Structured Data Extraction Task
Jump to navigation
Jump to search
A Structured Data Extraction Task is an information extraction task that extracts data values from structured data sources to populate structured data records.
- AKA: Structured IE Task, Structured Information Extraction Task, Database Extraction Task, Structured Source Extraction Task.
- Context:
- Input: Structured Data Sources.
- Output: Populated Structured Data Records.
- Measure(s): Structured Data Extraction Performance Measures such as structured data extraction accuracy, structured data extraction completeness, structured data extraction speed, and structured data extraction error rate.
- It can typically extract Database Field Values from structured database tables.
- It can typically map Source Schema Elements to structured target schema elements.
- It can typically preserve Data Type Constraints during structured data transformation.
- It can typically maintain Referential Integrity across structured data relationships.
- It can typically handle Multiple Table Joins in structured data queryes.
- ...
- It can often perform Data Type Conversions between structured data formats.
- It can often apply Business Rule Validations to structured extracted data.
- It can often generate Audit Trail Records for structured data lineage.
- It can often support Incremental Extraction from structured data sources.
- ...
- It can range from being a Simple Structured Data Extraction Task to being a Complex Structured Data Extraction Task, depending on its structured data extraction complexity.
- It can range from being a Single-Source Structured Data Extraction Task to being a Multi-Source Structured Data Extraction Task, depending on its structured data source count.
- It can range from being a Batch Structured Data Extraction Task to being a Real-Time Structured Data Extraction Task, depending on its structured data processing timing.
- It can range from being a Full Structured Data Extraction Task to being a Selective Structured Data Extraction Task, depending on its structured data extraction scope.
- ...
- It can be solved by Structured Data Extraction Systems implementing structured data extraction algorithms.
- It can utilize SQL Querys for structured database extraction.
- It can employ API Calls for structured service extraction.
- It can leverage Schema Mapping Tools for structured data transformation.
- It can integrate with ETL Pipelines for structured data processing.
- ...
- Example(s):
- Database-Based Structured Data Extraction Tasks, such as:
- Relational Database Extraction Tasks, such as:
- NoSQL Database Extraction Tasks, such as:
- File-Based Structured Data Extraction Tasks, such as:
- Spreadsheet Extraction Tasks, such as:
- Structured Document Extraction Tasks, such as:
- API-Based Structured Data Extraction Tasks, such as:
- Application-Specific Structured Data Extraction Tasks, such as:
- ETL-Component Structured Data Extraction Tasks, such as:
- ...
- Database-Based Structured Data Extraction Tasks, such as:
- Counter-Example(s):
- Unstructured Data Extraction Task, which extracts from free-form text rather than structured data sources.
- Semi-Structured Data Extraction Task, which processes partially structured data rather than fully structured data sources.
- Data Generation Task, which creates new data rather than extracting from structured existing sources.
- Data Transformation Task, which modifies data formats rather than extracting structured source data.
- Data Validation Task, which verifies data quality rather than performing structured data extraction.
- See: Semi-Structured Data Extraction Task, Unstructured Data Extraction Task, Data Extraction System, ETL Task, Data Migration Task, Database Replication Task.