Activez les alertes d’offres d’emploi par e-mail !
Générez un CV personnalisé en quelques minutes
Décrochez un entretien et gagnez plus. En savoir plus
An innovative research center is seeking a postdoctoral researcher to explore advanced embedded AI solutions. This role involves collaboration between leading institutions, focusing on efficient data communication and AI implementation on microcontrollers. You will contribute to groundbreaking projects that optimize sensor-to-server communication, working with cutting-edge technologies and methodologies. The position offers a unique opportunity to engage in both theoretical and practical aspects of AI and IoT, all while enjoying a supportive work environment with generous leave policies and professional development opportunities. If you're passionate about pushing the boundaries of technology, this is the perfect role for you.
The Inria Saclay-Île-de-France Research Centre was established in 2008. It has developed as part of the Saclay site in partnership with Paris-Saclay University and with the Institut Polytechnique de Paris .
The centre has 40 project teams , 27 of which operate jointly with Paris-Saclay University and the Institut Polytechnique de Paris; Its activities occupy over 600 people, scientists and research and innovation support staff, including 44 different nationalities.
This position is part of the postdoctoral program offered by Inria's International Relations Department. The recruited postdoc is expected to spend one part of their time at Inria (on the Paris-Saclay University campus), and another part at Freie Universität Berlin (within the Inria Berlin initiative, see https : / / berlin.inria.fr / ), working between two teams that have a strong collaboration in the field of embedded AI (see below).
Topics
The postdoc focuses on novel and advanced embedded AI, combining two complementary aspects. On the one hand, efficient data communication using AI [2,3] with neural network models that can summarize and compress data from one or more sensors to a server. On the other hand, TinyML and TinyMLops [1] which focus on the implementation of AI directly on constrained microcontrollers.
TinyML aspect : The goal is to implement efficient AI model execution (TinyML) on microcontrollers, and manage AI models (MLOps : remote updates, performance monitoring - here secure TinyMLOps) on hardware such as Nordic nRF52, STM32, ESP32, or RISC-V. Networking will use IoT technologies such as BLE, 802.15.4, or LTE-M.
On top of this hardware, prototypes will be developed in conjunction with an open-source operating system written in embedded Rust (Ariel OS [4]) or embedded C (RIOT [5]).
These prototypes will be co-developed and tested with Freie Universität Berlin. This project follows up on RIOT-ML (see below [6]), also linked to concrete industrial use cases for efficient sensor-to-server communication (Digital Twins).
Communication aspect : Neural models will be used to both preprocess and compress data [2]. The objective is to maintain an up-to-date view of distant systems and objects on servers, using data from sensors (e.g., position, vibration, images, etc.). Ideally, all sensor data would be sent in real-time, but energy and network constraints prohibit this. Instead of classic compression (e.g., Lempel-Ziv, ZIP), neural networks can be used to extract and transmit "essential information," reconstructing it server-side [3] (a concept also generalized as "semantic communications" [7]). Some open questions are how to best select, design, train such models, and for which tasks, and further, how to synchronize data between the real world and the server.
The overall goal is to propose novel solutions, to design and implement such an innovative system, that optimizes the entire chain : sensors - communication - cloud. It will combine embedded systems and AI aspects.
1] Capogrosso, L., Cunico, F., Cheng, D.S., Fummi, F. and Cristani, M., 2024. "A machine learning-oriented survey on tiny machine learning". IEEE Access, 12, pp.23406-23426.
2] Bernard, A., Dridi, A., Marot, M., Afifi, H., & Balakrichenan, S. (2021, September). "Embedding ML algorithms onto LPWAN sensors for compressed communications." In 2021 IEEE 32nd Annual International Symposium on Personal, Indoor and Mobile Radio Communications (PIMRC) (pp. 1539-1545). IEEE.
3] Zhang, M., Zhang, H., Fang, Y., & Yuan, D. (2022). Learning-based data transmissions for future 6G enabled industrial IoT : A data compression perspective. IEEE Network, 36(5), 180-187.
5] RIOT : https : / / riot-os.org
6] Huang, Z., Zandberg, K., Schleiser, K., & Baccelli, E. (2025). RIOT-ML : toolkit for over-the-air secure updates and performance evaluation of TinyML models. Annals of Telecommunications, 80(3), 283-297.
7] Chaccour, C., Saad, W., Debbah, M., Han, Z., & Poor, H. V. (2024). Less data, more knowledge : Building next generation semantic communication networks. IEEE Communications Surveys & Tutorials.
Responsibilities
The researcher will be responsible for the design and development of the conceptual parts (AI, model, protocols) and for an implementation with an application to digital twins, including both a backend and a low-power microcontroller component. This task would typically includes dataset generation and using this dataset - along with other existing ones - applied to an use case of a digital twin optimizing wireless communication between a fleet of small IoT devices (microcontrollers) and a backend system (implementing the digital twins).
Coordination / Management
The recruited person will be the main point of contact between Inria, Freie Universität Berlin, the maintainers of Ariel OS and / or RIOT, including software engineers we collaborate with at Campus Cyber, and last but not least, the involved industrial partners deploying the use case.
Main activities :
Complementary activities :
Technical Skills and Level Required :
Languages & Interpersonal skills :
Avantages
Monthly gross salary : 2.788 euros