Futures
Access hundreds of perpetual contracts
CFD
Gold
One platform for global traditional assets
Options
Hot
Trade European-style vanilla options
Unified Account
Maximize your capital efficiency
Demo Trading
Introduction to Futures Trading
Learn the basics of futures trading
Futures Events
Join events to earn rewards
Demo Trading
Use virtual funds to practice risk-free trading
CFD
Stock CFD Derivatives
US Stocks
Access real US stocks and ETFs
HK Stocks
Trade quality Hong Kong-listed stocks
Korean Stocks
SK Hynix
Real Korean stocks and top assets
Stock Futures
High leverage, 24/7 trading
Tokenized Stocks
Backed by real stock assets
IPO Access
Unlock full access to global stock IPOs
GUSD
3.8%
Mint GUSD for Treasury RWA yields
Stocks Activities
Trade Popular Stocks and Unlock Generous Airdrops
Launch
CandyDrop
Collect candies to earn airdrops
Launchpool
Quick staking, earn potential new tokens
HODLer Airdrop
Hold GT and get massive airdrops for free
IPO Access
Unlock full access to global stock IPOs
Alpha Points
Trade on-chain assets and earn airdrops
Futures Points
Earn futures points and claim airdrop rewards
Promotions
AI
Gate AI
Your all-in-one conversational AI partner
Gate AI Bot
Use Gate AI directly in your social App
GateClaw
Gate Blue Lobster, ready to go
Gate for AI Agent
AI infrastructure, Gate MCP, Skills, and CLI
Gate Skills Hub
10K+ Skills
From office tasks to trading, the all-in-one skill hub makes AI even more useful.
Spent more time thinking about what comes after the AI chip trade, and I think the market may be staring at an even bigger bottleneck: DATA
Not raw internet sludge or another database with an AI label slapped on it.
I mean clean, licensed, attributable and increasingly real-world data that models can legally train on and actually learn something new from.
Compute is still important, but it’s no longer the only scarce input.
Morgan Stanley sees around $2.9T to $3T of AI infrastructure spending through 2028, with less than 20% deployed so far.
There will be more #GPUs, more data centers, more power contracts and more inference efficiency.
What doesn’t automatically scale with them is fresh human knowledge and physical-world experience.
Physical AI data is even more expensive, embodiment-specific, hard to synthesize perfectly and impossible to scrape at sufficient depth.
The bottleneck is capturing the right event, with the right sensors, under the right rights, and proving where it came from.
Private markets already seem to understand this before public markets do.
– Scale AI was valued at nearly $29B after Meta’s $14.3B deal for a 49% stake.
– Surge AI did more than $1B in revenue in 2024 while seeking a $15B valuation.
So if a major catalyst is coming in TradFi, crypto may also have its leg in AI data collection and provenance.
– @eigencloud | $Eigen: EigenDA powers verifiable data availability, while EigenCompute, EigenAI and EigenVerify let agents prove where data came from and how outputs were generated.
– @grass | $Grass: turning idle bandwidth into verifiable AI training data. 2.5M+ nodes across 190+ countries scrape ~100TB/day, with ZK proofs making every dataset traceable and auditable.
– @vana | $Vana: attacking AI's data bottleneck by turning user data into permissioned, provable training datasets. 1M+ contributors, DataDAOs and portable AI memory all live on one network.
– @SaharaAI | $Sahara: AI-native L1 where contributors collect, label and own datasets while provenance, licensing and royalties stay onchain. Trying to make high-quality AI data scalable.
– @datafdn | $Data: provenance, consent, licensing and audit rails onchain, while the Poseidon layer cleans and labels real-world data for model training.
– @oceanprotocol | $Ocean: turning data into onchain assets with Data NFTs, Compute-to-Data and provenance rails so AI can train on private datasets without exposing the raw data.
– @origin_trail | $Trac: shipping DKG V10 where AI agents share verifiable memory. dRAG, provenance and multi-agent memory make data reusable without losing trust.
– @datainetwork: turning raw blockchain logs into structured, machine-readable intelligence. 3.5B+ txns indexed, 2.5M contracts labeled and 150M+ DeFi events for AI agents to reason on.
Not a call to ape every ticker above. Just a map of who's building the infra before the market prices them.