Deploying Deep Neural Networks directly into network switches? Now it’s possible!  

The CLEVER Project presents a novel way to embed AI into programmable data planes — with zero arithmetic logic, zero stateful memory, and zero loss in performance

🔍 Our latest innovation introduces a lookup table distillation technique that transforms complex DNNs into cascaded, stateless, P4-compatible flow tables — unlocking true in-network AI at wirespeed

Resim💡 Why it matters: 

  • Traditional P4 hardware lacks the arithmetic power to run DNNs 
  • Existing solutions require external FPGAs or GPUs — adding latency and power consumption 
  • Our method enables fully in-network inference for tasks like DDoS detection, traffic analysis, and more 

Resim🧠 How we did it: 
✔️ Cascaded architecture breaks large models into 2-input neural nets 
✔️ Distilled into efficient LUTs deployable in hardware switches 
✔️ Stateless design = ideal for P4 pipeline acceleration 
✔️ Validated using the UNSW-NB15 cybersecurity dataset 

Resim📈 Performance Snapshot: 
With just 6 stateless features and 8-bit quantization, our distilled model achieved 93.75% F1-score — outperforming many heavyweight offloading methods with a fraction of the resource usage. 

📷 Visual Insight: 
Below is the cascading LUT structure used to map a DNN into a hardware-ready inference engine — deployable in real-time network switches👇 

🔗 Learn more about how we’re redefining network AI and accelerating 6G-ready infrastructures: 
https://www.cleverproject.eu 

Read more from the paper! : https://zenodo.org/records/11039031

#CLEVERProject #InNetworkAI #P4Language #ProgrammableNetworks #EdgeAI #Cybersecurity #DDoSProtection #DeepLearning #SmartNICs #TofinoSwitch #SmartInfrastructure #NetworkingInnovation #DataPlane #ZeroTouchNetworking #AIAccelerators #NetworkIntelligence #CLEVER