Kaggle Lyft Motion Prediction for Autonomous Vehicles 4th place solution

Overview

Lyft Motion Prediction for Autonomous Vehicles

Code for the 4th place solution of Lyft Motion Prediction for Autonomous Vehicles on Kaggle.

Directory structure

input               --- Please locate data here
src
|-ensemble          --- For 4. Ensemble scripts
|-lib               --- Library codes
|-modeling          --- For 1. training, 2. prediction and 3. evaluation scripts
  |-results         --- Training, prediction and evaluation results will be stored here
README.md           --- This instruction file
requirements.txt    --- For python library versions

Hardware (The following specs were used to create the original solution)

  • Ubuntu 18.04 LTS
  • 32 CPUs
  • 128GB RAM
  • 8 x NVIDIA Tesla V100 GPUs

Software (python packages are detailed separately in requirements.txt):

Python 3.8.5 CUDA 10.1.243 cuddn 7.6.5 nvidia drivers v.55.23.0 -- Equivalent Dockerfile for the GPU installs: Use nvidia/cuda:10.1-cudnn7-devel-ubuntu18.04 as base image

Also, we installed OpenMPI==4.0.4 for running pytorch distributed training.

Python Library

Deep learning framework, base library

  • torch==1.6.0+cu101
  • torchvision==0.7.0
  • l5kit==1.1.0
  • cupy-cuda101==7.0.0
  • pytorch-ignite==0.4.1
  • pytorch-pfn-extras==0.3.1

CNN models

Data processing/augmentation

  • albumentations==0.4.3
  • scikit-learn==0.22.2.post1

We also installed apex https://github.com/nvidia/apex

Please refer requirements.txt for more details.

Environment Variable

We recommend to set following environment variables for better performance.

export MKL_NUM_THREADS=1
export OMP_NUM_THREADS=1
export NUMEXPR_NUM_THREADS=1

Data setup

Please download competition data:

For the lyft-motion-prediction-autonomous-vehicles dataset, extract them under input/lyft-motion-prediction-autonomous-vehicles directory.

For the lyft-full-training-set data which only contains train_full.zarr, please place it under input/lyft-motion-prediction-autonomous-vehicles/scenes as follows:

input
|-lyft-motion-prediction-autonomous-vehicles
  |-scenes
    |-train_full.zarr (Place here!)
    |-train.zarr
    |-validate.zarr
    |-test.zarr
    |-... (other data)
  |-... (other data)

Pipeline

Our submission pipeline consists of 1. Training, 2. Prediction, 3. Ensemble.

Training with training/validation dataset

The training script is located under src/modeling.

train_lyft.py is the training script and the training configuration is specified by flags yaml file.

[Note] If you want to run training from scratch, please remove results folder once. The training script tries to resume from results folder when resume_if_possible=True is set.

[Note] For the first time of training, it creates cache for training to run efficiently. This cache creation should be done in single process, so please try with the single GPU training until training loop starts. The cache is directly created under input directory.

Once the cache is created, we can run multi-GPU training using same train_lyft.py script, with mpiexec command.

$ cd src/modeling

# Single GPU training (Please run this for first time, for input data cache creation)
$ python train_lyft.py --yaml_filepath ./flags/20201104_cosine_aug.yaml

# Multi GPU training (-n 8 for 8 GPU training)
$ mpiexec -x MASTER_ADDR=localhost -x MASTER_PORT=8899 -n 8 \
  python train_lyft.py --yaml_filepath ./flags/20201104_cosine_aug.yaml

We have trained 9 different models for final submission. Each training configuration can be found in src/modeling/flags, and the training results are located in src/modeling/results.

Prediction for test dataset

predict_lyft.py under src/modeling executes the prediction for test data.

Specify out as trained directory, the script uses trained model of this directory to inference. Please set --convert_world_from_agent true after l5kit==1.1.0.

$ cd src/modeling
$ python predict_lyft.py --out results/20201104_cosine_aug --use_ema true --convert_world_from_agent true

Predicted results are stored under out directory. For example, results/20201104_cosine_aug/prediction_ema/submission.csv is created with above setting.

We executed this prediction for all 9 trained models. We can submit this submission.csv file as the single model prediction.

(Optional) Evaluation with validation dataset

eval_lyft.py under src/modeling executes the evaluation for validation data (chopped data).

python eval_lyft.py --out results/20201104_cosine_aug --use_ema true

The script shows validation error, which is useful for local evaluation of model performance.

Ensemble

Finally all trained models' predictions are ensembled using GMM fitting.

The ensemble script is located under src/ensemble.

# Please execute from root of this repository.
$ python src/ensemble/ensemble_test.py --yaml_filepath src/ensemble/flags/20201126_ensemble.yaml

The location of final ensembled submission.csv is specified in the yaml file. You can submit this submission.csv by uploading it as dataset, and submit via Kaggle kernel. Please follow Save your time, submit without kernel inference for the submission procedure.

MiniHack the Planet: A Sandbox for Open-Ended Reinforcement Learning Research

MiniHack the Planet: A Sandbox for Open-Ended Reinforcement Learning Research

Facebook Research 338 Dec 29, 2022
Matlab Python Heuristic Battery Opt - SMOP conversion and manual conversion

SMOP is Small Matlab and Octave to Python compiler. SMOP translates matlab to py

Tom Xu 1 Jan 12, 2022
Official public repository of paper "Intention Adaptive Graph Neural Network for Category-Aware Session-Based Recommendation"

Intention Adaptive Graph Neural Network (IAGNN) This is the official repository of paper Intention Adaptive Graph Neural Network for Category-Aware Se

9 Nov 22, 2022
Example for AUAV 2022 with obstacle avoidance.

AUAV 2022 Sample This is a sample PX4 based quadrotor path planning framework based on Ubuntu 20.04 and ROS noetic for the IEEE Autonomous UAS 2022 co

James Goppert 11 Sep 16, 2022
A powerful framework for decentralized federated learning with user-defined communication topology

Scatterbrained Decentralized Federated Learning Scatterbrained makes it easy to build federated learning systems. In addition to traditional federated

Johns Hopkins Applied Physics Laboratory 7 Sep 26, 2022
PSPNet in Chainer

PSPNet This is an unofficial implementation of Pyramid Scene Parsing Network (PSPNet) in Chainer. Training Requirement Python 3.4.4+ Chainer 3.0.0b1+

Shunta Saito 76 Dec 12, 2022
IEEE-CIS Technical Challenge on Predict+Optimize for Renewable Energy Scheduling

IEEE-CIS Technical Challenge on Predict+Optimize for Renewable Energy Scheduling This is my code, data and approach for the IEEE-CIS Technical Challen

3 Sep 18, 2022
Mask R-CNN for object detection and instance segmentation on Keras and TensorFlow

Mask R-CNN for Object Detection and Segmentation This is an implementation of Mask R-CNN on Python 3, Keras, and TensorFlow. The model generates bound

Matterport, Inc 22.5k Jan 04, 2023
PyTorch implementation of MoCo: Momentum Contrast for Unsupervised Visual Representation Learning

MoCo: Momentum Contrast for Unsupervised Visual Representation Learning This is a PyTorch implementation of the MoCo paper: @Article{he2019moco, aut

Meta Research 3.7k Jan 02, 2023
A state-of-the-art semi-supervised method for image recognition

Mean teachers are better role models Paper ---- NIPS 2017 poster ---- NIPS 2017 spotlight slides ---- Blog post By Antti Tarvainen, Harri Valpola (The

Curious AI 1.4k Jan 06, 2023
git《Learning Pairwise Inter-Plane Relations for Piecewise Planar Reconstruction》(ECCV 2020) GitHub:

Learning Pairwise Inter-Plane Relations for Piecewise Planar Reconstruction Code for the ECCV 2020 paper by Yiming Qian and Yasutaka Furukawa Getting

37 Dec 04, 2022
An Industrial Grade Federated Learning Framework

DOC | Quick Start | 中文 FATE (Federated AI Technology Enabler) is an open-source project initiated by Webank's AI Department to provide a secure comput

Federated AI Ecosystem 4.8k Jan 09, 2023
rastrainer is a QGIS plugin to training remote sensing semantic segmentation model based on PaddlePaddle.

rastrainer rastrainer is a QGIS plugin to training remote sensing semantic segmentation model based on PaddlePaddle. UI TODO Init UI. Add Block. Add l

deepbands 5 Mar 04, 2022
Code for Environment Dynamics Decomposition (ED2).

ED2 Code for Environment Dynamics Decomposition (ED2). Installation Follow the installation in MBPO and Dreamer. Usage First follow the SD2 method for

0 Aug 10, 2021
Research code of ICCV 2021 paper "Mesh Graphormer"

MeshGraphormer ✨ ✨ This is our research code of Mesh Graphormer. Mesh Graphormer is a new transformer-based method for human pose and mesh reconsructi

Microsoft 251 Jan 08, 2023
Official PyTorch implementation for "Low Precision Decentralized Distributed Training with Heterogenous Data"

Low Precision Decentralized Training with Heterogenous Data Official PyTorch implementation for "Low Precision Decentralized Distributed Training with

Aparna Aketi 0 Nov 23, 2021
PyTorch code for Composing Partial Differential Equations with Physics-Aware Neural Networks

FInite volume Neural Network (FINN) This repository contains the PyTorch code for models, training, and testing, and Python code for data generation t

Cognitive Modeling 20 Dec 18, 2022
Continual Learning of Long Topic Sequences in Neural Information Retrieval

ContinualPassageRanking Repository for the paper "Continual Learning of Long Topic Sequences in Neural Information Retrieval". In this repository you

0 Apr 12, 2022
FewBit — a library for memory efficient training of large neural networks

FewBit FewBit — a library for memory efficient training of large neural networks. Its efficiency originates from storage optimizations applied to back

24 Oct 22, 2022
Official Pytorch Code for the paper TransWeather

TransWeather Official Code for the paper TransWeather, Arxiv Tech Report 2021 Paper | Website About this repo: This repo hosts the implentation code,

Jeya Maria Jose 81 Dec 30, 2022