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Deep Learning With Tensorflow/pytorch Training Course: Neural Networks Mastery in Ghana

Introduction

Unlock the power of artificial intelligence with our Deep Learning with TensorFlow/PyTorch Training Course. This program is designed to provide you with hands-on experience with neural networks, convolutional neural networks (CNNs), and recurrent neural networks (RNNs), enabling you to build cutting-edge deep learning models. In today's AI-driven world, mastering deep learning is crucial for developing innovative solutions in various fields, from computer vision to natural language processing. Our deep learning training course offers practical, hands-on experience and expert guidance, empowering you to implement state-of-the-art AI applications.

This TensorFlow/PyTorch deep learning training delves into the core concepts of neural network architectures, covering topics such as CNNs for image recognition, RNNs for sequence data, and advanced model optimization techniques. You'll gain expertise in using industry-standard deep learning frameworks to experience neural networks, convolutional neural networks (CNNs), and recurrent neural networks (RNNs), meeting the demands of modern AI projects. Whether you're a data scientist, AI developer, or researcher, this Deep Learning with TensorFlow/PyTorch course will empower you to build powerful deep learning models.

Target Audience:

  • Data Scientists
  • AI Developers
  • Machine Learning Engineers
  • Researchers
  • Software Developers
  • Computer Vision Engineers
  • Anyone needing deep learning skills

Course Objectives:

  • Understand the fundamentals of deep learning with TensorFlow/PyTorch.
  • Master the architecture and implementation of neural networks.
  • Utilize convolutional neural networks (CNNs) for image processing.
  • Implement recurrent neural networks (RNNs) for sequence data.
  • Design and build deep learning models for various applications.
  • Optimize deep learning models for performance and accuracy.
  • Troubleshoot and address complex deep learning challenges.
  • Implement model evaluation and validation techniques.
  • Integrate deep learning models into real-world applications.
  • Understand how to tune hyperparameters for optimal performance.
  • Explore advanced deep learning techniques (transfer learning, generative models).
  • Apply real world use cases for CNNs and RNNs.
  • Leverage TensorFlow/PyTorch for efficient deep learning implementation.

Duration

10 Days

Course content

Module 1: Introduction to Deep Learning with TensorFlow/PyTorch

  • Fundamentals of deep learning with TensorFlow/PyTorch.
  • Overview of neural networks, CNNs, and RNNs.
  • Setting up a deep learning development environment.
  • Introduction to TensorFlow and PyTorch frameworks.
  • Best practices for deep learning.

Module 2: Neural Networks

  • Implementing basic neural network architectures.
  • Utilizing activation functions and loss functions.
  • Designing and building multi-layer perceptrons (MLPs).
  • Optimizing neural network training.
  • Best practices for neural networks.

Module 3: Convolutional Neural Networks (CNNs)

  • Implementing CNNs for image classification.
  • Utilizing convolutional and pooling layers.
  • Designing and building image recognition models.
  • Optimizing CNNs for image processing tasks.
  • Best practices for CNNs.

Module 4: Recurrent Neural Networks (RNNs)

  • Implementing RNNs for sequence data.
  • Utilizing LSTM and GRU architectures.
  • Designing and building sequence models.
  • Optimizing RNNs for natural language processing.
  • Best practices for RNNs.

Module 5: Deep Learning Model Design

  • Designing deep learning models for specific applications.
  • Implementing model architectures for various tasks.
  • Utilizing transfer learning and fine-tuning techniques.
  • Optimizing model design for performance.
  • Best practices for model design.

Module 6: Model Optimization and Performance

  • Optimizing deep learning models for accuracy.
  • Utilizing hyperparameter tuning techniques.
  • Implementing model compression and acceleration.
  • Designing scalable deep learning solutions.
  • Best practices for model optimization.

Module 7: Troubleshooting Deep Learning Challenges

  • Debugging complex deep learning issues.
  • Analyzing model performance and errors.
  • Utilizing troubleshooting techniques for model improvement.
  • Resolving common deep learning challenges.
  • Best practices for troubleshooting.

Module 8: Model Evaluation and Validation

  • Implementing cross-validation techniques.
  • Utilizing performance metrics for model evaluation.
  • Designing and building model validation pipelines.
  • Optimizing model evaluation strategies.
  • Best practices for model evaluation.

Module 9: Integration with Real-World Applications

  • Integrating deep learning models into production systems.
  • Utilizing APIs and deployment tools.
  • Implementing real-time deep learning applications.
  • Optimizing models for deployment environments.
  • Best practices for integration.

Module 10: Hyperparameter Tuning

  • Utilizing grid search and random search for tuning.
  • Implementing Bayesian optimization for hyperparameter selection.
  • Designing and building hyperparameter tuning pipelines.
  • Optimizing hyperparameters for model performance.
  • Best practices for hyperparameter tuning.

Module 11: Advanced Deep Learning Techniques

  • Implementing transfer learning for model reuse.
  • Utilizing generative models (GANs, VAEs).
  • Designing and building advanced deep learning architectures.
  • Optimizing advanced techniques for specific tasks.
  • Best practices for advanced techniques.

Module 12: Real-World Use Cases

  • Implementing CNNs for medical image analysis.
  • Utilizing RNNs for sentiment analysis.
  • Implementing deep learning for autonomous driving.
  • Utilizing deep learning for fraud detection.
  • Best practices for real-world applications.

Module 13: TensorFlow/PyTorch Implementation

  • Utilizing TensorFlow for deep learning implementation.
  • Implementing PyTorch for model development.
  • Designing and building deep learning pipelines with frameworks.
  • Optimizing framework usage for efficient training.
  • Best practices for framework implementation.

Module 14: Model Interpretability

  • Implementing model interpretability techniques.
  • Utilizing visualization tools for model understanding.
  • Designing and building interpretable deep learning models.
  • Optimizing model transparency.
  • Best practices for model interpretability.

Module 15: Future Trends in Deep Learning

  • Emerging trends in deep learning.
  • Utilizing automated machine learning (AutoML) for deep learning.
  • Implementing federated learning for distributed models.
  • Best practices for future deep learning.

Training Approach

This course will be delivered by our skilled trainers who have vast knowledge and experience as expert professionals in the fields. The course is taught in English and through a mix of theory, practical activities, group discussion and case studies. Course manuals and additional training materials will be provided to the participants upon completion of the training.

Tailor-Made Course

This course can also be tailor-made to meet organization requirement. For further inquiries, please contact us on: Email: info@skillsforafrica.org, training@skillsforafrica.org  Tel: +254 702 249 449

Training Venue

The training will be held at our Skills for Africa Training Institute Training Centre. We also offer training for a group at requested location all over the world. The course fee covers the course tuition, training materials, two break refreshments, and buffet lunch.

Visa application, travel expenses, airport transfers, dinners, accommodation, insurance, and other personal expenses are catered by the participant

Certification

Participants will be issued with Skills for Africa Training Institute certificate upon completion of this course.

Airport Pickup and Accommodation

Airport pickup and accommodation is arranged upon request. For booking contact our Training Coordinator through Email: info@skillsforafrica.org, training@skillsforafrica.org  Tel: +254 702 249 449

Terms of Payment: Unless otherwise agreed between the two parties’ payment of the course fee should be done 7 working days before commencement of the training.

Course Schedule
Dates Fees Location Apply
07/07/2025 - 18/07/2025 $3000 Nairobi
14/07/2025 - 25/07/2025 $5500 Johannesburg
14/07/2025 - 25/07/2025 $3000 Nairobi
04/08/2025 - 15/08/2025 $3000 Nairobi
11/08/2025 - 22/08/2025 $3500 Mombasa
18/08/2025 - 29/08/2025 $3000 Nairobi
01/09/2025 - 12/09/2025 $3000 Nairobi
08/09/2025 - 19/09/2025 $4500 Dar es Salaam
15/09/2025 - 26/09/2025 $3000 Nairobi
06/10/2025 - 17/10/2025 $3000 Nairobi
13/10/2025 - 24/10/2025 $4500 Kigali
20/10/2025 - 31/10/2025 $3000 Nairobi
03/11/2025 - 14/11/2025 $3000 Nairobi
10/11/2025 - 21/11/2025 $3500 Mombasa
17/11/2025 - 28/11/2025 $3000 Nairobi
01/12/2025 - 12/12/2025 $3000 Nairobi
08/12/2025 - 19/12/2025 $3000 Nairobi
05/01/2026 - 16/01/2026 $3000 Nairobi
12/01/2026 - 23/01/2026 $3000 Nairobi
19/01/2026 - 30/01/2026 $3000 Nairobi
02/02/2026 - 13/02/2026 $3000 Nairobi
09/02/2026 - 20/02/2026 $3000 Nairobi
16/02/2026 - 27/02/2026 $3000 Nairobi
02/03/2026 - 13/03/2026 $3000 Nairobi
09/03/2026 - 20/03/2026 $4500 Kigali
16/03/2026 - 27/03/2026 $3000 Nairobi
06/04/2026 - 17/04/2026 $3000 Nairobi
13/04/2026 - 24/04/2026 $3500 Mombasa
13/04/2026 - 24/04/2026 $3000 Nairobi
04/05/2026 - 15/05/2026 $3000 Nairobi
11/05/2026 - 22/05/2026 $5500 Dubai
18/05/2026 - 29/05/2026 $3000 Nairobi