Mike Johnson Jr MIKE JOHNSON

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Mike Johnson Jr MIKE JOHNSON Mike Johnson Jr [email protected] | 214.735.3166 | 1919 S Akard #425, Dallas,TX WORK EXPERIENCE FounderZealchain–Dallas, TX --January 2020 to present Site: zealchain.com Zealchain consists of 2 products: a cryptocurrency, ZEAL, and an alternate DNS root, ZNET Tasks: Create ZEAL cryptocurrency. Create ZNET domain registrar. Create ZEAL blockchain explorer. Create ZEAL seed node. Create ZNET Chrome extension. Create ZNET DNS Server. Tech used: ZEAL is a Litecoin fork, written in C++. The ZNET domain registrar and ZNET alternate DNS root run on C++ (PowerDNS), Python, and Django. The seed node for the ZEAL cryptocurrency runs on C++ and PHP. The ZNET Chrome extension runs on vanilla JavaScript. And the ZEAL block explorer runs on Node.js (iquidus). The ZNET database is a PostgreSQL database. The block explorer db is MongoDB. All Zealchain servers run on linux. The Zealchain domain registrar is at heroku, and the ZNET DNS server, Zealchain database, ZEAL block explorer, and ZEAL seed node are at digitalocean. Git used for version control. Other technologies used: jQuery FounderDatafix.io–Arlington, TX – November 2018 to present Site: datafix.io Tasks: Created CRUD system for social data preprocessing and sharing, created data and map visualization wizards for uploaded datasets, created messaging system, payment processing system, search engine, and more. Wrote wikipedia crawler to populate database with interesting datasets Tech used: Python/Django, PostgreSQL, Javascript/Jquery, Leaftlet, OpenStreetMap, Highcharts, HTML.CSS,Heroku, Git Software ConsultantDroply (now BountyDrops) – Norway – May 2018 to November 2018 Site: N/A Created Telegram bot to interact with Droply users on Telegram. Created backend for droply, complete with email notifications, platform notifications, CRUD system for airdrops (cryptocurrency giveaways initiated by creators of cryptocurrency), admin interface. Created REST api for bot to interact with (scheduling airdrops, adding users to Airdrop groups on Telegram, removing users from airdrops) Tech used: Python/Django, Celery, PostgreSQL, Javascript/Jquery, HTML/CSS, Telegram Bot API, Telegram Client API, Heroku, DigitalOcean, Git, Websocket Software ConsultantProject Inertia (Inertia Systems) – San Diego, CA – April 2018 to May2018 Site: inertia.systems Tasks: Create admin-facing UI for construction projects. Communicate with Autodesk API to upload, convert (to binary files readable by project viewer), and download construction project files to server. Tech used: Node.js, Vanilla JS Application DeveloperInsite Interactive – Dallas, TX – July 2017 to October 2017 Site: insite.net Tasks: Extended internal web application for UT Southwestern with Python/Django (created new database with new schema and new relations/tables/fields using their existing data, modified existing front ends/admin front ends for other clients using CMSs. Tech used: Python/Django, PostgreSQL, Javascript/Jquery, PHP, HTML/CSS, Bootstrap, Git, Vagrant/Virtualbox, TDD, Drupal, Wagtail, Wordpress, Clients: UT Southwestern, Epiduoforte, Landfirstny, CollegeAuditionCoach Software ConsultantGainsta – Scotland, UK – December 2016 to January 2017 Site: gainsta.com Tasks: Built an automated social media presence amplifier. Features include automated following, liking, and commenting on users’ Instagram posts using a user-friendly user interface and secure login system, complete with real-time notifications and clearly defined UI controls. Tech used: Python/Django, PostgreSQL, Javascript/Jquery, AWS (EC2, S3, RDS), Instagram API, HTML/CSS, Bootstrap, Git, custom built REST API Software ConsultantZProcessApps – Santa Cruz, CA – August 2016 to ~October 2016 Tasks: Debugged and fixed important web (python/django) API functions that client app FoodFeedback needed to function properly Tech used: Python/Django Clients: FoodFeedback for iPhone and Android Software ConsultantCommerce Gardens – Austin, TX – March 2016 to August 2016 Site: N/A Tasks: Rewrote reviews and voting systems(front end and backend) and worked on automatic and scheduled transactional emailing of customers for client Larue Tactical. Tech used: Python/Django, PostgreSQL, Javascript/Jquery, Celery, memcached, Vagrant Clients: Larue Tactical Software ConsultantLeaseful – Dallas, TX – May 2015 to October 2015 Site: N/A Tasks: Built a full-service automated subleasing brokerage system as a web application (similar to Airbnb, geared towards subleasing for college students), complete with automated payments, messaging and notifications, email signaling, map visualizations, an admin interface, social authentication, andmore. Technologiesused:Python/Django,PostgreSQL,Javascript/jQuery,GoogleMapsAPI,Mapbox/Leaflet, HTML, CSS, Bootstrap, Git, Heroku, AWS (S3), custom built RESTAPI Software ConsultantTradeNYCRealty – New York, NY – March 2015 to May 2015 Site: tradenycrealty.com Tasks: Built property listing system, complete with a content management system for managers with CRM capabilities, with the guidance of expert real estate agents in NYC. Tech used: Python, Django, MySQL, Javascript, HTML, CSS, Bootstrap, Git Software ConsultantAmerican Choice Modeling (now Avidelo) – Portland, OR – March 2014 to January 2015 Site: avidelo.com Tasks:Led a team of remote developers to build market research simulators. Simulator features included data visualizations of predicted market outcomes, custom UI controls in each simulator (for users (clients) to modify hypothetical conditions of the market), admin content management system for each simulator, customizable data exports to excelspreadsheets. Tech used: Python, Django, MySQL, Javascript, jQuery, Angular, Highcharts, d3, jquery.datatables, HTML, CSS, Bootstrap, Git, Excel Clients: Nestle, Coke, Walmart, and various colleges EDUCATION Richland Community College – 2019 Mountain View Community College2013- 2014 Arlington High School2009-2012 Linkedin:linkedin.com/in/mikejohnsonjr Github:github.com/mikejohnsonjr Other projects: Deepsteg.com – online steganalysis tool (the only one of its kind) Python+Django, Javascript + jQuery, PostgreSQL, tensorflow, numpy Fluxmath.com – multiplayer, competitive, math game(Python+Django,Javascript + jQuery, PostgreSQL), Websocket (django-channels), Redis .
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