This course includes:
- 6 practice tests
- Access on mobile
- Full lifetime access
Description
1. Introduction to Deep Learning
- Overview of Deep Learning: Understanding what deep learning is and how it differs from traditional machine learning.
- Neural Networks: Basics of how neural networks work, including neurons, layers, and activation functions.
- Deep Learning Frameworks: Introduction to popular frameworks like TensorFlow and PyTorch that are used to build and train deep learning models.
2. Training Deep Neural Networks
- Data Preparation: Techniques for preparing data for training, including normalization and splitting datasets.
- Optimization Techniques: Methods to improve model performance, such as gradient descent and backpropagation.
- Loss Functions: How to choose and implement loss functions to guide the training process.
- Overfitting and Regularization: Strategies to prevent models from overfitting, such as dropout and data augmentation.
3. Advanced Neural Network Architectures
- Convolutional Neural Networks (CNNs): Used for image processing tasks, understanding the architecture and applications of CNNs.
- Recurrent Neural Networks (RNNs): Used for sequence data like text and time series, exploring RNNs and their variants like LSTM and GRU.
- Generative Adversarial Networks (GANs): Understanding how GANs work and their use in generating synthetic data.
- Autoencoders: Techniques for unsupervised learning, including dimensionality reduction and anomaly detection.
4. Data Handling and Preparation
- Data Collection: Methods for gathering data, including handling missing data and data augmentation.
- Feature Engineering: Techniques to create meaningful features from raw data that improve model performance.
- Data Augmentation: Expanding your dataset with transformations like rotation and flipping for image data.
- Data Pipelines: Setting up automated processes to clean, transform, and load data for training.
5. Model Tuning and Evaluation
- Hyperparameter Tuning: Techniques to optimize model parameters like learning rate and batch size for better performance.
- Model Evaluation Metrics: Using metrics like accuracy, precision, recall, and F1 Score to evaluate model performance.
- Cross-Validation: Ensuring that models generalize well to unseen data by using techniques like k-fold cross-validation.
- Model Validation and Testing: Strategies for validating and testing models to ensure they perform well on new data.
6. Deployment and Ethical Considerations
- Model Deployment: How to deploy models into production, including the use of APIs and cloud services.
- Ethical AI: Addressing issues like bias, fairness, and data privacy in AI systems.
- Monitoring Deployed Models: Techniques to monitor models after deployment to ensure they continue to perform well.
- Compliance and Regulations: Understanding the legal and ethical implications of using AI, including GDPR and other regulations.
Who this course is for:
- Individuals looking to deepen their knowledge and skills in deep learning.
- Those who already have a background in machine learning and want to explore advanced topics in deep learning.
- Professionals interested in integrating deep learning models into their projects or applications.
- Individuals involved in AI research who want to apply deep learning techniques to their work.
- Learners pursuing degrees or certifications in AI, data science, or related fields.
- Individuals with a strong interest in artificial intelligence and deep learning, looking to gain practical, hands-on experience.
How to Get this course FREE?
Get a 100% Discount On Udemy courses by clicking on the Apply Here Button. This Course coupon code is automatically added to the Apply Here Button.
Apply this Coupon: DLFREEOCT6 is applied (For 100% Discount)
For Latest Udemy Courses Coupon, Join Our Official Free Telegram Group :https://t.me/freecourseforall
Note: The udemy Courses Will be free for a Maximum of 1000 Learners can use the promo code AND Get this course for 100% Free. After that, you will get this course at a discounted price.
Important Notice and Disclaimer:- CareerBoostZone platform is a free Job Sharing platform for all the Job seekers. We don’t charge any cost and service fee for any job which is posted on our website, neither we have authorized anyone to do the same. Most of the jobs posted over Seekajob are taken from the career pages of the organizations. Jobseekers/Applicants are advised to check all the details when they apply for the job to avoid any inconvenience.