Skip to content

Commit 29a5d5c

Browse files
committed
Update after March
1 parent bb1a6b8 commit 29a5d5c

File tree

3 files changed

+4
-8
lines changed

3 files changed

+4
-8
lines changed
310 KB
Loading
1.3 MB
Loading

content/meetups/20250313-improving-receipt-understanding-at-fetch/contents.lr

Lines changed: 4 additions & 8 deletions
Original file line numberDiff line numberDiff line change
@@ -2,7 +2,7 @@ title: Improving Receipt Understanding at Fetch
22
---
33
author: Adam Frees
44
---
5-
future: yes
5+
future: no
66
---
77
location: Fetch Rewards, 1050 E. Washington Ave., Suite 200
88
---
@@ -12,22 +12,18 @@ pub_datetime: 2025-03-13 18:30:00 America/Chicago
1212
---
1313
body:
1414

15-
![](/static/images/2025-03-13-Improving-Receipt-Understanding-Social-Card-1792x1024.png)
16-
17-
**Note: this event is hosted at Fetch Rewards Headquarters in Downtown Madison. While the event is free and open to the public, attendees must RSVP for entrance.**
18-
19-
**_Link for Required RSVP:_** https://lu.ma/uc9se65d
15+
![](/static/images/2025-03-13-Improving-Receipt-Understanding-1-2379x1784.jpg)
2016

2117
Fetch uses machine learning to process images of receipts into structured data at scale (over 10 million images per day!). This is a big part of how Fetch can reward consumers at a large scale while providing brands an effective way to promote their products. However, due to the varied quality of these images, extracting this structured data can be challenging. In particular, associating product names with prices, quantities, and other details can be difficult to achieve in some low-quality images. In this talk, Adam will show how the combination of a cutting-edge object-detection ML model along with Graph-theory techniques (all implemented in Python) has led to a measurable increase in accuracy for Fetch’s receipt understanding.
2218

2319
Adam Frees is the tech lead of the Machine Learning organization at Fetch. He holds a Bachelor's degree from Brown University and a Ph.D. in Physics from UW-Madison. Prior to Fetch, he worked as a software developer at Epic Systems, utilizing ML to process data from over 60 million patient records, and at Majesco, where he trained and deployed CV and NLP models for the Property & Casualty Insurance sector.
2420
---
25-
image: https://madpy.com/static/images/2025-03-13-Improving-Receipt-Understanding-Social-Card-1200x630.png
21+
image: https://madpy.com/static/images/2025-03-13-Improving-Receipt-Understanding-1-1200x630.jpg
2622
---
2723
image_height: 630
2824
---
2925
image_width: 1200
3026
---
31-
ogdescription: Learn how Fetch uses ML to turn images of receipts into structured data at scale! Hosted @ Fetch's downtown offices -- RSVP required.
27+
ogdescription: In March, we learned how Fetch uses ML to turn images of receipts into structured data at scale! MadPy attendees enjoyed free food and beverage along with a fascinating talk hosted at Fetch's downtown offices
3228
---
3329
meetup_url: https://www.meetup.com/madison-python/events/305982723/

0 commit comments

Comments
 (0)