Apprentissage maîtrisé

Make big data manageable!

Machine learning (ML) is a branch of artificial intelligence. By Recognizing patterns in existing databases, IT system are able to find solutions to problems independently.

Prototypes et démonstrateurs présents
Utilisation transsectorielle
Les PME sont-elles adaptées?

The current status

A large number of machine learning implementation and development projects can currently be found. The deep learning sub-category in particular brings numerous new developments, e.g. in the areas of facial and speech recognition.

IF you would like to start your own development project, we recommend using the Python programming language. The open source availability of numerous programming libraries such as TensorFlow from Google, scikit-learn or Theano enables the rapid integration and utilization of machine learning techniques.

Recognizing patterns in large amounts of data requires both high storage capacity and advanced knowledge in the field of machine learning (Reognizing patterns in large amounts of data requires both high storage capacity and advanced knowledge in the field of machine learning). Nuage (Amazon, IBM, Google, Microsoft, etc.) now offer pattern recognition as «machine learning as a service» within their platforms.

Technologie et utilisation

Description de la technologie

AS the fourth industrial révolution progresses, more and more company and process-related data is being collected. The evaluation and assessment of these is therefore becoming increasingly difficult for people to. Based on existing databases, machine learning is used to identify regularities and patterns within the structures and thus enables the development of solutions and conclusions.

The subcategory of deep leaning donc describes a method for generating artificial networks. These are modeled on a human brain in terms of their function and structure. By reading large data sets, important features can be automatically extracted and classified. Évaluation intelligente et prédictions are therefore possible.

Image: Based on Towards Data Science

Application éventuelle scenarios

There are currently numerous applications relating to machine learning. Machine learning can be used wherever large amounts of data need to be analyzed and searched for patterns (Machine learning can be used wherever large amounts of data need to be analyzed and searched for patterns).

Dans everyday life, the best-known applications are probably the recommendation services of Amazon and Netflix, the sorting of spam emails, voice recognition (Siri, Cortana) ou facial recognition (Facebook).

In the production environment, machine learning can donc used in the areas of quality assurance, customer satisfaction, autonomous systems and predictive maintenance.

There are donc are initial areas of application in the office environment. With Chatbots you can, for example conduct communication. You can make inquiries and receive corresponding information, recommendations for action or suggested solutions.

Introduction STEP-by-step

Opportunités pour les PME

Recognition of complex relationships

Greater efficiency

Identification du potentiel d’optimisation

Prédictions de Making

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