Microsoft Azure Developer Associate (AZ-204) Exam Prep
This Professional Certificate program trains developers to create comprehensive solutions on Microsoft Azure and prepares them for Exam AZ-204.
Description for Microsoft Azure Developer Associate (AZ-204) Exam Prep
Comprehensive Azure Development Training The program encompasses all phases of Azure development, including requirements elicitation, design, deployment, maintenance, and performance optimization and monitoring.
Implementation of Azure Solutions Students will acquire competencies for setting up Azure computing solutions, construct Azure Functions, develop and administer web applications, and leverage Azure storage.
Security and Identity Management Students will acquire the skills to implement authentication and authorization by utilizing KeyVault and Managed Identities to secure their solutions.
Integration with Azure and Third-Party Services The course provides instruction on integrating with Azure and third-party services, as well as employing event- and message-driven models in solution creation.
Level: Intermediate
Certification Degree: Yes, Professional Certification
Languages the Course is Available: 21
Offered by: On Coursera provided by Microsoft
Duration: 2 months at 10 hours a week
Schedule: Flexible
Pricing for Microsoft Azure Developer Associate (AZ-204) Exam Prep
Use Cases for Microsoft Azure Developer Associate (AZ-204) Exam Prep
FAQs for Microsoft Azure Developer Associate (AZ-204) Exam Prep
Reviews for Microsoft Azure Developer Associate (AZ-204) Exam Prep
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Microsoft Azure Developer Associate (AZ-204) Exam Prep
NovaceneAI streamlines the organization of unstructured text data with AI algorithms, offering dedicated cloud hosting, adaptability across sectors, and robust data privacy measures.
Posit offers a comprehensive platform with enterprise solutions, cloud applications, community resources, and deployment solutions to enhance productivity in data science teams.
Utilize generative AI to advance in the field of data science. Develop hands-on generative AI skills that are in high demand to accelerate your data science career in under one month.
Learn to use generative AI tools to improve data science workflows, enhance datasets, and refine machine learning models through practical projects.
Gain a comprehensive understanding of AI's potential, ethical considerations, and applications in efficient programming and common coding tasks using various LLMs.
Master Python programming for software development and data science, including core logic, Jupyter Notebooks, libraries like NumPy and Pandas, and web data gathering with Beautiful Soup and APIs.
Understand AI, its applications, concepts, ethical concerns, and receive expert career guidance.
Gain a comprehensive understanding of AI terminology, applications, development, and strategy, while navigating ethical and societal considerations in a non-technical context.
Prepare for a vocation as a data scientist. Acquire hands-on experience and in-demand skills to become job-ready in as little as five months. No prior experience is necessary.
Learn to create and diversify portfolio strategies, apply machine learning to financial data, and utilize quantitative modeling and data analytics for investment decisions.
Featured Tools
This course provides practical experience with machine learning through case studies, concentrating on applying approaches across domains and laying the groundwork for deeper understanding of models and algorithms.
A brief synopsis of this course includes hands-on lab sessions on Python data analysis and visualization, as well as alternative data principles and applications in finance.
Acquire proficiency in machine learning and deep learning methodologies, such as TensorFlow, CNNs, RNNs, LSTMs, and NLP, to facilitate efficient data analysis.
With an emphasis on CI/CD, cloud architecture, and training workflows, this course covers MLOps technologies and best practices for installing, assessing, and running ML systems on Google Cloud.
This course instructs on integrating machine learning into data pipelines utilizing BigQuery ML, AutoML, and Vertex AI, emphasizing model development and deployment on Google Cloud.