openclaw/extensions/memory-lancedb/config.ts
solofberlin d395e40baf feat(memory-lancedb): add local embedding support via node-llama-cpp
Adds support for running embeddings locally using node-llama-cpp, eliminating
the need for OpenAI API keys when using the memory-lancedb plugin.

Changes:
- Add embedding.provider config: 'openai' | 'local' (default: 'openai')
- Make embedding.apiKey optional when using local provider
- Add embedding.local.modelPath for custom GGUF model paths
- Add embedding.local.modelCacheDir for model caching
- Default local model: embeddinggemma-300M-Q8_0.gguf (768-dim vectors)
- Add node-llama-cpp as optional peer dependency
- Port local embedding logic from core memorySearch implementation
- Maintain backwards compatibility (existing configs work unchanged)

Usage:
  embedding:
    provider: local
    # Optional custom model:
    local:
      modelPath: hf:ggml-org/embeddinggemma-300M-GGUF/embeddinggemma-300M-Q8_0.gguf
2026-01-30 13:19:58 +01:00

201 lines
6.5 KiB
TypeScript

import { Type } from "@sinclair/typebox";
import fs from "node:fs";
import { homedir } from "node:os";
import { join } from "node:path";
export type EmbeddingProvider = "openai" | "local";
export type MemoryConfig = {
embedding: {
provider: EmbeddingProvider;
model?: string;
apiKey?: string;
// Local embedding options
local?: {
modelPath?: string;
modelCacheDir?: string;
};
};
dbPath?: string;
autoCapture?: boolean;
autoRecall?: boolean;
};
export const MEMORY_CATEGORIES = ["preference", "fact", "decision", "entity", "other"] as const;
export type MemoryCategory = (typeof MEMORY_CATEGORIES)[number];
const DEFAULT_OPENAI_MODEL = "text-embedding-3-small";
const DEFAULT_LOCAL_MODEL = "hf:ggml-org/embeddinggemma-300M-GGUF/embeddinggemma-300M-Q8_0.gguf";
const LEGACY_STATE_DIRS: string[] = [];
function resolveDefaultDbPath(): string {
const home = homedir();
const preferred = join(home, ".openclaw", "memory", "lancedb");
try {
if (fs.existsSync(preferred)) return preferred;
} catch {
// best-effort
}
for (const legacy of LEGACY_STATE_DIRS) {
const candidate = join(home, legacy, "memory", "lancedb");
try {
if (fs.existsSync(candidate)) return candidate;
} catch {
// best-effort
}
}
return preferred;
}
const DEFAULT_DB_PATH = resolveDefaultDbPath();
// OpenAI embedding dimensions
const OPENAI_EMBEDDING_DIMENSIONS: Record<string, number> = {
"text-embedding-3-small": 1536,
"text-embedding-3-large": 3072,
};
// Default dimension for local models (embeddinggemma-300M outputs 768-dim vectors)
const DEFAULT_LOCAL_EMBEDDING_DIM = 768;
function assertAllowedKeys(
value: Record<string, unknown>,
allowed: string[],
label: string,
) {
const unknown = Object.keys(value).filter((key) => !allowed.includes(key));
if (unknown.length === 0) return;
throw new Error(`${label} has unknown keys: ${unknown.join(", ")}`);
}
export function vectorDimsForModel(model: string, provider: EmbeddingProvider): number {
if (provider === "local") {
// Local models have varying dimensions; default to embeddinggemma's 768
// TODO: Could detect from model metadata in the future
return DEFAULT_LOCAL_EMBEDDING_DIM;
}
const dims = OPENAI_EMBEDDING_DIMENSIONS[model];
if (!dims) {
throw new Error(`Unsupported OpenAI embedding model: ${model}. Supported: ${Object.keys(OPENAI_EMBEDDING_DIMENSIONS).join(", ")}`);
}
return dims;
}
function resolveEnvVars(value: string): string {
return value.replace(/\$\{([^}]+)\}/g, (_, envVar) => {
const envValue = process.env[envVar];
if (!envValue) {
throw new Error(`Environment variable ${envVar} is not set`);
}
return envValue;
});
}
function resolveEmbeddingModel(embedding: Record<string, unknown>, provider: EmbeddingProvider): string {
const model = typeof embedding.model === "string" ? embedding.model : undefined;
if (provider === "local") {
return model || DEFAULT_LOCAL_MODEL;
}
// OpenAI provider
const resolvedModel = model || DEFAULT_OPENAI_MODEL;
vectorDimsForModel(resolvedModel, provider); // Validate
return resolvedModel;
}
export const memoryConfigSchema = {
parse(value: unknown): MemoryConfig {
if (!value || typeof value !== "object" || Array.isArray(value)) {
throw new Error("memory config required");
}
const cfg = value as Record<string, unknown>;
assertAllowedKeys(cfg, ["embedding", "dbPath", "autoCapture", "autoRecall"], "memory config");
const embedding = cfg.embedding as Record<string, unknown> | undefined;
if (!embedding) {
throw new Error("embedding config is required");
}
assertAllowedKeys(embedding, ["provider", "apiKey", "model", "local"], "embedding config");
// Determine provider (default to "openai" for backwards compatibility)
const provider: EmbeddingProvider = embedding.provider === "local" ? "local" : "openai";
// Validate apiKey requirement based on provider
if (provider === "openai" && typeof embedding.apiKey !== "string") {
throw new Error("embedding.apiKey is required when using OpenAI provider");
}
const model = resolveEmbeddingModel(embedding, provider);
// Parse local config if present
let localConfig: MemoryConfig["embedding"]["local"] | undefined;
if (embedding.local && typeof embedding.local === "object") {
const local = embedding.local as Record<string, unknown>;
assertAllowedKeys(local, ["modelPath", "modelCacheDir"], "embedding.local config");
localConfig = {
modelPath: typeof local.modelPath === "string" ? local.modelPath : undefined,
modelCacheDir: typeof local.modelCacheDir === "string" ? local.modelCacheDir : undefined,
};
}
return {
embedding: {
provider,
model,
apiKey: typeof embedding.apiKey === "string" ? resolveEnvVars(embedding.apiKey) : undefined,
local: localConfig,
},
dbPath: typeof cfg.dbPath === "string" ? cfg.dbPath : DEFAULT_DB_PATH,
autoCapture: cfg.autoCapture !== false,
autoRecall: cfg.autoRecall !== false,
};
},
uiHints: {
"embedding.provider": {
label: "Embedding Provider",
help: "Choose 'openai' for remote embeddings or 'local' for on-device embeddings using node-llama-cpp",
options: ["openai", "local"],
},
"embedding.apiKey": {
label: "OpenAI API Key",
sensitive: true,
placeholder: "sk-proj-...",
help: "API key for OpenAI embeddings (required if provider is 'openai', or use ${OPENAI_API_KEY})",
},
"embedding.model": {
label: "Embedding Model",
placeholder: DEFAULT_OPENAI_MODEL,
help: "Model to use for embeddings. For OpenAI: text-embedding-3-small/large. For local: HuggingFace GGUF path.",
},
"embedding.local.modelPath": {
label: "Local Model Path",
placeholder: DEFAULT_LOCAL_MODEL,
help: "Path to local GGUF embedding model (e.g., hf:ggml-org/embeddinggemma-300M-GGUF/embeddinggemma-300M-Q8_0.gguf)",
advanced: true,
},
"embedding.local.modelCacheDir": {
label: "Model Cache Directory",
placeholder: "~/.cache/node-llama-cpp",
help: "Directory to cache downloaded models",
advanced: true,
},
dbPath: {
label: "Database Path",
placeholder: "~/.openclaw/memory/lancedb",
advanced: true,
},
autoCapture: {
label: "Auto-Capture",
help: "Automatically capture important information from conversations",
},
autoRecall: {
label: "Auto-Recall",
help: "Automatically inject relevant memories into context",
},
},
};