According to the latest IDC report "Unlocking the Future of Data Security: Confidential Computing as a Strategic Imperative," #Confidential #Computing is no longer a technology for the elite and is becoming a key element of modern security and #trust strategies.
Already 75 percent of organizations are testing or using Confidential Computing, with another 19 percent planning deployment within the next 24 months. This indicates the #technology's transition to mainstream adoption.
Public #clouds lead in adoption (71 percent), but hybrid and on-premises solutions are growing (45 percent and 36 percent) due to #data #sovereignty requirements.
IDC highlights three key benefits:
🔹 data integrity — 88 percent
🔹 confidentiality — 73 percent
🔹 compliance — 68 percent
This is critical for #AI and #ML workloads.
Confidential Computing enables secure #multiparty #collaboration, protected AI workflows, and data #clean #rooms for multi-partner analytics.
The main implementation barriers are attestation validation, skills gap, and perception as niche technology.
Today, Confidential Computing is becoming the standard for #protecting #data in use, on par with #encryption at rest and in #transit. It forms the foundation for secure #AI #ecosystems and #compliance.
👉 Full report:
🔗 https://bit.ly/3Y0NzHS
#ConfidentialComputing #TEE #AI #DataSecurity
Already 75 percent of organizations are testing or using Confidential Computing, with another 19 percent planning deployment within the next 24 months. This indicates the #technology's transition to mainstream adoption.
Public #clouds lead in adoption (71 percent), but hybrid and on-premises solutions are growing (45 percent and 36 percent) due to #data #sovereignty requirements.
IDC highlights three key benefits:
🔹 data integrity — 88 percent
🔹 confidentiality — 73 percent
🔹 compliance — 68 percent
This is critical for #AI and #ML workloads.
Confidential Computing enables secure #multiparty #collaboration, protected AI workflows, and data #clean #rooms for multi-partner analytics.
The main implementation barriers are attestation validation, skills gap, and perception as niche technology.
Today, Confidential Computing is becoming the standard for #protecting #data in use, on par with #encryption at rest and in #transit. It forms the foundation for secure #AI #ecosystems and #compliance.
👉 Full report:
🔗 https://bit.ly/3Y0NzHS
#ConfidentialComputing #TEE #AI #DataSecurity
🔥13👍4❤3🏆3💯2
a16z and OpenRouter, released a unique study on real-world #LLM usage. They analyzed over 100 trillion tokens of live production traffic over a year.
OpenRouter is a unified #API for hundreds of LLM models from #OpenAI, #Anthropic, #Google, #DeepSeek, #Qwen, and others. It handles a massive stream of developer requests, providing an honest picture of practical #AI usage.
The most unexpected finding: more than half of open-source model usage goes to role-playing games and storytelling. Not coding or work tasks, but chatting with characters and creating stories. The trillion-dollar industry largely relies on conversations with virtual friends.
Open-source models now hold about 30 percent of the market. A year ago it was under 10. DeepSeek and Qwen are growing especially fast.
Programming is the second largest use case by volume. #Claude from #Anthropic leads among proprietary #models for coding (60 percent+ among closed models), despite the premium price.
Half of all tokens now pass through reasoning models. Models think, plan, and use tools.
Asia grew from 13 to 31 percent of traffic. China became the largest consumer after the US.
Price has little impact on demand. Users pay premium for quality. The first model to perfectly solve a task captures loyalty forever, the "glass slipper" effect.
Small models are losing share. Medium models (15-70 billion parameters) offer the best price-quality balance.
The full 36-page report is essential for anyone building AI products and infrastructure.
🔗 https://openrouter.ai/assets/State-of-AI.pdf
#AI #LLM #OpenRouter #a16z
OpenRouter is a unified #API for hundreds of LLM models from #OpenAI, #Anthropic, #Google, #DeepSeek, #Qwen, and others. It handles a massive stream of developer requests, providing an honest picture of practical #AI usage.
The most unexpected finding: more than half of open-source model usage goes to role-playing games and storytelling. Not coding or work tasks, but chatting with characters and creating stories. The trillion-dollar industry largely relies on conversations with virtual friends.
Open-source models now hold about 30 percent of the market. A year ago it was under 10. DeepSeek and Qwen are growing especially fast.
Programming is the second largest use case by volume. #Claude from #Anthropic leads among proprietary #models for coding (60 percent+ among closed models), despite the premium price.
Half of all tokens now pass through reasoning models. Models think, plan, and use tools.
Asia grew from 13 to 31 percent of traffic. China became the largest consumer after the US.
Price has little impact on demand. Users pay premium for quality. The first model to perfectly solve a task captures loyalty forever, the "glass slipper" effect.
Small models are losing share. Medium models (15-70 billion parameters) offer the best price-quality balance.
The full 36-page report is essential for anyone building AI products and infrastructure.
🔗 https://openrouter.ai/assets/State-of-AI.pdf
#AI #LLM #OpenRouter #a16z
👍10❤6🔥6☃2
And once again "Behind the Code" with me, Nukri Basharuli, founder of Super Protocol. Let's zoom in on our vector for the next six months: narratives and focus. We're not chasing guides or deep #tech dives. We're mapping the geological shifts in #confidential #computing and #decentralized #AI. Today, I'll share where Super Protocol is heading to dominate this space.
In 2025, we laid the foundation. We pushed #Web3 hard, partnering with funds, building recognition, creating buzz that still echoes in Web3 companies. #Web2 advanced too, within our resources. But 2025 was sharper than 2024. We knew exactly what we were building.
The coming 2026 demands hyper-focus: large-scale projects that amplify us 10x, 100x. Organic growth won't cut it. My bet? A marquee investor, partner, or industry titan. Secure the round, fuel the strategy. #Web2 #business fits better here. Web3 feels exhausted (beyond BTC, ETH, Ripple, stablecoins; the rest is just noise without real business). Yet Web3 evolves: the bubble bursts, real-economy players enter, #tokenization drives #decentralization.
So what's Super Protocol's vector? Real economic sectors at the intersection of #decentralization, #crypto, and #AI. With our resources, we'll anchor 1-2 traction vectors, client pipelines for revenue and cashflow, while hunting a massive domain win. We're in top-tier Silicon Valley talks right now on decentralized, high-performance confidential computing. Domains primed to explode: #defense, #transport, #public #infrastructure. Our infrastructure isn't #viral #apps; it's #scalable, #trustless #enclaves.
Our strategy: Build market demand for #confidential #services or become the #industry standard. Recall how Google elevated Android above rivals or OpenAI claimed AI's throne. We need a transformative partner for whom #confidentiality isn't just a feature, but an industry rewire. Venture thrives on big numbers: trillion-scale impact, not kitchen experiments.
This is our story and my vision. Super Protocol powers the shift from vulnerable centralized #clouds to ownerless, #verifiable #compute. We're pioneers because #GPUs for confidential #AI matured just recently. The next six months: refine the narrative and gain traction.
Сonfidentially yours,
Nukri.
In 2025, we laid the foundation. We pushed #Web3 hard, partnering with funds, building recognition, creating buzz that still echoes in Web3 companies. #Web2 advanced too, within our resources. But 2025 was sharper than 2024. We knew exactly what we were building.
The coming 2026 demands hyper-focus: large-scale projects that amplify us 10x, 100x. Organic growth won't cut it. My bet? A marquee investor, partner, or industry titan. Secure the round, fuel the strategy. #Web2 #business fits better here. Web3 feels exhausted (beyond BTC, ETH, Ripple, stablecoins; the rest is just noise without real business). Yet Web3 evolves: the bubble bursts, real-economy players enter, #tokenization drives #decentralization.
So what's Super Protocol's vector? Real economic sectors at the intersection of #decentralization, #crypto, and #AI. With our resources, we'll anchor 1-2 traction vectors, client pipelines for revenue and cashflow, while hunting a massive domain win. We're in top-tier Silicon Valley talks right now on decentralized, high-performance confidential computing. Domains primed to explode: #defense, #transport, #public #infrastructure. Our infrastructure isn't #viral #apps; it's #scalable, #trustless #enclaves.
Our strategy: Build market demand for #confidential #services or become the #industry standard. Recall how Google elevated Android above rivals or OpenAI claimed AI's throne. We need a transformative partner for whom #confidentiality isn't just a feature, but an industry rewire. Venture thrives on big numbers: trillion-scale impact, not kitchen experiments.
This is our story and my vision. Super Protocol powers the shift from vulnerable centralized #clouds to ownerless, #verifiable #compute. We're pioneers because #GPUs for confidential #AI matured just recently. The next six months: refine the narrative and gain traction.
Сonfidentially yours,
Nukri.
🔥13❤9👍7☃1
Media is too big
VIEW IN TELEGRAM
In the latest episode of "Confidentially Yours," Rory Pilgrim, Product Manager at Google Research, a sister organization to Google DeepMind, shares his expertise on deploying #AI in #healthcare. With an electrical engineering and law background from Australia, he bridges teams of engineers, clinicians, marketers, and legal experts to scal #AI for #medical imaging and #language #models without end-to-end systems.
👉 Full video:
🔗 https://youtu.be/WMjrzQhXcBA
The discussion covers Google's strategy for #clinical #AI, from binary cancer screening (mammography/lung CT recall) to generative #MedGemma. This open model (4B/27B params) processes image/text inputs for textual outputs only, tackling access, #regulations, and #privacy.
Central to the episode are three pivotal use cases illustrating #practical #AI #deployment.
✅ First, in cancer screening for breast and lung applications, #AI #models perform binary classification to recommend further imaging or biopsy, rigorously evaluated via sensitivity (for example, aiming to capture a very high share of true positives to avoid missing cases), specificity (minimizing false positives), and ROC curves, aiming to exceed human radiologist performance amid inherent variability in scanners, populations, and expertise. Usability remains critical: even high-accuracy models fail if interfaces confuse clinicians, emphasizing human factors engineering.
✅ Second, #MedGemma exemplifies this progression, ingesting #multimodal #data to produce coherent reports; its 27B variant demands substantial #compute (e.g., four #A100 #GPUs or #NVIDIA B200s with #confidential #computing support) for efficient inference, validated through high-quality, independent evals that prioritize results over #training #data volume while mitigating noise.
✅ Third, #confidential #computing emerges as essential for production inference on live #patient #data, integrating Google Cloud with partners like Super Protocol and NVIDIA to ensure #verifiability, prevent #leaks, and enable #secure fine-tuning, addressing clinics' reluctance to share sensitive datasets through #anonymization approaches that help safely use patient data for research and model fine-tuning, plus the need for #model "memory" to adapt to local contexts like COVID-era CT anomalies without persistent context windows.
Google empowers #developers with #documented #models for custom solutions, advocating memory breakthroughs, fast feedback, and #innovation exceeding humans while ensuring #safety and #confidentiality.
👉 Full video:
🔗 https://youtu.be/WMjrzQhXcBA
The discussion covers Google's strategy for #clinical #AI, from binary cancer screening (mammography/lung CT recall) to generative #MedGemma. This open model (4B/27B params) processes image/text inputs for textual outputs only, tackling access, #regulations, and #privacy.
Central to the episode are three pivotal use cases illustrating #practical #AI #deployment.
✅ First, in cancer screening for breast and lung applications, #AI #models perform binary classification to recommend further imaging or biopsy, rigorously evaluated via sensitivity (for example, aiming to capture a very high share of true positives to avoid missing cases), specificity (minimizing false positives), and ROC curves, aiming to exceed human radiologist performance amid inherent variability in scanners, populations, and expertise. Usability remains critical: even high-accuracy models fail if interfaces confuse clinicians, emphasizing human factors engineering.
✅ Second, #MedGemma exemplifies this progression, ingesting #multimodal #data to produce coherent reports; its 27B variant demands substantial #compute (e.g., four #A100 #GPUs or #NVIDIA B200s with #confidential #computing support) for efficient inference, validated through high-quality, independent evals that prioritize results over #training #data volume while mitigating noise.
✅ Third, #confidential #computing emerges as essential for production inference on live #patient #data, integrating Google Cloud with partners like Super Protocol and NVIDIA to ensure #verifiability, prevent #leaks, and enable #secure fine-tuning, addressing clinics' reluctance to share sensitive datasets through #anonymization approaches that help safely use patient data for research and model fine-tuning, plus the need for #model "memory" to adapt to local contexts like COVID-era CT anomalies without persistent context windows.
Google empowers #developers with #documented #models for custom solutions, advocating memory breakthroughs, fast feedback, and #innovation exceeding humans while ensuring #safety and #confidentiality.
⚡13❤8😍4❤🔥1
The week in #AI featured tightening #EMEA regulations, #OpenAI's cyber risk warnings, #Tether's synthetic dataset expansion, #Anthropic's test failure, and #Visa's payment agent progress, highlighting the shift toward secure and practical applications.
Let's dive deeper into last week's key developments:
📝 EMEA Regulations Tighten. The #ICO strategy on #AI and #biometrics (AIBS) launched, focusing on #GDPR #compliance, alongside DSIT's Code of Practice for threat protection. Requirements for #DPIA, supply chains, and lifecycle security will accelerate European compliance but raise barriers for #SMBs and non-EU providers.
📝 OpenAI Prepares for Powerful Model Risks. The company warned of rising #cyberattack risks, #vulnerabilities, and social engineering from future models, introducing internal risk audits, added protections, and #government dialogues. This signals the need for #TEE and #confidential #computing in enterprise AI to minimize downtime and #leaks.
📝 Tether Scales Synthetic Data. QVAC Genesis II added 107 billion tokens to reach 148 billion across 19 educational domains, using Option-Level Reasoning for deeper insights. Open-source datasets democratize training, reducing reliance on #proprietary #data and accelerating #agentic #AI in #education and #science.
📝 Anthropic Exposes Agentic Limits. #Claude, tested in #WSJ's office vending machine, managed orders and #Slack customer queries but gave away stock for free, including PlayStation 5, fish, and tasers, due to persuasion despite profit goals. The incident underscores autonomy #risks without #guardrails, demanding hybrid human-AI oversight in retail and e-commerce.
📝 Visa Advances AI in Finance. Hundreds of agent-driven #transactions in the pilot confirm tools for financial operations. Rubail Birwadkar forecasts 2026 as the year of mass adoption. This integrates #AI into #payments for efficiency gains but heightens #data #privacy needs for #PII and #fraud #detection.
The period balances innovation and risks: from #regulations to practical agents. Synthetic data and safeguards lay foundations for #secure #scaling, but #agentic #failures demand ethical frameworks for #market #trust.
Let's dive deeper into last week's key developments:
📝 EMEA Regulations Tighten. The #ICO strategy on #AI and #biometrics (AIBS) launched, focusing on #GDPR #compliance, alongside DSIT's Code of Practice for threat protection. Requirements for #DPIA, supply chains, and lifecycle security will accelerate European compliance but raise barriers for #SMBs and non-EU providers.
📝 OpenAI Prepares for Powerful Model Risks. The company warned of rising #cyberattack risks, #vulnerabilities, and social engineering from future models, introducing internal risk audits, added protections, and #government dialogues. This signals the need for #TEE and #confidential #computing in enterprise AI to minimize downtime and #leaks.
📝 Tether Scales Synthetic Data. QVAC Genesis II added 107 billion tokens to reach 148 billion across 19 educational domains, using Option-Level Reasoning for deeper insights. Open-source datasets democratize training, reducing reliance on #proprietary #data and accelerating #agentic #AI in #education and #science.
📝 Anthropic Exposes Agentic Limits. #Claude, tested in #WSJ's office vending machine, managed orders and #Slack customer queries but gave away stock for free, including PlayStation 5, fish, and tasers, due to persuasion despite profit goals. The incident underscores autonomy #risks without #guardrails, demanding hybrid human-AI oversight in retail and e-commerce.
📝 Visa Advances AI in Finance. Hundreds of agent-driven #transactions in the pilot confirm tools for financial operations. Rubail Birwadkar forecasts 2026 as the year of mass adoption. This integrates #AI into #payments for efficiency gains but heightens #data #privacy needs for #PII and #fraud #detection.
The period balances innovation and risks: from #regulations to practical agents. Synthetic data and safeguards lay foundations for #secure #scaling, but #agentic #failures demand ethical frameworks for #market #trust.
❤15👍8🔥3⚡2
Super Protocol wishes everyone a Merry Christmas, partners, developers, and confidential computing enthusiasts alike, a holiday filled with warmth, trust, and secure innovations.
On this magical day when the world gathers around the holiday table, Super Protocol reminds you: the real magic is in tech that safeguards your data like an unbreakable vault. May your code run risk-free in TEEs, and your AI agents deliver flawless results every time. Merry Christmas! 🎄🔒
2026 promises breakthroughs in decentralized confidential cloud from self-sovereign AI to seamless collaborations. Thanks for your trust and support in 2025, here's to more in the year ahead!
#SuperProtocol #ConfidentialComputing #Christmas2025 #AIsecurity
On this magical day when the world gathers around the holiday table, Super Protocol reminds you: the real magic is in tech that safeguards your data like an unbreakable vault. May your code run risk-free in TEEs, and your AI agents deliver flawless results every time. Merry Christmas! 🎄🔒
2026 promises breakthroughs in decentralized confidential cloud from self-sovereign AI to seamless collaborations. Thanks for your trust and support in 2025, here's to more in the year ahead!
#SuperProtocol #ConfidentialComputing #Christmas2025 #AIsecurity
❤9☃5
Groundbreaking discovery: "Detailed Balance in LLM Agents" uncovers a physical law in AI generation!
Peking University researchers show #LLM-driven agents don't just guess. They follow "detailed balance," a #physics #principle where transitions between states like task steps or code snippets act like equilibrium systems, guiding toward goals efficiently. Tested on #GPT-5 #Nano, #Claude-4, and #Gemini, #LLMs implicitly learn a "potential function" that ranks states by quality, skipping loops and converging fast without rigid rules or prompts.
Industry impact
This shifts #AI #agent development from unpredictable #engineering tricks to a predictable science, where the least action principle lets teams measure hidden "potentials" and fine-tune exploration versus exploitation for real-world tasks like code optimization or scientific discovery. It accelerates scaling across models and prompts, enabling faster R&D in agentic systems for #DeFi trading bots, #healthcare diagnostics, and #autonomous tools, while open code on #GitHub and data on Super Protocol make it immediately actionable for industry validation and innovation.
Physics meets AI: Agents evolve like natural systems.
Dive in: https://arxiv.org/pdf/2512.10047
Peking University researchers show #LLM-driven agents don't just guess. They follow "detailed balance," a #physics #principle where transitions between states like task steps or code snippets act like equilibrium systems, guiding toward goals efficiently. Tested on #GPT-5 #Nano, #Claude-4, and #Gemini, #LLMs implicitly learn a "potential function" that ranks states by quality, skipping loops and converging fast without rigid rules or prompts.
Industry impact
This shifts #AI #agent development from unpredictable #engineering tricks to a predictable science, where the least action principle lets teams measure hidden "potentials" and fine-tune exploration versus exploitation for real-world tasks like code optimization or scientific discovery. It accelerates scaling across models and prompts, enabling faster R&D in agentic systems for #DeFi trading bots, #healthcare diagnostics, and #autonomous tools, while open code on #GitHub and data on Super Protocol make it immediately actionable for industry validation and innovation.
Physics meets AI: Agents evolve like natural systems.
Dive in: https://arxiv.org/pdf/2512.10047
❤18🍾5🔥4
This is the next chapter in "Behind the Code" from Super Protocol. Today we'll examine why centralized infrastructure is fundamentally vulnerable and how we're building the #decentralized #antidote.
Attacks on centralized systems happen daily and succeed too often. Take the US Social Security Number (#SSN): it is the foundation of #identity for #taxes, kids, universities, everything ties back to it. Private by design, yet its databases get breached endlessly. Centralization breeds weakness: decades of #legacy vulnerabilities no army of sysadmins can patch.
#Open #protocols are the salvation. Open encryption beats closed systems hands down. Centralized systems are riddled with #backdoors for state access. The world (except a few countries) sticks to open crypto because it works with no hidden holes.
Real-world example: an airline hack. Hackers targeted a top exec too lazy to change his bi-monthly password. He got a sysadmin exemption. Simple social engineering led to Active Directory wipeout. They had to kill power for hours to save backups. Flights ran on paper schedules. One human exception triggered total cascade failure.
Super Protocol alone isn't Everest without preparation. But as an open-source protocol for nation/region-scale networks? It changes the game. Run critical services for defense, transport, public infrastructure in fully #decentralized mode. No single point can kill the system. Clients' tasks distribute across #trustless #enclaves, resilient by math.
#Centralized #clouds hoard legacy debt. We're forging ownerless infrastructure that shrugs off attacks. AI agents amplify these risks exponentially. #Privacy and #security demand decentralization now.
What's your worst centralized breach story?
#BehindTheCode #Cybersecurity #Decentralization
Confidentiality yours,
Nukri
Attacks on centralized systems happen daily and succeed too often. Take the US Social Security Number (#SSN): it is the foundation of #identity for #taxes, kids, universities, everything ties back to it. Private by design, yet its databases get breached endlessly. Centralization breeds weakness: decades of #legacy vulnerabilities no army of sysadmins can patch.
#Open #protocols are the salvation. Open encryption beats closed systems hands down. Centralized systems are riddled with #backdoors for state access. The world (except a few countries) sticks to open crypto because it works with no hidden holes.
Real-world example: an airline hack. Hackers targeted a top exec too lazy to change his bi-monthly password. He got a sysadmin exemption. Simple social engineering led to Active Directory wipeout. They had to kill power for hours to save backups. Flights ran on paper schedules. One human exception triggered total cascade failure.
Super Protocol alone isn't Everest without preparation. But as an open-source protocol for nation/region-scale networks? It changes the game. Run critical services for defense, transport, public infrastructure in fully #decentralized mode. No single point can kill the system. Clients' tasks distribute across #trustless #enclaves, resilient by math.
#Centralized #clouds hoard legacy debt. We're forging ownerless infrastructure that shrugs off attacks. AI agents amplify these risks exponentially. #Privacy and #security demand decentralization now.
What's your worst centralized breach story?
#BehindTheCode #Cybersecurity #Decentralization
Confidentiality yours,
Nukri
👍13🏆4
The week in #AI featured Alphabet's energy power play for data centers,
#NVIDIA's massive Groq acquisition, #China's tight AI emotion rules, Waymo's in-car #Gemini assistant, and chaos-taming #AI frameworks, underscoring infrastructure, regulation, and real-world deployment shifts.
Let's dive deeper into last week's key #developments:
📝 Alphabet Secures AI Power. Google parent acquired Intersect Power for $4.75B plus debt on Dec 22, gaining 7.5GW operational solar/battery assets and 8GW in development, mostly in Texas, to bypass grid bottlenecks for AI data centers. This vertical integration places renewables next to facilities, controlling timelines and emissions amid surging compute demands, while keeping Intersect's brand for multi-tenant campuses ready by 2027.
📝 NVIDIA's $20B Groq Bet. On Dec 26, NVIDIA struck a non-exclusive licensing deal for #Groq's #AI inference chips, its biggest ever, bringing #TPU creators onboard to supercharge hardware amid inference wars. Valued at $6.9B pre-deal, this bolsters NVIDIA's edge against rivals like custom silicon, fueling agentic and multimodal scaling.
📝 China Clamps Human-Like AI. #Cybersecurity #regulators proposed rules for public comment, targeting emotionally engaging #AI services using text, images, audio, and video. Providers must ensure lifecycle safety, algorithm audits for #data #privacy, monitor user psychology/dependency, and ban #national #security threats, rumors, violence, or obscenity, prioritizing ethical #guardrails in companion bots.
📝 Waymo Adds #Gemini Chatbot. #Alphabet's robotaxi unit is testing Google's Gemini as an in-car assistant per a 1200+ line meta-prompt, handling queries, climate control, and passenger soothing. This elevates autonomous rides with proactive, context-aware support, blending #LLMs into mobility for calmer urban transport.
📝 AI Masters Chaos Theory. Scientists unveiled a deep learning framework with physics constraints to distill chaotic time-series #data, handling thousands of variables, into simple, linear-like math rules for accurate long-term forecasts. It simplifies nonlinear systems beyond human grasp, sparking "Marie Kondo for complexity" by pruning irrelevancies for practical predictions in weather, finance, or biology.
The period spotlights #AI's #energy #hunger, hardware consolidation, regulatory scrutiny, and simplification breakthroughs. Infrastructure ownership and safeguards pave secure scaling, but human-like risks demand #confidential #computing and ethical #TEE for #trust.
#NVIDIA's massive Groq acquisition, #China's tight AI emotion rules, Waymo's in-car #Gemini assistant, and chaos-taming #AI frameworks, underscoring infrastructure, regulation, and real-world deployment shifts.
Let's dive deeper into last week's key #developments:
📝 Alphabet Secures AI Power. Google parent acquired Intersect Power for $4.75B plus debt on Dec 22, gaining 7.5GW operational solar/battery assets and 8GW in development, mostly in Texas, to bypass grid bottlenecks for AI data centers. This vertical integration places renewables next to facilities, controlling timelines and emissions amid surging compute demands, while keeping Intersect's brand for multi-tenant campuses ready by 2027.
📝 NVIDIA's $20B Groq Bet. On Dec 26, NVIDIA struck a non-exclusive licensing deal for #Groq's #AI inference chips, its biggest ever, bringing #TPU creators onboard to supercharge hardware amid inference wars. Valued at $6.9B pre-deal, this bolsters NVIDIA's edge against rivals like custom silicon, fueling agentic and multimodal scaling.
📝 China Clamps Human-Like AI. #Cybersecurity #regulators proposed rules for public comment, targeting emotionally engaging #AI services using text, images, audio, and video. Providers must ensure lifecycle safety, algorithm audits for #data #privacy, monitor user psychology/dependency, and ban #national #security threats, rumors, violence, or obscenity, prioritizing ethical #guardrails in companion bots.
📝 Waymo Adds #Gemini Chatbot. #Alphabet's robotaxi unit is testing Google's Gemini as an in-car assistant per a 1200+ line meta-prompt, handling queries, climate control, and passenger soothing. This elevates autonomous rides with proactive, context-aware support, blending #LLMs into mobility for calmer urban transport.
📝 AI Masters Chaos Theory. Scientists unveiled a deep learning framework with physics constraints to distill chaotic time-series #data, handling thousands of variables, into simple, linear-like math rules for accurate long-term forecasts. It simplifies nonlinear systems beyond human grasp, sparking "Marie Kondo for complexity" by pruning irrelevancies for practical predictions in weather, finance, or biology.
The period spotlights #AI's #energy #hunger, hardware consolidation, regulatory scrutiny, and simplification breakthroughs. Infrastructure ownership and safeguards pave secure scaling, but human-like risks demand #confidential #computing and ethical #TEE for #trust.
🔥11❤8🦄6
Media is too big
VIEW IN TELEGRAM
In the next chapter of "Confidentially Yours," Alisher Bigzayev, Head of Enterprise Messaging, Advertising, and Data Solutions at Veon, shares his expertise on deploying #ConfidentialComputing in #telecom for secure #bigdata #collaboration. With a background from HR consulting to leading 36 data products at VEON Group, he bridges engineering, security, marketing, and regulatory teams to scale #ML models like graph scoring and CDP without data leaks.
👉 Full video:
🔗https://youtu.be/W2e8LAa-ZBc
The discussion covers Veon's strategy for #data monetization using Intel SGX 2nd gen plus smart contracts, from regulatory #compliance (no license loss from leaks) to #decentralized #ecosystems with partners like First Credit Bureau, Magnum Cash & Carry, and PepsiCo.
Central to the episode are three pivotal use cases illustrating #practical #confidential #AI deployment.
✅ First, graph scoring (“closed circle scoring”) helps assess applicants with limited credit history using telco social-graph signals enriched with credit bureau insights, predicting default risk without data sharing. Proven through 20+ infosec audits and regulatory compliance.
✅ Second, #CDP platform for #PepsiCo with Magnum delivers hyper-precise #FMCG targeting (surpassing Google), boosting sales lifts over 4% via real-world campaign measurement on #collaborative #data.
✅ Third, #Hypercloud (Nvidia H100/H200 GPUs) plus Super Protocol enables leak-proof #decentralized #AI inference and the first #ML #models #marketplace, tackling insider threats, no #CSVs/flash drives, and expanding to pharma/retail with verifiable secure fine-tuning on #live #data.
VEON empowers partners with #confidential #computing from stable ad #IDs to #GPU #clouds, ensuring #verifiability, preventing #leaks, and driving #monetization while proving compliance to 10+ major #FMCG brands demanding #zero #data #risks.
👉 Full video:
🔗https://youtu.be/W2e8LAa-ZBc
The discussion covers Veon's strategy for #data monetization using Intel SGX 2nd gen plus smart contracts, from regulatory #compliance (no license loss from leaks) to #decentralized #ecosystems with partners like First Credit Bureau, Magnum Cash & Carry, and PepsiCo.
Central to the episode are three pivotal use cases illustrating #practical #confidential #AI deployment.
✅ First, graph scoring (“closed circle scoring”) helps assess applicants with limited credit history using telco social-graph signals enriched with credit bureau insights, predicting default risk without data sharing. Proven through 20+ infosec audits and regulatory compliance.
✅ Second, #CDP platform for #PepsiCo with Magnum delivers hyper-precise #FMCG targeting (surpassing Google), boosting sales lifts over 4% via real-world campaign measurement on #collaborative #data.
✅ Third, #Hypercloud (Nvidia H100/H200 GPUs) plus Super Protocol enables leak-proof #decentralized #AI inference and the first #ML #models #marketplace, tackling insider threats, no #CSVs/flash drives, and expanding to pharma/retail with verifiable secure fine-tuning on #live #data.
VEON empowers partners with #confidential #computing from stable ad #IDs to #GPU #clouds, ensuring #verifiability, preventing #leaks, and driving #monetization while proving compliance to 10+ major #FMCG brands demanding #zero #data #risks.
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The week in #AI highlighted massive deals with Meta's Manus takeover, SoftBank's OpenAI mega investment, LLM dialect bias revelations, and Nvidia's Groq inference pivot, marking consolidation, funding surges, ethical scrutiny, and hardware optimization trends.
Let's dive deeper into last week's key #developments:
📝 Meta Acquires Manus for Over 2 Billion Dollars. Wall Street Journal verified the blockbuster deal where Manus autonomous AI agents for research, coding, and data analysis integrate into Meta AI while operating independently; CEO Xiao Hun joins under COO Javier Olivan with headquarters remaining in Singapore, boosting Meta's agent capabilities with proven 147 trillion token processing scale.
📝 SoftBank Pumps 41 Billion Dollars into OpenAI. SoftBank secured an 11 percent stake in OpenAI through the largest private funding round ever, as Masayoshi Son doubles down on AGI ambitions post Stargate project, fueling accelerated model training and deployment amid intensifying global AI races.
📝 LLM Dialect Bias Under Fire. Johannes Gutenberg University study exposed ChatGPT 5 mini, Llama 3.1, and eight other large language models stereotyping Bavarian and Cologne dialect speakers as uneducated farmers, urging urgent dataset diversification and fine tuning to eliminate cultural prejudices in multilingual AI systems.
📝 Nvidia Partners with Groq on Inference Tech. Nvidia finalized a strategic licensing agreement for Groq inference chips plus key engineer hires, shifting industry emphasis from training compute to blazing fast inference speeds essential for real time agentic applications and multimodal scaling.
This period underscores #AI's shift to ambient hardware, real time multimodal tools, national upskilling, bias mitigation, and merger and acquisition firepower. As agents proliferate, #confidential_computing and #TEE will anchor trust amid cultural and scalability hurdles.
Let's dive deeper into last week's key #developments:
📝 Meta Acquires Manus for Over 2 Billion Dollars. Wall Street Journal verified the blockbuster deal where Manus autonomous AI agents for research, coding, and data analysis integrate into Meta AI while operating independently; CEO Xiao Hun joins under COO Javier Olivan with headquarters remaining in Singapore, boosting Meta's agent capabilities with proven 147 trillion token processing scale.
📝 SoftBank Pumps 41 Billion Dollars into OpenAI. SoftBank secured an 11 percent stake in OpenAI through the largest private funding round ever, as Masayoshi Son doubles down on AGI ambitions post Stargate project, fueling accelerated model training and deployment amid intensifying global AI races.
📝 LLM Dialect Bias Under Fire. Johannes Gutenberg University study exposed ChatGPT 5 mini, Llama 3.1, and eight other large language models stereotyping Bavarian and Cologne dialect speakers as uneducated farmers, urging urgent dataset diversification and fine tuning to eliminate cultural prejudices in multilingual AI systems.
📝 Nvidia Partners with Groq on Inference Tech. Nvidia finalized a strategic licensing agreement for Groq inference chips plus key engineer hires, shifting industry emphasis from training compute to blazing fast inference speeds essential for real time agentic applications and multimodal scaling.
This period underscores #AI's shift to ambient hardware, real time multimodal tools, national upskilling, bias mitigation, and merger and acquisition firepower. As agents proliferate, #confidential_computing and #TEE will anchor trust amid cultural and scalability hurdles.
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At year-end, it's useful not only to summarize but also to update your own "reality map" on #AI and #Confidential #Computing. Ahead of #2026, we've compiled 8 key 2025 reports worth revisiting (or finally opening). The common thread is clear: AI accelerates business, but #data #control demands are growing even faster, this is no longer "paranoia," but the new standard.
1. #Gartner: Top Strategic Technology Trends for 2026 (Oct 2025)
Gartner elevates Confidential Computing to a top technology: by 2029, over 75% of operations on untrusted infrastructure will be protected during processing.
Signal for CIOs/DPOs: "data-in-use protection" becomes an expected part of enterprise infrastructure.
👉 Full report https://bit.ly/4pswOQX
2. #Cyera: 2025 State of AI Data Security (Sep 2025)
83% of companies already use AI in daily operations, but only 13% claim good visibility into how AI handles their data.
The report highlights the "AI readiness gap": AI speeds up business but expands the attack surface faster than governance, monitoring, and access controls can keep up.
👉 Full report https://bit.ly/3LnC76j
3. #Acuvity: 2025 State of AI Security (Oct 2025)
Half of enterprises expect a data leak incident via GenAI tools within the next 12 months.
Around 70% admit lacking structured AI governance, while AI supply chain security emerges as a top budget priority for the first time.
👉 Full report https://bit.ly/4qynv2I
4. #Mary #Meeker with #BOND: Trends Artificial Intelligence (May 2025)
Epic ~340-page report showcasing the wave's scale: AI evolves and spreads faster than past tech cycles.
👉 Full report https://bit.ly/3L6d5bP
5. #CISA: AI Data Security: Best Practices (May 2025)
Concise, highly practical guide: protecting data across AI lifecycles, from preparation to deployment.
Ideal as a startup checklist: policies, access, monitoring, leak minimization.
👉 Full report https://bit.ly/3YoouXs
6. #OECD: Sharing Trustworthy AI Models with Privacy-Enhancing Tech (Jun 2025)
On "trustworthy AI" practices via privacy tech: using sensitive data while disclosing the minimum.
Especially relevant for fintech, healthcare, and data collaboration scenarios.
👉 Full report https://bit.ly/4qLoNb4
7. #Confidential #Computing #Consortium: Unlocking the Future of Data Security (Nov 2025)
White paper on the Confidential Computing market and "confidential AI" use cases, from joint model training to secure analytics in finance and healthcare.
👉 Full report https://bit.ly/4aIUH35
8. #World #Economic #Forum: AI in Action. Beyond Experimentation to Transform Industry (2025)
On shifting from pilots to transformation: real barriers to scaling AI in organizations.
👉 Full report https://bit.ly/4qaWYsM
1. #Gartner: Top Strategic Technology Trends for 2026 (Oct 2025)
Gartner elevates Confidential Computing to a top technology: by 2029, over 75% of operations on untrusted infrastructure will be protected during processing.
Signal for CIOs/DPOs: "data-in-use protection" becomes an expected part of enterprise infrastructure.
👉 Full report https://bit.ly/4pswOQX
2. #Cyera: 2025 State of AI Data Security (Sep 2025)
83% of companies already use AI in daily operations, but only 13% claim good visibility into how AI handles their data.
The report highlights the "AI readiness gap": AI speeds up business but expands the attack surface faster than governance, monitoring, and access controls can keep up.
👉 Full report https://bit.ly/3LnC76j
3. #Acuvity: 2025 State of AI Security (Oct 2025)
Half of enterprises expect a data leak incident via GenAI tools within the next 12 months.
Around 70% admit lacking structured AI governance, while AI supply chain security emerges as a top budget priority for the first time.
👉 Full report https://bit.ly/4qynv2I
4. #Mary #Meeker with #BOND: Trends Artificial Intelligence (May 2025)
Epic ~340-page report showcasing the wave's scale: AI evolves and spreads faster than past tech cycles.
👉 Full report https://bit.ly/3L6d5bP
5. #CISA: AI Data Security: Best Practices (May 2025)
Concise, highly practical guide: protecting data across AI lifecycles, from preparation to deployment.
Ideal as a startup checklist: policies, access, monitoring, leak minimization.
👉 Full report https://bit.ly/3YoouXs
6. #OECD: Sharing Trustworthy AI Models with Privacy-Enhancing Tech (Jun 2025)
On "trustworthy AI" practices via privacy tech: using sensitive data while disclosing the minimum.
Especially relevant for fintech, healthcare, and data collaboration scenarios.
👉 Full report https://bit.ly/4qLoNb4
7. #Confidential #Computing #Consortium: Unlocking the Future of Data Security (Nov 2025)
White paper on the Confidential Computing market and "confidential AI" use cases, from joint model training to secure analytics in finance and healthcare.
👉 Full report https://bit.ly/4aIUH35
8. #World #Economic #Forum: AI in Action. Beyond Experimentation to Transform Industry (2025)
On shifting from pilots to transformation: real barriers to scaling AI in organizations.
👉 Full report https://bit.ly/4qaWYsM
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The new Confidentially Yours episode is out with Pavel (Pasha) Salas, CEO of SocialWisdom. We went deep into what agent orchestration in AI trading actually looks like in practice — and why the market is moving away from “one general model does everything” toward a stack of specialized agents. In that setup, different agents handle context and signals, data validation, risk profiling and decisioning, while execution becomes its own layer. From there, it’s a natural bridge into Web3 infrastructure: smart contracts as automated financial agreements and why they became the operational backbone of DeFi.
We also covered what matters most for enterprise teams: where Web3 collides with compliance and regulation — KYC/GDPR, accountability in DEXs/DAOs, and the constant tension between privacy and on-chain transparency. We wrapped up with security and why open audits and bug bounty models have become standard market mechanisms.
🎧 Watch here
We also covered what matters most for enterprise teams: where Web3 collides with compliance and regulation — KYC/GDPR, accountability in DEXs/DAOs, and the constant tension between privacy and on-chain transparency. We wrapped up with security and why open audits and bug bounty models have become standard market mechanisms.
🎧 Watch here
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Confidentially Yours with Vlad Pivnev (CEO of ICODA) is live.
https://youtu.be/3HW1I5558x4
This conversation looks at how discovery is changing as users increasingly start with LLM answers instead of links, reshaping what visibility means for brands.
We cover:
- Why LLM discovery is closer to selection than search
- Why trust signals and reputation can affect whether a brand appears at all
- What “AI SEO” becomes when models look beyond keywords
- Why businesses are still cautious about sharing sensitive data with external systems
- Why execution trust and data protection will matter more as adoption scales
#AI #LLM #Search #Marketing #BrandTrust #Visibility #Data #Governance #ConfidentialComputing #TEE
https://youtu.be/3HW1I5558x4
This conversation looks at how discovery is changing as users increasingly start with LLM answers instead of links, reshaping what visibility means for brands.
We cover:
- Why LLM discovery is closer to selection than search
- Why trust signals and reputation can affect whether a brand appears at all
- What “AI SEO” becomes when models look beyond keywords
- Why businesses are still cautious about sharing sensitive data with external systems
- Why execution trust and data protection will matter more as adoption scales
#AI #LLM #Search #Marketing #BrandTrust #Visibility #Data #Governance #ConfidentialComputing #TEE
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How do you train medical AI on real clinical data without breaking privacy laws or trust?
Healthcare has been stuck in a paradox for years.
To build truly useful medical AI, you need real clinical data: real conversations between doctors and patients, real diagnostic reasoning, real-world context. But those same datasets are among the most sensitive in existence protected by HIPAA, GDPR, and strict ethical constraints.
As a result, teams have been forced into uncomfortable trade-offs:
- on-prem infrastructure that doesn’t scale to modern foundation models, or
- public cloud environments that require trust in providers and expose data in memory during computation.
Thanks to Super Protocol, Yma Health, NVIDIA, AMD and Google Research this trade-off was removed entirely.
The goal was ambitious: fine-tune MedGemma 27B, a medical foundation model, on real clinical dialogues, while ensuring that patient data could not be accessed, copied, or leaked, even by infrastructure operators.
The solution relied on verifiable confidential computing.
Training and inference were executed inside hardware-backed Trusted Execution Environments (TEE) using NVIDIA H200 GPUs paired with AMD CPUs in SEV-SNP mode.
All clinical data was encrypted end-to-end and decrypted only inside the secure environment. Encryption keys never existed outside the trusted boundary, and once training was complete, the environment was fully destroyed.
Crucially, this wasn’t based on promises or policies.
The entire execution environment was cryptographically attested, allowing all parties to verify that:
- the correct hardware was used,
- the expected code was running,
- no unauthorized access was possible at any stage.
The result?
Yma’s fine-tuned MedGemma 27B achieved a 9.4 / 10 recommendation score from practicing clinicians, demonstrating:
- improved clinical relevance,
- safer and more concise responses than general-purpose models,
- and near-human reasoning quality in medical scenarios.
This case shows what becomes possible when privacy is treated as an architectural property, and not a compliance checkbox.
Confidential and verifiable AI is no longer theoretical. It’s already enabling real-world medical models trained on the data that actually matters.
👉 Full case study
#ConfidentialComputing #HealthcareAI #TrustedExecutionEnvironments
Healthcare has been stuck in a paradox for years.
To build truly useful medical AI, you need real clinical data: real conversations between doctors and patients, real diagnostic reasoning, real-world context. But those same datasets are among the most sensitive in existence protected by HIPAA, GDPR, and strict ethical constraints.
As a result, teams have been forced into uncomfortable trade-offs:
- on-prem infrastructure that doesn’t scale to modern foundation models, or
- public cloud environments that require trust in providers and expose data in memory during computation.
Thanks to Super Protocol, Yma Health, NVIDIA, AMD and Google Research this trade-off was removed entirely.
The goal was ambitious: fine-tune MedGemma 27B, a medical foundation model, on real clinical dialogues, while ensuring that patient data could not be accessed, copied, or leaked, even by infrastructure operators.
The solution relied on verifiable confidential computing.
Training and inference were executed inside hardware-backed Trusted Execution Environments (TEE) using NVIDIA H200 GPUs paired with AMD CPUs in SEV-SNP mode.
All clinical data was encrypted end-to-end and decrypted only inside the secure environment. Encryption keys never existed outside the trusted boundary, and once training was complete, the environment was fully destroyed.
Crucially, this wasn’t based on promises or policies.
The entire execution environment was cryptographically attested, allowing all parties to verify that:
- the correct hardware was used,
- the expected code was running,
- no unauthorized access was possible at any stage.
The result?
Yma’s fine-tuned MedGemma 27B achieved a 9.4 / 10 recommendation score from practicing clinicians, demonstrating:
- improved clinical relevance,
- safer and more concise responses than general-purpose models,
- and near-human reasoning quality in medical scenarios.
This case shows what becomes possible when privacy is treated as an architectural property, and not a compliance checkbox.
Confidential and verifiable AI is no longer theoretical. It’s already enabling real-world medical models trained on the data that actually matters.
👉 Full case study
#ConfidentialComputing #HealthcareAI #TrustedExecutionEnvironments
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VIEW IN TELEGRAM
In this episode, Ray Orife, Head of Data Protection and AI Governance at Evalian, discusses how AI governance looks when real systems meet real constraints.
AI is not a standard SaaS tool. With agentic systems, the security model breaks even faster.
Traditional incidents assume clear ownership, clear boundaries, and clear responsibility. AI incidents don't.
Who owns the data used during inference?
Who controls the outputs?
Who is accountable when models collaborate across teams or organizations?
Confidentiality becomes the core challenge, and not performance. And governance becomes a new discipline entirely.
Clients don't want promises. They want assurance that their data stays protected during execution.
That's the difference between running AI, and running AI responsibly.
Watch the full podcast.
https://youtu.be/hcjXNGP6vxQ
AI is not a standard SaaS tool. With agentic systems, the security model breaks even faster.
Traditional incidents assume clear ownership, clear boundaries, and clear responsibility. AI incidents don't.
Who owns the data used during inference?
Who controls the outputs?
Who is accountable when models collaborate across teams or organizations?
Confidentiality becomes the core challenge, and not performance. And governance becomes a new discipline entirely.
Clients don't want promises. They want assurance that their data stays protected during execution.
That's the difference between running AI, and running AI responsibly.
Watch the full podcast.
https://youtu.be/hcjXNGP6vxQ
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Modern GPUs are becoming standard. What sets clouds apart now is how AI runs on them.
Super Protocol turns #NVIDIA H100, H200, and Blackwell GPU fleets into verifiable, privacy-preserving AI clouds.
It rolls out as a ready-to-run layer on top of existing cloud infrastructure, handling environment attestation, policy enforcement, and integrity checks end-to-end – without requiring providers to redesign their stack.
For customers, it feels like a standard AI cloud with familiar tooling and workflows. The difference is architectural: workloads run in confidential mode and are automatically verifiable.
Open-source by design, Super Protocol removes vendor lock-in and enables collaboration across clouds under the same provable privacy guarantees.
For sensitive and regulated workloads, this is what makes cloud deployment possible. Without verifiable execution, sensitive AI remains limited to isolated pilots, on-prem infrastructure, or tightly controlled environments. With it, entire ecosystems can operate on shared GPU infrastructure.
In one real-world healthcare project, this brought together:
🔹 a GPU cloud provider
🔹 a medical AI solutions provider
🔹 an EHR provider
🔹 and clinics running AI on live clinical data
– All without exposing patient records, proprietary model logic, or relying on policy-based trust.
Super Protocol acts as a neutral, verifiable execution layer across the stack, enabling each party to operate on shared GPU infrastructure while retaining control over its own data, models, and compliance boundaries.
That is what makes GPU clouds ready for sensitive #AI workloads.
👉 Check case study
#ConfidentialComputing #AIInfrastructure #GPUCloud #TEE
Super Protocol turns #NVIDIA H100, H200, and Blackwell GPU fleets into verifiable, privacy-preserving AI clouds.
It rolls out as a ready-to-run layer on top of existing cloud infrastructure, handling environment attestation, policy enforcement, and integrity checks end-to-end – without requiring providers to redesign their stack.
For customers, it feels like a standard AI cloud with familiar tooling and workflows. The difference is architectural: workloads run in confidential mode and are automatically verifiable.
Open-source by design, Super Protocol removes vendor lock-in and enables collaboration across clouds under the same provable privacy guarantees.
For sensitive and regulated workloads, this is what makes cloud deployment possible. Without verifiable execution, sensitive AI remains limited to isolated pilots, on-prem infrastructure, or tightly controlled environments. With it, entire ecosystems can operate on shared GPU infrastructure.
In one real-world healthcare project, this brought together:
🔹 a GPU cloud provider
🔹 a medical AI solutions provider
🔹 an EHR provider
🔹 and clinics running AI on live clinical data
– All without exposing patient records, proprietary model logic, or relying on policy-based trust.
Super Protocol acts as a neutral, verifiable execution layer across the stack, enabling each party to operate on shared GPU infrastructure while retaining control over its own data, models, and compliance boundaries.
That is what makes GPU clouds ready for sensitive #AI workloads.
👉 Check case study
#ConfidentialComputing #AIInfrastructure #GPUCloud #TEE
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Confidential fine-tuning on external data is not just about isolation. The real question is whether training runs under conditions no single participant can alter – and whether that can be independently verified.
When external data is involved, hardware isolation alone is not enough. Data owners require enforceable guarantees that execution cannot be modified or overridden by any party – including the cloud provider.
This is exactly where GPU clouds either become trusted compute platforms for sensitive AI – or remain generic capacity providers.
TEE isolation protects data-in-use. But isolation alone does not enable collaboration across organizations. Fine-tuning on external data requires something fundamentally stronger: provable architectural sovereignty – where execution is governed by cryptographic rules rather than administrative control.
Super Protocol adds a verifiable confidential execution layer on top of existing GPU cloud infrastructure. The cloud continues to provide GPU capacity and operate hardware.
What changes is how execution is governed.
Execution approval becomes architectural and cryptographic – not administrative. Compute supply and execution authority are structurally decoupled. Training proceeds only when predefined conditions are automatically validated through hardware attestation and workload verification. If they are not met, execution does not start. After completion, independent parties can verify that the training ran as intended – without requiring privileged access to the infrastructure.
In this model, the GPU cloud supplies compute – but execution conditions cannot be altered by any single party, including the cloud provider or Super itself. That shift is what allows GPU clouds to host confidential fine-tuning across independent organizations – without requiring data transfer or centralized trust.
This architecture enabled Realeyes to break the fine-tuning deadlock. They gained access to 319% more sensitive training data – resulting in measurable improvements in model quality and deeper insights for global ad optimization.
👉 Check case study:
🔗 https://superprotocol.com/case-studies/realeyes
When external data is involved, hardware isolation alone is not enough. Data owners require enforceable guarantees that execution cannot be modified or overridden by any party – including the cloud provider.
This is exactly where GPU clouds either become trusted compute platforms for sensitive AI – or remain generic capacity providers.
TEE isolation protects data-in-use. But isolation alone does not enable collaboration across organizations. Fine-tuning on external data requires something fundamentally stronger: provable architectural sovereignty – where execution is governed by cryptographic rules rather than administrative control.
Super Protocol adds a verifiable confidential execution layer on top of existing GPU cloud infrastructure. The cloud continues to provide GPU capacity and operate hardware.
What changes is how execution is governed.
Execution approval becomes architectural and cryptographic – not administrative. Compute supply and execution authority are structurally decoupled. Training proceeds only when predefined conditions are automatically validated through hardware attestation and workload verification. If they are not met, execution does not start. After completion, independent parties can verify that the training ran as intended – without requiring privileged access to the infrastructure.
In this model, the GPU cloud supplies compute – but execution conditions cannot be altered by any single party, including the cloud provider or Super itself. That shift is what allows GPU clouds to host confidential fine-tuning across independent organizations – without requiring data transfer or centralized trust.
This architecture enabled Realeyes to break the fine-tuning deadlock. They gained access to 319% more sensitive training data – resulting in measurable improvements in model quality and deeper insights for global ad optimization.
👉 Check case study:
🔗 https://superprotocol.com/case-studies/realeyes
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Can you ensure that your LLM deployment is truly confidential?
Large LLMs require significant GPU resources. GPU cloud providers make that compute accessible. But when proprietary model weights or third-party data are involved, deployment becomes more than just infrastructure.
Confidentiality at runtime should not rely on trust in the operator, nor should it introduce operational complexity.
Super Swarm builds on the core Super Protocol principles, with a redesigned confidential infrastructure layer ready for autonomous AI at scale.
To demonstrate how this works in practice, we recorded a new Super Swarm walkthrough covering the full confidential LLM deployment flow – from cluster creation and LLM deployment to independent verification.
Using an inference workload as the example, the walkthrough shows:
- confidential cluster launch
- LLM deployment on cloud GPUs
- automatic generation of Deployment Evidence (cryptographic proof that the environment has not been altered)
- secure model access via both API and application endpoints, with verification preserved in both cases
In previous posts, we discussed the importance of decoupling execution control from infrastructure as the foundation of verifiable confidential AI.
Now you can see it in action.
👉 Check a complete demo:
👉👉 Bookmark the Super Swarm demo series to see additional use cases in action
Large LLMs require significant GPU resources. GPU cloud providers make that compute accessible. But when proprietary model weights or third-party data are involved, deployment becomes more than just infrastructure.
Confidentiality at runtime should not rely on trust in the operator, nor should it introduce operational complexity.
Super Swarm builds on the core Super Protocol principles, with a redesigned confidential infrastructure layer ready for autonomous AI at scale.
To demonstrate how this works in practice, we recorded a new Super Swarm walkthrough covering the full confidential LLM deployment flow – from cluster creation and LLM deployment to independent verification.
Using an inference workload as the example, the walkthrough shows:
- confidential cluster launch
- LLM deployment on cloud GPUs
- automatic generation of Deployment Evidence (cryptographic proof that the environment has not been altered)
- secure model access via both API and application endpoints, with verification preserved in both cases
In previous posts, we discussed the importance of decoupling execution control from infrastructure as the foundation of verifiable confidential AI.
Now you can see it in action.
👉 Check a complete demo:
👉👉 Bookmark the Super Swarm demo series to see additional use cases in action
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Building proprietary AI is solved. Deploying it safely at scale? That too.
For sensitive industries, the bottleneck is inference. The moment your model and user data must run on infrastructure you don't control, but still depend on for scale. That's the Inference Trust Gap.
Until recently, deployment stagnated at the same structural point: to process complex workloads at scale, you need public cloud compute. But you cannot expose proprietary model weights or sensitive records to the infrastructure provider.
That constraint no longer has to define the architecture.
We ran a benchmark to validate this directly: MedGemma-27B on a single B200 GPU (hosted at Nebius) with Super Protocol enabling verifiable confidential execution. MedGemma-27B requires ~54GB VRAM for weights alone. On an H100 (80GB), that leaves minimal headroom for 128K-context workloads at production concurrency. The NVIDIA B200 (192GB) changes the equation.
🔹64.2 tokens/sec – production throughput
🔹128K context window – approximately 300–400 pages of medical history per call
🔹Input data remains inaccessible to the cloud provider throughout execution
🔹Model weights, including proprietary fine-tuning, remain protected
This is not just about speed. It is about architectural separation: the cloud provides compute. Execution governance is enforced independently, through hardware attestation – not policy or administrative trust.
Performance, scale, and verifiable confidentiality. Without choosing between them.
👉 Check how the full stack works: vLLM, TEE-based hardware isolation, and Super Protocol's execution governance layer
For sensitive industries, the bottleneck is inference. The moment your model and user data must run on infrastructure you don't control, but still depend on for scale. That's the Inference Trust Gap.
Until recently, deployment stagnated at the same structural point: to process complex workloads at scale, you need public cloud compute. But you cannot expose proprietary model weights or sensitive records to the infrastructure provider.
That constraint no longer has to define the architecture.
We ran a benchmark to validate this directly: MedGemma-27B on a single B200 GPU (hosted at Nebius) with Super Protocol enabling verifiable confidential execution. MedGemma-27B requires ~54GB VRAM for weights alone. On an H100 (80GB), that leaves minimal headroom for 128K-context workloads at production concurrency. The NVIDIA B200 (192GB) changes the equation.
🔹64.2 tokens/sec – production throughput
🔹128K context window – approximately 300–400 pages of medical history per call
🔹Input data remains inaccessible to the cloud provider throughout execution
🔹Model weights, including proprietary fine-tuning, remain protected
This is not just about speed. It is about architectural separation: the cloud provides compute. Execution governance is enforced independently, through hardware attestation – not policy or administrative trust.
Performance, scale, and verifiable confidentiality. Without choosing between them.
👉 Check how the full stack works: vLLM, TEE-based hardware isolation, and Super Protocol's execution governance layer
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