![[AI Fundamentals] Understanding CNNs for AI Research Engineers강의 썸네일](https://cdn.inflearn.com/public/courses/334497/cover/513ff4a8-be20-4750-8819-4ad496ff9fc4/334497.png?w=420)
[AI Fundamentals] Understanding CNNs for AI Research Engineers
whitebox
Still lost on CNN even after studying it? I'll concisely explain CNN's core mechanics.
입문
Computer Vision(CV), Python, PyTorch
When researching AI or conducting a project using it, basic paper implementation is essential. Let's upgrade our practical skills by implementing an actual paper through this lecture!
372 learners

Read actual papers and implement them with Python and PyTorch
Understanding the Neural Style Transfer Paper
Useful tips to know when reading AI papers
How to strengthen your practical skills through thesis implementation experience
How to solve problems that may arise during the paper implementation process
Who is this course right for?
Anyone interested in AI careers
For those preparing for AI graduate school
People who had difficulty reading and understanding the paper
Those who want to gain practical experience beyond simply implementing basic functions
Need to know before starting?
Basic implementation skills using Python and PyTorch
Basic understanding of deep learning/CNN
(Optional) Linear Algebra
(Optional) English Reading
1,061
Learners
68
Reviews
10
Answers
4.9
Rating
2
Courses
주요 경력
(현) 국내 IT 대기업 AI Research Engineer
(전) AI 스타트업 AI Research Engineer
AI 연구/개발 이력
다수의 AI 프로젝트 진행 및 AI 프로덕트 출시 경험
다수의 AI 연구 및 Top-Tier Conference 논문 게재 경험
Generative AI 전문가
기타 이력
국내 학회 인공지능 세션 튜토리얼 강사
국내 대기업 AI 강의 초빙 강사
사내 생성 AI 세미나 강사
All
51 lectures ∙ (3hr 4min)
Course Materials:
All
31 reviews
5.0
31 reviews

Reviews 2
∙
Average Rating 5.0
5
I'm interested in AI work, so I listened to it. It was very helpful because it explained everything from how to read papers to deriving results in an easy-to-understand way, and it also gave me tips and cautions here and there. After listening to the lecture, I can see what parts I need to improve on. Now I'm going to study more. Haha. Thank you for the great lecture.
Thank you for your good review. I'm glad it was helpful. I will try to repay you with better lectures in the future.

Reviews 1
∙
Average Rating 5.0
5
Thank you for the great lecture! I feel confident that I can implement other papers! I would like you to review other papers as well.
Thank you. I will try to review other papers and technologies in the future.
Reviews 1
∙
Average Rating 5.0
5
Thank you for the great lecture. I always felt lost when trying to implement it, but my thirst has been somewhat quenched. Haha
Thank you. I'm glad it helped you.

Reviews 6
∙
Average Rating 5.0
5
I think it would be helpful for those who have some understanding of Python and prior knowledge of deep learning, but do not have AI coding experience to actually implement something. It was a great help because it was live coding. The communication skills were good, and it seemed like there was no unnecessary content. ㅎㅎ If there is a follow-up lecture, I will take it again.
Thank you. I will come back with another great lecture next time.
$42.90
Check out other courses by the instructor!
Explore other courses in the same field!