Deep Learning Boot Camp
Fall 2025
Sep 10, 2025
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Dec 19, 2025
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Registration Deadlines
Sep 3, 2025
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Erdős members / alumni who have successfully completed a prior Erdős Data Science Boot Camp Project
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Category
Advance, Supplemental, Self-Directed, Project-Based, Boot Camp
Overview
Welcome to deep learning! Each week, you'll complete assigned readings from 2 deep learning books. During the first few weeks, there will be weekly meetings with the instructors and all attendees on Zoom. As you progress more into the material and your projects, you will meet according to your group schedule.
In order to receive a deep learning certificate, you must submit a (team-based) final project by the end of the cohort.

Click here to be invited to the slack organization: The Erdős Institute
Click here to access the slack cohort channel: #slack-cohort-channel
Click here to access the slack program channel: #slack-program-channel
Click here to download the Events & Deadlines .ics calendar file
Organizers, Instructors, and Advisors
Lindsay Warrenburg
Associate Director of Erdős
Office Hours:
As Needed
Email:
Preferred Contact:
Slack
Slack is the best way to contact me!
Marcos Ortiz
Lead Deep Learning TA
Office Hours:
As Needed
Email:
Preferred Contact:
Slack
Objectives
- Learn the basics of deep learning
- Understand how deep learning is used in industry
- Feel comfortable with deep learning code (PyTorch and FastAI)
Project Examples
TEAM 2
Deep Learning Models for Colorectal Polyp Detection
Ruibo Zhang, Rebekah Eichberg, Betul Senay Aras, Kevin Specht, Arthur Diep-Nguyen

A polyp is an abnormal tissue growth in the large intestine that is typically benign but can develop into malignant colorectal cancer. Colonoscopy enables endoscopists to identify and assess these polyps for potential removal. However, the accuracy of this procedure depends heavily on the clinician’s expertise, making it prone to human error and variability. Our goal is to build a deep-learning model that detects colorectal polyps in images from colonoscopies to minimize missed lesions and improve patient outcomes.
TEAM 12
Fraud Detection with Deep Learning
Jude Pereira, Yang Yang, Adrian Wong, Sara Edelman-Munoz, Mary Reith

Fraud detection is a critical area where deep learning has been effectively applied to identify and prevent unauthorized transactions, money laundering, and other financial crimes. Traditional rule-based systems and statistical models often struggle to detect sophisticated fraud patterns, particularly when dealing with large volumes of data and rapidly evolving fraud techniques. In contrast, deep learning models, such as CNNs, RNNs, and autoencoders, have proven highly effective in analyzing complex, high-dimensional transaction data and detecting subtle, non-linear patterns indicative of fraudulent activity.
In this project, we build a User ID-based fraud detection model using autoencoders, trained on unlabelled real-world credit card transaction data, capable of detecting fraud with a precision of up to 35% and a recall of up to 72%, performing significantly better than traditional ML/statistical baseline models..
First Steps/Prerequisites
Program Content
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Course materials are available on github through the following link:
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Textbook/Notes
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Schedule
Click on any date for more details
Phase 1: Instruction and Project Completion
Project Review & Judging
Phase 2: Intense Interview Prep & Career Connections
Deep Learning Orientation
Sep 12, 2025 at 08:00 PM UTC
EVENT
Deep Learning Project Pitch Day
Sep 22, 2025 at 08:00 PM UTC
EVENT
Deep Learning Check-In Day
Oct 3, 2025 at 08:00 PM UTC
EVENT
Deep Learning Check-In Day
Oct 17, 2025 at 08:00 PM UTC
EVENT
Deep Learning Lesson 6
Oct 27, 2025 at 08:00 PM UTC
EVENT
Deep Learning Project Showcase
Nov 14, 2025 at 09:00 PM UTC
EVENT
Deep Learning Computer Set-up Day & Lesson 1
Sep 15, 2025 at 08:00 PM UTC
EVENT
Deep Learning Lesson 2
Sep 26, 2025 at 08:00 PM UTC
EVENT
Deep Learning Lesson 4
Oct 6, 2025 at 08:00 PM UTC
EVENT
Deep Learning Lesson 5
Oct 20, 2025 at 08:00 PM UTC
EVENT
Deep Learning Check-In Day
Oct 31, 2025 at 08:00 PM UTC
EVENT
Phase II Orientation
Nov 17, 2025 at 07:00 PM UTC
EVENT
Deep Learning Class Networking Event
Sep 19, 2025 at 08:00 PM UTC
EVENT
Deep Learning Lesson 3
Sep 29, 2025 at 08:00 PM UTC
EVENT
Deep Learning Check-In Day
Oct 10, 2025 at 08:00 PM UTC
EVENT
Deep Learning Check-In Day
Oct 24, 2025 at 08:00 PM UTC
EVENT
Deep Learning Final Check-In / Questions
Nov 3, 2025 at 09:00 PM UTC
EVENT
Project/Homework Deadlines
Sep 11, 2025
03:59 AM UTC
Deadline to switch bootcamps
Last chance
Sep 22, 2025
03:59 AM UTC
Last day to defer enrollment to a future cohort
Contact Amalya Lehmann (amalya@erdosinstitute.org) if you would like to unenroll from this cohort and defer to a future cohort.
Sep 28, 2025
09:00 PM UTC
Deep Learning Teams and Project Topics Due
Submit on the course website
Nov 7, 2025
10:00 PM UTC
Deep Learning Final Project Due
Submit on the course website
Nov 19, 2025
10:00 PM UTC
Self Study: NLP
Phase 2
Nov 26, 2025
10:00 PM UTC
Self-study: Deployment / Productionization
Phase 2
Dec 3, 2025
10:00 PM UTC
Self Study: Computer Vision
Phase 2
Dec 10, 2025
10:00 PM UTC
Self Study: LLMs & Agents
Phase 2
Dec 17, 2025
10:00 PM UTC
Self Study: Neural Network Deep Dive
Phase 2



