Date: Fri, 29 Mar 2024 08:42:17 +0000 (UTC)
Message-ID: <1541481297.549.1711701737262@ip-10-0-0-233.us-west-2.compute.internal>
Subject: Exported From Confluence
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Many of the settings in the Advanced Tab y=
ou will never need to edit. However, for the more advanced user who w=
ants fine tuned control over RenderMan for Maya, they are here.
Render Options
Output All Shaders: Typically we export only mater=
ial networks attached to objects, but if you're shading a procedural it may=
not be connected in a way that is exported. This option will export all ne=
tworks regardless.
Reentrant Procedural: This allows procedurals to r=
un simultaneously in multiple threads and greatly speed up renders with pro=
cedurals (hair). You most likely want to leave this on.
Output Holdout Matte: When using the Holdout workflow, output the Sh=
adow AOV to this specified buffer.
Enable Image Plane Filter: Render the image plane =
using the Pixar Image Plane Filter (Maya uses an actual geometric plane)
Learn Light Results: This a new option for scenes =
with many lights. The renderer will refine the light selection process to i=
mprove sampling. This is especially useful in scenes with many occluded lig=
hts to avoid wasting samples from shadowed surfaces. This version is not de=
terministic and small differences can be seen if not well converged on re-r=
enders of the same scene.
Bucket Order: RenderMan subdivides the output imag=
e into small rectangular regions called buckets, and renders a single bucke=
t at a time. This allows a small portion of the image to be in memory at an=
y one time. The drop-down list allows users to choose the order in which bu=
ckets are displayed in "it" or the Render View. The default is Spiral. Note=
that only some bucket orders are supported for checkpointing and recovery.
Bucket Size: Speci=
fy the size of the buckets. Larger buckets will require more memory to rend=
er. Conversely, smaller buckets are less efficient for shading, but will us=
e less memory during rendering. If your scene is using a lot of memory, you=
may want to try setting this field down to 8 by 8 or even 4 by 4 buckets, =
but most likely you will not change this.
Opacity Threshold: Controls the Opacity Threshold,=
if set too low, it may terminate rays early on semi-opaque objects. An obj=
ects opacity is controlled by the material Presence parameter and depth in =
supported integrators.
Reference Frame: O=
nce per job passes and static objects are evaluated at the frame d=
esignated here.
Adaptive Sampler
Adaptive Metric: Make use of the improved Variance=
sampling algorithm as the default. You can use the Contrast-V22 metric as =
the older technique to match previous renders. The new technique improves t=
he consistency of noise frame to frame. Extra options may be visible for ea=
ch selection.
-
- Contrast-V22: An older metric based on the contrast threshold between s=
amples, this will match sampling from recent previous versions
- Darkfalloff: used to prevent oversampling in dark areas of an image tha=
t may not be important
- Variance: An improved perceptual variance scheme that should provide co=
nsistent noise frame to frame
- Exposure: used to give a hint to the renderer that it should sample bas=
ed on this exposure bracket (assuming the compositing process stays within =
that range as not to reveal unsampled noise beyond the expected range)
Adapt All: Apply the sampling quality criteria (pi=
xel variance) to all color/illumination AOVs. This can increase render time=
as some AOVs may have more noise than the Beauty and trigger more samples =
through all the AOVs.
Dicing
Micropolygon Lenth: Controls the tessellation rate for =
displacement. The default setting of 1 will dice displacements to 1 p=
ixel's size. (As seen from the dicing camera, typically the render ca=
mera). Smaller numbers are finer geometric detail at the cost of creating m=
ore geometry.
Watertight Dicing: Closes pinholes in diced geomet=
ry or attempts to close gaps in displacement. Useful if you have holes in y=
our solid object alpha.
Dicing Camera: Enables the use of a reference came=
ra for dicing. This can be done globally, or restricted to specific objects=
(e.g. objects with displacements that "sparkle" as the camera moves) by al=
so attaching this as a per-object attribute.
Reference Camera: Specify the camera to be used as=
your dicing camera here. Click on the widget to create a new camera, or ri=
ght click in the field to select an existing camera. Note that the Referenc=
e Camera needs to be different from the render camera.
Hair
Min Hair Width: Sets a minimum width for hairs/RiC=
urves. Narrower hairs will be clamped to this value and their opacity will =
be reduced to compensate for the difference in visual weight. This may impr=
ove anti-aliasing quality if not too small.
Trace
Trace Auto Bias and Trace Bias: RenderMan will aut=
omatically compute a trace bias for displacing ray origins off a hit surfac=
e. However, if you wish to turn off the auto bias, you can set the bi=
as manually here. Per-object settings should have Auto Bias turned off. Inc=
rease the value slowly until the artifact (self-shadowing, dark lines, etc.=
) disappears.
Trace World Origin: Move the world origin for incr=
eased floating point precision for raytracing. Sometimes when rendering ver=
y large scenes, the camera is moved to a position quite far from the origin=
. This may introduce precision issues depending on your scene units, values=
exported to the renderer are very large in these cases. Possible values ar=
e:
- "world" (default) uses the true world origin
- "worldoffset" use user provided trace:worldoffset as the raytrace world=
origin ( the control will expose an XYZ coordinate field)
- "camera" use the camera position as the raytrace world origin, you may =
wish to use this in large scenes with multiple camera positions as the defa=
ult.
Open Shading Language
Enable Batched OSL: Enable performance improvement=
s on batched shading points through vectorized instructions on supported ha=
rdware. (Available on machines with a minimum of support for Advanced Vecto=
r Extensions (AVX). Additionally, it can take advantage of the 512-bit wide=
datapaths on machines that support Advance Vector Extensions 512 (AVX-512)=
. This is on by default
OSL Verbosity: Valid in ranges of 0 to 5 with 5 having =
the most messages. See the OSL documentation for more information.
OSL Statistics Level: As above, valid in ranges of 0 to=
5 with 5 having the most messages.
Deep Rendering
Quality: Controls the decimation rate of merging s=
amples. A setting of 1.0 has no merging of samples and will generate huge f=
iles. The default of 0.75 maps to Deepshadow Error 0.01 and when set to 0 m=
aps to Deepshadow Error 0.16. Note this is not a linear mapping.
Crop Window
Enable: Use the crop window, off (default) renders the =
complete frame based on camera settings
Top Left/Bottom Right: Specify the coordinates (x and Y=
) for a crop window to render. This can be useful when rendering many itera=
tions for debugging or lookdev when only a specific region is under conside=
ration. You may also use this to shift around the rendered region to tile t=
ogether a very large render (possibly for print) and send the different reg=
ions to a different render node. Please note using crop windows with the Px=
rVCM renderer may generate different results than a full frame since we onl=
y generate photons for the region being rendered as an optimization.
IES Profiles
Scene units to meters: While scenes are exported to ren=
derers "unitless", IES files specify a unit measure. Use this setting=
to specify the scene unit to meter conversion factor. For instance, =
if 1 unit =3D 1 meter, use 1. If 1 unit =3D 1cm use 100.
Ignore Watts: Ignore the internal watts measuremen=
t in the profile
Cache Sizes
Allows users to customize the cache sizes for various assets, including =
textures, ray-traced geometry (specifically the tessellation cache), and op=
acity (as a function of Presence in materials). The values are in megabytes=
, and the renderer will automatically unload data from the cache when the l=
imits specified here are reached. These values may be conservative based on=
your machine's available resources. If your render stats show many cache m=
isses (reloading and re-reading) and your overall usage is below your avail=
able memory, you may want to increase these values to improve performance, =
keeping them reasonable and within your memory budget.
Statistics
Level: Enable this to output diagnostic information from render jobs. Useful for t=
iming, debugging, and seeing what RenderMan is doing. Higher numbers are mo=
re verbosity. Note there can be a performance impact that adds up by requir=
ing the renderer to lookup these strings.
XML File: You can specify a target destination for both=
"Old School" and XML statistics.
LPE Lobe Mappings
This section maps the specified lobes to an output. You will notice in t=
he Light Path Expressi=
on documentation that per-lobe outputs rely on these being correct so w=
e recommend leaving them at their default. You may use User Lobes in custom=
C++ BxDFs.
Example: You will note in the defaults that Diffuse 3 Lobe ID is Subsurf=
ace. The corresponding LPE is:
color lpe:CD3[DS]*[<L.>O]
Note the D3 lobe specified. This matches the IDs assigned here.
There are no D1, S1, or U1 lobes as these are "fallthrough" when somethi=
ng is unspecified. User 2 Lobe are the collective Albedo results (texture d=
ata).
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