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Training: Understanding and Applying Machine Learning in Business

Ref. AI-05-04
Duration:
1
 jour
Exam:
Non certifiant
Level:
Intermédiaire

Understanding and Applying Machine Learning in Business Training

The Understanding and Applying Machine Learning in Business training course provides an accessible, business-oriented introduction to the core principles of machine learning. It helps participants understand what learning models are used for, when they are relevant, how they are trained and what conditions must be met for a project to succeed.

A clear training course to move from concept to use case

During this course, participants explore the main types of machine learning, the concepts of training data, models, performance and evaluation. They learn to distinguish realistic applications from overstated promises, to formulate requirements more effectively and to understand the conditions needed to implement a machine learning approach in a professional environment.

Participant Profiles

  • Managers
  • Project managers
  • Business analysts
  • Innovation managers
  • Professionals involved in data or AI projects
  • Anyone looking to understand machine learning without a development focus

Objectives

  • Understand the core principles of machine learning
  • Identify the main types of models and their applications
  • Understand the concepts of training, testing and evaluation
  • Recognize relevant use cases in business
  • Better define a machine learning requirement
  • Understand the limitations and success factors of a project

Prerequisites

  • A basic understanding of data concepts is recommended
  • No advanced technical knowledge is required

Course Content

Module 1: Introduction to machine learning

  • Definition of machine learning
  • Difference from traditional business rules and generative AI
  • Overview of the main model families
  • Why machine learning is useful in certain contexts

Module 2: Understanding the general workflow

  • Input data
  • Variables
  • Model training
  • Test set
  • Performance measurement
  • Concept of generalization
  • Understanding simply how a model learns

Module 3: The main types of machine learning

  • Supervised learning
  • Unsupervised learning
  • Classification
  • Regression
  • Clustering
  • Associated use cases

Module 4: Business use cases

  • Forecasting
  • Segmentation
  • Anomaly detection
  • Scoring
  • Automatic classification
  • Recommendation support
  • Choosing the right approach based on the requirement

Module 5: Limitations and caution

  • Data quality
  • Bias
  • Overfitting
  • Interpretability
  • Business validation
  • Importance of proper scoping and real-world usage

Module 6: Preparing a machine learning project

  • Formulating the right question
  • Identifying the necessary data
  • Defining a success metric
  • Engaging the right stakeholders
  • Assessing business and organizational feasibility

Documentation

  • Support de cours numérique inclus

Lab / Exercises

  • This course includes workshops on reviewing use cases, distinguishing between model types, framing requirements and analyzing real-world machine learning application scenarios in business.

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

Machine learning, a pillar of modern artificial intelligence

Machine learning is the branch of artificial intelligence that enables systems to learn from data without being explicitly programmed. This technology underpins many applications that businesses use daily, often without realizing it: recommendations, spam filters, automatic translation and voice recognition.

Understanding the principles of machine learning enables professionals to better evaluate the possibilities offered by this technology and to identify relevant use cases for their organization.

The main types of automated learning

Machine learning comes in several approaches. Supervised learning learns from labeled examples to make predictions on new data. Unsupervised learning discovers structures and patterns in unlabeled data. Reinforcement learning optimizes sequential decisions through trial and error.

Each approach addresses different types of problems. Classification, regression, clustering and anomaly detection are the most common tasks in business. Understanding these distinctions helps formulate requirements correctly and choose the right approach.

Machine learning applications in business

Business applications of machine learning are highly varied. Customer behavior prediction, fraud detection, logistics optimization, predictive maintenance and commercial scoring are proven use cases that deliver a demonstrated return on investment.

The finance, insurance, retail, manufacturing and healthcare sectors are particularly advanced in machine learning adoption. SMEs are also beginning to benefit from these technologies thanks to the democratization of tools and cloud platforms.

From theory to machine learning practice

Implementing a machine learning project follows a structured process. Data collection and preparation typically represent the largest portion of the effort. Model selection and training, performance evaluation and production deployment complete the cycle. Continuous monitoring of the model in production is essential to maintain its relevance.

AutoML platforms significantly simplify this process by automating model selection and parameter optimization, making machine learning accessible to non-specialists.

Integrating machine learning into your business strategy

Machine learning adoption requires a strategic vision that goes beyond the purely technical dimension. Identifying priority use cases, building competent teams, data governance and change management are key success factors.

ITTA offers this training in Geneva and Lausanne to give French-speaking Swiss professionals the foundations needed to understand, evaluate and manage machine learning projects within their organization.

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.

Does machine learning require large amounts of data?

The amount of data required depends on the complexity of the problem. Some algorithms work with a few hundred examples, while others require millions. Data quality is often more important than quantity.

Are GPUs required for machine learning?

GPUs are necessary for deep learning but not for most traditional machine learning algorithms. Cloud platforms provide on-demand access to computing resources, which eliminates the need for hardware investment.

How do you evaluate whether a machine learning model is reliable?

Evaluation relies on performance metrics measured on independent test data. Precision, recall, F1-score and ROC curve are commonly used indicators. The training teaches how to interpret these metrics.

Is machine learning applicable in small businesses?

Yes, current tools make machine learning accessible to SMEs. Cloud platforms offer ready-to-use services that require no dedicated infrastructure or deep data science expertise.

What is the difference between machine learning and deep learning?

Deep learning is a subset of machine learning that uses deep neural networks. It excels with unstructured data such as images, text and audio. Traditional machine learning is often better suited to structured tabular data.

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