Files
justin fa448f94e1 build out morpheus-docs MCP stack, mirroring hvm-docs through Phases 1-13
Initial scaffold: the docs-mcp-template clone with all the
HVM-validated stack ported across, customized for Morpheus
Enterprise (PRODUCT_NAME=morpheus, server name morpheus-docs).

Bundles (live-discovered 2026-05-22; 1710 cataloged pages total):
* morpheus_user_manual_8_1_0  sd00007510en_us  568 pages (Feb 2026)
* morpheus_user_manual_8_1_1  sd00007621en_us  569 pages (Mar 2026)
* morpheus_user_manual_8_1_2  sd00007732en_us  569 pages (Apr 2026)
* morpheus_release_notes_8_1_0  sd00007496en_us  single-doc
* morpheus_release_notes_8_1_1  sd00007610en_us  single-doc
* morpheus_release_notes_8_1_2  sd00007733en_us  single-doc
* morpheus_quickspecs            a50009231enw     html-file (live
  curl_cffi against www.hpe.com; all 12+ Enterprise SKUs captured —
  S6E64..S6E73AAE for new/renewal/upgrade × 1/3/5-yr terms, plus
  services SKUs HA124A1#V38/V39 and H46SBA1).

No Deployment Guide or Qualification Matrix on HPE Support for
Morpheus Enterprise specifically — the only QM (sd00006551en_us)
covers HVM clusters managed by Morpheus and lives in hvm-docs.

Stack carried forward from hvm-docs:
* rag/{index,chunk,embeddings,bm25}.py — including the
  MAX_CHARS=4000 chunk-cap fix for table-dense content
* docs_mcp/{server,usage}.py — 11 MCP tools, BM25-default search,
  cross-encoder rerank, hybrid behind HYBRID_SEARCH=true,
  morpheus_api_lessons (renamed from hvm_api_lessons), env-gated
  submit_doc_bug
* docs_mcp/api_lessons.md — Morpheus-specific scaffold covering
  licensing model, HVM elevation path, REST vs Plugin API, with
  TODO markers for sections to flesh out from real ops experience
* scrape/{runner,quickspecs,changelog,bundles}.py — TOC + single-doc
  + html-file modes, curl_cffi Chrome120 for www.hpe.com edge bypass
* eval/{retrievers,run_eval}.py + queries.jsonl scaffold (4 placeholder
  queries; populate after first scrape)
* scripts/{rerank_server,usage_report,registry_gc}.py
* .gitea/workflows/{refresh,image-only}.yml — same Gitea Actions
  setup zerto-docs uses (push LAN, pull public-URL, GPU Ollama pool)
* deploy/docker-compose.yml — morpheus-docs-mcp service definition,
  shared jina-rerank sidecar, Watchtower-labeled
* Dockerfile, requirements.txt, requirements-rerank.txt

Verified locally: scrape produced 1599 .md pages (some TOC entries
are parent-only and yield no body), 6353 chunks all under the 4 KB
cap, MCP server boots and lists 11 tools cleanly.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-22 15:26:24 -04:00

153 lines
5.4 KiB
Python

"""Retriever protocol + concrete implementations.
A single matrix dimension per knob (dense / reranked / bm25 / hybrid)
so the eval harness can compare them apples-to-apples. Implement these
once at Phase 7 and reuse them across every retrieval change.
Each retriever returns a ranked list of (bundle_id, page_id) tuples
deduplicated to the page level (chunks within the same page collapse
to one entry; the highest-ranked chunk's position wins).
"""
from __future__ import annotations
from typing import Iterable, Protocol
class Retriever(Protocol):
name: str
def retrieve(self, query: str, k: int = 10) -> list[tuple[str, str]]:
"""Return up to k (bundle_id, page_id) tuples in rank order."""
...
def _split_chunk_id(chunk_id: str) -> tuple[str, str, int]:
"""`bundle::page::ordinal` -> (bundle, page, int(ordinal))."""
bid, pid, ordinal = chunk_id.split("::")
return bid, pid, int(ordinal)
def _collapse_to_pages(chunk_ids: Iterable[str], k: int) -> list[tuple[str, str]]:
seen: set[tuple[str, str]] = set()
out: list[tuple[str, str]] = []
for cid in chunk_ids:
bid, pid, _ord = _split_chunk_id(cid)
key = (bid, pid)
if key in seen:
continue
seen.add(key)
out.append(key)
if len(out) >= k:
break
return out
class DenseRetriever:
"""Chroma cosine search via the live embedding function."""
name = "dense"
def __init__(self, collection, pool: int = 50):
self.col = collection
self.pool = pool
def retrieve(self, query: str, k: int = 10) -> list[tuple[str, str]]:
res = self.col.query(query_texts=[query], n_results=self.pool)
ids = (res.get("ids") or [[]])[0]
return _collapse_to_pages(ids, k)
class BM25Retriever:
"""SQLite FTS5 lexical search."""
name = "bm25"
def __init__(self, bm25_index, pool: int = 200):
self.bm = bm25_index
self.pool = pool
def retrieve(self, query: str, k: int = 10) -> list[tuple[str, str]]:
hits = self.bm.query(query, n=self.pool)
return _collapse_to_pages((cid for cid, _score in hits), k)
class HybridRetriever:
"""Reciprocal Rank Fusion of dense + BM25 rankings."""
name = "hybrid_rrf"
def __init__(self, dense: DenseRetriever, bm25: BM25Retriever, k_rrf: int = 60, pool: int = 100):
self.dense = dense
self.bm25 = bm25
self.k_rrf = k_rrf
self.pool = pool
def retrieve(self, query: str, k: int = 10) -> list[tuple[str, str]]:
dense_pages = self.dense.retrieve(query, k=self.pool)
bm25_pages = self.bm25.retrieve(query, k=self.pool)
scores: dict[tuple[str, str], float] = {}
for rank, page in enumerate(dense_pages, start=1):
scores[page] = scores.get(page, 0.0) + 1.0 / (self.k_rrf + rank)
for rank, page in enumerate(bm25_pages, start=1):
scores[page] = scores.get(page, 0.0) + 1.0 / (self.k_rrf + rank)
ranked = sorted(scores.items(), key=lambda kv: -kv[1])
return [page for page, _s in ranked[:k]]
def _rerank_pool(rerank_url: str, query: str, ids_and_texts: list[tuple[str, str]],
timeout: float = 30.0) -> list[str] | None:
"""POST to /v1/rerank, return ids in reranked order. None on failure."""
if not ids_and_texts:
return []
import httpx
try:
with httpx.Client(timeout=timeout) as c:
r = c.post(f"{rerank_url}/v1/rerank", json={
"query": query,
"documents": [(t or "")[:2000] for _i, t in ids_and_texts],
"top_n": len(ids_and_texts),
})
r.raise_for_status()
results = r.json().get("results") or []
return [ids_and_texts[item["index"]][0] for item in results
if isinstance(item.get("index"), int)
and 0 <= item["index"] < len(ids_and_texts)]
except Exception:
return None
class RerankedRetriever:
"""Pull a candidate pool via a base retriever, then cross-encoder re-rank."""
def __init__(self, base: Retriever, collection, rerank_url: str, name_suffix: str = "rerank",
pool: int = 50, timeout: float = 30.0):
self.base = base
self.col = collection
self.url = rerank_url
self.name = f"{base.name}+{name_suffix}"
self.pool = pool
self.timeout = timeout
def retrieve(self, query: str, k: int = 10) -> list[tuple[str, str]]:
# Base returns deduplicated page-level tuples; rerank needs CHUNK-level
# texts to be informative. Pull each page's chunk 0 text from Chroma.
pages = self.base.retrieve(query, k=self.pool)
if not pages:
return []
chunk_ids = [f"{bid}::{pid}::0" for bid, pid in pages]
g = self.col.get(ids=chunk_ids, include=["documents"])
by_id = dict(zip(g["ids"], g["documents"]))
ids_and_texts = [(cid, by_id.get(cid, "")) for cid in chunk_ids]
order = _rerank_pool(self.url, query, ids_and_texts, timeout=self.timeout)
if order is None:
return pages[:k]
out: list[tuple[str, str]] = []
seen: set[tuple[str, str]] = set()
for cid in order:
bid, pid, _ = cid.split("::")
key = (bid, pid)
if key in seen:
continue
seen.add(key)
out.append(key)
if len(out) >= k:
break
return out