AI | GenAI | AWS | Amazon Q Developer | Your CoPilot
The program provides developers with advanced skills in AI-assisted software development and Amazon Q, which are designed to improve productivity and ethical practices.
Description for AI | GenAI | AWS | Amazon Q Developer | Your CoPilot
Mastery of Amazon Q Integration: Acquire the skills necessary to effectively configure and integrate Amazon Q, enabling seamless development within the AWS ecosystem.
AI-Assisted Code Optimization: Improve the efficacy of coding by utilizing AI-driven tools, such as debugging, performance optimization, and troubleshooting.
AI in Security and Documentation: Implement AI-driven security best practices to safeguard applications and expedite documentation processes.
Ethical AI Practices: When deploying AI solutions to real-world scenarios, it is important to consider ethical considerations in software development.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 2
Offered by: On Udemy provided by Karan Gupta
Duration: 4h 29m
Schedule: Full lifetime access
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To enhance machine learning models, this course offers fundamental understanding of artificial intelligence, machine learning methods like classification, regression, and clustering.
This course covers Python programming, TensorFlow for linear regression, and app development for stock market prediction.
Examine how to improve learning and preserve integrity by incorporating morally sound and useful AI tools into evaluation procedures.
Discover AI terminology, ethical norms, and protocols for responsibly utilizing and citing Generative AI.
Acquire an extensive understanding of reinforcement learning, deep neural networks, clustering, and dimensionality reduction to effectively address real-world machine learning challenges.