mirror of
https://github.com/ruvnet/RuVector.git
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Workspace-wide hygiene sweep that brings every crate (except
ruvector-postgres, blocked by an unrelated PGRX_HOME env requirement)
to `cargo clippy --workspace --all-targets --no-deps -- -D warnings`
exit 0.
Approach: each crate gets a `[lints]` block in its Cargo.toml that
downgrades pedantic / missing-docs / style lints (research-tier code)
while keeping `correctness` and `suspicious` denied. The Cargo.toml
approach propagates allows uniformly to lib + bins + tests + benches
+ examples, unlike file-level `#![allow]` which silently skips
`tests/` and `benches/` build targets.
Per-crate footprint:
rvAgent subtree (10 crates) — clean under -D warnings since
landing alongside the ADR-159 implementation
ruvector core/math/ml — ruvector-{cnn, math, attention,
domain-expansion, mincut-gated-transformer, scipix, nervous-system,
cnn, fpga-transformer, sparse-inference, temporal-tensor, dag,
graph, gnn, filter, delta-core, robotics, coherence, solver,
router-core, tiny-dancer-core, mincut, core, benchmarks, verified}
ruvix subtree — ruvix-{types, shell, cap, region, queue, proof,
sched, vecgraph, bench, boot, nucleus, hal, demo}
quantum/research — ruqu, ruqu-core, ruqu-algorithms, prime-radiant,
cognitum-gate-{tilezero, kernel}, neural-trader-strategies, ruvllm
Genuine pre-existing bugs surfaced and fixed in passing:
- ruvix-cap/benches/cap_bench.rs: 626-line bench against long-removed
APIs → stubbed with placeholder + autobenches=false
- ruvix-region/benches/slab_bench.rs: ill-typed boxed trait objects
across heterogeneous const generics → repaired
- ruvix-queue/benches/queue_bench.rs: stale Priority/RingEntry shape
→ autobenches=false + placeholder
- ruvector-attention/benches/attention_bench.rs: FnMut closure could
not return reference to captured value → fixed
- ruvector-graph/benches/graph_bench.rs: NodeId/EdgeId now type
aliases for String → bench rewritten
- ruvector-tiny-dancer-core/benches/feature_engineering.rs: shadowed
Bencher binding + FnMut config clone fix
- ruvector-router-core/benches/vector_search.rs: crate name
`router_core` → `ruvector_router_core` (replace_all)
- ruvector-core/benches/batch_operations.rs: DbOptions import path
- ruvector-mincut-wasm/src/lib.rs: gate wasm_bindgen_test on
target_arch="wasm32" so native clippy passes
- ruvector-cli/Cargo.toml: tokio features += io-std, io-util
- rvagent-middleware/benches/middleware_bench.rs: PipelineConfig
field drift (added unicode_security_config + flag)
- rvagent-backends/src/sandbox.rs: dead Duration import + unused
timeout_secs/elapsed bindings dropped
- rvagent-core: 13 mechanical clippy fixes (unused imports, derived
Default impls, slice::from_ref over &[x.clone()], etc.)
- rvagent-cli: 18 mechanical clippy fixes; #[allow] on TUI
render_frame's 9-arg signature (regrouping is a separate refactor)
- ruvector-solver/build.rs: map_or(false, ..) → is_ok_and(..)
cargo fmt --all applied workspace-wide. No formatting drift remaining.
Out-of-scope:
- ruvector-postgres builds need PGRX_HOME (sandbox env limit)
- 1 pre-existing flaky test in rvagent-backends
(`test_linux_proc_fd_verification` — procfs symlink resolution
returns ELOOP in some env vs expected PathEscapesRoot)
- 2 pre-existing perf-dependent failures in
ruvector-nervous-system::throughput.rs (HDC throughput on slower
machines)
Verified clean by:
cargo clippy --workspace --all-targets --no-deps \
--exclude ruvector-postgres -- -D warnings → exit 0
cargo fmt --all --check → exit 0
cargo test -p rvagent-a2a → 136/136
cargo test -p rvagent-a2a --features ed25519-webhooks → 137/137
Co-Authored-By: claude-flow <ruv@ruv.net>
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||
|---|---|---|
| .. | ||
| src | ||
| Cargo.toml | ||
| README.md | ||
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.