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New Westminster, British Columbia, Canada
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Recent projects

Predictive Maintenance Dashboard Development
AIModels Tech Inc. seeks to develop a web-based dashboard for predictive maintenance using ReactJS. The goal is to create an interactive platform that allows users to visualize and analyze system performance data. The dashboard will connect to a backend API server to fetch real-time data, displaying it through graphs and metrics. Users should be able to click on each system to view detailed information and trends over time, aiding in predictive maintenance decisions. Additionally, the project includes implementing user management features to ensure secure access and personalized user experiences. This project aims to provide a practical application of web development skills, focusing on integrating front-end and back-end technologies to solve real-world problems.

Resume Filter API Server
This project aims to develop an advanced Resume Filtering API server that allows users to upload resumes, stores them in a vector database (ChromaDB), and performs semantic searches based on job descriptions or required skills. The system will integrate OpenAI for generating embeddings, summaries, and explanations for the resume matches. It will be built using Flask for the API server and containerized using Docker and Docker Compose. Sphinx will handle documentation, and Pytest will be used for automated testing.

Automated MLOps and DevOps Pipeline Integration
AIModels Tech Inc. aims to streamline its machine learning operations by integrating ML Ops with DevOps using GitHub Actions and cloud services. The goal of this project is to create an automated pipeline that builds, trains, tests, and deploys machine learning models efficiently. This integration will enhance the company's ability to quickly iterate on models and deploy them with minimal manual intervention. The project will focus on leveraging GitHub Actions to automate workflows and cloud services to manage resources and deployments. By completing this project, learners will gain hands-on experience in automating ML pipelines, a critical skill in the tech industry. The project will also provide an opportunity to apply classroom knowledge of machine learning and DevOps in a practical setting.

AI-Driven Predictive Maintenance for Data Centers
The Predictive Maintenance for Data Centers project aims to create an AI-driven solution to address the operational challenges of modern data centers. By utilizing advanced deep learning techniques, specifically Long Short-Term Memory (LSTM) networks and Convolutional Neural Networks (CNNs), the project seeks to enhance real-time monitoring and predictive analytics capabilities. The goal is to enable proactive maintenance of critical data center infrastructure, thereby reducing downtime and improving efficiency. This project provides learners with an opportunity to apply their knowledge of AI and machine learning in a practical setting, focusing on the development of predictive models that can analyze vast amounts of data to forecast potential failures. The project emphasizes the importance of integrating AI solutions into existing systems to optimize performance and reliability.