This is an example of a simple banner

Training: AWS Deep Learning on Amazon Web Services

Ref. AI-05-05
Duration:
1
 jour
Exam:
Non certifiant
Level:
Avancé

AWS Deep Learning on Amazon Web Services Training

The AWS Deep Learning on Amazon Web Services training course provides an understanding of how cloud environments can be leveraged for deep learning projects. It helps participants connect the principles of deep learning to the services, architecture patterns and potential use cases within an AWS context.

An introductory training to understand the challenges of deep learning in the cloud

During this course, participants discover the fundamentals of deep learning, the main use cases, the cloud environment requirements for these projects, as well as the key considerations around scoping, cost, performance and organizational planning. The training provides a clear overview of the challenges before moving on to more technical implementation or advanced approaches.

Participant Profiles

  • IT professionals
  • Architects
  • Technical project managers
  • Innovation managers
  • Data or cloud professionals looking to better understand deep learning on AWS
  • Anyone with an existing data or cloud background who wants to explore this topic

Objectives

  • Understand the fundamentals of deep learning applied to a cloud environment
  • Identify the main use cases for deep learning
  • Discover infrastructure and service concepts related to AWS
  • Understand the challenges of cost, performance and implementation
  • Connect deep learning concepts to real business needs
  • Prepare for further skill development on more technical topics

Prerequisites

  • A general understanding of data, machine learning or cloud is recommended
  • A basic familiarity with AWS is a plus

Course Content

Module 1: Introduction to deep learning

  • Definition of deep learning
  • Positioning relative to machine learning
  • Main use cases
  • Why the cloud plays an important role in these projects

Module 2: Understanding the requirements of a deep learning project

  • Data volumes
  • Computing power
  • Training environments
  • Deployment
  • Performance monitoring
  • Constraints related to industrialization

Module 3: Overview of use cases on AWS

  • Possible approaches within an Amazon Web Services environment
  • Service and architecture patterns
  • Use cases related to vision, language, prediction and recommendation
  • Understanding the necessary building blocks without diving into detailed implementation

Module 4: Scoping a deep learning requirement

  • Identifying a relevant use case
  • Evaluating data maturity
  • Considering cost and performance constraints
  • Determining whether a deep learning approach is truly necessary
  • Comparing with simpler approaches

Module 5: Limitations and caution points

  • Project complexity
  • Data requirements
  • Experimentation time
  • Infrastructure costs
  • Maintainability
  • Business validation and human oversight

Documentation

  • Support de cours numérique inclus

Lab / Exercises

  • This course includes case studies, implementation scenario analyses and reflection workshops to connect deep learning challenges to possible architectures and use cases in an AWS environment.

Complementary Courses

Eligible Funding

ITTA is a partner of a continuing education fund dedicated to temporary workers. This fund can subsidize your training, provided that you are subject to the “Service Provision” collective labor agreement (CCT) and meet certain conditions, including having worked at least 88 hours in the past 12 months.

Additional Information

AWS as a deep learning platform

Amazon Web Services offers one of the most comprehensive platforms for developing and deploying deep learning models. With SageMaker, GPU instances and a dedicated ecosystem of tools, AWS enables organizations of all sizes to harness the power of deep learning without massive hardware investment.

Mastering the AWS ecosystem for deep learning is an increasingly sought-after skill on the job market, both in Switzerland and internationally.

AWS services for deep learning

AWS offers a comprehensive range of services for deep learning. SageMaker is the central platform covering the entire model lifecycle, from training to deployment. EC2 P4 and P5 instances provide the latest generation of GPUs for intensive training. SageMaker JumpStart delivers pre-trained models ready for use.

Complementary services such as Rekognition for vision, Comprehend for NLP and Forecast for time series allow organizations to leverage deep learning without building their own models, significantly accelerating time-to-market.

Training and optimizing models on AWS

Training deep learning models on AWS benefits from the elasticity of the cloud. Computing resources are available on demand, allowing organizations to adapt capacity to the needs of each project. Distributed training techniques make it possible to process massive datasets by parallelizing computation across multiple GPUs.

Cost optimization is a major concern. Spot instances, model lifecycle management and adaptive sizing help control expenses while maintaining the necessary performance levels.

Deploying models to production on AWS

Deploying deep learning models to production requires reliable, scalable and monitored infrastructure. SageMaker Endpoints provides a managed inference service that simplifies deployment. Performance monitoring, model versioning and automatic scaling are built-in features.

MLOps best practices enable organizations to industrialize the model lifecycle and maintain quality over time. The training covers these essential aspects for a successful deployment.

Deep learning on AWS for Swiss businesses

Swiss businesses benefit from the presence of an AWS region in Zurich, which guarantees data residency on Swiss territory. This proximity is particularly important for organizations subject to regulatory requirements regarding data localization.

ITTA trains French-speaking Swiss professionals in deep learning on AWS through hands-on courses delivered in Geneva and Lausanne, combining theory and exercises on real cloud infrastructure.

AI-augmented data analysis in the Swiss context

Switzerland is a country where data culture is particularly well developed, especially in the finance, healthcare and manufacturing sectors. Artificial intelligence makes it possible to extract even more value from this data by making it accessible to a wider audience within organizations. Augmented analytics tools democratize access to data insights and enable every team member to contribute to informed decision-making.

Swiss requirements for data quality, analytical rigor and privacy protection create a demanding but beneficial framework for AI deployment. Organizations that train their teams in AI-driven data exploitation gain a lasting competitive advantage. The skills acquired are cross-functional and applicable regardless of the industry or company size.

This training gives participants a thorough understanding of AI-augmented data visualization mechanisms. The techniques taught enable complex datasets to be transformed into clear and actionable visual representations. Trained professionals are able to communicate their analyses effectively to non-technical audiences, thereby strengthening the impact of their recommendations within their organization.

Is prior AWS knowledge required for this training?

A foundation in AWS and Python is recommended. Participants should be familiar with fundamental cloud computing and programming concepts to get the most out of the training.

What budget should be planned for deep learning on AWS?

Costs vary depending on usage intensity. GPU instances are billed by the hour, with reduced rates for Spot instances. The training teaches cost optimization techniques to help manage the budget.

Is SageMaker suitable for deep learning beginners?

SageMaker offers tools for all levels, from JumpStart pre-trained models for beginners to custom notebooks for experts. The training covers the full spectrum.

Can TensorFlow and PyTorch be used on AWS?

Yes, SageMaker supports all major frameworks including TensorFlow, PyTorch, MXNet and Hugging Face. Pre-configured containers make it easy to get started with the framework of your choice.

Does data stay in Switzerland on AWS?

The AWS Europe Zurich region ensures that data remains on Swiss territory. Proper configuration of services and storage policies is covered in the training.

Prix de l'inscription
CHF 750.-
Inclus dans ce cours
  • Training provided by a domain expert
  • Digital documentation and support materials
  • Achievement badge
Mois actuel

ven03juil09:00ven17:00VirtuelVirtual Etiquettes de sessionAI-05-05

ven03juil09:00ven17:00Lausanne, Av. Mon-Repos 24, 1005 Lausanne Etiquettes de sessionAI-05-05

ven07Aoû09:00ven17:00VirtuelVirtual Etiquettes de sessionAI-05-05

ven07Aoû09:00ven17:00Genève, Route des Jeunes 35, 1227 Genève Etiquettes de sessionAI-05-05

ven11Sep09:00ven17:00VirtuelVirtual Etiquettes de sessionAI-05-05

ven11Sep09:00ven17:00Lausanne, Av. Mon-Repos 24, 1005 Lausanne Etiquettes de sessionAI-05-05

ven16Oct09:00ven17:00VirtuelVirtual Etiquettes de sessionAI-05-05

ven16Oct09:00ven17:00Genève, Route des Jeunes 35, 1227 Genève Etiquettes de sessionAI-05-05

ven20Nov09:00ven17:00VirtuelVirtual Etiquettes de sessionAI-05-05

ven20Nov09:00ven17:00Lausanne, Av. Mon-Repos 24, 1005 Lausanne Etiquettes de sessionAI-05-05

ven25Déc09:00ven17:00VirtuelVirtual Etiquettes de sessionAI-05-05

ven25Déc09:00ven17:00Genève, Route des Jeunes 35, 1227 Genève Etiquettes de sessionAI-05-05

Contact

ITTA
Route des jeunes 35
1227 Carouge, Suisse

Opening hours

Monday to Friday
8:30 AM to 6:00 PM
Tel. 058 307 73 00

Contact-us

ITTA
Route des jeunes 35
1227 Carouge, Suisse

Make a request

Contact

ITTA
Route des jeunes 35
1227 Carouge, Suisse

Opening hours

Monday to Friday, from 8:30 am to 06:00 pm.

Contact us

Your request