Accelerate subsurface workloads with AI, high-performance computing (HPC) and visualization.
Oil and gas enterprises are becoming integrated energy companies, using improved processes to better explore, produce, transport, and distribute fuels to consumers around the world. Global initiatives for decarbonization are accelerating the transition from fossil fuels to alternative fuels with a smaller carbon footprint and scaling renewable energy, such as wind, solar, nuclear, hydroelectric, green hydrogen and geothermal.
Learn how Shell used NVIDIA DGX™ systems to determine salt boundaries in reservoir modeling, enable 4K iterative image reconstruction, test new designs for industrial plants, and drive advancements in sustainable new materials.
See how Stone Ridge Technology accelerated simulations of multi-million-cell deep-water reservoirs, offshore oil fields, and deep-water gas fields with ECHELON 2.0 running on Eni's HPC5 cluster.
Learn from energy companies using AI to improve energy production and reduce operating costs.
Learn how Shell used NVIDIA DGX systems to determine salt boundaries in reservoir modeling, enable 4K iterative image reconstruction, test new designs for industrial plants, and drive advancements in sustainable new materials.
Image courtesy of Shell.
See how BP achieved 35X runtime speedups by porting their production reverse time migration (RTM) code onto NVIDIA HGX™ A100 and leveraging the cuFFT library.
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Image courtesy of BP.
Explore how Chevron utilized NVIDIA IndeX®, a 3D volumetric interactive visualization SDK, in Microsoft Azure to streamline analysis of core samples—in larger volumes and at higher resolution.
Learn how Stone Ridge Technology and Eni developed and released ECHELON to empower reservoir engineers to accelerate an ensemble of models for deep-water reservoir, offshore oil field, and deep-water gas field simulations powered by NVIDIA GPUs.
Image courtesy of Stone Ridge Technology.
Learn how Beyond Limits developed a novel solution to optimize field-planning workflows based on a deep reinforcement learning framework that determined where and when to place production or injection wells in the modeled reservoir.
Image courtesy of Beyond Limits.
As the world moves toward a more sustainable future, global leaders in energy are accelerating their key HPC and AI workloads with NVIDIA’s full-stack platform. The result? Some of the most powerful, efficient supercomputers in the industry—including those from Eni, ExxonMobil, Petrobras, Saudi Aramco, Total, and the U.S. Department of Energy—are built on NVIDIA technology and continually rank near the top of the TOP500 and Green500 lists.
Our collaboration with NVIDIA provides great value because NVIDIA brings expertise in AI and a powerful HPC platform to conduct these studies. Conversely, Shell injects realism and provides the energy experience that provides great value to NVIDIA.
– Detlef Hohl, Chief Scientist of Computation and Data Science, Shell
Shell has ongoing work with NVIDIA: more realistic 3D reservoir models (e.g., dipping reservoir) for CO2 storage, layered geology with horizontal and vertical heterogeneity, computationally efficient FNO-based networks dealing larger input datasets and providing acceptable predictions over longer time windows (hundreds of years), and next-generation digital twin models of deep earth for carbon capture and storage (CCS) applications in real time with uncertainty assessment.
– Pandu Devarakota, Principal Science Expert, Shell
In 2022, over 70 percent of computing resources at BP’s Center for High-Performance Computing were used by reverse time migration (RTM)-related applications. In RTM benchmarking and validation tests, we found that one NVIDIA HGX A100 with no compression achieved up to a 35X peak shot runtime speedup compared to our in-house CLXAP cluster.
– Muhong Zhou, Senior HPC Software Developer, BP
We can examine the contribution of AI to the energy sector from three dimensions: energy forecasting, carbon capture, and predictive maintenance... AI algorithms are being used for energy forecasting, to predict energy demand, and to optimize economic value... AI can be used to reduce carbon emissions by analyzing data from multiple sources regarding weather, soil, and crop yield... to optimize our supply chain logistics and reduce our carbon footprint... AI can also help energy companies monitor the performance of their assets and equipment.
– Nayef Otaibi, Vice President and Chief Digital Officer, Saudi Aramco
The exploration and production (E&P) industry generates a vast amount of data, including well logs, seismic data, production data, drilling data, and other sources. Natural language processing (NLP) and large language models (LLMs) have provided the ability to integrate sources with descriptive, diagnostic, prescriptive, and predictive insights that enhance return on investment. In reservoir modeling, NLP and LLMs improve integrating sources from well logs, seismic data, and production data—bringing critical understanding to the subsurface that’s significant to our operations.
– Saud Zakwani, Head of Data Science, Petroleum Development Oman
AI can help in site selection and allocation by studying the physics, geology, and metrology of different locations to optimize solar plants or wind farms and make them more cost-effective and productive. Once facilities are deployed, we can look at AI to balance the grid and identify production capacity predicted from renewable energy. AI can help optimize a large installation of batteries, such as charging and discharging or maintenance issues.
– Yehia Khoja, Ministry of Energy, Head of AI and Business Development, Kingdom of Saudi Arabia
Systems powered by NVIDIA A100 80GB Tensor Core GPUs demonstrate superb performance uplifts compared to CPU performance running SLB’s INTERSECT high-resolution reservoir simulator.
Shearwater GeoServices is optimizing their Reveal seismic processing software for NVIDIA GPUs to help energy companies enhance seismic data and efficiently run compute-intensive imaging algorithms.
Image courtesy of AWS and MATLAB.
Understand how geoscientists can use shallow deep learning-based algorithms with MATLAB on AWS and AI models to automatically recognize distinct geologic features in seismic images.
Learn how to develop and deploy AI-based seismic facies classification by leveraging cloud-based HPC resources for faster prototyping and development with large 3D seismic datasets.
Learn about the AI and HPC hardware and software for oil and gas.
NVIDIA DGX H100 expands the frontiers of business innovation and optimization. The latest iteration of NVIDIA’s legendary DGX systems and the foundation of NVIDIA DGX SuperPOD™, DGX H100 is the AI powerhouse that’s accelerated by the groundbreaking performance of the NVIDIA H100 Tensor Core GPU.
NVIDIA DGX SuperPOD is an AI data center infrastructure platform that enables IT to deliver performance without compromise for every user and workload. DGX SuperPOD offers leadership-class accelerated infrastructure and agile, scalable performance for the most challenging AI and HPC workloads, with industry-proven results.
NVIDIA DGX Cloud is a multi-node AI-training-as-a-service solution optimized for the unique demands of enterprise AI. Access NVIDIA DGX Cloud to experience a combined software and infrastructure solution for AI training that includes a full-stack AI developer suite, leadership-class infrastructure, and concierge support.
The NVIDIA Grace™ Hopper™ Superchip is a breakthrough accelerated CPU designed from the ground up for giant-scale AI and HPC applications. The superchip delivers up to 10X higher performance for applications running terabytes of data, enabling scientists and researchers to reach unprecedented solutions for the world’s most complex problems.
The NVIDIA HPC Software Development Kit (SDK) includes the proven compilers, libraries, and software tools essential to maximizing developer productivity and the performance and portability of HPC modeling and simulation applications.
With NVIDIA AI Enterprise, energy companies can speed up development of use case applications, such as reservoir simulation, seismic processing, and predictive maintenance. Learn how to get access to NVIDIA AI Enterprise with free curated labs to start testing.
NVIDIA vGPU software enables powerful GPU performance for workloads ranging from graphics-rich virtual workstations to data science and AI, enabling IT to leverage the management and security benefits of virtualization, as well as the performance of NVIDIA GPUs required for modern workloads.
NVIDIA NeMo™, part of the NVIDIA AI platform, is an end-to-end, cloud-native enterprise framework for building, customizing, and deploying generative AI models with billions of parameters. Energy companies are exploring large language models in sentiment analysis for oil price prediction, as well as integrating sources from well logs, seismic data, and production data to generate real-time insights.
NVIDIA Metropolis features GPU-accelerated SDKs and developer tools that help developers optimally build, deploy, and scale AI-enabled video analytics and IoT applications—from the edge to the cloud.
Use NVIDIA RAPIDS™ to apply a wide variety of GPU-accelerated machine learning algorithms, including XGBoost, cuGRAPH’s single-source shortest path, cuML’s k-nearest neighbor (KNN), DBSCAN, and logistic regression, for data analysis at scale.
Gain an understanding of the various building blocks of NVIDIA Modulus, the basics of physics-informed deep learning, and how the framework integrates with the overall NVIDIA Omniverse™ platform.
Learn how to reduce complexity and improve portability and efficiency of your code by using a containerized environment for HPC application development.
Learn how to use NVIDIA Base Command™ Platform to accelerate containerized AI training workloads, identify the tools necessary to build an AI center of excellence, and get the basics of working with, modifying, and running Docker containers from NVIDIA NGC™.
Transform your AI workloads with the NVIDIA H100 Tensor Core GPU, featuring Multi-Instance GPU (MIG), the Transformer Engine, and NVIDIA AI Enterprise.
Explore NVIDIA Inception, the free program designed to help startups evolve faster through access to cutting-edge technology and NVIDIA experts, connections with venture capitalists, and co-marketing support to raise visibility.
Connect with millions of like-minded developers in the NVIDIA Developer Program to do your life’s work, and gain access to free containers, pretrained models, SDKs, technical documentation, and peer and domain expert help.
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