๐ Jensen Wong, the founder of Nvidia, had a challenging upbringing and faced adversity from a young age.
๐ก Working at AMD in the 1980s taught Jensen the importance of innovation and specialization in the chip industry.
๐ Jensen realized that making the chip design process cooler and more cutting-edge was key to success.
๐ Jensen Huang joins LSI and collaborates with Sun Microsystems to build chips for their workstation product.
๐ก Chris and Curtis propose the idea of creating a chip to handle 3D Graphics, which Jensen agrees to despite the risks.
๐ฐ Jensen secures funding from Don Valentine at Sequoia, leading to the founding of Nvidia.
๐ฎ Nvidia's purpose is defined as enabling Graphics to be a new medium for storytelling, but they face challenges in convincing developers to adopt the new technology.
๐ก Nvidia and Sega initially partnered but faced challenges with their choice of geometric primitives in 3D graphics.
๐บ Triangles became the industry standard in 3D graphics due to their versatility in creating curved surfaces.
๐ฐ Facing financial difficulties, Nvidia laid off most staff members and pursued a new chip design strategy.
๐ฅ๏ธ Nvidia utilized chip emulation software to accelerate their design cycle, leading to breakthrough products like the Riva 128 graphics card.
๐โโ๏ธ Nvidia's accelerated design cycle allowed them to outpace their rivals in performance improvements and customer demand.
Nvidia's development of GPUs outsmarted Moore's law and provided a significant improvement in frame rate compared to competitors.
Parallel computing and the ability to render graphics independently allowed for faster processing and the emergence of use cases beyond gaming.
Nvidia's successful IPO and partnership with Microsoft for the Xbox propelled the company's growth and solidified its position in the industry.
๐ Nvidia faced challenges with thinning gross margins and the loss of a revenue stream.
๐ก Jensen wanted Nvidia to expand beyond dominating the gaming market and into new domains.
๐ Jensen's bold bet on scientific computing led to the development of hardware and technologies that enabled new insights and stories.
๐ Nvidia developed CUDA, a parallel computing platform that utilizes the computational power of GPUs to solve complex problems in scientific and AI workloads.
๐ก CUDA's business model, which offers the platform for free but requires Nvidia hardware, is similar to Apple's proprietary ecosystem.
๐ The marriage of CUDA and deep learning neural networks powered by Nvidia GPUs revolutionized artificial intelligence and transformed Nvidia's business.
๐ Nvidia's revenue has significantly increased over the years, reaching $26.9 billion in February 2020.
๐ Nvidia's open development ecosystem, deployed on their hardware, dominates several application areas, including deep learning.
๐ Nvidia is expanding into the automotive market and developing the Omniverse, a simulation platform with immense potential for scientific discovery.