AWS Cloud for Finance Professionals
As part of the course, you’ll learn to define cloud business models, estimate costs associated with your AWS account with the existing and future workloads. Tools used for reporting, monitoring, allocating, optimizing and planning AWS spending through pricing models on AWS Cloud shall also be covered.
If you are a Financial Stakeholder in an organization who wants to learn how to maximize cloud business value and use CFM best practices and to help the finance teams to innovate with AWS, this course is ideal for you. It is delivered by an Amazon Authorized Instructor with a mix of presentation, theory and knowledge checks.
In this course, you will learn to:
- Define cloud business value
- Estimate costs associated with current and future cloud workloads
- Use tools to report, monitor, allocate, optimize, and plan AWS spend
- Optimize cloud spending and usage through pricing models
- Establish best practices with Cloud Financial Management (CFM) and Cloud Financial Operations (Cloud FinOps)
- Implement financial governance and controls
- Drive finance organization innovation
This course is intended for enterprise finance stakeholders who want to learn how to maximize cloud business value, use CFM best practices, and help finance teams innovate with AWS.
We recommend that attendees of this course have:
- Cloud Computing and AWS from the digital version of AWS Cloud for Finance Professionals
- AWS Cloud Practitioner Essentials
- AWS Cloud Essentials for Business Leaders
Module 1: Introduction
- Cloud spending decisions
- AWS pricing
- Cost drivers
- AWS Well-Architected Framework
- AWS Cloud Value Framework
- Activity 1.1: Cloud value metrics
- Cloud Financial Management
- Activity 1.2: Cloud Financial Management outcomes
Module 2: Planning and Forecasting
- Estimate cloud workload costs
- Build and refine a cost estimate
- Budget and forecast cloud costs
- Improve cloud financial predictability
Module 3: Measurement and Accountability
- KPIs and unit metrics
- Cost visibility and monitoring
- Demonstration 3.1: Tools for cost visibility, tools for cost monitoring
- Cost allocation and accountability
- Cost allocation building blocks
Module 4: Cost Optimization
- Usage optimizations
- Commitment-based purchase options
- Cost optimization
Module 5: Cloud Financial Operations
- Organizational change for CFM
- Organization models for CFM
- Organizational models
- Establish a cost-aware organizational culture
- Governance, control, and agility
- AWS governance and control building blocks
- Automated-based governance using AWS services
Module 6: Financial Transformation and Innovation
- Keys to financial innovation
- Financial transformation
- Solutions for financial innovation
Module 7: Resources and Next Steps
- Module resources
- Next steps
Why choose Cloud Wizard
- Advanced Tier Training Partner
- Amazon Authorised Instructors
- Official AWS Content
- Hands-on Labs
Class Deliverables
- E-Content kit by AWS
- Hands-on labs
- Class completion certificates
- Exam Prep sessions
Dates Available
Choose a date that works for you and click on Book Now to proceed with your registration.
Method | Duration | Start Time | Start date | Price | Action |
---|---|---|---|---|---|
Classroom | 2 days | All Day | May 14, 2024 | ₹30,000 | |
Classroom | 2 days | All Day | May 28, 2024 | ₹30,000 | |
Classroom | 2 days | All Day | June 11, 2024 | ₹30,000 | |
Classroom | 2 days | All Day | June 25, 2024 | ₹30,000 |
Don't see a date that works for you?
Fill in the form below to let us know.
Related courses
Related products
-
AWS Training
MLOps Engineering on AWS
This course builds on and extends the DevOps methodology used in software development to build, train and deploy machine learning (ML) models. In this three days course you will learn about the four-level MLOps maturity framework. It outlines the importance of data, model and code to successful ML deployments. The course also discusses the use of tools and processes to monitor and take action when the model prediction shifts from the key performance indicators.
The course is intended for MLOps engineers who want to produce and monitor ML models in the AWS Cloud. It is also for DevOps engineers who are responsible for deploying and maintaining ML models. We recommend you to have completed AWS Technical Essentials, DevOps Engineering on AWS and Practical Data Science with Amazon SageMaker
The program is taught with the help of presentations, hands-on labs, demonstrations and group activities. You will be able to prepare for the AWS Certified Machine Learning certification
-
AWS Training
Building Batch Data Analytics Solutions on AWS
In this course, you will learn to build batch data analytics solutions using Amazon EMR, an enterprise-grade Apache Spark and Apache Hadoop managed service. You will learn how Amazon EMR integrates with open-source projects such as Apache Hive, Hue, and HBase, and with AWS services such as AWS Glue and AWS Lake Formation.
The course addresses data collection, ingestion, cataloging, storage, and processing components in the context of Spark and Hadoop. You will learn to use EMR Notebooks to support both analytics and machine learning workloads. You will also learn to apply security, performance, and cost management best practices to the operation of Amazon EMR.
-
AWS Training
The Machine Learning Pipeline on AWS
The course explores the usage of the iterative Machine Learning (ML) pipeline to solve real-world business problems in a project-based environment. You will learn about each phase of the pipeline from an experienced AWS instructor via live presentations and demonstrations. You will then go on to complete a project while solving one of the three business problems such as fraud detection, recommendation engines or flight delays. By the end of this course you will have built, trained, evaluated and deployed a ML model using Amazon SageMaker to solve a selected business problem. It also prepares you for the AWS Certified Machine Learning – Speciality certification.
This course is recommended for developers, solution architects, data engineers and anyone who wishes to learn more about the ML pipeline using Amazon SageMaker. We recommend you to have basic knowledge of Python programming language, basic understanding of AWS cloud services and basic experience of working in a Jupyter notebook environment.
-
AWS Training
DevOps Engineering on AWS
As part of this course, you will learn how to use a combination of DevOps best practices and tools to support your organization’s capability to develop, deliver and maintain applications and services at a high velocity on the AWS cloud. You will also learn to list the advantages of small autonomous devops teams, to design and implement infrastructure on AWS cloud that supports DevOps development projects. After completing the course, you will be able to attempt the AWS certified DevOps Engineer Professional certification.
The course is ideal for DevOps Engineers, DevOps architects, Operation Engineers, system administrators and software developers. Additionally, you are recommended to have attended the Cloud Operations on AWS or Developing on AWS courses, have working knowledge of C#, Java, PHP, Ruby or Python, along with two or more years of experience in provisioning, operating and managing AWS cloud environments.