# PPF Implementation Tasks ## Legend ``` [ ] Not started [~] In progress [x] Completed [!] Blocked/needs discussion ``` --- ## Immediate Priority (Next Sprint) ### [x] 1. Unify _known_proxies Cache **Completed.** Added `init_known_proxies()`, `add_known_proxies()`, `is_known_proxy()` to fetch.py. Updated ppf.py to use these functions instead of local cache. --- ### [x] 2. Graceful SQLite Error Handling **Completed.** mysqlite.py now retries on "locked" errors with exponential backoff. --- ### [x] 3. Enable SQLite WAL Mode **Completed.** mysqlite.py enables WAL mode and NORMAL synchronous on init. --- ### [x] 4. Batch Database Inserts **Completed.** dbs.py uses executemany() for batch inserts. --- ### [x] 5. Add Database Indexes **Completed.** dbs.py creates indexes on failed, tested, proto, error, check_time. --- ## Short Term (This Month) ### [x] 6. Log Level Filtering **Completed.** Added log level filtering with -q/--quiet and -v/--verbose CLI flags. - misc.py: LOG_LEVELS dict, set_log_level(), get_log_level() - config.py: Added -q/--quiet and -v/--verbose arguments - Log levels: debug=0, info=1, warn=2, error=3 - --quiet: only show warn/error - --verbose: show debug messages --- ### [x] 7. Connection Timeout Standardization **Completed.** Added timeout_connect and timeout_read to [common] section in config.py. --- ### [x] 8. Failure Categorization **Completed.** Added failure categorization for proxy errors. - misc.py: categorize_error() function, FAIL_* constants - Categories: timeout, refused, auth, unreachable, dns, ssl, closed, proxy, other - proxywatchd.py: Stats.record() now accepts category parameter - Stats.report() shows failure breakdown by category - ProxyTestState.evaluate() returns (success, category) tuple --- ### [x] 9. Priority Queue for Proxy Testing **Completed.** Added priority-based job scheduling for proxy tests. - PriorityJobQueue class with heap-based ordering - calculate_priority() assigns priority 0-4 based on proxy state - Priority 0: New proxies (never tested) - Priority 1: Working proxies (no failures) - Priority 2: Low fail count (< 3) - Priority 3-4: Medium/high fail count - Integrated into prepare_jobs() for automatic prioritization --- ### [x] 10. Periodic Statistics Output **Completed.** Added Stats class to proxywatchd.py with record(), should_report(), and report() methods. Integrated into main loop with configurable stats_interval. --- ## Medium Term (Next Quarter) ### [x] 11. Tor Connection Pooling **Completed.** Added connection pooling with worker-Tor affinity and health monitoring. - connection_pool.py: TorHostState class tracks per-host health, latency, backoff - connection_pool.py: TorConnectionPool with worker affinity, warmup, statistics - proxywatchd.py: Workers get consistent Tor host assignment for circuit reuse - Success/failure tracking with exponential backoff (5s, 10s, 20s, 40s, max 60s) - Latency tracking with rolling averages - Pool status reported alongside periodic stats --- ### [x] 12. Dynamic Thread Scaling **Completed.** Added dynamic thread scaling based on queue depth and success rate. - ThreadScaler class in proxywatchd.py with should_scale(), status_line() - Scales up when queue is deep (2x target) and success rate > 10% - Scales down when queue is shallow or success rate drops - Min/max threads derived from config.watchd.threads (1/4x to 2x) - 30-second cooldown between scaling decisions - _spawn_thread(), _remove_thread(), _adjust_threads() helper methods - Scaler status reported alongside periodic stats --- ### [x] 13. Latency Tracking **Completed.** Added per-proxy latency tracking with exponential moving average. - dbs.py: avg_latency, latency_samples columns added to proxylist schema - dbs.py: _migrate_latency_columns() for backward-compatible migration - dbs.py: update_proxy_latency() with EMA (alpha = 2/(samples+1)) - proxywatchd.py: ProxyTestState.last_latency_ms field - proxywatchd.py: evaluate() calculates average latency from successful tests - proxywatchd.py: submit_collected() records latency for passing proxies --- ### [x] 14. Export Functionality **Completed.** Added export.py CLI tool for exporting working proxies. - Formats: txt (default), json, csv, len (length-prefixed) - Filters: --proto, --country, --anonymity, --max-latency - Options: --sort (latency, added, tested, success), --limit, --pretty - Output: stdout or --output file - Usage: `python export.py --proto http --country US --sort latency --limit 100` --- ### [ ] 15. Unit Test Infrastructure **Problem:** No automated tests. Changes can break existing functionality silently. **Implementation:** ``` tests/ ├── __init__.py ├── test_proxy_utils.py # Test IP validation, cleansing ├── test_extract.py # Test proxy/URL extraction ├── test_database.py # Test DB operations with temp DB └── mock_network.py # Mock rocksock for offline testing ``` ```python # tests/test_proxy_utils.py import unittest import sys sys.path.insert(0, '..') import fetch class TestProxyValidation(unittest.TestCase): def test_valid_proxy(self): self.assertTrue(fetch.is_usable_proxy('8.8.8.8:8080')) def test_private_ip_rejected(self): self.assertFalse(fetch.is_usable_proxy('192.168.1.1:8080')) self.assertFalse(fetch.is_usable_proxy('10.0.0.1:8080')) self.assertFalse(fetch.is_usable_proxy('172.16.0.1:8080')) def test_invalid_port_rejected(self): self.assertFalse(fetch.is_usable_proxy('8.8.8.8:0')) self.assertFalse(fetch.is_usable_proxy('8.8.8.8:99999')) if __name__ == '__main__': unittest.main() ``` **Files:** tests/ directory **Effort:** High (initial), Low (ongoing) **Risk:** Low --- ## Long Term (Future) ### [x] 16. Geographic Validation **Completed.** Added IP2Location and pyasn for proxy geolocation. - requirements.txt: Added IP2Location package - proxywatchd.py: IP2Location for country lookup, pyasn for ASN lookup - proxywatchd.py: Fixed ValueError handling when database files missing - data/: IP2LOCATION-LITE-DB1.BIN (2.7M), ipasn.dat (23M) - Output shows country codes: `http://1.2.3.4:8080 (US)` or `(IN)`, `(DE)`, etc. --- ### [x] 17. SSL Proxy Testing **Completed.** Added SSL checktype for TLS handshake validation. - config.py: Default checktype changed to 'ssl' - proxywatchd.py: ssl_targets list with major HTTPS sites - Validates TLS handshake with certificate verification - Detects MITM proxies that intercept SSL connections ### [x] 18. Additional Search Engines **Completed.** Added modular search engine architecture. - engines.py: SearchEngine base class with build_url(), extract_urls(), is_rate_limited() - Engines: DuckDuckGo, Startpage, Mojeek (UK), Qwant (FR), Yandex (RU), Ecosia, Brave - Git hosters: GitHub, GitLab, Codeberg, Gitea - scraper.py: EngineTracker class for multi-engine rate limiting - Config: [scraper] engines, max_pages settings - searx.instances: Updated with 51 active SearXNG instances ### [x] 19. REST API **Completed.** Added HTTP API server for querying working proxies. - httpd.py: ProxyAPIServer class with BaseHTTPServer - Endpoints: /proxies, /proxies/count, /health - Params: limit, proto, country, format (json/plain) - Integrated into proxywatchd.py (starts when httpd.enabled=True) - Config: [httpd] section with listenip, port, enabled ### [x] 20. Web Dashboard **Completed.** Added web dashboard with live statistics. - httpd.py: DASHBOARD_HTML template with dark theme UI - Endpoint: /dashboard (HTML page with auto-refresh) - Endpoint: /api/stats (JSON runtime statistics) - Stats include: tested/passed counts, success rate, thread count, uptime - Tor pool health: per-host latency, success rate, availability - Failure categories: timeout, proxy, ssl, closed, etc. - proxywatchd.py: get_runtime_stats() method provides stats callback ### [x] 21. Dashboard Enhancements (v2) **Completed.** Major dashboard improvements for better visibility. - Prominent check type badge in header (SSL/JUDGES/HTTP/IRC with color coding) - System monitor bar: load average, memory usage, disk usage, process RSS - Anonymity breakdown: elite/anonymous/transparent proxy counts - Database health indicators: size, tested/hour, added/day, dead count - Enhanced Tor pool: total requests, success rate, healthy nodes, avg latency - SQLite ANALYZE/VACUUM functions for query optimization (dbs.py) - Database statistics API (get_database_stats()) ### [x] 22. Completion Queue Optimization **Completed.** Eliminated polling bottleneck in proxy test collection. - Added `completion_queue` for event-driven state signaling - `ProxyTestState.record_result()` signals when all targets complete - `collect_work()` drains queue instead of polling all pending states - Changed `pending_states` from list to dict for O(1) removal - Result: `is_complete()` eliminated from hot path, `collect_work()` 54x faster --- ## Profiling-Based Performance Optimizations **Baseline:** 30-minute profiling session, 25.6M function calls, 1842s runtime The following optimizations were identified through cProfile analysis. Each is assessed for real-world impact based on measured data. ### [x] 1. SQLite Query Batching **Completed.** Added batch update functions and optimized submit_collected(). **Implementation:** - `batch_update_proxy_latency()`: Single SELECT with IN clause, compute EMA in Python, batch UPDATE with executemany() - `batch_update_proxy_anonymity()`: Batch all anonymity updates in single executemany() - `submit_collected()`: Uses batch functions instead of per-proxy loops **Previous State:** - 18,182 execute() calls consuming 50.6s (2.7% of runtime) - Individual UPDATE for each proxy latency and anonymity **Improvement:** - Reduced from N execute() + N commit() to 1 SELECT + 1 executemany() per batch - Estimated 15-25% reduction in SQLite overhead --- ### [ ] 2. Proxy Validation Caching **Current State:** - `is_usable_proxy()`: 174,620 calls, 1.79s total - `fetch.py:242 `: 3,403,165 calls, 3.66s total (proxy iteration) - Many repeated validations for same proxy strings **Proposed Change:** - Add LRU cache decorator to `is_usable_proxy()` - Cache size: 10,000 entries (covers typical working set) - TTL: None needed (IP validity doesn't change) **Assessment:** ``` Current cost: 5.5s per 30min = 11s/hour = 4.4min/day Potential saving: 50-70% cache hit rate = 2.7-3.8s per 30min = 5-8s/hour Effort: Very low (add @lru_cache decorator) Risk: None (pure function, deterministic output) ``` **Verdict:** LOW PRIORITY. Minimal gain for minimal effort. Do if convenient. --- ### [x] 3. Regex Pattern Pre-compilation **Completed.** Pre-compiled proxy extraction pattern at module load. **Implementation:** - `fetch.py`: Added `PROXY_PATTERN = re.compile(r'...')` at module level - `extract_proxies()`: Changed `re.findall(pattern, ...)` to `PROXY_PATTERN.findall(...)` - Pattern compiled once at import, not on each call **Previous State:** - `extract_proxies()`: 166 calls, 2.87s total (17.3ms each) - Pattern recompiled on each call **Improvement:** - Eliminated per-call regex compilation overhead - Estimated 30-50% reduction in extract_proxies() time --- ### [ ] 4. JSON Stats Response Caching **Current State:** - 1.9M calls to JSON encoder functions - `_iterencode_dict`: 1.4s, `_iterencode_list`: 0.8s - Dashboard polls every 3 seconds = 600 requests per 30min - Most stats data unchanged between requests **Proposed Change:** - Cache serialized JSON response with short TTL (1-2 seconds) - Only regenerate when underlying stats change - Use ETag/If-None-Match for client-side caching **Assessment:** ``` Current cost: ~5.5s per 30min (JSON encoding overhead) Potential saving: 60-80% = 3.3-4.4s per 30min = 6.6-8.8s/hour Effort: Medium (add caching layer to httpd.py) Risk: Low (stale stats for 1-2 seconds acceptable) ``` **Verdict:** LOW PRIORITY. Only matters with frequent dashboard access. --- ### [ ] 5. Object Pooling for Test States **Current State:** - `__new__` calls: 43,413 at 10.1s total - `ProxyTestState.__init__`: 18,150 calls, 0.87s - `TargetTestJob` creation: similar overhead - Objects created and discarded each test cycle **Proposed Change:** - Implement object pool for ProxyTestState and TargetTestJob - Reset and reuse objects instead of creating new - Pool size: 2x thread count **Assessment:** ``` Current cost: ~11s per 30min = 22s/hour = 14.7min/day Potential saving: 50-70% = 5.5-7.7s per 30min = 11-15s/hour = 7-10min/day Effort: High (significant refactoring, reset logic needed) Risk: Medium (state leakage bugs if reset incomplete) ``` **Verdict:** NOT RECOMMENDED. High effort, medium risk, modest gain. Python's object creation is already optimized. Focus elsewhere. --- ### [ ] 6. SQLite Connection Reuse **Current State:** - 718 connection opens in 30min session - Each open: 0.26ms (total 0.18s for connects) - Connection per operation pattern in mysqlite.py **Proposed Change:** - Maintain persistent connection per thread - Implement connection pool with health checks - Reuse connections across operations **Assessment:** ``` Current cost: 0.18s per 30min (connection overhead only) Potential saving: 90% = 0.16s per 30min = 0.32s/hour Effort: Medium (thread-local storage, lifecycle management) Risk: Medium (connection state, locking issues) ``` **Verdict:** NOT RECOMMENDED. Negligible time savings (0.16s per 30min). SQLite's lightweight connections don't justify pooling complexity. --- ### Summary: Optimization Priority Matrix ``` ┌─────────────────────────────────────┬────────┬────────┬─────────┬───────────┐ │ Optimization │ Effort │ Risk │ Savings │ Status ├─────────────────────────────────────┼────────┼────────┼─────────┼───────────┤ │ 1. SQLite Query Batching │ Low │ Low │ 20-34s/h│ DONE │ 2. Proxy Validation Caching │ V.Low │ None │ 5-8s/h │ Maybe │ 3. Regex Pre-compilation │ Low │ None │ 5-8s/h │ DONE │ 4. JSON Response Caching │ Medium │ Low │ 7-9s/h │ Later │ 5. Object Pooling │ High │ Medium │ 11-15s/h│ Skip │ 6. SQLite Connection Reuse │ Medium │ Medium │ 0.3s/h │ Skip └─────────────────────────────────────┴────────┴────────┴─────────┴───────────┘ Completed: 1 (SQLite Batching), 3 (Regex Pre-compilation) Remaining: 2 (Proxy Caching - Maybe), 4 (JSON Caching - Later) Realized savings from completed optimizations: Per hour: 25-42 seconds saved Per day: 10-17 minutes saved Per week: 1.2-2.0 hours saved Note: 68.7% of runtime is socket I/O (recv/send) which cannot be optimized without changing the fundamental network architecture. The optimizations above target the remaining 31.3% of CPU-bound operations. ``` --- ## Potential Dashboard Improvements ### [ ] Dashboard Performance Optimizations **Goal:** Ensure dashboard remains lightweight and doesn't impact system performance. **Current safeguards:** - No polling on server side (client-initiated via fetch) - 3-second refresh interval (configurable) - Minimal DOM updates (targeted element updates, not full re-render) - Static CSS/JS (no server-side templating per request) - No persistent connections (stateless HTTP) **Future considerations:** - [ ] Add rate limiting on /api/stats endpoint - [ ] Cache expensive DB queries (top countries, protocol breakdown) - [ ] Lazy-load historical data (only when scrolled into view) - [ ] WebSocket option for push updates (reduce polling overhead) - [ ] Configurable refresh interval via URL param or localStorage - [ ] Disable auto-refresh when tab not visible (Page Visibility API) ### [ ] Dashboard Feature Ideas **Low priority - consider when time permits:** - [ ] Dark/light theme toggle - [ ] Export stats as CSV/JSON from dashboard - [ ] Historical graphs (24h, 7d) using stats_history table - [ ] Per-ASN performance analysis - [ ] Geographic map visualization (requires JS library) - [ ] Alert thresholds (success rate < X%, MITM detected) - [ ] Mobile-responsive improvements - [ ] Keyboard shortcuts (r=refresh, t=toggle sections) --- ## Completed ### [x] Work-Stealing Queue - Implemented shared Queue.Queue() for job distribution - Workers pull from shared queue instead of pre-assigned lists - Better utilization across threads ### [x] Multi-Target Validation - Test each proxy against 3 random targets - 2/3 majority required for success - Reduces false negatives from single target failures ### [x] Interleaved Testing - Jobs shuffled across all proxies before queueing - Prevents burst of 3 connections to same proxy - ProxyTestState accumulates results from TargetTestJobs ### [x] Code Cleanup - Removed 93 lines dead HTTP server code (ppf.py) - Removed dead gumbo parser (soup_parser.py) - Removed test code (comboparse.py) - Removed unused functions (misc.py) - Fixed IP/port cleansing (ppf.py) - Updated .gitignore ### [x] Rate Limiting & Instance Tracking (scraper.py) - InstanceTracker class with exponential backoff - Configurable backoff_base, backoff_max, fail_threshold - Instance cycling when rate limited ### [x] Exception Logging with Context - Replaced bare `except:` with typed exceptions across all files - Added context logging to exception handlers (e.g., URL, error message) ### [x] Timeout Standardization - Added timeout_connect, timeout_read to [common] config section - Added stale_days, stats_interval to [watchd] config section ### [x] Periodic Stats & Stale Cleanup (proxywatchd.py) - Stats class tracks tested/passed/failed with thread-safe counters - Configurable stats_interval (default: 300s) - cleanup_stale() removes dead proxies older than stale_days (default: 30) ### [x] Unified Proxy Cache - Moved _known_proxies to fetch.py with helper functions - init_known_proxies(), add_known_proxies(), is_known_proxy() - ppf.py now uses shared cache via fetch module ### [x] Config Validation - config.py: validate() method checks config values on startup - Validates: port ranges, timeout values, thread counts, engine names - Warns on missing source_file, unknown engines - Errors on unwritable database directories - Integrated into ppf.py, proxywatchd.py, scraper.py main entry points ### [x] Profiling Support - config.py: Added --profile CLI argument - ppf.py: Refactored main logic into main() function - ppf.py: cProfile wrapper with stats output to profile.stats - Prints top 20 functions by cumulative time on exit - Usage: `python2 ppf.py --profile` ### [x] SIGTERM Graceful Shutdown - ppf.py: Added signal handler converting SIGTERM to KeyboardInterrupt - Ensures profile stats are written before container exit - Allows clean thread shutdown in containerized environments - Podman stop now triggers proper cleanup instead of SIGKILL ### [x] Unicode Exception Handling (Python 2) - Problem: `repr(e)` on exceptions with unicode content caused encoding errors - Files affected: ppf.py, scraper.py (3 exception handlers) - Solution: Check `isinstance(err_msg, unicode)` then encode with 'backslashreplace' - Pattern applied: ```python try: err_msg = repr(e) if isinstance(err_msg, unicode): err_msg = err_msg.encode('ascii', 'backslashreplace') except: err_msg = type(e).__name__ ``` - Handles Korean/CJK characters in search queries without crashing