Generative AI can recognize, summarize, translate, predict, and generate text and other forms of content.
Workloads
Generative AI
Business Goal
Return on Investment
Products
NVIDIA NeMo
NVIDIA Picasso
NVIDIA AI Enterprise
Generative AI is a powerful branch of artificial intelligence that holds immense potential for solving various challenges faced by organizations worldwide. It can quickly create new content based on a variety of multi-modal inputs. Inputs and outputs to these models can include text, images, video, audio, animation, 3D models, or other types of data.
With generative AI, startups and large organizations can immediately extract knowledge from their proprietary datasets. For example, you can build custom applications that speed up content generation for in-house creative teams or end customers. This can include summarizing source materials for creating new visuals or generating on-brand videos that suit your business’s narrative.
Streamlining the creative process is one key benefit. Generative AI also provides rich information to grasp underlying patterns that exist in your datasets and operations. Businesses can augment training data to reduce model bias and simulate complex scenarios. This competitive advantage fuels new opportunities to enhance your existing creative workflows, improve decision-making, and boost team efficiency in today’s fast-paced, evolving market.
Temporal layers and novel video denoiser generate high-fidelity videos with temporal consistency.
Quick Links
While generative AI tools powered by large language models (LLMs) show tremendous promise, and to derive maximum business value, enterprises need models customized to extract insights and generate content specific to their business needs. Customizing large language models (LLMs) can be an expensive, time-consuming process that requires deep technical expertise and full-stack technology investments. LLMs are used to accelerate numerous applications, including AI chatbots for online shopping, banking assistants, writing assistants, translation tools, and AI for predicting protein structures in biomedical research.
For a faster, more cost-effective path, to customized generative AI, enterprises are getting started with pre-trained foundation models. Rather than starting from scratch, these models provide a base for enterprises to build on top of, resulting in expedited development and fine-tuning cycles, and significant cost savings when running and maintaining generative AI applications in production.
Using NVIDIA AI software, ‘Writer’ builds LLMs that are helping hundreds of companies create content.
With NVIDIA NeMo, organizations can curate their training datasets, build and customize LLMs, and run them in production at scale. Organizations everywhere from Korea to Sweden are using it to customize LLMs for their local languages and industries.
A startup called Writer started using NeMo to put generative AI to work and create content for hundreds of companies. They claimed that before working with NVIDIA, it took them four and a half months to build a new billion-parameter model. “Now we can do it in 16 days—this is mind-blowing,” Alshikh (CEO of Writer) said. Hundreds of businesses now use Writer’s models that NeMo customized for finance, healthcare, retail, and other vertical markets.
NeMo is a part of NVIDIA AI Enterprise—full-stack software optimized to accelerate generative AI workloads and backed by enterprise-grade support, security, and application programming interface stability.
“Before NeMo, it took us four and a half months to build a new billion-parameter model. Now we can do it in 16 days—this is mind blowing.“
Waseeem Alshikh
CTO, Writer.ai