HackerTrans
TopNewTrendsCommentsPastAskShowJobs

anemll

no profile record

Submissions

iPhone 17 Pro Demonstrated Running a 400B LLM

twitter.com
713 points·by anemll·4 tháng trước·326 comments

RDMA over Thunderbolt 5 on Apple Silicon – 14µs latency

twitter.com
6 points·by anemll·8 tháng trước·1 comments

comments

anemll
·3 tháng trước·discuss
Check it out, you might be able to speed it up using this https://github.com/Anemll/anemll-flash-mlx https://x.com/anemll/status/2038684375425200360
anemll
·4 tháng trước·discuss
17B includes 10 expert plus one shared. So actual size of the expert is much smaller
anemll
·4 tháng trước·discuss
Check my repo, I had added some support for GUFF/untloth, Q3,Q5/Q8 https://github.com/Anemll/flash-moe/blob/iOS-App/docs/gguf-h...
anemll
·4 tháng trước·discuss
Thanks for posting this, that's how I first found out about Dan's experiment! SSD speed doubled in the M5P/M generation, that makes it usable! I think one paper under the radar is "KV Prediction for Improved Time to First Token" https://arxiv.org/abs/2410.08391 which hopefully can help with prefill for Flash streaming.
anemll
·4 tháng trước·discuss
SSD streaming to compute units is new. M4 max can do 15 t/s with its 15GB/s drives
anemll
·4 tháng trước·discuss
Yes, SSD speed is critical though. The repo has macOS builds for CLI and Desktop. It's early stages though. M4 Max gets 10-15 TPS on 400B depending on quantization. Compute is an issue too; a lot of code is PoC level.
anemll
·4 tháng trước·discuss
multiple NAND, and apple already used it in Mac Studio. Plus better cooling
anemll
·4 tháng trước·discuss
both, tbh
anemll
·4 tháng trước·discuss
Probably 2x speed for Mac Studio this year if they do double NAND ( or quad?)
anemll
·4 tháng trước·discuss
[flagged]
anemll
·7 tháng trước·discuss
Tensor Parallel test with RDMA last week https://x.com/anemll/status/1996349871260107102

Note fast sync workaround
anemll
·8 tháng trước·discuss
In macOS 26.2 (Tahoe) beta, Apple introduced a low-latency Thunderbolt 5 RDMA driver, enabling up to 80 Gb/s bidirectional bandwidth for Mac clustering—ideal for distributed ML on Apple Silicon. It's optimized for low latency, delivering ~14 Gbps throughput at 4K MTU. My tests (M4 Pro to M3 Ultra): Stock ibv_uc_pingpong achieved ~14 µs round-trip for 4K packets (requires GID index setup). Custom C++ variant hit 6-13 µs/iter: https://x.com/anemll/status/1993192776897642942 Code and details: https://github.com/Anemll/mlx-rdma/blob/anemll-rdma/ibv_roun... https://github.com/Anemll/mlx-rdma/blob/anemll-rdma/ibv_roun... (includes steps to enable RDMA in macOS Recovery OS terminal) Theoretically, this accelerates pipeline parallelism (faster layer handoffs) and tensor parallelism (low-overhead sharding) on GPUs, with potential extensions to ANE for real-time AI workflows.
anemll
·10 tháng trước·discuss
It’s also supported in Apple Neural Engine https://github.com/Anemll/Anemll