Meet รีทวีตแล้ว
Meet
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The Temple team has made a breakthrough.
We have discovered (literally discovered) a biomarker, only readable on the temple region, and nowhere else, that measures the real-time cost of you being alive.
We are calling it Entropy™.
It's a live number on Temple's home screen, updating every second, on an index from 1 to 250.
1 is the deepest rest we've ever recorded. We've only seen fit, experienced meditators touch it, for fleeting moments deep in practice. 250 is the highest we've seen in elite athletes at the peak of their output and flow.
Everything moves Entropy. Sleep, stress, a sprint, coffee, a meal, a cold plunge, meditation, strength training... everything moves your metabolism, your cost of being alive. And Entropy tracks it, live.
Heart Rate doesn’t come even close to this level of precision in calculating the cost of being alive. We benchmarked Entropy and Heart Rate against a standard metabolic cart (calorimeter). Over a hundred cardio sessions, Entropy tracked the calorimeter's curve at r=0.93 and p <0.001. Heart Rate managed a meagre r=0.55.
Here's why Entropy should matter to you –
Your Entropy Maxima is the highest your body can reach when you push it hard. A high peak is the signature of a capable body, one that can rise to meet effort and recover from it. As we age, that ceiling naturally falls, so this is the number to push upwards.
Your Entropy Minima is the lowest your body settles to at rest. Across the animal world, a lower cost of being alive at rest tends to go with a longer life. Your Entropy Minima is the number to bring down, every single day.
Living with Entropy is magical.
It teaches you so much about yourself, that no other metric ever has. We are looking forward to you trying out Temple. But not before it’s perfect.
Apply for early access at temple.com
Follow @temple for updates.

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@protosphinx @DavidSHolz Nobel in medicine? Either this or that cancer drug
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Updating my priors: If this is true, @DavidSHolz moves into the #1 spot among 21st century entrepreneurs. Above Elon and others.
orcus108@orcus108
@protosphinx 100x faster and 10x cheaper than an MRI. and no radiation. all in spas! incredible work, wow. x.com/orcus108/statu…
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They say each scan is 806TB and they hope people are imaging daily.
One scan/day × 806 TB × 365 days = 294,190 TB, or 294.19 PB.
Using AWS S3 Glacier Deep Archive, which AWS lists at $0.00099 per GB-month / about $1 per TB-month, the storage-only cost is:
294,190 TB × $0.99/TB-month × 12 = ~$3.49 million per year, just to store your data
Midjourney@midjourney
Announcing a new division of Midjourney called "Midjourney Medical"
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@KhaliqHussainnn I have a working product (VTON extension). Are you hiring? Do you have a company? or are you a recruiter?
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We’re hiring 1-2 AI Engineers or Full Stack Developers
Work - Building a website with an AI model that lets users upload a photo and instantly see how clothing brand products would look on them.
Stack: Python, Computer Vision, GenAI, FastAPI, OpenAI, Cloud.
DM resume + projects ( something similar to this )
#hiring #JobOpening #Ai #python

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@SarvamAI @hcltech @BessemerVP @khoslaventures @peakxvpartners Its time for SOTA 500B and beyond. godspeed🚀
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We're thrilled to announce that we have raised $234M in the first close of our $300M Series B at a $1.5B valuation.
@HCLTech and @BessemerVP have joined us in this round, alongside continued support from @khoslaventures and @peakxvpartners
For countries and companies, sovereign control on the AI stack is no longer an optionality. Sarvam will be the partner of choice for this aspiration. The capital allows us to accelerate our momentum towards this full stack of models, compute, and deployments.
A huge thank you to our customers, partners, investors, and the Sarvam team for your trust and belief in what we are building. We’re just getting started.
Read more: sarvam.ai/announcing-ser…

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@_Creation22 For 84L these questions are super easy. Any MLE can answer 80% of these.
I was at least expecting multi head attention from scratch type of questions.
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My PR #37928 to JAX library got approved.
- It fixes a sparse autodiff bug involving BCOO sparse arrays, vmap, and reverse-mode gradients.
- In short: a batched sparse matvec gradient could fail because the cotangent shape didn’t match the original sparse data shape.
- The fix uses JAX’s existing _unbroadcast helper to return the correct shape.

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“don’t train your own model” is common ai advice. it's wrong. your token bill's the proof.
today, we’re excited to launch castform into open preview. castform is the easiest way for you to train your own model, on your own data.
open-weights models are performant and much cheaper. when trained on your task & proprietary data, they beat closed models. the thing standing between you and that was weeks of plumbing & years of ml expertise.
with castform, model training is as simple as prompt engineering. @castformai
bring your agent traces or raw corpora. castform turns it into training data, picks the right algorithmic recipes, manages gpus, and gives you an ide to watch and chat with your model as it learns.
see what you can build with castform👇
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@kingofknowwhere These all in 8 weeks of training? On top of their regular work? Too optimistic...
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Just got off a call with someone from TCS. They want to train employees to build ai agents- 8 weeks of training. 160 hours in total. Their requirements are straight out of 1980. This is not going to end well.

Indian Tech & Infra@IndianTechGuide
🚨 "TCS will not be hiring the kind of numbers it used to hire; AI agents may soon match TCS's employee count." - Chairman N. Chandrasekaran.
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@elonmusk @Coinvo @ShashiTharoor this seems right up your alley. Your erudite response is expected here.
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My PR #8220 was merged into @huggingface Datasets library.
- It adds support for composed splits in streaming datasets
- making split composition work more consistently between streaming and non-streaming dataset loading.
A small but practical fix for ML data pipelines.

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