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content-hash-cache-pattern

Cache expensive file processing results using SHA-256 content hashes — path-independent, auto-invalidating, with service layer separation.

How do I install this agent skill?

npx skills add https://github.com/affaan-m/ecc --skill content-hash-cache-pattern
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    This skill provides a standard architectural pattern for caching file processing results using SHA-256 content hashes. It implements best practices for file hashing and service layer separation using Python's standard library. No security issues were detected.

  • Socketpass

    No alerts

  • Snykpass

    Risk: LOW · No issues

What does this agent skill do?

Content-Hash File Cache Pattern

Cache expensive file processing results (PDF parsing, text extraction, image analysis) using SHA-256 content hashes as cache keys. Unlike path-based caching, this approach survives file moves/renames and auto-invalidates when content changes.

When to Activate

  • Building file processing pipelines (PDF, images, text extraction)
  • Processing cost is high and same files are processed repeatedly
  • Need a --cache/--no-cache CLI option
  • Want to add caching to existing pure functions without modifying them

Core Pattern

1. Content-Hash Based Cache Key

Use file content (not path) as the cache key:

import hashlib
from pathlib import Path

_HASH_CHUNK_SIZE = 65536  # 64KB chunks for large files

def compute_file_hash(path: Path) -> str:
    """SHA-256 of file contents (chunked for large files)."""
    if not path.is_file():
        raise FileNotFoundError(f"File not found: {path}")
    sha256 = hashlib.sha256()
    with open(path, "rb") as f:
        while True:
            chunk = f.read(_HASH_CHUNK_SIZE)
            if not chunk:
                break
            sha256.update(chunk)
    return sha256.hexdigest()

Why content hash? File rename/move = cache hit. Content change = automatic invalidation. No index file needed.

2. Frozen Dataclass for Cache Entry

from dataclasses import dataclass

@dataclass(frozen=True, slots=True)
class CacheEntry:
    file_hash: str
    source_path: str
    document: ExtractedDocument  # The cached result

3. File-Based Cache Storage

Each cache entry is stored as {hash}.json — O(1) lookup by hash, no index file required.

import json
from typing import Any

def write_cache(cache_dir: Path, entry: CacheEntry) -> None:
    cache_dir.mkdir(parents=True, exist_ok=True)
    cache_file = cache_dir / f"{entry.file_hash}.json"
    data = serialize_entry(entry)
    cache_file.write_text(json.dumps(data, ensure_ascii=False), encoding="utf-8")

def read_cache(cache_dir: Path, file_hash: str) -> CacheEntry | None:
    cache_file = cache_dir / f"{file_hash}.json"
    if not cache_file.is_file():
        return None
    try:
        raw = cache_file.read_text(encoding="utf-8")
        data = json.loads(raw)
        return deserialize_entry(data)
    except (json.JSONDecodeError, ValueError, KeyError):
        return None  # Treat corruption as cache miss

4. Service Layer Wrapper (SRP)

Keep the processing function pure. Add caching as a separate service layer.

def extract_with_cache(
    file_path: Path,
    *,
    cache_enabled: bool = True,
    cache_dir: Path = Path(".cache"),
) -> ExtractedDocument:
    """Service layer: cache check -> extraction -> cache write."""
    if not cache_enabled:
        return extract_text(file_path)  # Pure function, no cache knowledge

    file_hash = compute_file_hash(file_path)

    # Check cache
    cached = read_cache(cache_dir, file_hash)
    if cached is not None:
        logger.info("Cache hit: %s (hash=%s)", file_path.name, file_hash[:12])
        return cached.document

    # Cache miss -> extract -> store
    logger.info("Cache miss: %s (hash=%s)", file_path.name, file_hash[:12])
    doc = extract_text(file_path)
    entry = CacheEntry(file_hash=file_hash, source_path=str(file_path), document=doc)
    write_cache(cache_dir, entry)
    return doc

Key Design Decisions

DecisionRationale
SHA-256 content hashPath-independent, auto-invalidates on content change
{hash}.json file namingO(1) lookup, no index file needed
Service layer wrapperSRP: extraction stays pure, cache is a separate concern
Manual JSON serializationFull control over frozen dataclass serialization
Corruption returns NoneGraceful degradation, re-processes on next run
cache_dir.mkdir(parents=True)Lazy directory creation on first write

Best Practices

  • Hash content, not paths — paths change, content identity doesn't
  • Chunk large files when hashing — avoid loading entire files into memory
  • Keep processing functions pure — they should know nothing about caching
  • Log cache hit/miss with truncated hashes for debugging
  • Handle corruption gracefully — treat invalid cache entries as misses, never crash

Anti-Patterns to Avoid

# BAD: Path-based caching (breaks on file move/rename)
cache = {"/path/to/file.pdf": result}

# BAD: Adding cache logic inside the processing function (SRP violation)
def extract_text(path, *, cache_enabled=False, cache_dir=None):
    if cache_enabled:  # Now this function has two responsibilities
        ...

# BAD: Using dataclasses.asdict() with nested frozen dataclasses
# (can cause issues with complex nested types)
data = dataclasses.asdict(entry)  # Use manual serialization instead

When to Use

  • File processing pipelines (PDF parsing, OCR, text extraction, image analysis)
  • CLI tools that benefit from --cache/--no-cache options
  • Batch processing where the same files appear across runs
  • Adding caching to existing pure functions without modifying them

When NOT to Use

  • Data that must always be fresh (real-time feeds)
  • Cache entries that would be extremely large (consider streaming instead)
  • Results that depend on parameters beyond file content (e.g., different extraction configs)

Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.

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