PhD Position F/M Dynamic Approximate Computing for Energy-Efficient AI Hardware Accelerators
Contract type : Fixed-term contract
Level of qualifications required : Graduate degree or equivalent
Fonction : PhD Position
About the research centre or Inria department
The Inria center at the University of Rennes is one of eight Inria centers and has more than thirty research teams. The Inria center is a major and recognized player in the field of digital sciences. It is at the heart of a rich ecosystem of R&D and innovation, including highly innovative SMEs, large industrial groups, competitiveness clusters, research and higher education institutions, centers of excellence, and technological research institutes.
Context
Disclaimer
A PhD is not a continuation of coursework or a natural next step after a Master’s degree. A PhD is a long-term, research-focused commitment that requires deep curiosity, self-motivation, resilience, and a certain degree of autonomy.
By research, we mean creating new knowledge, not just applying existing theories. Your task is to discover, design, or prove something that no one has done before, work that will become what future students study.
If you are mainly looking for structured classes, predefined assignments, or a repeat of your Master’s experience, you will likely find this path unfulfilling. We welcome applications from candidates who are excited by uncertainty, driven to ask original questions, and eager to shape the frontier of their field.
Context and Background
Assignment
The primary objective of this thesis is to investigate and advance the design of energy-efficient AI accelerators by dynamically applying approximate computing techniques and to advance hardware-software co-design methodologies.
The research will build upon recent advancements in efficient domain-specific architectures for AI. The goal is to develop novel approaches that balance performance, energy efficiency, and accuracy, while addressing the unique challenges of implementing approximate computing in real-world AI systems.
Main activities
This research explores the principles and practical implications of approximate computing as a pathway toward more energy-efficient AI hardware accelerators. It examines how different forms of approximation affect computational efficiency, prediction accuracy, and overall system-level performance. Rather than treating these techniques in isolation, the study considers their combined impact across the computing stack, with particular attention to how accuracy-efficiency trade-offs can be characterized and controlled.
A central theme of the work is the integration of hardware and software perspectives through a co-design approach. By closely aligning algorithmic characteristics with architectural features, the research aims to uncover strategies for embedding approximation mechanisms directly into accelerator designs. Emphasis is placed on adaptive and context-aware approximation techniques that can dynamically balance energy savings and output quality, ensuring that efficiency gains do not compromise application-level requirements.
To ground these ideas in practice, the research involves modeling, simulation, and experimental prototyping using representative AI workloads, including deep learning inference and computer vision applications. Through systematic evaluation and validation, the study aims to assess the feasibility, robustness, and scalability of proposed approaches, contributing insights into the design of next-generation energy-efficient AI systems.
Skills
Required Skills
We seek highly motivated and passionate candidates. Autonomy is a highly appreciated quality.
Candidates should possess the following qualifications:
- Strong HW design skills: VHDL/Verilog, HW synthesis flow (design, simulation, synthesis, and deployment through commercial tools for FPGA or ASIC)
- Strong foundation in computer architecture and Systems design. Knowledge about hardware architectures of Neural Network accelerators is a plus.
- Strong SW Programming/Scripting: C/C++, Python, Linux scripting
- Familiarity or Experience with machine learning fundamentals and Deep Neural Network development frameworks, e.g., PyTorch/TensorFlow
- Experience with approximate computing techniques (e.g., functional approximation, mixed-precision arithmetic, pruning) is a significant plus.
- Excellent analytical and problem-solving abilities, with an interest in optimizing for energy efficiency.
- Strong communication skills to articulate research findings clearly and effectively.
- Languages: proficiency in written English and fluency in spoken English are required.
- Relational skills: the candidate will work in a research team, where regular meetings will be set up. The candidate has to be able to present the progress of their work in a clear and detailed manner.
- Other values appreciated are open-mindedness, strong integration skills, and team spirit.
Candidates must have a Master’s degree (or equivalent) in Computer Engineering or related areas relevant to the PhD topic.
Talented last year Master’s students may start as 6-month interns and continue as Ph.D. researchers after graduation.
Benefits package
- Subsidized meals
- Partial reimbursement of public transport costs
- Leave: 7 weeks of annual leave + 10 extra days off due to RTT (statutory reduction in working hours) + possibility of exceptional leave (sick children, moving home, etc.)
- Possibility of teleworking (after 6 months of employment) and flexible organization of working hours
- Professional equipment available (videoconferencing, loan of computer equipment, etc.)
- Social, cultural and sports events and activities
Remuneration
monthly gross salary 2300 euros
General Information
- Theme/Domain :
Architecture, Languages and Compilation
System & Networks (BAP E) - Town/city : Rennes
- Inria Center : Centre Inria de l'Université de Rennes
- Starting date : 2026-09-01
- Duration of contract : 3 years
- Deadline to apply : 2026-05-31
Warning : you must enter your e-mail address in order to save your application to Inria. Applications must be submitted online on the Inria website. Processing of applications sent from other channels is not guaranteed.
Instruction to apply
Please submit online : your resume, cover letter and letters of recommendation eventually
Defence Security :
This position is likely to be situated in a restricted area (ZRR), as defined in Decree No. 2011-1425 relating to the protection of national scientific and technical potential (PPST).Authorisation to enter an area is granted by the director of the unit, following a favourable Ministerial decision, as defined in the decree of 3 July 2012 relating to the PPST. An unfavourable Ministerial decision in respect of a position situated in a ZRR would result in the cancellation of the appointment.
Recruitment Policy :
As part of its diversity policy, all Inria positions are accessible to people with disabilities.
Contacts
- Inria Team : TARAN
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PhD Supervisor :
Traiola Marcello / marcello.traiola@inria.fr
The keys to success
Candidates with knowledge and experience in at least one of the following areas are highly valued: Hardware Design, Hardware/Software co-design.
We seek highly motivated and passionate candidates. Autonomy is a highly appreciated quality.
Essential qualities to fulfill a PhD thesis are feeling at ease in an environment of scientific dynamics and wanting to learn, listen, share, and work in the unknown. There is no clear and definite answer, and often no clear-cut notion of “right” or “wrong” until the scientific community has weighed in. Expect long, probing discussions with your advisor, lab-mates, conference audiences, reviewers, and peers who may challenge or disagree with you. Debate is part of the process.
Candidates must have a Master’s degree (or equivalent) in Computer Engineering or related areas relevant to the PhD topic
About Inria
Inria is the French national research institute dedicated to digital science and technology. It employs 2,600 people. Its 200 agile project teams, generally run jointly with academic partners, include more than 3,500 scientists and engineers working to meet the challenges of digital technology, often at the interface with other disciplines. The Institute also employs numerous talents in over forty different professions. 900 research support staff contribute to the preparation and development of scientific and entrepreneurial projects that have a worldwide impact.