- 2 Live Project
- Self-Paced/ Classroom
- Certification Pass Guaranteed
- Planning to take your career to the next level with the right training or certification programs Well, I must say you have landed the right page today. With Google Cloud certifications at Croma Campus, you could strengthen your basic cloud skills, move to the advanced level, earn a training certificate, prepare yourself for leading industries, and earn really HUGE!
- Our Google Cloud certification training program has been designed keeping industry standards in mind and course content is designed by top industry practitioners working in the same domain for years. It will help you to establish strong foundation in Google cloud space and you could also learn how to manage, design, develop, and deploy high-quality cloud solutions in less time. Also, you would get multiple hands-on assignments, project work, assessment work to evaluate your skills.
- The Google Cloud training program in Noida to help you clear the certification exam and dive deep into Google Cloud platform. You will also learn to manage GCP services like compute, database services, security concepts, networking concepts, and more. Our Google Cloud placement course gives you the convenience and quality that you ever seeking. This is the reason why you should take this course and learn something new every day.
- The major objective of Google cloud training program in Noida is to help you learn Google Cloud fundamentals, learn about GCP Services, networking, storage services, AI services, tools, operations, and more.
You will learn to manage Google Cloud platform and command line prompt too. Also, learn to work with Google cloud, Command line tools, G suite, and more.
With the top Google Cloud training institute in Noida, you will learn how to design static or dynamic loud routes on your fingertips and get an idea of GCP firewalls, how to use or implement VPC peering concepts too.
Learn to handle or manage traffic using auto scale concepts and set IAM policy at various levels. Learn to demonstrate compute engine or VMs if required.
With the Google Cloud certification training in Noida, get an idea of Data usage, Kubernetes cluster, App engine. cloud repository, cloud logging, cloud monitoring services, and more.
You will know how to manage or provision Google Cloud solutions, implement Google Cloud architecture, know about various GCP products, GCP services, run data queries, machine learning services, and more.
- You must be wondering why should you join Google Cloud training in Noida and how it can help your career. Well, Google Cloud is one of the top three cloud services and it is expanding through leaps and bounds in the near future. In turn, it creates huge opportunities for learners who want to be a part of google cloud domain and helps you to lead good jobs at best salaries.
- On the completion of Google Cloud training in Noida with us, you will get career coaching, resume building tips, interview tips, and more. You will also get Google Cloud Certificate, once you complete the course. The average salary of a Google Cloud professional is $128K per annum and it will increase as you move upwards in your experience. So, prepare yourself for leading industries today and get much higher salaries than your expectations on the completion of Google Cloud placement course with us.
- Career growth seems to be skyrocketing at the moment and it will definitely grow with increasing cloud needs by leading industries.
Today, almost every big industry is moving to cloud and it increases further job options too. Getting Google Cloud certification training can help you to start a never-ending career in this lucrative space.
The course will help you to prepare basic and advanced concepts that further will help you to execute them perfectly at the workplace. The course perfectly aligns with Google cloud training in Noida and help you to clear the exam in the First Go.
Google Cloud training program will help you to work on LIVE projects and make yourself industry-ready right away. It opens endless career options for learners and get hired by top companies.
- Google is common name in the IT world and google cloud helps to make data more secure when compared to other cloud platforms. These days, leading industries are looking for Google Cloud certified professionals who could manage their work exceptionally.
- Google Cloud is a platform that is used by Companies to manage their data well and save the overall space. If you get a chance to clear Google Cloud certification exam, then it is HUGE opportunity that you should not miss out.
- Google Cloud is used by leading organizations these days instead of their sizes. Once you join and complete Google Training program in Noida, you get a chance to get hired by leading industries right away. The average salary of a Google Cloud certified professional is quite high and cloud market is expected to grow by 19 percent in 2021, as per the Gartner.
- Also, Google Cloud certification program will help you in multiple ways and you could clear certification exam too soon. The Google Cloud placement course will give you hands-on training experience in various Google Cloud domains and learn how to design and deploy amazing Google Cloud solutions for enterprises.
- Here are some major roles and responsibilities that we cover as the part of Google Cloud training course in Noida.
- With the most prominent Google Cloud training institute in Noida, we help you to manage all these roles and responsibilities with utmost grace.
You should know all about Google Cloud fundamentals, GCP Services, networking, storage services, AI services, tools, operations, and more.
You should know how to manage Google Cloud platform and command line prompt too. Also, learn to work with Google cloud, Command line tools, G suite, and more.
You must know how to design static or dynamic loud routes on your fingertips and get an idea of GCP firewalls, how to use or implement VPC peering concepts too.
You must know to handle or manage traffic using auto scale concepts and set IAM policy at various levels. Learn to demonstrate compute engine or VMs if required.
You should have an idea of Data usage, Kubernetes cluster, App engine. cloud repository, cloud logging, cloud monitoring services, and more.
You must know how to manage or provision Google Cloud solutions, implement Google Cloud architecture, know about various GCP products, GCP services, run data queries, machine learning services, and more.
- As we have explained already in previous section too that our Google Cloud training program in Noida has been designed in such a way that it will help you to pass the certification exam and prepares you for leading industries too. During training, you will get a chance to work on real word problems, assignments, projects to shape your career effortlessly. You will also get some assessments or quizzes to evaluate your overall skills.
- Our Google Cloud placement course will help you to get master all the required skills and become a part of popular names like TCS, IBM, Genpact, Hexaware, Cisco, and more. Besides that, we make you capable enough to practice all the skills at workplace efficiently.
- Gain all GCP skills with our Google Cloud certification programs and start a never-ending journey with us that you always desire. At Croma Campus, we are working with a strong determination to help you pass all the hot certifications and build skills, improve retention, and keep moving. We also help you to power up your resume and take your foot in the door to a cloud a career and enjoy ever expanding career growth with the leading industry in India and worldwide.
- Once you will complete the course from Google Cloud training institute in Noida, project work, and assessments, you will become eligible to get training certificate with us that is a valid proof of your GCP skills and it shows that you have been worked on projects as well. So, start your exciting journey with us today before it is too late.
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Google Cloud Certification Training Programs
Google Cloud Certification TrainingPrograms
- Setting up cloud projects and accounts. Activities include
Creating projects
Assigning users to predefined IAM roles within a project
Managing users in Cloud Identity (manually and automated)
Enabling APIs within projects
Provisioning one or more Stackdriver workspaces
- Managing billing configuration. Activities include:
Creating one or more billing accounts
Linking projects to a billing account
Establishing billing budgets and alerts
Setting up billing exports to estimate daily/monthly charges
- Installing and configuring the command line interface (CLI), specifically the Cloud SDK (e.g., setting the default project)
- Planning and estimating GCP product use using the Pricing Calculator
- Planning and configuring compute resources. Considerations include:
Selecting appropriate compute choices for a given workload (e.g., Compute Engine, Google Kubernetes Engine, App Engine, Cloud Run, Cloud Functions)
Using preemptible VMs and custom machine types as appropriate
- Planning and configuring data storage options. Considerations include:
Product choice (e.g., Cloud SQL, BigQuery, Cloud Spanner, Cloud Bigtable)
Choosing storage options (e.g., Standard, Nearline, Coldline, Archive)
- Planning and configuring network resources. Tasks include:
Differentiating load balancing options
Identifying resource locations in a network for availability
Configuring Cloud DNS
- Deploying and implementing Compute Engine resources. Tasks include:
Launching a compute instance using Cloud Console and Cloud SDK (gcloud) (e.g., assign disks, availability policy, SSH keys)
Creating an autoscaled managed instance group using an instance template
Generating/uploading a custom SSH key for instances
Configuring a VM for Stackdriver monitoring and logging
Assessing compute quotas and requesting increases
Installing the Stackdriver Agent for monitoring and logging
- Deploying and implementing Google Kubernetes Engine resources. Tasks include:
Deploying a Google Kubernetes Engine cluster
Deploying a container application to Google Kubernetes Engine using pods
Configuring Google Kubernetes Engine application monitoring and logging
- Deploying and implementing App Engine, Cloud Run, and Cloud Functions resources. Tasks include, where applicable:
Deploying an application, updating scaling configuration, versions, and traffic splitting
Deploying an application that receives Google Cloud events (e.g., Cloud Pub/Sub events, Cloud Storage object change notification events)
- Deploying and implementing data solutions. Tasks include:
Initializing data systems with products (e.g., Cloud SQL, Cloud Datastore, BigQuery, Cloud Spanner, Cloud Pub/Sub, Cloud Bigtable, Cloud Dataproc, Cloud Dataflow, Cloud Storage)
Loading data (e.g., command line upload, API transfer, import/export, load data from Cloud Storage, streaming data to Cloud Pub/Sub)
- Deploying and implementing networking resources. Tasks include:
Creating a VPC with subnets (e.g., custom-mode VPC, shared VPC)
Launching a Compute Engine instance with custom network configuration (e.g., internal-only IP address, Google private access, static external and private IP address, network tags)
Creating ingress and egress firewall rules for a VPC (e.g., IP subnets, tags, service accounts)
Creating a VPN between a Google VPC and an external network using Cloud VPN
Creating a load balancer to distribute application network traffic to an application (e.g., Global HTTP(S) load balancer, Global SSL Proxy load balancer, Global TCP Proxy load balancer, regional network load balancer, regional internal load balancer)
- Deploying a solution using Cloud Marketplace. Tasks include:
Browsing Cloud Marketplace catalog and viewing solution details
Deploying a Cloud Marketplace solution
- Deploying application infrastructure using Cloud Deployment Manager. Tasks include:
Developing Deployment Manager templates
Launching a Deployment Manager template
- Managing Compute Engine resources. Tasks include:
Managing a single VM instance (e.g., start, stop, edit configuration, or delete an instance)
SSH/RDP to the instance
Attaching a GPU to a new instance and installing CUDA libraries
Viewing current running VM inventory (instance IDs, details)
Working with snapshots (e.g., create a snapshot from a VM, view snapshots, delete a snapshot)
Working with images (e.g., create an image from a VM or a snapshot, view images, delete an image)
Working with instance groups (e.g., set autoscaling parameters, assign instance template, create an instance template, remove instance group)
Working with management interfaces (e.g., Cloud Console, Cloud Shell, GCloud SDK)
- Managing Google Kubernetes Engine resources. Tasks include:
Viewing current running cluster inventory (nodes, pods, services)
Working with node pools (e.g., add, edit, or remove a node pool)
Working with pods (e.g., add, edit, or remove pods)
Working with services (e.g., add, edit, or remove a service)
Working with stateful applications (e.g. persistent volumes, stateful sets)
Working with management interfaces (e.g., Cloud Console, Cloud Shell, Cloud SDK)
- Managing App Engine and Cloud Run resources. Tasks include:
Adjusting application traffic splitting parameters
Setting scaling parameters for autoscaling instances
Working with management interfaces (e.g., Cloud Console, Cloud Shell, Cloud SDK)
- Managing storage and database solutions. Tasks include:
Moving objects between Cloud Storage buckets
Converting Cloud Storage buckets between storage classes
Setting object life cycle management policies for Cloud Storage buckets
Executing queries to retrieve data from data instances (e.g., Cloud SQL, BigQuery, Cloud Spanner, Cloud Datastore, Cloud Bigtable)
Estimating costs of a BigQuery query
Backing up and restoring data instances (e.g., Cloud SQL, Cloud Datastore)
Reviewing job status in Cloud Dataproc, Cloud Dataflow, or BigQuery
Working with management interfaces (e.g., Cloud Console, Cloud Shell, Cloud SDK)
- Managing networking resources. Tasks include:
Adding a subnet to an existing VPC
Expanding a subnet to have more IP addresses
Reserving static external or internal IP addresses
Working with management interfaces (e.g., Cloud Console, Cloud Shell, Cloud SDK)
- Monitoring and logging. Tasks include:
Creating Stackdriver alerts based on resource metrics
Configuring log sinks to export logs to external systems (e.g., onpremises or BigQuery)
Viewing specific log message details in Stackdriver
Using cloud diagnostics to research an application issue (e.g., viewing Cloud Trace data, using Cloud Debug to view an application point-intime)
Viewing Google Cloud Platform status
Working with management interfaces (e.g., Cloud Console, Cloud Shell, Cloud SDK)
- Managing identity and access management (IAM). Tasks include:
Viewing IAM role assignments
Assigning IAM roles to accounts or Google Groups
Defining custom IAM roles
- Managing service accounts. Tasks include:
Managing service accounts with limited privileges
Assigning a service account to VM instances
Granting access to a service account in another project
- Viewing audit logs for project and managed services.
- 2 Live Project
- Self-Paced/ Classroom
- Certification Pass Guaranteed
- Designing a solution infrastructure that meets business requirements. Considerations include:
Business use cases and product strategy
Cost optimization
Supporting the application design
Integration with external systems
Movement of data
Design decision trade-offs
Build, buy, or modify
Success measurements (e.g., key performance indicators [KPI], return on investment [ROI], metrics)
Compliance and observability
- Designing a solution infrastructure that meets technical requirements. Considerations include:
High availability and failover design
Elasticity of cloud resources
Scalability to meet growth requirements
Performance and latency
- Designing network, storage, and compute resources. Considerations include:
Integration with on-premises/multi-cloud environments
Cloud-native networking (VPC, peering, firewalls, container networking)
Choosing data processing technologies
Choosing appropriate storage types (e.g., object, file, RDBMS, NoSQL, New SQL)
Choosing compute resources (e.g., pre-emptible, custom machine type, specialized workload)
Mapping compute needs to platform products
- Creating a migration plan (i.e., documents and architectural diagrams). Considerations include:
Integrating solution with existing systems
Migrating systems and data to support the solution
Licensing mapping
Network planning
Testing and proof of concept
Dependency management planning
- Envisioning future solution improvements. Considerations include:
Cloud and technology improvements
Business needs evolution
Evangelism and advocacy
- Configuring network topologies. Considerations include:
Extending to on-premises (hybrid networking)
Extending to a multi-cloud environment that may include GCP to GCP communication
Security and data protection
- Configuring individual storage systems. Considerations include:
Data storage allocation
Data processing/compute provisioning
Security and access management
Network configuration for data transfer and latency
Data retention and data life cycle management
Data growth management
- Configuring compute systems. Considerations include:
Compute system provisioning
Compute volatility configuration (preemptible vs. standard)
Network configuration for compute nodes
- Infrastructure provisioning technology configuration (e.g. Chef/Puppet/Ansible/Terraform/Deployment Manager)
- Container orchestration with Kubernetes
- Designing for security. Considerations include:
Identity and access management (IAM)
Resource hierarchy (organizations, folders, projects)
Data security (key management, encryption)
Penetration testing
Separation of duties (SoD)
Security controls (e.g., auditing, VPC Service Controls, organization policy)
Managing customer-managed encryption keys with Cloud KMS
- Designing for compliance. Considerations include:
Legislation (e.g., health record privacy, children’s privacy, data privacy, and ownership)
Commercial (e.g., sensitive data such as credit card information handling, personally identifiable information [PII])
Industry certifications (e.g., SOC 2)
Audits (including logs)
- Analyzing and defining technical processes. Considerations include:
Software development life cycle plan (SDLC)
Continuous integration / continuous deployment
Troubleshooting / post mortem analysis culture
Testing and validation
Service catalogue and provisioning
Business continuity and disaster recovery
- Analyzing and defining business processes. Considerations include:
Stakeholder management (e.g. influencing and facilitation)
Change management
Team assessment / skills readiness
Decision-making process
Customer success management
Cost optimization / resource optimization (capex / opex)
- Developing procedures to ensure resilience of solution in production (e.g., chaos engineering)
- Advising development/operation team(s) to ensure successful deployment of the solution. Considerations include:
Application development
API best practices
Testing frameworks (load/unit/integration)
Data and system migration tooling
- Interacting with Google Cloud using GCP SDK (gcloud, gsutil, and bq). Considerations include:
Local installation
Google Cloud Shell
- 2 Live Project
- Self-Paced/ Classroom
- Certification Pass Guaranteed
- Balance change, velocity, and reliability of the service
Discover SLIs (availability, latency, etc.)
Define SLOs and understand SLAs
Agree to consequences of not meeting the error budget
Construct feedback loops to decide what to build next
Toil automation
- Manage service life cycle
Manage a service (e.g., introduce a new service, deploy it, maintain and retire it)
Plan for capacity (e.g., quotas and limits management)
- Ensure healthy communication and collaboration for operations
Prevent burnout (e.g., set up automation processes to prevent burnout)
Foster a learning culture
Foster a culture of blamelessness
- Design CI/CD pipelines
Immutable artifacts with Container Registry
Artifacts repositories with Container Registry
Deployment strategies with Cloud Build, Spinnaker
Deployment to hybrid and multi-cloud environments with Anthos, Spinnaker, Kubernetes
Artifacts versioning strategy with Cloud Build, Container Registry
CI/CD pipeline triggers with Cloud Source Repositories, Cloud Build GitHub App, Cloud Pub/Sub
Testing a new version with Spinnaker
Configure deployment processes (e.g., approval flows
- Implement CI/CD pipelines
CI with Cloud Build
CD with Cloud Build
Open source tooling (e.g. Jenkins, Spinnaker, Git Lab, Concourse)
Auditing and tracing of deployments (e.g., CSR, Cloud Build, Cloud Audit Logs)
- Manage configuration and secrets
Secure storage methods
Secret rotation and configuration changes
- Manage infrastructure as code
Terraform / Cloud Deployment Manager
Infrastructure code versioning
Make infrastructure changes safer
Immutable architecture
- Deploy CI/CD tooling
Centralized tools vs. multiple tools (single vs multi-tenant)
Security of CI/CD tooling
- Manage different development environments (e.g., staging, production, etc.):
Decide on the number of environments and their purpose
Create environments dynamically per feature branch with GKE, Cloud Deployment Manager
Local development environments with Docker, Cloud Code, Scaffold
- Secure the deployment pipeline:
Vulnerability analysis with Container Registry
Binary Authorization
IAM policies per environment
- Manage application logs
Collecting logs from Compute Engine, GKE with Stackdriver Logging, Fluentd
Collecting third-party and structured logs with Stackdriver Logging, Fluentd
Sending application logs directly to Stackdriver API with Stackdriver Logging
- Manage application metrics with Stackdriver Monitoring
Collecting metrics from Compute Engine
Collecting GKE/Kubernetes metrics
Use metric explorer for ad hoc metric analysis
- Manage Stackdriver Monitoring platform
Creating a monitoring dashboard
Filtering and sharing dashboards
Configure third-party alerting in Stackdriver Monitoring (i.e., Pager Duty, Slack, etc.)
Define alerting policies based on SLIs with Stackdriver Monitoring
Automate alerting policy definition with Cloud DM or Terraform
Implementing SLO monitoring and alerting with Stackdriver Monitoring
Understand Stackdriver Monitoring integrations (e.g., Grafana, BigQuery)
Using SIEM tools to analyze audit/flow logs (e.g., Splunk, Data dog)
Design Stackdriver Workspace strategy
- Manage Stack Driver Logging platform
Enabling data access logs (e.g., Cloud Audit Logs)
Enabling VPC flow logs
Viewing logs in the GCP Console
Using basic vs. advanced logging filters
Implementing logs-based metrics
Understanding the logging exclusion vs. logging export
Selecting the options for logging export
Implementing a project-level / org-level export
Viewing export logs in Cloud Storage and BigQuery
Sending logs to an external logging platform
- Implement logging and monitoring access controls:
Set ACL to restrict access to audit logs with IAM, Stack driver Logging
Set ACL to restrict export configuration with IAM, Stack driver Logging
Set ACL to allow metric writing for custom metrics with IAM, Stack driver Monitoring
- Identify service performance issues
Evaluate and understand user impact (Stackdriver Service Monitoring for App Engine, Istio)
Utilize Stackdriver to identify cloud resource utilization
Utilize Stackdriver Trace/Profiler to profile performance characteristics
Interpret service mesh telemetry
Troubleshoot issues with the image/OS
Troubleshoot network issues (e.g., VPC flow logs, firewall logs, latency, view network details)
- Debug application code:
Application instrumentation
Stackdriver Debugger
Stackdriver Logging
Stackdriver Trace
Debugging distributed applications
App Engine local development server
Stackdriver Error Reporting
Stackdriver Profiler
- Optimize resource utilization:
Identify resource costs
Identify resource utilization levels
Develop plan to optimize areas of greatest cost or lowest utilization
Manage pre-emptible VMs
Work with committed-use discounts
TCO considerations
Consider network pricing
- Coordinate roles and implement communication channels during a service incident:
Define roles (incident commander, communication lead, operations lead)
Handle requests for impact assessment
Provide regular status updates, internal and external
Record major changes in incident state (When mitigated When all clear etc.)
Establish communications channels (email, IRC, Hangouts, Slack, phone, etc.)
Scaling response team and delegation
Avoid exhaustion / burnout
Rotate / hand over roles
Manage stakeholder relationships
- Investigate incident symptoms impacting users
Identify probable causes of service failure
Evaluate symptoms against probable causes; rank probability of cause based on observed behavior
Perform investigation to isolate most likely actual cause
Identify alternatives to mitigate issue
- Mitigate incident impact on users:
Roll back release
Drain / redirect traffic
Turn off experiment
Add capacity
- Resolve issues (e.g., Cloud Build, Jenkins):
Code change / fix bug
Verify fix
Declare all-clear
- Document issue in a post-mortem:
Document root causes
Create and prioritize action items
Communicate post-mortem to stakeholders
- 2 Live Project
- Self-Paced/ Classroom
- Certification Pass Guaranteed
- Data processing Fundamentals
Data Processing Concepts
Data Processing Pipelines
- Data Storage Fundamentals
About GCP
Data Storage in GCP
Working with Data
Cloud Storage
Data Transfer Services
Cloud Fire Store
Cloud Spanner
Cloud Memory Store
Different Memory options
- Selecting the best memory storage
Compare storage options
Mapping storage systems to business requirements
Data modeling
Trade-offs involving latency, throughput, transactions
Distributed systems
Schema design
- Data publishing and visualization
- Online (interactive) vs. batch predictions
- Batch and streaming data (e.g., Cloud Dataflow, Cloud Dataproc, Apache Spark and Hadoop ecosystem, Cloud Pub/Sub, Apache Kafka)
- Big Data Ecosystem
MapReduce
Hadoop & HDFS
Apache Pig
Apache Spark
Apache Kafka
- Real-time Messaging with Pub/Sub
Pub/sub basics
pub/Sub Terminologies
Advanced Pub/Sub Concepts
Working with Pub/Sub
- Cloud Data Flow Pipelining
Introduction to Data flow
Pipeline Lifecycle
Dataflow pipeline concepts
Advanced Dataflow concepts
Dataflow security and access
Using Dataflow
- Cloud Dataproc
Dataproc Basics
Working with Dataproc
Advanced Dataproc
- NoSQL Data with Cloud Big Table
Big Table Concepts
Big Table Architecture
Big Table Data Model
Big Table Schema Design
Big Table Advanced Concepts
- Data Analytics using BigQuery
BigQuery Basics
Using BigQuery
Partitioning and Clustering
Best Practices
Securing BigQuery
BigQuery Monitoring and Logging
Machine Learning with BigQuery ML
Working with BigQuery
Advanced BigQuery Concepts
- Data Exploration with Cloud Datalab
Datalab Concepts
Working with Datalab
- Visualization with Cloud Data Studio
Reporting & Business intelligence
Data Distribution
Introduction to Cloud Data Studio
Charts and Filters
- Job automation and orchestration (e.g., Cloud Composer)
Orchestration with Cloud Composer
Cloud Composer Overview
Cloud Composer Architecture
Working with Cloud Composer
Advanced Cloud Composer Concepts
- Steps for Designing
Choice of infrastructure
System availability and fault tolerance
Use of distributed systems
Capacity planning
Hybrid cloud and edge computing
Architecture options (e.g., message brokers, message queues, middleware, service-oriented architecture, serverless functions)
At least once, in-order, and exactly once, etc., event processing
- Migrating data warehousing and data processing
Awareness of current state and how to migrate a design to a future state
Migrating from on-premises to cloud (Data Transfer Service, Transfer Appliance, Cloud Networking)
Validating a migration
- Building and operationalizing Storage Solutions
Cloud Managed Services
Effectives Use of Managed Services
Storage Cost and performance
Lifecycle Management of Data
- Building and operationalizing Pipelines
Data cleansing
Batch and streaming
Transformation
Data acquisition and import
Integrating with new data sources
- Building and operationalizing processing infrastructure
Provisioning resources
Monitoring pipelines
Adjusting pipelines
Testing and quality control
- Introduction to Machine Learning
Machine Learning Introduction
Machine Learning Basics
Machine Learning Types and Models
Overfitting
Hyperparameters
Feature Engineering
- Machine Learning with TesnorFlow
Deep Learning with TensorFlow
Introduction to Artificial Neural Networks
Neural Network Architectures
Building a Neural Network
- Leveraging pre-built ML models as a service. Considerations include:
ML APIs (e.g., Vision API, Speech API)
Customizing ML APIs (e.g., AutoML Vision, Auto ML text)
Conversational experiences (e.g., Dialogflow)
- Deploying an ML pipeline
Ingesting appropriate data
Retraining of machine learning models (Cloud Machine Learning Engine, BigQuery ML, Kubeflow, Spark ML)
Continuous evaluation
- Choosing the appropriate training and serving infrastructure
Distributed vs. single machine
Use of edge compute
Hardware accelerators (e.g., GPU, TPU)
- Measuring, monitoring, and troubleshooting machine learning models
Machine learning terminology (e.g., features, labels, models, regression, classification, recommendation, supervised and unsupervised learning, evaluation metrics)
Impact of dependencies of machine learning models
Common sources of error (e.g., assumptions about data)
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FAQ's
If you are looking for information on business and technology cloud infrastructure, applications development, machine learning, and data, Croma Campus Google Cloud Training Institute in Noida offers great online services. Croma Campus structured online course will help you remember things more effectively.
Croma Campus provides learners with other popular cloud computing courses like AWS, Salesforce, DevOps, Microsoft Azure, and OpenStack.
Croma Campus offers some free resources such as blogs, interview questions, and everything you need to know about the Google Cloud Platform.
Learning has evolved with the introduction of technology. Croma Campus Google Cloud Training in Noida provides the best learning experience using the latest training methods and adding quality to the training module. It provides learners 24/7 assistance, professional industry-based trainers, and placement assistance.
Before enrolling for Google Cloud training, candidates can experience a demo class. Croma Campus Google Cloud Training in Noida offers the best programs and training that you need to master this technology.
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