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明日からの #セッション# 出演モデル紹介🤍 5/26(火)「お風呂a GIRL」 阿久津こてつ(@kotenanoda4) 琴里ここ(@kotoricoco_) 星咲エリカ(@errika0615) 天音鈴菜(@Suzuna_cherry) 日和なの(@0u0nano) 望月杏奈(@an_na_m_) 牡丹るき(@botan_ruki_) ゎぃ(@06yx_x) 千歳ゆず(@yuzu_sensai) 丸凜凪(@maru_rinna) ういちゃ(@uicha_3844) 七瀬みお(@meltmelts_mio) ルナ(@lunadesu_0711) ちょーみ(@chooomimimi) ⇢ 5/27(水)「文学少女」 猫宮かおる(@nyaaaachan22) 朝比奈りる(@riru_asahina) 薺かれん(@udon_chan8) 雪野しお(@yukinoshio19) 七彩あやか(@7se_ayaka) sumi(@nyan01w) 餅丸夢姫(@mochi_mochi0316) 清宮みいな(@miinyaaa23) ホワイティみみだ(@whity_mimida) 猫黒すい(@suui_nekuro) 若林春花(@wakaba_haruka) 星導りえ(@riehoshirube) 神田舞華(@pon7_star) せんかい(@senkai_2525) ⇢ #フレッシュ撮影会#
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明日からの #セッション# 出演モデル紹介🤍 5/16(土)「DoMoreコラボセッション」 蒼山みこと(@mikoto_aoyama) 壇あやこ(@ayako_dan_) 愛乃さくら(@sakunyanpasu) 神坂めぐ(@megmeg_LUSH) 日和なの(@0u0nano) 花咲ユリ(@Hanasaki_200) 蓮あおば(@ren__aoba) 飯泉湖白(@_aqua_mari_ne_) 瀬戸栞(@setoshiori) 瑚春(@koharun529) 星乃綾寧(@1119_ayane_) 泉宮ちかげ(@idumiya619) ⇢ 5/17(日)「クラスで気になるあの子」 森川ももか(@momoka_morikawa) 秋田そな(@akita_sona) みさ(@_misadayo) みきちゃん(@cheerz_mikichan) 涼野柚陽(@suzunoyuhi) 雨宮こさめ(@ksm_Amamiya) 白石リア(@shiraishi_ria) かすみ恋(@kasumikoi) 玉城美来(@mirai140cm) 橘あかり(@akarintachibana) 白羽音遥(@otono_shirahane) 花咲音羽(@otoha_hanasaki) 星宮楓佳(@hoshimiya_fuuka) みやもぽん(@miyamo_pon) ⇢ 5/18(月)「パジャマおうちデート」 七海まり(@mari_nanami7) 山口小雪希(@Koyu_221) 璃音(@rior_05) 河野亜季子(@akiko_kono317) ホワイティみみだ(@whity_mimida) 鵜飼彩理亜(@ukai_official) 花宮ゆりえ(@yu__rie35) 矢沢めい(@mei_yzw) Melanie(@Melanie3589170) そあ(@soa_sakana_8) 橘ぜら(@irotori_zera) ゆの(@on_u413) せんかい(@senkai_2525) 泡沫ちなつ(@same_89021) ⇢ #フレッシュ撮影会#
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⊹ ࣪˖ ┈┈ ˖ ࣪⊹ ┈┈⊹ ࣪˖ ┈┈˖ ࣪⊹ ┈┈⊹ ࣪˖ 来週の #コサツ# 予約受付中🐬 受付は開催前日の17時まで⋆͛📢 ⊹ ࣪˖ ┈┈ ˖ ࣪⊹ ┈┈⊹ ࣪˖ ┈┈˖ ࣪⊹ ┈┈⊹ ࣪˖ 5/11(月) 📍フレッシュサンガイstudio 璃音(@rior_05) みけまめ(@mike0u0mame) そあ(@soa_sakana_8) ⇢ 5/12(火) 📍フレッシュロッカイstudio 涼野柚陽(@suzunoyuhi) sumi(@nyan01w) ⇢ 5/13(水) 📍フレッシュロッカイstudio 雪乃美愛(@yukinomia_t) 田中菜々(@ramennana7) 桜井美愛麗(@mi_93M3) 餅丸夢姫(@mochi_mochi0316) 咲良花音(@nno_kanon) 日名瀬満萌(@nno_maho) 星宮美咲(@nno_misaki) ⇢ 5/14(木) 📍フレッシュサンガイstudio りりな(@riri_natadeco) 花宮ゆりえ(@yu__rie35) 亜莉奈(@arina910_) てるる(@teruru_1229) ⇢ 5/15(金) 📍フレッシュロッカイstudio 璃音(@rior_05) ゎぃ(@06yx_x) ファンシア(@fancia6786) ⇢ 5/16(土) 📍フレッシュサンガイstudio 加賀かなみ(@kaga_kanami) 若林春花(@wakaba_haruka) 📍青海南ふ頭公園 蔡晴星(@cadis_haruse) 天谷瑠那(@luna_thuki) 森實りこ(@zane_rico) 天音芽衣(@amn_mei_chan) りーさ(@2525risa_model) せんかい(@senkai_2525) ⇢ 5/17(日) 📍オリエンタルラウンジ上野 花咲ユリ(@Hanasaki_200) 壇あやこ(@ayako_dan_) 飴舐める(@_amenameru_) 琴里ここ(@kotoricoco_) 清宮みいな(@miinyaaa23) 📍フレッシュロッカイstudio みさ(@_misadayo) みやもぽん(@miyamo_pon) 猫黒すい(@suui_nekuro) 宇佐美萌々(@momochi_usami) 葉乃瑞月(@hano_Phonitune) 泡沫こはね(@koha_Phonitune) 望月杏奈(@an_na_m_) 📍潮風公園 高田ゆうき(@yuki_badtz_maru) なっちゃんです。(@nachan__64) 一之瀬なほ(@ichinose_naho) 蒟蒻みお(@co_n_nya_ku) くるみ(@_kurumin0806_) 泡沫ちなつ(@same_89021) ⇢ その他日程出演モデルさん一覧はこちら🤍 #フレッシュ撮影会#
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フレッシュフェス2026 in秋葉原 DAY2 同ビル内2会場で同時開催🔥 28名のモデルさんを全員撮影し放題✨️ 秋葉原駅・御茶ノ水駅から徒歩5分🚉 📍フレッシュサンガイstudio 璃音(@rior_05) 森川ももか(@momoka_morikawa) 琴里ここ(@kotoricoco_) 小森りる(@komori_riru) かすみ恋(@kasumikoi) 向日葵あす(@HEAVENLY_asu) 花野衣アイニー(@aini_Hiwillow) 蒼山みこと(@mikoto_aoyama) 白石莉子(@riko_shiraishi) 仲西ゆう(@ly_yj6) 良実まゆか(@ramimayuka) riko(@riko_moteki) 猫黒すい(@suui_nekuro) せんかい(@senkai_2525) ⇢ 📍フレッシュロッカイstudio 七海まり(@mari_nanami7) 雪野しお(@yukinoshio19) 猫宮かおる(@nyaaaachan22) 河野亜季子(@akiko_kono317) 瀬戸なちか(@_nachika) 峰尾こずえ(@kozurin69) 比嘉こころ(@cocolo_hika) 天探女(@rururun_hapi) 三上ひびき(@hibiki_mikami) 花宮ゆりえ(@yu__rie35) 羽染昴(@sbr_chan0609) 西條愛梨(@airin_saizyo) 春ひまり(@haruhimari_) 紬みれ(@tsumugimire) ⇢ #フレッシュ撮影会#
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こんにちは💐✨ 10月6日(水)発売の #anan# 2269号にて #白石麻衣# が表紙を飾らせていただくことになりました👏💕 『“素”を磨く。』 どんな白石さんが見れるのか…これは気になりますね😏 さらに、CMキャラクターを務める #SENKA# さんとのコラボで、バックカバーもジャック😳 そちらもお楽しみに😉!
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皆さん、こんばんは🌙 #SENKA# パーフェクトホイップのスペシャルWEBムービーに #白石麻衣# が出演しております✨ メッセージ入りボトルが当たるキャンペーンもスタートしているので、こちらのツイートから是非参加してくださいね☺️👍
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こんにちは! 先日、出したクイズの答えは分かりましたか?😁 答えは資生堂「#SENKA」のCMでした✨# (実は#タグがヒントになってました!#) 皆さん正解できましたか? この後、TVCMなども流れてまいりますので是非楽しみにしていてください📺 @senka_jp
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♦️ Donald Trump nominates Jay Clayton to be next national-intelligence director. ♦️ We profile UFC magnate, Dana White. ♦️ The Senate Armed Services Committee votes to officially rename the Pentagon the Department of War. Follow the latest news
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$AMD| The FOMO to buy @AMD Chips is NOW 🧵 Not Financial Advice! DYOR! Research Purpose Only! The Inference Queen is the biggest winner in Agentic AI where all other CPUs are struggling to compete with a 2yr old EPYC Turin and EPYC Venice is in mass production phase. AMD stresses deployability today on standard x86 platforms (no proprietary architectures required), full software compatibility, and open standards. This positions Venice + Helios as a practical, high-density alternative to competing solutions while underscoring that agentic AI shifts the balance toward CPU-rich racks alongside GPUs, and most importantly, lowering the cost of token to accelerate adoption and innovation. Context: @WSJ yesterday came out with an article that @OpenAI is condiering drasstically lowering the token prices to win more customers from Anthropic. The narrative "they" are trying to exacerbate the current AI selloff won't last long. This is a fundamental misunderstanding of what is going on, or what I already discussed for months and years. Followers and Subscribers already knew this for years, that this day would come, where token cost will bcome the central discussion among enterprises as there is no such thing as unlimited budget or Tokenmaxxing when they use $NVDA chips or In-house Hyperscalers chips. I will link various threads if you are interested in understanding the full picture from supply chain to recent TSMC Rapid 2nm expansion up to 12 Fabs total by 2027/2028. Hyperscalers and AI natives effectively have no choice but to buy more AMD system for Agentic AI as leadership in economical, power-aware, high-volume internal + agentic use. However, due to supply constraints where Supply is far behind Demand, this makes multi-vendor reality along with in-house chips drive faster industry progress, lower overall costs, and better sustainability. NVIDIA’s Vera Rubin cannot compete with a 2 years old EPYC Turin, but AMD under Dr. Lisa Su has engineered the lowest cost-per-million-tokens, highly competitive energy-efficient solutions, and superior CPU orchestration for agentic AI at scale with Helios. Dr. Su has championed this shift since at least 2023, foreseeing the rise of agentic workflows that demand far more orchestration, parallel agents, and balanced compute well before the industry fully embraced it. Her long-term vision of AI moving from simple prompts to always on, multi-agent systems has driven AMD’s investments in high-core EPYC CPUs and integrated rack-scale solutions, perfectly positioning the company for today’s realities. The OpenAI-AMD 1GW Helios deployment (starting H2 2026) represents a pivotal vertical integration move that directly supercharges the inference economics. This isn't incremental; it's a structural shift toward ownership of massive, optimized rack-scale capacity, enabling the lowest token costs and triggering the enterprise adoption flywheel. We need to be honest, $AMD is the only company that made a big bet on Inference since the day Chatgpt became sensational where $NVDA and others were betting big on Training. At the end of the day, Token bill from @AnthropicAI has to obey economics. Meaning the bills rise, companies have to get more out of it to justify the cost. It cannot be an unlimited inference budget, and it has to show up on efficiency, profitability and operating leverage. 1. Tokenomics After you understand this, you will understand why Citi cited @AnthropicAI is likely to sign a deal with $AMD along with Hyperscalers, AI Labs, Sovereign AI like Softbank 5GW in France and many other countries. However, OpenAI and $META are now wanting faster deployment, and they are AMD shareholders now, they have prioritized allocation. Anthropic and Hyperscalers just cannot compete when Helios Rack lower token cost to$0.0003–$0.0005 per million tokens at GW scale. Cost to build 1GW data center 1GW Helios Rack full build is estimated $30-$35B 1GW Rubin Rack full build is estimated $45-$55B Inference (Cost per Million Tokens) ~$NVDA B200 / HGX: ~$0.02–$0.08 on optimized workloads (FP4/MXFP4, speculative decoding). Significant improvement over Hopper but still premium-priced. GB200 NVL72 rack-scale: $0.05–$0.25+ ~$AMD Helios Racks: $0.0003-$0.0005 per M tokens, dramatically lower than NVIDIA equivalents in owned infra. MI355X node-level: Up to 40% more tokens per dollar vs. competing solutions ( B200), driven by higher memory capacity (up to 288GB+ HBM), strong bandwidth, and lower acquisition costs. Training ~$NVDA Rubin Rack is estimated $0.7-$1.2/M Tokens ~$AMD Helios Rack is estimated $0.65-$1.0/M Tokens Now, OpenAI, META and Hyperscalers can lower Inference cost even further with $AMD EPYC Venice "dense rack" or Agentic AI Rack. AMD published a detailed technical blog emphasizing that the future of agentic AI autonomous, multi-step AI systems requiring heavy orchestration, databases, caching, APIs, and control planes demands massive CPU-dense rack-scale infrastructure, not just GPUs. The catalyst prominently positions their upcoming 6th Gen EPYC "Venice" processors as the key enabler for next-generation dense racks, delivering leadership throughput under real-world power, cooling, and density constraints. ~EPYC Venice (Zen 6 architecture, up to 256 cores / 512 threads per socket) is projected to deliver exceptional rack-level performance. In AMD’s modeled 100 kW rack comparisons, Venice-powered systems are expected to achieve ~3.30x the throughput of NVIDIA’s Vera (88-core Olympus) baseline across a broad mix of agentic-supporting workloads. ~This builds on current-generation 5th Gen EPYC "Turin" (up to 192 cores), which already delivers ~2.37x rack throughput vs. Vera and ~1.6x vs. Intel’s Xeon 6980P (128 cores). ~ Liquid-cooled Turin deployments already support >27,000 CPU cores per rack today. Venice is architected to push this beyond 36,000 cores in the same rack class, dramatically increasing concurrent agent capacity and overall infrastructure efficiency. 2. Ownership vs renting compute from Hyperscalers matter to OpenAI and only owning $AMD chips can meaningfully lower token cost for enterprises. ~Eliminates cloud overhead: No provider margins, utilization buffers, or egress fees. Direct control over power contracts, cooling, scheduling, and orchestration at dedicated facilities. ~Helios optimizations at GW scale: Rack-level density (1.4+ exaFLOPS FP8 per rack), high HBM4 bandwidth, EPYC orchestration for agentic workloads, and superior TCO/TDP. AMD's long-standing focus on tokens per dollar/watt shines here 20-40%+ efficiency edges in inference-heavy scenarios. ~At 1GW+ optimized deployment, inference hits $0.0003–$0.0005 per million tokens (community/analyst models tied to Helios metrics). This is dramatically lower than typical rented/cloud equivalents, especially for high-volume output tokens in agentic flows. High token bills today, enterprises running heavy agentic/coding/analysis workloads can face $50-100M+/month at current API rates (flagship models $5-30+/M output, scaled to massive volumes). Post-Helios compression, same volume will drop to $10-15M/month (or better) via lower underlying costs passed through as pricing flexibility, volume tiers, caching, or batch discounts. ROI thresholds collapse. More companies greenlight pilots → production → massive scaling. Agentic AI (autonomous workflows) multiplies token demand exponentially, but affordability removes the friction. OpenAI gains flexibility, Unlike more cloud-dependent rivals (Anthropic), they can lower effective pricing, offer aggressive enterprise bundles, or absorb volume without margin destruction directly tackling "high token bill" complaints while maintaining profitability as usage explodes. 3. Agentic AI Models shifted CPU:GPU Ratio to 1:1 toward 3-5:1 with Explosively Token-Hungry Workloads Agentic AI (autonomous, multi-step agents with planning, tool use, iteration, and self-correction) is fundamentally more compute and token intensive than conversational or single-turn generative AI. Agentic AI. autonomous, multi-step workflows with orchestration, tool use, parallel agents, data movement, and enterprise integration has dramatically increased the importance of strong host CPUs alongside GPUs. This shifts the CPU-to-GPU ratio higher and makes balanced systems critical toward 1:1 to 5:1 as enterprises testing more than 5-10 agents. AMD EPYC Venice excels ~Leadership core density (up to 256 Zen 6 cores per socket) for running many agents in parallel, orchestration layers, and high-throughput control-plane tasks. ~Superior performance-per-core and power efficiency ( up to 2.1x higher perf/core and 2.26x better SPECpower vs. NVIDIA Grace in benchmarks). ~Tight integration in Helios: One Venice CPU + multiple MI450 GPUs per node, enabling efficient data feeding to GPUs ("zero-copy"), parallel execution, and full rack utilization for complex agentic loops. Hyperscalers (Meta, Microsoft, Amazon, Google, Softbank) and AI natives (OpenAI, Anthropic...) are adopting high-core EPYC at scale specifically for these agentic demands, as CPUs now handle a larger share of non-model work (orchestration, policy enforcement, tool calls). This complements AMD’s lower-cost GPUs for overall TCO wins. ~Agents often generate 10–100x+ more tokens per task due to iterative reasoning chains, multiple tool calls, verification loops, and long-context orchestration. ~Goldman Sachs forecasts token consumption multiplying 24x by 2030 (to 120 quadrillion tokens/month) largely driven by agentic adoption in consumer and enterprise. ~Enterprise data shows agent-pattern workloads growing at 680% annualized rates, projected to surpass conversational AI in token volume by Q3 2026. ~Daily enterprise agent token consumption is already in the billions, with complex workflows (coding, workflows, analysis) amplifying this dramatically. 4. Competitive Edge: Winning Customers from Anthropic Anthropic’s Claude models (especially Opus/Sonnet) excel in complex reasoning and agentic coding, commanding premium positioning. However, their higher underlying costs (heavier reliance on third-party cloud with margins) limit pricing flexibility compared to OpenAI’s owned Helios capacity. Anthropic is on track to generate $10.9 billion in Q2 revenue. The company expects to achieve its first-ever quarterly adjusted operating profit of $559 million. However, sustaining full-year profitability remains challenging due to immense computing and model training costs The truth is, Anthropic has no choice but to buy as much $AMD chips as possible if they want to compete with OpenAI or get investors attention. This 5% adjusted operating profit to revenue ratio is just pathetic. Current pricing dynamics (2026): OpenAI already undercuts on many tiers ( flagship output tokens significantly cheaper than equivalent Claude Opus). Nano/mini models offer 5–10x advantages for volume work. Anthropic holds edges in long-context flat pricing and certain reasoning quality. OpenAI after Helios Rack Ownership, At $0.0003–$0.0005/M effective costs, OpenAI gains massive headroom to: ~Aggressively discount high-volume agentic tiers or bundles. ~Offer “unlimited” enterprise plans or usage-based models that Anthropic struggles to match without margin erosion. ~Target cost-sensitive, high-throughput agent deployments (dev tools, automation platforms) where token bills explode. Enterprises facing $ millions in monthly agentic bills will migrate to the provider delivering better economics at scale. OpenAI’s combination of strong models (o-series reasoning) + lowest TCO positions it to erode Anthropic’s enterprise share, especially as agentic becomes the dominant token consumer. Cheaper tokens expand the total addressable market dramatically. This feeds the data/model improvement loop, justifying further capex. AMD benefits from proven scale pulling in more customers (Meta, Oracle, Microsfot, Amazon, Softbank, TensorWave, LumaAI ... already aligned on Helios). Conclusion: Dr. Lisa Su has been laser focused on inference economics since at least 2022–2023, repeatedly emphasizing that the real battleground for AI scalability would be TCO, power efficiency (TDP), and ultimately tokens per dollar and per watt not just raw training FLOPS. While many viewed inference as a secondary, commoditized workload, Dr. Su architected AMD’s roadmap around rack-scale systems optimized for high-volume, sustained inference that would dominate as models matured and usage exploded. Helios represents the culmination of that multi-year bet: a fully integrated, open platform designed precisely for the economics of massive token throughput. This deep, strategic partnership with OpenAI starting with the 1GW Helios deployment in H2 2026 and scaling to 6GW, is the embodiment of that shared vision. Both companies foresaw a future where agentic AI models evolve to become extraordinarily token-hungry: autonomous agents executing complex, iterative workflows with planning, tool use, verification loops, and long-context reasoning. These workloads can consume 100x+ more tokens per task than traditional chat or single-turn generation, driving exponential demand as capabilities improve and enterprises deploy them at scale. By owning and optimizing this massive Helios capacity at GW scale, OpenAI achieves inference costs as low as $0.0003–$0.0005 per million tokens. This structural cost advantage allows OpenAI to absorb the coming token explosion profitably, dramatically lower effective pricing for enterprises, and win high-volume agentic workloads from higher-cost competitors like Anthropic. What was once a prohibitive monthly token bill becomes an affordable accelerator for productivity and innovation. The OpenAI-AMD alliance validates Dr. Su’s prescient strategy and turns the Agentic flywheel into reality: Collapsing inference costs → explosive token consumption → richer data and better models → accelerate greater demand. This partnership doesn’t just address today’s economics, it positions both leaders at the center of the infrastructure buildout that will power AI’s next decade. By delivering the lowest inference economics at scale, OpenAI not only solves enterprise bill pain but gains a decisive weapon to win share from higher-cost rivals like Anthropic. And that is why @OpenAI and $META will deploy EPYC Dense Rack Not Financial Advice! DYOR! Research Purpose Only!
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Graham Platner is officially the Democrats’ nominee in Maine and the stakes for November just got even higher. Supporting Senator Collins is not only about protecting Maine and the U.S. Senate majority. Now, it's about rejecting the metastasizing extremism that is festering in the Democratic Party. A Graham Platner victory would not simply put another Democrat in the Senate. It would send a message that these kinds of hateful comments and ideological extremism are acceptable to the American people. It would create a permission structure for other radical Democrats to embrace this broader Left-wing movement that seeks to overthrow the values of Mainers and the rest of the country. This November, Maine voters have an opportunity to draw a clear line and reject this path. Mainers now have a responsibility to defeat Graham Platner decisively and make the common sense choice for Susan Collins to represent them in Washington.
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