AI prepares input YAML file
   └─ Following template in templates/input_config.yaml
   └─ Validated against schema
   └─ Version controlled in config/input/

2. ⭐⭐⭐⭐⭐ AI provides exact bash command
   └─ Points to correct script in scripts/
   └─ References prepared input file
   └─ Includes all necessary flags

3. ⭐⭐⭐⭐⭐ User executes command
   └─ Copy/paste provided command
   └─ Review output and results
   └─ Version control any changes

4. ⭐⭐⭐⭐⭐ Use Claude for git operations
   └─ Commit results
   └─ Create meaningful commit messages
   └─ Manage branches and PRs

Prompt Optimization

Context-First Prompts

## Task Context
- Repository: digitalmodel (Work)
- Complexity: Medium
- Time sensitivity: Production hotfix
- Dependencies: None
- Testing required: Yes

## Specifications
[Full specifications here]

## Output Format
[Exact format needed]

## Constraints
[Any limitations]

Generate [specific deliverable] following this context.

Batch Operations Template

I need to perform the following operations across multiple repositories:

## Scope
- Repositories: [list or "all work" or "all personal"]
- Operation type: [commit/sync/test/build/deploy]

## Configuration
```yaml
operation: batch_commit
scope: work_repositories
config:
  message: "Update dependencies to latest"
  auto_push: true
  run_tests: true

Expected Output

  • Status report per repository
  • Aggregate success/failure metrics
  • Next actions if any failures

## Anti-Patterns to Avoid

### ❌ Description-Only Requests

BAD: "Describe what this script does" Result: No actionable output, wasted tokens


### ❌ Skipping Questions

BAD: Directly generating from vague requirements GOOD: "Before generating, I need to understand: [list]"


### ❌ Making Assumptions

BAD: "I'll assume we want JWT authentication" GOOD: "Should we use JWT, sessions, or OAuth?"


## Usage Monitoring Commands

```bash
# Check usage
./scripts/monitoring/check_claude_usage.sh check

# View today's summary
./scripts/monitoring/check_claude_usage.sh today

# View recommendations
./scripts/monitoring/check_claude_usage.sh rec

# Log a task
./scripts/monitoring/check_claude_usage.sh log sonnet digitalmodel "Feature work"

Daily Checklist

Before Starting Work:

During Work:

  • Use Haiku for quick queries
  • Reserve Sonnet for standard implementations
  • Use Opus only for complex decisions
  • Batch related questions

End of Session:

  • Review usage increase
  • Update usage log
  • Plan next session if approaching limits

Target Metrics

MetricCurrentTarget
Sonnet usage79%<60%
Overall usage52%<70%
Model distributionUnbalanced30/40/30

Full Reference

See: @docs/AI_AGENT_USAGE_OPTIMIZATION_PLAN.md See: @docs/modules/ai/AI_USAGE_GUIDELINES.md


Use this when optimizing AI usage, improving efficiency, or managing usage limits.

GitHub Repository

vamseeachanta/workspace-hub
Pfad: .claude/skills/ai/optimization/usage-optimization

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