
Digital Transformation Using AI
pnuswedu
무료
입문 / AI, RPA, Python
4.9
(18)
Learn machine learning techniques using Python and improve your ability to extract information from real-world data and develop predictive models!
입문
AI, RPA, Python
관련 스킬
관련 스킬

Digital Transformation Using AI
pnuswedu
무료
입문 / AI, RPA, Python
4.9
(18)
Learn machine learning techniques using Python and improve your ability to extract information from real-world data and develop predictive models!
입문
AI, RPA, Python

Digital Transformation Using AI
pnuswedu
무료
입문 / AI, RPA, Python
4.9
(18)
A course for beginner AI engineers
Sungmin Kim
₩47
입문 / Python, Machine Learning(ML), FastAPI, LLM, RAG
4.5
(2)
This introductory course for AI engineers is designed to provide a brief hands-on experience of the entire process, from data processing and model development to cloud, MLOps, and ethical considerations. It focuses on building practical skills by helping students understand the process of connecting models to actual services, rather than just creating them. The course includes hands-on exercises and examples so that even those learning AI for the first time can easily follow along.
입문
Python, Machine Learning(ML), FastAPI
A course for beginner AI engineers
Sungmin Kim
₩47
입문 / Python, Machine Learning(ML), FastAPI, LLM, RAG
4.5
(2)
Autonomous Driving with Python
hjk1000
₩18
초급 / Python, Autonomous Driving, slam
5.0
(3)
Why this course is special: Key Advantages • Intuitive Visualization: Directly observe algorithm operations in real-time with Pygame 2D simulations • Practical Implementation Experience: Go beyond theory and internalize autonomous driving algorithms by coding directly • Master Core Algorithms: Focused learning of essential algorithms such as Dijkstra, Pure Pursuit, ICP, etc. • Step-by-step Advanced Learning: Systematic difficulty progression from basics to SLAM • Lidar-based SLAM: Practical map building and localization in unknown environments
초급
Python, Autonomous Driving, slam
Autonomous Driving with Python
hjk1000
₩18
초급 / Python, Autonomous Driving, slam
5.0
(3)
Deep Learning with PyTorch Part 2: Practical Deep Learning Projects with PyTorch Lightning
softcampus
₩77
초급 / Python, AI, PyTorch, pytorch-lightning
"From the basics to 7 domain projects, completing the A to Z of deep learning (41 lectures in total)." Go beyond simply calling models and learn how to build clean, efficient deep learning pipelines using PyTorch Lightning, the current industry trend. Grow into a confident AI engineer capable of handling any data by directly implementing 7 projects, ranging from stock price prediction to generative AI, medical imaging, and sound analysis.
초급
Python, AI, PyTorch
Deep Learning with PyTorch Part 2: Practical Deep Learning Projects with PyTorch Lightning
softcampus
₩77
초급 / Python, AI, PyTorch, pytorch-lightning
Getting Started with AI in 2026: How Should Students/Graduate Students/Developers Begin with Artificial Intelligence?
anjaeju
무료
입문 / Python, AI, Machine Learning(ML), Self Improvement
4.6
(11)
- I am a Research Engineer/AI PM running a 4-year-old AI startup. - This video is a lecture for those who want to start studying artificial intelligence "now" or in "2026". - Looking at college students, I see many who have no idea how to get started with artificial intelligence. - I hope that after watching this lecture, you'll be able to start studying artificial intelligence. - For reference, this lecture is not about "using AI in my work" or "getting started with monetization methods using GPT". - This is a video about how students, graduate students, or developers can get started when they want to study artificial intelligence.
입문
Python, AI, Machine Learning(ML)
Getting Started with AI in 2026: How Should Students/Graduate Students/Developers Begin with Artificial Intelligence?
anjaeju
무료
입문 / Python, AI, Machine Learning(ML), Self Improvement
4.6
(11)
(First Steps in Deep Learning Modeling) Master the Core Theory of Deep Learning from Gradient Descent to Backpropagation with Formulas and Code!
fasoft
₩59
입문 / Python, Tensorflow, AI, Numpy, Deep Learning(DL)
5.0
(1)
Based on over 100 deep learning training sessions, this course systematically organizes the core foundational theories that students found most challenging. The course connects mathematical intuition, model learning principles, and code implementation step by step in a way that even non-majors can understand, deeply covering the fundamental structure and operating principles of how AI models learn, rather than just library usage. This is a practical introductory course designed to help you grow into a skilled engineer who understands AI principles by implementing core deep learning foundational technologies such as gradient descent, loss functions, optimization, perceptrons, multilayer neural networks, and backpropagation through both formulas and code.
입문
Python, Tensorflow, AI
(First Steps in Deep Learning Modeling) Master the Core Theory of Deep Learning from Gradient Descent to Backpropagation with Formulas and Code!
fasoft
₩59
입문 / Python, Tensorflow, AI, Numpy, Deep Learning(DL)
5.0
(1)
Evaluation methods for stable AI agent service operation
jasonkang
₩54
중급이상 / Python, LangChain, LangGraph
5.0
(6)
Are you anxious every time you deploy an AI agent? Based on experience with major domestic corporations and global big tech companies, we will show you how to systematically measure and improve agent quality using LangSmith.
중급이상
Python, LangChain, LangGraph
Evaluation methods for stable AI agent service operation
jasonkang
₩54
중급이상 / Python, LangChain, LangGraph
5.0
(6)

Building an AI Recommendation System by a Working Engineer | Recommendation Algorithm | Recommender | Recsys
Jay
₩43
초급 / Python, Recommendation System, AI, recommendation, recommender-systems
5.0
(4)
This course covers everything from core recommendation system algorithms to practical implementation. - Content-based filtering - Collaborative filtering and deep learning-based recommendation model implementation - Two-step recommender systems implementation - Hands-on practice using PyTorch/RecBole - Industry know-how and recommendation result visualization
초급
Python, Recommendation System, AI

Building an AI Recommendation System by a Working Engineer | Recommendation Algorithm | Recommender | Recsys
Jay
₩43
초급 / Python, Recommendation System, AI, recommendation, recommender-systems
5.0
(4)
Artificial Intelligence with Python
hjk1000
₩13
초급 / Python, Numpy, Tensorflow, Matplotlib
Deep learning is a technology that learns data through neural networks composed of combinations of complex functions. In this lecture, we will mathematically understand the core concepts of deep learning and analyze them from the perspective of matrix operations. In particular, utilizing Python's NumPy library, we will visually examine how parameters are updated by directly implementing the forward and backward propagation processes of deep learning. Even the seemingly complex neural network structure becomes clear when analyzed with matrix operations. This lecture focuses more on understanding concepts than coding and is suitable for students who wish to intuitively grasp the principles of deep learning mathematically.
초급
Python, Numpy, Tensorflow
Artificial Intelligence with Python
hjk1000
₩13
초급 / Python, Numpy, Tensorflow, Matplotlib
[AICE] Associate Certification Practice Exam Problem Solving for Guaranteed Success
AICE
₩268
초급 / AICE-Certificate, Python, AI
4.7
(19)
1. Mock exam problem-solving for passing AICE Associate, Korea's only state-certified AI certification. 2. A course featuring 12 mock exam sessions with the same question types as the actual AICE Associate exam.
초급
AICE-Certificate, Python, AI
[AICE] Associate Certification Practice Exam Problem Solving for Guaranteed Success
AICE
₩268
초급 / AICE-Certificate, Python, AI
4.7
(19)
(Using Raspberry Pi) Building an AI Artificial Intelligence Autonomous Driving Car
usefulit
₩102
입문 / Python, Raspberry Pi
5.0
(2)
This is a hands-on course where you'll build an AI-based autonomous driving car using Raspberry Pi and various sensors.
입문
Python, Raspberry Pi
(Using Raspberry Pi) Building an AI Artificial Intelligence Autonomous Driving Car
usefulit
₩102
입문 / Python, Raspberry Pi
5.0
(2)
[AICE] Data Analysis and AI Modeling with Python
AICE
₩250
초급 / Python, AI, Deep Learning(DL), Machine Learning(ML), Pandas, AICE-Certificate
1. A practice-oriented lecture designed to help you pass the AICE Associate, Korea's only nationally recognized AI certification. 2. Learn to the level of performing data analysis and AI modeling based on Python.
초급
Python, AI, Deep Learning(DL)
[AICE] Data Analysis and AI Modeling with Python
AICE
₩250
초급 / Python, AI, Deep Learning(DL), Machine Learning(ML), Pandas, AICE-Certificate
[Complete NLP Mastery I] The Birth of Attention: Understanding NLP from RNN·Seq2Seq Limitations to Implementing Attention
Sotaaz
₩39
입문 / Python, Deep Learning(DL), PyTorch, attention-model, transformer
We understand why Attention was needed and how it works by 'implementing it directly with code'. This lecture starts from the structural limitations of RNN and Seq2Seq models, experimentally verifies the information bottleneck problem and long-term dependency issues created by fixed context vectors, and naturally explains how Attention emerged to solve these limitations. Rather than simply introducing concepts, we directly confirm RNN's structural limitations and Seq2Seq's information bottleneck problems through experiments, and implement **Bahdanau Attention (additive attention)** and **Luong Attention (dot-product attention)** one by one to clearly understand their differences. Each attention mechanism forms Query–Key–Value relationships in what way, has what mathematical and intuitive differences in the weight calculation process, and why it inevitably led to later models naturally connects to their characteristics and evolutionary flow. We learn how Attention views sentences and words, and how each word receives importance weighting to integrate information in a form where formula → intuition → code → experiment are connected as one. This lecture is a process of building 'foundational strength' to properly understand Transformers, helping you deeply understand why the concept of Attention was revolutionary, and why all subsequent state-of-the-art NLP models (Transformer, BERT, GPT, etc.) adopt Attention as a core component. This lecture is optimized for learners who want to embody the flow from RNN → Seq2Seq → Attention not through concepts but through code and experiments.
입문
Python, Deep Learning(DL), PyTorch
[Complete NLP Mastery I] The Birth of Attention: Understanding NLP from RNN·Seq2Seq Limitations to Implementing Attention
Sotaaz
₩39
입문 / Python, Deep Learning(DL), PyTorch, attention-model, transformer
[Free] Python Basics You Must Learn Before Learning Python
CODEXPERT
무료
입문 / Python
4.8
(22)
If you're planning to learn Python, pay attention to this course!!! It's completely free~ I highly recommend it for preliminary learning before taking formal courses or starting personal study.
입문
Python
[Free] Python Basics You Must Learn Before Learning Python
CODEXPERT
무료
입문 / Python
4.8
(22)
DDPM to DDIM, Complete Mastery of Diffusion Through Implementation I
Sotaaz
₩35
초급 / Python, Deep Learning(DL), AI
4.8
(6)
This course is a hands-on masterclass that completely conquers the evolution of Diffusion Models through papers and code implementation. You'll learn the core models of generative AI, including DDPM (Denoising Diffusion Probabilistic Model) and DDIM, by studying the paper principles and implementing them directly. We analyze step-by-step the background of each model's emergence, mathematical formulations, network architectures (U-Net, VAE, Transformer), training processes (Noise Schedule, Denoising Step), and the ideas that led to performance improvements. Students will directly code all models using PyTorch, gaining not just paper comprehension but 'practical skills to reproduce and apply' them in real-world scenarios. Additionally, by comparing the differences between models and their developmental flow, you'll clearly understand how they expand and evolve. This course integrates theory, code, and practice into one comprehensive journey, providing researchers, developers, and creators alike with a systematic way to master the evolution of generative models. Beyond simply 'reading' papers, start your experience of 'understanding and recreating' through direct implementation now.
초급
Python, Deep Learning(DL), AI
DDPM to DDIM, Complete Mastery of Diffusion Through Implementation I
Sotaaz
₩35
초급 / Python, Deep Learning(DL), AI
4.8
(6)