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Internship: Security for Distributed Machine Learning F/M
0,00 €
Annonce N°91615Publié le 16/02/2022 à 04:19
Description
WHAT WE OFFER Our company culture is focused on helping our employees
enable innovation by building breakthroughs together. How? We focus
every day on building the foundation for tomorrow and creating a
workplace that embraces differences, values flexibility, and is
aligned to our purpose-driven and future-focused work. We offer a
highly collaborative, caring team environment with a strong focus on
learning and development, recognition for your individual
contributions, and a variety of benefit options for you to choose
from. Apply now! ABOUT US (TEAM) Maintaining security is a constantly
shifting task, and we need to respond with continuous learning and
research. The portfolio of SAP Security Research contains those topics
that we believe are most important for SAP’s security future.
SAP’s vision to secure business is built on 3 ideals:
Zero-Vulnerability, to harden the software by eliminating
vulnerabilities, Defensible Application, to enable the software to
identify and prevent attacks, and Zero-Knowledge, to make any theft of
data useless through encryption. Considering these aspects, SAP
Security Research covers the following focal areas: Anonymization for
Big Data, Secure Internet of Things, Software security analysis,
Open-source analysis, Deceptive application, Applied cryptography,
Quantum technology, and Machine Learning as enabler for the next
generation of security. PURPOSE AND OBJECTIVES This internship is
based in the SAP Labs France Research Lab, in Sophia-Antipolis. The
work will be performed in the context of the Research Program
“Security & Trust”, and deals with secure integration of Internet
of Things with SAP HANA applications. The Internet of Things (IoT) is
expected to grow to 50 billion connected devices and $14.4 trillion in
value at stake until 2020. SAP is exploiting this trend and centers
its IoT development on the SAP HANA Cloud Platform IoT Service. Until
now, the backend (on-prem & cloud) deployments were considered as the
single source of truth & unique point of access in regards of
Enterprise Systems (ES). Nevertheless, a paradigm shift has been
recently observed, by the deployment of ES assets towards the Edge
sectors of the landscapes; by distributing data, decentralizing
applications, de-abstracting technology and integrating edge
components seamlessly to the central backend systems. Capitalizing on
recent advances on High Performance Computing along with the rising
amounts of publicly available labeled data, Deep Neural Networks
(DNN), as an implementation of AI, have and will revolutionize
virtually every current application domain as well as enable novel
ones like those on autonomous, predictive, resilient, self-managed,
adaptive, and evolving applications. Distributively deployed AI
capabilities will thrust the above-mentioned transition. As reported
by Deloitte, “... companies are incorporating artificial
intelligence in particular, machine learning into their ’Internet of
Things applications’ and seeing capabilities grow, including
improving operational efficiency and helping avoid unplanned
downtime” [Schatsky et al., 2017]. The deployment of data processing
capabilities throughout Distributed Enterprise Systems rises several
security challenges related to the protection of input & output data
[Parliament and Council, 2016] as well as of software assets. In the
specific context of distributed intelligence, DNN based/enhanced
software will represent key investments in infrastructure, skills and
governance, as well as in the acquisition of data and talents. The
software industry is therefore in the direct need to safeguard these
strategic investments by enforcing the protection of this new form of
Intellectual Property. Furthermore, on the wake of Data Protection
(DP) regulations such as the EU-GDPR [Parliament and Council, 2016],
Independent Software Vendors (ISVs) have the non-transferable
requirement to comply with those. Therefore, ISVs aim to protect both:
data and the Intellectual Property of their AI-based software assets,
deployed on potentially unsecure edge hardware & platforms
[Goodfellow, 2018]. The lack of solutions for IP protection exposes
trained NN owners to reverse engineering on their DL models [Tramèr
et al., 2016]. As outlined in [Augasta and Kathirvalavakumar, 2012]
[Floares, 2008], attackers can steal trained NN models. In such new
coding paradigm, where design patterns are enforced in known and
legacy implementations, the question of IP is at stake. The question
is not so much how to protect the DNN architecture (since most
architectures are grounded on well-known research), but rather how to
protect the trained DNN model. Schatsky, D., Kumar, N., and Bumb, S.
(2017). Intelligent IoT, Bringing the power of AI to the Internet of
Things. Deloitte Insights. Goodfellow, I. (2018). Security and privacy
of machine learning. RSA Conference. Tramèr, F., Zhang, F., Juels,
A., Reiter, M. K., and Ristenpart, T. (2016). Stealing machine
learning models via prediction apis. In USENIX Security Symposium,
pages 601–618. Augasta, M. G. and Kathirvalavakumar, T. (2012).
Reverse engineering the neural networks for rule extraction in
classification problems. Neural processing letters, 35(2):131–150.
Floares, A. G. (2008). A reverse engineering algorithm for neural
networks. Neural Networks, 21(2-3):379–386. Laurent Gomez, Marcus
Wilhelm, José Márquez, Patrick Duverger, Security for Distributed
Deep Neural Networks Towards Data Confidentiality & Intellectual
Property Protection, Secrypt‘19 EXPECTATIONS AND TASKS In this
internship, the student will: * Study state of the art on Security for
Distributed Machine Learning; * Design of novel approach for AI-based
software data protection and IP safeguarding; * Implementation of a
Proof of Concept demonstrating the feasibility of such approach on an
industrial use case. We expect that 60% of time will be dedicated to
development and 40% to research activities. PROFILE/EDUCATION/SKILLS
AND COMPETENCIES * University Level: Last year of MSc in Computer
Science or beyond * C, Python, Solidity * Experience on Smart
Contracts, Blockchain, Machine Learning, Cybersecurity * Fluency in
English (working language) * Abilities in organizing meeting and
contacting people * Good oral and written communication skills *
Capacity to write documents in English, ability to synthesize
PROFESSIONAL EXPERIENCE * None required WE ARE SAP SAP innovations
help more than 400,000 customers worldwide work together more
efficiently and use business insight more effectively. Originally
known for leadership in enterprise resource planning (ERP) software,
SAP has evolved to become a market leader in end-to-end business
application software and related services for database, analytics,
intelligent technologies, and experience management. As a cloud
company with 200 million users and more than 100,000 employees
worldwide, we are purpose-driven and future-focused, with a highly
collaborative team ethic and commitment to personal development.
Whether connecting global industries, people, or platforms, we help
ensure every challenge gets the solution it deserves. At SAP, we build
breakthroughs, together. Our inclusion promise SAP’s culture of
inclusion, focus on health and well-being, and flexible working models
help ensure that everyone – regardless of background – feels
included and can run at their best. At SAP, we believe we are made
stronger by the unique capabilities and qualities that each person
brings to our company, and we invest in our employees to inspire
confidence and help everyone realize their full potential. We
ultimately believe in unleashing all talent and creating a better and
more equitable world. SAP is proud to be an equal opportunity
workplace and is an affirmative action employer. We are committed to
the values of Equal Employment Opportunity and provide accessibility
accommodations to applicants with physical and/or mental disabilities.
If you are interested in applying for employment with SAP and are in
need of accommodation or special assistance to navigate our website or
to complete your application, please send an e-mail with your request
to Recruiting Operations Team: Americas: Careers.NorthAmerica@sap.com
or Careers.LatinAmerica@sap.com, APJ: Careers.APJ@sap.com, EMEA:
Careers@sap.com. EOE AA M/F/Vet/Disability: Qualified applicants will
receive consideration for employment without regard to their age,
race, religion, national origin, ethnicity, age, gender (including
pregnancy, childbirth, et al), sexual orientation, gender identity or
expression, protected veteran status, or disability. Successful
candidates might be required to undergo a background verification with
an external vendor. Requisition ID:313047 | Work Area: Software-Design
and Development | Expected Travel: 0 - 10% | Career Status: Student |
Employment Type: Intern |