Zamil Majdy 3fe88b6106 refactor(backend): Refactor log client and resource cleanup (#10558)
## Summary
- Created centralized service client helpers with thread caching in
`util/clients.py`
- Refactored service client management to eliminate health checks and
improve performance
- Enhanced logging in process cleanup to include error details
- Improved retry mechanisms and resource cleanup across the platform
- Updated multiple services to use new centralized client patterns

## Key Changes
### New Centralized Client Factory (`util/clients.py`)
- Added thread-cached factory functions for all major service clients:
  - Database managers (sync and async)
  - Scheduler client
  - Notification manager
  - Execution event bus (Redis-based)
  - RabbitMQ execution queue (sync and async)
  - Integration credentials store
- All clients use `@thread_cached` decorator for performance
optimization

### Service Client Improvements
- **Removed health checks**: Eliminated unnecessary health check calls
from `get_service_client()` to reduce startup overhead
- **Enhanced retry support**: Database manager clients now use request
retry by default
- **Better error handling**: Improved error propagation and logging

### Enhanced Logging and Cleanup
- **Process termination logs**: Added error details to termination
messages in `util/process.py`
- **Retry mechanism updates**: Improved retry logic with better error
handling in `util/retry.py`
- **Resource cleanup**: Better resource management across executors and
monitoring services

### Updated Service Usage
- Refactored 21+ files to use new centralized client patterns
- Updated all executor, monitoring, and notification services
- Maintained backward compatibility while improving performance

## Files Changed
- **Created**: `backend/util/clients.py` - Centralized client factory
with thread caching
- **Modified**: 21 files across blocks, executor, monitoring, and
utility modules
- **Key areas**: Service client initialization, resource cleanup, retry
mechanisms

## Test Plan
- [x] Verify all existing tests pass
- [x] Validate service startup and client initialization  
- [x] Test resource cleanup on process termination
- [x] Confirm retry mechanisms work correctly
- [x] Validate thread caching performance improvements
- [x] Ensure no breaking changes to existing functionality

## Breaking Changes
None - all changes maintain backward compatibility.

## Additional Notes
This refactoring centralizes client management patterns that were
scattered across the codebase, making them more consistent and
performant through thread caching. The removal of health checks reduces
startup time while maintaining reliability through improved retry
mechanisms.

🤖 Generated with [Claude Code](https://claude.ai/code)
2025-08-06 13:53:01 +07:00
2025-01-29 10:31:57 -06:00
2024-05-04 09:38:37 -05:00
2025-03-24 18:11:56 +00:00
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