PyTorch Language Model for 1-Billion Word (LM1B / GBW) Dataset

Overview

PyTorch Large-Scale Language Model

A Large-Scale PyTorch Language Model trained on the 1-Billion Word (LM1B) / (GBW) dataset

Latest Results

  • 39.98 Perplexity after 5 training epochs using LSTM Language Model with Adam Optimizer
  • Trained in ~26 hours using 1 Nvidia V100 GPU (~5.1 hours per epoch) with 2048 batch size (~10.7 GB GPU memory)

Previous Results

  • 46.47 Perplexity after 5 training epochs on a 1-layer, 2048-unit, 256-projection LSTM Language Model [3]
  • Trained for 3 days using 1 Nvidia P100 GPU (~12.5 hours per epoch)
  • Implemented Sampled Softmax and Log-Uniform Sampler functions

GPU Hardware Requirement

Type LM Memory Size GPU
w/o tied weights ~9 GB Nvidia 1080 TI, Nvidia Titan X
w/ tied weights [6] ~7 GB Nvidia 1070 or higher
  • There is an option to tie the word embedding and softmax weight matrices together to save GPU memory.

Hyper-Parameters [3]

Parameter Value
# Epochs 5
Training Batch Size 128
Evaluation Batch Size 1
BPTT 20
Embedding Size 256
Hidden Size 2048
Projection Size 256
Tied Embedding + Softmax False
# Layers 1
Optimizer AdaGrad
Learning Rate 0.10
Gradient Clipping 1.00
Dropout 0.01
Weight-Decay (L2 Penalty) 1e-6

Setup - Torch Data Format

  1. Download Google Billion Word Dataset for Torch - Link
  2. Run "process_gbw.py" on the "train_data.th7" file to create the "train_data.sid" file
  3. Install Cython framework and build Log_Uniform Sampler
  4. Convert Torch data tensors to PyTorch tensor format (Requires Pytorch v0.4.1)

I leverage the GBW data preprocessed for the Torch framework. (See Torch GBW) Each data tensor contains all the words in data partition. The "train_data.sid" file marks the start and end positions for each independent sentence. The preprocessing step and "train_data.sid" file speeds up loading the massive training data.

  • Data Tensors - (test_data, valid_data, train_data, train_small, train_tiny) - (#words x 2) matrix - (sentence id, word id)
  • Sentence ID Tensor - (#sentences x 2) matrix - (start position, sentence length)

Setup - Original Data Format

  1. Download 1-Billion Word Dataset - Link

The Torch Data Format loads the entire dataset at once, so it requires at least 32 GB of memory. The original format partitions the dataset into smaller chunks, but it runs slower.

References

  1. Exploring the Limits of Language Modeling Github
  2. Factorization Tricks for LSTM networks Github
  3. Efficient softmax approximation for GPUs Github
  4. Candidate Sampling
  5. Torch GBW
  6. Tying Word Vectors and Word Classifiers: A Loss Framework for Language Modeling
Owner
Ryan Spring
A PhD student researching Deep Learning, Locality-Sensitive Hashing, and other large-scale machine learning algorithms.
Ryan Spring
A python gui program to generate reddit text to speech videos from the id of any post.

Reddit text to speech generator A python gui program to generate reddit text to speech videos from the id of any post. Current functionality Generate

Aadvik 17 Dec 19, 2022
2021 2학기 데이터크롤링 기말프로젝트

공지 주제 웹 크롤링을 이용한 취업 공고 스케줄러 스케줄 주제 정하기 코딩하기 핵심 코드 설명 + 피피티 구조 구상 // 12/4 토 피피티 + 스크립트(대본) 제작 + 녹화 // ~ 12/10 ~ 12/11 금~토 영상 편집 // ~12/11 토 웹크롤러 사람인_평균

Choi Eun Jeong 2 Aug 16, 2022
Simple python code to fix your combo list by removing any text after a separator or removing duplicate combos

Combo List Fixer A simple python code to fix your combo list by removing any text after a separator or removing duplicate combos Removing any text aft

Hamidreza Dehghan 3 Dec 05, 2022
Simple Text-Generator with OpenAI gpt-2 Pytorch Implementation

GPT2-Pytorch with Text-Generator Better Language Models and Their Implications Our model, called GPT-2 (a successor to GPT), was trained simply to pre

Tae-Hwan Jung 775 Jan 08, 2023
Data and code to support "Applied Natural Language Processing" (INFO 256, Fall 2021, UC Berkeley)

anlp21 Course materials for "Applied Natural Language Processing" (INFO 256, Fall 2021, UC Berkeley) Syllabus: http://people.ischool.berkeley.edu/~dba

David Bamman 48 Dec 06, 2022
Labelling platform for text using distant supervision

With DataQA, you can label unstructured text documents using rule-based distant supervision.

245 Aug 05, 2022
PyTorch implementation of Microsoft's text-to-speech system FastSpeech 2: Fast and High-Quality End-to-End Text to Speech.

An implementation of Microsoft's "FastSpeech 2: Fast and High-Quality End-to-End Text to Speech"

Chung-Ming Chien 1k Dec 30, 2022
Perform sentiment analysis on textual data that people generally post on websites like social networks and movie review sites.

Sentiment Analyzer The goal of this project is to perform sentiment analysis on textual data that people generally post on websites like social networ

Madhusudan.C.S 53 Mar 01, 2022
Transformer-based Text Auto-encoder (T-TA) using TensorFlow 2.

T-TA (Transformer-based Text Auto-encoder) This repository contains codes for Transformer-based Text Auto-encoder (T-TA, paper: Fast and Accurate Deep

Jeong Ukjae 13 Dec 13, 2022
Product-Review-Summarizer - Created a product review summarizer which clustered thousands of product reviews and summarized them into a maximum of 500 characters, saving precious time of customers and helping them make a wise buying decision.

Product-Review-Summarizer - Created a product review summarizer which clustered thousands of product reviews and summarized them into a maximum of 500 characters, saving precious time of customers an

Parv Bhatt 1 Jan 01, 2022
The Sudachi synonym dictionary in Solar format.

solr-sudachi-synonyms The Sudachi synonym dictionary in Solar format. Summary Run a script that checks for updates to the Sudachi dictionary every hou

Karibash 3 Aug 19, 2022
TextFlint is a multilingual robustness evaluation platform for natural language processing tasks,

TextFlint is a multilingual robustness evaluation platform for natural language processing tasks, which unifies general text transformation, task-specific transformation, adversarial attack, sub-popu

TextFlint 587 Dec 20, 2022
Code for the paper "Are Sixteen Heads Really Better than One?"

Are Sixteen Heads Really Better than One? This repository contains code to reproduce the experiments in our paper Are Sixteen Heads Really Better than

Paul Michel 143 Dec 14, 2022
Random Directed Acyclic Graph Generator

DAG_Generator Random Directed Acyclic Graph Generator verison1.0 简介 工作流通常由DAG(有向无环图)来定义,其中每个计算任务$T_i$由一个顶点(node,task,vertex)表示。同时,任务之间的每个数据或控制依赖性由一条加权

Livion 17 Dec 27, 2022
DANeS is an open-source E-newspaper dataset by collaboration between DATASET JSC (dataset.vn) and AIV Group (aivgroup.vn)

DANeS - Open-source E-newspaper dataset Source: Technology vector created by macrovector - www.freepik.com. DANeS is an open-source E-newspaper datase

DATASET .JSC 64 Aug 17, 2022
Question answering app is used to answer for a user given question from user given text.

Question answering app is used to answer for a user given question from user given text.It is created using HuggingFace's transformer pipeline and streamlit python packages.

Siva Prakash 3 Apr 05, 2022
Sequence modeling benchmarks and temporal convolutional networks

Sequence Modeling Benchmarks and Temporal Convolutional Networks (TCN) This repository contains the experiments done in the work An Empirical Evaluati

CMU Locus Lab 3.5k Jan 03, 2023
Unsupervised text tokenizer for Neural Network-based text generation.

SentencePiece SentencePiece is an unsupervised text tokenizer and detokenizer mainly for Neural Network-based text generation systems where the vocabu

Google 6.4k Jan 01, 2023
Weakly-supervised Text Classification Based on Keyword Graph

Weakly-supervised Text Classification Based on Keyword Graph How to run? Download data Our dataset follows previous works. For long texts, we follow C

Hello_World 20 Dec 29, 2022
Recognition of 38 speech commands in russian. Based on Yandex Cup 2021 ML Challenge: ASR

Speech_38_ru_commands Recognition of 38 speech commands in russian. Based on Yandex Cup 2021 ML Challenge: ASR Программа умеет распознавать 38 ключевы

Andrey 9 May 05, 2022