{"publication_identifier":{"issn":["2980-7298","2337-0343"]},"type":"journal_article","volume":11,"date_created":"2025-11-14T05:48:05Z","date_updated":"2025-11-14T09:35:16Z","intvolume":" 11","doi":"10.64552/wipiec.v11i1.99","publication_status":"published","abstract":[{"text":"While reservoir computing (RC) networks offer advantages over traditional recurrent neural net- works in terms of training time and operational cost for time-series applications, deploying them on edge devices still presents significant challenges due to re- source constraints. Network compression, i.e., pruning and quantization, are thus of utmost importance. We propose a Compressed Reservoir Computing (CRC) framework that integrates advanced pruning and quantization techniques to optimize throughput, latency, energy efficiency, and resource utilization for FPGA- based RC accelerators.We describe the framework with a focus on HSIC LASSO as a novel pruning method that can capture non-linear dependencies between neurons. We validate our framework with time series classification and regression tasks, for which we generate FPGA accelerators. The accelerators achieve a very high throughput of up to 188 Megasamples/s with a latency of 5.32 ns, while reducing resource utilization by 12× and lowering the energy by 10× compared to a baseline hardware implementation, without compromising accuracy.","lang":"eng"}],"author":[{"last_name":"Jafari","full_name":"Jafari, Atousa","first_name":"Atousa"},{"last_name":"Ghasemzadeh Mohammadi","full_name":"Ghasemzadeh Mohammadi, Hassan","first_name":"Hassan"},{"first_name":"Marco","last_name":"Platzner","full_name":"Platzner, Marco"}],"status":"public","user_id":"99966","publication":"WiPiEC Journal - Works in Progress in Embedded Computing Journal","publisher":"MECOnet","issue":"1","article_number":"4","year":"2025","title":"CRC: Compressed Reservoir Computing on FPGA via Joint HSIC LASSO-based Pruning and Quantization","citation":{"short":"A. Jafari, H. Ghasemzadeh Mohammadi, M. Platzner, WiPiEC Journal - Works in Progress in Embedded Computing Journal 11 (2025).","apa":"Jafari, A., Ghasemzadeh Mohammadi, H., & Platzner, M. (2025). CRC: Compressed Reservoir Computing on FPGA via Joint HSIC LASSO-based Pruning and Quantization. WiPiEC Journal - Works in Progress in Embedded Computing Journal, 11(1), Article 4. https://doi.org/10.64552/wipiec.v11i1.99","chicago":"Jafari, Atousa, Hassan Ghasemzadeh Mohammadi, and Marco Platzner. “CRC: Compressed Reservoir Computing on FPGA via Joint HSIC LASSO-Based Pruning and Quantization.” WiPiEC Journal - Works in Progress in Embedded Computing Journal 11, no. 1 (2025). https://doi.org/10.64552/wipiec.v11i1.99.","mla":"Jafari, Atousa, et al. “CRC: Compressed Reservoir Computing on FPGA via Joint HSIC LASSO-Based Pruning and Quantization.” WiPiEC Journal - Works in Progress in Embedded Computing Journal, vol. 11, no. 1, 4, MECOnet, 2025, doi:10.64552/wipiec.v11i1.99.","ieee":"A. Jafari, H. Ghasemzadeh Mohammadi, and M. Platzner, “CRC: Compressed Reservoir Computing on FPGA via Joint HSIC LASSO-based Pruning and Quantization,” WiPiEC Journal - Works in Progress in Embedded Computing Journal, vol. 11, no. 1, Art. no. 4, 2025, doi: 10.64552/wipiec.v11i1.99.","bibtex":"@article{Jafari_Ghasemzadeh Mohammadi_Platzner_2025, title={CRC: Compressed Reservoir Computing on FPGA via Joint HSIC LASSO-based Pruning and Quantization}, volume={11}, DOI={10.64552/wipiec.v11i1.99}, number={14}, journal={WiPiEC Journal - Works in Progress in Embedded Computing Journal}, publisher={MECOnet}, author={Jafari, Atousa and Ghasemzadeh Mohammadi, Hassan and Platzner, Marco}, year={2025} }","ama":"Jafari A, Ghasemzadeh Mohammadi H, Platzner M. CRC: Compressed Reservoir Computing on FPGA via Joint HSIC LASSO-based Pruning and Quantization. WiPiEC Journal - Works in Progress in Embedded Computing Journal. 2025;11(1). doi:10.64552/wipiec.v11i1.99"},"_id":"62184"}