[go: up one dir, main page]

Skip to content
View david-adewoyin's full-sized avatar
🏠
Working from home
🏠
Working from home

Block or report david-adewoyin

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Please don't include any personal information such as legal names or email addresses. Maximum 100 characters, markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
david-adewoyin/README.md

Hi I'm David 👋

I am Software Developer. I love to learn and share my knowledge with other people.In my free time i read books, mostly ebooks produced by the folks at Standard Ebooks. I have a lot of stuff i have done ranging from mobile applications built using flutter to web appications and machine learning projects.

Some of the things i have done ❤️

Software Engineering

  • Yatshop:Developed the prototype of an E-commerce website builder with a custom Html theme using Rust.
  • Coupon Cutter:Implemented both the frontend and backend of a mobile coupon system using Flutter and Golang respectively.
  • Country Directory: Developed mobile application using Flutter and GraphQL that allows users to search and get basic information about any country in the world

Data Science & Machine Learning:

  • Car Price Analysis and Prediction: Collected and analysed regional car price data using Python. Machine learning models for predicting car prices were developed and deployed using Flask.
  • Bank Marketing Campaign Analysis and Success Prediction: Developed machine learning models for correctly classifying the success of a bank marketing campaign with indepth data exploration and visualization using Python and Tableau.
  • Machine Learning Basics: Implemented popular machine learning algorithms such as linear regression, softmax regression, K nearest neighbor, decision trees, bagging, random forest, etc from scratch using only plain Python and Numpy.
  • HackerNews Project: Using the official API, I scraped over 1.2 million posts and 70k+ usernames to perform EDA and entity recognition on data.
  • Apple Podcast Project: Scraped and published podcast metadata and user reviews dataset for machine learning projects. 

Deep Learning

  • NeuralStyleTransfer: Developed Tensorflow Implementation of A Neural Algorithm of Artistic Style.
  • U-Net Image Segementation: Developed Tensorflow Implementation of the U-Net image segmentation architecture as described in the original paper.

📫 How to reach me: You can reach me through email or on Linkedlin

Pinned Loading

  1. Bank_Marketing_Success_Prediction Bank_Marketing_Success_Prediction Public

    Data science project to predict the success of a bank telemarketing campaigns

    Jupyter Notebook

  2. machine_learning_basics machine_learning_basics Public

    Plain Python Implementation of popular machine learning algorithms from scratch. Algorithms includes: Linear Regression, Logistic Regression, Softmax, Kmeans, Decision Tree,Bagging, Random Forest, …

    Jupyter Notebook 2

  3. Car_Price_Analysis_and_Prediction Car_Price_Analysis_and_Prediction Public

    Data science project for analyzing and estimating regional car prices using machine learning

    Jupyter Notebook 1 1

  4. HackerNews HackerNews Public

    A Web scrapping and Exploratory data analysis project using the HackerNews API.

    Jupyter Notebook 1

  5. UNet UNet Public

    Tensorflow implementation of U-Net Convolutional Network for image semantic segmentation.

    Jupyter Notebook 1

  6. NeuralStyleTransfer NeuralStyleTransfer Public

    Tensorflow Implementation of A Neural Algorithm of Artistic Style

    Jupyter Notebook