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Source channel @olddriverGDstudy · Post #29 · Mar 17

搜索使用说明 #搜索指南 因为电报软件对中文搜索支持不好,大队特别对队内资源搜索进行了整理汇集,使用方法说明如下: 1.1 原理: 电报对中文搜索支持不佳,汉字只有在前后含有asic码字符的前提下可以被正确搜索出,如 _广州修车大队_ (“_”指代空格)、(广州修车大队);等形式可以搜索“广州修车大队”搜索出相关信息;搜索“广州”等未被asic码间隔的汉字无法正确显示。 为正确搜索,在编制频道资源时,对重要信息可以采取Hashtag的形式已方便搜索,即以"#"字符开头,接汉字,以“空格字符”结尾的形式,点击一个hashtag即可快速定位该频道或聊天群内所有相同标签,建议所有管理在编辑重要资料包括ls信息、广播台、学习频道时正确使用hashtag。 !!注意标签不要随意编写,要参考搜索指南中有的标签类型!! 1.2 JS资源定位: JS目前支持 Hasgtag(#K老师)、数字标签(#GZ003)的搜索方式,在对应榜单和报告区中试用上述方式均可查找到JS的相关信息。 使用举例:在“广州公开榜”或“广州修车大队”的搜索栏中输入 #K老师 或 #GZ003,均可定位到K老师资料页;在报告区的搜索栏中输入#K老师 或 #GZ003,均可定位到K老师的验证报告。这两者是快速了解JS基本信息和评价的便捷办法。 1.3 标签查找 公榜榜单目前均支持标签查找,可以快速定位某种类型或地区的所有JS,目前仅支持Hashtag查找,目前常用标签解释如下: 地区标签: 一定要使用一级标签,例如 #天河区(注意不要有错别字) #颜值: 不解释 #服务: 评价中92、95的,有场子出身花式水平的,均会归入此类; #大胸: 不解释,一般D以上归入此类; #长腿: 不解释,一般168以上归入此类; #身材: 不解释,较为宽松; #嫩妹: 22岁以下或者长相很嫩的,白小纯的,loli系的,cos系的归入此类; #熟女: 30岁以上风韵犹存的,归入此类; #特服: 提供3p、3t、wt、字母等特殊服务的JS归入此类。 使用举例:在红榜的搜索栏中输入 #长腿,可以快速查看“莉贝伦”等8位长腿JS。 类型标签评价目前非常主观,有不妥之处请队内私信 JackJack 或其他管理人员修改。 1.4 资料查找 目前学习频道中试用hashtag来快速定位资料,目前使用的标签有如下几种: #安全CJ#素质CJ#卫生CJ #搜索指南 #大队玩法 #语录#秀哥语录 #技巧#知识

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Search: #deep_learning

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djangoproject

@djangoproject · Post #230 · 01/16/2017, 01:42 PM

http://www.aparat.com/v/0scM5 Irene Chen A Beginner's Guide to Deep Learning. What is #Deep_Learning ? It has recently exploded in popularity as a complex and incredibly powerful tool. This talk will present the basic concepts underlying deep learning in understandable pieces for complete beginners to #machine_learning.

djangoproject

@djangoproject · Post #229 · 01/16/2017, 01:41 PM

http://www.aparat.com/v/Corus Advanced users #Deep_Learning, anyone who has followed #machine_learning over the past years has heard it. In this talk I will go past the hype and show what deep learning actually means and how one goes about solving complex machine learning task with a minimum amount of code, with the help of theano, an amazing python library for deep learning.

djangoproject

@djangoproject · Post #251 · 02/02/2017, 06:06 PM

https://www.analyticsvidhya.com/blog/2016/08/deep-learning-path/?utm_content=bufferd56c5&utm_medium=social&utm_source=linkedin.com&utm_campaign=buffer #Deep_Learning, a prominent topic in #Artificial_Intelligence domain, has been in the spotlight for quite some time now. It is especially known for its breakthroughs in fields like Computer Vision and Game playing (Alpha GO), surpassing human ability. Since the last survey, there has been a drastic increase in the trends. (click here to check out the survey) Here is what Google trends shows us:

djangoproject

@djangoproject · Post #537 · 12/28/2017, 10:26 AM

https://github.com/BVLC/caffe #Caffe is a #deep_learning framework made with expression, speed, and modularity in mind. It is developed by Berkeley AI Research (BAIR)/The Berkeley Vision and Learning Center (BVLC) and community contributors.

GitHub Trends

@githubtrending · Post #15267 · 11/04/2025, 11:30 AM

#jupyter_notebook#deep_learning#pytorch You can learn PyTorch effectively in 20 days with a friendly, well-structured guide designed for those who already know some machine learning basics and have used Keras, TensorFlow, or PyTorch before. The book breaks down PyTorch concepts from easy to hard, with clear examples and practical code you can use right away. It includes a daily plan requiring 30 minutes to 2 hours, covering modeling, core concepts, APIs, and even advanced topics like GPU training and recommendation systems. This approach makes mastering PyTorch easier and faster, helping you build strong skills for deep learning projects and real applications. https://github.com/lyhue1991/eat_pytorch_in_20_days

djangoproject

@djangoproject · Post #249 · 02/02/2017, 12:32 PM

https://www.analyticsvidhya.com/learning-paths-data-science-business-analytics-business-intelligence-big-data/learning-path-data-science-python/ Comprehensive learning path – #Data_Science in Python Journey from a Python noob to a Kaggler on Python So, you want to become a data scientist or may be you are already one and want to expand your tool repository. You have landed at the right place. The aim of this page is to provide a comprehensive learning path to people new to python for data analysis. This path provides a comprehensive overview of steps you need to learn to use Python for #data_analysis. If you already have some background, or don’t need all the components, feel free to adapt your own paths and let us know how you made changes in the path. You can also check the mini version of this learning path #Deep_Learning

GitHub Trends

@githubtrending · Post #15314 · 12/06/2025, 01:00 PM

#python#brain_inspired_ai#deep_learning#large_language_models#reasoning The Hierarchical Reasoning Model (HRM) is a new type of AI that reasons more like a human brain, using a fast part for quick details and a slow part for big-picture planning. It solves hard logic tasks like Sudoku, mazes, and IQ-style puzzles very well, even though it is tiny (only 27 million parameters) and learns from very little data (just 1,000 examples). Unlike most large language models, it does not need long chains of written reasoning steps or huge amounts of training, which makes it much faster, cheaper, and more efficient. For the user, this means powerful reasoning in a small, fast system that can run on ordinary hardware and still beat much larger models on tough problems. https://github.com/sapientinc/HRM

djangoproject

@djangoproject · Post #446 · 09/17/2017, 01:05 AM

Time Series Prediction with LSTM Recurrent Neural Networks in Python with Keras Time series prediction problems are a difficult type of predictive modeling problem. Unlike regression predictive modeling, time series also adds the complexity of a sequence dependence among the input variables. A powerful type of #neural_network designed to handle #sequence dependence is called #recurrent_neural_networks . The Long Short-Term Memory network or LSTM network is a type of recurrent neural network used in #deep_learning because very large architectures can be successfully trained. https://machinelearningmastery.com/time-series-prediction-lstm-recurrent-neural-networks-python-keras/

GitHub Trends

@githubtrending · Post #15263 · 11/02/2025, 12:30 PM

#python#deep_learning#inference#llm#nlp#pytorch#transformer Nano-vLLM is a small, fast, and easy-to-understand tool for running large language models offline. It matches the speed of bigger systems like vLLM but uses only about 1,200 lines of clean Python code, making it simple to read and modify. It includes smart features like prefix caching and tensor parallelism to boost performance. You can install it easily and run models like Qwen3-0.6B on your own GPU. This tool is great if you want fast, efficient AI inference without complex setups, ideal for learning, research, or small deployments on limited hardware. https://github.com/GeeeekExplorer/nano-vllm

GitHub Trends

@githubtrending · Post #14747 · 05/25/2025, 11:30 AM

#python#deep_learning#intel#machine_learning#neural_network#pytorch#quantization Intel Extension for PyTorch boosts the speed of PyTorch on Intel hardware, including both CPUs and GPUs, by using special features like AVX-512, AMX, and XMX for faster calculations[5][2][4]. It supports many popular large language models (LLMs) such as Llama, Qwen, Phi, and DeepSeek, offering optimizations for different data types and easy GPU acceleration. This means you can run advanced AI models much faster and more efficiently on your Intel computer, with simple setup and support for both ready-made and custom models. https://github.com/intel/intel-extension-for-pytorch

djangoproject

@djangoproject · Post #413 · 08/15/2017, 12:34 PM

http://codeinpython.com/tutorials/deep-learning-tensorflow-keras-pytorch/?nonamp=1 Deep Learning #Tensorflow vs #Keras vs #PyTorch #Deep_learning is the application of artificial #neural_networks (ANNs) to learn tasks. These tasks contain more than one hidden layer. Deep learning is part of a broader family of #machine_learning. Machine learning itself is a part of #Artificial_Intelligence(#AI).

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