Tapas Base Masklm
TAPAS (Table Parsing) is a pre-trained language model developed by Google specifically for handling table-related tasks.
Downloads 148
Release Time : 3/2/2022
Model Overview
TAPAS is a BERT-based model specifically pre-trained for tabular data, capable of understanding and processing structured information in tables, supporting tasks such as table question answering and table filling.
Model Features
Table-aware Pre-training
Enables the model to understand table structures through special pre-training tasks (e.g., table-structure-aware masked language modeling).
Joint Text-Table Understanding
Capable of processing both natural language queries and table data, understanding the relationship between them.
Structured Data Support
Specifically optimized for structured data like tables, making it more suitable for table-related tasks than general language models.
Model Capabilities
Table Question Answering
Table Filling
Table Data Understanding
Structured Data Reasoning
Table Information Retrieval
Use Cases
Business Intelligence
Financial Statement Analysis
Automatically answers natural language questions about financial statements.
Accurately extracts numerical information from tables and answers related questions.
Data Management
Table Data Completion
Automatically fills missing values in tables.
Infers and fills reasonable table content based on context.
Featured Recommended AI Models