![[PL 0302] Python for Data Manipulation - NumPy Masterclass강의 썸네일](https://cdn.inflearn.com/public/courses/334756/cover/a4cbdc80-53da-4422-9b8d-67362b68a9fa/334756.png?w=420)
[PL 0302] Python for Data Manipulation - NumPy Masterclass
asdfghjkl13551941
This is a lecture on how to use NumPy and practice its application in real-world scenarios.
입문
Numpy, Python, AI
Expand on the basic grammar of Python and work on machine learning/deep learning projects.
223 learners
Level Beginner
Course period 12 months
Reviews from Early Learners
5.0
alex.na
I felt that the class was structured in a way that I could learn a lot, and the practical learning was good. Thank you.
5.0
endymion cheon
It was a great lecture! I had some basic knowledge of grammar and numpy, but it was very helpful to learn various methods that can be used in relation to deep learning. In particular, I think I was able to understand it more deeply by implementing Data Generation, Convolutional Layer, K-Nearest Neighbor, and K-means Clustering myself. I plan to take follow-up lectures. Thank you for the great lecture!
5.0
lym930920
Thank you so much, it's really helpful!
Python Basics
Deep Learning Basics Items
How CNN related modules work
Problem solving skills
Solve mini-projects on your own and develop the implementation skills needed to learn deep learning!
In this course, [Python for Deep Learning Level 1] , you'll expand on Python syntax and implement more complex concepts used in deep learning . Furthermore, through six mini-projects, you'll significantly improve your implementation skills, not just lectures.
Mini-projects aren't just about listening to programming lectures; they're designed to cultivate implementation skills . Instead, they first provide time to listen to a problem situation and then try to solve it on your own . Afterward, they receive an explanation and then review the problem.
Programming skills are determined by how well you can translate your thoughts into programs. Through these projects, you will be able to: Practice the implementation skills needed to learn deep learning .
In Level 2, you'll learn slightly more complex formulas than in Level 1. These formulas are actively used in deep learning .
Through this course, you will be able to greatly improve the following abilities:
You can gain the following knowledge:
If you break down any program into small modules, those small modules are made up of basic operations .
In mini-projects, we will combine the small modules we have learned so far to directly implement machine learning algorithms such as K-nearest neighbor classification and K-means clustering, as well as deep learning-related topics such as convolutional layers and edge detection .
Who is this course right for?
For those who are new to deep learning
For those who are learning Python for the first time
People who lack program implementation skills
For those who want to start learning deep learning and Python together
Anyone who wants to join the deep learning specialized course
Need to know before starting?
[Python Level 1 for Deep Learning] Students
3,917
Learners
184
Reviews
85
Answers
4.9
Rating
21
Courses
[Like Lion] Intermediate/Advanced AI Course
[National Institute of Meteorological Sciences] 2022, 2023, 2025 Meteorological AI Boost Camp
[Samsung Electro-Mechanics] Advanced Software Course for New Employees
[Korea Institute of Human Resources Development in Science and Technology] Long-term Mentoring for Strengthening R&D Implementation Capabilities
[Korea Institute of Human Resources Development in Science and Technology] E-learning content production for R&D professional courses
[Korea Institute of Human Resources Development in Science and Technology] Research Data Visualization Course for Postdoctoral Researchers
[Wonkwang University] Wonkwang University AI Collective Training and AI Short/Long-term Courses
[National Information Society Agency] SW Education for Women Professionals
[SK m&service] Data-Driven Decision Making
[Korea IT Business Promotion Association] ICT COG Academy
[Seoul Metropolitan Office of Education] Training in New Technology Fields
[KT] KT AI Competency Enhancement Course
[K-ICT] Data Safe Zone Analysis Camp
[Gyeonggi-do Business & Science Accelerator] Vision AI for Beginners
[Gyeonggi Business & Science Accelerator] Introduction to Data Analysis with Python
[Seoul National University of Science and Technology] Advanced AI Utilization Training
[Seoul National University] AI Utilization Capacity Building Training
[HD Korea Shipbuilding & Offshore Engineering] AIC AI Research Position Competency Assessment Development
[Multicampus] Mastering Core Machine Learning Algorithms: From Principles to Implementation
[Fast Campus] A Mathematical Approach to Deep Learning
[패스트캠퍼스] Machine Learning and Data Analysis A-Z: All-in-One Master Class
[Fast Campus] Byte Degree Lv.2 Deep Learning Essentials
[Fast Campus] Deep Learning & AI Super Gap
[Fast Campus] Computer Science Super Gap VER.2
Analysis A-Z [Fast Campus] Byte Degree Lv.2 Deep Learning Essentials [Fast Campus] Deep Learning AI Super Gap [Fast Campus] Computer Science Super Gap VER.2
All
60 lectures ∙ (42hr 28min)
Course Materials:
All
11 reviews
5.0
11 reviews
Reviews 5
∙
Average Rating 5.0
Reviews 14
∙
Average Rating 5.0
5
It was a great lecture! I had some basic knowledge of grammar and numpy, but it was very helpful to learn various methods that can be used in relation to deep learning. In particular, I think I was able to understand it more deeply by implementing Data Generation, Convolutional Layer, K-Nearest Neighbor, and K-means Clustering myself. I plan to take follow-up lectures. Thank you for the great lecture!
Reviews 2
∙
Average Rating 5.0
Reviews 18
∙
Average Rating 5.0
Reviews 8
∙
Average Rating 5.0
Check out other courses by the instructor!