Explore challenges and solutions in AI chip development
The complexity of the silicon manufacturing processes has led to an explosion of data. Traditionally, engineering teams have had access to data pertaining to their step in the chip development process, but it’s been more challenging to obtain data from other phases of the chip’s lifecycle. More significantly, the raw data has been difficult to distill into useful insights. There’s a lot to sift through, and engineers need to know what to look for and what to query to make sense of it all. Considering the test data domain alone, there’s data stemming from wafer acceptance testing, bump, wafer sort, assembly, final test, and system-level test. There’s also critical importance in being able to tap into the data throughout the early design and manufacturing process, not just downstream. In short, both the depth and breadth of data support matters to help isolate and solve the root cause of any problems.
With semiconductor content rising in a number of application areas, there is growing urgency to move toward zero-defect approaches. The reality is, semiconductor defects are now commonly measured in parts per billion (ppb) rather than parts per million (ppm). Consider the automotive industry, where safety often hinges on the reliability and high performance of a vehicle’s electronic systems and semiconductor components. Even a seemingly miniscule defect rate can prove costly and potentially harmful and, hence, must be avoided. Never before has there ever been such an importance to accelerate convergence of quality and yield issues leveraging data analytics than now.
From design through manufacturing, the semiconductor development process generates loads of data. Petabytes worth. But, given the volume involved or sometimes gaps in expertise, most of the insights that lie within this trove of information tends to remain unearthed.
What if you had a way to easily determine how to improve semiconductor quality, yield, and throughput while having this massive amount of data automatically managed and analyzed with key actionable insights highlighted? To top it off, what if you could enhance your chip’s power and performance based on silicon production and monitor data throughout the various stages of its life?
Now there’s a new silicon lifecycle management solution in town that processes and analyzes orders of magnitude more data than ever possible. Spanning all product manufacturing phases—from design to fabrication to diagnostics through high-volume test—the Synopsys Silicon.da solution enhances engineering productivity, silicon efficiency, and tool scalability. This new end-to-end unified analytics platform that can shave weeks to months from product manufacturing schedules while also producing higher quality and better performing products.
Part of the Synopsys Silicon Lifecycle Management (SLM) Family, Silicon.da processes and analyzes petabytes of silicon data—more than what most analytics tools are able to handle. With its capacity and intelligence, the solution provides the following key core benefits focused on engineering productivity, silicon efficiency, and tool scalability:
Silicon.da leverages integration with Synopsys Avalon? CAD navigation and debug solution for performing failure analysis and Synopsys TestMAX? test automation family for a combined end-to-end yield optimization and learning flow. Silicon.da also leverages integration with Synopsys PrimeShield? design robustness analysis and optimization solution together with the Synopsys TestMAX family to provide an industry-first, closed-loop power and performance optimization flow between the post-silicon test chip and the pre-silicon design. Tapping into actual chip monitor data from process, voltage, and temperature (PVT) monitors and path margin monitors enables this high-value power and performance optimization flow. The silicon data gathered by these monitors can help enhance the accuracy of pre-silicon models during the design stage, thus enabling the reduction of unnecessary guard bands and derates to minimize power but still maintain the required performance.
Silicon.da also supports the advanced multi-die systems that are becoming increasingly prevalent for compute-intensive designs like AI and high-performance computing. The solution provides the flexibility to process and/or store data in the cloud.
Intelligence and insights gleaned from data provide another tool in the toolbox for engineers to further enhance their chips. At the in-design phase, they can use the analytics to improve power and performance. In ramp, they can aim to reduce yield ramp bring-up time. And in production, they can work to improve chip quality, yield, and throughput.
However, while each lifecycle phase has its own unique set of challenges and solutions, having a solution that can take a holistic approach of unifying the lifecycle phases enables the fastest route to solving the problem as the origin of the problem experienced in one lifecycle phase may have originated in an earlier lifecycle phase. Applying analytics intelligence from design through manufacturing, Silicon.da provides an integrated approach that was previously unavailable in the market. It demonstrates why having an integrated, end-to-end solution is paramount.
In summary, with Silicon.da in their arsenal, engineering teams can turn the explosion of data in silicon design and manufacturing into their competitive advantage.
心急是什么病的症状 | 富士康体检都检查什么 | 2015年属什么 | 什么是有氧运动包括哪些 | 起酥油是什么 |
干咳 吃什么药 | 附骨疽是什么病 | 一什么椅子 | 什么颜色混合是红色 | 耵聍是什么意思 |
浇去掉三点水读什么 | 金钱龟吃什么食物 | 唾手可得是什么意思 | 节操什么意思 | 什么药膏可以去黑头 |
丰富多腔的腔是什么意思 | AFP医学上是什么意思 | 嘌呤是什么意思 | 蒲公英和什么相克致死 | 弯脚杆是什么意思 |
6月21是什么星座hcv9jop5ns7r.cn | 陶土色是什么颜色hanqikai.com | 梦见买猪肉是什么预兆bysq.com | 减肥吃什么gangsutong.com | 小腿细是什么原因hcv9jop3ns1r.cn |
鼻子经常流鼻涕是什么原因hcv8jop4ns0r.cn | 不自主的摇头是什么病imcecn.com | 南方元旦吃什么hcv8jop9ns6r.cn | 男人什么时候精子最强hcv8jop4ns8r.cn | 什么是烤瓷牙hcv9jop4ns5r.cn |
白芷有什么作用与功效hcv8jop5ns0r.cn | 肝囊性灶是什么意思cl108k.com | 指甲花学名叫什么xinmaowt.com | 胆固醇低吃什么hcv9jop2ns9r.cn | 什么什么情深hcv8jop6ns9r.cn |
门字五行属什么hcv9jop2ns1r.cn | 牛蒡茶有什么功效hcv7jop9ns2r.cn | col是什么的缩写hcv9jop5ns1r.cn | 皇汉是什么意思hcv8jop8ns3r.cn | 免疫力是什么意思clwhiglsz.com |