ruvector/crates/ruvllm-cli
rUv eafba64fa5
fix(security): RUSTSEC advisories + clippy hardening in RuVector (#504)
* fix(security): RUSTSEC advisories + clippy hardening in RuVector

- Replace all bare `partial_cmp().unwrap()` calls on f32/f64 with
  `.unwrap_or(Ordering::Equal)` to prevent panics on NaN values in
  sorting/max-by operations across ruvllm, ruvector-dag, prime-radiant,
  and rvagent-wasm (12 sites in production code).
- Add input validation guards to the HTTP search endpoint: reject k=0,
  k > 10_000, empty vectors, and vectors exceeding 65_536 dimensions,
  preventing memory exhaustion via unbounded allocations.
- Harden LocalFsBackend::execute in rvagent-cli with env_clear() +
  safe-env allowlist (SEC-005), deadline-based timeout enforcement, and
  1 MB output truncation, matching the security posture of LocalShellBackend.
- Remove 129 occurrences of the deprecated `unused_unit = "allow"` lint
  and 3 occurrences of the removed `clippy::match_on_vec_items` lint from
  Cargo.toml files workspace-wide; both are no-ops in current Rust/Clippy.
- All 653+ tests across ruvector-core, ruvector-server, ruvector-dag,
  rvagent-cli, and prime-radiant pass with zero failures.

Note: `bytes` is already at 1.11.1 (>= 1.10.0); `paste` 1.0.15 is a
transitive dependency with no semver fix available upstream; `cargo audit`
returns clean.

Co-Authored-By: claude-flow <ruv@ruv.net>

* fix(ci): cargo fmt + restore workspace unused_unit lint allow

- Run cargo fmt --all across all 9 files that drifted from rustfmt style
  (prime-radiant/energy.rs, ruvector-dag/bottleneck.rs+reasoning_bank.rs,
   ruvector-server/points.rs, ruvllm/pretrain_pipeline.rs+report.rs+registry.rs,
   rvagent-cli/app.rs, rvagent-wasm/gallery.rs)
- Add [workspace.lints.clippy] unused_unit = "allow" to root Cargo.toml;
  the per-crate entries removed in the security commit were still needed —
  moving to workspace-level is cleaner and restores -D warnings CI pass

Co-Authored-By: claude-flow <ruv@ruv.net>

* fix(ci): remove unneeded unit return type in ruvix bench

Removes `-> ()` from the Fn bound in run_benchmark_with_kernel
(crates/ruvix/benches/src/ruvix.rs:50) — triggers clippy::unused_unit
under -D warnings. Clippy prefers `Fn(&mut Kernel)` without explicit
unit return.

Co-Authored-By: claude-flow <ruv@ruv.net>

* fix(ci): resolve rustfmt and clippy unused_unit failures

- Run cargo fmt --all to fix long closure formatting in 9 files
  (energy.rs, bottleneck.rs, reasoning_bank.rs, points.rs,
  pretrain_pipeline.rs, report.rs, registry.rs, app.rs, gallery.rs)
- Add unused_unit = "allow" to [lints.clippy] in ruvix-bench and
  ruvector-mincut Cargo.toml files to suppress the unused_unit lint
  that was previously suppressed globally and now fires on two
  Fn(&mut T) -> () and FnMut() -> () function bounds

Co-Authored-By: claude-flow <ruv@ruv.net>
2026-05-23 05:40:24 -04:00
..
src fix: resolve compilation errors across workspace 2026-03-16 23:15:25 -04:00
Cargo.toml fix(security): RUSTSEC advisories + clippy hardening in RuVector (#504) 2026-05-23 05:40:24 -04:00
README.md feat(training): RuvLTRA v2.4 Ecosystem Edition - 100% routing accuracy (#123) 2026-01-20 20:08:30 -05:00

RuvLLM CLI

Command-line interface for RuvLLM inference, optimized for Apple Silicon.

Installation

# From crates.io
cargo install ruvllm-cli

# From source (with Metal acceleration)
cargo install --path . --features metal

Commands

Download Models

Download models from HuggingFace Hub:

# Download Qwen with Q4K quantization (default)
ruvllm download qwen

# Download with specific quantization
ruvllm download qwen --quantization q8
ruvllm download mistral --quantization f16

# Force re-download
ruvllm download phi --force

# Download specific revision
ruvllm download llama --revision main

Model Aliases

Alias Model ID
qwen Qwen/Qwen2.5-7B-Instruct
mistral mistralai/Mistral-7B-Instruct-v0.3
phi microsoft/Phi-3-medium-4k-instruct
llama meta-llama/Meta-Llama-3.1-8B-Instruct

Quantization Options

Option Description Memory Savings
q4k 4-bit quantization (default) ~75%
q8 8-bit quantization ~50%
f16 Half precision ~50%
none Full precision 0%

List Models

# List all available models
ruvllm list

# List only downloaded models
ruvllm list --downloaded

# Detailed listing with sizes
ruvllm list --long

Model Information

# Show model details
ruvllm info qwen

# Output includes:
# - Model architecture
# - Parameter count
# - Download status
# - Disk usage
# - Supported features

Interactive Chat

# Start chat with default settings
ruvllm chat qwen

# With custom system prompt
ruvllm chat qwen --system "You are a helpful coding assistant."

# Adjust generation parameters
ruvllm chat qwen --temperature 0.5 --max-tokens 1024

# Use specific quantization
ruvllm chat qwen --quantization q8

Chat Commands

During chat, use these commands:

Command Description
/help Show available commands
/clear Clear conversation history
/system <prompt> Change system prompt
/temp <value> Change temperature
/quit or /exit Exit chat

Start Server

OpenAI-compatible inference server:

# Start with defaults
ruvllm serve qwen

# Custom host and port
ruvllm serve qwen --host 0.0.0.0 --port 8080

# Configure concurrency
ruvllm serve qwen --max-concurrent 8 --max-context 8192

API Endpoints

Endpoint Method Description
/v1/chat/completions POST Chat completions
/v1/completions POST Text completions
/v1/models GET List models
/health GET Health check

Example Request

curl http://localhost:8080/v1/chat/completions \
  -H "Content-Type: application/json" \
  -d '{
    "model": "qwen",
    "messages": [
      {"role": "user", "content": "Hello!"}
    ],
    "max_tokens": 256
  }'

Run Benchmarks

# Basic benchmark
ruvllm benchmark qwen

# Configure benchmark
ruvllm benchmark qwen \
  --warmup 5 \
  --iterations 20 \
  --prompt-length 256 \
  --gen-length 128

# Output formats
ruvllm benchmark qwen --format json
ruvllm benchmark qwen --format csv

Benchmark Metrics

  • Prefill Latency: Time to process input prompt
  • Decode Throughput: Tokens per second during generation
  • Time to First Token (TTFT): Latency before first output token
  • Memory Usage: Peak GPU/RAM consumption

Global Options

# Enable verbose logging
ruvllm --verbose <command>

# Disable colored output
ruvllm --no-color <command>

# Custom cache directory
ruvllm --cache-dir /path/to/cache <command>

# Or via environment variable
export RUVLLM_CACHE_DIR=/path/to/cache

Configuration

Cache Directory

Models are cached in:

  • macOS: ~/Library/Caches/ruvllm
  • Linux: ~/.cache/ruvllm
  • Windows: %LOCALAPPDATA%\ruvllm

Override with --cache-dir or RUVLLM_CACHE_DIR.

Logging

Set log level with RUST_LOG:

RUST_LOG=debug ruvllm chat qwen
RUST_LOG=ruvllm=trace ruvllm serve qwen

Examples

Basic Workflow

# 1. Download a model
ruvllm download qwen

# 2. Verify it's downloaded
ruvllm list --downloaded

# 3. Start chatting
ruvllm chat qwen

Server Deployment

# Download model first
ruvllm download qwen --quantization q4k

# Start server with production settings
ruvllm serve qwen \
  --host 0.0.0.0 \
  --port 8080 \
  --max-concurrent 16 \
  --max-context 4096 \
  --quantization q4k

Performance Testing

# Run comprehensive benchmarks
ruvllm benchmark qwen \
  --warmup 10 \
  --iterations 50 \
  --prompt-length 512 \
  --gen-length 256 \
  --format json > benchmark_results.json

Troubleshooting

Out of Memory

# Use smaller quantization
ruvllm chat qwen --quantization q4k

# Or reduce context length
ruvllm serve qwen --max-context 2048

Slow Download

# Resume interrupted download
ruvllm download qwen

# Force fresh download
ruvllm download qwen --force

Metal Issues (macOS)

Ensure Metal is available:

# Check Metal device
system_profiler SPDisplaysDataType | grep Metal

# Try with CPU fallback
RUVLLM_NO_METAL=1 ruvllm chat qwen

Feature Flags

Build with specific features:

# Metal acceleration (macOS)
cargo install ruvllm-cli --features metal

# CUDA acceleration (NVIDIA)
cargo install ruvllm-cli --features cuda

# Both (if available)
cargo install ruvllm-cli --features "metal,cuda"

License

Apache-2.0 / MIT dual license.