Moana 2

This fall marked the release of Moana 2, Walt Disney Animation’s 63rd animated feature and the 10th feature film rendered entirely using Disney’s Hyperion Renderer. Moana 2 brings us back to the beautiful world of Moana, but this time on a larger adventure with a larger canoe, a crew to join our heroine, bigger songs, and greater stakes. The first Moana was at the time of its release one of the most beautiful animated films ever made, and Moana 2 lives up to that visual legacy with frames that match or often surpass what we did in the original movie. I got to join Moana 2 about two years ago and this film proved to be an incredibly interesting project!

While we’ve now used Disney’s Hyperion Renderer to make several sequels to previous Disney Animation films, Moana 2 is the first time we’ve used Hyperion to make a sequel to a previous film that also used Hyperion. From a technical perspective, the time between the first and second Moana films is filled with almost a decade of continual advancement in our rendering technology and in our wider production pipeline. At the time that we made the first Moana, Hyperion was only a few years old and we spent a lot of time on the first Moana fleshing out various still-underdeveloped features and systems in the renderer. Going into the second Moana, Hyperion is now an extremely mature, extremely feature rich, battle-tested production renderer with which we can make essentially anything we can imagine. Almost every single feature and system in Hyperion today has seen enormous advancement and improvement over what we had on the first Moana; many of these advancements were in fact driven by hard lessons that we learned on the first Moana! Compared with the first Moana, here’s a short, very incomplete laundry list of improvements made over the past decade that we were able to leverage on Moana 2:

  • Moana 2 uses a completely new water rendering system that represents an enormous leap in both render-time efficiency and easier artist workflows compared with what we used on the first Moana; more on this later in this post.
  • After the first Moana, we completely rewrote Hyperion’s previous volume rendering subsystem [Habel 2017] from scratch; the modern system is a state-of-the-art delta-tracking system that required us to make foundational research advancements in order to implement [Kutz et al. 2017, Huang et al. 2021].
  • Our traversal system was completely rewritten to better handle thread scalability and to incorporate a form of rebraiding to efficiently handle gigantic world-spanning geometry; this was inspired directly by problems we had rendering the huge ocean surfaces and huge islands in the first Moana [Burley et al. 2018].
  • On the original Moana, ray self-intersection with things like Maui’s feathers presented a major challenge; Moana 2 is the first film using our latest ray self-intersection prevention system that notably does away with any form of ray bias values.
  • We introduced a limited form of photon mapping on the first Moana that only worked between the sun and water surfaces [Burley et al. 2018].; Moana 2 uses an evolved version of our photon mapper that supports all of our light types, many or our standard lighting features, and even has advanced capabilities like a form of spectral dispersion.
  • We’ve made a number of advancements [Burley et al. 2017, Chiang et al. 2016, Chiang at al. 2019, Zeltner et al. 2022] to various elements of the Disney BSDF shading model.
  • Subsurface scattering on the first Moana was done using normalized diffusion; since then we’ve moved all subsurface scattering to use a state-of-the-art brute force path tracing approach [Chiang et al. 2016].
  • Eyes on the first Moana used our old ad-hoc eye shader; eyes on Moana 2 use our modern physically plausible eye shader that includes state-of-the-art iris caustics calculated using manifold next event estimation [Chiang & Burley 2018].
  • The emissive mesh importance sampling system that we implemented on the first Moana and our overall many-lights sampling system has seen many efficiency improvements [Li et al. 2024].
  • Hyperion has gained many more powerful features granting artists an enormous degree of artistic control both in the renderer and post-render in compositing [Burley 2019, Burley et al. 2024].
  • Since the first Moana, Hyperion’s subdivision/tessellation system has gained an advanced fractured mesh system that makes many of the huge-scale effects in the first Moana movie much easier for us to create today [Burley & Rodriguez 2022].
  • We’ve introduced path guiding into Hyperion to handle particularly difficult light transport cases [Müller et al. 2017, Müller 2019].
  • The original Moana used our somewhat ad-hoc first-generation denoiser, while Moana 2 uses our best-in-industry, Academy Award winning1 second-generation deep learning denoiser jointly developed by Disney Research Studios, Disney Animation, Pixar, and ILM [Vogels et al. 2018, Dahlberg et al. 2019].
  • Even Hyperion’s internal architecture has changed enormously; Hyperion originally was famous for being a batched wavefront renderer, but this has evolved significantly since then and continues to evolve.

There are many many more changes to Hyperion that there simply isn’t room to list here. To give you some sense of how far Hyperion has evolved between Moana and Moana 2: the Hyperion used on Moana was internally versioned as Hyperion 3.x; the Hyperion used on Moana 2 is internally versioned as Hyperion 16.x, with each version number in between representing major changes. In addition to improvements in Hyperion, our rendering team has also been working for the past few years on a next-generation interactive lighting system that extensively leverages hardware GPU ray tracing; Moana 2 saw the widest deployment yet of this system; I can’t say much more on this topic yet but hopefully we’ll have more to share soon.

Outside of the rendering group, literally everything else about our entire studio production pipeline has changed as well; the first Moana was made mostly on proprietary internal data formats, while Moana 2 was made using the latest iteration of our cutting-edge modern USD pipeline [Miller et al. 2022, Vo et al. 2023, Li et al. 2024]. The modern USD pipeline has granted our pipeline many amazing new capabilities and far more flexibility, to the point where it became possible to move our entire lighting workflow to a new DCC for Moana 2 without needing to blow up the entire pipeline. Our next-generation interactive lighting system is similarly made possible by our modern USD pipeline. I’m sure we’ll have much more about this at SIGGRAPH!

While I get to work on every one of our feature films and get to do fun and interesting things every time, Moana 2 is the most direct and deep I’ve worked on one of our films probably since the original Moana. There are two specific projects I worked on for Moana 2 that I am particularly proud of: a completely new water rendering system that is part of Moana 2’s overall new water FX workflow, and the volume rendering work that was done for the storm battle in the movie’s third act.

On the original Moana, we had to develop a lot of custom water simulation and rendering technology because commercial tools at the time couldn’t quite handle what the movie required. On the simulation side, the original Moana required Disney Animation to invent new techniques such as the APIC (affine particle-in-cell) fluid simulation model [Jiang et al. 2015] and the FAB (fluxed animated boundary) method for integrating procedural and simulated water dynamics [Stomakhin and Selle 2017]. Disney Animation’s general philosophy towards R&D is that we will develop and invent new methods when needed, but will then aim to publish our work with the goal of allowing anything useful we invent to find its way into the wider graphics field and industry; a great outcome is when our publications are adopted by the commercial tools and packages that we build on top of. APIC and FAB were both published and have since become a part of the stock toolset in Houdini, which in turn allowed us to build more on top of Houdini’s built-in SOPs for Moana 2’s water FX workflow.

On the rendering side, the main challenge on the original Moana for rendering water was the need to combine water surfaces from many different sources (procedural, manually animated, and simulated) into a single seamless surface that could be rendered with proper refraction, internal volumetric effects, caustics, and so on. Our solution to combine different water surfaces on the original Moana was to convert all input water elements into signed distance fields, composite all of the signed distance fields together into a single world-spanning levelset, and then mesh that levelset into a triangle mesh for ray intersection [Palmer et al. 2017]. While this process produced great visual results, running this entire world-spanning levelset compositing and meshing operation at renderer startup for each frame proved to be completely untenable due to how slow it made interaction for artists, so an extensive system for pre-caching ocean surfaces overnight to disk had to be built out. All in all, the water rendering and caching system on the first Moana required a dedicated team of over half a dozen developers and TDs to maintain, and setting up the levelset compositing system correctly proved to be challenging for artists.

For Moana 2, we decided to revisit water rendering with the goal of coming up with something much easier for artists to use, much faster to render, and much easier to maintain by a smaller group of engineers and TDs. Over the course of about half a year, we completely replaced the old levelset compositing and meshing system with a new ray-intersection-time CSG system. Our new system requires almost zero work for artists to set up, requires zero preprocessing time before renderer startup and zero on-disk caching, renders with negligible impact on ray tracing speed, and required zero dedicated TDs and only part of my time as an engineer to support once primary development was completed. In addition to all of the above, the new system also allows for both better looking and more memory efficient water because the level of detail that water meshes have to exist at is no longer constrained by the resolution of a world-size meshed levelset, even with an adaptive levelset meshing. I think this was a great example where by revisiting a world that we already knew how to make, we were given an opportunity to reevaluate what we learned on Moana in order to come up with something better by every metric for Moana 2.

We knew that returning to the world of Moana was likely going to require a heavy lift from a volume rendering perspective. With a mind towards this, we worked closely with Disney Research Studios in Zürich to implement next-generation volume path guiding techniques in Hyperion, which wound up not seeing wide deployment this time but nonetheless proved to be a fun and interesting project from which we learned a lot. We also realized that the third act’s storm battle was going to be incredibly challenging from both an FX and rendering perspective. My last few months on Moana 2 were spent helping get the storm battle sequences finished; one extremely unusual thing we wound up doing was providing custom builds of Hyperion with specific optimizations tailored to the specific requirements of the storm sequence, sometimes going as far as to provide specific builds and settings tailored on a per-shot basis. Normally this is something any production rendering team tries to avoid if possible, but one of the benefits of having our own in-house team and our own in-house renderer is that we are still able to do this when the need arises. From a personal perspective, being able to point at specific shots and say “I wrote code for that specific thing” is pretty neat!

From both a story and a technical perspective, Moana 2 is everything we loved from Moana brought back, plus a lot of fun, big, bold new stuff. Making Moana 2 both gave us new challenges to solve and allowed us to revisit and come up with better solutions to old challenges from Moana. I’m incredibly proud of the work that my teammates and I were able to do on Moana 2; I’m sure we’ll have a lot more to share at SIGGRAPH 2025, and in the meantime I strongly encourage you to see Moana 2 on the biggest screen you can find!

To give you a taste of how beautiful this film looks, here are some frames from Moana 2, 100% created using Disney’s Hyperion Renderer by our amazing artists. These are presented in no particular order:

All images in this post are courtesy of and the property of Walt Disney Animation Studios.

References

Brent Burley, David Adler, Matt Jen-Yuan Chiang, Ralf Habel, Patrick Kelly, Peter Kutz, Yining Karl Li, and Daniel Teece. 2017. Recent Advancements in Disney’s Hyperion Renderer. In ACM SIGGRAPH 2017 Course Notes: Path Tracing in Production Part 1. 26-34.

Brent Burley, David Adler, Matt Jen-Yuan Chiang, Hank Driskill, Ralf Habel, Patrick Kelly, Peter Kutz, Yining Karl Li, and Daniel Teece. 2018. The Design and Evolution of Disney’s Hyperion Renderer. ACM Transactions on Graphics. 37, 3 (2018), 33:1-33:22.

Brent Burley. 2019. On Histogram-Preserving Blending for Randomized Texture Tiling. Journal of Computer Graphics Techniques, 8, 4 (2019), 31-53.

Brent Burley and Francisco Rodriguez. 2022. Fracture-Aware Tessellation of Subdivision Surfaces. In ACM SIGGRAPH 2022 Talks, 10:1-10:2.

Brent Burley, Brian Green, and Daniel Teece. 2024. Dynamic Screen Space Textures for Coherent Stylization. In ACM SIGGRAPH 2024 Talks, 50:1-50:2.

Matt Jen-Yuan Chiang, Peter Kutz, and Brent Burley. 2016. Practical and Controllable Subsurface Scattering for Production Path Tracing. In ACM SIGGRAPH 2016 Talks. 49:1-49:2.

Matt Jen-Yuan Chiang and Brent Burley. 2018. Plausible Iris Caustics and Limbal Arc Rendering. In ACM SIGGRAPH 2018 Talks, 15:1-15:2.

Matt Jen-Yuan Chiang, Yining Karl Li, and Brent Burley. 2019. Taming the Shadow Terminator. In ACM SIGGRAPH 2019 Talks. 71:1-71:2.

Henrik Dahlberg, David Adler, and Jeremy Newlin. 2019. Machine-Learning Denoising in Feature Film Production. In ACM SIGGRAPH 2019 Talks. 21:1-21:2.

Ralf Habel. 2017. Volume Rendering in Hyperion. In ACM SIGGRAPH 2017 Course Notes: Production Volume Rendering. 91-96.

Wei-Feng Wayne Huang, Peter Kutz, Yining Karl Li, and Matt Jen-Yuan Chiang. 2021. Unbiased Emission and Scattering Importance Sampling for Heterogeneous Volumes. In ACM SIGGRAPH 2021 Talks. 3:1-3:2.

Chenfafu Jiang, Craig Schroeder, Andrew Selle, Joseph Teran, and Alexey Stomakhin. 2015. The Affine Particle-in-Cell Method. ACM Transactions on Graphics. 34, 4 (2015), 51:1-51:10.

Peter Kutz, Ralf Habel, Yining Karl Li, and Jan Novák. 2017. Spectral and Decomposition Tracking for Rendering Heterogeneous Volumes. ACM Transactions on Graphics. 36, 4 (2017), 111:1-111:16.

Harmony M. Li, George Rieckenberg, Neelima Karanam, Emily Vo, and Kelsey Hurley. 2024. Optimizing Assets for Authoring and Consumption in USD. In ACM SIGGRAPH 2024 Talks. 30:1-30:2.

Yining Karl Li, Charlotte Zhu, Gregory Nichols, Peter Kutz, Wei-Feng Wayne Huang, David Adler, Brent Burley, and Daniel Teece. 2024. Cache Points for Production-Scale Occlusion-Aware Many-Lights Sampling and Volumetric Scattering. In DigiPro 2024. 6:1-6:19.

Tad Miller, Harmony M. Li, Neelima Karanam, Nadim Sinno, and Todd Scopio. 2022. Making Encanto with USD: Rebuilding a Production Pipeline Working from Home. In ACM SIGGRAPH 2022 Talks. 12:1-12:2.

Thomas Müller. 2019. Practical Path Guiding in Production. In ACM SIGGRAPH 2019 Course Notes: Path Guiding in Production. 37-50.

Thomas Müller, Markus Gross, and Jan Novák. 2017. Practical Path Guiding for Efficient Light-Transport Simulation. Computer Graphics Forum. 36, 4 (2017), 91-100.

Sean Palmer, Jonathan Garcia, Sara Drakeley, Patrick Kelly, and Ralf Habel. 2017. The Ocean and Water Pipeline of Disney’s Moana. In ACM SIGGRAPH 2017 Talks. 29:1-29:2.

Alexey Stomakhin and Andy Selle. 2017. Fluxed Animated Boundary Method. ACM Transactions on Graphics. 36, 4 (2017), 68:1-68:8.

Emily Vo, George Rieckenberg, and Ernest Petti. 2023. Honing USD: Lessons Learned and Workflow Enhancements at Walt Disney Animation Studios. In ACM SIGGRAPH 2023 Talks. 13:1-13:2.

Thijs Vogels, Fabrice Rousselle, Brian McWilliams, Gerhard Röthlin, Alex Harvill, David Adler, Mark Meyer, and Jan Novák. 2018. Denoising with Kernel Prediction and Asymmetric Loss Functions. ACM Transactions on Graphics. 37, 4 (2018), 124:1-124:15.

Tizian Zeltner, Brent Burley, and Matt Jen-Yuan Chiang. 2022. Practical Multiple-Scattering Sheen Using Linearly Transformed Cosines. In ACM SIGGRAPH 2022 Talks. 7:1-7:2.


Footnotes

1 Our deep learning denoiser technology is one of the 2025 Academy of Motion Picture Arts and Sciences Scientific and Engineering Award winners.

DigiPro 2024 Paper- Cache Points For Production-Scale Occlusion-Aware Many-Lights Sampling And Volumetric Scattering

This year at DigiPro 2024, we had a conference paper that presents a deep dive into Hyperion’s unique solution to the many-light sampling problem; we call this system “cache points”. DigiPro is one of my favorite computer graphics conferences precisely because of the emphasis the conference places on sharing how ideas work in the real world of production, and with this paper we’ve tried to combine a more traditional academic theory paper with DigiPro’s production-forward mindset. Instead of presenting some new thing that we’ve recently come up with and have maybe only used on one or two productions so far, this paper presents something that we’ve now actually had in the renderer and evolved for over a decade, and along with the core technique, the paper also goes into lessons we’ve learned from over a decade of production experience.

Figure 1 from the paper: A production scene from Us Again containing 4881396 light sources (analytical lights, emissive triangles, and emissive volumes), rendered using 32 samples per pixel with uniform light selection (a), locally optimal light selection (b), and our cache points system (c). Uniform light selection produces a faster result but converges poorly, while building a locally optimal light distribution per path vertex produces a more converged result but is much slower. Our cache points system (c) produces a noise level similar to (b) while maintaining performance closer to (a). To clearly show noise differences, this figure does not include the post-renderer compositing that is present in the final production frame.

Here is the paper abstract:

A hallmark capability that defines a renderer as a production renderer is the ability to scale to handle scenes with extreme complexity, including complex illumination cast by a vast number of light sources. In this paper, we present Cache Points, the system used by Disney’s Hyperion Renderer to perform efficient unbiased importance sampling of direct illumination in scenes containing up to millions of light sources. Our cache points system includes a number of novel features. We build a spatial data structure over points that light sampling will occur from instead of over the lights themselves. We do online learning of occlusion and factor this into our importance sampling distribution. We also accelerate sampling in difficult volume scattering cases.

Over the past decade, our cache points system has seen extensive production usage on every feature film and animated short produced by Walt Disney Animation Studios, enabling artists to design lighting environments without concern for complexity. In this paper, we will survey how the cache points system is built, works, impacts production lighting and artist workflows, and factors into the future of production rendering at Disney Animation.

The paper and related materials can be found at:

One extremely important thing that I tried to get across in the acknowledgements section of the paper and presentation and that I want to really emphasize here is: although I’m the lead author of this paper, I am not at all the lead developer or primary inventor of the cache points system. Over the past decade, many developers have since contributed to the system and the system has evolved significantly, but the core of cache points system was originally invented by Gregory Nichols and Peter Kutz, and the volume scattering extensions were primarily developed by Wei-Feng Wayne Huang. Since Greg, Peter, and Wayne are no longer at Disney Animation, Charlotte and I wound up spearheading the paper because we’re the developers who currently have the most experience working in the cache points system and therefore were in the best position to write about it.

The way this paper came about was somewhat circuitous and unplanned. This paper actually originated as a section in what was intended to have been a course at SIGGRAPH a few years ago on path guiding techniques, to have been presented by Intel’s graphics research group, Disney Research Studios, Disney Animation’s Hyperion team, WetaFX’s Manuka team, and Chaos Czech’s Corona team. However, because of scheduling and travel difficulties for several of the course presenters, the course wound up having to be withdrawn, and the material we had put together for presenting cache points got shelved. Then, as the DigiPro deadline started to approach this year, we were asked by higher ups in the studio if we had anything that could make a good DigiPro submission. After some thought, we realized that DigiPro was actually a great venue for presenting the cache points system because we could structure the paper and presentation as a combination of technical breakdown and production perspective from a decade’s worth of production usage. The final paper is a composed from three sources: a reworked version of what we had originally prepared for the abandoned course, a greatly expanded version of the material from our 2021 SIGGRAPH talk on our cache point based volume importance sampling techniques [Huang et al. 2021], and a bunch of new material consisting of production case studies and results on production scenes.

Overall I hope that the final paper is an interesting and useful read for anyone interested in light transport and production rendering, but I have to admit, I think that there are a couple of things I would have liked to rework and improve in the paper if we had more time. I think the largest missing piece from the paper is a direct head-to-head comparison with a light BVH approach [Estevez and Kulla 2018]; in the paper and presentation we discuss how our approach differs from light BVH approaches and why we chose our approach over a light BVH, but we don’t actually present any direct comparisons in the results. In the past we actually have more directly compared cache points to a light BVH implementation, but in the window we had to write this paper, we simply didn’t have enough time to resurrect that old test, bring it up to date with the latest code in the production renderer, and conduct a thorough performance comparison. Similarly, in the paper we mention that we actually implemented Vevoda et al. [2018]’s Bayesian online regression approach in Hyperion as a comparison point, but again, in the writing window for this paper, we just didn’t have time to put together a fair up-to-date performance comparison. I think that even without these comparisons our paper brings a lot of valuable information and insights (and evidently the paper referees agreed!), but I do think that the paper would be stronger had we found the time to include those direct comparisons. Hopefully at some point in the near future I can find time to do those direct comparisons as a followup and put out the results in a supplemental followup or something.

Another detail of the paper that sits in the back of my head for revisting is the fact that even though cache points provides correct unbiased results, a lot of the internal implementation details depend on essentially empirically derived properties. Nothing in cache points is totally arbitrary per se; in the paper we try to provide a strong rationale or justification for how we arrived upon each empirical property through logic and production experience. However, at least from an abstract mathematical perspective, the empirically derived stuff is nonetheless somewhat unsatisfying! On the other hand, however, in a great many ways this property is simply part of practical reality- what puts the production in production rendering.

A topic that I think would be a really interesting bit of future work is combining cache points with ReSTIR [Bitterli et al. 2020]. One of the interesting things we’ve found with ReSTIR is that in terms of absolute quality, ReSTIR generally can benefit significantly from higher quality initial input samples (as opposed to just uniform sampling), but the quality benefit is usually more than offset by the greatly increased cost of drawing better initial samples from something like a light BVH. Walking a light BVH on the GPU is a lot more computationally expensive than just drawing a uniform random number! One thought that I’ve had is that because cache points aren’t hierarchical, we could store them in a hash grid instead of a tree, allowing for fast constant-time lookups that might provide a better quality-vs-cost tradeoff that in turn might make use with ReSTIR feasible.

The presentation for this paper was an interesting challenge and a lot of fun to put together. Our paper is very much written with a core rendering audience in mind, but the presentation at the DigiPro conference had to be built for a more general audience because the audience at DigiPro includes a wide, diverse selection of people from all across computer graphics, animation, and VFX, with varying levels of technical background and varying levels of familiarity with rendering. The approach we took for the presentation was to keep things at a much higher level than the paper and try to convey the broad strokes of how cache points work and focus more on production results and lessons, while referring to the paper for the more nitty gritty details. We put a lot of work into including a lot of animations in the presentation to better illustrate how each step of cache points works; the way we used animations was directly inspired by Alexander Rath’s amazing SIGGRAPH 2023 presentation on Focal Path Guiding [Rath et al. 2023]. However, instead of building custom presentation software with a built-in 2D ray tracer like Alex did, I just made all of our animations the hard and dumb way in Keynote.

Another nice thing the presentation includes is a better visual presentation (and somewhat expanded version) of the paper’s results section. A recording of the presentation is available on both my project page for the paper and on the official Disney Animation website’s page for the paper. I am very grateful to Dayna Meltzer, Munira Tayabji, and Nick Cannon at Disney Animation for granting permission and making it possible for us to share the presentation recording publicly. The presentation is a bit on the long side (30 minutes), but hopefully is a useful and interesting watch!

References

Benedikt Bitterli, Chris Wyman, Matt Pharr, Peter Shirley, Aaron Lefohn, and Wojciech Jarosz. 2020. Spatiotemporal Reservoir Sampling for Real-Time Ray Tracing with Dynamic Direct Lighting. ACM Transactions on Graphics. 39, 4 (2020), 148:1-148:17.

Alejandro Conty Estevez and Christopher Kulla. 2018. Importance Sampling of Many Lights with Adaptive Tree Splitting. Proc. of the ACM on Computer Graphics and Interactive Techniques (Proc. of HPG). 1, 2 (2018), 25:1-25:17..

Wei-Feng Wayne Huang, Peter Kutz, Yining Karl Li, and Matt Jen-Yuan Chiang. 2021. Unbiased Emission and Scattering Importance Sampling for Heterogeneous Volumes. In ACM SIGGRAPH 2021 Talks. 3:1-3:2.

Alexander Rath, Ömercan Yazici, and Philipp Slusallek. 2023. Focus Path Guiding for Light Transport Simulation. In ACM SIGGRAPH 2023 Conference Proceedings. 30:1-30:10.

Petr Vévoda, Ivo Kondapaneni, and Jaroslav Křivánek. 2018. Bayesian Online Regression for Adaptive Direct Illumination Sampling. ACM Transactions on Graphics. 37, 4 (2018), 125:1-125:12.

Porting Takua Renderer to Windows on Arm

A few years ago I ported Takua Renderer to build and run on arm64 systems. Porting to arm64 proved to be a major effort (see Parts 1, 2, 3, and 4) which wound up paying off in spades; I learned a lot, found and fixed various longstanding platform-specific bugs in the renderer, and wound up being perfectly timed for Apple transitioning the Mac to arm64-based Apple Silicon. As a result, for the past few years I have been routinely building and running Takua Renderer on arm64 Linux and macOS, in addition to building and runninng on x86-64 Linux/Mac/Windows. Even though I take somewhat of a Mac-first approach for personal projects since I daily drive macOS, I make a point of maintaining robust cross-platform support for Takua Renderer for reasons I wrote about in the first part of this series.

Up unti recently though, my supported platforms list for Takua Renderer notably did not include Windows on Arm. There are two main reasons why I never ported Takua Renderer to build and run on Windows on Arm. The first reason is that Microsoft’s own support for Windows on Arm has up until recently been in a fairly nascent state. Windows RT added Arm support in 2012 but only for 32-bit processors, and Windows 10 added arm64 support in 2016 but lacked a lot of native applications and developer support; notably, Visual Studio didn’t gain native arm64 support until late in 2022. The second reason I never got around to adding Windows on Arm support is simply that I don’t have any Windows on Arm hardware sitting around and generally there just have not been many good Windows on Arm devices available in the market. However, with the advent of Qualcomm’s Oryon-based Snapdragon X SoCs and Microsoft’s push for a new generation of arm64 PCs using the Snapdragon X SoCs, all of the above finally seems to be changing. Microsoft also authorized arm64 editions of Windows 11 for use in virtual machines on Apple Silicon Macs at the beginning of this year. With Windows on Arm now clearly signaled as a major part of the future of Windows and clearly signaled as here to stay, and now that spinning up a Windows 11 on Arm VM is both formally supported and easy to do, a few weeks ago I finally got around to getting Takua Renderer up and running on native arm64 Windows 11.

Overall this process was very easy compared with my previous efforts to add support for arm64 Mac and Linux. This was not because porting architectures is easier on Windows but rather is a consequence of the fact that I had already solved all of the major architecture-related porting problems for Mac and Linux; the Windows 11 on Arm port just piggy-backed on those efforts. Because of how relatively straightforward this process was, this will be a shorter post, but there were a few interesting gotchas and details that I think are worth noting in case they’re useful to anyone else porting graphics stuff to Windows on Arm.

Note that everything in this post uses arm64 Windows 11 Pro 23H2 and Visual Studio 2022 17.10.x. Noting the specific versions used here is important since Microsoft is still actively fleshing out arm64 support in Windows 11 and Visual Studio 2022; later versions will likely see improvements to problems discussed in this post.

Figure 1: Takua Renderer running on arm64 Windows 11, in a virtual machine on an Apple Silicon Mac.

OpenGL on arm64 Windows 11

Takua has two user interface systems: a macOS-specific UI written using a combination of Dear Imgui, Metal, and AppKit, and a cross-platform UI written using a combination of Dear Imgui, OpenGL, and GLFW. On macOS, OpenGL is provided by the operating system itself as part of the standard system frameworks. On most desktop Linux distributions, OpenGL can be provided by several different sources: one option is entirely through the operating system’s provided Mesa graphics stack, another option is through a combination of Mesa for the graphics API and a proprietary driver for the backend hardware support, and the last option is entirely through a proprietary driver (such as with Nvidia’s official drivers). On Windows, however, the operating system does not provide modern OpenGL (“modern” meaning OpenGL 3.3 or newer), support whatsoever and the OpenGL 1.1 support that is available is a wrapper around Direct3D; modern OpenGL support on Windows has to be provided entirely by the graphics driver.

I don’t actually have any native arm64 Windows 11 hardware, so for this porting project, I ran arm64 Windows 11 as a virtual machine on two of my Apple Silicon Macs. I used the excellent UTM app (which under the hood uses QEMU) as the hypervisor. However, UTM does not provide any kind of GPU emulation/virtualization to Windows virtual machines, so the first problem I ran into was that my arm64 Windows 11 environment did not have any kind of modern OpenGL support due to the lack of a GPU driver with OpenGL. Therefore, I had no way to build and run Takua’s UI system.

Fortunately, because OpenGL is so widespread in commonly used applications and games, this is a problem that Microsoft has already anticipated and come up with a solution for. A few years ago, Microsoft developed and released an OpenGL/OpenCL Compatability Pack for Windows on Arm, and they’ve since also added Vulkan support to the compatability pack as well. The compatability pack is available for free on the Windows Store. Under the hood, the compatability pack uses a combination of Microsoft-developed client drivers and a bunch of components from Mesa to translate from OpenGL/OpenCL/Vulkan to Direct3D [Jiang 2020]. This system was originally developed to provide support for specifically Photoshop on arm64 Windows, but has since been expanded to provide general OpenGL 3.3, OpenCL 3.0, and Vulkan 1.2 support to all applications on arm64 Windows. Installing the compatability pack allowed me to get GLFW building and to get GLFW’s example demos working.

Takua’s cross-platform UI is capable of running either using OpenGL 4.5 on systems with support for the latest fanciest OpenGL API version, or using OpenGL 3.3 on systems that only have older OpenGL support (examples include macOS when not using the native Metal-based UI and include many SBC Linux devices such as Raspberry Pi). Since the arm64 Windows compatability pack only fully supports up to OpenGL 3.3, I set up Takua’s arm64 Windows build to fall back to only use the OpenGL 3.3 code path, which was enough to get things up and running. However, I immediately noticed that everything in the UI looked wrong; specifically, everything was clearly not in the correct color space.

The problem turned out to be that the Windows OpenGL/OpenCL/Vulkan compatability pack doesn’t seem to correctly implement GL_FRAMEBUFFER_SRGB; calling glEnable(GL_FRAMEBUFFER_SRGB) did not have any impact on the actual color space that the framebuffer rendered with. To work around this problem, I simply added software sRGB emulation to the output fragment shader and added some code to detect if GL_FRAMEBUFFER_SRGB was working or not and if not, fall back to the fragment shader’s implementation. Implementing the sRGB transform is extremely easy and is something that every graphics program inevitably ends up doing a bunch of times throughout one’s career:

float sRGB(float x) {
    if (x <= 0.00031308)
        return 12.92 * x;
    else
        return 1.055*pow(x,(1.0 / 2.4) ) - 0.055;
}

With this fix, Takua’s UI now fully works on arm64 Windows 11 and displays renders correctly:

Figure 2: The left window shows Takua running using glEnable(GL_FRAMEBUFFER_SRGB) and not displaying the render correctly, while the right window shows Takua running using sRGB emulation in the fragment shader.

Building Embree on arm64 Windows 11

Takua has a moderately sized dependency base, and getting all of the dependency base compiled during my ports to arm64 Linux and arm64 macOS was a very large part of the overall effort since arm64 support across the board was still in an early stage in the graphics field three years ago. However, now that libraries such as Embree and OpenEXR and even TBB have been building and running on arm64 for years now, I was expecting that getting Takua’s full dependency base brought up on Windows on Arm would be straightforward. Indeed this was the case for everything except Embree, which proved to be somewhat tricky to get working. I was surprised that Embree proved to be difficult, since Embree for a few years now has had excellent arm64 support on macOS and Linux. Thanks to a contribution from Apple’s Developer Ecosystem Engineer team, arm64 Embree now even has a neat double-pumped NEON option for emulating AVX2 instructions.

As of the time of writing this post, compiling Embree 4.3.1 for arm64 using MSVC 19.x (which ships with Visual Studio 2022) simply does not work. Initially just to get the renderer up and running in some form at all, I disabled Embree in the build. Takua has both an Embree-based traversal system and a standalone traversal system that uses my own custom BVH implementation; I keep both systems at parity with each other because Takua at the end of the day is a hobby renderer that I work on for fun, and writing BVH code is fun! However, a secondary reason for keeping both traversal systems around is because in the past having a non-Embree code path has been useful for getting the renderer bootstrapped on platforms that Embree doesn’t fully support yet, and this was another case of that.

Right off the bat, building Embree with MSVC runs into a bunch of problems with detecting the platform as being a 64-bit platform and also runs into all kinds of problems with including immintrin.h, which is where vector data types and other x86-64 intrinsics stuff is defined. After hacking my way through solving those problems, the next issue I ran into is that MSVC really does not like how Embree carries out static initialisation of NEON datatypes; this is a known problem in MSVC. Supposedly this issue was fixed in MSVC some time ago, but I haven’t been able to get it to work at all. Fixing this issue requires some extensive reworking of how Embree does static initialisation of vector datatypes, which is not a very trivial task; Anthony Roberts previously attempted to actually make these changes in support of getting Embree on Windows on Arm working for use in Blender, but eventually gave up since making these changes while also making sure Embree still passes all of its internal tests proved to be challenging.

In the end, I found a much easier solution to be to just compile Embree using Visual Studio’s version of clang instead of MSVC. This has to be done from the command line; I wasn’t able to get this to work from within Visual Studio’s regular GUI. From within a Developer PowerShell for Visual Studio session, the following worked for me:

cmake -G "Ninja" ../../ -DCMAKE_C_COMPILER="clang-cl" `
                        -DCMAKE_CXX_COMPILER="clang-cl" ` 
                        -DCMAKE_C_FLAGS_INIT="--target=arm64-pc-windows-msvc" `
                        -DCMAKE_CXX_FLAGS_INIT="--target=arm64-pc-windows-msvc" `
                        -DCMAKE_BUILD_TYPE=Release `
                        -DTBB_ROOT="[TBB LOCATION HERE]" `
                        -DCMAKE_INSTALL_PREFIX="[INSTALL PREFIX HERE]"

To do the above, of course you will need both CMake and Ninja installed; fortunately both come with pre-built arm64 Windows binaries on their respective websites. You will also need to install the “C++ Clang Compiler for Windows” component in the Visual Studio Installer application if you haven’t already.

Just building with clang is also the solution that Blender eventually settled on for Windows on Arm, although Blender’s version of this solution is a bit more complex since Blender builds Embree using its own internal clang and LLVM build instead of just using the clang that ships with Visual Studio.

An additional limitation in compiling Embree 4.3.1 for arm64 on Windows right now is that ISPC support seems to be broken. On arm64 macOS and Linux this works just fine; the ISPC project provides prebuilt arm64 binaries on both platforms, and even without a prebuilt arm64 binary, I found that running the x86-64 build of ISPC on arm64 macOS via Rosetta 2 worked without a problem when building Embree. However, on arm64 Windows 11, even though the x86-64 emulation system ran the x86-64 build of ISPC just fine standalone, trying to run it as part of the Embree build didn’t work for me despite me trying a variety of ways to get it to work. I’m not sure if this works with a native arm64 build of ISPC; building ISPC is a sufficiently involved process that I decided it was out of scope for this project.

Running x86-64 code on arm64 Windows 11

Much like how Apple provides Rosetta 2 for running x86-64 applications on arm64 macOS, Microsoft provides a translation layer for running x86 and x86-64 applications on arm64 Windows 11. In my post on porting to arm64 macOS, I included a lengthy section discussing and performance testing Rosetta 2. This time around, I haven’t looked as deeply into x86-64 emulation on arm64 Windows, but I did do some basic testing. Part of why I didn’t go as deeply into this area on Windows is because I’m running arm64 Windows 11 in a virtual machine instead of on native hardware- the comparison won’t be super fair anyway. Another part of why I didn’t go in as deeply is because x86-64 emulation is something that continues to be in an active state of development on Windows; Windows 11 24H2 is supposed to introduce a new x86-64 emulation system called Prism that Microsoft promises to be much faster than the current system in 23H2 [Mehdi 2024]. As of writing though, little to no information is available yet on how Prism works and how it improves on the current system.

The current system for emulating x86 and x86-64 on arm64 Windows is a fairly complex system that differs greatly from Rosetta 2 in a lot of ways. First, arm64 Windows 11 supports emulating both 32-bit x86 and 64-bit x86-64, whereas macOS dropped any kind of 32-bit support long ago and only needs to support 64-bit x86-64 on 64-bit arm64. Windows actually handles 32-bit x86 and 64-bit x86-64 through two basically completely different systems. 32-bit x86 is handled through an extension of the WoW64 (Windows 32-bit on Windows 64-bit) system, while 64-bit x86-64 uses a different system. The 32-bit system uses a JIT compiler called xtajit.dll [Radich et al. 2020, Beneš 2018] to translate blocks of x86 assembly to arm64 assembly and has a caching mechanism for JITed code blocks similar to Rosetta 2 to speed up execution of x86 code that has already been run through the emulation system before [Cylance Research Team 2019]. In the 32-bit system, overall support for providing system calls and whatnot are handled as part of the larger WoW64 system.

The 64-bit system relies on a newer mechanism. The core binary translation system is similar to the 32-bit system, but providing system calls and support for the rest of the surrounding operatin system doesn’t happen through WoW64 at all and instead relies on something that is in some ways similar to Rosetta 2, but is in other crucial ways radically different from Rosetta 2 or the 32-bit WoW64 approach. In Rosetta 2, arm64 code that comes from translation uses a completely different ABI from native arm64 code; the translated arm64 ABI contains a direct mapping between x86-64 and arm64 registers. Microsoft similarly uses a different ABI for translated arm64 code compared with native arm64 code; in Windows, translated arm64 code uses the arm64EC (EC for “Emulation Compatible”) ABI. Here though we find the first major difference between the macOS and Windows 11 approaches. In Rosetta 2, the translated arm64 ABI is an internal implementation detail that is not exposed to users or developers whatsoever; by default there is no way to compile source code against the translated arm64 ABI in Xcode. In the Windows 11 system though, the arm64EC ABI is directly available to developers; Visual Studio 2022 supports compiling source code against either the native arm64 or the translation-focused arm64EC ABI. Code built as arm64EC is capable of interoperating with emulated x86-64 code within the same process, the idea being that this approach allows developers to incrementally port applications to arm64 piece-by-piece while leaving other pieces as x86-64 [Sweetgall et al. 2023]. This… is actually kind of wild if you think about it!

The second major difference between the macOS and Windows 11 approaches is even bigger than the first. On macOS, application binaries can be fat binaries (Apple calls these universal binaries), which contain both full arm64 and x86-64 versions of an application and share non-code resources within a single universal binary file. The entirety of macOS’s core system and frameworks ship as universal binaries, such that at runtime Rosetta 2 can simply translate both the entirety of the user application and all system libraries that the application calls out to into arm64. Windows 11 takes a different approach- on arm64, Windows 11 extends the standard Windows portable executable format (aka .exe files) to be a hybrid binary format called arm64X (X for eXtension). The arm64X format allows for arm64 code compiled against the arm64EC ABI and emulated x86-64 code to interoperate within the same binary; x86-64 code in the binary is translated to arm64EC as needed. Pretty much every 64-bit system component of Windows 11 on Arm ships as arm64X binaries [Niehaus 2021]. Darek Mihocka has a fantastic article that goes into extensive depth about how arm64EC and arm64X work, and Koh Nakagawa has done an extensive analysis of this system as well.

One thing that Windows 11’s emulation system does not seem to be able to do is make special accomodations for TSO memory ordering. As I explored previously, Rosetta 2 gains a very significant performance boost from Apple Silicon’s hardware-level support for emulating x86-64’s strong memory ordering. However, since Microsoft cannot control and custom tailor the hardware that Windows 11 will be running on, arm64 Windows 11 can’t make any guarantees about hardware-level TSO memory ordering support. I don’t know if this situation is any different with the new Prism emulator running on the Snapdragon X Pro/Elite, but in the case of the current emulation framework, the lack of hardware TSO support is likely a huge problem for performance. In my testing of Rosetta 2, I found that Takua typically ran about 10-15% slower as x86-64 under Rosetta 2 with TSO mode enabled (the default) compared with native arm64, but ran 40-50% slower as x86-64 under Rosetta 2 with TSO mode disabled compared with native arm64.

Below are some numbers comparing running Takua on arm64 Windows 11 as a native arm64 application versus as an emulated x86-64 application. The tests used are the same as the ones I used in my Rosetta 2 tests, with the same settings as before. In this case though, because this was all running in a virtual machine (with 6 allocated cores) instead of directly on hardware, the absolute numbers are not as important as the relative difference between native and emulated modes:

  CORNELL BOX  
  1024x1024, PT  
Test: Wall Time: Core-Seconds:
Native arm64 (VM): 60.219 s approx 361.314 s
Emulated x86-64 (VM): 202.242 s approx 1273.45 s
  TEA CUP  
  1920x1080, VCM  
Test: Wall Time: Core-Seconds:
Native arm64 (VM): 244.37 s approx 1466.22 s
Emulated x86-64 (VM): 681.539 s approx 4089.24 s
  BEDROOM  
  1920x1080, PT  
Test: Wall Time: Core-Seconds:
Native arm64 (VM): 530.261 s approx 3181.57 s
Emulated x86-64 (VM): 1578.76 s approx 9472.57 s
  SCANDINAVIAN ROOM  
  1920x1080, PT  
Test: Wall Time: Core-Seconds:
Native arm64 (VM): 993.075 s approx 5958.45 s
Emulated x86-64 (VM): 1745.5 s approx 10473.0 s

The emulated results are… not great; for compute-heavy workloads like path tracing, x86-64 emulation on arm64 Windows 11 seems to to be around 1.7x to 3x slower than native arm64 code. These results are much slower compared with how Rosetta 2 performs, which generally sees only a 10-15% performance penalty over native arm64 when running Takua Renderer. However, a critical caveat has to be pointed out here: reportedly Windows 11’s x86-64 emulation works worse in a VM on Apple Silicon than it does on native hardware because Arm RCpc instructions on Apple Silicon are relatively slow. For Rosetta 2 this behavior doesn’t matter because Rosetta 2 uses TSO mode instead of RCpc instructions for emulating strong memory ordering, but since Windows on Arm does rely on RCpc for emulating strong memory ordering, this means that the results above are likely not fully representative of emulation performance on native Windows on Arm hardware. Nonetheless though, having any form of x86-64 emulation at all is an important part of making Windows on Arm viable for mainstream adoption, and I’m looking forward to see how much of an improvement the new Prism emulation system in Windows 11 24H2 brings. I’ll update these results with the Prism emulator once 24H2 is released, and I’ll also update these results to show comparisons on real Windows on Arm hardware whenever I actually get some real hardware to try out.

Conclusion

I don’t think that x86-64 is going away any time soon, but at the same time, the era of mainstream desktop arm64 adoption is here to stay. Apple’s transition to arm64-based Apple Silicon already made the viability of desktop arm64 unquestionable, and now that Windows on Arm is finally ready for the mainstream as well, I think we will now be living in a multi-architecture world in the desktop computing space for a long time. Having more competitors driving innovation ultimately is a good thing, and as new interesting Windows on Arm devices enter the market alongside Apple Silicon Macs, Takua Renderer is ready to go!

References

ARM Holdings. 2022. Load-Acquire and Store-Release instructions. Retrieved June 7, 2024.

Petr Beneš. 2018. Wow64 Internals: Re-Discovering Heaven’s Gate on ARM. Retrieved June 5, 2024.

Cylance Research Team. 2019. Teardown: Windows 10 on ARM - x86 Emulation. In BlackBerry Blog. Retrieved June 5, 2024.

Angela Jiang. 2020. Announcing the OpenCL™ and OpenGL® Compatibility Pack for Windows 10 on ARM. In DirectX Developer Blog. Retrieved June 5, 2024.

Yusuf Mehdi. 2024. Introducing Copilot+ PCs. In Official Microsoft Blog. Retrieved June 5, 2024.

Derek Mihocka. 2024. ARM64 Boot Camp. Retrieved June 5, 2024.

Koh M. Nakagawa. 2021. Discovering a new relocation entry of ARM64X in recent Windows 10 on Arm. In Project Chameleon. Retrieved June 5, 2024.

Koh M. Nakagawa. 2021. Relock 3.0: Relocation-based obfuscation revisited in Windows 11 on Arm. In Project Chameleon. Retrieved June 5, 2024.

Michael Niehaus. 2021. Running x64 on Windows 10 ARM64: How the heck does that work?. In Out of Office Hours. Retrieved June 5, 2024.

Quinn Radich, Karl Bridge, David Coulter, and Michael Satran. 2020. WOW64 Implementation Details. In Programming Guide for 64-bit Windows. Retrieved June 5, 2024.

Marc Sweetgall, Drew Batchelor, Scott Jones, and Matt Wojciakowski. 2023. Arm64EC - Build and port apps for native performance on ARM. Retrieved June 5, 2024.

Wikipedia. 2024. WoW64. Retrieved June 5, 2024.

SIGGRAPH 2023 Conference Paper- Progressive Null-tracking for Volumetric Rendering

This year at SIGGRAPH 2023, we have a conference-track technical paper in collaboration with Zackary Misso and Wojciech Jarosz from Dartmouth College! The paper is titled “Progressive Null-tracking for Volumetric Rendering” and is the result of work that Zackary did while he was a summer intern with the Hyperion development team last summer. On the Disney Animation side, Brent Burley, Dan Teece, and I oversaw Zack’s internship work, while on the the Dartmouth side, Wojciech was involved in the project as both Zack’s PhD advisor and as a consultant to Disney Animation.

Figure 1 from the paper: Most existing unbiased null-scattering methods for heterogeneous participating media require knowledge of a maximum density (majorant) to perform well. Unfortunately, bounding majorants are difficult to guarantee in production, and existing methods like ratio tracking and weighted delta tracking (top, left) suffer from extreme variance if the “majorant” (𝜇𝑡 =0.01) significantly underestimates the maximum density of the medium (𝜇𝑡 ≈3.0). Starting with the same poor estimate for a majorant (𝜇𝑡 = 0.01), we propose to instead clamp the medium density to the chosen majorant. This allows fast, low-variance rendering, but of a modified (biased) medium (top, center). We then show how to progressively update the majorant estimates (bottom row) to rapidly reduce this bias and ensure that the running average (top right) across multiple pixel samples converges to the correct result in the limit.

Here is the paper abstract:

Null-collision approaches for estimating transmittance and sampling free-flight distances are the current state-of-the-art for unbiased rendering of general heterogeneous participating media. However, null-collision approaches have a strict requirement for specifying a tightly bounding total extinction in order to remain both robust and performant; in practice this requirement restricts the use of null-collision techniques to only participating media where the density of the medium at every possible point in space is known a-priori. In production rendering, a common case is a medium in which density is defined by a black-box procedural function for which a bounding extinction cannot be determined beforehand. Typically in this case, a bounding extinction must be approximated by using an overly loose and therefore computation- ally inefficient conservative estimate. We present an analysis of how null-collision techniques degrade when a more aggressive initial guess for a bounding extinction underestimates the true maximum density and turns out to be non-bounding. We then build upon this analysis to arrive at two new techniques: first, a practical, efficient, consistent progressive algorithm that allows us to robustly adapt null-collision techniques for use with procedural media with unknown bounding extinctions, and second, a new importance sampling technique that improves ratio-tracking based on zero-variance sampling.

The paper and related materials can be found at:

One cool thing about this project is that this project both served as a direct extension of Zack’s PhD research area and served as a direct extension of the approach we’ve been taking to volume rendering in Disney’s Hyperion Renderer over the past 6 years. Hyperion has always used unbiased transmittance estimators for volume rendering (as opposed to biased ray marching) [Fong et al. 2017], and Hyperion’s modern volume rendering system is heavily based on null-collision theory [Woodcock et al. 1965]. We’ve put significant effort into making a null-collision based volume rendering system robust and practical in production, which led to projects such as residual ratio tracking [Novák et al. 2014], spectral and decomposition tracking [Kutz et al. 2017] and approaches for unbiased emission and scattering importance sampling in heterogeneous volumes [Huang et al. 2021]. Over the past decade, many other production renderers [Christensen et al. 2018, Gamito 2018, Novák et al. 2018] have similarly made the shift to null-collision based volume rendering because of the many benefits that the null-collision framework brings, such as unbiased volume rendering and efficient handling of volumes with lots of high-order scattering due to the null-collision framework’s ability to cheaply perform distance sampling. Vanilla null-collision volume rendering does have shortcomings, such as difficulty in efficiently sampling optically thin volumes due to the fact that null-collision tracking techniques produce a binary transmittance estimate that is super noisy. A lot of progress has been made in improving null-collision volume rendering’s efficiency and robustness in these thin volumes cases [Villemin and Hery 2013, Villemin et al. 2018, Herholz et al. 2019, Miller et al. 2019]; the intro to the paper goes into much more extensive detail about these advancements.

However, one major limitation of null-collision volume rendering that remained unsolved until this paper is that the null-collision framework requires knowing the maximum density, or bounding majorant of a heterogeneous volume beforehand. This is a fundamental requirement of null-collision volume rendering that makes using procedurally defined volumes difficult, since the maximum possible density value of a procedurally defined volume cannot be known a-priori without either putting into place a hard clamp or densely evaluating the procedural function. As a result, renderers that use null-collision volume rendering typically only support procedurally defined volumes by pre-rasterizing the procedural function onto a fixed voxel grid, à la the volume pre-shading in Manuka [Fascione et al. 2018]. The need to pre-rasterize procedural volumes negates a lot of the workflow and artistic benefits of using procedural volumes; this is one of several reasons why other renderers continue to use ray-marching based integrators for volumes despite the bias and loss of efficiency at handling high-order scattering. Inspired by ongoing challenges we were facing with rendering huge volume-scapes on Strange World at the time, we gave Zack a very open-ended challenge for his internship: brainstorm and experiment with ways to lift this limitation in null-collision volume rendering.

Zack’s PhD research coming into this internship revolved around deeply investigating the math behind modern volume rendering theory, and from these investigations, Zack had previously found deep new insights into how to formulate volumetric transmittance [Georgiev et al. 2019] and cool new ways to de-bias previously biased techniques such as ray marching [Misso et al. 2022]. Zack’s solution to the procedural volumes in null-collision volume rendering problem very much follows in the same trend as his previous papers; after initially attempting to find ways to adapt de-biased ray marching to fit into a null-collision system, Zack went back to first principles and had the insight that a better solution was to find a way to de-bias the result that one gets from clamping the majorant of a procedural function. This idea really surprised me when he first proposed it; I had never thought about the problem from this perspective before. Dan, Brent, and I were highly impressed!

In addition to the acknowledgements in the paper, I wanted to acknowledge here Henrik Falt and Jesse Erickson from Disney Animation, who spoke with Zack and us early in the project to help us better understand how better procedural volumes support in Hyperion could benefit FX artist workflows. We are also very grateful to Disney Animation’s CTO, Nick Cannon, for granting us permission to include example code implemented in Mitsuba as part of the paper’s supplemental materials.

One of my favorite images from this paper: a procedurally displaced volumetric Stanford bunny rendered using the progressive null tracking technique from the paper.

A bit of a postscript: during the Q&A session after Zack’s paper presentation at SIGGRAPH, Zack and I had a chat with Wenzel Jakob, Merlin Nimier-David, Delio Vicini, and Sébastien Speierer from EPFL’s Realistic Graphics Lab. Wenzel’s group brought up a potential use case for this paper that we hadn’t originally thought of. Neural radiance fields (NeRFs) [Mildenhall et al. 2020, Takikawa et al. 2023] are typically rendered using ray marching, but this is often inefficient. Rendering NeRFs using null tracking instead of ray marching is an interesting idea, but the neural networks that underpin NeRFs are essentially similar to procedural functions as far as null-collision tracking is concerned because there’s no way to know a tight bounding majorant for a neural network a-priori without densely evaluating the neural network. Progressive null tracking solves this problem and potentially opens the door to more efficient and interesting new ways to render NeRFs! If you happen to be interested in this problem, please feel free to reach out to Zack, Wojciech, and myself.

Getting to work with Zack and Wojciech on this project was an honor and a blast; I count myself as very lucky that working at Disney Animation continues to allow me to meet and work with rendering folks from across our field!

References

Brent Burley, David Adler, Matt Jen-Yuan Chiang, Hank Driskill, Ralf Habel, Patrick Kelly, Peter Kutz, Yining Karl Li, and Daniel Teece. 2018. The Design and Evolution of Disney’s Hyperion Renderer. ACM Transactions on Graphics. 37, 3 (2018), 33:1-33:22.

Per H. Christensen, Julian Fong, Jonathan Shade, Wayne L Wooten, Brenden Schubert, Andrew Kensler, Stephen Friedman, Charlie Kilpatrick, Cliff Ramshaw, Marc Bannister, Brenton Rayner, Jonathan Brouillat, and Max Liani. 2018. RenderMan: An Advanced Path Tracing Architecture for Movie Rendering. ACM Transactions on Graphics. 37, 3 (2018), 30:1-30:21.

Luca Fascione, Johannes Hanika, Mark Leone, Marc Droske, Jorge Schwarzhaupt, Tomáš Davidovič, Andrea Weidlich, and Johannes Meng. 2018. Manuka: A Batch-Shading Architecture for Spectral Path Tracing in Movie Production. ACM Transactions on Graphics. 37, 3 (2018), 31:1-31:18.

Julian Fong, Magnus Wrenninge, Christopher Kulla, and Ralf Habel. 2017. Production Volume Rendering. In ACM SIGGRAPH 2021 Courses. 2:1-2:97.

Manuel Gamito. Path Tracing the Framestorian Way. In SIGGRAPH 2018 Course Notes: Path Tracing in Production. 52-61.

Sebastian Herholz, Yangyang Zhao, Oskar Elek, Derek Nowrouzezahrai, Hendrik P A Lensch, and Jaroslav Křivánek. Volume Path Guiding Based on Zero-Variance Random Walk Theory. ACM Transactions on Graphics. 38, 3 (2019), 24:1-24:19.

Wei-Feng Wayne Huang, Peter Kutz, Yining Karl Li, and Matt Jen-Yuan Chiang. 2021. Unbiased Emission and Scattering Importance Sampling For Heterogeneous Volumes. In ACM SIGGRAPH 2021 Talks. 3:1-3:2.

Peter Kutz, Ralf Habel, Yining Karl Li, and Jan Novák. 2017. Spectral and Decomposition Tracking for Rendering Heterogeneous Volumes. ACM Transactions on Graphics. 36, 4 (2017), 111:1-111:16.

Ben Mildenhall, Pratul P. Srinivasan, Matthew Tancik, Jonathan T. Barron, Ravi Ramamoorthi, and Ren Ng. NeRF: Representing Scenes as Neural Radiance Fields for View Synthesis. In ECCV 2020: Proceedings of the 16th European Conference on Computer Vision. 405-421.

Bailey Miller, Iliyan Georgiev, and Wojciech Jarosz. 2019. A Null-Scattering Path Integral Formulation of Light Transport. ACM Transactions on Graphics. 38, 4 (@019), 44:1-44:13.

Jan Novák, Iliyan Georgiev, Johannes Hanika, and Wojciech Jarosz. 2018. Monte Carlo Methods for Volumetric Light Transport Simulation. Computer Graphics Forum. 37, 2 (2018), 551-576.

Jan Novák, Andrew Selle and Wojciech Jarosz. 2014. Residual Ratio Tracking for Estimating Attenuation in Participating Media. ACM Transactions on Graphics. 33, 6 (2014), 179:1-179:11.

Towaki Takikawa, Shunsuke Saito, James Tompkin, Vincent Sitzmann, Srinath Sridhar, Or Litany, and Alex Yu. Neural Fields for Visual Computing. In ACM SIGGRAPH 2023 Courses. 10:1-10:227.

Ryusuke Villemin and Christophe Hery. 2013. Practical Illumination from Flames. Journal of Computer Graphics Techniques. 2, 2 (2013), 142-155.

Ryusuke Villemin, Magnus Wrenninge, and Julian Fong. 2018. Efficient Unbiased Rendering of Thin Participating Media. Journal of Computer Graphics Techniques. 7, 3 (2018), 50-65.

E. R. Woodcock, T. Murphy, P. J. Hemmings, and T. C. Longworth. 1965. Techniques used in the GEM code for Monte Carlo neutronics calculations in reactors and other systems of complex geometry. In Applications of Computing Methods to Reactor Problems. Argonne National Laboratory.

SIGGRAPH 2022 Talk- "Encanto" - Let's Talk About Bruno's Visions

This year at SIGGRAPH 2022, Corey Butler, Brent Burley, Wei-Feng Wayne Huang, Benjamin Huang, and I have a talk that presents the technical and artistic challenges and solutions that went into creating the holographic look for Bruno’s visions in Encanto. In Encanto, Bruno is a character who has a magical gift of being able to see into the future, and the visions he sees of the future get crystalized into a sort of glassy emerald tablet with the vision embedded in the glassy surface with a holographic effect. Coming up with this unique look and an efficient and robust authoring workflow required a tight collaboration between visual development, lookdev, lighting, and the Hyperion rendering team to develop a custom solution in Disney’s Hyperion Renderer. On the artist side, Corey was the main lighter and Benjamin was the main lookdev artist for this project, while on the rendering team side, Wayne and I worked closely together to develop a series of prototype shaders that were instrumental in defining how the effect should look and then Brent came up with the implementation approach for the final production version of the shader. This project was a lot of fun to be a part of and in my opinion really demonstrates the benefits of having an in-house rendering team that works closely with and embedded within a production context.

An alternate, higher-res version of Figure 1 from the paper: creating the holographic look for Bruno’s visions required close collaboration between visdev, look, lighting, and technology. The final look for Bruno's visions required a new, bespoke teleportation shader developed in Disney's Hyperion Renderer

Here is the paper abstract:

In Walt Disney Animation Studios’ “Encanto”, Mirabel discovers the remnants of her Uncle Bruno’s mysterious visions of the future. Developing the look and lighting for the emerald shards required close collaboration between our Visual Development, Look Development, Lighting, and Technology departments to create a holographic effect. With an innovative new teleporting holographic shader, we were able to bring a unique and unusual effect to the screen.

The paper and related materials can be found at:

When Corey first came to the rendering team with the request for a more efficient way to create the hologram effect that lighting had prototyped using camera mapping, our initial instinct actually wasn’t to develop a new shader at all. Hyperion has an existing “hologram” shader that was developed for use on Big Hero 6 [Joseph et al. 2014], and our initial instinct was to tell Corey that they should use the hologram shader. The way the Big Hero 6 era hologram shader works is: upon hitting a surface that has the hologram shader applied, the ray is moved into a virtual space containing a bunch of imaginary parallel planes, with each plane textured with a 2D slice of a 3D interior. In some ways the hologram shader can be thought of as raymarching through a sparse volumetric representation of a 3D interior, but the sparse volumetric interior really is just a stack of 2D slices. This technique works really well for things like building interiors seen through glass windows. However, our artists… really dislike using the hologram shader, to put things lightly. The problem with the hologram shader is that setting up the 2D slices that are inputs to the shader is an incredibly annoying and difficult process, and since the 2D slice baker has to be run as an offline process before the shader can be authored and rendered, making changes and iterating on the contents of the hologram shader is a slow process. Furthermore, if the inside of the hologram shader has to be animated, the slice baker needs to be run for every frame. We were told in no uncertain terms that the hologram shader was likely more work to set up and iterate on than the already painful manual camera mapping approach that the artists had prototyped the effect with. This request also came to us fairly late in Encanto’s production schedule, so easy setup and fast iteration times along with an extremely accelerated development timeline were hard requirements for whatever approach we took.

Upon receiving this feedback, Wayne and I set out to prototype a version of the teleportation shader that Pixar came up with for the portals in Incredibles 2 [Coleman et al. 2014]. This process was a lot of fun; Wayne and I spent a few days rapidly iterating on several different ideas for both how to implement ray teleportation in Hyperion and on how the artist workflow and interface for this new teleportation system should work. At the same time that we were prototyping, we started giving test builds of our latest prototypes to Corey to try out, which produced a feedback loop where Corey would use our prototypes to further iterate on how the final effect would look and go back and forth with the movie’s production designer and we would use Corey’s feedback to further improve the prototype. One example of where our prototype directly informed the final look was in how the prophecies fade away towards the edges of the emerald tablet- Wayne and I threw in a feature where artists could use a map to paint in the ratio of teleportation effect versus normal surface BSDF that would be applied at each surface point, and this feature wound up driving the faded edges.

The key thing that made our new approach work better than the old hologram shader was in simplicity of setup. Instead of having to run a pre-bake process and then wire up a whole bunch of texture slices into the renderer, our new approach was designed so that all an artist had to do was set up the 3D geometry that they wanted to put inside of the hologram in a target space hidden somewhere in the overall scene (typically below the ground plane in a black box or something), and then select the geometry in the main scene that they wanted to act as the “entrance” portal, select the geometry in the target space that they wanted to act as the “exit” portal, and link the two using the teleportation shader. The renderer then did all of the rest of the work of figuring out how each point on the entrance portal corresponded to the surface of the exit portal, how transforms needed to be calculated, and so on and so forth. Multiple portal pairs could be set up in a single scene too, and the contents of a world seen through a portal could contain more portals, all of which was important because in the movie, Mirabel initially finds Bruno’s prophecy broken into shards, which had to be set up as a separate entrance portal per shard all into the same interior world. Since all of this just piggy-backed off of the normal way artists set up scenes, things like animation just worked out-of-the-box with no additional code or effort.

The last piece of the puzzle fell into place when Wayne and I discussed our progress with Brent. One of the big remaining challenges for us was that tracking correspondences between entrance and exit geometry and transforms was prone to easy breakage if input geometry wasn’t set up exactly the way we expected. At the time Brent was working on a new fracture-aware tessellation system for subdivision surfaces in Hyperion [Burley and Rodriguez 2022], and Brent quickly realized that the approach we were using for figuring out the transform from the entrance to the exit portal could be replaced with something he had already developed for the fracture-aware tessellation system. Specifically, the fracture-aware tessellation system has to be able to calculate correspondences between undeformed unfractured reference points and corresponding points in a deformed fractured fragment space; this is done using a best-fit process to find orthonormal transforms [Horn et al. 1998]. Brent realized that the problem we were trying to solve was actually the same problem he that he had already solved in the fracture system, so he took our latest prototype and reworked the internals to use the same best-fit orthonormal transform solution as in the fracturing system. With Brent’s improvements, we arrived at the final production version of the teleportation shader used on Encanto.

Going from the start of brainstorming and prototyping to delivering the final production version of the shader took us a little over a week, which anyone who has worked in an animation/VFX production setting before will know is very fast for a large new rendering feature. Working tightly with Corey and Benjamin to simultaneously iterate on the art and the software and inform each other was key to this project’s fast development time and key to achieving an amazing looking effect in the film. At Disney Animation, we have a mantra that goes “art challenges technology and technology inspires the art”- this project was a case that exemplifies how we carry out that mantra in real-world filmmaking and demonstrates the amazing results that come out of such a process. Bruno’s visions in Encanto are every bit a case where the artistic vision challenged us to develop new technology, and the process of iterating on the new technology between engineers and artists in turn informed the final artwork that made it into the movie; for me, projects like these are one of the things that makes Disney Animation such a fun and amazing place to be.

A short GIF showing two examples of the final effect. For many more examples, go watch Encanto on Disney+!

References

Brent Burley, David Adler, Matt Jen-Yuan Chiang, Hank Driskill, Ralf Habel, Patrick Kelly, Peter Kutz, Yining Karl Li, and Daniel Teece. 2018. The Design and Evolution of Disney’s Hyperion Renderer. ACM Transactions on Graphics. 37, 3 (2018), 33:1-33:22.

Brent Burley and Francisco Rodriguez. 2022. Fracture-Aware Tessellation of Subdivision Surfaces. In ACM SIGGRAPH 2022 Talks. 10:1-10:2.

Patrick Coleman, Darwyn Peachey, Tom Nettleship, Ryusuke Villemin, and Tobin Jones. 2018. Into the Voyd: Teleportation of Light Transport in Incredibles 2. In DigiPro ‘18: Proceedings of the 8th Annual Digital Production Symposium. 12:1-12:4.

Berthold K. P. Horn, Hugh M. Hilden, and Shahriar Negahdaripour. 1988. Close-Form Solution of Absolute Orientation using Orthonormal Matrices. Journal of the Optical Society of America A. 5, 7 (July 1988), 1127–1135.

Norman Moses Joseph, Brett Achorn, Sean D. Jenkins, and Hank Driskill. Visualizing Building Interiors Using Virtual Windows. In ACM SIGGRAPH Asia 2014 Technical Briefs. 18:1-18:4.

Encanto

For the first time since 2016, Walt Disney Animation Studios is releasing not just one animated feature in a year, but two! The second Disney Animation release of 2021 is Encanto, which marks a major milestone as Disney Animation’s 60th animated feature film. Encanto is a musical set in Colombia about a girl named Mirabel and her family: the amazing, fantastical, magical Madrigals. I’m proud of every Disney Animation project that I’ve had the privilege to work on, but I have to admit that this year was something different and something very special to me, because this year we completed both Raya and the Last Dragon and Encanto, which are together two of my favorite Disney Animation projects so far. Earlier this year, I wrote about the amazing work that went into Raya and the Last Dragon and why I loved working on that project; with Encanto now in theaters, I now get to share why I’ve loved working on Encanto so much as well!

Disney Animation feature films take many years and hundreds of people to make, and often the film’s story can remain in a state of flux for much of the film’s production. All of the above isn’t unusual; large-scale creative endeavors like filmmaking often entail an extremely complex and challenging process. More often than not, a film requires time and many iterations to really find its voice and gain that spark that makes it a great film. Encanto, however, is a film that a lot of my coworkers and I realized was going to be really special very early on in production. Now obviously, that hunch didn’t mean that making Encanto was easy by any means; every film requires tons of hard work from the most amazing, inspiring, talented artists and engineers that I know. But, I think in the end, that initial hunch about Encanto was proven correct: the finished Encanto has a story that is bursting with warmth and meaning, has one of Disney Animation’s best main characters to date with a huge cast of charming supporting characters, has the most beautiful, magical animation and visuals we’ve ever done, and sets all of the above to a wonderful soundtrack with a bunch of catchy, really cleverly written new songs. Both the production process and final film for Encanto were a strong reminder for me of why I love working on Disney Animation films in the first place.

From a technical perspective, Encanto also represents something very special in the history of Disney Animation’s continual advancements in animation technology. To understand why this is, a very brief history review about Disney Animation’s modern production pipeline and toolset is helpful. In retrospect, Disney Animation’s 50th animated feature film, Tangled, was probably one of the most important films the studio has ever made from a technical perspective, because the production of Tangled required a near-total ground-up rebuild of the studio’s production pipeline and tools that wound up laying the technical foundations for Disney Animation’s modern era. While every film we’ve made since Tangled has seen us make enormous technical strides in a variety of eras, the starting point of the production pipeline we’ve used and evolved for every CG film up until Encanto were put into place during Tangled. The fact that Encanto is Disney Animation’s 60th animated feature film is therefore fitting; Encanto is the first film made using the successor to the production pipeline that was first built for Tangled, and just like how Tangled laid the technical foundations for the subsequent ten films that followed, Encanto lays the technical foundations for many more future films to come! As presented in the USD Birds of a Feather session at SIGGRAPH 2021, this new production pipeline is built on the open-source Universal Scene Description project and brings massive upgrades to almost every piece of software and every custom tool that our artists use. An absolutely monumental amount of work was put into building a new USD-based world at Disney Animation, but I think the effort was extremely worthwhile: thanks to the work done on Encanto, Disney Animation is now well set up for another decade of technical innovation and another decade of pushing animation as a medium forward. I’m hoping that we’ll be able to present much more on this topic at SIGGRAPH 2022!

Moving to a new production pipeline meant also moving Disney’s Hyperion Renderer to work in the new production pipeline. To me, one of the biggest advantages of an in-house production renderer is the ability for the renderer development team to work extremely closely with other teams in the studio in an integrated fashion, and moving Hyperion to work well in the new USD-based world exemplifies just how important this collaboration is. We couldn’t have pulled off this effort without the huge amount of amazing work that engineers and TDs and artists from many other departments pitched in. However, having to move an existing renderer to a new pipeline isn’t the only impact on rendering that the new USD-based world has had. One of the most exciting things about the new pipeline is all of the new possibilities and capabilities that USD and Hydra unlocks; one of the biggest projects our rendering team worked on during Encanto’s production was a new, very exciting next-generation rendering project. I can’t talk too much about this project yet; all I can say is that we see it as a major step towards the future of rendering at Disney Animation, and that even in its initial deployment on Encanto, we’ve already seen huge fundamental improvements to how our lighters work every day. Hopefully we’ll be able to reveal more soon!

Of course, just because Encanto saw huge foundational changes to how we make movies doesn’t mean that there weren’t the usual fun and interesting show-specific challenges as well. Encanto presented many new, weird, fun problems for the rendering team to think about. Geometry fracturing was a major effect used extensively throughout Encanto, and in order to author and render fractured geometry as efficiently as possible, the rendering team had to devise some really clever new geometry-processing features in Hyperion. Encanto’s cinematography direction called for a beautiful, really colorful look that required pushing artistic controllability in our lighting capabilities even further, and to that end our team developed a bunch of cool new artistic control enhancements in Hyperion’s volume rendering and light shaping systems. One of my favorite show-specific challenges that I got to work on for Encanto was for the holographic effect in Bruno’s emerald crystal prophecies. For a variety of reasons, the artists wanted this effect done completely in-render; coming up with an in-render solution required many iterations and prototypes and experiments carried out over several months through a close collaboration between a number of artists and TDs and the rendering team. Encanto also saw continued advancements to Hyperion’s state-of-the-art deep-learning denoiser and stereo rendering solutions and saw continued advancements in Hyperion’s shading models and traversal system. These advancements helped us tackle many of the interesting complexity and scaling challenges that Encanto presented; effects like Isabella’s flowers and the glowing magical particles associated with the Madrigal family’s miracle pushed instancing counts to incredible new record levels, and for the first time ever on a Disney Animation film, we actually rendered some of the gorgeous costumes in the movie not as displaced triangle meshes with fuzz on top, but as actual woven curves at the thread-level. The latter proved crucial to creating the chiffon and tulle in Isabella’s outfit and was a huge part in creating the look of Mirabel’s characteristic custom-embroidered skirt. My mind was thoroughly blown when I saw those renders for the first time; on every film, I’m constantly amazed and impressed by what our artists can do with the tools we provide them with. Again, I’m hoping that we’ll be able to share much more about all of these things later; keep an eye on SIGGRAPH 2022!

Encanto also saw rendering features that we first developed for previous films pushed even further and used in interesting new ways. We first deployed a path guiding implementation in Hyperion back on Frozen 2, but path guiding wound up not seeing too much use on Raya and the Last Dragon since Raya’s setting was mostly outdoors, and path guiding doesn’t help as much in direct-lighting dominant scenarios such as outdoor scenes. However, since a huge part of Encanto takes place inside of the magical Madrigal casita, indoor indirect illumination was a huge component of Encanto’s lighting. We found that path guiding provided enormous benefits to render times in many indoor scenes, and especially in settings like the Madrigal family’s kitchen at night, where lighting was almost entirely provided by outdoor light sources coming in through windows and from candles and stuff. I think this case was a great example of how we benefit from how closely our lighting artists and our rendering engineers work together on many shows over time; because we had all worked together on similar problems before, we all had shared experiences with past solutions that we were able to draw on together to quickly arrive at a common understanding of the new challenges on Encanto. Another good example of how this collaboration continues to pay dividends over time is in the choices of lens and bokeh effects that were used on Encanto. For Raya and the Last Dragon, we learned a lot about creating non-uniform bokeh and interesting lensing effects, and what we learned on Raya in turn helped further inform early cinematography and lensing experiments on Encanto.

In addition to all of the cool renderer development work that I usually do, I also got to take part in something a little bit different on Encanto. Every year, the lighting department brings on a handful of trainees, who are put through several months of in-studio “lighting school” to learn our tools and pipeline and approach to lighting before lighting real shots on the film itself. This year, I got to join in with the lighting trainees while they were going through lighting training; this experience wound up being one of my favorites from the past year. I think that having to sit down and actually learn and use software the same way that the users have to is an extraordinarily valuable experience for any software engineer that is building tools for users. Even though I’ve been working at Disney Animation for six years now, and even though I know the internals of how our renderer works extensively, I still learned a ton from having to actually use Hyperion to light shots and address notes from lighting supervisors and stuff! Encanto’s lighting style required really leaning on the tools that we have for art-directing and pushing and modifying fully physical lighting, which really changed my perspective on some of these tools. For most rendering engineers and researchers, features that allow for breaking purely physical light transport are often seen as annoying and difficult to implement but necessary concessions to the artists. Having now used these features in order to hit artistic notes on short time frames though, I now have a better understanding of just how critical a component these features can be in an artist’s toolbox. I owe a huge amount of thanks to Disney Animation’s technology department leadership and to the lighting department for having made this experience possible and for having strongly supported this entire “exchange program”; I’d strongly recommend that every rendering engineer should go try lighting some shots sometime!

Finally, here are a handful of stills from the movie, 100% created using Disney’s Hyperion Renderer by our amazing artists. I’ve ordered the frames randomly, to try to prevent spoiling anything important. These frames showcase just how gorgeous Encanto looks, but since they’re pulled from only the marketing materials that have been released so far, they only represent a small fraction of how breathtakingly beautiful and colorful the total film is. Hopefully I’ll be able to share a bunch more cool and beautiful stills closer to SIGGRAPH 2022. I highly recommend seeing Encanto on the biggest screen you can; if you are a computer graphics enthusiast, go see it twice: the first time for the wonderful, magical story and the second time for the incredible artistry that went into every single shot and every single frame! I love working on Disney Animation films because Disney Animation is a place where some of the most amazing artists and engineers in the world work together to simultaneously advance animation as a storytelling medium, as a visual medium, and as a technology goal. Art being inspired by technology and technology being challenged by art is a legacy that is deeply baked into the very DNA of Disney Animation, and that approach is exemplified by every single frame in Encanto:

All images in this post are courtesy of and the property of Walt Disney Animation Studios.

Also, be sure to catch our new short, Far From the Tree, which is accompanying Encanto in theaters. Far From the Tree deserves its own discussion later; all I’ll write here is that I’m sure it’s going to be fascinating for rendering and computer graphics enthusiasts to see! Far From the Tree tells the story of a parent and child raccoon as they explore a beach; the short has a beautiful hand-drawn watercolor look that is actually CG rendered out of Disney’s Hyperion Renderer and extensively augmented with hand-crafted elements. Be sure to see Far From the Tree in theaters with Encanto!