| | --- |
| | language: en |
| | tags: |
| | - tapex |
| | - table-question-answering |
| | license: mit |
| | --- |
| | |
| | # TAPEX (large-sized model) |
| |
|
| | TAPEX was proposed in [TAPEX: Table Pre-training via Learning a Neural SQL Executor](https://arxiv.org/abs/2107.07653) by Qian Liu, Bei Chen, Jiaqi Guo, Morteza Ziyadi, Zeqi Lin, Weizhu Chen, Jian-Guang Lou. The original repo can be found [here](https://github.com/microsoft/Table-Pretraining). |
| |
|
| | ## Model description |
| |
|
| | TAPEX (**Ta**ble **P**re-training via **Ex**ecution) is a conceptually simple and empirically powerful pre-training approach to empower existing models with *table reasoning* skills. TAPEX realizes table pre-training by learning a neural SQL executor over a synthetic corpus, which is obtained by automatically synthesizing executable SQL queries. |
| |
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| | TAPEX is based on the BART architecture, the transformer encoder-encoder (seq2seq) model with a bidirectional (BERT-like) encoder and an autoregressive (GPT-like) decoder. |
| |
|
| | ## Intended Uses |
| |
|
| | You can use the raw model for simulating neural SQL execution, i.e., employ TAPEX to execute a SQL query on a given table. However, the model is mostly meant to be fine-tuned on a supervised dataset. Currently TAPEX can be fine-tuned to tackle table question answering tasks and table fact verification tasks. See the [model hub](https://huggingface.co/models?search=tapex) to look for fine-tuned versions on a task that interests you. |
| |
|
| | ### How to Use |
| |
|
| | Here is how to use this model in transformers: |
| |
|
| | ```python |
| | from transformers import TapexTokenizer, BartForConditionalGeneration |
| | import pandas as pd |
| | |
| | tokenizer = TapexTokenizer.from_pretrained("microsoft/tapex-large-sql-execution") |
| | model = BartForConditionalGeneration.from_pretrained("microsoft/tapex-large-sql-execution") |
| | |
| | data = { |
| | "year": [1896, 1900, 1904, 2004, 2008, 2012], |
| | "city": ["athens", "paris", "st. louis", "athens", "beijing", "london"] |
| | } |
| | table = pd.DataFrame.from_dict(data) |
| | |
| | # tapex accepts uncased input since it is pre-trained on the uncased corpus |
| | query = "select year where city = beijing" |
| | encoding = tokenizer(table=table, query=query, return_tensors="pt") |
| | |
| | outputs = model.generate(**encoding) |
| | |
| | print(tokenizer.batch_decode(outputs, skip_special_tokens=True)) |
| | # ['2008'] |
| | ``` |
| |
|
| | ### How to Fine-tuning |
| |
|
| | ⚠️ This model checkpoint is **ONLY** used for simulating neural SQL execution (i.e., employ TAPEX to execute a SQL query on a given table), and you **CANNOT** use this model for fine-tuning on downstream tasks. The one that can be used for fine-tuning is at [here](https://huggingface.co/microsoft/tapex-large). |
| |
|
| | > This separation of two models for two kinds of intention is because of a known issue in BART large, and we recommend readers to see [this comment](https://github.com/huggingface/transformers/issues/15559#issuecomment-1062880564) for more details. |
| |
|
| | ### BibTeX entry and citation info |
| |
|
| | ```bibtex |
| | @inproceedings{ |
| | liu2022tapex, |
| | title={{TAPEX}: Table Pre-training via Learning a Neural {SQL} Executor}, |
| | author={Qian Liu and Bei Chen and Jiaqi Guo and Morteza Ziyadi and Zeqi Lin and Weizhu Chen and Jian-Guang Lou}, |
| | booktitle={International Conference on Learning Representations}, |
| | year={2022}, |
| | url={https://openreview.net/forum?id=O50443AsCP} |
| | } |
| | ``` |