RANDOM POSTs
-
Image-To_image A.I. NVIDIA Progressive growing of GANs for improved quality, stability, and variation
research.nvidia.com/sites/default/files/pubs/2017-10_Progressive-Growing-of/karras2018iclr-paper.pdf
-
Balance by Wolfgang Lauenstein and Christoph Lauenstein
Read more: Balance by Wolfgang Lauenstein and Christoph Lauensteinhttps://www.youtube.com/watch?v=YQ_LjjBgOM4
-
Meritocracy and the Peter Principle … or why some employees rise in the hierarchy through promotion until they reach the levels of their respective incompetence
Read more: Meritocracy and the Peter Principle … or why some employees rise in the hierarchy through promotion until they reach the levels of their respective incompetencehttps://www.investopedia.com/terms/p/peter-principle.asp
http://en.wikipedia.org/wiki/Peter_Principle
The Peter Principle is a special case of a ubiquitous observation: Anything that works will be used in progressively more challenging applications until it fails.
Applied to humans, the selection of a candidate for a position is based on their performance in their current role rather than on their abilities relevant to the intended role.
- The Peter Principle is an observation that the tendency in most organizational hierarchies, such as that of a corporation, is for every employee to rise in the hierarchy through promotion until they reach a level of respective incompetence.
- According to the Peter Principle, every position in a given hierarchy will eventually be filled by employees who are incompetent to fulfill the job duties of their respective positions.
- A possible solution to the problem posed by the Peter Principle is for companies to provide adequate skill training for employees receiving a promotion, and to ensure the training is appropriate for the position to which they have been promoted.
-
What is Neural Rendering?
Read more: What is Neural Rendering?https://www.zumolabs.ai/post/what-is-neural-rendering
“The key concept behind neural rendering approaches is that they are differentiable. A differentiable function is one whose derivative exists at each point in the domain. This is important because machine learning is basically the chain rule with extra steps: a differentiable rendering function can be learned with data, one gradient descent step at a time. Learning a rendering function statistically through data is fundamentally different from the classic rendering methods we described above, which calculate and extrapolate from the known laws of physics.”
COLLECTIONS
| Featured AI
| Design And Composition
| Explore posts
POPULAR SEARCHES
unreal | pipeline | virtual production | free | learn | photoshop | 360 | macro | google | nvidia | resolution | open source | hdri | real-time | photography basics | nuke
FEATURED POSTS
Social Links
DISCLAIMER – Links and images on this website may be protected by the respective owners’ copyright. All data submitted by users through this site shall be treated as freely available to share.
