AI Skill Hub 推荐使用:Bebelm本地推理引擎 是一款优质的AI工具。AI 综合评分 7.2 分,在同类工具中表现稳健。如果你正在寻找可靠的AI工具解决方案,这是一个值得深入了解的选择。
纯Rust实现的CPU推理引擎,专为LiquidAI的LFM2.5-8B模型优化。无需GPU依赖,支持本地离线推理,适合资源受限的开发者和隐私敏感场景部署。
Bebelm本地推理引擎 是一款基于 Rust 开发的开源工具,专注于 本地推理、CPU推理、Rust实现 等核心功能。作为 GitHub 开源项目,它拥有活跃的社区支持和持续的版本迭代,代码完全透明可审计,支持本地部署以保护数据隐私。无论是个人使用还是集成到企业工作流,都能提供稳定可靠的解决方案。
纯Rust实现的CPU推理引擎,专为LiquidAI的LFM2.5-8B模型优化。无需GPU依赖,支持本地离线推理,适合资源受限的开发者和隐私敏感场景部署。
Bebelm本地推理引擎 是一款基于 Rust 开发的开源工具,专注于 本地推理、CPU推理、Rust实现 等核心功能。作为 GitHub 开源项目,它拥有活跃的社区支持和持续的版本迭代,代码完全透明可审计,支持本地部署以保护数据隐私。无论是个人使用还是集成到企业工作流,都能提供稳定可靠的解决方案。
# 方式一:cargo install(推荐) cargo install bebelm # 方式二:从源码编译 git clone https://github.com/maximecb/bebelm cd bebelm cargo build --release # 二进制在 ./target/release/bebelm
# 查看帮助 bebelm --help # 基本运行 bebelm [options] <input> # 详细使用说明请查阅文档 # https://github.com/maximecb/bebelm
# bebelm 配置说明 # 查看配置选项 bebelm --config-example > config.yml # 常见配置项 # output_dir: ./output # log_level: info # workers: 4 # 环境变量(覆盖配置文件) export BEBELM_CONFIG="/path/to/config.yml"
Pure-Rust, CPU-only implementation of LFM2.5-8B-A1B Q4_K_M. This model is very capable and has only 1B active parameters, making it possible for the model to run at interactive speeds without a GPU.
This package intentionally has very few dependencies and requires no extra system packages to compile, making it easy to build and run. This is a library crate which can be imported into your Rust projects, and it's now available via crates.io. There is also a basic command-line interface that you can use.
BebeLM was tested on an M5 CPU as well as Ryzen 7x and Threadripper CPUs. It should work on Intel and on Raspberry Pi 4/5 as well, but this is untested.
Install cargo or update your rust toolchain: ```sh
curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | sh
Install the CLI from crates.io — this puts a bebelm binary on your PATH:
cargo install bebelm
Clone the repo and build from source:
git clone https://github.com/maximecb/bebelm
cd bebelm
cargo build --release
The x86 SIMD kernels are tuned for the machine you build on: .cargo/config.toml sets target-cpu=native, so a build automatically uses AVX2 + FMA when the CPU has them and falls back to whatever it supports otherwise.
Because native targets the build host, a binary built on an AVX2 machine may fault on an older CPU. To build a portable binary, override the CPU target via RUSTFLAGS (it takes precedence over .cargo/config.toml):
```sh
Build with cargo build --release, then run a subcommand on ./target/release/bebelm (the examples below use cargo run --release -- for convenience). Every subcommand loads the weights from BEBELM_WEIGHTS_FILE (see above).
- generate [options] <prompt>… — one-shot text completion of a prompt; streams tokens as they are produced and reports prefill/decode throughput. - chat [options] — interactive multi-turn chat. Streams the model's full output, showing the <think>...</think> reasoning and the final answer in different colors. The KV / conv caches persist across turns, so each message only prefills its own new tokens. Ctrl-D or /exit to quit.
Both commands take the same options (sampling defaults to the model's recommended settings):
--greedy — deterministic greedy decoding instead of sampling.--max-gen N — cap tokens generated per turn (default 2048).--max-think N — cap the <think> reasoning block to N tokens (forces </think>).--no-think — disable reasoning (equivalent to --max-think 0).--num-threads N — cap the rayon worker pool (default: one per available core).```sh
bebelm is a library first; the CLI is a thin wrapper over it. The high-level entry point is bebelm::agent::Agent — a conversation bound to a loaded model that owns the token transcript and the decode-time caches.
Load the model once, then back one or more agents with it:
use bebelm::agent::Agent;
use bebelm::model::Model;
// mmaps + validates the GGUF.
let model = Model::load("LFM2.5-8B-A1B-Q4_K_M.gguf")?;
// An agent borrows the model — the ~5.2 GB of weights are shared, so several agents are cheap.
let mut agent = Agent::new(&model);
agent.append_user("What is the capital of France?");
let turn = agent.assistant_turn(|_, _| {}); // generate the whole reply at once
println!("{}", turn.text);
// Keep chatting — the KV/conv caches persist, so only the new tokens are prefilled.
agent.append_user("And of Italy?");
let turn = agent.assistant_turn(|_, _| {});
println!("{}", turn.text);
Here |_, _| {} is a do-nothing token callback, so the whole reply is just collected into turn.text. To instead stream tokens as they are generated, pass a real callback — see Generating below.
Configuration — builder methods chained after Agent::new(..) (sampling defaults to the model's recommended temperature 0.2 / top-k 80 / repeat-penalty 1.05):
- .greedy() — deterministic argmax decoding. - .temperature(f32) / .top_k(usize) / .repeat_penalty(f32) — individual sampler knobs. - .max_gen(usize) — tokens generated per turn (default 2048). - .max_context(usize) — KV attention-window cap in tokens (default 32768); older context slides out rather than stopping generation. - .max_think(usize) — cap the <think> reasoning block (0 ⇒ no reasoning block at all).
Building the prompt — these only grow the transcript; nothing runs until you generate:
append_user(&str) — wrap a ChatML user turn (<|im_start|>user\n…<|im_end|>\n).append(&str) — append raw text (BOS is added automatically on the first append).append_tokens(&[u32]) — append already-tokenized ids (e.g. a tool result).Generating — assistant_turn and generate both return a Turn and take an on_token callback:
- assistant_turn(on_token) — open an assistant turn (ChatML), stream the reply, and close the turn; pair it with append_user (as above). - generate(on_token) — the lower-level primitive: prefill pending tokens, then decode a raw continuation (no ChatML framing) until EOS or max_gen; pair it with append for plain text completion:
let mut agent = Agent::new(&model);
agent.append("The capital of France is");
let turn = agent.generate(|_, _| {}); // raw continuation; turn.text = " the city of Paris…"
println!("The capital of France is{}", turn.text);
The returned Turn:
pub struct Turn {
pub ids: Vec<u32>, // generated ids (excludes the prompt and the terminating EOS)
pub text: String, // the decoded reply
pub stats: GenStats, // prompt_tokens, generated_tokens, prefill/decode Durations + *_tps()
pub stop: StopReason, // Eos, MaxNew, or ToolCall
}
The on_token callback is impl FnMut(u32, &str), called once per visible token as it is decoded — its arguments are (id, text):
- id: u32 — the token id; compare it against the bebelm::tokenizer constants below for control-token logic (e.g. spotting <think> / </think> to colour the reasoning). - text: &str — that same token decoded to a string, ready to print.
The terminating EOS is not passed to the callback, and the full reply is in turn.text either way. To stream tokens as they are produced:
use bebelm::tokenizer;
agent.append_user("Explain RoPE briefly.");
agent.assistant_turn(|id, text| {
if id == tokenizer::TOKEN_THINK_END {
println!(); // the <think> reasoning block just ended
}
print!("{text}");
});
agent.clear() resets the conversation (keeping the weights); agent.history() returns the full token transcript.
Cloning — Agent implements Clone, so a prefilled prompt (e.g. a system prompt plus a few example turns) can be built and prefilled once, then cheaply forked into several independent continuations — each clone keeps its own transcript and KV/conv caches, and generating on one doesn't affect the others:
let mut base = Agent::new(&model).greedy();
base.append_user("You are a terse assistant. Answer in one word where possible.");
base.assistant_turn(|_, _| {}); // prefill the shared prefix once
let mut a = base.clone();
let mut b = base.clone();
a.append_user("What is the capital of France?");
b.append_user("What is the capital of Italy?");
println!("{}", a.assistant_turn(|_, _| {}).text);
println!("{}", b.assistant_turn(|_, _| {}).text);
Tool use (function calling) — register tools with add_tool, advertise them in the system block with append_system, then let assistant_turn_with_tools run the loop: it generates, dispatches each tool the model calls, feeds the results back as a tool-role message, and repeats until the model produces a plain-text answer (bounded by max_rounds assistant turns). Tool schemas and parsed arguments are plain strings — no serde dependency.
use bebelm::agent::Agent;
use bebelm::model::Model;
use bebelm::tool::{Schema, Tool, Type};
let model = Model::load("LFM2.5-8B-A1B-Q4_K_M.gguf")?;
// Register tools before the system block. `Tool` is `Clone`, so `Agent` stays `Clone`.
let mut agent = Agent::new(&model).add_tool(Tool::new(
"add",
"Add two integers.",
Schema::new()
.req("a", Type::Int, "First addend")
.req("b", Type::Int, "Second addend"),
|call| {
// Args arrive as raw text; the callback parses what it needs.
let a: i64 = call.arg("a").and_then(|s| s.parse().ok()).unwrap_or(0);
let b: i64 = call.arg("b").and_then(|s| s.parse().ok()).unwrap_or(0);
(a + b).to_string()
},
));
agent.append_system("You are a helpful assistant.");
agent.append_user("What is 21 + 21?");
// Run the agentic loop: stream the reply, and observe each tool call + result.
let turn = agent.assistant_turn_with_tools(
8, // max assistant turns
|_id, text| print!("{text}"),
|call, result| eprintln!("[tool] {} -> {result}", call.name),
);
println!("\n{}", turn.text);
Schema::req / Schema::opt declare required / optional parameters (Type is Str, Int, Num, or Bool); Tool::raw is an escape hatch that takes the entire tool JSON verbatim. An unknown tool name is reported back to the model rather than aborting the loop.
Special tokens live in bebelm::tokenizer as u32 constants. The agent handles BOS, EOS, and the ChatML / <think> framing for you — these are mostly for interpreting the id your on_token callback receives:
- TOKEN_BOS — <|startoftext|>, start-of-sequence (auto-prepended on the first append). - TOKEN_IM_START / TOKEN_IM_END — <|im_start|> / <|im_end|>, ChatML turn delimiters. - TOKEN_EOS — alias of TOKEN_IM_END; ends a turn. - TOKEN_THINK / TOKEN_THINK_END — <think> / </think>, reasoning-block delimiters. - TOKEN_ENDOFTEXT / TOKEN_PAD — <|endoftext|> / <|pad|>, document/pad markers. - TOKEN_TOOL_LIST_START / TOKEN_TOOL_LIST_END / TOKEN_TOOL_CALL_START / TOKEN_TOOL_CALL_END — <|tool_*|> delimiters. - TOKEN_FIM_PRE / TOKEN_FIM_MID / TOKEN_FIM_SUF — <|fim_*|> fill-in-the-middle markers.
For lower-level use, Model::forward_step(token, &mut Cache) runs the cached forward pass directly, and bebelm::tokenizer::Tokenizer (encode / decode) and bebelm::sampler::Sampler are public if you want to drive decoding yourself.
创新的纯Rust实现降低依赖,CPU推理方案填补空白。但性能瓶颈明显,应用场景受���,适合特定垂直领域。
AI Skill Hub 为第三方内容聚合平台,本页面信息基于公开数据整理,不对工具功能和质量作任何法律背书。
建议在沙箱或测试环境中充分验证后,再部署至生产环境,并做好必要的安全评估。
✅ MIT 协议 — 最宽松的开源协议之一,可自由商用、修改、分发,仅需保留版权声明。
总体来看,Bebelm本地推理引擎 是一款质量良好的AI工具,在同类工具中具备一定竞争力。AI Skill Hub 将持续追踪其更新动态,建议收藏备用,结合自身场景选择合适时机引入使用。
| 原始名称 | bebelm |
| 原始描述 | 开源AI工具:CPU-only, pure-Rust implementation of LiquidAI's LFM2.5-8B-A1B。⭐16 · Rust |
| Topics | 本地推理CPU推理Rust实现开源模型离线部署 |
| GitHub | https://github.com/maximecb/bebelm |
| License | MIT |
| 语言 | Rust |
收录时间:2026-06-07 · 更新时间:2026-06-07 · License:MIT · AI Skill Hub 不对第三方内容的准确性作法律背书。