For a better view on Inspire Cayman Training, Update Your Browser.

Enterprise Architecture (Online Courses)

Elevate your career trajectory with our premier online course, designed to sharpen your competitive edge. Explore our curated selection of top-tier digital programs to hone your skills and propel your professional journey forward. Experience transformative learning tailored to empower your career advancement in today's dynamic landscape.
Course Category
Price on Request
Start Learning
This Course Includes
  • 6 hours 30 minutes
    of self-paced video lessons
  • 5 Programs
    crafting your path to success
  • Completion Certificate
    awarded on course completion

Enterprise Architecture: Architectural Principles & Patterns

Price on Request 1 hour 35 minutes
In this 18-video course, learners can explore software architecture concepts, including the view model, consumer-driven contracts, architectural patterns, and architectural styles and solution patterns used to manage common machine learning issues. Begin by examining software architecture and the benefits it provides, and then the principles that should be followed when designing architecture for applications. You will discover the 4+1 view model and associated views, and learn to recognize software architectures, and the principles of developing enterprise architecture. Recall architectural principles for business, data, and technology, and the fundamental principles guiding service-oriented architecture (SOA) and use of the SOA maturity model. Next, explore serverless architecture; Backend-as-a-Service; the features of evolutionary architecture; and learn to recognize benefits of documenting architecture. Examine the structure of a software project team; the concept and characteristics of consumer-driven contracts; the dimensions of architecture that should be coupled to provide maximize benefit with minimal overheads and costs; and activities and tasks that software architects perform. Finally, take a look at architectural patterns and styles that can be adopted to eliminate common problems.
Perks of Course
Certificate: Yes
CPD Points: 94
Compliance Standards: AICC

Enterprise Architecture: Design Architecture for Machine Learning Applications

Price on Request 1 hour
Explore software architectures used to model machine learning (ML) applications in production, as well as the building blocks of ML reference architecture, in this 11-video course. Examine the pitfalls and building approaches for evolutionary architectures, Fitness function categories, architectural planning guidelines for ML projects, and how to set up complete ML solutions. Learners will begin by studying the basic architecture required to execute ML in enterprises, and will also take a look at software architecture and its features that can be used to model ML apps in production. Next, learn how to set up model ML apps; examine ML reference architecture and the associated building blocks; and view the approaches for building evolvable architectures and migration. Recognize the critical pitfalls of evolutionary architecture and antipatterns of technical architecture and change. Finally, observe how to set up complete ML solutions and explore the Fitness function and its associated categories. Conclude the course with an exercise on architectural planning guidelines for ML projects, with a focus on model refinement, testing, and evaluating production readiness.
Perks of Course
Certificate: Yes
CPD Points: 59
Compliance Standards: AICC

Enterprise Services: Enterprise Machine Learning with AWS

Price on Request 1 hour 15 minutes
This course explores features and operational benefits of using a cloud platform to implement machine learning (ML). In this 15-video course, learners observe how to manage diversified kinds of data, and the exponential growth of unstructured and structured data. First, you will examine ML workflow and compare differences between ML model development and traditional enterprise software development. Then you will learn how to use the ML services provided by AWS (Amazon Web Services) to implement end-to-end ML solutions at scale. Next, learners will examine AWS ML tools, services, and capabilities, the architecture, and internal components in Amazon SageMaker. You will continue by learning how to use Amazon Machine Learning Console to create data sources, implement ML models, and to use the models to facilitate predictions. This course compares the ML implementation scenarios and solutions in AWS, Microsoft Azure, and Google Cloud, and helps learners identify the best fit for any given scenario. Finally, you learn to use SageMaker and SageMaker Neo to create, train, tune, and deploy ML models anywhere.
Perks of Course
Certificate: Yes
CPD Points: 73
Compliance Standards: AICC

Enterprise Services: Machine Learning Implementation on Google Cloud Platform

Price on Request 1 hour 30 minutes
This course explores the GCP (Google Cloud Platform) machine learning (ML) tools, services, and capabilities, and different stages in the Google Cloud Platform machine learning workflow. This 14-video course demonstrates a high-level overview of different stages in Google Cloud Platform machine learning workflow. You will examine the features of BigQuery, and how to use Big Query ML to create and evaluate a binary logistic regression model using Big Query ML statement. Next, learners will observe how to use the Google AI Platform and Google Cloud AutoML components and features used for training, evaluating, and deploying ML models. You will learn to train models by using the built-in linear learner algorithm, submit jobs with GCloud and Console, create and evaluate binary logistic regression models, and set up and work with Cloud Datalab. You will learn to use AutoML Tables to work with data sets, to train machine learning models for predictions. Finally, you will work with Google Cloud AutoML Natural Language to create custom ML models for content category classification.
Perks of Course
Certificate: Yes
CPD Points: 60
Compliance Standards: AICC

Enterprise Services: Machine Learning Implementation on Microsoft Azure

Price on Request 1 hour 10 minutes
Explore the features and operational benefits of using a cloud platform to implement ML (machine learning) by using Microsoft Azure and Amazon SageMaker, in this 14-video course. First, you will learn how to use Microsoft Azure ML tools, services, and capabilities, and how to examine MLOps (machine learning and operations) to manage, deploy, and monitor models for quality and consistency. You will create Azure Machine Learning workspaces, and learn to configure development environments, build, and manage ML pipelines, to work with data sets, train models, and projects. You will develop and deploy predictive analytic solutions using the Azure Machine Learning Service visual interface, and work with Azure Machine Learning R Notebooks to fit and publish models. You will learn to enable CI/CD (continuous integration and continuous delivery) with Azure Pipelines, and examine ML tools in AWS (Amazon Web Services) SageMaker, and how to use Amazon's ML console. Finally, you will learn to track code from Azure Repos or GitHub, trigger release pipelines, and automate ML deployments by using Azure Pipelines.
Perks of Course
Certificate: Yes
CPD Points: 72
Compliance Standards: AICC