| name | rag-pipeline |
| description | Build a RAG (retrieval-augmented generation) pipeline or a custom search engine
on top of Bright Data's Discover API — using intent-ranked web results + parsed
page content as the retrieval/ingestion layer for an LLM or vector store. Use
when the user wants to "build a RAG pipeline", "add web search to my LLM/agent",
"ground my model in live web data", "build a search engine over the web",
"ingest web content into a vector DB / knowledge base", or "give my chatbot
retrieval". Covers both live retrieval (Discover at query time as a web-grounded
retriever) and ingestion (Discover → chunk → embed → vector store → retrieve).
Built on the `discover-api` skill. For a one-off written report use
`live-research`; for raw markdown of specific known URLs use `scrape`.
|
| metadata | {"author":"Bright Data","version":"1.0"} |
Bright Data — RAG / Search-Engine Pipeline
Use Discover as the retrieval layer for an LLM app or a custom search engine.
Discover already returns intent-ranked, relevance-scored results with parsed
page content, so it does the "search + fetch + clean" stage of RAG for you. This
is a code/architecture skill built on the discover-api skill — read that
for API mechanics (trigger/poll, modes, params, limits).
Pick the right neighbor: a written brief → live-research; markdown of specific
URLs you already have → scrape; structured platform records → data-feeds.
Two architectures — choose first
Does the corpus change every query, or is it a stable knowledge base?
├── Per-query, always-fresh ("ground each answer in live web data")
│ → LIVE RETRIEVAL: Discover(include_content) at query time → top-k → LLM
│ Pros: always current, no storage. Cons: per-query latency + cost.
│
└── Reused across many queries ("build a knowledge base / search engine")
→ INGESTION: Discover(include_content) → chunk → embed → vector store
then at query time: embed query → vector search → (rerank) → LLM
Pros: fast queries, cacheable. Cons: can go stale (re-ingest on a schedule).
Many systems do both: an ingested base for breadth + a live Discover call for
freshness, merged before the LLM.
Live retrieval (web-grounded answers)
Pattern: on each user question, run Discover with a sharp intent, take the
top-k by relevance_score, and pass their content as context to the LLM. The
LLM cites the links.
import { bdclient } from '@brightdata/sdk';
const client = new bdclient();
async function retrieve(question, k = 6) {
const res = await client.discover(question, {
intent: `authoritative sources that directly answer: ${question}`,
includeContent: true,
numResults: Math.min(k * 2, 20),
});
if (!res.success) throw new Error(`discover failed: ${res.error ?? 'unknown'}`);
return (res.data ?? [])
.filter(r => r.content && !/just a moment|captcha|access denied|not found/i.test(r.content) && r.content.length > 200)
.sort((a, b) => b.relevance_score - a.relevance_score)
.slice(0, k);
}
Full prompt-assembly + citation pattern: references/code.md.
Ingestion (build a vector knowledge base / search engine)
Pattern: discover broadly (high volume — zeroRanking via REST is ideal here),
chunk each page's content, embed the chunks, upsert into a vector store with the
source URL as metadata. At query time: embed the query, vector-search, optionally
rerank, then feed to the LLM.
Stages: discover → dedup → chunk → embed → upsert (ingest), then
embed query → search → rerank → generate (serve). Provider-agnostic code for
both stages, including chunking and metadata, is in
references/code.md.
For bulk corpus building, prefer the raw REST "mode":"zeroRanking" flow (max raw
results, no ranking) from the discover-api skill — but note it ignores
num_results and does not support include_content, so you fetch content
separately (Discover standard/deep with content, or the scrape skill).
Design rules
- Store provenance. Every chunk keeps its source
link (and ideally title +
relevance_score). RAG without citations is unverifiable.
- Chunk for the model, not the page. ~500–1500 tokens with overlap; split on
headings/paragraphs, not mid-sentence.
- Validate
content before embedding. Skip block pages and empty bodies
(oversized PDFs return null content). Embedding garbage poisons retrieval.
- Over-fetch then trim by
relevance_score. Discover's score is a strong prior
for top-k selection before (or instead of) a reranker.
- Re-ingest on a schedule if freshness matters — web content drifts. The
ingested base goes stale; live retrieval doesn't.
- Cap and dedup.
num_results ≤ 20 per call; dedup by normalized URL across
calls so one article via three aggregators isn't triple-weighted.
- Keep the embedder/vector store pluggable. Discover is the retrieval source;
the embedding model and vector DB are your choice — don't hardwire one.
Verification gate
- Retrieval returns non-empty, on-topic chunks for a known test query (eyeball top-k links).
- No block-page / empty
content made it into the index — spot-check stored chunks.
- Citations resolve — every
[n] the LLM emits maps to a real source link in the retrieved set.
- Freshness is honored — if the app promises current data, confirm live retrieval (or a recent re-ingest), not a stale index.
- Grounding check — answers are supported by retrieved content, not the model's prior; test with a question whose answer only exists in a retrieved page.
Red flags
- Building an ingestion pipeline when the user needs fresh answers (use live retrieval), or hammering Discover live when a cached index would do.
- Embedding
content without filtering block pages / nulls.
- Dropping source URLs — you can't cite or refresh what you didn't store.
- Treating
num_results as unlimited (cap 20) or expecting include_content under zeroRanking.
- Letting the LLM answer from training data — enforce "answer only from provided sources; if absent, say so."
- One giant chunk per page (kills retrieval precision) or mid-sentence splits.
References
references/code.md — runnable JS + Python for both architectures: live retrieval with prompt+citation assembly, and the full ingestion pipeline (discover → dedup → chunk → embed → upsert → query), with a provider-agnostic embedder/vector-store interface.
Related skills
discover-api — the retrieval API (trigger/poll, modes, include_content, limits). Read first.
live-research — one-off synthesized report instead of a standing system.
scrape — fetch markdown for specific URLs you already have.
js-sdk-best-practices / python-sdk-best-practices — client.discover() option details and batch patterns.