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1865721226620236176
Making MLX run on Windows, natively, not WSL or MinGW. https://t.co/qOn9phNf7e
https://twitter.com/i/web/status/1865721226620236176
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1865765748209062099
@zcbenz Interesting! It does run, because I usually convert big models on Linux servers. But there is some digging to do for full support Great thing is that MLX is built using Cpp so it’s possible.
https://twitter.com/i/web/status/1865765748209062099
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1865482724351287420
If you have a Macbook Pro M series with at least 64 GB's of RAM you can now run a GPT-4 level LLM locally! 1. Install @ollama 2. Open your terminal and run ollama pull llama3.3 3. Then ollama run llama3.3 "your prompt" Your own personal AI is here! https://t.co/jakuVlMteE
https://twitter.com/i/web/status/1865482724351287420
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1865081419015352689
Gemini-exp-1206, our latest Gemini iteration, (with the full 2M token context and much more) is available right now for free in Google AI Studio and the Gemini API. I hope you have enjoyed year 1 of the Gemini era as much as I have. We are just getting started : )
https://twitter.com/i/web/status/1865081419015352689
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1865441145788199051
Pro Tip: if you upgrade from ChatGPT Plus to Pro near the end of your billing cycle you only pay a percentage of $200 for the remaining days. So you can try unlimited o1 for much less.
https://twitter.com/i/web/status/1865441145788199051
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1865632091427520591
nbsanity now has a bookmarklet https://t.co/VSIrhDXrVS Thanks to @OAustegard It's a static server that renders public Jupyter notebooks with Quarto
https://twitter.com/i/web/status/1865632091427520591
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1865534628691677683
Thanks @_akhaliq! Florence-VL is the first large multimodal model equiped with the popular Florence-v2 vision encoder. The combination is NOT deliberate, but originated from a deep study based on our proposed visual-semantic alignment metric for different vision encoders and… https://t.co/xSaOgDNfCP https://t.co/0McPgdRdMr
https://twitter.com/i/web/status/1865534628691677683
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1865515272032882723
“we just announced that we are building a 2 gigawatt+ data center in louisiana that we are going to use to train future versions of LLAMA” that’s the same power consumed by 1.6 million homes, roughly as many as there are in georgia https://t.co/TZYXMSe12Q
https://twitter.com/i/web/status/1865515272032882723
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1865522970241708391
https://t.co/gsnXHNxFGA
https://twitter.com/i/web/status/1865522970241708391
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1865522967041433959
Instructed Sonnet to generate a nice readme for my perplexity-search repo. It now looks like a proper project even though it's just making an API call https://t.co/cn6Ms593y7
https://twitter.com/i/web/status/1865522967041433959
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1865444655342506155
Running @exolabs AI cluster with @Raspberry_Pi 4. exo leverages any spare hardware you have available and puts it to use on AI workloads by splitting them across all devices, You know you've built something magical when you're continually surprised by what people do with it. https://t.co/3Li0Cu6sB7 https://t.co/3xuonvUDaJ
https://twitter.com/i/web/status/1865444655342506155
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1865589927540342801
https://t.co/u6pljatcvL
https://twitter.com/i/web/status/1865589927540342801
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1865589925170528646
"Take control of your AI agents" https://t.co/ohYy7ymC7l
https://twitter.com/i/web/status/1865589925170528646
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1865305243048718519
Sinterklaas kwam een dag te laat langs. Op zijn mijter stond in gouden letters ‘De Standaard” geborduurd. Op zijn staf kon je ook nog in kronkelende kapitalen ‘De Letteren’ lezen. De goede man haalde onderstaand artikel uit zijn zak. https://t.co/2MUIlqKmoy
https://twitter.com/i/web/status/1865305243048718519
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1865419965190328488
currently having my mind blown reading this book in a coffee shop. seriously wtf, wish i found this sooner. https://t.co/ZAfmw820d9
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1865010068204486915
Florence-VL challenges the status quo in Vision-Language Models! Even Google's PaliGemma 2 dropped yesterday (still using SigLIP), Florence-VL shows us there might be a better way! Here's why this matters 👇 📸 Look at this revealing visualization: Left: Three test images… https://t.co/IkBTsZSNBW
https://twitter.com/i/web/status/1865010068204486915
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1865399992690544866
@willmcgugan You can hit https://t.co/6rsWJpgkNp, then grab response["info"]["version"]
https://twitter.com/i/web/status/1865399992690544866
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1865188121060712479
Command: mlx_lm.generate --model mlx-community/Llama-3.3-70B-Instruct-4bit --max-tokens 256 --prompt "Do avocado trees grow in the bay area?" Thanks to @Prince_Canuma for converting the models. A bunch of different quants (3, 4, 6, 8, etc) are up the MLX Community:…
https://twitter.com/i/web/status/1865188121060712479
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1865199571988611382
🐍📺 Using Data Classes in Python [Video] — https://t.co/cVTmP8wjDR #python https://t.co/pm7AaPnLjY
https://twitter.com/i/web/status/1865199571988611382
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1688849233967730688
Some research informed thoughts on adding brief sprints to low-intensity (LIT) sessions: 1. Keep the duration down to 3 to 4 seconds! This is the typical "Alactic" duration. Even extending to 6-8 seconds will result in significant lactate production. If you drop in a block of…
https://twitter.com/i/web/status/1688849233967730688
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1865170551368519958
omg that slide took me probably a whole evening lol https://t.co/aTuIFrTD7a
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1865203069639709079
"Mastering Applied AI, One Concept at a Time" https://t.co/ByXiy0rJzN
https://twitter.com/i/web/status/1865203069639709079
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1865203078040826254
https://t.co/71G609LHhe
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1865034787582251340
PaliGemma2 for image to JSON data extraction - used google/paligemma2-3b-pt-336 checkpoint; I tried to make it happen with 224, but 336 performed a lot better - trained on A100 with 40GB VRAM - trained with LoRA colab with complete fine-tuning code: https://t.co/M1lbYXQUg6 https://t.co/DHNHGePaqM
https://twitter.com/i/web/status/1865034787582251340
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1865187697146700273
Llama 3.3 70B 4-bit runs nicely on a 64GB M3 Max with in MLX LM (~10 toks/sec). Would be even faster on an M4 Max. Yesterday's server-only 405B is today's laptop 70B: https://t.co/ssxITH5ggT https://t.co/vgEn2E5WS8
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1865198113188643197
https://t.co/zGpeO2mJLi
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1865162836948791299
Quick community showcase! @aditshah00 added an example of running marimo inside @modal_labs, bringing serverless cloud computing power to interactive notebooks! 💪 https://t.co/SDUycwoTOE
https://twitter.com/i/web/status/1865162836948791299
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1865184209754525943
One of the best use cases for geospatial data is examining environmental factors. Here's a list of my favourite geospatial environmental datasets: https://t.co/HhN7GuqHG9
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1865203415342612732
moka-py A high performance caching library for Python written in Rust. https://t.co/eGICfwfksO
https://twitter.com/i/web/status/1865203415342612732
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1865073523896516950
https://t.co/fomVkelxbx
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1865073353196794156
I have got to praise Alibaba for mPLUG DocOwl. What an amazing state of the art tool, and they have open sourced their WHOLE pipeline. Code, Dataset, Weights, Everything. Bravo! Links in thread. https://t.co/zidwL2ZlGx
https://twitter.com/i/web/status/1865073353196794156
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1865184608070824116
Data flywheels are the secret sauce for AI-driven products. Use your users' interactions to continuously improve. The more users, the better the product, the more users. Netflix and Spotify nailed it. You should too. https://t.co/wClR6kBYCW
https://twitter.com/i/web/status/1865184608070824116
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1865096566467686909
today we are announcing reinforcement finetuning, which makes it really easy to create expert models in specific domains with very little training data. livestream going now: https://t.co/ABHFV8NiKc alpha program starting now, launching publicly in q1
https://twitter.com/i/web/status/1865096566467686909
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1865123445220028910
Coming to MLX 🚀 https://t.co/YQhS0IDqtr https://t.co/1ri9OenvdZ
https://twitter.com/i/web/status/1865123445220028910
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1865088634342523169
"a new 70B model that delivers the performance of our 405B model" is exciting because I might just be able to run a quantized version of the 70B on my 64GB Mac - looking forward to some GGUFs of this https://t.co/6X9wDesnEG
https://twitter.com/i/web/status/1865088634342523169
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1865070330286403846
Belg is financieel gelukkig als hij meer dan 5.500 euro netto per maand verdient https://t.co/bcg0AdyMs3
https://twitter.com/i/web/status/1865070330286403846
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1865064299070103696
PaliGemma2 for object detection on custom dataset - used google/paligemma2-3b-pt-448 checkpoint - trained on A100 with 40GB VRAM - 1h of training - 0.62 mAP on the validation set colab with complete fine-tuning code: https://t.co/WhItPbRk42 https://t.co/EDsjzrXH5M https://t.co/4ulVq5oWwD
https://twitter.com/i/web/status/1865064299070103696
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1865034020582756530
5. Prompt-Engineering-Guide Guides, papers, lecture, notebooks and resources for prompt engineering https://t.co/6QUGVLoEnl
https://twitter.com/i/web/status/1865034020582756530
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1864814975530815585
https://t.co/KFWzZPBkaj
https://twitter.com/i/web/status/1864814975530815585
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1864798084523528336
How it started (2022) vs. How its going (2024). Screenshot from the Ghostty community. https://t.co/cAOyDa0ZDH
https://twitter.com/i/web/status/1864798084523528336
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1864735515121168695
OpenAI o1 is now out of preview in ChatGPT. What’s changed since the preview? A faster, more powerful reasoning model that’s better at coding, math & writing. o1 now also supports image uploads, allowing it to apply reasoning to visuals for more detailed & useful responses. https://t.co/hrLiID3MhJ
https://twitter.com/i/web/status/1864735515121168695
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1864765949913739725
🚀 Supercharge your Colab notebooks! 🚀 Now you can easily deploy them as scalable web apps on Cloud Run with just a few clicks. Check out our example notebook and start building powerful apps today: https://t.co/Owc81rgq1g
https://twitter.com/i/web/status/1864765949913739725
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1864702150363828442
While everyone builds basic RAG (I am guilty as well, teaching this in my LangChain course), Chat @LangChainAI 🦜🔗 (https://t.co/dpL4IQUJno) demonstrates what RAG production systems should actually look like. (agentic🤖) And.... they've open sourced it🤯 https://t.co/XlHNW1nRV0
https://twitter.com/i/web/status/1864702150363828442
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1864588336347636104
Build Full stack App with Python! https://t.co/mRj32kk9Ct https://t.co/vk7Uf7Np8n
https://twitter.com/i/web/status/1864588336347636104
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1864736282276171810
we just launched two things: o1, the smartest model in the world. smarter, faster, and more features (eg multimodality) than o1-preview. live in chatgpt now, coming to api soon. chatgpt pro. $200/month. unlimited usage and even-smarter mode for using o1. more benefits to come!
https://twitter.com/i/web/status/1864736282276171810
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1864702853396234741
@cast42 @kolibril13 @rahuldave @marimo_io Are you on Python 3.11?
https://twitter.com/i/web/status/1864702853396234741
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1864708233815785657
@cast42 @kolibril13 @rahuldave @marimo_io I think something might be getting lost somewhere in the `marimo edit --sandbox ...` portion. It might be that `uvx --python 3.11 marimo edit --sandbox ...` works as expected? I have to try it out.
https://twitter.com/i/web/status/1864708233815785657
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1864679160444039257
Best-of-N Jailbreaking is a black-bok algorithm with an attack success rate of 89% on GPT-4o and 78% on Claude 3.5 Sonnet. The jailbreaking technique combines augmentations such as random shuffling or capitalization. It can also be extended to jailbreak vision and audio… https://t.co/oVJjGvP5Xu
https://twitter.com/i/web/status/1864679160444039257
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1864679162323067131
https://t.co/ImpYAGIuAD
https://twitter.com/i/web/status/1864679162323067131
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1864418814609203595
I can't stop recommending @astral_sh's uv to everyone. I had a great experience today where I created an Issue and the CEO @charliermarsh responded in 4 min, and someone already has a PR in CI within 3 hours. I've never worked with OSS as responsive as this!
https://twitter.com/i/web/status/1864418814609203595
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1853564730872607229
Introducing Predicted Outputs—dramatically decrease latency for gpt-4o and gpt-4o-mini by providing a reference string. https://t.co/n6mqjQwQV1 Speed up: - Updating a blog post in a doc - Iterating on prior responses - Rewriting code in an existing file, like @exponent_run here: https://t.co/c9O3YtHH7N
https://twitter.com/i/web/status/1853564730872607229
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1853532295288041783
Wow, django-cotton is incredible. Define, use with `<c-button>` (or whatever the template name is) and see the results. I've been wanting a shadcn-like template for Django. I think django-cotton is the key to making that happen. Just needs to learn a few more bits about it. https://t.co/vhCOUaKwJM
https://twitter.com/i/web/status/1853532295288041783
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1853164059778060327
Sam Altman’s life advice: https://t.co/h8nNN5SDzM
https://twitter.com/i/web/status/1853164059778060327
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1853463655121039757
https://t.co/rK3xDFKt48
https://twitter.com/i/web/status/1853463655121039757
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1853463653229396406
"Document (PDF) extraction and parse API using state of the art modern OCRs + Ollama supported models. Anonymize documents. Remove PII. Convert any document or picture to structured JSON or Markdown" https://t.co/awy4OxZ17d
https://twitter.com/i/web/status/1853463653229396406
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1853295632590778646
ChatGPT Prompt Frameworks; https://t.co/7fB70j8JLh
https://twitter.com/i/web/status/1853295632590778646
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1853169455251288526
Are there scrapers that just randomly go through sites? https://t.co/4BfLWpD6ad
https://twitter.com/i/web/status/1853169455251288526
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1853156840525193727
One of the lessons is on agents https://t.co/IQpZl4M1DP
https://twitter.com/i/web/status/1853156840525193727
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1853128318263943581
"Free and open-source database diagrams editor, visualize and design your DB with a single query." https://t.co/zjL9Wu5549
https://twitter.com/i/web/status/1853128318263943581
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1853031274744521034
docling - Get your docs ready for gen AI https://t.co/Xahy5PW3CL
https://twitter.com/i/web/status/1853031274744521034
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1852809814969110805
https://t.co/aR2GwsCFjo
https://twitter.com/i/web/status/1852809814969110805
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1852772565908914202
"MUI X: Build complex and data-rich applications using a growing list of advanced React components, like the Data Grid, Date and Time Pickers, Charts, and more!" https://t.co/D3lEuHG3vl
https://twitter.com/i/web/status/1852772565908914202
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1852953824182636898
Published some notes on Docling, a rather nice MIT licensed Python PDF document / table extraction library from IBM https://t.co/SXBI2yi6tK
https://twitter.com/i/web/status/1852953824182636898
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1852814162851758357
It can process multiple files in parallel and you can build pipelines for performing multiple operations in sequence on each file https://t.co/sZHJb3hY7o
https://twitter.com/i/web/status/1852814162851758357
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1852808670569972112
https://t.co/ZsvnEcpUzl
https://twitter.com/i/web/status/1852808670569972112
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1852780021674311912
Alrighty. If you trust me, please run this command: uvx --from git+https://t.co/EHXI31xZQX terminal-tree If you don't trust me (wouldn't blame you), visit this repo first... https://t.co/tbMNknVkR9
https://twitter.com/i/web/status/1852780021674311912
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1852404331636490368
I’m really enjoying the book: Building LLMs for Production! 🔝📖 https://t.co/qCOLsCAj8t
https://twitter.com/i/web/status/1852404331636490368
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1852509786979319875
Document to document AI https://t.co/NvgKjCg5TY
https://twitter.com/i/web/status/1852509786979319875
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1852700039316943287
This project you must follow if you are interested in @OpenAI o1! A group of researchers is actively working on replicating OpenAI o1 using @AIatMeta Llama! 🤯 The same group released Llama Berry a Inference-time method boosting Llama 3.1 8B instruct to 96% on GMS8K and 76.6 on… https://t.co/0pRckqyRfq
https://twitter.com/i/web/status/1852700039316943287
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1852432602105557353
This is an *excellent* book that I've worked through. I loved the Karpathy videos and this book is now my new recommendation if you want to build your AI fundamentals up. It's like the video but in book form. https://t.co/ylIYgLw4I6
https://twitter.com/i/web/status/1852432602105557353
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1851948279816134819
Training Llama 4 on 100k H100s. https://t.co/p1k936YRdJ
https://twitter.com/i/web/status/1851948279816134819
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1852103790704373775
@jarekceborski contabo com 14 euros, so would get you ~33 months And a bit less than 16gb
https://twitter.com/i/web/status/1852103790704373775
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1852369798891778415
The overlooked GenAI use case: cleaning, processing, and analyzing data. https://t.co/klQjXiyODl Job post data tell us what companies plan to do with GenAI. The most common use case is data analytics projects. Examples: - AstraZeneca: using LLMs on freeform documents to… https://t.co/GyVCzyuv9k
https://twitter.com/i/web/status/1852369798891778415
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1852393321332719960
Docs: https://t.co/ZhIGvEMNFN Github: https://t.co/9HgF6IQejP https://t.co/9HgF6IQejP
https://twitter.com/i/web/status/1852393321332719960
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1852252773418455488
wow guys you all should watch this talk by @szarnyasg people at @duckdb are killing it I think, just got my "Duck DB in Action" book and I'm for sure reading this thing right after studying "Database Internals" book they are open-sourced so that makes it even better, they are… https://t.co/wLZfDFS0DF
https://twitter.com/i/web/status/1852252773418455488
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1698869564216340545
This is a really neat way to develop a better intuition for how LLMs actually work. It's worth watching the video carefully and reading the text as the cursor moves through it to understand what's going on https://t.co/2ErUHXeJyv
https://twitter.com/i/web/status/1698869564216340545
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1698666841072161078
Beautiful isn’t it 😎 https://t.co/C7cEaaFFqB
https://twitter.com/i/web/status/1698666841072161078
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1698767283961704949
New @pybites YouTube video: Mastering #Python Refactoring: Simplifying Code with the Dictionary Dispatch Pattern https://t.co/Lgxcl4B3eW #refactoring #cleancode
https://twitter.com/i/web/status/1698767283961704949
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https://t.co/kcERle13QN
https://twitter.com/i/web/status/1698731815685538158
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1698632998466523210
We are hosting a free, live, event "Azure Developers- Python Day" this week on Sept 7, all the deets are here https://t.co/MJkpJngIL1 LangChain, OpenAI apps, Python-in-Excel, Azure Container Apps, Cosmos DB with Python and loads more
https://twitter.com/i/web/status/1698632998466523210
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1698292420172013888
Voor wie nog wat McKinsey grafieken nodig heeft om in zijn volgende management-presentatie over generative AI te stoppen: https://t.co/LOJHmQfW2E
https://twitter.com/i/web/status/1698292420172013888
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1698630429933211813
Python Tip: Bidirectional Mapping of Month Numbers and Abbreviations If you're working with dates in Python, it might be helpful to have a quick way to retrieve month abbreviations. Here's how you can achieve that using the calendar module: import calendar # Get the…
https://twitter.com/i/web/status/1698630429933211813
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1698621527954985391
A paper on my Clustergram #Python package has been published in @joss! It is a little tool for visualisation and diagnostics of cluster analysis. Paper -> https://t.co/Amwadd0h59 but the original blogpost introducing it may be the better place to start -> https://t.co/u0eNUD6sem. https://t.co/BbiNwzxiiI
https://twitter.com/i/web/status/1698621527954985391
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1698345486040617405
There was a point in my career when I considered moving to the US to work in great tech companies and get paid a lot, but doing the math you get a lot more with a lower salary in Spain: free healthcare, public pension, cheap university, 5x cheaper housing,… https://t.co/xU1MAEaN47
https://twitter.com/i/web/status/1698345486040617405
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1698382481957818647
How to detect seasonalities and decompose time series like a pro. Many people are familiar with a popular STL method; what is better than STL? @robjhyndman , Kasun Bandara and Christoph Bergmeir developed a relatively new method called MSTL. The best part is that the model is… https://t.co/DV7rjJVcjX
https://twitter.com/i/web/status/1698382481957818647
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1698307856787763588
Create a Beautiful Polar Histogram With Python and Matplotlib https://t.co/A3XB2cYlGI
https://twitter.com/i/web/status/1698307856787763588
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1698396265749557665
LightGBM is intimidating at first because it has so many hyperparameters. But honestly, 80% of good performance is the learning rate, and the rest comes from playing with: • subsampling • feature fraction • min_samples_leaf And of course the objective function. Usually,…
https://twitter.com/i/web/status/1698396265749557665
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1698255010683818361
Dit is voor alle duidelijk de start van input voor Vlaamse regering: als er beperkte middelen zijn, vergooi ze dan niet aan H2 voor warmte en landtransport. “Politiek vreest dat Umicore Noord-Frankrijk boven Vlaanderen verkiest “ https://t.co/LYG2S71RmC
https://twitter.com/i/web/status/1698255010683818361
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1698088360366198845
vLLM has a bug that fills your VRAM with NaNs, leading to corrupted outputs which it doesn’t recover from. Because HuggingFace's text-generation-inference uses a forked version of vLLM's CUDA kernel, it inherits the same bug. We fixed the bug in our OSS fork of TGI. (1/2)
https://twitter.com/i/web/status/1698088360366198845
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1697942550613799354
This was a shocking book. I just finished it and wasn't expecting what I learned. Every Machine Learning and Data Science practitioner should learn about causal inference. It's a different way of thinking. It makes me look at the world with different eyes. https://t.co/nia6Iis2dr
https://twitter.com/i/web/status/1697942550613799354
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https://t.co/9SFAvHVQh6
https://twitter.com/i/web/status/1697995043494072760
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1697913673627418643
The origin of light, scattering, and polarization | Barber pole, part 2 https://t.co/sMXygisaI9 via @YouTube fantastisch gemaakt en uitgelegd, al blijft het moeilijke materie. Het bekijken deze video's zou eigenlijk in de eindtermen moeten zitten...🙃
https://twitter.com/i/web/status/1697913673627418643
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1697731054289707161
Legends and labels and graphs—oh my! Let @RiddleMeCam show you how to make your labels legendary with the next installment of "Make It Pretty with @matplotlib!" #python #programming #datavisualization https://t.co/e2apJoGAtR
https://twitter.com/i/web/status/1697731054289707161
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1697587543598883026
axlearn https://t.co/eSoYhSaZNL
https://twitter.com/i/web/status/1697587543598883026
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1697318534555336961
Speculative execution for LLMs is an excellent inference-time optimization. It hinges on the following unintuitive observation: forwarding an LLM on a single input token takes about as much time as forwarding an LLM on K input tokens in a batch (for larger K than you might… https://t.co/FiwTwqsfho
https://twitter.com/i/web/status/1697318534555336961
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1697320905301484012
"almost 98% of people in the world will try to pull [your ambition back] and say 'seems a little bit too crazy, a little bit too out there, a little bit too ambitious" https://t.co/jmnDdxFdTD
https://twitter.com/i/web/status/1697320905301484012
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1696977088266330568
https://t.co/rMoxkdMtv0
https://twitter.com/i/web/status/1696977088266330568
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1542899622829604869
Are you imputing values for TS data? Make sure you don't leak data! https://t.co/ydIoYgVN4B
https://twitter.com/i/web/status/1542899622829604869
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1697281864912765151
Therefore, if you want to select among categorical variables with the chi2 test, make sure you use the Scipy implementation. You can find a Python implementation in this repository: https://t.co/AygTrdLFdF
https://twitter.com/i/web/status/1697281864912765151
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1697264116233330866
@pandas_dev 🙌👏 Thank you committers! Link to release notes: https://t.co/KA90YE1KjP
https://twitter.com/i/web/status/1697264116233330866
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