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Annonce N°157422Publié le 28/03/2022 à 18:10
Description
As the tech firm that created the mobile world, and with more than
54,000 patents to our name, we’ve made it our business to make a
mark. When joining our team at Ericsson you are empowered to learn,
lead and perform at your best, shaping the future of technology. This
is a place where you're welcomed as your own perfectly unique self,
and celebrated for the skills, talent, and perspective you bring to
the team. Are you in? Our Exciting Opportunity: Among the popular
cooperative Artificial Intelligence (AI) algorithms used in the cyber
security context, we cite the deep and reinforcement learning
algorithms that are used to detect unknown cyber-attacks, defined as
zero-day attacks. Although these detection techniques generate a high
accuracy detection, they exhibit certain drawbacks related to the
computation overhead, privacy, and security issues. Since, a huge
amount of relevant training data are exchanged between the learning
algorithms, which causes the detection techniques generate a high
computation overhead during the training process and lead the
attackers to steal the training data to bypass the detection
techniques. The cooperative Federated Learning (FL) approach could
overcome these issues and it is a promising technique that addresses
different security use cases, such as monitoring, attack detection,
and orchestration. This is partly due to two reasons: _(i)_ the
centralized and distributed compute logic, where each device locally
executes the FL algorithm and exchange only the hyper-parameters of
the learning models, making it even harder for the attacker to tamper
with the training data, and also interfere with the learning process,
and _(ii)_ distributed and centralized nodes require a low computation
overhead as they process only the training models. Position Summary:
Ericsson is looking for Master or Engineer Thesis Students with a
background in AI and Data Science, who get inspired by technology and
the opportunities of data and AI to solve complex problems (such as
attacks detection and decision-making issues). As a Master or Engineer
Student, you have strong programming skills and a good understanding
of data science and Machine Learning. The background in security will
be a plus. You will be working on research and development projects
with other specialists to drive portfolio innovation and evolution in
the areas of security of 5G networks with a focus on attacks detection
systems for the Radio Access Network (RAN). POSITION QUALIFICATIONS: *
Engineer or MSc level in Computer Science, Machine Learning, Computer
Engineering, Mathematics, or related field (e.g. applied
mathematics/statistics). * Good understanding of Machine Learning
theory and techniques * Good programming skills in Python, (R, Scala)
* Applications/ domain-knowledge in telecommunication is a plus. *
Good communication skills in written and spoken English. * Creativity
and ability to formulate problems and solve them independently. *
Personal values in line with Ericsson core values. WHAT HAPPENS ONCE
YOU APPLY? Click Here to find all you need to know about what our
typical hiring process looks like. Encouraging a diverse and inclusive
organization is core to our values at Ericsson, that's why we nurture
it in everything we do. We truly believe that by collaborating with
people with different experiences we drive innovation, which is
essential for our future growth. We encourage people from all
backgrounds to apply and realize their full potential as part of our
Ericsson team. Ericsson is proud to be an Equal Opportunity and
Affirmative Action employer, learn more.