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LLM Wiki

A pattern for building personal knowledge bases using LLMs.

This is an idea file, it is designed to be copy pasted to your own LLM Agent (e.g. OpenAI Codex, Claude Code, OpenCode / Pi, or etc.). Its goal is to communicate the high level idea, but your agent will build out the specifics in collaboration with you.

The core idea

Most people's experience with LLMs and documents looks like RAG: you upload a collection of files, the LLM retrieves relevant chunks at query time, and generates an answer. This works, but the LLM is rediscovering knowledge from scratch on every question. There's no accumulation. Ask a subtle question that requires synthesizing five documents, and the LLM has to find and piece together the relevant fragments every time. Nothing is built up. NotebookLM, ChatGPT file uploads, and most RAG systems work this way.

@kyo-takano
kyo-takano / making-the-most-of-local-llms.ipynb
Last active May 12, 2026 04:03
ローカルLLMはこーやって使うの💢
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@vaaaaanquish
vaaaaanquish / PythonのPackage Managerを深く知るためのリンク集.md
Last active March 9, 2025 00:01
PythonのPackage Managerを深く知るためのリンク集

PythonのPackage Managerを深く知るためのリンク集

以下の発表(2023/10/12)につき作成した、Pythonのパッケージ管理について学ぶ上で有益なリンクを集めたもの。

Pythonでの開発に関するベストプラクティス等を知ることは目的にしていない。
Package Managerを自作したり、開発にコミットするために必要なベースの知識を補うリンク集。

import time
import os
import logging
import random
from datasets import load_dataset
class QuantAutoGPTQ:
def __init__(self, model_name_or_path, output_dir, dataset,
num_samples=128, trust_remote_code=False, cache_examples=True,
use_fast=True, use_triton=False, bits=[4], group_size=[128], damp=[0.01],

Reinforcement Learning for Language Models

Yoav Goldberg, April 2023.

Why RL?

With the release of the ChatGPT model and followup large language models (LLMs), there was a lot of discussion of the importance of "RLHF training", that is, "reinforcement learning from human feedback". I was puzzled for a while as to why RL (Reinforcement Learning) is better than learning from demonstrations (a.k.a supervised learning) for training language models. Shouldn't learning from demonstrations (or, in language model terminology "instruction fine tuning", learning to immitate human written answers) be sufficient? I came up with a theoretical argument that was somewhat convincing. But I came to realize there is an additional argumment which not only supports the case of RL training, but also requires it, in particular for models like ChatGPT. This additional argument is spelled out in (the first half of) a talk by John Schulman from OpenAI. This post pretty much

@smnbbrv
smnbbrv / promisified-grpc-client.ts
Last active February 19, 2025 18:43
Promisify @grpc-js service client with typescript
import { Client, ServiceError, Metadata, CallOptions, ClientUnaryCall } from '@grpc/grpc-js';
import { Message } from 'google-protobuf';
type OriginalCall<T, U> = (request: T, metadata: Metadata, options: Partial<CallOptions>, callback: (error: ServiceError, res: U) => void) => ClientUnaryCall;
type PromisifiedCall<T, U> = ((request: T, metadata?: Metadata, options?: Partial<CallOptions>) => Promise<U>);
export type Promisified<C> = { $: C; } & {
[prop in Exclude<keyof C, keyof Client>]: (C[prop] extends OriginalCall<infer T, infer U> ? PromisifiedCall<T, U> : never);
}
@tuxedocat
tuxedocat / Pok3r-macOS-_Karabiner-fn_.kbd.json
Last active June 28, 2020 04:24
Pok3r macOS (Karabiner fn)
[
{
"name": "Pok3r macOS (Karabiner fn)",
"author": "tuxedocat",
"switchMount": "cherry",
"switchBrand": "cherry",
"switchType": "MX3A-L1xx"
},
[
{
@c-bata
c-bata / lightgbm_rfe.py
Last active June 12, 2024 19:34
Recursive Feature Elimination for LightGBM. This class accepts missing values and Optuna LightGBM tuner.
import numpy as np
import pandas as pd
#import lightgbm as lgb
from optuna.integration import lightgbm as lgb
from sklearn.model_selection import train_test_split
from sklearn.utils import check_X_y, safe_sqr
from sklearn.feature_selection.base import SelectorMixin
from lightgbm import Booster
@danisla
danisla / README.md
Last active November 7, 2022 13:59
GKE GPU Sharing Daemonset

GPU Sharing on GKE DaemonSet

NOTE: This is not a Google supported product.

Example Usage

  1. Create a GKE cluster with a GPU node pool:
gcloud container clusters create gpu-sharing-demo --zone us-central1-c
@mpppk
mpppk / clean_architecture.md
Last active June 19, 2026 10:16
クリーンアーキテクチャ完全に理解した

2020/5/31追記: 自分用のメモに書いていたつもりだったのですが、たくさんのスターを頂けてとても嬉しいです。
と同時に、書きかけで中途半端な状態のドキュメントをご覧いただくことになっており、大変心苦しく思っています。

このドキュメントを完成させるために、今後以下のような更新を予定しています。

  • TODO部分を埋める
  • 書籍を基にした理論・原則パートと、実装例パートを分割
    • 現在は4層のレイヤそれぞれごとに原則の確認→実装時の課題リスト→実装例という構成ですが、同じリポジトリへの言及箇所がバラバラになってしまう問題がありました。更新後は、実装時の課題リストを全て洗い出した後にまとめて実装を確認する構成とする予定です。

2021/1/22追記: