| import { MetricsServer } from "$lib/server/metrics"; |
| import type { WebSearchScrapedSource, WebSearchUsedSource } from "$lib/types/WebSearch"; |
| import type { EmbeddingBackendModel } from "../../embeddingModels"; |
| import { getSentenceSimilarity, innerProduct } from "../../sentenceSimilarity"; |
| import { MarkdownElementType, type MarkdownElement } from "../markdown/types"; |
| import { stringifyMarkdownElement } from "../markdown/utils/stringify"; |
| import { getCombinedSentenceSimilarity } from "./combine"; |
| import { flattenTree } from "./tree"; |
|
|
| const MIN_CHARS = 3_000; |
| const SOFT_MAX_CHARS = 8_000; |
|
|
| export async function findContextSources( |
| sources: WebSearchScrapedSource[], |
| prompt: string, |
| embeddingModel: EmbeddingBackendModel |
| ) { |
| const startTime = Date.now(); |
|
|
| const sourcesMarkdownElems = sources.map((source) => flattenTree(source.page.markdownTree)); |
| const markdownElems = sourcesMarkdownElems.flat(); |
|
|
| |
| |
| const embeddingFunc = |
| embeddingModel.endpoints[0].type === "transformersjs" |
| ? getCombinedSentenceSimilarity |
| : getSentenceSimilarity; |
|
|
| const embeddings = await embeddingFunc( |
| embeddingModel, |
| prompt, |
| markdownElems |
| .map(stringifyMarkdownElement) |
| |
| |
| .map((elem) => elem.slice(0, embeddingModel.chunkCharLength)) |
| ); |
|
|
| const topEmbeddings = embeddings |
| .sort((a, b) => a.distance - b.distance) |
| .filter((embedding) => markdownElems[embedding.idx].type !== MarkdownElementType.Header); |
|
|
| let totalChars = 0; |
| const selectedMarkdownElems = new Set<MarkdownElement>(); |
| const selectedEmbeddings: number[][] = []; |
| for (const embedding of topEmbeddings) { |
| const elem = markdownElems[embedding.idx]; |
|
|
| |
| const tooSimilar = selectedEmbeddings.some( |
| (selectedEmbedding) => innerProduct(selectedEmbedding, embedding.embedding) < 0.01 |
| ); |
| if (tooSimilar) continue; |
|
|
| |
| if (!selectedMarkdownElems.has(elem)) { |
| selectedMarkdownElems.add(elem); |
| selectedEmbeddings.push(embedding.embedding); |
| totalChars += elem.content.length; |
| } |
|
|
| |
| if (elem.parent && !selectedMarkdownElems.has(elem.parent)) { |
| selectedMarkdownElems.add(elem.parent); |
| totalChars += elem.parent.content.length; |
| } |
|
|
| if (totalChars > SOFT_MAX_CHARS) break; |
| if (totalChars > MIN_CHARS && embedding.distance > 0.25) break; |
| } |
|
|
| const contextSources = sourcesMarkdownElems |
| .map<WebSearchUsedSource>((elems, idx) => { |
| const sourceSelectedElems = elems.filter((elem) => selectedMarkdownElems.has(elem)); |
| const context = sourceSelectedElems.map(stringifyMarkdownElement).join("\n"); |
| const source = sources[idx]; |
| return { ...source, context }; |
| }) |
| .filter((contextSource) => contextSource.context.length > 0); |
|
|
| MetricsServer.getMetrics().webSearch.embeddingDuration.observe(Date.now() - startTime); |
|
|
| return contextSources; |
| } |
|
|