We can organize an interview with Aldin or any of our 25,000 available candidates within 48 hours. How would you like to proceed?
Schedule Interview NowMy name is Adesoji A. and I have over 3 years of experience in the tech industry. I specialize in the following technologies: Deep Learning, Data Analytics & Visualization Software, Linux System Administration, Ruby on Rails, Amazon Web Services, etc.. I hold a degree in Master's degree, Bachelor of Engineering (BEng). Some of the notable projects I’ve worked on include: EnextAPI, Tenenx Data Processing and Visualization Platform, Youtube Summary, Car Image Classification, Cloth Color Detection, etc.. I am based in Kubwa Suburban District, Nigeria. I've successfully completed 6 projects while developing at Softaims.
I am a business-driven professional; my technical decisions are consistently guided by the principle of maximizing business value and achieving measurable ROI for the client. I view technical expertise as a tool for creating competitive advantages and solving commercial problems, not just as a technical exercise.
I actively participate in defining key performance indicators (KPIs) and ensuring that the features I build directly contribute to improving those metrics. My commitment to Softaims is to deliver solutions that are not only technically excellent but also strategically impactful.
I maintain a strong focus on the end-goal: delivering a product that solves a genuine market need. I am committed to a development cycle that is fast, focused, and aligned with the ultimate success of the client's business.
Main technologies
3 years
1 Year
1 Year
2 Years
Potentially possible
Flutterwave
Created an APi for Network telecommunication networks in Nigeria
build an advanced platform that processes varied data types, such as documents and images, to extract semantic details and transform them into dynamic visual representations. This versatile system leverages the power of large language models (LLMs) to enable comprehensive analytics and interactive visualizations, including chatbot functionality for direct user engagement.
The service summarize any YouTube video by url. It works for long video and for English languages.
Fashion plays a significant role in modern human culture. More and more online fashion portals are popping up every day. But the main problem with them is that the clothes are manually labeled previously and are not properly attributed and arranged in the search engine which leads to mismatched search results for the customers. Manual labeling consumes a lot of time and labor. With the help of deep neural networks like CNN we can solve this problem since they are highly efficient in classifying images. I built a model for the detection and classification of clothes for eCommerce images. Using Yolo v4 and Residual Networks, these are the architectures used in this work for detection and classification respectively. I used a part of DeepFashion dataset, which contains box annotations for locations of clothes, and manually collected data for training and testing the clothes detection network and classification network. The model detect clothes using bounding boxes and further classifies the color of the detected clothing as seen in the attached picture.
Master's degree in Engineering System Management
2019-01-01-2021-01-01
Bachelor of Engineering (BEng) in Electronic engineering
2006-01-01-2012-01-01