iris - Open Source Photos Platform Powered by PyTorch

Overview
Comments
  • 404 error on frontend

    404 error on frontend

    in brouser:

    graphql:1 Failed to load resource: the server responded with a status of 404 (Not Found)

    in console:

    frontend | 2021/11/05 09:51:37 [error] 36#36: *11 open() "/usr/share/nginx/html/graphql" failed (2: No such file or directory), client: 172.21.0.1, server: localhost, request: "POST /graphql HTTP/1.1", host: "localhost:5000", referrer: "http://localhost:5000/explore"

    WAIDW?

    frontend 
    opened by Nehc 5
  • [frontend] Show maps with pins for each place on `/explore/places`

    [frontend] Show maps with pins for each place on `/explore/places`

    • [ ] Use open street maps to show pins on each lat, long in /explore/place entities list
    • [ ] Should be a static image and should not be interactive map
    opened by prabhuomkar 1
  • [frontend] Upload Button and Explore Section List

    [frontend] Upload Button and Explore Section List

    • [x] Add upload button in Header
    • [x] Add Image Lists
    • [x] Make sure for places images have border-radius: 50% and for rest its border-radius: 4 or 8px
    opened by prabhuomkar 1
  • [frontend] Theming using `@rmwc/theme`

    [frontend] Theming using `@rmwc/theme`

    • [x] Install @rmwc/theme
    • [x] Delete unwanted custom tags which are used only due to colors
    • [x] Use <ThemeProvider /> by @rmwc and set colors via that as props
    opened by prabhuomkar 1
  • [frontend] Explore section template design

    [frontend] Explore section template design

    • [x] Add 3 single rows with SEE ALL button on top
    • [x] Name 3 rows with titles as:
      • [x] People
      • [x] Places
      • [x] Things
    • [x] Each section then will have its own page as:
      • [x] /explore/people
      • [x] /explore/places
      • [x] /explore/things
    opened by prabhuomkar 1
  • [api] Configure GitHub Action

    [api] Configure GitHub Action

    • [x] Added GitHub Action workflow for api folder
    • [x] Following tasks should be included on every PR and master:
      • [x] make lint check
      • [x] make generate check
      • [x] make build check
    opened by prabhuomkar 1
  • [frontend] Configure GitHub Action

    [frontend] Configure GitHub Action

    • [x] Added GitHub Action workflow for frontend folder
    • [x] Following tasks should be included on every PR and master:
      • [x] npm run build check
      • [x] npm run lint check
      • [x] npm test check
    opened by prabhuomkar 1
  • [worker] Using TorchScript Modules for Things Classification

    [worker] Using TorchScript Modules for Things Classification

    • Show examples for converting two SOTA models into TorchScript modules
    • Should return class names directly as result by making use of imagenet classes list
    opened by prabhuomkar 0
  • [api/worker] Invoking Worker Pipeline Components based on Environment Config

    [api/worker] Invoking Worker Pipeline Components based on Environment Config

    • Add environment variables for disabling invoking of worker pipeline components People, Places, Things
    • This should also disable similar entities from showing on UI (even if there is data generated for the same, but don't delete existing data)
    • This actions should go via queue and should be used for invoking those respective components
    opened by prabhuomkar 0
  • Github Actions for publishing Docker images to Docker Hub

    Github Actions for publishing Docker images to Docker Hub

    Docker Images should be built using 2 step process to reduce the image size:

    • [x] API - https://github.com/prabhuomkar/iris/commit/111ebc8fd51ac1eaf0d63f6a700e6d09c99c48f3
    • [x] Worker - #111

    Docker Images will be named as follows:

    • Frontend: prabhuomkar/iris-frontend:<tag>
    • GraphQL: prabhuomkar/iris-graphql:<tag>
    • Worker: prabhuomkar/iris-worker:<tag>
    • ML: prabhuomkar/iris-ml:<tag>
    opened by prabhuomkar 0
Releases(v2021.12.31)
  • v2021.12.31(Jan 1, 2022)

    What's Changed

    • Added environment variables in docker-compose.yaml by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/65
    • Added Queries and Mutations for Favourites by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/67
    • Added mutation for updating mediaItem description by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/69
    • Added image description and fixed image preview for People by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/75
    • Added Queriea and Mutations for Albums by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/72
    • Added starring/unstarring photo feature and added /favourites page by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/78
    • Refactored GraphQL API and broke down Schema Files by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/79
    • Update to imports and some minor changes done by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/82
    • #70 : Queries and Mutation for Delete by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/81
    • #77: Added On This Day Query by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/80
    • Added move to trash and restore feature by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/86
    • #83: Added albumID as a arg while uploading by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/87
    • Added albums and item count to /albums by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/89
    • Handle complex operations which comes with Deleting MediaItem by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/91
    • #90: Added mutation for adding or removing mediaItems from the album by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/92
    • #96: Return album ID in createAlbum mutation by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/97
    • #85: Added Create Album Feature by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/95
    • Added remove photos from album feature by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/98
    • Added missing people entity association for displayMediaItem by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/99
    • fixed add/remove album issue by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/100

    Full Changelog: https://github.com/prabhuomkar/iris/compare/v2021.11.01...v2021.12.31

    Source code(tar.gz)
    Source code(zip)
  • v2021.11.01(Nov 4, 2021)

    What's Changed

    • done issue #4 and issue #8 by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/9
    • Added seaweedfs client with file upload and basic info stored by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/11
    • Entity Queries, Docs and Architecture Diagram by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/17
    • Added pub/sub messaging between API and ML service by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/20
    • issue#10 explore section and upload button list by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/12
    • Metadata extraction from image files by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/22
    • LatLong calculation from Image metadata by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/23
    • Generate Places Entities using Image Metadata by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/26
    • Queue manual ack of messages by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/30
    • added image upload functionality by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/27
    • basic home section with dates and images issue#15 by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/31
    • Issue#15 by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/33
    • Fixed creationTime calc, worker metadata, UI. Fixes sorting by creationTime by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/35
    • Backend fixes for queries and showing entity info per mediaItem by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/36
    • Finished with Entity Things by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/38
    • some ui fixes done by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/39
    • Issue 41 by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/43
    • Search Queries and Worker Fixes by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/44
    • Finishing touches for ML Handlers by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/49
    • Entity people component and some refactoring by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/50
    • Added Update Entity Query and People Entity Component Finishes by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/51
    • Added explore people, edit people and some ui changes done by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/52
    • Some optimization work for worker and ml logging linter fix by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/53
    • Added photos sorting logic by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/54
    • Did some concurrency level optimizations in worker by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/55
    • minor changes done by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/56
    • Minor changes done by @akshaypithadiya in https://github.com/prabhuomkar/iris/pull/57
    • Release Fixes by @prabhuomkar in https://github.com/prabhuomkar/iris/pull/58

    New Contributors

    • @akshaypithadiya made their first contribution in https://github.com/prabhuomkar/iris/pull/9
    • @prabhuomkar made their first contribution in https://github.com/prabhuomkar/iris/pull/11

    Full Changelog: https://github.com/prabhuomkar/iris/commits/v2021.11.01

    Source code(tar.gz)
    Source code(zip)
PyTorch implementation for Convolutional Networks with Adaptive Inference Graphs

Convolutional Networks with Adaptive Inference Graphs (ConvNet-AIG) This repository contains a PyTorch implementation of the paper Convolutional Netwo

Andreas Veit 176 Dec 07, 2022
Code for Efficient Visual Pretraining with Contrastive Detection

Code for DetCon This repository contains code for the ICCV 2021 paper "Efficient Visual Pretraining with Contrastive Detection" by Olivier J. Hénaff,

DeepMind 56 Nov 13, 2022
PyTorch implementation of the NIPS-17 paper "Poincaré Embeddings for Learning Hierarchical Representations"

Poincaré Embeddings for Learning Hierarchical Representations PyTorch implementation of Poincaré Embeddings for Learning Hierarchical Representations

Facebook Research 1.6k Dec 25, 2022
General purpose Slater-Koster tight-binding code for electronic structure calculations

tight-binder Introduction General purpose tight-binding code for electronic structure calculations based on the Slater-Koster approximation. The code

9 Dec 15, 2022
Joint Learning of 3D Shape Retrieval and Deformation, CVPR 2021

Joint Learning of 3D Shape Retrieval and Deformation Joint Learning of 3D Shape Retrieval and Deformation Mikaela Angelina Uy, Vladimir G. Kim, Minhyu

Mikaela Uy 38 Oct 18, 2022
Genpass - A Passwors Generator App With Python3

Genpass Welcom again into another python3 App this is simply an Passwors Generat

Mal4D 1 Jan 09, 2022
Python3 Implementation of (Subspace Constrained) Mean Shift Algorithm in Euclidean and Directional Product Spaces

(Subspace Constrained) Mean Shift Algorithms in Euclidean and/or Directional Product Spaces This repository contains Python3 code for the mean shift a

Yikun Zhang 0 Oct 19, 2021
[CVPR 2021] Monocular depth estimation using wavelets for efficiency

Single Image Depth Prediction with Wavelet Decomposition Michaël Ramamonjisoa, Michael Firman, Jamie Watson, Vincent Lepetit and Daniyar Turmukhambeto

Niantic Labs 205 Jan 02, 2023
PyTorch implementation of CVPR'18 - Perturbative Neural Networks

This is an attempt to reproduce results in Perturbative Neural Networks paper. See original repo for details.

Michael Klachko 57 May 14, 2021
The official implementation of paper Siamese Transformer Pyramid Networks for Real-Time UAV Tracking, accepted by WACV22

SiamTPN Introduction This is the official implementation of the SiamTPN (WACV2022). The tracker intergrates pyramid feature network and transformer in

Robotics and Intelligent Systems Control @ NYUAD 29 Jan 08, 2023
To build a regression model to predict the concrete compressive strength based on the different features in the training data.

Cement-Strength-Prediction Problem Statement To build a regression model to predict the concrete compressive strength based on the different features

Ashish Kumar 4 Jun 11, 2022
Tutorial page of the Climate Hack, the greatest hackathon ever

Tutorial page of the Climate Hack, the greatest hackathon ever

UCL Artificial Intelligence Society 12 Jul 02, 2022
PyTorch3D is FAIR's library of reusable components for deep learning with 3D data

Introduction PyTorch3D provides efficient, reusable components for 3D Computer Vision research with PyTorch. Key features include: Data structure for

Facebook Research 6.8k Jan 01, 2023
HeartRate detector with ArduinoandPython - Use Arduino and Python create a heartrate detector.

Syllabus of Contents Syllabus of Contents Introduction Of Project Features Develop With Python code introduction Installation License Developer Contac

1 Jan 05, 2022
Simple tool to combine(merge) onnx models. Simple Network Combine Tool for ONNX.

snc4onnx Simple tool to combine(merge) onnx models. Simple Network Combine Tool for ONNX. https://github.com/PINTO0309/simple-onnx-processing-tools 1.

Katsuya Hyodo 8 Oct 13, 2022
LIAO Shuiying 6 Dec 01, 2022
Panoptic SegFormer: Delving Deeper into Panoptic Segmentation with Transformers

Panoptic SegFormer: Delving Deeper into Panoptic Segmentation with Transformers Results results on COCO val Backbone Method Lr Schd PQ Config Download

155 Dec 20, 2022
Python版OpenCVのTracking APIのサンプルです。DaSiamRPNアルゴリズムまで対応しています。

OpenCV-Object-Tracker-Sample Python版OpenCVのTracking APIのサンプルです。   Requirement opencv-contrib-python 4.5.3.56 or later Algorithm 2021/07/16時点でOpenCVには以

KazuhitoTakahashi 36 Jan 01, 2023
Using machine learning to predict and analyze high and low reader engagement for New York Times articles posted to Facebook.

How The New York Times can increase Engagement on Facebook Using machine learning to understand characteristics of news content that garners "high" Fa

Jessica Miles 0 Sep 16, 2021
Gender Classification Machine Learning Model using Sk-learn in Python with 97%+ accuracy and deployment

Gender-classification This is a ML model to classify Male and Females using some physical characterstics Data. Python Libraries like Pandas,Numpy and

Aryan raj 11 Oct 16, 2022