Toy example of an applied ML pipeline for me to experiment with MLOps tools.

Overview

Toy Machine Learning Pipeline

Table of Contents
  1. About
  2. Getting Started
  3. ML task description and evaluation procedure
  4. Dataset description
  5. Repository structure
  6. Utils documentation
  7. Roadmap
  8. Contributing
  9. Contact

About

This is a toy example of a standalone ML pipeline written entirely in Python. No external tools are incorporated into the master branch. I built this for two reasons:

  1. To experiment with my own ideas for MLOps tools, as it is hard to develop devtools in a vacuum :)
  2. To have something to integrate existing MLOps tools with so I can have real opinions

The following diagram describes the pipeline at a high level. The README describes it in more detail.

Diagram

Getting started

This pipeline is broken down into several components, described in a high level by the directories in this repository. See the Makefile for various commands you can run, but to serve the inference API locally, you can do the following:

  1. git clone the repository
  2. In the root directory of the repo, run make serve
  3. [OPTIONAL] In a new tab, run make inference to ping the API with some sample records

All Python dependencies and virtual environment creation is handled by the Makefile. See setup.py to see the packages installed into the virtual environment, which mainly consist of basic Python packages such as pandas or sklearn.

ML task description and evaluation procedure

We train a model to predict whether a passenger in a NYC taxicab ride will give the driver a large tip. This is a binary classification task. A large tip is arbitrarily defined as greater than 20% of the total fare (before tip). To evaluate the model or measure the efficacy of the model, we measure the F1 score.

The current best model is an instance of sklearn.ensemble.RandomForestClassifier with max_depth of 10 and other default parameters. The test set F1 score is 0.716. I explored this toy task earlier in my debugging ML talk.

Dataset description

We use the yellow taxicab trip records from the NYC Taxi & Limousine Comission public dataset, which is stored in a public aws S3 bucket. The data dictionary can be found here and is also shown below:

Field Name Description
VendorID A code indicating the TPEP provider that provided the record. 1= Creative Mobile Technologies, LLC; 2= VeriFone Inc.
tpep_pickup_datetime The date and time when the meter was engaged.
tpep_dropoff_datetime The date and time when the meter was disengaged.
Passenger_count The number of passengers in the vehicle. This is a driver-entered value.
Trip_distance The elapsed trip distance in miles reported by the taximeter.
PULocationID TLC Taxi Zone in which the taximeter was engaged.
DOLocationID TLC Taxi Zone in which the taximeter was disengaged
RateCodeID The final rate code in effect at the end of the trip. 1= Standard rate, 2=JFK, 3=Newark, 4=Nassau or Westchester, 5=Negotiated fare, 6=Group ride
Store_and_fwd_flag This flag indicates whether the trip record was held in vehicle memory before sending to the vendor, aka “store and forward,” because the vehicle did not have a connection to the server. Y= store and forward trip, N= not a store and forward trip
Payment_type A numeric code signifying how the passenger paid for the trip. 1= Credit card, 2= Cash, 3= No charge, 4= Dispute, 5= Unknown, 6= Voided trip
Fare_amount The time-and-distance fare calculated by the meter.
Extra Miscellaneous extras and surcharges. Currently, this only includes the $0.50 and $1 rush hour and overnight charges.
MTA_tax $0.50 MTA tax that is automatically triggered based on the metered rate in use.
Improvement_surcharge $0.30 improvement surcharge assessed trips at the flag drop. The improvement surcharge began being levied in 2015.
Tip_amount Tip amount – This field is automatically populated for credit card tips. Cash tips are not included.
Tolls_amount Total amount of all tolls paid in trip.
Total_amount The total amount charged to passengers. Does not include cash tips.

Repository structure

The pipeline contains multiple components, each organized into the following high-level subdirectories:

  • etl
  • training
  • inference

Pipeline components

Any applied ML pipeline is essentially a series of functions applied one after the other, such as data transformations, models, and output transformations. This pipeline was initially built in a lightweight fashion to run on a regular laptop with around 8 GB of RAM. The logic in these components is a first pass; there is a lot of room to improve.

The following table describes the components of this pipeline, in order:

Name Description How to run File(s)
Cleaning Reads the dataset (stored in a public S3 bucket) and performs very basic cleaning (drops rows outside the time range or with $0-valued fares) make cleaning etl/cleaning.py
Featuregen Generates basic features for the ML model make featuregen etl/featuregen.py
Split Splits the features into train and test sets make split training/split.py
Training Trains a random forest classifier on the train set and evaluates it on the test set make training training/train.py
Inference Locally serves an API that is essentially a wrapper around the predict function make serve, make inference [inference/app.py, inference/inference.py]

Data storage

The inputs and outputs for the pipeline components, as well as other artifacts, are stored in a public S3 bucket named toy-applied-ml-pipeline located in us-west-1. Read access is universal and doesn't require special permissions. Write access is limited to those with credentials. If you are interested in contributing and want write access, please contact me directly describing how you would like to be involved, and I can send you keys.

The bucket has a scratch folder, where random scratch files live. These random scratch files were likely generated by the write_file function in utils.io. The bulk of the bucket lies in the dev directory, or s3://toy-applied-ml-pipeline/dev.

The dev directory's subdirectories represent the components in the pipeline. These subdirectories contain the outputs of each component respectively, where the outputs are versioned with the timestamp the component was run. The utils.io library contains helper functions to write outputs and load the latest component output as input to another component. To inspect the filesystem structure further, you can call io.list_files(dirname), which returns the immediate files in dirname.

If you have write permissions, store your keys/ids in an .env file, and the Makefile will automatically pick it up. If you do not have write permissions, you will run into an error if you try to write to the S3 bucket.

Utils documentation

The utils directory contains helper functions and abstractions for expanding upon the current pipeline. Tests are in utils/tests.py. Note that only the io functions are tested as of now.

io

utils/io.py contains various helper functions to interface with S3. The two most useful functions are:

def load_output_df(component: str, dev: bool = True, version: str = None) -> pd.DataFrame:
  """
    This function loads the latest version of data that was produced by a component.
    Args:
        component (str): component name that we want to get the output from
        dev (bool): whether this is run in development or "production" mode
        version (str, optional): specified version of the data
    Returns:
        df (pd.DataFrame): dataframe corresponding to the data in the latest version of the output for the specified component
    """
    ...

def save_output_df(df: pd.DataFrame, component: str, dev: bool = True, overwrite: bool = False, version: str = None) -> str:
    """
    This function writes the output of a pipeline component (a dataframe) to a parquet file.
    Args:
        df (pd.DataFrame): dataframe representing the output
        component (str): name of the component that produced the output (ex: clean)
        dev (bool, optional): whether this is run in development or "production" mode
        overwrite (bool, optional): whether to overwrite a file with the same name
        version (str, optional): optional version for the output. If not specified, the function will create the version number.
    Returns:
        path (str): Full path that the file can be accessed at
    """
    ...

Note that save_output_df's default parameters are set such that you cannot overwrite an existing file. You can change this by setting overwrite = True.

Feature generators

utils.feature_generators.py contains the lightweight abstraction for a feature generator to make it easy for someone to create a new feature. The abstraction is as follows:

class FeatureGenerator(ABC):
    """Abstract class for a feature generator."""

    def __init__(self, name: str, required_columns: typing.List[str]):
        """Constructor stores the name of the feature and columns required in a df to construct that feature."""
        self.name = name
        self.required_columns = required_columns

    @abstractmethod
    def compute(self):
        pass

    @abstractmethod
    def schema(self):
        pass

See utils.feature_generators.py for examples on how to create specific feature types and etl/featuregen.py for an example on how to create the actual instances of the features themselves.

Models

utils/models.py contains the ModelWrapper abstraction. This abstraction is essentially a wrapper around a model and consists of:

  • the model binary
  • pointer to dataset(s)
  • metric values

To use this abstraction, you must create a subclass of ModelWrapper and implement the preprocess, train, predict, and score methods. The base class also provides methods to save and load the ModelWrapper object. It will fail to save if the client has not added data paths and metrics to the object.

An example of a subclass of ModelWrapper is the RandomForestModelWrapper, which is also found in utils/models.py. The RandomForestModelWrapper client usage example is in training/train.py and is partially shown below:

from utils import models

# Create and train model
mw = models.RandomForestModelWrapper(
    feature_columns=feature_columns, model_params=model_params)
mw.train(train_df, label_column)

# Score model
train_score = mw.score(train_df, label_column)
test_score = mw.score(test_df, label_column)

mw.add_data_path('train_df', train_file_path)
mw.add_data_path('test_df', test_file_path)
mw.add_metric('train_f1', train_score)
mw.add_metric('test_f1', test_score)

# Save model
print(mw.save('training/models'))

# Load latest model version
reloaded_mw = models.RandomForestModelWrapper.load('training/models')
test_preds = reloaded_mw.predict(test_df)

Roadmap

See the open issues for tickets corresponding to feature ideas. The issues in this repo are mainly tagged either data science or engineering.

Contributing

Having a toy example of an ML pipeline isn't just nice to have for people experimenting with MLOps tools. ML beginners or data science enthusiasts looking to understand how to build pipelines around ML models can also benefit from this repository.

Anyone is welcome to contribute, and your contribution is greatly appreciated! Feel free to either create issues or pull requests to address issues.

  1. Fork the repo
  2. Create your branch (git checkout -b YOUR_GITHUB_USERNAME/somefeature)
  3. Make changes and add files to the commit (git add .)
  4. Commit your changes (git commit -m 'Add something')
  5. Push to your branch (git push origin YOUR_GITHUB_USERNAME/somefeature)
  6. Make a pull request

Contact

Original author: Shreya Shankar

Email: [email protected]

Owner
Shreya Shankar
Trying to make machine learning work in the real world. Previously at @viaduct-ai, @google-research, @facebook, and @Stanford computer science.
Shreya Shankar
Twitter Sentiment Analysis using #tag, words and username

Twitter Sentment Analysis Web App using #tag, words and username to fetch data finds Insides of data and Tells Sentiment of the perticular #tag, words or username.

Kumar Saksham 26 Dec 25, 2022
Code for the paper in Findings of EMNLP 2021: "EfficientBERT: Progressively Searching Multilayer Perceptron via Warm-up Knowledge Distillation".

This repository contains the code for the paper in Findings of EMNLP 2021: "EfficientBERT: Progressively Searching Multilayer Perceptron via Warm-up Knowledge Distillation".

Chenhe Dong 28 Nov 10, 2022
Header-only C++ HNSW implementation with python bindings

Hnswlib - fast approximate nearest neighbor search Header-only C++ HNSW implementation with python bindings. NEWS: version 0.6 Thanks to (@dyashuni) h

2.3k Jan 05, 2023
Code for the paper TestRank: Bringing Order into Unlabeled Test Instances for Deep Learning Tasks

TestRank in Pytorch Code for the paper TestRank: Bringing Order into Unlabeled Test Instances for Deep Learning Tasks by Yu Li, Min Li, Qiuxia Lai, Ya

3 May 19, 2022
Mastering Transformers, published by Packt

Mastering Transformers This is the code repository for Mastering Transformers, published by Packt. Build state-of-the-art models from scratch with adv

Packt 195 Jan 01, 2023
BERT-based Financial Question Answering System

BERT-based Financial Question Answering System In this example, we use Jina, PyTorch, and Hugging Face transformers to build a production-ready BERT-b

Bithiah Yuan 61 Sep 18, 2022
🦅 Pretrained BigBird Model for Korean (up to 4096 tokens)

Pretrained BigBird Model for Korean What is BigBird • How to Use • Pretraining • Evaluation Result • Docs • Citation 한국어 | English What is BigBird? Bi

Jangwon Park 183 Dec 14, 2022
Official code for Spoken ObjectNet: A Bias-Controlled Spoken Caption Dataset

Official code for our Interspeech 2021 - Spoken ObjectNet: A Bias-Controlled Spoken Caption Dataset [1]*. Visually-grounded spoken language datasets c

Ian Palmer 3 Jan 26, 2022
BERT score for text generation

BERTScore Automatic Evaluation Metric described in the paper BERTScore: Evaluating Text Generation with BERT (ICLR 2020). News: Features to appear in

Tianyi 1k Jan 08, 2023
Repository to hold code for the cap-bot varient that is being presented at the SIIC Defence Hackathon 2021.

capbot-siic Repository to hold code for the cap-bot varient that is being presented at the SIIC Defence Hackathon 2021. Problem Inspiration A plethora

Aryan Kargwal 19 Feb 17, 2022
A list of NLP(Natural Language Processing) tutorials built on Tensorflow 2.0.

A list of NLP(Natural Language Processing) tutorials built on Tensorflow 2.0.

Won Joon Yoo 335 Jan 04, 2023
Part of Speech Tagging using Hidden Markov Model (HMM) POS Tagger and Brill Tagger

Part of Speech Tagging using Hidden Markov Model (HMM) POS Tagger and Brill Tagger In this project, our aim is to tune, compare, and contrast the perf

Chirag Daryani 0 Dec 25, 2021
Official implementation of MLP Singer: Towards Rapid Parallel Korean Singing Voice Synthesis

MLP Singer Official implementation of MLP Singer: Towards Rapid Parallel Korean Singing Voice Synthesis. Audio samples are available on our demo page.

Neosapience 103 Dec 23, 2022
CCF BDCI 2020 房产行业聊天问答匹配赛道 A榜47/2985

CCF BDCI 2020 房产行业聊天问答匹配 A榜47/2985 赛题描述详见:https://www.datafountain.cn/competitions/474 文件说明 data: 存放训练数据和测试数据以及预处理代码 model_bert.py: 网络模型结构定义 adv_train

shuo 40 Sep 28, 2022
Open-Source Toolkit for End-to-End Speech Recognition leveraging PyTorch-Lightning and Hydra.

🤗 Contributing to OpenSpeech 🤗 OpenSpeech provides reference implementations of various ASR modeling papers and three languages recipe to perform ta

Openspeech TEAM 513 Jan 03, 2023
Ptorch NLU, a Chinese text classification and sequence annotation toolkit, supports multi class and multi label classification tasks of Chinese long text and short text, and supports sequence annotation tasks such as Chinese named entity recognition, part of speech tagging and word segmentation.

Pytorch-NLU,一个中文文本分类、序列标注工具包,支持中文长文本、短文本的多类、多标签分类任务,支持中文命名实体识别、词性标注、分词等序列标注任务。 Ptorch NLU, a Chinese text classification and sequence annotation toolkit, supports multi class and multi label classifi

186 Dec 24, 2022
Source code for CsiNet and CRNet using Fully Connected Layer-Shared feedback architecture.

FCS-applications Source code for CsiNet and CRNet using the Fully Connected Layer-Shared feedback architecture. Introduction This repository contains

Boyuan Zhang 4 Oct 07, 2022
Implementation of some unbalanced loss like focal_loss, dice_loss, DSC Loss, GHM Loss et.al

Implementation of some unbalanced loss for NLP task like focal_loss, dice_loss, DSC Loss, GHM Loss et.al Summary Here is a loss implementation reposit

121 Jan 01, 2023
Easy Language Model Pretraining leveraging Huggingface's Transformers and Datasets

Easy Language Model Pretraining leveraging Huggingface's Transformers and Datasets What is LASSL • How to Use What is LASSL LASSL은 LAnguage Semi-Super

LASSL: LAnguage Self-Supervised Learning 116 Dec 27, 2022
A tool helps build a talk preview image by combining the given background image and talk event description

talk-preview-img-builder A tool helps build a talk preview image by combining the given background image and talk event description Installation and U

PyCon Taiwan 4 Aug 20, 2022