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Source channel @olddriverGDstudy · Post #40 · Mar 17

秀哥语录: 开水烫鸡把,锻炼起来 123的兄弟,我给你们说个方法 蛮有效的,就是开水烫几把 你每天洗澡的时候,水温稍微调高一点点 比如平时40度,你就45 用淋浴头冲,冲龟头,每天冲个五分钟 正经点,靠,虽然开水烫几把名字不正经 但是真的有用 你快,是因为敏感,每天冲,可以降低敏感度 一边冲,一边两个指头按压捏,每天五分钟 养成习惯,慢慢就好了 到后期,你可以用毛巾,湿水 然后慢慢尝试那毛巾擦龟头,上下撸 什么时候毛巾擦龟头,你不抖了,就好了 慢慢来啊,过犹不及,慢慢锻炼,降低龟头敏感度 可以尝试下,多少有点用 另外就是心里调节了 不要老是想,不要在意长短 学会去享受,要自信,自我暗示,我是来爽的,不是来比赛的 心里 生理 双管齐下,从此告别123 #秀哥语录#语录

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Data Science Jobs

@datasciencejobs · Post #2599 · 03/07/2025, 04:04 PM

#вакансия#vacancy#DA#analyst#senior#remote#fulltime#optimization Вакансия: Middle+/Senior Data Analyst (с опытом в оптимизационных задачах) Формат: Удалённый Занятость: Полная Оплата: 3500 - 4500$ net. Ptolemay - аутсорсинговая IT-компания полного цикла по разработке мобильных и веб-приложений для бизнеса и стартапов. Ищем ML Engineer для аутстафф-проекта в сфере металлургии. Обязанности: - Разрабатывать и внедрять алгоритмы оптимизации для объемно-календарного планирования. - Осуществлять постановку и решение задач LP, NLP, определять целевые функции и ограничения. - Автоматизировать планирование в промышленности или смежных областях. - Работать с пакетами оптимизации (SciPy, Pyomo, CVXPY, OptaPlanner) и солверами (COBYLA, Ipopt и др.). Требования: - Опыт работы по функциональному направлению от 4-х лет. - Знание языков программирования Python либо Java. - Знание основных типов оптимизационных задач (LP, NLP и т.д.). - Опыт работы с пакетами оптимизации (SciPy, Pyomo, CVXPY, OptaPlanner или аналогичные). - Опыт работы с различными солверами (COBYLA, Ipopt и другие), понимание принципов их работы (сильные и слабые стороны). - Опыт линеаризации задач, постановка целевой функции и ограничений. - Опыт постановки задачи, разбиение на подзадачи. Условия работы: - Удалённый формат работы. - Полная занятость. - Оформление по ИП, СМЗ. - Оплата 3500 - 4500$ net. Буду рад ответить на вопросы и ознакомиться с резюме: @Dmitriy_Ptolemay

Venture Village Wall 🦄

@venturevillagewall · Post #3621 · 12/21/2024, 10:22 AM

BuyerCaddy Secures $1.5M Funding BuyerCaddy has successfully raised $1.50M in funding as of December 19, 2024. The platform focuses on cost savings, optimization, and tech stack benchmarking, helping users identify redundant products, track utilization, and enhance integrations. #Funding#BuyerCaddy#TechStack#Optimization#CostSavings

智能视界

@AITimes365 · Post #158 · 07/17/2024, 12:52 AM

#境外AI#Chrome#Google#Gemini#离线模型 Chrome浏览器内置可离线大模型 Gemini Nano ! 开通方式: 1. 下载并安装 Chrome (Dev 或 Canary) 版本 127 或更高版本。 2. 打开 Chrome,访问:chrome://flags/#prompt-api-for-gemini-nano,将设置改为 Enabled。 3. 打开 Chrome,访问:chrome://flags/#optimization-guide-on-device-model,将设置改为 Enabled BypassPrefRequirement。 4. 打开 Chrome,访问:chrome://components,找到 "Optimization Guide On Device Model",点击 "Check for Update"。 5. 如果没有看到 "Optimization Guide On Device Model",请等待几分钟,或尝试切换代理节点。 6. 打开浏览器并访问 https://chromeai.org/ 即可开始使用。

GitHub Trends

@githubtrending · Post #14797 · 06/06/2025, 12:00 PM

#python#agents#document_search#evaluation#guardrails#llms#optimization#prompts#rag#vector_stores Ragbits is a tool that helps build and deploy GenAI applications quickly. It offers features like swapping between many language models, ensuring safe interactions with these models, and connecting to various data storage systems. Ragbits also includes tools for managing data and testing prompts, making it easier to develop reliable AI applications. This helps users create more accurate and efficient AI systems by integrating the latest data and reducing errors. Overall, Ragbits makes it faster and more efficient to develop and deploy AI applications. https://github.com/deepsense-ai/ragbits

GitHub Trends

@githubtrending · Post #15575 · 03/20/2026, 11:30 AM

#java#aerospace#flight_simulator#java#modeling#optimization#rocket#rocketry#simulation#trajectory OpenRocket is a free tool to design, visualize in 3D, and simulate model rockets with six-degree-of-freedom flight analysis, real-time data on altitude/velocity, automatic optimization, and exports for 3D printing or other programs. It works on any platform via Java. You benefit by testing rockets virtually first, saving time/money on failed builds, predicting performance accurately, and flying safer, higher with optimized designs. https://github.com/openrocket/openrocket

Venture Village Wall 🦄

@venturevillagewall · Post #3510 · 12/20/2024, 06:30 AM

Future of AI Search Optimization A new market emerges as users shift from traditional Google searches to AI tools like ChatGPT and Claude. The $70 billion search optimization industry sets the stage for a vast new optimization market focused on AI responses. Early entrants can capitalize on this shift with relatively simple platforms. Discover more: Read Here #AI#SearchOptimization#ChatGPT#Claude#Perplexity#MarketTrends#Innovation#TechIndustry#BusinessOpportunities#DigitalMarketing#InformationRetrieval#Technology#Entrepreneurship#FutureOfWork#Investment#Strategy#Growth#Optimization#Startups

GitHub Trends

@githubtrending · Post #15242 · 10/23/2025, 12:30 PM

#python#ant_colony_algorithm#artificial_intelligence#fish_swarms#genetic_algorithm#heuristic_algorithms#immune#immune_algorithm#optimization#particle_swarm_optimization#pso#simulated_annealing#travelling_salesman_problem#tsp You can use scikit-opt, a Python library offering many heuristic optimization algorithms like Genetic Algorithm, Particle Swarm Optimization, Simulated Annealing, Ant Colony, Immune Algorithm, and Artificial Fish Swarm Algorithm. It supports user-defined functions to customize operators, allows continuing runs from previous iterations, and accelerates computations via vectorization, multithreading, multiprocessing, and caching. GPU support is in development. It helps solve complex optimization problems such as function minimization and the Traveling Salesman Problem efficiently, with easy installation and rich examples. This saves you time and effort in implementing and tuning optimization algorithms yourself. https://github.com/guofei9987/scikit-opt