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Technologies / Artificial Intelligence

Building Deep Learning Models with Apache MXNet

This training focuses on practical use of the Apache MXNet framework for building advanced deep learning models. Participants will learn the framework architecture, implement various types of neural networks, and optimize their performance. The program is delivered as intensive workshops where theory is immediately verified through practical implementations. Special emphasis is placed on creating efficient and scalable solutions.

Required Participant Preparation

  • Good knowledge of Python language

  • Basic understanding of deep learning

  • Knowledge of linear algebra and statistics

  • Experience working with ML libraries

Benefits

  • Practical knowledge of Apache MXNet
  • Ability to implement various deep learning architectures
  • Capability to optimize model performance
  • Knowledge of distributed training techniques
  • Ability to deploy models in production environments
  • Of deep learning best practices
  • Experience in model debugging
  • Certificate confirming acquired skills

Who is this training for?

Python developers specializing in machine learning
Machine learning engineers seeking efficient tools
Data Scientists working on scalable solutions
AI solution architects responsible for technology selection
Researchers working on advanced deep learning models
Developers migrating from other ML frameworks
R&D specialists in artificial intelligence
Technical Leaders of AI/ML teams

Training program

01

Architecture and main components

  • Comparison with other frameworks
  • Development environment configuration
02

Basic tensor operations

  • Deep Learning Model Implementation
  • Building neural networks
  • Implementing layers and activations
  • Data management and batching
  • Model training and evaluation
03

Advanced Architectures

  • Convolutional Neural Networks (CNN)
  • Recurrent Neural Networks (RNN)
04

Attention mechanisms

  • Transfer learning
  • Optimization and Deployment
  • Performance optimization techniques
05

Distributed training

  • Model export and deployment
  • Monitoring and debugging

Delivery Methods

Online

  • Convenience of participating from anywhere
  • Interactive live sessions with trainer
  • Materials available for 30 days
  • No travel costs

On-site

  • Direct contact with trainer and group
  • Intensive hands-on workshops
  • Networking with other participants
  • Full focus on learning

Frequently asked questions

Who is the Building Deep Learning Models with Apache MXNet training for?

This training is designed for professionals looking to develop skills in building deep learning models with apache mxnet. Required level: intermediate.

How long is the Building Deep Learning Models with Apache MXNet training?

The training lasts 3. Available in online or on-site format.

Will I receive a certificate?

Yes — every participant receives a completion certificate confirming acquired competencies. EITT holds ISO 9001 accreditation.

Can this training be conducted for a closed group?

Yes — we offer dedicated closed trainings for companies. We customize the program to your team's needs. Contact us for an individual quote.

Bożena Machowska-Worek
Bożena Machowska-Worek Opiekun szkolenia

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Funding Options

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Up to 80%

Development Services Database

Up to 80% funding for SMEs from EU funds

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Up to 100%

National Training Fund

Up to 100% funding for employers

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We train teams at Poland's largest companies

ING Bank - EITT client
mBank - EITT client
PKO Bank Polski - EITT client
PZU - EITT client
Allianz - EITT client
T-Mobile - EITT client
KGHM - EITT client
PGE - EITT client
IKEA - EITT client
InPost - EITT client
Leroy Merlin - EITT client
ZUS - EITT client

Interested in this training?

Contact us - we'll prepare an offer tailored to your organization's needs.

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