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kosha (कोश) — a treasury of your repo and environment context for coding agents. FTS5 + vector search + call graph, no LLMs required.

Project description

kosha

kosha (कोश) - A treasury of your repo and environment context for humans and coding assistants. > kosha gives you persistent knowledge of your codebase and installed packages — indexed with FTS5 + vector search + call graph, merged with Reciprocal Rank Fusion. Results include the code snippet, callers, callees, and PageRank. No LLMs required.

Install

kosha is a dev dependency — it runs at development time so your AI coding assistant can search your code. It does not ship with your application.

# uv (recommended)
uv add --dev koshas

# pip
pip install --group dev koshas

One-time project setup

Run this once to drop a SKILL.md into .agents/skills/kosha/ — the file your AI harness reads to know kosha exists and how to call it.

Kosha(install_skill=True)   # writes .agents/skills/kosha/SKILL.md at your repo root
# Commit this file so every contributor (and every AI) gets it automatically.

Sync once per session

Index your repo code, installed packages, and call graph in one call. Subsequent calls are incremental — only changed files and new package versions are re-indexed.

k = Kosha()   # auto-detects git repo root

k.sync(pkgs=['fasthtml', 'fastcore', 'litesearch'])
# Indexes:
#   .kosha/code.db   — your repo code chunks + embeddings
#   .kosha/graph.db  — call graph (callers, callees, PageRank)
#   ~/.local/share/kosha/env.db — installed packages (shared across repos)

Searching — context()

The main entry point. Parses optional key:value filters, auto-detects package names, fans out searches in parallel, and merges everything with chained RRF.

With graph=True (default) each result is enriched with call graph data from .kosha/graph.db.

results = k.context('how do I render a toast notification', limit=10)

for r in results:
    m = r['metadata']
    print(f"{m['mod_name']}  (line {m.get('lineno','?')})")
    print(f"  pagerank={r.get('pagerank',0):.5f}  callers={r['callers'][:2]}")
    print(f"  {r['content'][:100]}")
    print()

What each result contains

Every result is a plain dict — code snippet plus structural context from the call graph:

{
  # The code
  'content':  'def merge(*ds):\n    "Merge all dicts"\n    return {k:v for d in ds ...}',

  # Where it lives
  'metadata': {
      'mod_name': 'fastcore.basics.merge',   # fully-qualified — use in ni() / short_path()
      'path':     '/path/to/fastcore/basics.py',
      'lineno':   655,
      'type':     'FunctionDef',
      'package':  'fastcore',                # present on package results
  },

  # Structural position in the codebase
  'pagerank':      0.00027,  # centrality — higher = more load-bearing
  'in_degree':     8,        # number of callers
  'out_degree':    12,       # number of callees
  'callers':       ['fastcore.script.call_parse._f', ...],
  'callees':       ['fastcore.basics.NS.__iter__', ...],
  'co_dispatched': [],       # functions registered alongside this one
}

co_dispatched is particularly useful: it lists functions assigned together in the same list, dict, or route group at module level — the pattern to follow when adding a new handler or plugin.

Filter syntax

Add key:value tokens anywhere in your query to narrow results. Plural forms and comma-separated values are supported.

Token Example Effect
package:name package:fasthtml Restrict env search to one package
file:glob file:routes* Restrict repo results by filename
path:pattern path:api/* Restrict repo results by path
lang:ext lang:py Filter by language
type:node type:FunctionDef Filter by AST node type

Filters can be combined and stacked: "stripe webhook path:payments/ type:FunctionDef"

# parseq strips filter tokens from a query — fast, no DB needed
bare, filt = parseq('stripe webhook path:payments/ type:FunctionDef')
print(f'query:   {bare!r}')
print(f'filters: {dict(filt)}')
# Restrict to a specific package
results = k.context('render a table package:fasthtml', limit=5)

# Functions only, in the payments directory
results = k.context('handle stripe webhook type:FunctionDef path:payments/', limit=5)

# Multiple packages — fan-out in parallel, results merged
results = k.context('payments page packages:fasthtml,monsterui', limit=15)

The structural layer — CodeGraph

k.graph is a CodeGraph backed by .kosha/graph.db. After k.sync(), the graph covers your repo and every indexed package. You can traverse it directly, or let context() enrich results automatically.

# Full structural info for any node
k.ni('fastcore.basics.merge')
# → {node, flavor, file, pagerank, in_degree, out_degree, callers, callees, co_dispatched}

# Top nodes by PageRank within a module
k.graph.ranked(10, module='fastcore.basics')

# Shortest call chain between two nodes
k.short_path('apswutils.db.Table.upsert', 'apswutils.db.Table.insert_chunk')
# → ['...upsert', '...upsert_all', '...insert_all', '...insert_chunk']

# Everything within 2 hops of a node
k.neighbors('myapp.payments.verify_webhook', depth=2)

# Direct table queries
k.gn(where='node like "%stripe%"')    # graph_nodes
k.ge(where='caller like "%route%"')   # graph_edges

Composing a plan — the full workflow

The highest-value pattern strings task_contextcontextshort_pathni together. Each step narrows the search space and adds structural evidence before you write a line of code.

Step 1 — discover the landscape

tc = k.task_context('add webhook verification to the payments flow', depth=2)
# tc['packages']   → which packages are involved
# tc['dep_layers'] → what each package pulls in; use to decide what to pass to sync()

Step 2 — find the key functions (graph-enriched)

results = k.context('webhook signature verification payments', limit=20, graph=True)
# Sort by pagerank to find the structural load-bearers
key = sorted(results, key=lambda r: -r.get('pagerank', 0))

Step 3 — map the call chains

from itertools import combinations
nodes = [r['metadata']['mod_name'] for r in key[:8]]
paths = [p for a, b in combinations(nodes, 2) if (p := k.short_path(a, b))]
paths.sort(key=len)   # shortest = tightest coupling between your key nodes

Step 4 — drill into the join points

for node in nodes[:5]:
    info = k.ni(node)
    # callers       → where to hook in upstream
    # callees       → what you can reuse
    # co_dispatched → pattern to follow when adding a new handler alongside existing ones

Step 5 — write your plan, grounded in mod_name:lineno

for r in key[:5]:
    m = r['metadata']
    print(f"{m['mod_name']}  line {m.get('lineno','?')}  pagerank={r.get('pagerank',0):.5f}")

Quoting mod_name + lineno in each step of your plan anchors the plan to the actual code.

Using with Claude Code and other harnesses

Project-local (commit alongside code)

The Kosha(install_skill=True) call above writes .agents/skills/kosha/SKILL.md. Most agent harnesses (Claude Code, Continue.dev, Cursor, Copilot) auto-discover skills in .agents/skills/. Committing this file means every contributor — human and AI — gets it automatically.

Claude Code — global (all projects on this machine)

mkdir -p ~/.claude/skills/kosha
cp .agents/skills/kosha/SKILL.md ~/.claude/skills/kosha/SKILL.md

Once installed globally, Claude Code will load the kosha skill at the start of every session in every repo.

Other harnesses

Place SKILL.md wherever the harness discovers agent skills. Common locations: - .agents/skills/kosha/SKILL.md — general convention - .continue/skills/kosha/SKILL.md — Continue.dev - Configure in harness settings if the path differs

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