My Projects
Apps
Amharic to Geez Dictionary
This dictionary application translates Amharic word to it's equivalent Geez word. Fast search, search by Amharic word and easy and functional user interface. it works offline without any further file to download and helpful to learn Geez from scratch.
Android
Kotlin
Java
Instagram UI Clone
Instagram user interface clone build with flutter. Repo on github
Android
Flutter
Facebook UI Clone
Face book user interface clone build with flutter. Repo on github
Android
Flutter
See more
Websites
Hahu Jobs
HaHuJobs is an Ethiopian job-matching platform that aggregates and standardizes vacancies from various digital and manual sources into a searchable database. It offers services like career profile building, simplified job applications, and personalized vacancy notifications, accessible via multiple platforms such as mobile, web and desktop. Designed for convenience and accessibility, it supports jobseekers with both online and offline services and features a four-digit occupation taxonomy tailored to the Ethiopian labor market.
Nuxt
Vue
Tailwind
GraphQL
Nodejs
Embedding
ML
Deeplearning
Digital data management system for RAYEE
Digital data management system for Realizing Aspiration Youth in Ethiopia through Employment RAYEE PROJECT. This platform is a cloud-based operation tracking system that collects data on multiple levels on a predefined collection structure.
Nuxt
Tailwind
GraphQl
Hasura
Vue
Go
Express.js
Portfolio Admin CMS
Personal Portfolio admin content management system.
Nuxt.js
Vue.js
Tailwind
GraphQL
Hasura
Vite
Figma
Express.js
See more
Machine Learning Projects
future-market
Predict stock price movements based on live financial historical and real-time market data, news and articles.
visit projectllm-twin
An end-to-end production ready AI replica that writes social media posts or technical articles (like this one) using your own voice.
visit projectsemantic-book-recommender
The Semantic Book Recommender is a machine learning-powered project designed to recommend books based on their semantic relevance. It leverages Natural Language Processing (NLP) techniques to classify, analyze sentiments, and perform vector-based search for books, ensuring tailored recommendations for users.
visit projectamharic-ngram-autocomplete
This project implements an N-Gram language model for the Amharic language using only Python and NumPy, designed to provide auto-completion functionality.
visit projectResume Analyzer AI
Resume Analyzer AI is a tool designed to assess how effectively resumes match job descriptions using Gemini language models and Azure's cloud infrastructure. The system analyzes resumes against job descriptions to highlight areas for improvement and provides actionable suggestions such as relevant skills, action words, and formatting tips.
visit projectml-algorithms from the beginning
This project is dedicated to implementing various machine learning algorithms using Python and NumPy, without relying on high-level libraries. It's designed for learning purposes and aims to provide a deep understanding of how these algorithms work under the hood.
visit projectsimp-lsan
A logistic regression model to classify Amharic (low-resource) language gender-specific adjectives. Given the scarcity of datasets and pre-trained word embedding models tailored for the Amharic language, I took a unique approach to prepare the necessary datasets and create a word embedding algorithm to encode Amharic words into dense numerical vectors.
visit projectCOVID-19 Q&A System
It is automated question answering system developed using NLP and over 250, 000 COVID-19 research papers and articles. It can help researchers and the public to quickly and easily find information about COVID-19.
visit projectDisease Prediction System
It used to forecast diseases based on symptoms provided by patients or users. The system processes user-input symptoms and produces the probability of the disease as output.
visit projectML Learning Project Collections
I developed simple machine learning models with different ml algorithms.
visit project