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Source channel @olddriverGDstudy · Post #53 · Mar 24

#知识#接吻 第一式:舔吻 用舌舔对方的上下唇,让对方感受舌部味蕾舔掠的感觉,注意要保持唾液的充分,如果唾液太少,干燥的舔吻会有不舒服的感觉。 第二式:咬吻 用牙齿轻咬对方的唇,但别咬的太用力,以免受伤喔! 第三式:吸吻 轻轻的吸吮对方的唇部;可用自己的唾液轻抹在对方的唇部,然后吸吮干净。 第四式:推动吻 把舌伸进对方口中,让舌与舌互相推放,男生力气应放小,以免女生疼痛;这种互推吻可形成快感。 第五式:吸舌吻 以你的唇含住他的舌,轻轻的吸吮对方的舌头,动作宜缓慢而轻柔,勿过于仓促。 第六式:齿龈吻 用舌探索对方的牙及牙龈的内外两侧,以刺激口内粘膜为目的。动作要仔细,慢,轻柔的介于碰触与不碰触之间,以产生一种特殊的亲密感。 第七式:滑动吻 用舌尖稍用力的舔对方的舌部内侧,由里向外滑舔。 第八式:舔舌吻 双方以舌对舌互舔,以用舌尖为主,不用唇。 第九式:嚼食之吻 咬住对方的舌头,似欲吞食般的吻;请小心别用力过火,只是假装而已。想像对方的舌头是好吃的东西,又咬又舔又吸的想吞进肚子里去。 第十式:律动之吻 以舌在对方的口中,有节奏律动般的的绕着对方的舌尖,画圈似的舔吻。 第十一式:深喉咙吻 将舌深入对方的喉咙重舔。重压,是霸道占有般的吻;这是一种颇不舒服的吻法,但还是有乐在其中的人。 第十二式:热情之吻 将自己的舌把对方的舌包卷于口中,上下左右回旋翻动,用放肆的旋动来增加快感,虽嫌粗鲁但颇具挑战性,是接吻高手必备的技巧之一。 第十三式:甘泉之吻 利用两唇相接时……以舌将自己的唾液渡入对方口中,并吸食对方的唾液。适用于两情相悦且身体健康的爱侣,会觉入口之唾液为琼浆玉液般,世间独有。

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MAJOR | Премиум авто

@the_major_ru · Post #1184 · 03/17/2026, 11:53 AM

Французский автопром не теряет надежды на успех. Renault в ближайшие годы обещает показать 22 новые модели, для Европы и Латинской Америки - и там и там маленькие гибриды. Премиальное подразделение Citroen - DS идет другим путем и собирается конкурировать с BMW и MB с помощью нового DS No8. Это электромобиль весом 2,2 тонны, мощностью 241-375 лс и разгоном за 5,4 - 7,8 секунд. Немцы делают ставку на мощность и инженерные решения, китайцы на электронику. Французы на дизайн. Значит считают DS No8 красивым. И правда красивый - 👍 Скорее нет - 👎 #ds

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@amneumarkt · Post #313 · 01/20/2022, 07:39 AM

#ds Deepnote supports Great Expectations (GE) now. I ran their template notebook: https://deepnote.com/project/Reduce-Pipeline-Debt-With-Great-Expectations-mLT9DFCQSpW4kUBAzzdhBw/%2Fnotebook.ipynb/#00000-e170fae0-7e06-4a7a-85f3-343584ec4b94

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@amneumarkt · Post #300 · 12/02/2021, 10:36 AM

#DS Just in case you are also struggling with Python packages on Apple M1 Macs I am using the third option: anaconda + miniforge. https://www.anaconda.com/blog/apple-silicon-transition

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@amneumarkt · Post #257 · 09/12/2021, 07:40 AM

#DS Cute comics on interactive data visualization https://hdsr.mitpress.mit.edu/pub/49opxv6v/release/1

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@amneumarkt · Post #256 · 09/08/2021, 09:04 PM

#DS Jetbrains released a new IDE for data scientist. https://www.jetbrains.com/dataspell/

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@amneumarkt · Post #253 · 08/26/2021, 10:05 AM

#DS Hullman J, Gelman A. Designing for interactive exploratory data analysis requires theories of graphical inference. Harvard Data Science Review. 2021. doi:10.1162/99608f92.3ab8a587 https://hdsr.mitpress.mit.edu/pub/w075glo6/release/2 Creating visualizations seems to be a creative task. At least for entry-level visualization tasks, we follow our hearts and build whatever is needed. However, visualizations are made for different purposes. Some visualizations are simply explorations and for us to get some feelings on the data. Some others are built for the validation of hypotheses. These are very different things. Confirmation of an idea using charts is usually hard. In most cases, we need statistical tests to (dis)prove a hypothesis instead of just looking at the charts. Thus, visualizations become a tool to help us formulate a good question. However, not everyone is using charts as hints only. Instead, many use charts to conclude. As a result, even experienced analysts draw spurious conclusions. These so-called insights are not going to be too solid. The visual analysis seems to be an adversarial game between humans and the visualizations. There are many different models for this process. A crude and probably stupid model can be illustrated through an example of analysis by the histogram of a variable. The histogram looks like a bell. It is symmetric. It is centered at 10 with an FWHM of 2.6. I guess this is a Gaussian distribution with a mean 10 and sigma 1. This is the posterior p(model | chart). Imagine a curve like what was just guessed on top of the original curve. Would my guess and the actual curve overlap with each other? If not, what do we have to adjust? Do we need to introduce another parameter? Guess the parameter of the new distribution model and compare it with the actual curve again. The above process is very similar to a repetitive Bayesian inference. Though, the actual analysis may be much more complicated as the analysts would carrier a lot of prior knowledge about the generating process of the data. Through this example, we see that integrating explorations with preliminary model building as Confirmatory Data Analysis may bring in more confidence in drawing insights from charts. On the other hand, including complicated statistical models leads to misinterpretations since not everyone is familiar with statistical hypothesis testing. So the complexity has to be balanced.

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@amneumarkt · Post #247 · 07/29/2021, 09:38 PM

#DS This is an interesting report by anaconda. We can kind of confirm from this that Python is still the king of languages for data science. SQL is right following Python. Quote from the report: > Between March 2020 to February 2021, the pandemic economic period, we saw 4.6 billion package downloads, a 48% increase from the previous year. We have no data for other languages so no predictions can be made but it is interesting to see Python growing so fast. The roadblocks different data professionals facing are quite different. If the professional is a cloud engineer or mlops, then they do not mention that skills gap in the organization that many times. But for data scientists/analysts, skills gaps (e.g., data engineering, docker, k8s) is mentioned a lot. This might be related to the cases when the organization doesn't even have cloud engineers/ops or mlops. See the next message for the PDF file. https://www.anaconda.com/state-of-data-science-2021

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@amneumarkt · Post #236 · 06/14/2021, 09:23 PM

#DS A library for interactive visualization directly from pandas. https://github.com/santosjorge/cufflinks

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@amneumarkt · Post #232 · 05/25/2021, 07:33 AM

#DS This paper serves as a good introduction to the declarative data analytics tools. Declarative analytics performs data analysis using a declarative syntax instead of functions for specific algorithms. Using declarative syntax, one can “describe what you want the program to achieve rather than how to achieve it”. To be declarative, the declarative language has to be specific on the tasks. With this, we can only turn the knobs of some predefined model. To me, this is a deal-breaker. Anyways, this paper is still a good read. Makrynioti N, Vassalos V. Declarative Data Analytics: A Survey. IEEE Trans Knowl Data Eng. 2021;33: 2392–2411. doi:10.1109/TKDE.2019.2958084 http://dx.doi.org/10.1109/TKDE.2019.2958084

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@amneumarkt · Post #231 · 05/21/2021, 05:13 AM

#DS https://octo.github.com/projects/flat-data Hmmm, so they gave it a name. I've built so many projects using this approach. I started building such data repos using CI/CD services way before github actions was born. Of course github actions made it much easier. One of them is the EU covid data tracking project ( https://github.com/covid19-eu-zh/covid19-eu-data ). It's been running for more than a year with very little maintenance. Some covid projects even copied our EU covid data tracking setup. I actually built a system (https://dataherb.github.io) to pull such github actions based data scraping repos together.

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