Is it possible to be better than Goggle?
Try Entireweb a NEW and FREE search Engine > https://bit.ly/3kl2xUQ
Try it in a few seconds and tell me if is truly better than Goggle?
Aufgabenstellung
Welches Problem soll die Kommunikation lösen?
Nutzen
Zielgruppe und Zielsetzung
Erwünschte Verbraucherreaktion
Positionierung und Kernbotschaft
Markenwerte und Tonalität
Timing und Budget
SCOR supports to manage and improve the supply chain through a standardized language, standardized metrics, and common business practices which accelerate business change and improves performance.
The SCOR Walkthrough course is designed to provide a comprehensive overview of the SCOR methodology and give practical knowledge on how to implement SCOR in your organization to optimize your companies’ operational performance.
Is it possible to be better than Goggle?
Try Entireweb a NEW and FREE search Engine > https://bit.ly/3kl2xUQ
Try it in a few seconds and tell me if is truly better than Goggle?
Aufgabenstellung
Welches Problem soll die Kommunikation lösen?
Nutzen
Zielgruppe und Zielsetzung
Erwünschte Verbraucherreaktion
Positionierung und Kernbotschaft
Markenwerte und Tonalität
Timing und Budget
SCOR supports to manage and improve the supply chain through a standardized language, standardized metrics, and common business practices which accelerate business change and improves performance.
The SCOR Walkthrough course is designed to provide a comprehensive overview of the SCOR methodology and give practical knowledge on how to implement SCOR in your organization to optimize your companies’ operational performance.
Diagnosing Cancer with Machine LearningSimon van Dyk
Computational intelligence is the art of building artificial intelligence with software. We’ve all reached for metaphors and stories to explain and model difficult concepts in OOP. Join me on a journey through some of the metaphors used to achieve intelligent behaviour. We will explore the inner workings of a neural network and a training algorithm, and show how to build a classifier to predict a cancer diagnosis with high accuracy. Lastly we'll discuss a non-deterministic way of thinking about software, and what the impact could be for what we believe are intelligent machines.
Check out the demo here: https://intelligence-rubyfuza2015.herokuapp.com/
Diagnosing Cancer with Machine LearningSimon van Dyk
Computational intelligence is the art of building artificial intelligence with software. We’ve all reached for metaphors and stories to explain and model difficult concepts in OOP. Join me on a journey through some of the metaphors used to achieve intelligent behaviour. We will explore the inner workings of a neural network and a training algorithm, and show how to build a classifier to predict a cancer diagnosis with high accuracy. Lastly we'll discuss a non-deterministic way of thinking about software, and what the impact could be for what we believe are intelligent machines.
Check out the demo here: https://intelligence-rubyfuza2015.herokuapp.com/
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