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Deep Learning Production Guide
From PyTorch to production: MLOps, containerization and deep learning model deployment.
Presentation
Master PyTorch, TensorFlow and neural networks to build high-performance AI models for production
Objectives
- Build and train neural networks with PyTorch and TensorFlow
- Implement CNN, RNN, LSTM and Transformer architectures
- Optimize hyperparameters and prevent overfitting
- Deploy models to production with MLOps
- Apply transfer learning and fine-tuning
Target Audience
- →Data Scientists wanting to specialize in deep learning
- →ML Engineers looking to deepen their skills
- →Python developers interested in AI
- →Researchers and PhD students in computer science
- →Data Architects and AI Engineers
Prerequisites
Strong Python fundamentals (object-oriented programming). Math foundations (linear algebra, probability). Experience with NumPy and Pandas recommended.
Detailed Program
- •Perceptrons, activation functions and backpropagation
- •Introduction to PyTorch: tensors, autograd, modules
- •TensorFlow/Keras: sequential and functional models
- •GPU computing with CUDA
Frequently Asked Questions
Prerequisites
Strong Python fundamentals (object-oriented programming). Math foundations (linear algebra, probability). Experience with NumPy and Pandas recommended.
Target Audience
- →Data Scientists wanting to specialize in deep learning
- →ML Engineers looking to deepen their skills
- →Python developers interested in AI
- →Researchers and PhD students in computer science
- →Data Architects and AI Engineers
Detailed Curriculum
Module 1: Deep Learning Fundamentals
- →Perceptrons, activation functions and backpropagation
- →Introduction to PyTorch: tensors, autograd, modules
- →TensorFlow/Keras: sequential and functional models
- →GPU computing with CUDA
Module 2: Computer Vision (CNN)
- →Convolutions, pooling and classic architectures (LeNet, VGG, ResNet)
- →Transfer learning with pretrained models
- →Object detection: YOLO, Faster R-CNN
- →Image segmentation and industrial applications
Module 3: NLP and Sequences (RNN, Transformers)
- →RNN, LSTM and GRU for time series
- →Attention mechanism and Transformer architecture
- →BERT, GPT and pretrained language models
- →Fine-tuning for text classification and NER
Module 4: MLOps and Production
- →Experimentation with MLflow and Weights & Biases
- →Model containerization (Docker, ONNX)
- →Cloud deployment (AWS SageMaker, GCP Vertex AI)
- →Model monitoring and A/B testing
Module 5: Practical Project
- →Business problem definition and data collection
- →Model training and optimization
- →Deployment on REST API
- →Documentation and best practices
Expected Outcomes
Build and train neural networks with PyTorch and TensorFlow
Implement CNN, RNN, LSTM and Transformer architectures
Optimize hyperparameters and prevent overfitting
Deploy models to production with MLOps
Apply transfer learning and fine-tuning
Companies in Riyadh using this training
- Saudi Aramco - Awareness training for 500+ employees
- SABIC - Ongoing certification program
- STC (Saudi Telecom) - Security audit and custom training
- KACST (King Abdulaziz City for Science and Technology) startups - Monthly group training sessions
Regulatory Compliance
NCA (National Cybersecurity Authority), ECC (Essential Cybersecurity Controls), PDPL (Personal Data Protection Law), SAMA (Saudi Arabian Monetary Authority) cybersecurity framework, CCC (Critical Systems Cybersecurity Controls), Vision 2030 compliance
FAQs
Ready to get started?
Next session in Riyadh
March 8, 2026