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Palmik

2,791 karmajoined 16 lat temu

Submissions

[untitled]

1 points·by Palmik·3 dni temu·0 comments

Trump administration asks OpenAI to stagger release of new model

ca.finance.yahoo.com
2 points·by Palmik·15 dni temu·0 comments

House Committees Probe Cursor Parent, Airbnb over Chinese AI

semafor.com
2 points·by Palmik·2 miesiące temu·0 comments

Anthropic Claude Code HERMES.md billing flaw

consumerrights.wiki
1 points·by Palmik·2 miesiące temu·0 comments

DeepSeek V4 in vLLM: Efficient Long-Context Attention

vllm-website-pdzeaspbm-inferact-inc.vercel.app
2 points·by Palmik·3 miesiące temu·0 comments

[untitled]

1 points·by Palmik·3 miesiące temu·0 comments

NSA is using Anthropic's Mythos despite blacklist

axios.com
485 points·by Palmik·3 miesiące temu·348 comments

Mozilla Announces "Thunderbolt" as an Open-Source, Enterprise AI Client

phoronix.com
25 points·by Palmik·3 miesiące temu·11 comments

Google, Pentagon discuss classified AI deal, the Information reports

reuters.com
6 points·by Palmik·3 miesiące temu·2 comments

OpenAI, Anthropic, Google Unite to Combat Model Copying in China

bloomberg.com
3 points·by Palmik·3 miesiące temu·0 comments

Speaking of Voxtral

mistral.ai
19 points·by Palmik·4 miesiące temu·1 comments

Nvidia Nemotron Coalition of Leading AI Labs to Advance Open Frontier Models

nvidianews.nvidia.com
5 points·by Palmik·4 miesiące temu·0 comments

[untitled]

1 points·by Palmik·4 miesiące temu·0 comments

Sam Altman AMA on DoD Collaboration

twitter.com
20 points·by Palmik·4 miesiące temu·3 comments

Palantir Sues Magazine for Reporting That the Government Didn't Want Palantir

techdirt.com
13 points·by Palmik·4 miesiące temu·0 comments

Slint: Cross Platform UI Library

slint.dev
3 points·by Palmik·5 miesięcy temu·0 comments

Sqldef: Idempotent schema management tool for MySQL, PostgreSQL, SQLite

sqldef.github.io
263 points·by Palmik·5 miesięcy temu·61 comments

SafeQL: An ESLint plugin for writing SQL queries in a type-safe way

safeql.dev
1 points·by Palmik·5 miesięcy temu·0 comments

India and EU announce landmark trade deal

bbc.com
207 points·by Palmik·5 miesięcy temu·265 comments

Qwen3-TTS family is now open sourced: Voice design, clone, and generation

qwen.ai
744 points·by Palmik·6 miesięcy temu·225 comments

comments

Palmik
·22 dni temu·discuss
By requiring various forms of identification to use social media, it will be harder to criticize your leaders anonymously without fear of retribution.
Palmik
·w zeszłym miesiącu·discuss
The company representative said that they report all users that use Graphene OS, without any additional qualifiers. Presumably after they've already uploaded their personal details. That's the egregious part.
Palmik
·2 miesiące temu·discuss
DeepSeek V4's KV cache is very efficient due to its heavily compressed and sparse attention architecture.

DeepSeek V3.2 which uses DSA only (sparse attention, but without compression from HCA and CSA) is a smaller model but uses 10x more memory at 1M context window compared to DS V4 Pro.

Also, I have to say, DeepSeek's API has a very good cache hit rate. With the same workload, I see ~80% KV cache hit rate with the DS API vs ~50% with the major western inference providers for open weight models.
Palmik
·2 miesiące temu·discuss
I really hope Huawei ramps up Ascend production and DeepSeek open sources their optimized inference engine (they already open source a lot of their kernels -- kudos to them). This could shake things up.
Palmik
·2 miesiące temu·discuss
There are several things at play:

Inference stack efficiency: Many of these providers take off the shelf sglang / vllm / trtllm and hope for the best. Meanwhile DeepSeek team is known for pushing the boundary of optimizations.

Now, sglang and vllm are great pieces of software, but take DeepSeek's Sparse Attention (DSA). Introduced 1.5 years ago (https://arxiv.org/abs/2512.02556), used by DeepSeek 3.2, GLM 5, DeepSeek V4. Only now is it slowly strating to get optimized in the major inference engines: (https://github.com/sgl-project/sglang/issues/19380 https://github.com/sgl-project/sglang/pull/22851 etc.). Of course, DS V4 adds extra optimizations into the model architecture on top of DSA, and those will take more time to be taken full advantage of by the open source inference engines.

Privacy: Betting that people will pay extra for inference hosted outside China. This is especially true with DeepSeek, because DeepSeek is transparent about using API data for model improvements.

And few other things (scale (matters a lot for MoEs), reliability, soft enterprise lock in, etc.)

---

There is also, likely, tacit collusion at play here. Look at GLM 5 and GLM 5.1 prices. GLM 5 and 5.1 cost the same to run, but providers decided to charge much more for 5.1 because it is much better model, and because Z.AI raised their price as well.
Palmik
·2 miesiące temu·discuss
Why was the title changed from "DeepSeek V4—almost on the frontier, a fraction of the price" to "DeepSeek V4—almost on the frontier"?
Palmik
·2 miesiące temu·discuss
Surely art also exists in textual realm.
Palmik
·3 miesiące temu·discuss
I don't think "friendly" and "publishing benchmarks" are at odds with each other.

Model makers (both open and closed weight) typically publish benchmarks against other models and when they do not, people rightfully call them out.

Including comparison against "other OSS engine" is just not helpful (what if it's a sandbagged baseline like HF Transformers?)
Palmik
·3 miesiące temu·discuss
Similar article for vLLM: https://vllm-website-pdzeaspbm-inferact-inc.vercel.app/blog/...

Bechmarks from InferenceX (they do not have apples-to-apples setups to compare the different engines for whatever reason): https://inferencex.semianalysis.com/inference?i_hc=1&g_model...

I find it odd that sglang, vLLM, TRTLLM don't seem to want to publish benchmarks comparing each other. They used to, but now there seems to be some unspoken rule against it.

At least we get comparison against "other OSS engine" this time, but that could be HF's Transformers as well :)
Palmik
·3 miesiące temu·discuss
Or there will be DSv4.1/2/3 ;)
Palmik
·3 miesiące temu·discuss
Misleading conclusion.

This model is 8 times cheaper than Gemini for 1K images. Gemini is extremely overpriced.

1K image with Gemini is roughly $0.08 and only $0.01 with GPT Image.
Palmik
·3 miesiące temu·discuss
Did you enable thinking for your experiment? Are you sure you were on the 2.0 rather than 1.5 version?
Palmik
·3 miesiące temu·discuss
I do not think this is a good prompt or useful benchmark, but nonetheless, it seems to work better for me: https://chatgpt.com/share/69e88a94-ded8-8395-b5dc-abceb2f44d...
Palmik
·3 miesiące temu·discuss
Could it be made even faster using some of the ideas from https://github.com/zerobootdev/zeroboot ?
Palmik
·3 miesiące temu·discuss
Official announcement: https://www.thunderbolt.io/announcing-thunderbolt
Palmik
·4 miesiące temu·discuss
My email does mention it clearly:

> Again, your organization's Copilot interaction data is not included in model training under this new policy, but we are excited for you to enjoy the product improvements it will unlock.
Palmik
·4 miesiące temu·discuss
Great work! There is maybe some bug. When you click on one of the 4 "opposing" countries (e.g. Czech Republic, Poland), it scrolls down and then shows that majority of the representatives from the country actually support it. Is that intended? Won't that make people from those countries "relax" even though they might have an impact by contacting their represenatives?
Palmik
·4 miesiące temu·discuss
What are your thoughts on this? https://www.anthropic.com/news/where-stand-department-war

I am honestly unclear on the reasoning of people who flock from OpenAI to Anthropic, and doubly so of those who are not US citizens.
Palmik
·4 miesiące temu·discuss
Except most of the world's population, and in fact large fraction of the engineers and scientists working on these things, are not US citizens.
Palmik
·4 miesiące temu·discuss
From Anthropics recent blog post: https://www.anthropic.com/news/detecting-and-preventing-dist...

> By examining request metadata, we were able to trace these accounts to specific researchers at the lab.

> The volume, structure, and focus of the prompts were distinct from normal usage patterns

Clearly some employees of Anthropic personally looked at individual inputs and outputs of their API