Education: Bachelor’s or Master’s degree in Computer Science, Data Science, Machine Learning, or a related field.
Academic Contributions: Preference will be given to candidates who have made significant contributions to AI/ML research, including scientific publications.
Containerization and MLOps: Experience with Docker and MLOps frameworks such as MLflow and ClearML to manage and deploy AI/ML models effectively.
Data Flexibility: Flexibility in data usage and optimization to maximize the effectiveness of AI/ML models.
Experience in natural language processing, information extraction, and object detection.
Model Deployment: Experience with model quantization and conversion to ONNX Runtime, TFLite, TensorRT to optimize deployment.
Additional Preferences: Candidates with experience in building and deploying MLOps systems, Data Warehouses, Data Lakes, and those who have contributed to AI/ML research are highly preferred.
Technical Expertise: Experience in image processing, text processing, preprocessing techniques, and neural networks. Extensive knowledge of architectures like CNN, RNN, GraphNN, YOLO, Transformer, BERT, T5, and their variants.
Source Control and CI/CD: Experience with Git/GitLab and setting up CI/CD systems.
Service Development: Experience with messaging and data processing systems like RabbitMQ, Apache Kafka, or SparkML.
Programming Skills: Proficiency in Python. Experience with R or C++ is a plus.
Model Development: Ability to independently develop, innovate, or optimize models ranging from simple to complex.
Project Experience: Preference for candidates who have participated in large- scale projects involving image analysis, Natural language processing, Objects detection, Objects recognitions, OCR and the application of Large Language Models (LLMs), RAG.
Supplementary Skills: Creative thinking, quick learning ability, and the capacity to apply new techniques in AI/ML. Strong communication skills and effectiveness in crossdisciplinary collaboration.
Mathematical Foundation: A strong foundation in mathematics, particularly in areas like probability, statistics, linear algebra, and optimization.
Experience: A minimum of 2 years of experience in Machine Learning or AI.