Bless Geraldd

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Bless Geraldd

Bless Geraldd

@Generald27

WEB3 ENTHUSIAST | SWING TRADER | MEMECOIN GAMBLER | FILIPINO | KABATANG

Lungsod ng Batangas, Rehiyon n Sumali Ekim 2024
1.7K Sinusundan359 Mga Tagasunod
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Bless Geraldd
Bless Geraldd@Generald27·
$OFC will be the biggest airdrop project to launch this 2025 ⚽️🚀 Day 70th of claiming my balls @ofc_the_club Binance alpha ❌️ Kaito yapping ❌️ Community ✅️ Consistency is the key @chokmahxbt @dnns_eth @_viN040 GM onefootball fans ⚽️🚀
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evin
evin@provenauthority·
The internet was built for human users The dawn of agentic browsing creates a new challenge: what if your agent sees a totally different internet than you do? More ubiquitous user and agent verification now begs the question: what does it mean to verify content itself?
Alex Prompter@alex_prompter

🚨 BREAKING: Google DeepMind just mapped the attack surface that nobody in AI is talking about. Websites can already detect when an AI agent visits and serve it completely different content than humans see. > Hidden instructions in HTML. > Malicious commands in image pixels. > Jailbreaks embedded in PDFs. Your AI agent is being manipulated right now and you can't see it happening. The study is the largest empirical measurement of AI manipulation ever conducted. 502 real participants across 8 countries. 23 different attack types. Frontier models including GPT-4o, Claude, and Gemini. The core finding is not that manipulation is theoretically possible it is that manipulation is already happening at scale and the defenses that exist today fail in ways that are both predictable and invisible to the humans who deployed the agents. Google DeepMind built a taxonomy of every known attack vector, tested them systematically, and measured exactly how often they work. The results should alarm everyone building agentic systems. The attack surface is larger than anyone has publicly acknowledged. Prompt injection where malicious instructions hidden in web content hijack an agent's behavior works through at least a dozen distinct channels. Text hidden in HTML comments that humans never see but agents read and follow. Instructions embedded in image metadata. Commands encoded in the pixels of images using steganography, invisible to human eyes but readable by vision-capable models. Malicious content in PDFs that appears as normal document text to the agent but contains override instructions. QR codes that redirect agents to attacker-controlled content. Indirect injection through search results, calendar invites, email bodies, and API responses any data source the agent consumes becomes a potential attack vector. The detection asymmetry is the finding that closes the escape hatch. Websites can already fingerprint AI agents with high reliability using timing analysis, behavioral patterns, and user-agent strings. This means the attack can be conditional: serve normal content to humans, serve manipulated content to agents. A user who asks their AI agent to book a flight, research a product, or summarize a document has no way to verify that the content the agent received matches what a human would see. The agent cannot tell the user it was served different content. It does not know. It processes whatever it receives and acts accordingly. The attack categories and what they enable: → Direct prompt injection: malicious instructions in any text the agent reads overrides goals, exfiltrates data, triggers unintended actions → Indirect injection via web content: hidden HTML, CSS visibility tricks, white text on white backgrounds invisible to humans, consumed by agents → Multimodal injection: commands in image pixels via steganography, instructions in image alt-text and metadata → Document injection: PDF content, spreadsheet cells, presentation speaker notes every file format is a potential vector → Environment manipulation: fake UI elements rendered only for agent vision models, misleading CAPTCHA-style challenges → Jailbreak embedding: safety bypass instructions hidden inside otherwise legitimate-looking content → Memory poisoning: injecting false information into agent memory systems that persists across sessions → Goal hijacking: gradual instruction drift across multiple interactions that redirects agent objectives without triggering safety filters → Exfiltration attacks: agents tricked into sending user data to attacker-controlled endpoints via legitimate-looking API calls → Cross-agent injection: compromised agents injecting malicious instructions into other agents in multi-agent pipelines The defense landscape is the most sobering part of the report. Input sanitization cleaning content before the agent processes it fails because the attack surface is too large and too varied. You cannot sanitize image pixels. You cannot reliably detect steganographic content at inference time. Prompt-level defenses that tell agents to ignore suspicious instructions fail because the injected content is designed to look legitimate. Sandboxing reduces the blast radius but does not prevent the injection itself. Human oversight the most commonly cited mitigation fails at the scale and speed at which agentic systems operate. A user who deploys an agent to browse 50 websites and summarize findings cannot review every page the agent visited for hidden instructions. The multi-agent cascade risk is where this becomes a systemic problem. In a pipeline where Agent A retrieves web content, Agent B processes it, and Agent C executes actions, a successful injection into Agent A's data feed propagates through the entire system. Agent B has no reason to distrust content that came from Agent A. Agent C has no reason to distrust instructions that came from Agent B. The injected command travels through the pipeline with the same trust level as legitimate instructions. Google DeepMind documents this explicitly: the attack does not need to compromise the model. It needs to compromise the data the model consumes. Every agentic system that reads external content is one carefully crafted webpage away from executing attacker instructions. The agents are already deployed. The attack infrastructure is already being built. The defenses are not ready.

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safdar sulehry
safdar sulehry@safdarsulehry55·
@chokmahxbt Hey @ofc_the_club 👋 I had 31K BALLS (as shown), but on Megaphone my points are much lower. Because of this, my ranking dropped — otherwise I’d be under 25K. Please check and fix 🙏
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Chokmah
Chokmah@chokmahxbt·
Fully transparent distribution sheet! $OFC supercycle
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OneFootball Club
OneFootball Club@ofc_the_club·
To clarify: 1️⃣ The ⚽️ BALLS leaderboard is not the final ranking. After filtering out bots/sybil activity, good chance you qualify ranked 25K+. 2️⃣ We’re building for the long term. Every participant will receive the hidden FanPass multiplier for future drops. 3️⃣-4️⃣ 👇
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Smolder
Smolder@Smolder_AR·
Will it be a listing date reveal...? 👀 3 of 4 🐣🐣🐣 🥚 hatched which was teased by @billions_ntwk recently 1. Nexa 2. Agents 3. Community 4. 🟦...feels like the real unlock? Possibly a reveal related @coinbase @base
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Paola
Paola@Paola1371385·
GM billionaires ☀️ I’m in love with @billions_ntwk Supermasks. This pyjama is pure beauty, I really love it. By the way… new amazing content is coming later 👀 I’m working on a design you’re going to love. Are you ready? 🔥
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Crypto Sunny
Crypto Sunny@Crypto_SunnyS·
Hello @ofc_the_club Team, Team : @_viN040 and @dnns_eth I’m writing this on behalf of the community regarding the recently shared airdrop plan. While the initiative itself is appreciated, the current structure doesn’t feel fully aligned with a community first approach. ⚠️Core concern Limiting rewards to only the top 25K users with 20% of the total supply leaves a large portion of active contributors unrecognized. Suggested expansion Increase the reward range to at least the top 100K users (or Minimum up to 75K). This will make the distribution more inclusive and better reflect overall community effort behind the project’s growth. -- 💡Reward reallocation Top ranks are receiving disproportionately high allocations. For example, my current rank is #1 with 100K tokens, which is more than necessary. You can Cut my Share of Reward by 75% i am ok with it as i am at #1 Because of my Community Similarly, adjusting rewards for other top ranks by around 50% (or more) would free up a significant portion of tokens. These can then be redistributed to include a larger number of users without increasing the overall allocation. Community alignment 🤝 Top rankings are driven by community support. A wider distribution ensures fairness and strengthens trust across the ecosystem. -- ⏳ Vesting Improvement Suggestion The current vesting model can be improved to make it more fair and user-friendly. A better approach could be: • 60% tokens unlocked at TGE • 40% vested over 9 months This gives users meaningful immediate value while still encouraging long-term holding. ⚠️ Also important: • Claims should open at TGE, not 2 weeks later • Delayed claiming feels unfair, especially for active early users A smoother, more transparent process will build stronger trust in the community. Expected impact These changes would: • Improve fairness and inclusivity • Boost community sentiment • Increase long-term engagement and retention We strongly believe these adjustments will create a more community-first and sustainable distribution model. Looking forward to your consideration.
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Chokmah
Chokmah@chokmahxbt·
OneFootball Club is building a fun and exciting ecosystem An ecosystem where genuine football fans get rewarded for their passion and fandom experience mission powered by $OFC
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Chokmah
Chokmah@chokmahxbt·
@thatday4081 The airdrop is for 25K+ eligible participants NOT top 25K.
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Chokmah
Chokmah@chokmahxbt·
Welcome to OneFootball Predict Money 2.0
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Maisha ( KOMA )
Maisha ( KOMA )@maisha_anj63027·
OFC TGE Near.. What Is Your Ranking on Leaderboard.
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OneFootball Club
OneFootball Club@ofc_the_club·
OFC announces $OFC FanPass Airdrop 🪂 Mega-thread & FAQ 👇
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Redss
Redss@explicitverbs·
@chokmahxbt if im not eligible please refund my fee badge
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