Did Google hide the best version of Gemma 4 e4b in Android? The extracted model beats Unsloth and everything else I've tried.
Google 是否在 Android 中隱藏了最佳版本的 Gemma 4 e4b?提取的模型擊敗了 Unsloth 和我試過的所有其他方案。
Why does Gemma 4 e4b from Google AI Edge Gallery on Android weigh only 3.6 gigs, while the one from Unsloth (gemma-4-E4B-it-UD-Q2_K_XL.gguf) weighs 3.7, and for some reason the model image in litertlm format extracted via adb from Google AI Edge Gallery on Android acts smarter than all the versions I've downloaded from the internet and tried, and the one from litert-community/gemma-4-E4B-it-litert-lm turned out to be especially buggy, it writes completely incoherent text in Russian. Does anyone
OpenAI is hosting a livestream event. Details about the specific announcements, product launches, or demonstrations will be revealed during the broadcast.
The last time OpenAI did an unannounced livestream, they dropped GPT-4 Turbo and changed pricing overnight
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ChatGPT Images 2.0
OpenAI is launching ChatGPT Images 2.0 with major upgrades to image generation capabilities. Watch the livestream announcement at https://openai.com/live/
OpenAI is positioning this as a direct competitor to established image generation tools, suggesting they're confident enough to challenge the current market leaders
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The "just wait 6 months" argument from 2025 survived exactly one iteration
Throughout 2025 the standard response to any complaint about an LLM was some version of "just wait 3-6 months, the next generation will handle this effortlessly." The argument was everywhere. Every limitation was temporary, every missing capability was a few iterations away, every autonomous agent demo was a preview of imminent reality.
It's April 2026 now and worth checking how that held up.
On r/ClaudeAI this week there's a long thread about Opus 4.7 where multiple users argue it's a regress
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Mistral Medium 3.5 on AMD Strix Halo: Painfully Slow (Plan for Overnight Runs)
Someone actually tested Mistral Medium 3.5 on AMD's new Strix Halo chip, and the results are... not great. For a 48k-token prompt with 4k thinking tokens, it took about 2 hours just to get an answer about code architecture. Yeah, you read that right—two hours. The takeaway: if you want to run this locally on Strix Halo, queue it up before bed. The technical setup involved heavy optimization (Q5_K_XL quantization, GPU acceleration with -ngl 999, cache reuse), but even with all that tuning, it's still a crawl. Not exactly the "instant local AI" dream, but hey, at least it works.