We are looking for a
"AI Research Engineer"
specified in Recommendation Project for our global business partner runs in
Telecommunication Industry
.
Description
Key areas of responsibility will be:
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Make research on retrieval, pre-rank, and rank stages of Recommenders Systems,
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Design and build scalable ML services,
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Deploy ML services to production at scale considering resource constraints,
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Monitoring models to evaluate and improve services online,
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Play an active role in suggesting, collecting, and preprocessing the data necessary to train the ML models and evaluate performance,
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Consult with the other teams to determine the requirements and formalize the possible ML research directions.
Requirements
Essential technical requirements:
A. Basic computer science and programming languages
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Understanding of data structures, data modeling, and software architecture,
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Having expertise in object-oriented programming,
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Ability to write reusable and easily-maintainable code using beautiful and proper design patterns,
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Ability to write robust and optimized code in Python.
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Strong programming skills (Python, SQL, etc.) and experience with deep learning frameworks (e.g. TensorFlow, PyTorch, Keras)
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Familiar with development processes (CI/CD, DevOps, MLOps)
B. Machine Learning
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Solid understanding of Neural Networks in theory such as convex optimization, hessian approximations, conjugate gradient, and Gauss-Newton steps,
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Familiarity with modern machine learning frameworks.
C. Recommender System, related NLP and Computer Vision fields
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Proven experience as a Machine Learning/AI Engineer or similar role building largescale recommender systems to solve real live-stream problems,
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Practical experience in deploying and optimizing ML models in production,
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Experience in one of the fields: Deep Learning-based recommender models, NLP tasks (vector semantics such as TF-IDF or neural word embeds, entity labeling, text classification, etc.), Computer Vision tasks (such as Optical Character Recognition, Object Classification, Object detection, etc.)
D. Working efficiency
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Fully-easy working capability in version control systems such as Gitlab or Github,
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Experience in Docker for building a simulation of the production environment,
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Solid understanding of JSON file, and schema.
E. Academic
Being published in Articles and Proceedings in reputable journals related to recommenders systems such as ACL and SIGIR is a significant plus.
Essential non-technical requirements:
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Fluent in English, both written and spoken,
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Ability to work in a multi-disciplinary and multi-cultural team.