- Updated the logging documentation to reflect changes in the unified log message format, including the addition of pathname, line number, and function name for better traceability.
- Modified the `get_logger` function to set a default value for `component_name`, improving usability for users who may not specify a component name.
- Ensured consistency in the documentation regarding the parameters and their descriptions.
These updates improve the clarity and ease of use of the logging system, making it more accessible for developers.
- Revised the logging documentation to clarify the unified logging system's features and usage patterns.
- Simplified the logger implementation by removing the custom `DateRotatingFileHandler` and utilizing the standard library's `TimedRotatingFileHandler` for date-based log rotation.
- Enhanced the `get_logger` function to ensure thread-safe logger configuration and prevent duplicate handlers.
- Introduced a new `cleanup_old_logs` function for age-based log cleanup, while retaining the existing count-based cleanup mechanism.
- Improved error handling and logging setup to ensure robust logging behavior across components.
These changes enhance the clarity and maintainability of the logging system, making it easier for developers to implement and utilize logging in their components.
- Enhanced the `UserIndicator` class to include an optional `timeframe` attribute for custom indicator timeframes.
- Updated the `get_indicator_data` method in `MarketDataIntegrator` to fetch and calculate indicators based on the specified timeframe, ensuring proper data alignment and handling.
- Modified the `ChartBuilder` to pass the correct DataFrame for plotting indicators with different timeframes.
- Added UI elements in the indicator modal for selecting timeframes, improving user experience.
- Updated relevant JSON templates to include the new `timeframe` field for all indicators.
- Refactored the `prepare_chart_data` function to ensure it returns a DataFrame with a `DatetimeIndex` for consistent calculations.
This commit enhances the flexibility and usability of the indicator system, allowing users to analyze data across various timeframes.
- Added type conversion for relevant columns in `VolumeAnalyzer` and `PriceMovementAnalyzer` to ensure consistent data handling and avoid type errors.
- Refactored the `create_data_analysis_panel` function to implement a tabbed interface for volume and price movement analysis, improving user experience and organization of analysis tools.
- Updated styles in `indicator_modal.py` for better layout and responsiveness of the modal component.
- Marked unit testing of dashboard components as complete in the task list.
- Updated `ChartBuilder` to support dynamic indicator integration, allowing users to specify overlay and subplot indicators for enhanced chart analysis.
- Implemented a new `get_indicator_data` method in `MarketDataIntegrator` for fetching indicator data based on user configurations.
- Added `create_export_controls` in `chart_controls.py` to facilitate data export options (CSV/JSON) for user analysis.
- Enhanced error handling and logging throughout the chart and data analysis processes to improve reliability and user feedback.
- Updated documentation to reflect new features and usage guidelines for indicator management and data export functionalities.
- Updated `app_new.py` to run the application in debug mode for stability.
- Introduced a new time range control panel in `dashboard/components/chart_controls.py`, allowing users to select predefined time ranges and custom date ranges.
- Enhanced chart callbacks in `dashboard/callbacks/charts.py` to handle time range inputs, ensuring accurate market statistics and analysis based on user selections.
- Implemented logic to preserve chart state during updates, preventing resets of zoom/pan settings.
- Updated market statistics display to reflect the selected time range, improving user experience and data relevance.
- Added a clear button for custom date ranges to reset selections easily.
- Enhanced documentation to reflect the new time range features and usage guidelines.
- Updated `register_chart_callbacks` to include enhanced market statistics.
- Implemented new data analysis callbacks in `dashboard/callbacks/data_analysis.py` for volume and price movement analysis.
- Created `VolumeAnalyzer` and `PriceMovementAnalyzer` classes for detailed statistical calculations.
- Integrated data analysis components into the market statistics layout, providing users with insights on volume trends and price movements.
- Improved error handling and logging for data analysis operations.
- Updated documentation to reflect the new features and usage guidelines.
- Added `psutil` dependency for system performance metrics.
- Implemented a new layout in `dashboard/layouts/system_health.py` using Mantine components for real-time monitoring of data collection services, database health, Redis status, and system performance.
- Enhanced callbacks in `dashboard/callbacks/system_health.py` for detailed status updates and error handling.
- Introduced quick status indicators for data collection, database, Redis, and performance metrics with auto-refresh functionality.
- Created modals for viewing detailed data collection information and service logs.
- Updated documentation to reflect the new features and usage guidelines.
- Introduced `BotIntegratedSignalLayer` and `BotIntegratedTradeLayer` to facilitate automated data fetching and visualization of bot signals and trades.
- Implemented `BotDataService` for efficient retrieval of bot-related data, including filtering and performance summaries.
- Added support for various bot-enhanced layers, including support/resistance and custom strategy layers, to improve trading analysis.
- Updated existing signal layer components to integrate with the new bot functionalities, ensuring seamless operation.
- Enhanced logging and error handling for better debugging and user feedback during bot operations.
- Included comprehensive tests for new functionalities to ensure reliability and maintainability.
- Updated documentation to reflect the new bot integration features and usage guidelines.
- Introduced `TradingSignalLayer` and `TradeExecutionLayer` for visualizing buy/sell signals and trade entries/exits on charts.
- Implemented signal validation and filtering mechanisms to ensure data integrity and user-configurable options.
- Enhanced market data layout to support new timeframes for improved user experience.
- Updated documentation to reflect the new signal layer architecture and its integration with the dashboard.
- Ensured compatibility with existing components while maintaining a modular structure for future enhancements.
- Deleted `app.py`, consolidating the main application logic into a modular structure for improved maintainability.
- Added `dash-mantine-components` dependency to enhance UI component capabilities.
- Updated `pyproject.toml` and `uv.lock` to reflect the new dependency.
- Adjusted imports in `components/__init__.py` and `chart_controls.py` to align with the new modular design.
- Cleaned up unused parameter controls in the market data layout to streamline the user interface.
- Introduced a new modular structure for the dashboard, enhancing maintainability and scalability.
- Created main application entry point in `app_new.py`, integrating all components and callbacks.
- Developed layout modules for market data, bot management, performance analytics, and system health in the `layouts` directory.
- Implemented callback modules for navigation, charts, indicators, and system health in the `callbacks` directory.
- Established reusable UI components in the `components` directory, including chart controls and indicator modals.
- Enhanced documentation to reflect the new modular structure and provide clear usage guidelines.
- Ensured all components are under 300-400 lines for better readability and maintainability.
- Introduced a comprehensive user indicator management system in `components/charts/indicator_manager.py`, allowing users to create, edit, and manage custom indicators with JSON persistence.
- Added new default indicators in `components/charts/indicator_defaults.py` to provide users with immediate options for technical analysis.
- Enhanced the chart rendering capabilities by implementing the `create_chart_with_indicators` function in `components/charts/builder.py`, supporting both overlay and subplot indicators.
- Updated the main application layout in `app.py` to include a modal for adding and editing indicators, improving user interaction.
- Enhanced documentation to cover the new indicator system, including a quick guide for adding new indicators and detailed usage examples.
- Added unit tests to ensure the reliability and functionality of the new indicator management features.
Implement comprehensive chart configuration and validation system
- Introduced a modular chart configuration system in `components/charts/config/` to manage indicator definitions, default configurations, and strategy-specific setups.
- Added new modules for error handling and validation, enhancing user guidance and error reporting capabilities.
- Implemented detailed schema validation for indicators and strategies, ensuring robust configuration management.
- Created example strategies and default configurations to facilitate user onboarding and usage.
- Enhanced documentation to provide clear guidelines on the configuration system, validation rules, and usage examples.
- Added unit tests for all new components to ensure functionality and reliability across the configuration system.
Implement modular chart layers and error handling for Crypto Trading Bot Dashboard
- Introduced a comprehensive chart layer system in `components/charts/layers/` to support various technical indicators and subplots.
- Added base layer components including `BaseLayer`, `CandlestickLayer`, and `VolumeLayer` for flexible chart rendering.
- Implemented overlay indicators such as `SMALayer`, `EMALayer`, and `BollingerBandsLayer` with robust error handling.
- Created subplot layers for indicators like `RSILayer` and `MACDLayer`, enhancing visualization capabilities.
- Developed a `MarketDataIntegrator` for seamless data fetching and validation, improving data quality assurance.
- Enhanced error handling utilities in `components/charts/error_handling.py` to manage insufficient data scenarios effectively.
- Updated documentation to reflect the new chart layer architecture and usage guidelines.
- Added unit tests for all chart layer components to ensure functionality and reliability.
✅ Properly handles lock acquisition with timeout
✅ Maintains the same functionality (timeout protection for lock acquisition)
✅ Ensures proper lock cleanup in the finally block
- Suppressed SQLAlchemy logging in `app.py` and `main.py` to reduce console verbosity.
- Introduced a new modular chart system in `components/charts/` with a `ChartBuilder` class for flexible chart creation.
- Added utility functions for data processing and validation in `components/charts/utils.py`.
- Implemented indicator definitions and configurations in `components/charts/config/indicator_defs.py`.
- Created a comprehensive documentation structure for the new chart system, ensuring clarity and maintainability.
- Added unit tests for the `ChartBuilder` class to verify functionality and robustness.
- Updated existing components to integrate with the new chart system, enhancing overall architecture and user experience.
- Introduced `app.py` as the main entry point for the dashboard, providing real-time visualization and bot management interface.
- Implemented layout components including header, navigation tabs, and content areas for market data, bot management, performance analytics, and system health.
- Added callbacks for dynamic updates of market data charts and statistics, ensuring real-time interaction.
- Created reusable UI components in `components` directory for modularity and maintainability.
- Enhanced database operations for fetching market data and checking data availability.
- Updated `main.py` to start the dashboard application with improved user instructions and error handling.
- Documented components and functions for clarity and future reference.
- Implemented enhanced task synchronization to prevent race conditions during WebSocket operations.
- Introduced reconnection locking to avoid concurrent reconnection attempts.
- Improved error handling in message processing and reconnection logic, ensuring graceful shutdown and task management.
- Added unit tests to verify the stability and reliability of the WebSocket client under concurrent operations.
- Marked task 2.9 as complete in the project documentation by adding comprehensive unit tests for data collection and aggregation functionality.
- Created `test_data_collection_aggregation.py` to cover OKX data collection, real-time candle aggregation, data validation, and transformation.
- Included tests for error handling, edge cases, and performance to ensure robustness and reliability of the data processing components.
- Enhanced documentation within the test module to provide clarity on the testing approach and coverage.
- Deleted `example_complete_series_aggregation.py` as it is no longer needed.
- Introduced `data_collection_service.py`, a production-ready service for cryptocurrency market data collection with clean logging and robust error handling.
- Added configuration management for multiple trading pairs and exchanges, supporting health monitoring and graceful shutdown.
- Created `data_collection.json` for service configuration, including exchange settings and logging preferences.
- Updated `CandleProcessingConfig` to reflect changes in timeframes for candle processing.
- Enhanced documentation to cover the new data collection service and its configuration, ensuring clarity for users.
- Introduced `indicators.py` containing implementations for SMA, EMA, RSI, MACD, and Bollinger Bands, optimized for handling sparse OHLCV data.
- Added `IndicatorResult` dataclass to encapsulate results of indicator calculations.
- Implemented methods for calculating multiple indicators efficiently with JSON configuration support and validation.
- Updated `__init__.py` to include new indicators in the module's exports.
- Enhanced documentation to cover the new technical indicators module, including usage examples and integration details.
- Added comprehensive unit tests to ensure accuracy and robustness of the indicators module.
- Introduced `example_complete_series_aggregation.py` to demonstrate time series aggregation, emitting candles even when no trades occur.
- Implemented `CompleteSeriesProcessor` extending `RealTimeCandleProcessor` to handle time-based candle emission and empty candle creation.
- Refactored `OKXCollector` to utilize the new repository pattern for database operations, enhancing modularity and maintainability.
- Updated database operations to centralize data handling through `DatabaseOperations`, improving error handling and logging.
- Enhanced documentation to include details on the new aggregation example and repository pattern implementation, ensuring clarity for users.
- Introduced `force_update_candles` option in `okx_config.json` to control candle update behavior.
- Updated `OKXCollector` to handle candle storage based on the `force_update_candles` setting, allowing for either updating existing records or preserving them.
- Enhanced logging to reflect the action taken during candle storage, improving traceability.
- Updated database schema to include `updated_at` timestamp for better tracking of data changes.
- Increased health check interval from 30s to 120s in `okx_config.json`.
- Added support for additional timeframes (1s, 5s, 10s, 15s, 30s) in the aggregation logic across multiple components.
- Updated `CandleProcessingConfig` and `RealTimeCandleProcessor` to handle new timeframes.
- Enhanced validation and parsing functions to include new second-based timeframes.
- Updated database schema to support new timeframes in `schema_clean.sql`.
- Improved documentation to reflect changes in multi-timeframe aggregation capabilities.
- Added logger parameter to the OKXCollector to enable detailed ping/pong logging.
- Updated message processing methods to maintain heartbeat and track data reception timestamps.
- Adjusted ProductionManager to disable auto-restart and enable full logging for debugging WebSocket issues.
- Enhanced overall logging capabilities to facilitate better monitoring and troubleshooting of data collection processes.
- Added optional logger parameter to various classes including `BaseDataCollector`, `CollectorManager`, `RealTimeCandleProcessor`, and `BatchCandleProcessor` to support conditional logging.
- Implemented error-only logging mode, allowing components to log only error and critical messages when specified.
- Updated logging calls to utilize new helper methods for improved readability and maintainability.
- Enhanced documentation to include details on the new logging system and its usage across components.
- Ensured that child components inherit the logger from their parent components for consistent logging behavior.
- Introduced `monitor_clean.py` for monitoring database status with detailed logging and status updates.
- Added `production_clean.py` for running OKX data collection with minimal console output and comprehensive logging.
- Implemented command-line argument parsing for both scripts to customize monitoring intervals and collection durations.
- Enhanced logging capabilities to provide clear insights into data collection and monitoring processes.
- Updated documentation to include usage examples and descriptions for the new scripts, ensuring clarity for users.
- Introduced a modular architecture for data processing, including common utilities for validation, transformation, and aggregation.
- Implemented `StandardizedTrade`, `OHLCVCandle`, and `TimeframeBucket` classes for unified data handling across exchanges.
- Developed `OKXDataProcessor` for OKX-specific data validation and processing, leveraging the new common framework.
- Enhanced `OKXCollector` to utilize the common data processing utilities, improving modularity and maintainability.
- Updated documentation to reflect the new architecture and provide guidance on the data processing framework.
- Created comprehensive tests for the new data processing components to ensure reliability and functionality.
- Introduced the `OKXCollector` and `OKXWebSocketClient` classes for real-time market data collection from the OKX exchange.
- Implemented a factory pattern for creating exchange-specific collectors, enhancing modularity and scalability.
- Added configuration support for the OKX collector in `config/okx_config.json`.
- Updated documentation to reflect the new modular architecture and provide guidance on using the OKX collector.
- Created unit tests for the OKX collector and exchange factory to ensure functionality and reliability.
- Enhanced logging and error handling throughout the new implementation for improved monitoring and debugging.
- Introduced `BaseDataCollector` and `CollectorManager` classes for standardized data collection and centralized management.
- Added health monitoring features, including auto-restart capabilities and detailed status reporting for collectors.
- Updated `env.template` to include new logging and health check configurations.
- Enhanced documentation in `docs/data_collectors.md` to provide comprehensive guidance on the new data collection system.
- Added unit tests for `BaseDataCollector` and `CollectorManager` to ensure reliability and functionality.
- Updated `.gitignore` to exclude log files from version control.
- Added `pytest` as a dependency in `pyproject.toml` for testing purposes.
- Included `pytest` in `uv.lock` to ensure consistent dependency management.
- Introduced comprehensive documentation for the new unified logging system in `docs/logging.md`, detailing features, usage, and configuration options.
- Introduced `alembic.ini` for Alembic configuration, enabling structured database migrations.
- Created `database/migrations/env.py` to manage migration environment and database URL retrieval.
- Added migration script template `database/migrations/script.py.mako` for generating migration scripts.
- Updated `.gitignore` to exclude migration versions from version control.
- Enhanced `setup.md` documentation to include details on the migration system and commands for managing migrations.
- Introduced `database/redis_manager.py` to manage Redis connections, including synchronous and asynchronous clients.
- Implemented pub/sub messaging capabilities for real-time data distribution, with structured channel definitions for market data, bot signals, and system health.
- Added configuration options for Redis connection pooling and error handling, ensuring robust integration with the Crypto Trading Bot Platform.
- Updated `docker-compose.yml` to remove hardcoded passwords, relying on environment variables for PostgreSQL and Redis configurations.
- Modified `env.template` to reflect new password settings and ensure secure handling of sensitive information.
- Introduced a new `database/connection.py` file for improved database connection management, including connection pooling and session handling.
- Updated `database/models.py` to align with the new schema in `schema_clean.sql`, utilizing JSONB for optimized data storage.
- Enhanced `setup.md` documentation to clarify the initialization process and emphasize the importance of the `.env` file for configuration.
- Added a new `scripts/init_database.py` script for automated database initialization and verification, ensuring all tables are created as expected.