Machine Learning Implementation and Operations in AWS
In order to facilitate effective learning, this course provides learners with the necessary skills to develop scalable and resilient ML solutions on AWS, combining theory and practical experience.
Description for Machine Learning Implementation and Operations in AWS
-
Comprehensive ML Operations in AWS: Addresses critical design elements such as performance, scalability, and fault tolerance in machine learning solutions on AWS.
-
Structured Learning Modules: Comprised of two primary modules, each containing lessons and video lectures for a coherent and systematic learning experience.
-
Video Lectures with Theory and Practical Use: Delivers 1 to 1.5 hours of video content per lesson, integrating academic understanding with practical application.
-
Quizzes to Enhance Learning: Comprises both graded and ungraded quizzes for each module, enabling learners to assess and fortify their comprehension.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Coursera provided by Whizlabs
Duration: 6 hours (approximately)
Schedule: Flexible
Pricing for Machine Learning Implementation and Operations in AWS
Use Cases for Machine Learning Implementation and Operations in AWS
FAQs for Machine Learning Implementation and Operations in AWS
Reviews for Machine Learning Implementation and Operations in AWS
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Machine Learning Implementation and Operations in AWS
Gain an extensive understanding of TinyML applications, fundamental principles, and the ethical development of artificial intelligence.
Learn to apply advanced machine learning and deep learning models to real-world challenges by immersing yourself in the cutting-edge world of AI-powered finance and insurance.
Acquire an extensive understanding of reinforcement learning, deep neural networks, clustering, and dimensionality reduction to effectively address real-world machine learning challenges.
Explore the world of AI-powered language processing by acquiring the skills necessary to construct chatbots, analyze sentiment, and incorporate AI insights into practical applications.
Develop your skills in image processing, augmented reality, and object recognition to prepare yourself to create cutting-edge AI-powered visual apps.
A structured guide to the study of business opportunities in the chatbot space, as well as the comprehension, design, and deployment of chatbots using Watson Assistant.
A fundamental introduction to the development of AI-powered applications using IBM Watson APIs and Python programming.
In-depth study of the applications of machine learning and computer vision, as well as practical experience in data analysis and Python programming.
A program that emphasizes the practical implementation of data science and machine learning to overcome obstacles through the use of Python.
From fundamental concepts to advanced methods such as deep learning and ensemble techniques, this program provides a comprehensive examination of machine learning techniques.
Featured Tools
A practical guide to the use of generative AI for the purpose of composing, refining, and planning, utilizing structured and context-driven inputs.
Explore the topic of AI-powered personalization by acquiring the skills necessary to utilize LangChain and ChatGPT.
To address OpenAI Gym challenges and real-world problems, this course offers pragmatic artificial intelligence methods like Genetic Algorithms, Q-Learning, and neural network implementation.
A structured guide to the study of business opportunities in the chatbot space, as well as the comprehension, design, and deployment of chatbots using Watson Assistant.
Discover AI terminology, ethical norms, and protocols for responsibly utilizing and citing Generative AI.