content-hash-cache-pattern
This Claude Code skill implements a content-hash-based caching pattern for expensive file processing operations like PDF parsing and image analysis. Use it when processing the same files repeatedly and file paths may change, as SHA-256 content hashes provide automatic cache invalidation on content modification and survive file moves without manual index management.
git clone --depth 1 https://github.com/affaan-m/ECC /tmp/content-hash-cache-pattern && cp -r /tmp/content-hash-cache-pattern/.kiro/skills/content-hash-cache-pattern ~/.claude/skills/content-hash-cache-patternSKILL.md
# 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:
```python
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
```python
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.
```python
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.
```python
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
| Decision | Rationale |
|----------|-----------|
| SHA-256 content hash | Path-independent, auto-invalidates on content change |
| `{hash}.json` file naming | O(1) lookup, no index file needed |
| Service layer wrapper | SRP: extraction stays pure, cache is a separate concern |
| Manual JSON serialization | Full control over frozen dataclass serialization |
| Corruption returns `None` | Graceful 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
```python
# 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)Structured self-debugging workflow for AI agent failures using capture, diagnosis, contained recovery, and introspection reports.
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