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ammar_x

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投稿

DeepSWE: A contamination-free benchmark for long-horizon coding agents

deepswe.datacurve.ai
67 ポイント·投稿者 ammar_x·2 か月前·20 コメント

Xiaomi Mimo-v2.5 pricing is now permanently reduced

twitter.com
5 ポイント·投稿者 ammar_x·2 か月前·0 コメント

コメント

ammar_x
·2 か月前·議論
Is there some sort of a leaderboard for this test? Like if you'd give each of Opus 4.8 and GPT 5.5 a score out of 100, what would the scores be?
ammar_x
·2 か月前·議論
Absolutely! We need new and better benchmarks like this.

I have a question: why not use the maximum available reasoning on each LLM? For example, I see that Opus 4.7 at `max` reasoning but Sonnet 4.6 at `high`. Wouldn't it be a fairer comparison if all were at max?
ammar_x
·2 か月前·議論
https://x.com/serenaa_ge/status/2059308400866111692
ammar_x
·2 か月前·議論
I usually do this for complex features:

- Opus 4.7 writes the code - I make GPT-5.5 in Codex to review it (given context) - I provide the review back to Opus and ask it to verify the review findings - Make Opus plan the fixes then execute them - Ask GPT-5.5 to review the fixes and check if they solve the problems
ammar_x
·2 か月前·議論
Cool, but body font size is too small for comfortable reading!
ammar_x
·2 か月前·議論
I've used Brave Search and found it better than Google's in some cases
ammar_x
·2 か月前·議論
This looks great for quick audio operations without the need to use heavy apps.

One question: I tried the "Fade In" effect; is there a way to control its timing (i.e. the part of the clip where the effect is applied) ?
ammar_x
·2 か月前·議論
You can use V4 Pro with Claude Code [1].

I tried it and it's impressive.

[1]: https://api-docs.deepseek.com/quick_start/agent_integrations...
ammar_x
·9 か月前·議論
My "trick" was to divide things into batches (which can be big with LLMs with larger context sizes) and classify the items in each batch, then take the resulting categories from each batch and feed them into an LLM to group semantically similar categories into groups with a representative category for each group. The representative category can be chosen from the group or created by the LLM. This is an over-simplification of the process but that's the gist of it.
ammar_x
·9 か月前·議論
Language support is not mentioned in the repo. But from the paper, it offers extensive multilingual support (nearly 100 languages) which is good, but I need to test it to see how it compares to Gemini and Mistral OCR.
ammar_x
·9 か月前·議論
Claude Skills seem to be the option that offers highest flexibility to add more capabilities at most simplicity. Better than MCP in my opinion. Hope it becomes a standard and get adopted by OpenAI and the rest of labs.