Piotr Gabryล› ๐Ÿ‡ต๐Ÿ‡ฑ๐Ÿ‡ช๐Ÿ‡บ๐Ÿ‡บ๐Ÿ‡ฆ

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62 Following
95 Posts
Husband | Dad | Kaggle Competitions Master
#StandWithUkraine
GitHubhttps://github.com/PiotrekGa

Some autistic people find making phone calls extremely stressful and unpleasant and will avoid them at all costs.

Please donโ€™t try and force your communication preferences on others.

image: https://shreyadoodles.com
#ActuallyAutistic #AuDHD @actuallyautistic

Shreya Kundu

@b0rk all of the above? ๐Ÿ˜ญ. My community is so fragmented now and it feels super unstable, Iโ€™m not sure it will ever go back to what it was. a little twitter to check DMs, Mastodon to read actual programming content, Bluesky to see if there is any content yet, HN still for links, group chats to reflect on the insanity, feeling very unmoored

It's pretty hard to learn hard things if everybody around shows you how to do them easily with help from ChatGPT. I use them too for some guidance (phind.com), but I want to comprehend the whole process. Am I missing something / learning in an obsolete way?

#learning #llm #chatgpt #phind

Our Kaggle Competition Grandmasters AMA will happen today at GTC, session is S51852 - Developing State-of-the-Art Models in a Short Time. Registration is free!

https://www.nvidia.com/gtc/pricing/

#machinelearning #kaggle

GTC March 2023 Conference Pricing

Virtual event. Register Free. March 20-23, 2023.

NVIDIA GTC Developer Conference

What is your approach to GPT4? I'm seriously considering purchasing it because it seems to bring so much utility. On the other hand, I'm not a fan of the "open" organisation that has developed it. How serious are alternatives like Claude?

#gtp4 #claude

- Tell me a scary story.
- Principal Component Analyses (PCA)-based findings in population genetic studies are highly biased and must be reevaluated.
https://www.nature.com/articles/s41598-022-14395-4
Principal Component Analyses (PCA)-based findings in population genetic studies are highly biased and must be reevaluated - Scientific Reports

Principal Component Analysis (PCA) is a multivariate analysis that reduces the complexity of datasets while preserving data covariance. The outcome can be visualized on colorful scatterplots, ideally with only a minimal loss of information. PCA applications, implemented in well-cited packages like EIGENSOFT and PLINK, are extensively used as the foremost analyses in population genetics and related fields (e.g., animal and plant or medical genetics). PCA outcomes are used to shape study design, identify, and characterize individuals and populations, and draw historical and ethnobiological conclusions on origins, evolution, dispersion, and relatedness. The replicability crisis in science has prompted us to evaluate whether PCA results are reliable, robust, and replicable. We analyzed twelve common test cases using an intuitive color-based model alongside human population data. We demonstrate that PCA results can be artifacts of the data and can be easily manipulated to generate desired outcomes. PCA adjustment also yielded unfavorable outcomes in association studies. PCA results may not be reliable, robust, or replicable as the field assumes. Our findings raise concerns about the validity of results reported in the population genetics literature and related fields that place a disproportionate reliance upon PCA outcomes and the insights derived from them. We conclude that PCA may have a biasing role in genetic investigations and that 32,000-216,000 genetic studies should be reevaluated. An alternative mixed-admixture population genetic model is discussed.

Nature

We are planning an AMA from NVIDIA Kaggle Grand Master team at the forthcoming NVIDIA GTC conference. Topic is around building SOTA #machinelearning learning models.

Please reply with your question if you have one!

From the a16z economic model for cryptocurrencies (leaked by @miniapeur@twitter):
I have been working in AI for a long time, but this is the first time I find AI hype annoying: I am not interested in using AI models to generate text or images. I still think AI can solve more important problems than these, but there is less and less focus on that. People go for the shiny and easy to show stuff.
#machinelearning #deeplearning #AIhype