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Fundamentals of AI for Simulation Engineers

Online Training Course

Fundamentals of AI for Simulation Engineers

12 - 13 March 2025 | Online | 8 hours per day


Berlin: 9:00am / London: 8:00am
New York 3:00pm / Los Angeles: 12:00am

Course language: English


This intensive two-day training course is designed to equip simulation engineers with a good understanding and practical skills in applying Artificial Intelligence (AI) in their field.

It is designed to be software-agnostic, prioritizing methodologies, and techniques that engineers can apply across various computational platforms.

The course consists of two parts:

The first part is an interactive lecture, which introduces the theory and mathematical background behind artificial intelligence.

The second part of the course are hands-on exercises, where participants will learn how to create their own Deep Learning models.

Detailed Course Program:

Day 1

Introductory Example: Modeling Compressor Parameters
  • Problem Description
  • Comparison between AI and traditional solution
An Overview of Example Applications in Research
  • Simulation Acceleration
  • Reduced Order Models
Definitions
  • The definition of AI
  • The difference between AI, Machine Learning, and Deep Learning
Overview of Machine Learning methods
  • The basic principles behind all Machine Learning methods
  • Learning Paradigms (Supervised, Unsupervised, Reinforcement Learning)
  • Supervised Algorithms:
    - Random Forest Regression
    - Gradient Boosting
    - Support Vector Machines
  • Classification and Logistic Regression
  • How to handle non-numerical data
Foundations of Deep Learning
  • How Neurons Form the Hypothesis Function
  • Activation Functions
  • Deep Learning Regression
  • Model Training
  • Forward Pass and Backpropagation
  • Loss Functions
  • Optimizers for Deep Learning
  • Measuring Model Quality
  • Overfitting
  • Data Split
  • Layer Types
  • Neuron Architecture
  • Physics Informed Neural Networks
  • Surrogate Modeling
Practical Exercises
  • Building a Deep Learning Model for sensitivity analysis
  • Building a Physics Informed Neural Network

 

Day 2

Example project for a deep learning surrogate model for design optimization
Creating machine learning models from scratch
  • A high-level overview of creating machine learning models
  • Reviewing available data and setting a goal
  • Data preparation
  • The importance of the training, test, validation split
  • Setting the model architecture
  • Choosing optimization algorithms and loss functions
  • Creating PINNs
  • Evaluating model performance
  • Overview of MLOps
  • An overview of tools to create machine learning models
  • Open-source libraries (TensorFlow vs. PyTorch)
  • Application software
Project preparation
  • Reviewing available data
  • Using a preliminary exploratory data analysis to gauge the feasibility of the ML project
  • Defining a modeling target
  • Working in tandem with a simulation project
Data preparation
  • Data transformation: File formats and making data trainable
  • Data cleaning
  • Handling classes and text with vectorization
  • Dimension reduction
  • Feature selection
  • Feature Engineering
Sampling
  • Introduction to data sampling
  • Statistical sampling methods
  • Active sampling
  • Sampling errors
Measuring model performance and validity
  • Performance measures for ML models
Consuming the machine learning model
  • Predictive Tasks
  • Design optimization
Limitations of machine learning models
  • Model biases
  • Limitations of interpolation and extrapolation
  • Model aging

Details

Event Type Training Course
Member Price £1013.44 | $1235.76 | €1200.00
Non-member Price £1309.03 | $1596.19 | €1550.00

Dates

Start Date End Date Location
12 Mar 202513 Mar 2025Online, Online

T​rainer

M​ax Kassera (yasAI)
Max Kassera studied mechanical engineering with a minor in economics at the University of Kaiserslautern-Landau, where he first applied machine learning and artificial intelligence to turbocharger design in 2017. After graduating, he was awarded two German government grants to develop AI software for mechanical engineering, which led to the incorporation of yasAI in 2022. With yasAI, Max began training engineers in applying AI to simulation projects with a focus on simulations and fluid mechanics.


Organisation

Duration
8 hours per day, each day 9:00 am - 5:00 pm (UTC+1Berlin)

Language
English

Course Fee
Non NAFEMS members: 1.550 Euro / person*
NAFEMS member: 1.200 Euro / person*
Included in the fees are digital course notes and a certificate.
* plus VAT if applicable.

NAFEMS membership fees (company)
A standard NAFEMS site membership costs 1,365 euros per year, an academic site and entry membership costs 855 euros per year.

Cancellation Policy
Up to 6 weeks before course starts:
free of charge;
up to one week before: 75 %;
later and no show: 100 %.

Course cancellation
If not enough participants we keep the right to cancel the course one week before. The course can be canceled also in case of disease of the speakers or force majeure. In these cases the course fees will be returned.

Organisation / Contact
NAFEMS
e-mail: roger.oswald@nafems.org

Accreditation Policy

The course is agreed and under control of NAFEMS Education and Training Working Group (ETWG).