Learn Deep Learning - ML & AI

Learn Deep Learning - ML & AI



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About Learn Deep Learning - ML & AI

Master Deep Learning, Neural Networks, and Artificial Intelligence with the most comprehensive learning app. From Python fundamentals to training Large Language Models (LLMs), building Generative AI apps, and deploying models to the cloud — this is your complete path to becoming an AI Engineer.

COMPLETE CURRICULUM - Zero to AI Expert.Start from scratch and become job-ready with our structured learning path:

Deep Learning Fundamentals:
• Introduction to Deep Learning & Neural Networks
• How Deep Learning differs from traditional Machine Learning
• Artificial Neural Networks (ANN) architecture & training
• Loss Functions, Optimizers (Adam, SGD, RMSprop)
• Regularization: Dropout, Batch Norm, L1/L2

Core Architectures:
• Convolutional Neural Networks (CNNs) for Computer Vision
• Recurrent Neural Networks (RNNs), LSTM & GRU for sequences
• Transformers: Attention mechanism
• Generative Models: GANs, VAEs, Diffusion Models
• Autoencoders & Self-Supervised Learning

Libraries & Frameworks:
• PyTorch: Tensors, Autograd, nn.Module, training loops
• TensorFlow & Keras: Sequential, Functional API, model deployment
• JAX: High-performance ML research framework
• NumPy, Pandas, Scikit-learn, SciPy foundations

Computer Vision:
• Image Classification with CNNs
• Object Detection: YOLO, R-CNN, SSD
• Image Segmentation: U-Net, Mask R-CNN
• Face Recognition & Facial Landmarks

MLOps & Engineering:
• ML lifecycle management & experiment tracking
• MLflow, Weights & Biases (W&B) for logging
• Kubeflow pipelines & Apache Airflow orchestration
• CI/CD for Machine Learning
• Model versioning, registries & A/B testing
• Monitoring, drift detection & model retraining

Production & Deployment:
• FastAPI & Flask for serving ML models
• gRPC for high-performance model inference
• Docker containerization for ML apps
• Load balancing, caching & request queuing
• PostgreSQL, MongoDB & Redis integration
• Vector databases: Pinecone, Weaviate, Milvus for RAG

Cloud Infrastructure:
• AWS SageMaker, EC2, Lambda for ML workloads
• Azure Machine Learning platform
• Kubernetes (K8s) & Helm for ML orchestration

Hardware & Compute
• NVIDIA GPUs, CUDA cores & Tensor cores
• Neural Processing Units (NPU) & Apple Neural Engine

Edge & Mobile AI:
• TensorFlow Lite for mobile deployment
• Core ML for iOS apps
• ONNX for cross-platform model export

AI Security & Ethics:
• AI safety & alignment fundamentals
• Adversarial attacks & robustness
• Data poisoning & model stealing defenses
• Fairness, bias detection & mitigation

Specialized Domains:
• Medical AI: Diagnosis, radiology, drug discovery
• Robotics: Perception, control, reinforcement learning
• Financial AI: Trading, fraud detection, risk modeling
• Bioinformatics: Protein folding, genomics
• Cybersecurity: Threat detection, anomaly detection

Research & Expert Topics:
• Foundation models, scaling laws & emergent abilities
• Mixture of Experts (MoE) & Sparse Transformers
• World models, neuro-symbolic AI
• Meta-learning, continual learning, curriculum learning

AI TUTOR - Your 24/7 Learning Assistant:
• Ask any Deep Learning or AI question
• Get explanations of neural network architectures
• Debug model training issues with AI help

GAMIFIED LEARNING - Stay Motivated:
• Daily learning streaks with fire animations
• XP points & level progression
• Study reminders with push notifications

POWERFUL ORGANIZATION TOOLS:
• Bookmarks: Save lessons for quick access
• Notes: Write personal notes on any lesson
• Search: Find anything instantly across all lessons
• Dark mode for comfortable night learning

LEARN OFFLINE - Anytime, Anywhere:
• All content are offline access
• Study on your commute without internet

PERFECT FOR:
• Aspiring AI & Machine Learning Engineers
• Data Scientists expanding into Deep Learning
• Software developers transitioning to AI
• Students studying computer science or AI
• Career changers entering the AI field

Start your Deep Learning Journey today !
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최신 버전 2.0.0의 새로운 기능

Last updated on May 14, 2026
오래된 버전
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2.0.0
May 14, 2026
Bug fixes...

Learn Deep Learning - ML & AI 가격

오늘:
₩3,300
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₩3,300

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