Autoencoders: These models are used to reduce the complexity... - Deepstash

Autoencoders: These models are used to reduce the complexity of data and are commonly found in image compression applications.

6

27 reads

CURATED FROM

AI Models (T2)

AI Models (T2)

x.com

15 ideas

·

688 reads

IDEAS CURATED BY

booksucker

Web3 Tutor⛓️ Demo Trader🩺 Web3 Hacker In-view♟️ Dr. In-view🥋 Web2Web3 Researcher☯️ CowryWise & Bitget Ambassador🫂 SMM (GIDA)🕺 News Writer (DiutoCoinNews)🛡️ Cover Enthusiast🦯

I almost lost the contract to curate this.

Similar ideas

Compress your images

Compression is a process that strips away inessential data and file bytes while (mostly) preserving the quality of your image. 

2 types of compression:

  1. Lossy compression is the process of removing small bits from a JPEG or GIF file. It is irreverable. Image quali...

Bloom’s taxonomy of learning

It is a set of three lists used to classify educational learning objectives into levels of complexity and specificity. They concentrate specifically on learning objectives in the cognitive domain (knowledge-based), affective (emotion-based) and psychomotor domains (action...

Neutrality in AI

Neutrality in AI

True neutrality in language and image data is impossible.

If our text and image libraries are formed by and document sexism, systemic racism and violence, how can we expect to find neutrality in this data? We can’t.

If we use models that learn from Reddit with no...

Read & Learn

20x Faster

without
deepstash

with
deepstash

with

deepstash

Personalized microlearning

100+ Learning Journeys

Access to 200,000+ ideas

Access to the mobile app

Unlimited idea saving

Unlimited history

Unlimited listening to ideas

Downloading & offline access

Supercharge your mind with one idea per day

Enter your email and spend 1 minute every day to learn something new.

Email

I agree to receive email updates