Description for Authoritative GCP
Designing Secure and Compliant Solutions on Google Cloud Platform (GCP): Acquire the knowledge necessary to architect solutions on GCP that fulfill security and compliance mandates, thereby ensuring that your infrastructure adheres to industry standards.
Configuring Google Cloud Platform (GCP) Network, Storage, and Compute Resources: Acquire practical experience in the configuration of GCP's network, storage, and compute resources to develop efficient and scalable systems.
Implementation of CI/CD Pipelines and Deployment Management: Acquire a comprehensive understanding of the implementation of Continuous Integration and Continuous Deployment (CI/CD) pipelines, thereby optimizing deployment processes and improving overall workflow efficiency.
Surveillance, Documentation, and Performance Analysis GCP Solutions: Cultivate expertise in the areas of monitoring, archiving, and profiling of Google Cloud Platform (GCP) solutions to guarantee reliability and achieve optimal performance.
Level: Beginner
Certification Degree: yes
Languages the Course is Available: 1
Offered by: On edX provided by AI
Duration: 3�6 hours per week 2 weeks (approximately)
Schedule: Flexible
Pricing for Authoritative GCP
Use Cases for Authoritative GCP
FAQs for Authoritative GCP
Reviews for Authoritative GCP
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Authoritative GCP
This learning path provides a thorough overview of generative AI. This specialization delves into the ethical considerations that are essential for the responsible development and deployment of AI, as well as the foundations of large language models (LLMs) and their diverse applications.
Learn how to use Gemini for Google Workspace to boost productivity and efficiency in Gmail through its generative AI features.
Learn to leverage Google Cloud's data-to-AI tools, generative AI capabilities, and Vertex AI for comprehensive ML model development.
Learn to use Vertex AI on Google Cloud for no-code AutoML model development, training, and deployment, while integrating ML with cloud tools and adhering to Responsible AI principles.
Outlines methods to determine main products, develop streaming pipelines, explore alternatives, and define essential steps for machine learning workflows on Google Cloud.
Data Engineering on Google Cloud. Embark on a vocation in data engineering. Provide business value through the application of machine learning and big data.
Explore the functionality, practical applications, limitations, and advancements of diffusion models, including their text-to-image applications.
This course explores enterprise machine learning applications, assesses the viability of ML use cases, and addresses the prerequisites, data characteristics, and critical factors for developing and managing ML models.
The course introduces Google Cloud fundamentals for transforming business models with data, ML, and AI, targeting those interested in cloud AI/ML impacts on business without requiring prior experience, and excludes hands-on technical training.
Acquire a basic understanding of digital transformation and cloud computing. Boost your cloud confidence to enable you to engage in discussions with colleagues in technical cloud positions and make informed business decisions regarding cloud technology.
Featured Tools
In just two weeks, this course will teach you fundamental generative AI and NLP abilities such as word embeddings, language modeling, and text analysis approaches.
Gain the skills needed for a machine learning engineering role and prepare for the Google Cloud Professional Machine Learning Engineer certification exam by learning to design, build, and productize ML models using Google Cloud technologies.
Acquire practical business analytics expertise. Utilize data to resolve intricate business challenges.
Enhance your software development career with Gen AI. Develop hands-on, in-demand Generative AI skills to elevate your software engineering game in one month or less.
Master the operations of large language models. Acquire proficiency in the deployment, management, and optimization of extensive language models on a variety of platforms, such as Azure, AWS, Databricks, local infrastructure, and open source solutions, through practical projects.