Choosing the right AI model
The popularity of AI (Artificial Intelligence) systems is growing in leaps and bounds. Businesses around the world are starting to understand how these systems can benefit them, but AI is not yet at the stage where you can simply take it out of the box and expect it to perform. AI systems require training, which is where AI models come into the equation.
An “AI model” is an algorithm that is taught using data and input from a human expert. The model is evaluated on its accuracy by comparing the results it provides against the decisions made by the human expert. This often requires the algorithm to review a significant amount of data. In addition, by accessing data from multiple sources, the model is better able to find patterns which it can use to further streamline its analysis. The model is attempting to replicate the decision process of a team of experts with access to the same data.
Read moreArtificial Intelligence in Germany
Artificial intelligence is changing the world. There is no doubt about it. Self-learning algorithms are now being developed all over the world and an increasing number of economies are focusing on promoting AI development at a domestic level. Machine learning benefits mankind all over the world – individual countries profit from it. But what is the current status of artificial intelligence in Germany? Can German AI development compete on an international level? And what about state subsidies?
Read moreTypes and Importance of AI Training Data
1997 was a pivotal year in the world of Artificial Intelligence (AI) as it was the first time a machine managed to defeat a world champion in chess. Deep Blue was an IBM Supercomputer and, after losing to Garry Kasparov 4-2 in 1996, had learned and improved and came back to defeat him in 1997 after a hard-fought battle.
Machine learning (ML) and AI use complicated algorithms to learn and process information. These algorithms mimic the human brain, and just like a human child learns, they can also be taught through data and experience.
Read moreSEO & AI: Top Google position with automatically written text?
It is every website operator’s dream. Enter a keyword into a computer and within seconds it will write as many relevant SEO texts as you need. But how advanced is artificial intelligence (AI) really when it comes to writing? Can it produce perfect, search engine optimized texts?
Read moreWhat are the benefits of artificial intelligence (AI) for the environment? – Seven astonishing insights
Will AI-driven cars save the roads from a total gridlock? Can artificial intelligence help live a more resource-efficient life? Will artificial intelligence make the supply of energy easy to achieve? We provide insight into seven AI and the environment questions.
Read moreCognitive Computing – Hype or Progress?
First, there was artificial intelligence, then the terms machine learning and deep learning followed. And now there is cognitive computing. What’s so special about this new concept? Is it just a new buzzword from the IT scene that can be exploited for marketing purposes? Or is it a new approach that brings machines one step closer to human thinking?
Read moreWhat is AI really capable of? Dispelling Eight Myths about Artificial Intelligence
The world of fairy tales should be a matter of movies and books, but when it comes to artificial intelligence, dubious “AI” companies and ill-informed bloggers become veritable fabulists. The truth is that AI will change the working world, but many statements about artificial intelligence definitely belong in the realm of myths and fairy tales.
Read moreIs Google Misogynistic?
Is Google misogynistic? The ranking for certain keywords certainly provides grounds for this suspicion. However, the phenomenon of unequal treatment isn’t really the fault of the algorithms but is a fundamental problem with the German language. And those who want to can ensure for themselves that the results list is free from discrimination.
Read moreRealistic training data for machine learning
Data are the foundation for training algorithms. The more realistic the data, the better the results. This is because artificial intelligence is based on precise and reliable information for training its algorithms. This is obvious but it is often overlooked. The training data are realistic when they reflect the data that the AI system gathers in real operation. Unrealistic data sets prevent machine learning and lead to expensive false interpretations.
Read moreTraining data for AI: There is more to it than quantity
Artificial intelligence is being used in an increasing number of areas of application. Machines require large amounts of data to perform similarly to human beings. Quantity is what counts. That makes sense, in particular when addressing challenging problems and complex issues. However, the quality of the data is also significant – especially for training data that is used in machine learning. With this information the algorithms can develop themselves and machines learn how to learn.
Read more