Zuobai Zhang

Zuobai Zhang is a Research Scientist with NVIDIA Research’s Fundamental Generative AI Research Group. He received his Ph.D. in Computer Science from Mila – Québec AI Institute and Université de Montréal in 2026, and his B.S. in Computer Science from Fudan University in 2021. His research focuses on developing biological foundation models, especially for proteins, from the perspectives of both representation learning and generative modeling. He is interested in both fundamental generative model techniques and their applications in scientific domains.

Sionna Research Kit: A GPU-Accelerated Research Platform for AI-RAN

We introduce the NVIDIA Sionna Research Kit, a GPU-accelerated research platform for developing and testing AI/ML algorithms in 5G NR cellular networks. Powered by the NVIDIA Jetson AGX Orin, the platform leverages accelerated computing to deliver high throughput and real-time signal processing, while offering the flexibility of a software-defined stack. Built on OpenAirInterface (OAI) [1], it unlocks a broad range of research opportunities.

SALAD: Self-Adaptive Link Adaptation

Adapting the modulation and coding scheme (MCS) to the wireless link quality is critical for maximizing spectral efficiency while ensuring reliability. We propose SALAD (selfadaptive link adaptation), an algorithm that exclusively leverages ACK/NACK feedback to reliably track the evolution of the signalto-interference-plus-noise ratio (SINR), achieving high spectral efficiency while keeping the long-term block error rate (BLER) near a desired target. SALAD infers the SINR by minimizing the cross-entropy loss between received ACK/NACKs and predicted BLER values.

Design of a Standard-Compliant Real-Time Neural Receiver for 5G NR

We detail the steps required to deploy a multiuser multiple-input multiple-output (MU-MIMO) neural receiver (NRX) in an actual cellular communication system. This raises several exciting research challenges, including the need for realtime inference and compatibility with the 5G NR standard. As the network configuration in a practical setup can change dynamically within milliseconds, we propose an adaptive NRX architecture capable of supporting dynamic modulation and coding scheme (MCS) configurations without the need for any re-training and without additional inference cost.

Better Together: Leveraging Multiple Digital Twins for Deployment Optimization of Airborne Base Stations

Airborne Base Stations (ABSs) allow for flexible geographical allocation of network resources with dynamically changing load as well as rapid deployment of alternate connectivity solutions during natural disasters. Since the radio infrastructure is carried by unmanned aerial vehicles (UAVs) with limited flight time, it is important to establish the best location for the ABS without exhaustive field trials.

ATLAS: AI-Native Receiver Test-and-Measurement by Leveraging AI-Guided Search

Industry adoption of Artificial Intelligence (AI)-native wireless receivers, or even modular, Machine Learning (ML)-aided wireless signal processing blocks, has been slow. The main concern is the lack of explainability of these trained ML models and the significant risks posed to network functionalities in case of failures, especially since (i) testing on every exhaustive case is infeasible and (ii) the data used for model training may not be available.

The Bridge Toward 6G: 5G-Advanced Evolution in 3GPP Release 19

The 3rd generation partnership project (3GPP) initiated 5G-Advanced in Release 18, laying a solid foundation for the further evolution of 5G-Advanced. Release 19-the next wave of 5G-Advanced-will primarily focus on commercial deployment needs while serving as a bridge toward 6G. In this article, we provide an in-depth overview of the 5G-Advanced evolution in 3GPP Release 19. We not only delve into the key technology components and their corresponding use cases in 5G-Advanced evolution but also shed light on initial 3GPP studies toward 6G.