Futures
Access hundreds of perpetual contracts
TradFi
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
Launch
CandyDrop
Collect candies to earn airdrops
Launchpool
Quick staking, earn potential new tokens
HODLer Airdrop
Hold GT and get massive airdrops for free
Launchpad
Be early to the next big token project
Alpha Points
Trade on-chain assets and earn airdrops
Futures Points
Earn futures points and claim airdrop rewards
Enterprise AI Adoption: Here’s Google’s Winning Strategy
Enterprise AI adoption is accelerating faster than any previous technological revolution.
The decisive factor is trust: security, governance, and strategy must evolve alongside AI. Successful companies combine a focus on a few high-impact use cases with widespread dissemination of AI skills throughout the organization.
What is enterprise AI adoption really (and why is it different today)
Enterprise AI adoption refers to the systematic integration of artificial intelligence into core business processes, with goals of efficiency, innovation, and competitive advantage.
At the HUMAN X Conference, Francis deSouza (Google Cloud) and Sharon Goldman highlighted a key point: this AI wave is different from all previous ones.
Why?
Faster adoption compared to cloud, mobile, and web
Quick transition from pilot to production
Involvement of large companies and regulated sectors
Concrete examples include organizations like Mayo Clinic and Seattle Children’s Hospital, already in production with AI solutions.
In summary: AI is no longer experimentation. It is strategic infrastructure.
Why trust is the real accelerator of AI
Question: Why is security central to AI?
Answer: Because every conversation about AI immediately becomes a conversation about trust.
According to deSouza, companies focus on three critical areas:
AI radically changes the threat landscape:
new actors (even unsophisticated ones)
automated attacks
advanced deepfake and phishing
AI introduces new assets to protect:
models
agents
data
This means that even “forgotten” systems (e.g., old servers) become vulnerable because AI agents can discover them.
Completely new technologies are needed:
deepfake detection
defense against agentic attacks
continuous monitoring
The most important thing is: security cannot be added later. It must be designed from the start.
Enterprise AI adoption: the problem of the gap between potential and reality
Many companies perceive a gap between AI capabilities and actual adoption.
Question: Why is it so difficult to adopt AI in a company?
Answer: Because two parallel strategies are needed:
AI strategy
security strategy
And they must advance at the same pace.
This creates organizational, technological, and cultural complexity.
The AI-driven cybersecurity revolution
One of the strongest insights from the HUMAN X Conference concerns the transformation of security.
From human-led to agent-led
The model is evolving as follows:
Human defense
Human-in-the-loop
Agentic defense (AI-led)
This means that:
attacks occur at machine speed
defenses must be equally rapid
A striking fact: the transition between phases of an attack can occur in 20 seconds.
Practical implications
Companies are introducing:
agents for penetration testing
agents for threat detection
agents for incident response
The human role becomes that of orchestrator.
The winning strategy: focus + dissemination
One of the most concrete contributions from Google Cloud concerns the operating model.
The “5–7 use case” framework
The most effective companies:
identify 5–7 strategic use cases
drive them top-down
measure ROI
Those who try to adopt AI everywhere often fail.
“A thousand blooming flowers become a thousand dead flowers.”
But beware: dissemination is also needed
In parallel, it is essential to:
give AI access to all employees
encourage experimentation
develop widespread skills
This means that: the future of work will be “bilingual”:
functional competence
AI competence
Concrete examples of AI in business (Google)
The “Google on Google AI” initiative shows real applications:
over 50% of code generated with AI
automated customer support
financial optimization (millions of dollars in benefits)
supply chain and logistics
compliance
Key insight: AI creates cross-sectional value, not just technical.
Healthcare: the most transformative case
The healthcare sector emerges as one of the most advanced.
Applications:
diagnosis of genetic diseases
drug repurposing
discovery of new therapeutic targets
reduction of administrative burden
Real impact: more time for patients, less bureaucracy.
Future trends in enterprise AI adoption
Looking ahead, three directions emerge:
AI as universal infrastructure
AI-native security
Augmented workforce
Every role will be supported by intelligent agents.
In summary: it is not a technological upgrade, but a re-foundation of the enterprise.
The final advice for leaders and companies
The concluding message is clear and operational:
Use AI personally
There is no substitute for direct experience.
Focus on a few objectives
Choose initiatives that “really move the needle.”
This means that: exploration and discipline must coexist.
FAQ – Enterprise AI adoption
What is enterprise AI adoption?
It is the strategic integration of artificial intelligence into business processes to improve efficiency, decisions, and innovation.
Why is security fundamental in AI?
Because AI introduces new risks, attack surfaces, and automated threats. Without trust, adoption stalls.
How many AI use cases should a company have?
The most effective companies focus on 5–7 high-impact use cases, avoiding dispersion.
Will AI replace security teams?
No. It will transform them. Humans will coordinate AI systems that operate at machine speed.
Conclusion
Enterprise AI adoption is not just a technological issue. It is a strategic challenge that requires:
trust
security
focus
culture
Companies that can balance these elements will lead the next digital era.
Source: HUMAN X Conference insights
For further reading, also consult the World Quality Report 2025.