SLM
Supervised Learning Models learn from labeled data. For example, if you give them pictures labeled as Bitcoin and Ethereum, they will learn to distinguish between the two and identify them correctly.
ULM
Unsupervised Learning Models, on the other hand, don’t rely on labeled data. They find patterns in unorganized data, grouping similar objects together—like organizing pictures based on color or shape.
RLM
Reinforcement Learning Models learn by interacting with their environment and receiving rewards or penalties, similar to how a game AI might learn strategies through trial and error.
6
35 reads
CURATED FROM
IDEAS CURATED BY
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 to SLM x ULM x RLM
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.
I agree to receive email updates