MSc • Data Analytics • Artificial Intelligence • IT automation
MSc in Data Analytics with Artificial Intelligence.
A postgraduate route for students who want to turn data into decisions, automation and operational impact — with enough AI, IT and engineering culture to work inside real digital systems, not only produce reports on the side.
This is the analytics route for students who want independence: understanding the data, the tools, the systems and the organisational context well enough to make analytics useful in production.
Beyond dashboardsAnalytics that can be implemented, automated and maintained.AI-aware analyticsMachine learning and modelling without losing decision context.IT independenceSQL, cloud, data pipelines, CRM, reporting and software principles.
01 — Programme identity
Analytics is not only dashboards. It is implementation.
This programme is designed for students who want a data analytics profile that is technically credible, practical and connected to the IT and automation chain.
DSTI positioning
From insight to action.
Many analytics programmes stop at reporting and business interpretation. DSTI’s approach goes further: statistical thinking, AI awareness, database skills, data engineering, software principles, cloud culture and information-system understanding.
Analytics
Make data usable for decisions
Learn to structure data, analyse it, visualise it and communicate evidence clearly.
AI
Use modelling responsibly
Machine learning and statistical foundations help you understand what models can and cannot do.
IT
Integrate into digital systems
SQL, data pipelines, cloud, CRM, reporting tools and software principles make graduates more independent.
Automation
Move beyond manual analysis
The goal is not only to produce insight, but to help operationalise analytics in real workflows.
02 — Who this programme is for
For students who want analytical independence, not a narrow tool course.
The MSc in Data Analytics with AI is DSTI’s most open MSc route, while remaining serious about mathematics, IT and technical progression.
Good fit
You want a credible data role connected to business, IT and automation.
You like data-driven decision-making and practical implementation.
You want to understand databases, reporting tools, Python, R, SQL and cloud environments.
You want enough machine learning and AI to use models intelligently.
You may come from business, management, economics, engineering, science or another quantitative background.
Less ideal if
Your main goal is deep model research or infrastructure engineering.
If your main interest is advanced modelling and AI systems, compare with MSc in Data Science & AI.
If your main interest is data platforms, cloud architecture and pipelines, compare with MSc in Data Engineering for AI.
If your main interest is systems protection and risk, compare with MSc in Cyber Security.
03 — Programme structure
The programme structure, at a glance.
The structure combines technical warm-up, specialist coursework, support sessions and integrated professional experience.
720hCore taught coursework across analytics, data engineering, visualisation, information systems, management, law and ethics.
75hDSTI Warm Up to reinforce mathematics, programming, AI awareness, IT foundations and systems practice.
40hSupport sessions for review, questions, difficult concepts and examination preparation.
30 ECTSProfessional experience through internship, employment or validated professional activity.
04 — Curriculum
Transparent programme content, course by course.
DSTI does not hide behind vague course labels. The MSc in Data Analytics with AI is shown below through its teaching blocks, hours, ECTS and course content.
Warm Up • 75h
Technical starting point
A preparatory bridge for students from varied academic backgrounds before entering the full MSc core.
Core coursework • 720h
Analytics, AI and IT depth
A transparent course-by-course structure covering analysis, modelling, data systems, visualisation and governance.
Professional experience • 30 ECTS
Workplace application
A validated professional experience where students apply the programme in a relevant working environment.
Warm Up75h • 6 ECTS
Foundations before the MSc core
The Warm Up helps students from varied backgrounds reinforce the technical foundations needed to start the programme seriously.
10h
Fundamental Mathematics
Core mathematics needed to approach optimisation, data science and quantitative coursework.
20h
Data Structure and Machine Learning using Python & R
First technical bridge into programming, data structures and machine-learning workflows.
5h
Data Management
Introduction to how data is organised, stored, queried and prepared for analysis.
5h
AI Awareness
Initial orientation on artificial intelligence concepts, limits and responsible use.
5h
Computer Architecture
A first look at how computers execute, store and process information.
5h
Networking
Essential networking concepts for students who will work with connected systems and platforms.
10h
Computer Systems Labs
Hands-on system practice to consolidate the IT foundation of the programme.
10h
Clean IT
Sustainable IT awareness and responsible digital practice.
5h
Excel Basics
Baseline spreadsheet skills before advanced analytics and visualisation coursework.
Data Analytics225h • 30 ECTS
Statistics, machine learning, modelling and domain use
This is the analytical heart of the programme: mathematics, statistics, machine learning, modelling, interpretation and domain applications.
25h3 ECTS
Mathematics for Data Science
Calculus, linear algebra and complex numbers required for optimisation and data science.
25h3 ECTS
Foundations of Statistical Analysis & Machine Learning — Part 1
Descriptive statistics, probability theory and applications using R.
25h3 ECTS
Big Data Processing with R
Importing, manipulating, transforming, visualising, exploring and modelling large datasets in R.
25h4 ECTS
Python Machine Learning Labs
Data preparation, feature engineering and machine-learning modelling with Python libraries.
25h4 ECTS
Semantic Web Technologies
RDF, SPARQL and web standards for representing, querying and using knowledge on the web.
25h3 ECTS
Time-Series Analysis
Temporal data analysis with mathematical foundations and applications in R for forecasting.
25h4 ECTS
Agent-Based Modelling
Complex problem modelling using ABM, with comparison to statistical, Markov and system dynamics approaches.
25h3 ECTS
Inferential Modelling
Tests, confidence intervals, models, assumptions, linear models and regression.
25h3 ECTS
Data Analytics Domain Application
Practical analytics applications across sectors such as marketing, finance, industry and risk management.
Data Engineering205h • 33 ECTS
The systems and pipelines behind analytics
A data analyst with IT independence must understand databases, data warehouses, pipelines, cloud and software principles.
25h3 ECTS
Data Wrangling with SQL
Relational databases, advanced SQL queries, stored procedures, triggers, dynamic SQL and Microsoft SQL Server.
25h3 ECTS
Data Warehousing & ETL
Design and implementation of data warehouses and ETL processes in stand-alone and cluster deployments.
25h4 ECTS
Graph Databases — NoSQL Part 1
Graph-based problem modelling and practical implementation in Neo4j graph databases.
10h4 ECTS
Document Databases — NoSQL Part 2
MongoDB collections, documents, advanced queries, aggregations and data architecture.
25h4 ECTS
Data Pipeline — Part 1
XML data flow, DTD and schemas, XSL transformations and JSON data formats.
50h4 ECTS
Cloud Computing — Amazon AWS
AWS cloud services and preparation for AWS Certified Solutions Architect – Associate.
25h3 ECTS
Software Engineering — Part 1
Procedural programming in Rust, memory representation, ownership, borrowing and reliable code.
25h3 ECTS
Software Engineering — Part 2
Object-oriented programming in C#, SOLID principles, UML, MVC, design patterns and Entity Framework.
Data Management & Visualisation125h • 22 ECTS
Decision support, reporting and information systems
This block connects analytics to the tools and systems that organisations actually use for reporting, CRM and decision support.
25h4 ECTS
Advanced Excel for Data Analytics
Formulas, data visualisation, PowerPivot, Solver and Visual Basic for Applications.
25h4 ECTS
Data & Machine Learning Visualisation Ecosystem
Data visualisation and machine-learning ecosystem, with a focus on SAS Viya.
25h2 ECTS
Analysis & Design of Information Systems
Principles and methodologies for designing and analysing information systems.
25h6 ECTS
Reporting & Visualisation
Preparation for Microsoft Power BI data analysis certification and reporting workflows.
25h6 ECTS
CRM Data Management
Microsoft Power Platform Functional Consultant preparation and CRM data management software.
Management, Ethics & Law50h • 4 ECTS
Governance, law and project context
Analytics professionals also need to understand the organisational, legal and ethical environment in which data is used.
25h2 ECTS
Data Laws & Regulations — Philosophies, Geopolitics & Ethics
Data privacy and security principles, EU and US regulation, and differences between common law and code law.
25h2 ECTS
IT Project Management: Traditional and Agile Approaches
Project management lifecycle and implementation using traditional and agile approaches.
Support & Professional Experience40h support • 30 ECTS experience
Consolidation and workplace application
The programme includes structured support and professional experience so that knowledge is consolidated and applied.
40h
Support Sessions
Reviewing course topics, answering student questions, re-explaining harder notions and preparing for examinations.
4 to 6 months30 ECTS
Integrated Professional Experience
Internship, employment or contracting experience validated through DSTI’s standard evaluation procedures.
05 — Professional certification
Professional certification with an employability signal.
MSc Data students must validate the Neo4j certification. A second approved certification is highly recommended and grants the “with Honours” distinction to graduates.
MSc Data rule
Neo4j is mandatory. Programme certifications are prepared inside the courses.
For Data Analytics, DSTI foregrounds certifications prepared through CRM data management, Power BI reporting, SAS visual statistics and AWS cloud computing. Other recognised certifications may be accepted only when Faculty and Direction of Studies validate their level and relevance.
MandatoryNeo4j certification for every MSc Data student.
With HonoursA second approved certification grants the “with Honours” graduate distinction.
Controlled alternativesAlternative certifications are accepted only after Faculty and Direction of Studies validation.
This list is not a free-for-all. Each alternative certification must be relevant to the student’s study route and career objectives, and remains subject to Faculty and Direction of Studies validation.
One DSTI programme, several ways to join the class.
DSTI was built around connected teaching. Students can study on campus, through Live Streamed access, or through the online asynchronous route when this mode fits their situation and eligibility.
Analytics becomes real when it is used in organisations.
The programme includes integrated professional experience. The route depends on where the student is based and what makes professional sense.
Primary route
Do a relevant internship where your professional project makes sense.
DSTI can support professional experience in France or abroad, subject to academic validation and programme rules. The work must be relevant to the learning outcomes.
Local internship
Your country or professional market
For many Live Streamed or international students, the best route is a relevant internship in their local job market.
Structured alternative
CRCC Asia option
Where relevant, DSTI may guide students towards a structured international internship option through CRCC Asia.
Students receive guidance on CVs, public profiles, applications and professional positioning.
Early professional steps
Analyst and BI roles
Typical first roles include Data Analyst, Business Intelligence Analyst, Reporting Analyst or CRM / Data Management Analyst, depending on the student’s background and internship project.
Progression path
Grow through delivered analytics work
With experience, graduates can move towards Analytics Consultant, Analytics Engineer, Data Product Analyst or team-level analytics responsibilities. The programme does not shortcut the need for proven delivery.
08 — Admissions
Selective admission, with a route for varied backgrounds.
The MSc in Data Analytics with AI is open to a wider range of Bachelor backgrounds than more specialised engineering routes, but mathematics, English and technical readiness still matter.
Eligibility
Bachelor degree or equivalent
Applicants should hold a recognised 3 or 4-year Bachelor degree or equivalent. Mathematics at high-school level or equivalent is expected.
Entry exam
Used when helpful
Applicants from less technical backgrounds may be asked to take DSTI’s online entry exam in mathematics and IT.
English
B2 minimum
Courses are delivered in English. IELTS 6.0, Duolingo 110 or equivalent evidence may be required.
IT requirements
Windows PC laptop
Students should have a Windows PC laptop with at least 16GB RAM, able to run the latest Windows version.
Direct entry into Year 2 +
Applicants who have completed, or are finishing, either a first year of a Master’s-level programme in the same area or a four-year Bachelor in the same area may request direct entry into Year 2. Direction of Studies decides on admission after a specific academic review.
Required common exams: Applied Mathematics; Foundations of Statistical Analysis — Part 1; Data Wrangling with SQL. Additional programme exam(s): Analysis & Design of Information Systems.
Analysis & Design of Information Systems
Exams are taken online on DSTI Learn with computer-vision enabled proctoring and Safe Exam Browser, within 30 days upon application.
A €50 supplemental examination fee is required and credited towards tuition fees upon admission. Direction of Studies looks at applicants achieving DSTI’s minimum pass grade of 60%.
International & Live Streamed students: 22nd January 2027
EU students: 12th March 2027
Induction: 25th March 2027
Classes start: 26th March 2027
Is Data Analytics with AI the right route for you?
If you are hesitating between Data Analytics, Data Engineering for AI and Data Science & AI, the key question is your centre of gravity: decision and implementation, platforms and pipelines, or modelling and AI systems.