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Summer Programme – AI business

Earn a certificate in Artificial Intelligence for Business and explore how AI, data science, and business strategy intersect. This intensive summer programme equips students and young professionals with both foundational and advanced knowledge in machine learning, deep learning, and business intelligence. Combining academic lectures, hands-on projects, and expert guidance, the programme offers a practical and immersive learning experience. Participants develop the skills to understand AI technologies, apply them to real-world challenges, and drive innovation in management, entrepreneurship, and global business.

Programme objectives

By joining this programme, participants embark on a rigorous and immersive journey designed to equip them with the skills and knowledge necessary to:

  • Develop basic to advanced skills in Python and analytical tools for data science in business
  • Apply machine learning and deep learning techniques to business data sets
  • Create business intelligence through application and visualisation
  • Learn from automated analysis of texts and networks.
  • Develop AI business projects to showcase your skills to future employers.
  • Build a deeper understanding of complex environments and how to derive an advantage from them.

This programme provides university students with a solid foundation in AI techniques applicable across multiple industries.

Apply

NEXT INTAKE: 18 MAY – 12 JUNE 2026

About the programme 

The programme is structured to provide an intensive, interactive, and practical educational journey. Participants will be introduced to a range of AI-driven methods, models, and concepts through both theory and applied exercises.

Each module is taught in English by leading members of the school of business and associated institutes of technology, offering a balance of academic excellence and corporate relevance. Applicants will benefit from instruction that combines mathematical foundations with applied innovation and ethical AI practices.

The programme is organised into four AI business courses, each offering both theoretical insight and hands-on experience:

Data Science for Business

Python is an important tool in our quest to describe and analyse data. In order to be able to present findings in a way that non-specialists can understand, we need to be able to import, create and visualise data. There are numerous business applications where data are a necessary and vital part of the process.

This course aims to introduce students to the basic tools and statistics for business using python. The course is designed for students who do not necessarily have a strong programming or/and statistical background. The concepts introduced in this course can be applied to various topics in business, such as business analytics, finance and financial markets, corporate concepts, business networks and more.

Topics covered :

This course includes the following main topics:

  • Variables and lists in python
  • Important python packages for business data such as pandas
  • Importing different types of datasets from different sources
  • Understanding your data and dealing with data issues such as missing values
  • Data cleaning and data reshaping
  • Describing the data and their important characteristics
  • Data visualisation
  • Basic statistics using python (different variables and distributions, basic descriptive statistics, frequencies, etc.)

This course provides a valuable introduction for those without a programming background, while still offering advanced applications for more experienced learners. The aim is to include both beginner and advanced participants, ensuring an immersive classroom experience with ethical considerations in data usage.

AI Business Intelligence

This course will provide you with knowledge of statistics and methods needed for data analysis that can be applied to business problems and to large datasets.

You will learn how to model real-world applications using statistical methods through a mix of theory, exercises, and case studies. By leveraging python libraries for data analysis and visualisation, you will gain exposure to tools used in data analysis and visualisation that constitute the backbone of the statistical analysis you may need in developing your future projects.

Topics covered :

  • Data types and models for analysis
  • Data visualisation and hypothesis testing
  • Regression analysis
  • Models for discrete variables
  • Cluster Analysis

Students will also gain exposure to unsupervised learning and advanced methods that are shaping business applications in today’s technology-driven world. Each session includes hands-on exercises, classroom discussions, and campus events to enhance student engagement and professional development.

Business Textual Learning

Textual data has grown dramatically in recent years, including news articles, scientific literature, emails, corporate documents, and social media such as blog posts, forum posts, product reviews, and tweets. People need tools to analyse and manage large amounts of textual data effectively and efficiently.  

Textual data is often directly generated by humans and accompanied by semantically rich content. Current natural language processing techniques have not yet reached the point where computers can precisely understand natural language text, but over the past few decades, a wide range of statistical and heuristic methods have been developed to mine and analyse textual data. They are generally very robust and can be used to analyse and manage textual data in any natural language and on any topic. 

This course will introduce learners to the basics of text mining and text manipulation. Includes applications for mining word associations, mining and analyzing topics in text, clustering and classifying textual data, opinion mining and sentiment analysis, topic mining & analysis and application for text mining in business.  

You will learn the most useful basic concepts, principles and techniques in text mining and analysis, which can be used to build a wide range of text mining and analysis applications. 

Topics covered: 

  • Data preparation for Text Mining 
  • Word association mining & analysis 
  • Opinion mining & sentiment analysis 
  • Topic mining & analysis 
  • Application of Text mining in business 

This module helps participants understand how human intelligence can be supported by AI in navigating real-time textual data and extracting valuable insights. Examples are drawn from financial, corporate, and global sectors, offering practical insights for both professional and academic life. 

Business Network Intelligence

Textual data has grown dramatically in recent years, including news articles, scientific literature, emails, corporate documents, and social media such as blog posts, forum posts, product reviews, and tweets. People need tools to analyse and manage large amounts of textual data effectively and efficiently.

Textual data is often directly generated by humans and accompanied by semantically rich content. Current natural language processing techniques have not yet reached the point where computers can precisely understand natural language text, but over the past few decades, a wide range of statistical and heuristic methods have been developed to mine and analyse textual data. They are generally very robust and can be used to analyse and manage textual data in any natural language and on any topic.

This course will introduce learners to the basics of text mining and text manipulation. Includes applications for mining word associations, mining and analyzing topics in text, clustering and classifying textual data, opinion mining and sentiment analysis, topic mining & analysis and application for text mining in business.

You will learn the most useful basic concepts, principles and techniques in text mining and analysis, which can be used to build a wide range of text mining and analysis applications.

Topics covered:

  • Data preparation for Text Mining
  • Word association mining & analysis
  • Opinion mining & sentiment analysis
  • Topic mining & analysis
  • Application of Text mining in business

This module helps participants understand how human intelligence can be supported by AI in navigating real-time textual data and extracting valuable insights. Examples are drawn from financial, corporate, and global sectors, offering practical insights for both professional and academic life.

Admission requirements

Pre-requisites

  • Successful completion of at least one year of undergraduate studies
  • Strong command of spoken and written English

Assessment

  • Group project developed within the class
  • Daily assessment sheets

Career opportunities

Graduates of this programme will be equipped with applied skills that open opportunities across multiple fields. Whether pursuing roles in corporate strategyentrepreneurship, or research, students will benefit from a competitive advantage.

Graduates may pursue a range of career pathways, including:

  • Data scientist or analyst in international organisations
  • AI strategy consultant in industries adopting innovation
  • Specialist in customer service automation and machine learning models
  • Research assistant in computer vision, generative artificial intelligence, or reinforcement learning projects

The value of this certificate lies not only in the knowledge gained but also in the ability to apply AI techniques directly to business success.

Calendar 

Registration deadline: 2 March 2026

  • Data Science for Business: Monday 18 to Friday 22 May 2026
  • AI Business Intelligence: Tuesday 26 to Friday 29May 2026 (Monday 25: bank holiday)
  • Business Textual Learning: Monday 1 to Friday 5 June 2026
  • Business Network Intelligence: Monday 8 to Friday 12 June 2026

Fees

  • €90 non-refundable application fee and €1160 for one module/ or €2110 for two modules / or €2810 for three modules / or €3410 for four modules

Included in the programme: 

  • 27 hours of classroom teaching per course 
  • Tour of Rennes 
  • Welcome breakfast and farewell appetizers lunch 

Languages

  • English

Campus

  • Rennes

The programme is subject to a minimum enrolment of 15 students – if this number is not met, RSB reserves the right to cancel the course

FAQ – Summer programme – AI business

What is the summer programme in AI business?

It is an intensive summer school training offered by our Rennes School of Business, designed to introduce students, professionals, and participants from diverse backgrounds to applied AI in business.

How to apply AI in business?

By leveraging AI techniques, data science, and natural language processing, organisations can transform decision making, automate customer service, and develop new models of growth.

 

What skills are taught in AI summer courses?

Participants learn Python, deep, supervised and unsupervised AI techniques, as well as practical applications in business intelligence, data sets, and network analysis.

Who can attend AI summer programmes?

Undergraduate and master students, as well as young professionals interested in AI education and business applications.

What are the benefits of AI education?

It provides valuable knowledge, practical experience, and a competitive advantage in the international job market, preparing participants to navigate the future of technology and industries.

What topics are covered in this programme?

From deep neural networks to machine translation, data science, business intelligence, and generative AI, students study both fundamental principles and advanced techniques.

How to leverage AI for business success?

By applying AI strategies to real-world challenges, businesses can drive innovation, improve decision making, and achieve sustainable growth.