• Stars
    star
    488
  • Rank 90,182 (Top 2 %)
  • Language
    Python
  • Created over 6 years ago
  • Updated almost 2 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

Write PyTorch code at the level of individual examples, then run it efficiently on minibatches.

Matchbox

Matchbox enables deep learning researchers to write PyTorch code at the level of individual examples, then run it efficiently on minibatches. It does this using three components:

  • A MaskedBatch type, together with overloaded implementations of PyTorch methods and neural network layers, keeps track of padding and masking for variable-size data automatically. Use dir(matchbox.MaskedBatch) to see a list of supported methods.
  • A @batch decorator rewrites some Python control flow into a SIMT-like form that includes execution masking and synchronization primitives.
  • Convenience methods like batch_ones, split_dim, and causal_mask support common use cases in dynamic neural network code in a way that benefits from the more semantically meaningful shape information available with the MaskedBatch type. These are implemented both for batch and tensor objects, because all code written for Matchbox also works with plain Tensors at batch size one.

There is also a plugin for torchtext and a wrapper for testing that Matchbox results are numerically equivalent to a loop over unbatched examples. See the examples and test directories for details.

Installation and requirements

Matchbox is in early-release alpha. Use python setup.py install to install. Please file or upvote issues to request new operation implementations, or feel free to post one as a pull request. If Matchbox throws a NotImplementedError, that means that a particular feature of an operation could be supported but isn't yet.

Matchbox is developed on Python 3.6 and PyTorch 0.4. It contains compatibility code that is intended to support PyTorch 0.3, but not all features will work. Matchbox also requires gast, astor, and six. Python 2 support is not an immediate priority but we would welcome a PR.

Getting started

The first step to using Matchbox is to replace your import of torch.nn.functional with matchbox.functional:

import matchbox
import matchbox.functional as F
# now calls like `F.softmax` refer to Matchbox's implementations

This import also replaces methods on PyTorch Tensors with Matchbox versions and injects matchbox.functional functions into torch.nn modules.

Now you can write model code that applies to individual examples. If your code uses control flow, add the @matchbox.batch decorator to that function or class (unfortunately, this doesn't yet work in the interactive interpreter or in Jupyter notebooks):

from torch import nn
class RNN(nn.Module):
    def __init__(self, size):
        super().__init__()
        self.cell = nn.RNNCell(size, size)
    @matchbox.batch
    def forward(self, x):
        h = x.new_zeros(x.size(0), x.size(-1))
        for xt in x.unbind(1):
            h = self.cell(xt, h)
        return h

You can create input data to pass to this model in three ways. First, you can pass them ordinary PyTorch Tensors with batch size one. You can also pass MaskedBatch objects created manually, from lists of Tensors with batch size one (note that torch.rand should be wrapped in Variable on PyTorch 0.3):

import torch
from matchbox import MaskedBatch
from random import randint
b, t, c = 32, 10, 128
model = RNN(c)
x_unbatched = torch.rand(1, randint(1, t), c) # a single random example
x_manual_batch = MaskedBatch.fromlist(
    [torch.rand(1, randint(1, t), c) for i in range(b)], # list of examples
    (True, False)) # dimension 1 is dynamic and dimension 2 is static
h = model(x_unbatched)
h = model(x_manual_batch)

And we provide a torchtext Field class that produces MaskedBatch objects when a dataset is iterated:

from matchbox.data import MaskedBatchField
TEXT = MaskedBatchField(batch_first=True)
train, dev, test = datasets.IWSLT.splits(('.de', '.en'), (TEXT, TEXT))
TEXT.build_vocab(train, max_size=50000)
train_iter = data.BucketIterator(train, batch_size=32, device=-1)
for x_torchtext_batch in train_iter:
    h = model(x_torchtext_batch)
    # more training loop code

Credit

Matchbox is developed by James Bradbury at Salesforce Research. It also contains Python source-wrangling code modified from Patrick Maupin and Berker Peksag's AST observe-rewrite as well as Google Brain's Tangent, a source-to-source automatic differentiation package developed by Alex Wiltschko, Bart van Merrienboer and Dan Moldovan. The modified Tangent code is licensed under Apache 2 while the rest of the codebase is licensed under three-clause BSD; see LICENSE.BSD-3.txt and LICENSE.Apache-2.txt.

Limitations

Matchbox only works on code that uses native PyTorch operators. In particular, everything that could vary between examples in a batch needs to be a Tensor in order for code written for individual examples to work with Matchbox. Support for scalar tensors is significantly better in PyTorch 0.4. NumPy ops also need to be replaced with their native PyTorch equivalents.

Control flow support is limited. While some of these limitations will be lifted (e.g., support for continue within while is straightforward to add) some constructs are conceptually harder for Matchbox to support (e.g., return from within a for).

There’s also a long tail of less-common operations that haven’t been implemented (plus bigger gaps, like convolutions). We will be continuously adding support for additional ops but also welcome pull requests.

Implementation details (batch semantics)

MaskedBatch objects behave like PyTorch Tensors, but represent a collection ("batch") of Tensors that may be of different sizes in some of their dimensions. Most of the time, MaskedBatch objects adhere to Matchbox's "standard" semantics, but control flow constructions require a different "SIMT" semantics.

Standard

The dims attribute is a tuple with a bool for each non-batch dimension, representing whether that dimension is static (False) or dynamic (True).

The data attribute is a Tensor whose size is the batch size in the batch dimension, the size of all examples in static dimensions, and at least as large as the largest example in the batch in dynamic dimensions.

The mask attribute is a Tensor whose size is the batch size in the batch dimension, one in static dimensions, and at least as large as the largest example in the batch in dynamic dimensions. Each entry in the mask corresponds to one or more entries in the data array (singleton, i.e., static, dimensions are broadcasted), with a one in the mask denoting that the corresponding data entries represent valid, meaningful data and a zero denoting that they do not.

Data values corresponding to zeros in the mask are not required to be zero, and operations should propagate masked data if doing so would not affect non-masked parts of the output. Operations for which this is not the case should first multiply their input data by the corresponding masks.

SIMT

A one in the mask denotes that the corresponding data entries represent currently active data. A zero denotes that the corresponding data entries represent "dormant" data, which may be valid at a previous step of a loop (e.g., at a previous index along an external dimension that is being iterated over) or in another branch of a conditional. Currently, no dimensions in a SIMT batch may be dynamic, but support for this case will be added.

Future work

In addition to adding MaskedBatch support for more operations, we also plan a separate PackedBatch type that can pack its data tensor along its batch dimension and one dynamic dimension and store a separate tensor of offsets. This type will be natively compatible with cuDNN RNNs and saves memory relative to MaskedBatch, but will be slower for some operations.

More Repositories

1

LAVIS

LAVIS - A One-stop Library for Language-Vision Intelligence
Jupyter Notebook
9,587
star
2

CodeGen

CodeGen is a family of open-source model for program synthesis. Trained on TPU-v4. Competitive with OpenAI Codex.
Python
4,594
star
3

BLIP

PyTorch code for BLIP: Bootstrapping Language-Image Pre-training for Unified Vision-Language Understanding and Generation
Jupyter Notebook
3,879
star
4

akita

πŸš€ State Management Tailored-Made for JS Applications
TypeScript
3,442
star
5

Merlion

Merlion: A Machine Learning Framework for Time Series Intelligence
Python
3,355
star
6

ja3

JA3 is a standard for creating SSL client fingerprints in an easy to produce and shareable way.
Python
2,666
star
7

CodeT5

Home of CodeT5: Open Code LLMs for Code Understanding and Generation
Python
2,437
star
8

decaNLP

The Natural Language Decathlon: A Multitask Challenge for NLP
Python
2,301
star
9

TransmogrifAI

TransmogrifAI (pronounced trΔƒns-mŏgˈrΙ™-fΔ«) is an AutoML library for building modular, reusable, strongly typed machine learning workflows on Apache Spark with minimal hand-tuning
Scala
2,234
star
10

policy_sentry

IAM Least Privilege Policy Generator
Python
1,986
star
11

cloudsplaining

Cloudsplaining is an AWS IAM Security Assessment tool that identifies violations of least privilege and generates a risk-prioritized report.
JavaScript
1,972
star
12

awd-lstm-lm

LSTM and QRNN Language Model Toolkit for PyTorch
Python
1,900
star
13

ctrl

Conditional Transformer Language Model for Controllable Generation
Python
1,766
star
14

lwc

⚑️ LWC - A Blazing Fast, Enterprise-Grade Web Components Foundation
JavaScript
1,619
star
15

WikiSQL

A large annotated semantic parsing corpus for developing natural language interfaces.
HTML
1,606
star
16

sloop

Kubernetes History Visualization
Go
1,457
star
17

CodeTF

CodeTF: One-stop Transformer Library for State-of-the-art Code LLM
Python
1,375
star
18

ALBEF

Code for ALBEF: a new vision-language pre-training method
Python
1,276
star
19

pytorch-qrnn

PyTorch implementation of the Quasi-Recurrent Neural Network - up to 16 times faster than NVIDIA's cuDNN LSTM
Python
1,255
star
20

ai-economist

Foundation is a flexible, modular, and composable framework to model socio-economic behaviors and dynamics with both agents and governments. This framework can be used in conjunction with reinforcement learning to learn optimal economic policies,Β as done by the AI Economist (https://www.einstein.ai/the-ai-economist).
Python
964
star
21

design-system-react

Salesforce Lightning Design System for React
JavaScript
919
star
22

jarm

Python
914
star
23

tough-cookie

RFC6265 Cookies and CookieJar for Node.js
TypeScript
858
star
24

OmniXAI

OmniXAI: A Library for eXplainable AI
Jupyter Notebook
853
star
25

reactive-grpc

Reactive stubs for gRPC
Java
826
star
26

xgen

Salesforce open-source LLMs with 8k sequence length.
Python
717
star
27

UniControl

Unified Controllable Visual Generation Model
Python
614
star
28

vulnreport

Open-source pentesting management and automation platform by Salesforce Product Security
HTML
593
star
29

hassh

HASSH is a network fingerprinting standard which can be used to identify specific Client and Server SSH implementations. The fingerprints can be easily stored, searched and shared in the form of a small MD5 fingerprint.
Python
529
star
30

progen

Official release of the ProGen models
Python
518
star
31

base-components-recipes

A collection of base component recipes for Lightning Web Components on Salesforce Platform
JavaScript
509
star
32

Argus

Time series monitoring and alerting platform.
Java
501
star
33

CodeRL

This is the official code for the paper CodeRL: Mastering Code Generation through Pretrained Models and Deep Reinforcement Learning (NeurIPS22).
Python
488
star
34

PCL

PyTorch code for "Prototypical Contrastive Learning of Unsupervised Representations"
Python
483
star
35

DialogStudio

DialogStudio: Towards Richest and Most Diverse Unified Dataset Collection and Instruction-Aware Models for Conversational AI
Python
472
star
36

cove

Python
470
star
37

warp-drive

Extremely Fast End-to-End Deep Multi-Agent Reinforcement Learning Framework on a GPU (JMLR 2022)
Python
452
star
38

PyRCA

PyRCA: A Python Machine Learning Library for Root Cause Analysis
Python
408
star
39

observable-membrane

A Javascript Membrane implementation using Proxies to observe mutation on an object graph
TypeScript
368
star
40

DeepTime

PyTorch code for Learning Deep Time-index Models for Time Series Forecasting (ICML 2023)
Python
351
star
41

ULIP

Python
316
star
42

MultiHopKG

Multi-hop knowledge graph reasoning learned via policy gradient with reward shaping and action dropout
Jupyter Notebook
300
star
43

logai

LogAI - An open-source library for log analytics and intelligence
Python
298
star
44

CodeGen2

CodeGen2 models for program synthesis
Python
272
star
45

provis

Official code repository of "BERTology Meets Biology: Interpreting Attention in Protein Language Models."
Python
269
star
46

causalai

Salesforce CausalAI Library: A Fast and Scalable framework for Causal Analysis of Time Series and Tabular Data
Jupyter Notebook
256
star
47

jaxformer

Minimal library to train LLMs on TPU in JAX with pjit().
Python
255
star
48

EDICT

Jupyter Notebook
247
star
49

rules_spring

Bazel rule for building Spring Boot apps as a deployable jar
Starlark
224
star
50

ETSformer

PyTorch code for ETSformer: Exponential Smoothing Transformers for Time-series Forecasting
Python
221
star
51

TabularSemanticParsing

Translating natural language questions to a structured query language
Jupyter Notebook
220
star
52

themify

πŸ‘¨β€πŸŽ¨ CSS Themes Made Easy. A robust, opinionated solution to manage themes in your web application
TypeScript
216
star
53

simpletod

Official repository for "SimpleTOD: A Simple Language Model for Task-Oriented Dialogue"
Python
212
star
54

grpc-java-contrib

Useful extensions for the grpc-java library
Java
208
star
55

GeDi

GeDi: Generative Discriminator Guided Sequence Generation
Python
207
star
56

aws-allowlister

Automatically compile an AWS Service Control Policy that ONLY allows AWS services that are compliant with your preferred compliance frameworks.
Python
207
star
57

generic-sidecar-injector

A generic framework for injecting sidecars and related configuration in Kubernetes using Mutating Webhook Admission Controllers
Go
203
star
58

mirus

Mirus is a cross data-center data replication tool for Apache Kafka
Java
201
star
59

CoST

PyTorch code for CoST: Contrastive Learning of Disentangled Seasonal-Trend Representations for Time Series Forecasting (ICLR 2022)
Python
196
star
60

factCC

Resources for the "Evaluating the Factual Consistency of Abstractive Text Summarization" paper
Python
192
star
61

runway-browser

Interactive visualization framework for Runway models of distributed systems
JavaScript
188
star
62

glad

Global-Locally Self-Attentive Dialogue State Tracker
Python
186
star
63

cloud-guardrails

Rapidly apply hundreds of security controls in Azure
HCL
181
star
64

ALPRO

Align and Prompt: Video-and-Language Pre-training with Entity Prompts
Python
177
star
65

densecap

Jupyter Notebook
176
star
66

kafka-junit

This library wraps Kafka's embedded test cluster, allowing you to more easily create and run integration tests using JUnit against a "real" kafka server running within the context of your tests. No need to stand up an external kafka cluster!
Java
167
star
67

booksum

Python
167
star
68

sfdx-lwc-jest

Run Jest against LWC components in SFDX workspace environment
JavaScript
162
star
69

hierarchicalContrastiveLearning

Python
149
star
70

ctrl-sum

Resources for the "CTRLsum: Towards Generic Controllable Text Summarization" paper
Python
146
star
71

cos-e

Commonsense Explanations Dataset and Code
Python
144
star
72

secure-filters

Anti-XSS Security Filters for EJS and More
JavaScript
138
star
73

metabadger

Prevent SSRF attacks on AWS EC2 via automated upgrades to the more secure Instance Metadata Service v2 (IMDSv2).
Python
129
star
74

dockerfile-image-update

A tool that helps you get security patches for Docker images into production as quickly as possible without breaking things
Java
127
star
75

Converse

Python
125
star
76

refocus

The Go-To Platform for Visualizing Service Health
JavaScript
125
star
77

CoMatch

Code for CoMatch: Semi-supervised Learning with Contrastive Graph Regularization
Python
117
star
78

BOLAA

Python
114
star
79

fsnet

Python
111
star
80

rng-kbqa

Python
110
star
81

near-membrane

JavaScript Near Membrane Library that powers Lightning Locker Service
TypeScript
110
star
82

botsim

BotSIM - a data-efficient end-to-end Bot SIMulation toolkit for evaluation, diagnosis, and improvement of commercial chatbots
Jupyter Notebook
108
star
83

bazel-eclipse

This repo holds two IDE projects. One is the Eclipse Feature for developing Bazel projects in Eclipse. The Bazel Eclipse Feature supports importing, building, and testing Java projects that are built using the Bazel build system. The other is the Bazel Java Language Server, which is a build integration for IDEs such as VS Code.
Java
108
star
84

MUST

PyTorch code for MUST
Python
103
star
85

bro-sysmon

How to Zeek Sysmon Logs!
Zeek
100
star
86

Timbermill

A better logging service
Java
99
star
87

AuditNLG

AuditNLG: Auditing Generative AI Language Modeling for Trustworthiness
Python
97
star
88

eslint-plugin-lwc

Official ESLint rules for LWC
JavaScript
96
star
89

best

πŸ† Delightful Benchmarking & Performance Testing
TypeScript
95
star
90

craft

CRAFT removes the language barrier to create Kubernetes Operators.
Go
93
star
91

eslint-config-lwc

Opinionated ESLint configurations for LWC projects
JavaScript
93
star
92

online_conformal

Methods for online conformal prediction.
Jupyter Notebook
90
star
93

lobster-pot

Scans every git push to your Github organisations to find unwanted secrets.
Go
88
star
94

ml4ir

Machine Learning for Information Retrieval
Jupyter Notebook
85
star
95

violet-conversations

Sophisticated Conversational Applications/Bots
JavaScript
84
star
96

apex-mockery

Lightweight mocking library in Apex
Apex
83
star
97

fast-influence-functions

Python
83
star
98

MoPro

MoPro: Webly Supervised Learning
Python
79
star
99

TaiChi

Open source library for few shot NLP
Python
79
star
100

helm-starter-istio

An Istio starter template for Helm
Shell
78
star