{"payload":{"pageCount":1,"repositories":[{"type":"Public archive","name":"flowmaker","owner":"speks7","isFork":false,"description":"flowmaker: JS to SVG flowchart generation extension for Vscode in realtime written in typescript and also download the SVG through local node server. Extension:","allTopics":["visualization","nodejs","javascript","plugin","express","socket-io","developer-tools","vscode-extension","js2flowchart","svg","typescript","vscode","flowchart"],"primaryLanguage":{"name":"TypeScript","color":"#3178c6"},"pullRequestCount":0,"issueCount":2,"starsCount":120,"forksCount":33,"license":"MIT License","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2018-11-30T09:43:25.314Z"}},{"type":"Public","name":"nazar-workflow","owner":"speks7","isFork":false,"description":"The way nazar proceeded in it's training and prediction using InceptionV3 for classification and coco_ssd_v2 for object detection","allTopics":[],"primaryLanguage":{"name":"Jupyter Notebook","color":"#DA5B0B"},"pullRequestCount":0,"issueCount":0,"starsCount":3,"forksCount":0,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2018-10-15T07:56:20.040Z"}},{"type":"Public","name":"nazar","owner":"speks7","isFork":false,"description":"Electronic component detection, identification and recognition system in realtime from camera image using react-native and tensorflow for classification along with Clarifai API with option to search the component details from web with description shown from Octopart fetched from server","allTopics":["react","android","python","heroku","flask","ios","image","mobile","base64","react-native","camera","tensorflow","realtime","inception","clarifai-api","tensorflow-classification","octopart","octopart-api"],"primaryLanguage":{"name":"JavaScript","color":"#f1e05a"},"pullRequestCount":0,"issueCount":0,"starsCount":33,"forksCount":9,"license":"Apache License 2.0","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2018-09-28T15:05:26.318Z"}},{"type":"Public","name":"nazar-server","owner":"speks7","isFork":false,"description":"Heroku deployed Flask + Bottle server used by nazar app to classify images after converting base64 text to image & going through the tensorflow InceptionV3 trained frozen graph to send predicted name along with octopart description and details","allTopics":["python","training","flask","aws","react-native","curl","tensorflow","classification","inception","bottle","mobilenet","octopart","octopart-api","sagemaker"],"primaryLanguage":{"name":"Python","color":"#3572A5"},"pullRequestCount":0,"issueCount":0,"starsCount":6,"forksCount":2,"license":"Apache License 2.0","participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2018-09-25T04:55:33.950Z"}},{"type":"Public archive","name":"spacegadi","owner":"speks7","isFork":false,"description":"Spacegadi- A C programming project based on the Mobile Game Two Cars where the user needs to avoid obstacles reaching both the cars gradually until one of the car hits the object.","allTopics":["c","car","keyboard","object","graphics","project","assignment","crash","dimension","c-language","2-cars","borland-graphics-interface","obstacle","c-programming","borland","borland-cpp","turbo-c-plus-plus","kbhit"],"primaryLanguage":{"name":"C","color":"#555555"},"pullRequestCount":0,"issueCount":0,"starsCount":3,"forksCount":3,"license":null,"participation":null,"lastUpdated":{"hasBeenPushedTo":true,"timestamp":"2018-02-07T15:59:16.556Z"}}],"repositoryCount":5,"userInfo":null,"searchable":true,"definitions":[],"typeFilters":[{"id":"all","text":"All"},{"id":"public","text":"Public"},{"id":"source","text":"Sources"},{"id":"fork","text":"Forks"},{"id":"archived","text":"Archived"},{"id":"template","text":"Templates"}],"compactMode":false},"title":"speks7 repositories"}