Dodatkowe przykłady dopasowywane są do haseł w zautomatyzowany sposób - nie gwarantujemy ich poprawności.

How can computer games offer deep learning and still be fun?

If he doesn't bring deep learning to the rest of world, someone else will.

Those that are good at deep learning today will only get better.

Deep learning worked in large part because the brain works.

A deep learning approach can be encouraged in other ways.

English at the school has had deeper learning since 1954.

The company's deep learning research lab has been working on this project since 2013.

It is the first step from shallow to deep learning.

In between is the deep learning that you, as teacher, help to facilitate.

But as it turns out, they're also well suited to deep learning.

Deep learning must occur if this goal is to be realised.

In other words, deep learning is nowhere close to reaching its potential.

Figure 1 (below) shows the main elements needed to achieve deep learning.

Certainly earlier research indicates higher scores on Deep learning with increasing age.

For example, how are you to explain the decision making process of a deep learning black box algorithm?

In the main, teaching approaches encouraged independent and deep learning.

At the moment, the press has heaped a huge amount of attention on deep learning.

Most recently, the field has benefited from advances in deep learning and big data.

It says this will encourage deeper learning and less "teaching to the test."

We need to move deep learning to the data that already lives in Hadoop.

And the community of researchers who excel at deep learning is relatively small.

Foster the capacity of students to develop deep learning strategies throughout their studies.

Deep learning won't stop at self-driving cars and natural language understanding.

Deep learning has little association with good academic results.

Conversely, the fourth year students have a higher deep learning strategy score.

Deep learning (deep structured learning, hierarchical learning or deep machine learning) is a branch of machine learning based on a set of algorithms that attempt to model high-level abstractions in data by using multiple processing layers with complex structures, or otherwise composed of multiple non-linear transformations.

Hierarchical learning models were rapidly changing and I consider myself fortunate to have had this experience.

The theory proposes multilayered hierarchical learning architecture, similar to that of visual cortex.

A theory of hierarchical learning mechanisms, named practopoiesis, may be able to provide a conceptual bridge between biological and artificial intelligence.

Hence, more tailor-made language design can be adopted; examples include awareness raising teaching method and hierarchical learning teaching curriculum.

Results show more efficient learning was attained by concurrently implementing shaping with hierarchical learning for a non-linear system.

HKFN (Hierarchical learning algorithm for Kohonen networks with Fixed Neighbourhood) is a variant of Kohonen's algorithm.

In addition to classic algorithmic control, increased levels of control sophistication such as hierarchical learning, adaptive control, neural networks and multiple robot collaboration are pursued to increase the level of machine intelligence.

Deep learning (deep structured learning, hierarchical learning or deep machine learning) is a branch of machine learning based on a set of algorithms that attempt to model high-level abstractions in data by using multiple processing layers with complex structures, or otherwise composed of multiple non-linear transformations.