Simplifying workload modeling with AMBA ATP Engine
We are pleased to announce the release of the AMBA ATP Engine, an open-source implementation of AMBA ATP (Adaptive Traffic Profiles). The Engine significantly simplifies the adoption of AMBA ATP for workload modeling and accelerates the research and development of heterogeneous systems.
AMBA ATP and the need for a workload modeling framework
Computing systems are becoming increasingly complex and computationally demanding. Heterogeneous systems with accelerators and multiple computing cores are used to enable new workloads efficiently and to address increased performance requirements.
This creates challenges for workload modeling, system performance analysis, and architecture exploration of systems-on-a-chip (SoCs).
With that in mind, we developed AMBA Adaptive Traffic Profiles, or AMBA ATP. The AMBA ATP Specification defines a workload modeling framework that balances complex synthetic workload generation with ease-of-use.
AMBA ATP manages complexity by modeling the high-level memory access behavior in a concise, simple, and portable way. Traffic profiles can be used across multiple tools, design, and verification environments to assist with the design and verification of complex SoCs. Traffic profiles enable a simpler and faster simulation mechanism that is simultaneously predictable and adaptive.
AMBA ATP is gaining momentum and is adopted by our ecosystem partners in commercial products and research projects.
To read the full article, click here
Related Semiconductor IP
- Flexible Pixel Processor Video IP
- Bluetooth Low Energy 6.0 Digital IP
- Verification IP for Ultra Ethernet (UEC)
- MIPI SWI3S Manager Core IP
- Ultra-low power high dynamic range image sensor
Related Blogs
- Rambus Expands Quantum Safe Solutions with Quantum Safe Engine IP
- AI Workload Acceleration with SiFive's New Intelligence XM Series
- How to Get Started with Model-Based Systems Engineering
- MoSys Fires Up the Bandwidth Engine
Latest Blogs
- Accelerating RTL Design with Agentic AI: A Multi-Agent LLM-Driven Approach
- UEC-CBFC: Credit-Based Flow Control for Next-Gen Ethernet in AI and HPC
- RISC-V for Infrastructure: For Now, It’s All About the Developer
- Unlock Your AI Potential: A Deep Dive into BrainChip’s Akida™ Cloud
- Breaking the Silence: What Is SoundWire‑I3S and Why It Matters