Lead Senior Python Software Engineer | ML/AI Engineer | Tech Lead | Backend Architect
Kyiv, Ukraine
📧 Email: alexandrvirtual@gmail.com | 📞 Phone: +38 097 563-92-54
🔗 GitHub | LinkedIn
Experienced backend engineer and ML/AI specialist with 10+ years in software development, specializing in Python-based backend systems, microservices, machine learning platforms, and data science solutions.
Proven expertise in building scalable ML infrastructure, NLP systems, and computer vision applications with $200K+ annual cost savings.
Strong knowledge of Clojure, MLOps, and active contributor to open source projects.
Proven leadership and architecture design skills, seeking a CTO, ML Engineering Lead, or Tech Lead role to leverage technical and managerial expertise.
- Languages: Python (expert), SQL (advanced), Go (mid), Clojure (advanced), Java, Scala, C (basic), Bash
- Frameworks: Django, FastAPI, Flask, Aiohttp, Asyncio
- Databases: PostgreSQL, MSSQL, MongoDB, CouchDB, Redis, Elasticsearch
- Messaging: RabbitMQ, Kafka, Celery
- ML Frameworks: TensorFlow, PyTorch, Keras, Scikit-learn, YOLO v8
- Data Science: Pandas, NumPy, Polars, Data Analysis, Mathematics, Statistics
- NLP & LLM: LangChain, Large Language Models, NLP, Transformers
- Computer Vision: OpenCV, Image Processing, Object Detection, CNN
- Time Series: Forecasting, ARIMA, LSTM, Demand Prediction
- MLOps: Kubeflow, MLflow, Apache Airflow, Model Deployment, CI/CD for ML
- Cloud: AWS (SageMaker, EC2, S3, Lambda, EKS, CloudWatch)
- Containerization: Docker, Kubernetes, Infrastructure as Code
- Monitoring: Model drift detection, A/B Testing, Performance monitoring
- Data Processing: ETL pipelines, Big Data, Statistical modeling
- Visualization: PowerBI, Matplotlib, Seaborn, BI dashboards
- Tools: Git, Docker, Postman, MS Office, Jupyter Notebooks
- Architecture: Microservices, OOP, Functional Programming, Distributed Systems
- DevOps: Docker, Linux, Git, Docker Compose, CI/CD
- Testing: pytest, unittest, TDD, Automated Testing
- Leadership: Tech management, Team development, Cross-functional collaboration
- Built ML platform for smart retail (CV, forecasting, staff optimization)
- YOLOv8 food detection (94% accuracy)
- Time series models → 25% efficiency gains, $200K+ savings
- Task automation & real-time monitoring
- Tech: Python, TensorFlow, YOLOv8, AWS SageMaker, Kubeflow, Airflow, Docker, K8s
- YOLOv8-based CV app for dining automation
- Real-time processing (<100ms latency)
- Analytics dashboard for dietary insights
- Cut manual work by 60%, improved planning by 35%
- Tech: YOLOv8, OpenCV, Python, TensorFlow, AWS, Docker, MLflow
- Built LangChain-based doc processing (96% accuracy)
- Real-time sentiment analysis pipelines
- PowerBI dashboards for exec BI
- 70% manual review time reduction
- Tech: LangChain, Transformers, NLP, Python, PowerBI, SQL, Pandas
- Designed CI/CD ML platform with zero-downtime updates
- Monitoring: MLflow + drift detection
- K8s on AWS, full observability & auto-scaling
- Tech: Kubeflow, MLflow, Airflow, K8s, Docker, AWS, Terraform
- Processed 10TB+ using Pandas, NumPy, Polars
- 20+ models with 92% avg. accuracy
- Custom forecasting algorithms
- Automated reports → 60% faster analysis
- Tech: Python, Pandas, Scikit-learn, Keras, Polars, PowerBI
📍 Sep 2020 – Present
- Backend in Python, Go, Clojure with microservices
- DB & architecture design (MSSQL, Redis, PostgreSQL)
- ML integration: TensorFlow, Keras
- Stack: FastAPI, RabbitMQ, Docker, Asyncio, Git
- Team lead: 8+ engineers, CI/CD, code standards
📍 Mar 2020 – Sep 2020
- Python 2.7/3.8, Scala backend for e-commerce
- PostgreSQL, CouchDB, Django, Kafka, Redis
- Recommender systems with collaborative filtering
📍 Dec 2018 – Mar 2020
- Backend: Python, Aiohttp, RabbitMQ, Redis, Elasticsearch
- App architecture & DB design
- ML for search optimization
📍 Aug 2017 – Dec 2018
- Backend in Django, frontend in AngularJS
- Microservices in Golang
- Analytics for learning platform
📍 Mar 2016 – Aug 2017
- REST API dev with Django, Celery, unit tests
- Code quality & test coverage improvements
📍 Aug 2010 – Dec 2016
- Zabbix monitoring system admin
- Python/Bash scripting for automation
- Server performance optimization
- Migrated to microservices → +30% performance
- High-load DB design → -25% query time
- TDD + CI/CD → -40% production bugs
- Introduced Go → 2x perf. in key services
- ML platform → $200K+ savings
- 94% accuracy in CV for food recognition
- NLP system processed 100K+ docs at 96%
- 20+ models with 92% accuracy
- 60–70% manual task reduction via ML
- 10TB+ big data processing
- Real-time analytics <100ms latency
- BI dashboards → informed decision-making
- +25–40% business efficiency gains
- Zero-downtime deployments with observability
- Scalable ML infra on AWS
- Full MLOps pipelines: deploy, monitor, rollback
- Open source contributor & ML best practices advocate
National University of Water Management and Environmental Engineering, Rivne
Bachelor’s in Hydraulic Engineering and Water Technology
📅 2005 – 2009
- Machine Learning Specialization – Advanced ML, Deep Learning
- AWS Solutions Architecture – ML on Cloud
- Data Science & Analytics – Big Data, Statistics
- MLOps & Model Deployment – Production ML Systems
- Ukrainian – Native
- Russian – Native
- English – A2 (learning, read tech docs confidently)
Machine Learning: TensorFlow, PyTorch, Keras, Scikit-learn, YOLOv8
Data Science: Pandas, NumPy, Polars, Statistics, PowerBI, SQL
NLP & LLM: LangChain, Transformers, LLMs, Sentiment Analysis
MLOps: Kubeflow, MLflow, Airflow, Docker, Kubernetes, Git
Cloud & Infra: AWS (SageMaker, EC2, S3, Lambda, EKS), CloudWatch
Backend: Python, Django, FastAPI, PostgreSQL, Redis, RabbitMQ
Tools: Git, Docker, Postman, MS Office, Jupyter, CI/CD, Linux



