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A vector-powered CLI for semantic search over files.

Project description

Vexor

Vexor

Python PyPI CI Codecov License


Vexor is a semantic search engine that builds reusable indexes over files and code. It supports configurable embedding and reranking providers, and exposes the same core through a Python API, a CLI tool, and an optional desktop frontend.

Vexor Demo Video

Why Vexor?

When you remember what a file does but forget its name or location, Vexor finds it instantly—no grep patterns or directory traversal needed.

Designed for both humans and AI coding assistants, enabling semantic file discovery in autonomous agent workflows.

Install

Download standalone binary from releases (no Python required), or:

pip install vexor  # also works with pipx, uv

Quick Start

0. Guided Setup (Recommended)

vexor init

The wizard also runs automatically on first use when no config exists.

1. Search

vexor "api client config"  # defaults to search current directory
# or explicit path:
vexor search "api client config" --path ~/projects/demo --top 5
# in-memory search only:
vexor search "api client config" --no-cache 

Vexor auto-indexes on first search. Example output:

Vexor semantic file search results
──────────────────────────────────
#   Similarity   File path                       Lines   Preview
1   0.923        ./src/config_loader.py          -       config loader entrypoint
2   0.871        ./src/utils/config_parse.py     -       parse config helpers
3   0.809        ./tests/test_config_loader.py   -       tests for config loader

2. Explicit Index (Optional)

vexor index  # indexes current directory
# or explicit path:
vexor index --path ~/projects/demo --mode code

Useful for CI warmup or when auto_index is disabled.

Desktop App (Experimental)

The desktop app is experimental and not actively maintained. It may be unstable. For production use, prefer the CLI.

GUI

Download the desktop app from releases.

Python API

Vexor can also be imported and used directly from Python:

from vexor import index, search

index(path=".", mode="head")
response = search("config loader", path=".", mode="name")

for hit in response.results:
    print(hit.path, hit.score)

By default it reads ~/.vexor/config.json. For runtime config overrides, cache controls, and per-call options, see docs/api/python.md.

AI Agent Skill

This repo includes a skill for AI agents to use Vexor effectively:

vexor install --skills claude  # Claude Code
vexor install --skills codex   # Codex

Skill source: plugins/vexor/skills/vexor-cli

Configuration

vexor config --set-provider openai          # default; also supports gemini/custom/local
vexor config --set-model text-embedding-3-small
vexor config --set-batch-size 0             # 0 = single request
vexor config --set-embed-concurrency 4       # parallel embedding requests
vexor config --set-extract-concurrency 4     # parallel file extraction workers
vexor config --set-extract-backend auto      # auto|thread|process (default: auto)
vexor config --set-auto-index true          # auto-index before search (default)
vexor config --rerank bm25                  # optional BM25 rerank for top-k results
vexor config --rerank flashrank             # FlashRank rerank (requires optional extra)
vexor config --rerank remote                # remote rerank via HTTP endpoint
vexor config --set-flashrank-model ms-marco-MultiBERT-L-12  # multilingual model
vexor config --set-flashrank-model          # reset FlashRank model to default
vexor config --clear-flashrank              # remove cached FlashRank models
vexor config --set-remote-rerank-url https://proxy.example.com/v1/rerank
vexor config --set-remote-rerank-model bge-reranker-v2-m3
vexor config --set-remote-rerank-api-key $VEXOR_REMOTE_RERANK_API_KEY  # or env var
vexor config --clear-remote-rerank          # clear remote rerank config
vexor config --set-base-url https://proxy.example.com  # optional proxy
vexor config --clear-base-url               # reset to official endpoint
vexor config --show                         # view current settings

Rerank defaults to off. It is highly recommended to configure the Reranker in advance to improve search accuracy. FlashRank requires pip install "vexor[flashrank]" and caches models under ~/.vexor/flashrank.

Config stored in ~/.vexor/config.json.

Configure API Key

vexor config --set-api-key "YOUR_KEY"

Or via environment: VEXOR_API_KEY, OPENAI_API_KEY, or GOOGLE_GENAI_API_KEY.

Rerank

Rerank reorders the semantic results with a secondary ranker. Candidate sizing uses clamp(int(--top * 2), 20, 150).

Recommended defaults:

  • Keep off unless you want extra precision.
  • Use bm25 for lightweight lexical boosts; it is fast and lightweight.
  • BM25 uses a multilingual tokenizer (Bert pre-tokenizer), so it can handle CJK better.
  • Use flashrank for stronger reranking (requires pip install "vexor[flashrank]" and downloads a model to ~/.vexor/flashrank).
  • Use remote to call a hosted reranker that accepts {model, query, documents} and returns ranked indexes.
  • For Chinese or multi-language content, set --set-flashrank-model ms-marco-MultiBERT-L-12.
  • If unset, FlashRank defaults to ms-marco-TinyBERT-L-2-v2.

Providers: Remote vs Local

Vexor supports both remote API providers (openai, gemini, custom) and a local provider (local):

  • Remote providers use api_key and optional base_url.
  • custom is OpenAI-compatible and requires both model and base_url.
  • Local provider ignores api_key/base_url and only uses model plus local_cuda (CPU/GPU switch).

Local Model (Offline)

Install the lightweight local backend:

pip install "vexor[local]"

GPU backend (requires CUDA drivers):

pip install "vexor[local-cuda]"

Download a local embedding model and auto-configure Vexor:

vexor local --setup --model intfloat/multilingual-e5-small

Then use vexor search / vexor index as usual.

Local models are stored in ~/.vexor/models (clear with vexor local --clean-up).

GPU (optional): install onnxruntime-gpu (or vexor[local-cuda]) and use vexor local --setup --cuda (or vexor local --cuda). Switch back with vexor local --cpu.

Index Modes

Control embedding granularity with --mode:

Mode Description
auto Default. Smart routing: Python/JS/TS → code, Markdown → outline, small files → full, large files → head
name Embed filename only (fastest, zero content reads)
head Extract first snippet for lightweight semantic context
brief Extract high-frequency keywords from PRDs/requirements docs
full Chunk entire content; long documents searchable end-to-end
code AST-aware chunking by module/class/function boundaries for Python and JavaScript/TypeScript; other files fall back to full
outline Chunk Markdown by heading hierarchy with breadcrumbs; non-.md falls back to full

Cache Behavior

Index cache keys derive from: --path, --mode, --include-hidden, --no-recursive, --no-respect-gitignore, --ext, --exclude-pattern.

Keep flags consistent to reuse cache; changing flags creates a separate index.

vexor config --show-index-all    # list all cached indexes
vexor config --clear-index-all   # clear all cached indexes
vexor index --path . --clear     # clear index for specific path

Re-running vexor index only re-embeds changed files; >50% changes trigger full rebuild.

Command Reference

Command Description
vexor init Run the interactive setup wizard
vexor QUERY Shortcut for vexor search QUERY
vexor search QUERY --path PATH Semantic search (auto-indexes if needed)
vexor index --path PATH Build/refresh index manually
vexor config --show Display current configuration
vexor config --clear-flashrank Remove cached FlashRank models under ~/.vexor/flashrank
vexor local --setup [--model MODEL] Download a local model and set provider to local
vexor local --clean-up Remove local model cache under ~/.vexor/models
vexor local --cuda Enable CUDA for local embeddings (requires onnxruntime-gpu)
vexor local --cpu Disable CUDA and use CPU for local embeddings
vexor install --skills claude Install Agent Skill for Claude Code
vexor install --skills codex Install Agent Skill for Codex
vexor doctor Run diagnostic checks (command, config, cache, API key, API connectivity)
vexor update [--upgrade] [--pre] Check for new version (optionally upgrade; --pre includes pre-releases)
vexor feedback Open GitHub issue form (or use gh)
vexor alias Print a shell alias for vx and optionally apply it

Common Flags

Flag Description
--path PATH Target directory (default: current working directory)
--mode MODE Index mode (auto/name/head/brief/full/code/outline)
--top K / -k Number of results (default: 5)
--ext .py,.md / -e Filter by extension (repeatable)
--exclude-pattern PATTERN Exclude paths by gitignore-style pattern (repeatable; .js treated as **/*.js)
--include-hidden / -i Include hidden files
--no-recursive / -n Don't recurse into subdirectories
--no-respect-gitignore Include gitignored files
--format porcelain Script-friendly TSV output
--format porcelain-z NUL-delimited output
--no-cache In-memory only; do not read/write index cache

Porcelain output fields: rank, similarity, path, chunk_index, start_line, end_line, preview (line fields are - when unavailable).

Documentation

See docs for more details.

Contributions, issues, and PRs welcome! Star if you find it helpful.

License

MIT

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