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| Alexander Todorov | |
| Email: alex.st.todorov@gmail.com | |
| LinkIn https://www.linkedin.com/in/alexander-t-50864a139/ | |
| Summary: | |
| Software and ML Engineer & Data Scientist with over 5 years in software development, building AI/ML solutions, LLM tools, recommendation systems, and data-driven web applications using Python, Flask, Angular, Spark, and MongoDB. Skilled in microservices, Docker, Kubernetes, CI/CD, NLP, and Azure OpenAI to deliver scalable and automated enterprise solutions. Passionate about creating intelligent, user-centric software that drives innovation and operational efficiency. | |
| Experience: | |
| 2020 - Present - Intel Corporation | |
| Data scientist and Ml Engineer | |
| Led the development of an enterprise-level AI recommendation platform that analyzes employee skills and activity to recommend internal training courses. | |
| Designed and deployed scalable ML pipelines for recommendation systems, predictive maintenance, and NLP topic modeling, using Python, Spark ALS, Logistic Regression, BERTopic and Azure OpenAI GPT-4. | |
| Built cloud-native microservices for LLM-driven using Kafka, Kubernetes, Docker, and MongoDB | |
| Engineered automated CI/CD workflows with GitHub Actions | |
| Automated analytics flows and BI data pipelines using containerized Python jobs and Kubernetes CronJobs, supporting real-time and scheduled reporting. | |
| Applied advanced NLP and LLM techniques to classify topics, extract meaningful patterns from ticket history, and automate text understanding at scale. | |
| 2012 - 2020 - Intel Corporation | |
| Process Eng - Production process analyses | |
| Python scripts, SQL , Automated reports development, Angular | |
| Intel Ireland 2013 - 2017 - Supporting the startup of new technology. Process and equipment | |
| Education: | |
| 2025 - Today - Technical University β Sofia,Bulgaria. | |
| PhD Program - Robotic and automation systems with AI | |
| 2020β2024 - Technical University β Sofia,Bulgaria. | |
| Masterβs degree in Robotic Engineering. | |
| β Final project: Robot ARM design with Python ROS framework | |
| 2018-2019 - John Bryce Collage | |
| Full Stack - Angular, Java, SQL | |
| 2009β2012 - Singalovsky College Tel-Aviv. | |
| Electronic Practical Engineer. | |
| Skills: | |
| AI: PySpark, Spark ALS, Logistic Regression, BERTopic, Azure OpenAI GPT-4, NLP, LLMs, Recommender Systems, Topic Modeling | |
| DevOps: Docker, Kubernetes, Cloud Foundry, GitHub Actions, Kafka, CI/CD, Microservices | |
| Programming: Python, Flask, FastAPI, Angular, MongoDB, SQL | |
| DB : Mongo DB, SQL , PostGres | |
| Languages | |
| Hebrew β Fluent | |
| English β Advanced; used daily in an international corporate environment | |
| Bulgarian β Native | |
| Russian β Native | |
| Hobbies: | |
| Swimming , drones, snowboarding | |
| Projects: | |
| AI Recommendation System | |
| Led the development of an enterprise-level AI recommendation platform that analyzes employee skills and activity to recommend internal training courses. | |
| Technologies: Python, Angular 18, MongoDB, Spark ALS, Cloud Foundry, Azure SSO, NLP, Docker | |
| Designed and managed the end-to-end system architecture across backend and frontend components. | |
| Implemented a recommendation engine using ALS on Apache Spark. | |
| Integrated Azure SSO for secure user identification and behavior tracking. | |
| Automated personalized email notifications based on work schedules and recommendation results. | |
| Deployed the solution on an on-premise Cloud Foundry environment. | |
| ML Preventive Maintenance System | |
| Developed a machine-learning model to predict maintenance needs for manufacturing equipment using historical operational data. | |
| Technologies: Python, Logistic Regression, Pandas, Scikit-learn | |
| Built a predictive analytics pipeline to estimate the next maintenance cycle. | |
| Enabled early warning for failures and improved production reliability. | |
| BI Automated Reporting & Workflow Orchestration | |
| Built automated BI data flows and reporting pipelines based on production and operational data. | |
| Technologies: Python, Docker, Kubernetes (Rancher), CronJobs, Angular, Power BI | |
| Created containerized Python services to compute metrics and generate reports. | |
| Deployed workloads as Kubernetes Deployments and CronJobs on Rancher. | |
| Provided dashboards in Angular or Power BI for management visibility. | |
| NLP / ML Ticket Topic Modeling | |
| Implemented NLP-based topic modeling to detect recurring issues in ticket history. | |
| Technologies: BERTopic, Python, NLP, Scikit-learn | |
| Automated detection of common problem categories to support root-cause analysis. | |
| Delivered insights that improved support efficiency and reduced repeated issues. | |
| LLM Microservices for PDF Data Extraction | |
| Designed a distributed LLM system to extract structured data from large PDF documents. | |
| Technologies: Python, PyPDF, Azure OpenAI GPT-4, Kafka, Kubernetes, Microservices, MongoDB | |
| Built a microservices architecture for document scanning, chunking, and LLM interaction. | |
| Used Azure OpenAI GPT-4 for high-accuracy extraction and summarization. | |
| Implemented asynchronous communication through Kafka. | |
| Presented at the internal AI Summit, gaining organizational recognition. | |
| CI/CD for Web Applications (GitHub Actions) | |
| Developed automated CI/CD pipelines for Angular-based applications. | |
| Technologies: GitHub Actions, Angular, Docker, Kubernetes | |
| Automated build steps: Angular build β Docker build β Push β Kubernetes deployment. | |
| Enabled rapid and reliable releases for production systems. | |
| Full-Stack Podcast Web Application | |
| Built a full end-to-end platform for uploading, managing, and playing audio content. | |
| Technologies: Angular, Python Flask, MongoDB, Docker | |
| Implemented user interface for playback and an admin panel for file management. | |
| Added support for metadata, thumbnails, and user comments. | |
| Designed a scalable backend with REST APIs and MongoDB. | |
| Issues Ticketing System (ServiceNow + Custom Frontend) | |
| Developed a complete ticket management system integrated with ServiceNow. | |
| Technologies: JavaScript, Angular, ServiceNow, Kubernetes, Azure SSO | |
| Created dynamic ticket forms, routing logic, and an Angular-based landing page. | |
| Integrated Azure SSO for authentication and user tracking. | |
| Implemented automated reporting on ticket types, frequency, and recurring issues. | |