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You are building a structured data extraction system using Claude.

You are building a structured data extraction system using Claude. The system extracts information from unstructured documents, validates the output using JavaScript Object Notation (JSON) schemas, and maintains high accuracy. It must handle edge cases gracefully and integrate with downstream systems.

Your schema includes a skills: string[] field. Production monitoring reveals three consistency issues: (1) compound phrases like “Python and SQL” are sometimes kept as one entry, sometimes split; (2) implied but unstated skills occasionally appear in extractions; (3) similar documents produce wildly different array lengths (5-10 vs 40+ entries). Your prompt currently says “Extract all skills mentioned.”

What’s the most effective improvement?

A.

Enrich the schema to {skill: string, confidence: float, source_quote: string}[] to capture extraction metadata.

B.

Add few-shot examples demonstrating compound phrase handling, explicit mention criteria, and appropriate entry granularity.

C.

Add constraints: “Extract 10-20 skills maximum, one skill per entry, only explicitly named skills.”

D.

Add post-extraction normalization that maps skills to a canonical taxonomy and deduplicates similar entries.

Anthropic CCAR-F Summary

  • Vendor: Anthropic
  • Product: CCAR-F
  • Update on: Jul 12, 2026
  • Questions: 60
Price: $52.5  $149.99
Buy Now CCAR-F PDF + Testing Engine Pack

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