Multi-modal Deep Learning for Complex Document Understanding with Doug Burdick
EPISODE 541
|
DECEMBER
2,
2021
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About this Episode
Today we’re joined by Doug Burdick, a principal research staff member at IBM Research. In a recent interview, Doug’s colleague Yunyao Li joined us to talk through some of the broader enterprise NLP problems she’s working on. One of those problems is making documents machine consumable, especially with the traditionally archival file type, the PDF. That’s where Doug and his team come in. In our conversation, we discuss the multimodal approach they’ve taken to identify, interpret, contextualize and extract things like tables from a document, the challenges they’ve faced when dealing with the tables and how they evaluate the performance of models on tables. We also explore how he’s handled generalizing across different formats, how fine-tuning has to be in order to be effective, the problems that appear on the NLP side of things, and how deep learning models are being leveraged within the group.
About the Guest
Doug Burdick
IBM Research
Thanks to our sponsor IBM
The IBM Institute for Business Value (IBV) delivers trusted business insights from our position at the intersection of technology and business, combining expertise from industry thinkers, leading academics, and subject matter experts with global research and performance data. The IBV thought leadership portfolio includes research deep dives, benchmarking and performance comparisons, and data visualizations that support business decision making across regions, industries and technologies.
Resources
- Four Key Tools for Robust Enterprise NLP with Yunyao Li - #537
- Advancing NLP with Project Debater w/ Noam Slonim - #495
- Blog: Bringing IBM NLP capabilities to the CORD-19 Dataset
- Blog: Deep Document Understanding: IBM’s AI extracts data from complex documents
- Dataset: FinTabNet
- Dataset: PubTabNet
- Dataset: PubLayNet
- Dataset: CORD-19 COVID-19 Open Research Dataset
- Paper: Global Table Extractor (GTE): A Framework for Joint Table Identification and Cell Structure Recognition Using Visual Context
- Paper: TableLab: An Interactive Table Extraction System with Adaptive Deep Learning
- Course: Tutorial on Table Extraction and Understanding for Scientific and Enterprise Applications
- LayoutLM - Github
