Join this free online course to learn about how machine learning can be applied to solve business problems. After taking this course, participants should be aware of recent advances in machine learning, understand the basic concepts involved and how business problems can be solved with machine learning. The course gives guidelines on how to formulate a business problem as a machine learning problem. Video subtitles for this course are available in Spanish, Portuguese, German, French, and English. This course belongs to the [Digital Transformation track][1]. [1]: https://open.sap.com/dtc
Mode autodidacte
Langue: English

Informations sur le cours

Course Summary

Machine learning enables computers to learn from large amounts of data without being explicitly programmed to do so. We can already see how machine learning gives rise to new intelligent applications, from self-driving cars to intelligent assistants on our smartphones.

Increasingly, businesses recognize the importance of using machine learning to transform their data assets into business value. However, many companies are unsure how machine learning can be applied to solve problems in an enterprise context. As the world’s most relevant enterprise data is part of SAP’s system and business network, SAP aspires to make all its enterprise solutions intelligent and help customers to leverage their data.

The objective of this course is to help business decision makers understand the significance of machine learning for enterprise computing. After taking this course, participants should be aware of recent advances in machine learning, have an understanding of the basic concepts involved and how business problems can be solved with machine learning. In particular, the course gives guidelines on how to formulate a business problem as a machine learning problem. This course is mainly aimed at a business audience. In the meantime, we are working on another machine learning course for a developer audience, and expect this course to be available next year.

Video subtitles for this course are available in Spanish, Portuguese, German, French, and English.

Course Characteristics

  • Starting from: November 21, 2017, 09:00 UTC. (What does this mean?)
  • Duration: The course is open for 4 weeks
  • Effort: 2-3 hours in total
  • Course assignment: You can take the course assignment at any time whilst the course is open.
  • Course closure: December 20, 2017, 09:00 UTC
  • Course language: English, with video subtitles available in Spanish, Portuguese, German, and French.
  • How is an openSAP course structured?

Course Content

Unit 1: Intelligent Applications Powered by Machine Learning
Unit 2: What Is Machine Learning?
Unit 3: From Business Problem to Machine Learning: A Recipe
Unit 4: Machine Learning in Enterprise Computing
Unit 5: Application Example: Natural Language Processing
Unit 6: Application Example: Computer Vision
Unit 7: Key Takeaways

Target Audience

  • Solution managers
  • Executive managers

Previous Version of This Course:

Enterprise Machine Learning in a Nutshell (November 14 through December 20, 2016)

Contenu du cours

  • Course

  • I Like, I Wish:

    We Love Your Feedback … And Want More

Reactivate this course

You can access all graded assignments and earn a Record of Achievement with openSAP, course reactivation option. Learn more or reactivate now!

Inscrivez-moi à ce cours

Le cours est en accès libre. Créez votre compte et suivez le cours sur openSAP.
Inscrivez-moi maintenant

Ce cours a eu lieu du 21 nov. 2017 au 20 déc. 2017.

3397 apprenants étaient inscrits le jour 1 du cours.

Lorsque l'examen final était terminé, ce nombre avait augmenté à 8111.

18093 apprenants sont actuellement inscrits.

Certificate Requirements

  • Obtenez un certificat de réussite en gagnant plus de 50% du nombre maximal de points pour la somme de toutes les tâches hebdomadaires.
  • Obtenez une attestation de participation en complétant au moins 50% du matériel du cours.

En savoir plus lisez les lignes directrices pour le certificat.

Ce cours est offert par

Daniel Dahlmeier

Dr. Daniel Dahlmeier is a development manager at the SAP Innovation Center Network and head of Machine Learning for Sales and Service at SAP. Daniel leads teams building machine learning services for SAP’s Customer Engagement and Commerce applications.

Before joining SAP, Daniel was doing research in natural language processing at the National University of Singapore. He enjoys building state-of-the-art technology to solve real-world problems.

Markus Noga

Dr. Markus Noga is head of SAP Leonardo Machine Learning, where he leads teams building machine learning, conversational AI, intelligent robotic process automation, and data intelligence capabilities for the SAP portfolio of products. ​

Prior to this, Markus was VP for New Business & Portfolio, where he drove the launch of SAP HANA Enterprise Cloud and the continuous renewal of SAP’s global R&D portfolio. He has also worked as a director in the Corporate Strategy Group. ​

Before joining SAP, Markus was a principal with management consultancy Booz & Company. He holds a PhD in Computer Science from University of Karlsruhe, where he focused on the optimization of document processing.

Votre demande a bien été envoyé à notre service d'assistance, et sera répondu dès que possible.

Merci!

Oops quelque chose allait mal.

Arrière