Google Advanced Data Analytics Capstone
The final course in the Google Advanced Data Analytics Certificate provides an optional capstone project that enables learners to apply their newly acquired skills to real-world business problems. This project is supervised by Google employees and is designed to prepare students for advanced data analytics and data science positions.
Description for Google Advanced Data Analytics Capstone
Level: Advanced
Certification Degree: Yes
Languages the Course is Available: 2
Offered by: On Coursera provided by Google
Duration: 9 hours (approximately)
Schedule: Flexible
Pricing for Google Advanced Data Analytics Capstone
Use Cases for Google Advanced Data Analytics Capstone
FAQs for Google Advanced Data Analytics Capstone
Reviews for Google Advanced Data Analytics Capstone
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Google Advanced Data Analytics Capstone
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.
Develop your skills in image processing, augmented reality, and object recognition to prepare yourself to create cutting-edge AI-powered visual apps.
Learn the fundamental techniques of supervised and unsupervised learning and apply them to real-world problems to unlock the potential of machine learning.
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.
A thorough grasp of artificial intelligence (AI) and machine learning, including its various forms, methods, and applications, is given in this course.
The material equips data engineers to incorporate machine learning models into pipelines while adhering to best practices in collaboration, version control, and artifact management.
Featured Tools
Examine how to improve learning and preserve integrity by incorporating morally sound and useful AI tools into evaluation procedures.
An insightful introduction of the foundational models, generative AI concepts, and their applications on a variety of platforms.
Acquire an extensive understanding of reinforcement learning, deep neural networks, clustering, and dimensionality reduction to effectively address real-world machine learning challenges.
Acquire practical expertise in the integration of machine learning models into pipelines, optimizing performance, and efficiently managing versioning and artifacts.
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.