Due to our familiarity with how fluids move and interact, as well as their complexity, plausible animation of fluidsremains a challenging problem. We present a particle interaction method for simulating fluids. The underlyingequations of fluid motion are discretized using moving particles and their interactions. The method allows simulationand modeling of mixing fluids with different physical properties, fluid interactions with stationary objects, andfluids that exhibit significant interface breakup and fragmentation. The gridless computational method is suitedfor medium scale problems since computational elements exist only where needed. The method fits well into thecurrent user interaction paradigm and allows easy user control over the desired fluid motion.
Figure 1: Images generated using interactive ray tracing. From left to right, time step 225 of a Richtmyer-Meshkov instability simulation from Lawrence Livermore National Labs (Image courtesy of Aaron Knoll), Boeing 777 (Data courtesy The Boeing Company), 2.8 million particle MPM simulation with direct volume rendered fire, and iso-surface of the Visible Female. ABSTRACTWe describe the software architecture of the Manta interactive ray tracer and describe its application in engineering and scientific visualization. Although numerous ray tracing software packages have been developed, much of the traditional design wisdom needs to be updated to provide support for interactivity, high degrees of parallelism, and modern packet-based acceleration structures. We discuss situations that are normally not considered when designing a batch ray tracer, and present methods to overcome those challenges. This paper advocates a forward looking programming model for interactive ray tracing that uses reconfigurable components to achieve flexibility while achieving scalability on large numbers of processors. Manta employs data structures motivated by modern microprocessor design that can exploit instruction-level parallelism. We discuss the design tradeoffs and the performance achieved for this system.
The NVIDIA® OptiX™ ray tracing engine is a programmable system designed for NVIDIA GPUs and other highly parallel architectures. The OptiX engine builds on the key observation that most ray tracing algorithms can be implemented using a small set of programmable operations. Consequently, the core of OptiX is a domain-specific just-in-time compiler that generates custom ray tracing kernels by combining user-supplied programs for ray generation, material shading, object intersection, and scene traversal. This enables the implementation of a highly diverse set of ray tracing-based algorithms and applications, including interactive rendering, offline rendering, collision detection systems, artificial intelligence queries, and scientific simulations such as sound propagation. OptiX achieves high performance through a compact object model and application of several ray tracing-specific compiler optimizations. For ease of use it exposes a single-ray programming model with full support for recursion and a dynamic dispatch mechanism similar to virtual function calls.
No abstract
The NVIDIA® OptiX™ ray tracing engine is a programmable system designed for NVIDIA GPUs and other highly parallel architectures. The OptiX engine builds on the key observation that most ray tracing algorithms can be implemented using a small set of programmable operations. Consequently, the core of OptiX is a domain-specific just-in-time compiler that generates custom ray tracing kernels by combining user-supplied programs for ray generation, material shading, object intersection, and scene traversal. This enables the implementation of a highly diverse set of ray tracing-based algorithms and applications, including interactive rendering, offline rendering, collision detection systems, artificial intelligence queries, and scientific simulations such as sound propagation. OptiX achieves high performance through a compact object model and application of several ray tracing-specific compiler optimizations. For ease of use it exposes a single-ray programming model with full support for recursion and a dynamic dispatch mechanism similar to virtual function calls.
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