DataHub Garbage Collection Source Documentation
Overview
The DataHub Garbage Collection (GC) source is a maintenance component responsible for cleaning up various types of metadata to maintain system performance and data quality. It performs multiple cleanup tasks, each focusing on different aspects of DataHub's metadata.
Cleanup Tasks
1. Index Cleanup
Manages Elasticsearch indices in DataHub, particularly focusing on time-series data.
Configuration
source:
type: datahub-gc
config:
truncate_indices: true
truncate_index_older_than_days: 30
truncation_watch_until: 10000
truncation_sleep_between_seconds: 30
Features
- Truncates old Elasticsearch indices for the following timeseries aspects:
- DatasetOperations
- DatasetUsageStatistics
- ChartUsageStatistics
- DashboardUsageStatistics
- QueryUsageStatistics
- Timeseries Aspects
- Monitors truncation progress
- Implements safe deletion with monitoring thresholds
- Supports gradual truncation with sleep intervals
2. Expired Token Cleanup
Manages access tokens in DataHub to maintain security and prevent token accumulation.
Configuration
source:
type: datahub-gc
config:
cleanup_expired_tokens: true
Features
- Automatically identifies and revokes expired access tokens
- Processes tokens in batches for efficiency
- Maintains system security by removing outdated credentials
- Reports number of tokens revoked
- Uses GraphQL API for token management
3. Data Process Cleanup
Manages the lifecycle of data processes, jobs, and their instances (DPIs) within DataHub.
Features
- Cleans up Data Process Instances (DPIs) based on age and count
- Can remove empty DataJobs and DataFlows
- Supports both soft and hard deletion
- Uses parallel processing for efficient cleanup
- Maintains configurable retention policies
Configuration
source:
type: datahub-gc
config:
dataprocess_cleanup:
enabled: true
retention_days: 10
keep_last_n: 5
delete_empty_data_jobs: false
delete_empty_data_flows: false
hard_delete_entities: false
batch_size: 500
max_workers: 10
delay: 0.25
Limitations
- Maximum 9000 DPIs per job for performance
4. Execution Request Cleanup
Manages DataHub execution request records to prevent accumulation of historical execution data.
Features
- Maintains execution history per ingestion source
- Preserves minimum number of recent requests
- Removes old requests beyond retention period
- Special handling for running/pending requests
- Automatic cleanup of corrupted records
Configuration
source:
type: datahub-gc
config:
execution_request_cleanup:
enabled: true
keep_history_min_count: 10
keep_history_max_count: 1000
keep_history_max_days: 30
batch_read_size: 100
runtime_limit_seconds: 3600
max_read_errors: 10
5. Soft-Deleted Entities Cleanup
Manages the permanent removal of soft-deleted entities after a retention period.
Features
- Permanently removes soft-deleted entities after retention period
- Handles entity references cleanup
- Special handling for query entities
- Supports filtering by entity type, platform, or environment
- Concurrent processing with safety limits
Configuration
source:
type: datahub-gc
config:
soft_deleted_entities_cleanup:
enabled: true
retention_days: 10
batch_size: 500
max_workers: 10
delay: 0.25
entity_types: null # Optional list of entity types to clean
platform: null # Optional platform filter
env: null # Optional environment filter
query: null # Optional custom query filter
limit_entities_delete: 25000
futures_max_at_time: 1000
runtime_limit_seconds: 7200
Performance Considerations
- Concurrent processing using thread pools
- Configurable batch sizes for optimal performance
- Rate limiting through configurable delays
- Maximum limits on concurrent operations
Reporting
Each cleanup task maintains detailed reports including:
- Number of entities processed
- Number of entities removed
- Errors encountered
- Sample of affected entities
- Runtime statistics
- Task-specific metrics