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We believe in walking the walk of our strong core values which enable us to successfully advance together. Diversity and Inclusion is a vital part of our values and beliefs, and we’re proud to foster an environment where every Extreme employee can thrive.
Come become part of something big with us! We are a global leader, with hubs in North America, South America, Asia Pacific, Europe, and the Middle East.
Introduction : Extreme Networks is on the cutting edge of technology, pushing boundaries and creating revolutionary networking experiences.
We are seeking a versatile and innovative Machine Learning Scientist to join our Core Modelling Team. The successful candidate will work on ground-breaking projects aiming to optimize network planning, design, security, operations, and support through real-time event detection, future occurrence prediction, scenario planning, and configuration optimization.
Responsibilities
- Developing innovative machine learning models for network optimization, prediction, and troubleshooting.
- Applying expertise in Graph ML, Classic ML (regression / classification), Deep Learning, Causality, and Optimization techniques.
- Develop and utilize mathematical models to solve complex network problems.
- Conducting research to develop models and validate their feasibility, performance, and relevance.
- Ensuring interpretability and usability of the models for network optimization and troubleshooting.
- Transform validated models into modular features, ensuring they meet the set engineering criteria
- Participating in the iterative process of model development, including framing problems, developing hypotheses, designing and conducting experiments, and synthesizing findings.
- Develop and execute automated tests to ensure the quality, functionality, and compatibility of new features.
- Work closely with the Engineering Team to address any issues or concerns during the integration process.
- Communicating the progress, challenges, and needs during the model development process to the Engineering Program Manager.
Qualifications :
- 5+ years of proven experience as a Data Scientist, Machine Learning Developer or similar role. At least 2 years of experience building ML Systems.
- PhD or Master's degree in Computer Science, Data Science, Artificial Intelligence, or a related field.
- Solid understanding of machine learning principles, algorithms, and applications.
- Expertise in Graph ML, Classic ML (regression / classification), Deep Learning, Causality, and Optimization techniques.
- Proficiency in Python and experience with libraries such as TensorFlow, PyTorch, Scikit-learn, and Dask.
- Experience with distributed machine learning and proficiency in using Dask for parallel computing.
- Excellent understanding of data structures, data modeling.
- Excellent problem-solving skills, attention to detail, and ability to work in a team-oriented environment.
- Strong communication skills to effectively collaborate with team members and report to management.
Desired Qualities
- Experience with networks is a significant asset.
- Experience with graph databases, specifically Neo4j, for network topology and service modelling is a significant asset.
- Demonstrates a 'can-do' attitude, always seeking innovative solutions, and pushing boundaries.
- Maintains a startup mindset, thriving in a dynamic, fast-paced environment, and contributing positively to team energy.
- Understands that the goal is not to use the most complex algorithm but to bring real value to our users.
We are looking for a Machine Learning Scientist who is passionate about pushing the boundaries of what is possible. If you're driven by curiosity, love problem-solving, and want to make a significant impact on a revolutionary project, we'd love to hear from you.