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Source channel @olddriverGDstudy · Post #58 · Mar 27

#风哥避孕套如何选择课堂笔记 都说了多少遍了,别TMD买冈本,冈本TMD容易破 油少,一样的价钱不会买旁边的相模啊,玻尿酸套子也有缺点虽然润但是时间久了干的快,沐浴乳我不挑但是有一个沐浴乳我拒绝 ,力士的薰衣草真的不好闻,冈本最大的问题就是他油放的少拿出来就干,要润就玻尿酸 然后赤尾有小储精囊跟无储精囊套 要感觉我都是用浮点的,浮点套女的感觉来得快,有些人就马眼有感觉的这么办 不过无储精囊适合做多了跟射精量不大的用要不然会破的,超市就买杜蕾斯 杰士邦 相模,淘宝你看中啥买啥,然后小科普 0.01都是聚氨酯套 其他的都是乳交套,名流的玻尿酸套还是不错的,套子我是不追求的薄的,套子主要是为了安全还有就是润,很多套子很润但是油少玻尿酸少了也不行,像玻尿酸套子虽然很润但是也干的快,捷古斯也算日本大牌了,蝴蝶套一个形容 牌子叫捷古斯 因为包装上印着蝴蝶,买啥套子真的是最啥太大追求就用JS的套子 干了就跟JS说换个套子 #知识#避孕套

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Data Science Jobs

@datasciencejobs · Post #3203 · 03/30/2026, 12:04 PM

#vacancy#вакансия#job#работа#Data_Scientist#DS Senior Data Scientist 📍 Location: Serbia, Armenia (We are ready to discuss other countries as well) 🏢 Remote work is possible 💶 Payment terms are open to discussion from 3500 € and up About the product At FlameTree, we are building a platform for creating AI agents that help businesses scale customer support, lead follow-up, and sales across multiple communication channels — both inbound and outbound. Our AI agents work with knowledge bases, communicate in real time, and drive conversions across messaging platforms. The platform supports 150+ languages and integrates with WhatsApp, email, and web applications, offering strong security and high scalability for business growth. 🎯Responsibilities: • Design and develop the core agent layer responsible for orchestrating interactions with LLMs • Build and maintain complex conversational logic: state machines, agent workflows, and orchestration pipelines • Control and shape LLM behavior: prompt design, structured outputs, deterministic flows • Manage conversational context: memory, history, token limits, and degradation strategies • Ensure reliability and predictability on top of inherently non-deterministic models • Implement resilient integrations with LLM providers (timeouts, retries, fallbacks, multi-provider strategies) • Optimize latency and cost (streaming, batching, caching, token efficiency) • Debug complex production issues (inconsistent outputs, race conditions, state loss) • Contribute to system architecture: clear boundaries between agents, backend, and real-time components • Build observability around LLM pipelines (prompt/response logging, tracing, quality metrics) 🎯Requirements: • 5+ years of backend development experience with strong Python skills (async, architecture, performance) • Proven production experience with LLMs (not side projects): understanding of limitations, cost, and behavior • Experience building agent-based systems or complex orchestration logic (state machines, pipelines) • Ability to make LLM behavior predictable (structured outputs, schema validation, guardrails) • Strong debugging skills in non-deterministic systems • Deep understanding of API integrations (timeouts, retries, idempotency, backpressure) • Experience optimizing latency and throughput in production systems • Solid Docker experience and understanding of production environments • Ability to make architectural decisions independently and take ownership • Strong engineering mindset: writing maintainable, scalable, production-grade code 🎯Nice to Have: • Experience with multi-agent systems, tool/function calling • Experience with local LLMs (Ollama, vLLM, GPU inference) • Experience with real-time / voice systems • LLM observability (prompt tracing, evals, quality metrics) • Cost optimization at scale for LLM usage 🎯What Makes This Role Interesting: • You will work on the core intelligence layer of the product — not just integrations • Real production challenges: high load, low latency, reliability requirements • Direct impact on system architecture and technical decisions • Fast execution cycle — minimal bureaucracy • Engineering-driven approach to LLMs (reliability, control, metrics — not just prompt tinkering) • Strong engineering team focused on building real systems, not prototypes 🎯Who This Role Is NOT For: • Candidates without real production experience with LLMs • Engineers relying only on frameworks without understanding underlying mechanics • Developers without experience in high-load or latency-sensitive systems • People focused on quick hacks rather than building reliable systems 📩 If you want to join a team where everything is fast, exciting, and truly about AI — drop a message: https://t.me/Irene_Bakaeva!

Data Science Jobs

@datasciencejobs · Post #1327 · 02/16/2023, 08:01 AM

#vacancy#parttime#Data_Scientist#Python#NLP Мы ищем академического директора для магистерской программы Искусственный интеллект в области лингвистики (компьютерная лингвистика), реализуемой совместно с Томским государственным университетом. Каким мы видим идеального кандидата? - Senior Data Scientist в области NLP (Natural Language Processing) и выше с опытом работы в этом грейде от 5 лет; - Опыт в найме junior и middle-специалистов; - Понимание стандартов профессии и актуального профиля компетенций специалиста, требуемого на рынке труда; - Опыт работы в компаниях, лидирующих на российском или зарубежном рынке в выбранной индустрии; - Активный участник сообщества, опыт выступления на конференциях, митапах (или их организация) будет преимуществом. Предлагаем: - Удаленная парт-тайм работа до 20 часов в месяц. - Возможность реализовывать свои идеи и влиять на IT-индустрию/ - Ежемесячный гонорар, привязанный к количеству новых студентов (по типу роялти). - Крутая команда с сильной экспертизой в сфере EdTech. - Укрепление вашего личного бренда. - Бесплатное обучение на любом курсе образовательной группы SkillFactory: в школе дата-профессий и программирования SkillFactory, школе дизайна Contented. С полным ТЗ можно ознакомиться по ссылке- https://docs.google.com/document/d/11yE4ycHg_oZLRmfRD936yhVISWmtw3A1chxWUI-qe0Q/edit?usp=sharing Контакт для связи- @anika_kor

GitHub Trends

@githubtrending · Post #15438 · 01/26/2026, 11:30 AM

#python#agents#ai#ai_engineer#ai_engineering#copilot#data_science#data_scientist#generative_ai#gpt#machine_learning#ml_engineer#ml_engineering#openai AI Data Science Team is a free Python library with AI agents that speed up your data work 10X by handling loading, cleaning, visualization, EDA, feature engineering, modeling, and SQL tasks. Its flagship AI Pipeline Studio app creates visual, reproducible pipelines you can run with Streamlit after easy install (Python 3.10+, OpenAI or Ollama). This saves you hours on repetitive jobs, boosts accuracy, and lets you focus on insights and business results. https://github.com/business-science/ai-data-science-team