paint-brush
Why Deep Learning Is Still Too Difficultby@alexdeterminedai
309 reads
309 reads

Why Deep Learning Is Still Too Difficult

by determined ai6mSeptember 7th, 2020
Read on Terminal Reader
Read this story w/o Javascript
tldt arrow

Too Long; Didn't Read

The core concepts underlying even the latest deep learning models can be traced back to the early ‘70s when the first artificial neural networks were born. In the last few years, there has been an exponential growth of ML-related papers on Arxiv (nearly 100 new papers/day!) [1] Building practical applications powered by deep learning remains to be too expensive and too difficult for many organizations. We will also explain how those challenges differ from those of traditional machine learning systems.

Companies Mentioned

Mention Thumbnail
Mention Thumbnail

Coin Mentioned

Mention Thumbnail
featured image - Why Deep Learning Is Still Too Difficult
determined ai HackerNoon profile picture
determined ai

determined ai

@alexdeterminedai

deep learning, not devops.

Learn More
LEARN MORE ABOUT @ALEXDETERMINEDAI'S
EXPERTISE AND PLACE ON THE INTERNET.
L O A D I N G
. . . comments & more!

About Author

determined ai HackerNoon profile picture
determined ai@alexdeterminedai
deep learning, not devops.

TOPICS

THIS ARTICLE WAS FEATURED IN...

Permanent on Arweave
Read on Terminal Reader
Read this story in a terminal
 Terminal
Read this story w/o Javascript
Read this story w/o Javascript
 Lite
Papasearch
Learnrepo
Aiforbeginners