Difference between revisions of "High Performance SoCs"
Latest revision as of 14:06, 15 August 2022
- 1 High-Performance Systems-on-Chip
- 2 Our Activities
- 3 Who are we
- 4 Projects
Today, a multitude of data-driven applications such as machine learning, scientific computing, and big data demand an ever-increasing amount of parallel floating-point performance from computing systems. Increasingly, such applications must scale across a wide range of applications and energy budgets, from supercomputers simulating next week's weather to your smartphone cameras correcting for low light conditions.
This brings challenges on multiple fronts:
- Energy Efficiency becomes a major concern: As logic density increases, supplying these systems with energy and managing their heat dissipation requires increasingly complex solutions.
- Memory bandwidth and latency become a major bottleneck as the amount of processed data increases. Despite continuous advances, memory lags behind computing in scaling, and many data-driven problems today are memory-bound.
- Parallelization and scaling bring challenges of their own: on-chip interconnects may introduce significant area and performance overheads as they grow, and both the data and instruction streams of cores may compete for valuable memory bandwidth and interfere in a destructive way.
While all state-of-the-art high-performance computing systems are constrained by the above issues, they are also subject to a fundamental trade-off between efficiency and flexibility. This forms a design space which includes the following paradigms:
- Accelerators are designed to do one thing very well: they are very energy efficient and performant and usually offer predetermined data movement. However, they are not or barely programmable, inflexible, and monolithic in their design.
- Superscalar Out-of-Order CPUs, on the other end, provide extreme flexibility, full programmability, and reasonable performance across various workloads. However, they require large area and energy overheads for a given performance, use memory inefficiently, and are often hard to scale well to manycore systems.
- GPUs are parallel and data-oriented by design, yet still meaningfully programmable, aiming for a sweet-spot between scalability, efficiency, and programmability. However, are still subject to memory access challenges and often require manual memory management for decent performance.
How can we further improve on these existing paradigms? Can we design decently efficient and performant, yet freely programmable systems with scalable, performant memory systems?
If these questions sound intriguing to you, consider joining us for a project or thesis! You can find currently available projects and our contact information below.
We are primarily interested in architecture design and hardware implementation for high-performance systems. However, ensuring high performance requires us to consider the entire hardware-software stack:
- HPC Software: Design and porting of high-performance applications, benchmarks, compiler tools, and operating systems (Linux) to our hardware.
- Hardware-software codesign: Design of performance-aware algorithms and kernels and hardware that can be efficiently programmed for use in processor-based systems.
- Architecture: RTL implementation of energy-efficient designs with an emphasis on high utilization and throughput, as well as on efficient interoperability with existing IPs.
- SoC design and Implementation: Design of full high-performance systems-on-chips; implementation and tapeout on modern silicon technologies such as TSMC's 65 nm and GlobalFoundries' 22 nm nodes.
- IC testing and Board-Level design: Testing of the returning chips with industry-grade automated test equipment (ATE) and design of system-level demonstrator boards.
Our current interests include systems with low control-to-compute ratios, high-performance on-chip interconnects, and scalable many-core systems. However, we are always happy to explore new domains; if you have an interesting idea, contact us and we can discuss it in detail!
Who are we
All projects are annotated with one or more possible project types (M/S/B/G) and a number of students (1 to 3).
- M: Master's thesis: 26 weeks full-time (6 months) for one student only
- S: Semester project: 14 weeks half-time (1 semester lecture period) or 7 weeks full-time for 1-3 students
- B: Bachelor's thesis: 14 weeks half-time (1 semester lecture period) for one student only
- G: Group project: 14 weeks part-time (1 semester lecture period) for 2-3 students
Usually, these are merely suggestions from our side; proposals can often be reformulated to fit students' needs.
- A Flexible FPGA-Based Peripheral Platform Extending Linux-Capable Systems on Chip (1-3S/B)
- Accelerating Stencil Workloads on Snitch using ISSRs (1-2S/B)
- An Efficient Compiler Backend for Snitch (1S/B)
- Coherence-Capable Write-Back L1 Data Cache for Ariane (M)
- Counter-based Fast Power Estimation using FPGAs (M/1-3S)
- Creating a Free and Open-Source Verification Environment for Our New DMA Engine (1-3S/B)
- Design of a Prototype Chip with Interleaved Memory and Network-on-Chip
- Developing a Transposition Unit to Accelerate ML Workloads (1-3S/B)
- Fast Simulation of Manycore Systems (1S)
- Improving SystemVerilog Support for Free And Open-Source EDA Tools (1-3S/B)
- IP-Based SoC Generation and Configuration (1-3S/B)
- Modeling High Bandwidth Memory for Rapid Design Space Exploration (1-3S/B)
- Optimizing the Pipeline in our Floating Point Architectures (1S)
- Running Rust on PULP
- Serverless Benchmarks on RISC-V (M)
- Spatz grows wings: Physical Implementation of a Vector-Powered Manycore System (2S)
- Towards Formal Verification of the iDMA Engine (1-3S/B)
Projects In Progress
- Augmenting Our IPs with AXI Stream Extensions (M/1-2S)
- Efficient Execution of Transformers in RISC-V Vector Machines with Custom HW acceleration (M)
- Implementing DSP Instructions in Banshee (1S)
- Streaming Integer Extensions for Snitch (M/1-2S)
- Efficient Synchronization of Manycore Systems (M/1S)
- A Unified Compute Kernel Library for Snitch (1-2S)
- Implementation of a Small and Energy-Efficient RISC-V-based Vector Accelerator (1M)
- Enhancing our DMA Engine with Vector Processing Capabilities (1-2S/B)
- Adding Linux Support to our DMA Engine (1-2S/B)
- Hypervisor Extension for Ariane (M)
- Efficient Memory Stream Handling in RISC-V-based Systems (M/1-2S)
- Transforming MemPool into a CGRA (M)
- Multi issue OoO Ariane Backend (M)
- Physical Implementation of Ara, PULP's Vector Machine (1-2S)
- Towards the Ariane Desktop: Display Output for Ariane on FPGA under Linux (S/B/G)
- Ottocore: A Minimal RISC-V Core Designed for Teaching (B/2G)
- LLVM and DaCe for Snitch (1-2S)
- Investigation of the high-performance multi-threaded OoO IBM A2O Core (1-3S)
- Bringup and Evaluation of an Energy-efficient Heterogeneous Manycore Compute Platform (1-2S)
- An RPC DRAM Implementation for Energy-Efficient ASICs (1-2S)
- A Snitch-Based SoC on iCE40 FPGAs (1-2S/B)
- Physical Implementation of MemPool, PULP's Manycore System (1M/1-2S)
- Manycore System on FPGA (M/S/G)
- A Flexible Peripheral System for High-Performance Systems on Chip (M)
- ISA extensions in the Snitch Processor for Signal Processing (M)
- A Snitch-based Compute Accelerator for HERO (M/1-2S)
- MemPool on HERO (1S)