icon-to-image#As someone who primarily works in Python, what first caught my attention about Rust is the PyO3 crate: a crate that allows accessing Rust code through Python with all the speed and memory benefits that entails while the Python end-user is none-the-wiser. My first exposure to pyo3 was the fast tokenizers in Hugging Face tokenizers, but many popular Python libraries now also use this pattern for speed, including orjson, pydantic, and my favorite polars. If agentic LLMs could now write both performant Rust code and leverage the pyo3 bridge, that would be extremely useful for myself.
Жители Санкт-Петербурга устроили «крысогон»17:52
,推荐阅读快连下载安装获取更多信息
�@�����A���p���Ă��Ȃ�������20�オ22.0���A30�オ31.5���A40�オ36.0���Ə��̔N���قǍ����Ȃ��Ă������A�Ⴂ�N���ł��S���������悤�ɐ���AI�����p���Ă����킯�ł͂Ȃ����Ƃ����������B
For implementers, backpressure adds complexity without providing guarantees. The machinery to track queue sizes, compute desiredSize, and invoke pull() at the right times must all be implemented correctly. However, since these signals are advisory, all that work doesn't actually prevent the problems backpressure is supposed to solve.