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Source channel @githubtrending · Post #14739 · May 23

#c_lang#ctp#ctpapi#futures#options#quant#simnow#stock#tora#trader#tts#xtp openctp is a powerful open-source trading platform compatible with many Chinese securities and futures trading systems, offering both real and simulated trading environments for futures, options, stocks, funds, and bonds across domestic and global markets like A-shares, Hong Kong, and US stocks. It provides easy access to CTPAPI through Python and other programming languages, plus user-friendly trading clients with graphical and command-line interfaces. You can register free simulation accounts instantly via WeChat, enabling you to practice and test trading strategies in real-time or 24/7 environments. It also offers training, development support, and a monitoring platform for multiple trading systems, helping you learn, develop, and trade efficiently with low costs and broad market access. This benefits you by giving a flexible, comprehensive, and cost-effective way to develop, test, and execute trading strategies across many markets with strong community and technical support. https://github.com/openctp/openctp

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@kejiqu · Post #3986 · 12/21/2025, 08:30 AM

ChatGPT 文风,原产地肯尼亚 肯尼亚作家Marcus Olang指出,其写作风格与ChatGPT高度相似,导致其作品屡被退稿,并引发了关于AI“模仿”人类写作方式的讨论。他认为,AI模型并非原创,而是学习了全球南方,特别是肯尼亚等地区严苛教育体系下形成的规范化写作模式。这一现象与AI模型厂商为降低成本,将RLHF工作外包给非洲国家有关,导致模型在用语习惯上受到影响。此外,研究发现ChatGPT对“delve”等词汇的使用频率异常高,也与非洲RLHF工作者的语言习惯有关。这一现象引发了对AI检测器准确性的质疑,以及对非英语母语者在AI时代可能面临的误判风险的关注。IT之家 🏷#ChatGPT#肯尼亚写作风格#RLHF 📢频道👥群组📝投稿

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@githubtrending · Post #14655 · 05/01/2025, 01:30 PM

#typescript#electron#llama#llms#lora#mlx#rlhf#transformers Transformer Lab is a free, open-source tool that lets you easily work with large language models on your own computer, offering one-click downloads for popular models like Llama3 and Mistral, fine-tuning across different hardware (including Apple Silicon and GPUs), and features like chatting, training, and evaluating models through a simple interface—saving you from complex setups like CUDA or Python version issues[1][2][5]. https://github.com/transformerlab/transformerlab-app