Nightly Orchestrator #19
nightly_orchestrator.yml
on: schedule
Configure
3s
Matrix: benchmarks / benchmark
Matrix: docs / build-docs
Matrix: nightly-build / build-wheel-unix
Matrix: nightly-build / build-wheel-windows
Matrix: test-linux-habitat / tests
Waiting for pending jobs
Matrix: test-linux-libs / unittests-brax
Waiting for pending jobs
Matrix: test-linux-libs / unittests-chess
Waiting for pending jobs
Matrix: test-linux-libs / unittests-envpool
Waiting for pending jobs
Matrix: test-linux-libs / unittests-gendgrl
Waiting for pending jobs
Matrix: test-linux-libs / unittests-gym
Matrix: test-linux-libs / unittests-isaaclab
Waiting for pending jobs
Matrix: test-linux-libs / unittests-jumanji
Waiting for pending jobs
Matrix: test-linux-libs / unittests-minari
Waiting for pending jobs
Matrix: test-linux-libs / unittests-open_spiel
Waiting for pending jobs
Matrix: test-linux-libs / unittests-openx
Waiting for pending jobs
Matrix: test-linux-libs / unittests-procgen
Waiting for pending jobs
Matrix: test-linux-libs / unittests-robohive
Waiting for pending jobs
Matrix: test-linux-libs / unittests-roboset
Waiting for pending jobs
Matrix: test-linux-libs / unittests-sklearn
Matrix: test-linux-libs / unittests-smacv2
Waiting for pending jobs
Matrix: test-linux-libs / unittests-unity_mlagents
Waiting for pending jobs
Matrix: test-linux-libs / unittests-vd4rl
Waiting for pending jobs
Matrix: test-linux-libs / unittests-vmas
Waiting for pending jobs
Matrix: test-linux-llm / unittests-sglang
Waiting for pending jobs
Matrix: test-linux-llm / unittests-vllm
Waiting for pending jobs
Matrix: test-linux-sota / tests
Matrix: test-linux-tutorials / tests
Matrix: test-linux / test-setup-minimal
Matrix: test-linux / tests-cpu
Matrix: test-linux / tests-gpu-distributed
Matrix: test-linux / tests-gpu
Matrix: test-linux / tests-olddeps
Matrix: test-linux / tests-optdeps
Matrix: test-linux / tests-stable-gpu-distributed
Matrix: test-linux / tests-stable-gpu
Matrix: test-windows-optdepts / unittests-cpu
build-wheels-aarch64-linux
/
...
/
generate
5s
lint
/
...
/
linux-job
3m 28s
lint
/
...
/
linux-job
2m 30s
validate-test-partitioning
/
validate
2m 19s
test-linux-libs
/
...
/
job
test-linux-libs
/
...
/
job
Matrix: nightly-build / test-wheel-unix
Matrix: nightly-build / test-wheel-windows
Matrix: build-wheels-aarch64-linux / pytorch/rl
Matrix: build-wheels-linux / pytorch/rl
Matrix: build-wheels-m1 / build
Matrix: build-wheels-windows / build
Matrix: nightly-build / upload-wheel-unix
Matrix: nightly-build / upload-wheel-windows
Update Status Dashboard
3s
Annotations
100 errors
Artifacts
Produced during runtime
| Name | Size | Digest | |
|---|---|---|---|
|
docs
|
16.7 MB |
sha256:754758224de952ab201b7456f337e9cebdebb5a67c7a7f2f959f94080bf8688d
|
|
|
pytorch_rl__3.10_cpu_x86_64
|
1.98 MB |
sha256:9a0e8310c00a12acd153c77ff7f6ab02c9a3bae6082c6257d9be112885e71043
|
|
|
pytorch_rl__3.10_cu126_x86_64
|
1.98 MB |
sha256:781924d9b0ebe4d3867e15de7032d9d4a9a582d4e672bb19922044e5f1814bbf
|
|
|
pytorch_rl__3.10_cu128_x86_64
|
1.98 MB |
sha256:1a88a139a35523f50684a1f695e6bd131b45116f3fef79681de30ad0bf42e613
|
|
|
pytorch_rl__3.10_cu129_x86_64
|
1.98 MB |
sha256:f9aee32a8f684b82a93877bc37edf60810dbfe0395a85123a1a8b2fe7012bf2f
|
|
|
pytorch_rl__3.10_cu130_x86_64
|
1.98 MB |
sha256:d9be31b075bf05848511c6b0c436edbf953c02a063f5ee6085bc7bf896ae7b06
|
|
|
pytorch_rl__3.10_rocm7.1_x86_64
|
1.98 MB |
sha256:381e8bba318c7cdf72b135a8719708ebd6a7498c7131dcfffc4d5caedf032d81
|
|
|
pytorch_rl__3.10_rocm7.2_x86_64
|
1.98 MB |
sha256:b6726995d756ba91ae83419c2191f5e28d49ed2ec97753608eef748d83df9646
|
|
|
pytorch_rl__3.11_cpu_x86_64
|
1.98 MB |
sha256:ff3a01a1cccd93c0e9b748f2dfcfde25850e6b54634bc7dbe5812120a1b9d8b2
|
|
|
pytorch_rl__3.11_cu126_x86_64
|
1.98 MB |
sha256:6e2a508b641402283be5aeee734b4c97f02eddd186dfa24824a235be5906ee69
|
|
|
pytorch_rl__3.11_cu128_x86_64
|
1.98 MB |
sha256:0fee7cef4b30d41e9517b32e4837e6da82e7d9d7c25deb31b55bb5509fe20d65
|
|
|
pytorch_rl__3.11_cu129_x86_64
|
1.98 MB |
sha256:7ae1b8ca3eeb678ff8eccd0e2b2a0cb64ab59451b7583787b550916bad980498
|
|
|
pytorch_rl__3.11_cu130_x86_64
|
1.98 MB |
sha256:fdf2db5459082c9e072cc43dc93410efaefb3362aa93ec98b8ed1047bcc951b9
|
|
|
pytorch_rl__3.11_rocm7.1_x86_64
|
1.98 MB |
sha256:cb4a727ce10de54445c3be4bfe1db70960f2e580f103cff07f550eccde446464
|
|
|
pytorch_rl__3.11_rocm7.2_x86_64
|
1.98 MB |
sha256:5e38b10e1f2cd2291037a49ac4f687a53b57936a11e5b8c1200546a39d15ee1f
|
|
|
pytorch_rl__3.12_cpu_x86_64
|
1.98 MB |
sha256:9d75a1c07db3358ea5e464825080593e8063cf6a5d46cd9b600ca30f64064ed2
|
|
|
pytorch_rl__3.12_cu126_x86_64
|
1.98 MB |
sha256:10085b7a768caf31e05684e0c9b59b49100215d22a66195ecfdc663d15c20a7b
|
|
|
pytorch_rl__3.12_cu128_x86_64
|
1.98 MB |
sha256:f3415ce2065575a531603ea56b8695d748be538df7c7e7bb5e706d7e84cb650c
|
|
|
pytorch_rl__3.12_cu129_x86_64
|
1.98 MB |
sha256:1cb34ec17814518756a6dd0c0292a2c03b48cf0053c48bacb00fc8fda9aa406a
|
|
|
pytorch_rl__3.12_cu130_x86_64
|
1.98 MB |
sha256:bfcb641fa8abce9d15c89be93b0eb277ea36c488bd7960484bef9d87f15769ad
|
|
|
pytorch_rl__3.12_rocm7.1_x86_64
|
1.98 MB |
sha256:dbbe81dbc8d38e614c7f8c68d95c4807815371fe64d82044165456660735ea30
|
|
|
pytorch_rl__3.12_rocm7.2_x86_64
|
1.98 MB |
sha256:fdcc142b28444bf3f851bc3fc06db5b5752bd297bff793c64f48eb7201f6f647
|
|
|
pytorch_rl__3.13_cpu_x86_64
|
1.98 MB |
sha256:1200d3d49d838aa8e5a7b42cabf7a872360302ab96727d48467eedc904d1188d
|
|
|
pytorch_rl__3.13_cu126_x86_64
|
1.98 MB |
sha256:66791b6c64346d80765d8296eb30951596158a0186498266d3b17daa67fb9a29
|
|
|
pytorch_rl__3.13_cu128_x86_64
|
1.98 MB |
sha256:86a7acbb1c976b7686a84dd16d7c616771248ad67124117a0da4ae566e8b3192
|
|
|
pytorch_rl__3.13_cu129_x86_64
|
1.98 MB |
sha256:93dfadba0e56218b6ed2932d09165c447fd7adbaa0f0e70715d78c92a1c8e837
|
|
|
pytorch_rl__3.13_cu130_x86_64
|
1.98 MB |
sha256:a3339844e0b3839dc2adec55ef7437094338bd37c0d87b9d3453c518d070247e
|
|
|
pytorch_rl__3.13_rocm7.1_x86_64
|
1.98 MB |
sha256:55e168b698d7543a057aaafb14b78fb211844014055b97bac0873f4e4a6c9418
|
|
|
pytorch_rl__3.13_rocm7.2_x86_64
|
1.98 MB |
sha256:bfbe43992ba8e7856527e894ed04c3edfddddfbb363d523e138e7a5efbe02691
|
|
|
pytorch_rl__3.13t_cpu_x86_64
|
1.98 MB |
sha256:13a98a266b449f7bc518603f749c41179e38920eb41e10428aaa25cfb98ee627
|
|
|
pytorch_rl__3.13t_cu126_x86_64
|
1.98 MB |
sha256:522eb866aa5fdadd77ad0c38652114807031dd076e733a3041c7264d76b3a641
|
|
|
pytorch_rl__3.13t_cu128_x86_64
|
1.98 MB |
sha256:72e8fc5c7353aca03aacdc5f0b505a166d820b4145e4dca6140eec8aff544d31
|
|
|
pytorch_rl__3.13t_cu129_x86_64
|
1.98 MB |
sha256:81c9dfac87b70ecc1ef21b945e17d493ef0eb46e00338f47e7c2a9cbf5ea537e
|
|
|
pytorch_rl__3.13t_cu130_x86_64
|
1.98 MB |
sha256:db1107480314a67df2bd49f573d6f523dada17a481286efcf47847d5e07fd8e1
|
|
|
pytorch_rl__3.13t_rocm7.1_x86_64
|
1.98 MB |
sha256:e789742c86dadfd7551fdfdfa0583259943854d9a9e8ed208015bef96f343709
|
|
|
pytorch_rl__3.13t_rocm7.2_x86_64
|
1.98 MB |
sha256:c71d41dbacaa638abab4f7438524b4b73b165fd8cd9f6a5f23241c9c4dc6e4a0
|
|
|
pytorch_rl__3.14_cpu_x86_64
|
1.98 MB |
sha256:a6b4d537fcb48c515b419a1f847f0393f8afaa5ee7913740cec0545e8f4ef242
|
|
|
pytorch_rl__3.14_cu126_x86_64
|
1.98 MB |
sha256:cd827a0d5b8690266c784e3c277a32060f000f44f1d9c170388e0256cf888f4c
|
|
|
pytorch_rl__3.14_cu128_x86_64
|
1.98 MB |
sha256:84d67d32f47d6350034f0666f1a905739c38b114d5e2853671f5bc08fd70049c
|
|
|
pytorch_rl__3.14_cu129_x86_64
|
1.98 MB |
sha256:296eb59d01d7f01a00239572c92d8988635ff6bccdfe2fdd5b0cfefdb5f6cac9
|
|
|
pytorch_rl__3.14_cu130_x86_64
|
1.98 MB |
sha256:07741174025b1f78423d5e4bd87e23ef06edad84e798d0b69a5949a51762dd2e
|
|
|
pytorch_rl__3.14_rocm7.1_x86_64
|
1.98 MB |
sha256:b1cf9361212bece9731121917f3d317d64dcd75f45c85bd8d77be7c79a876f86
|
|
|
pytorch_rl__3.14_rocm7.2_x86_64
|
1.98 MB |
sha256:8d3413a17d5ad7c9ca29a8894428445fffec3b7e8b505877163e49038b68da84
|
|
|
pytorch_rl__3.14t_cpu_x86_64
|
1.98 MB |
sha256:1101cc7f50318134e6ba2aab752e7f91a85311e976a0f61c7b134962e4a847ab
|
|
|
pytorch_rl__3.14t_cu126_x86_64
|
1.98 MB |
sha256:7c42e73a64b3e440eaf3b702639ed3d21cc52fdcda320610a814620b2f7ec861
|
|
|
pytorch_rl__3.14t_cu128_x86_64
|
1.98 MB |
sha256:806e6496c9ac8cce837156bd478c76b19e293ee52490c14055e182c305067439
|
|
|
pytorch_rl__3.14t_cu129_x86_64
|
1.98 MB |
sha256:997dfedecbacfa15922d82e8b2d06d4e2d3b877b74b41ce4888974ad06c555df
|
|
|
pytorch_rl__3.14t_cu130_x86_64
|
1.98 MB |
sha256:b9546b8d776ae7ccabca8d749aa80d1f27711ca16247a7e9375e121b70b5143b
|
|
|
pytorch_rl__3.14t_rocm7.1_x86_64
|
1.98 MB |
sha256:b013940c808de8040e85ff35ec344bfc0275c938398513aeb475451e7c2728d3
|
|
|
pytorch_rl__3.14t_rocm7.2_x86_64
|
1.98 MB |
sha256:cfbce0d640a97d89ec50952cb5369c19401d4ccd722a60af477372d4e30b53c3
|
|
|
test-results-cpu-3.10
|
2.63 MB |
sha256:6c161a9f69ee014547250cc3574c5c729959825f1544bf39dccf24fc8c959bc9
|
|
|
test-results-cpu-3.11
|
2.5 MB |
sha256:dce5eb74a47717e37878dfa088f91d14867df5269ade069bc31f5d3337318137
|
|
|
test-results-cpu-3.12
|
2.5 MB |
sha256:5d1f70cc90dc9aee8647f066449c595515d11b7d67d2bc8199b11abd246123a7
|
|
|
test-results-cpu-3.13
|
2.5 MB |
sha256:af276b8bd31b1b1060a20fd3ba5e419a824a478eccd57a19a3d79003b2e564ca
|
|
|
test-results-cpu-3.14
|
2.45 MB |
sha256:19fb6952d0aea7f3ac33aa637540b828ab9bc03d19c885408df98e0ca7193801
|
|
|
test-results-gpu-distributed
|
151 KB |
sha256:adcfd34ee00116e5eb5dddcfea4ded28997817842f64afb7e94a48b529d6931e
|
|
|
test-results-gpu-shard-1
|
186 KB |
sha256:12396977cff681ec71706f472a75e3d018e9c27669a5f537b16db01f2e4f526b
|
|
|
test-results-gpu-shard-2
|
170 KB |
sha256:c2c6bec5d6a05785e8fe2b787d68652abde4190789f5fa3cde5fb1ecf5584aa2
|
|
|
test-results-gpu-shard-3
|
8.99 KB |
sha256:65b7b7734696f370465117dd0dc02d9186ac703801602d1e0e65256030fff4fe
|
|
|
test-results-optdeps
|
270 KB |
sha256:6227f0593edfd3d65059cb8304108cb278174c13146282860cfdd9c3428fd357
|
|
|
test-results-stable-gpu-distributed
|
151 KB |
sha256:3633da091d32e8282c33f4af2856614082f7ef1669c230ba5a6a8e7cd6315b0a
|
|
|
test-results-stable-gpu-shard-1
|
186 KB |
sha256:43a6f2a8eb9d47cb3735e8fbf3451347334d5bfab6e1001009850b55cf95bb68
|
|
|
test-results-stable-gpu-shard-2
|
170 KB |
sha256:3dc2c45314fe17e3d2db9c9018ac08215325fd0d85c30e8b50c9504355319e6f
|
|
|
test-results-stable-gpu-shard-3
|
9.07 KB |
sha256:4672865d1697cc2dae4ede23d3775f3497429b32181d813e41d86b645814fb93
|
|
|
torchrl-linux-3.10_cpu.whl
|
8.39 MB |
sha256:bf5a5f1b6e058b567ec6a2c4721e47adfd2ae068ebcd533c68b51a461e62540b
|
|
|
torchrl-linux-3.11_cpu.whl
|
8.42 MB |
sha256:b3a9ba7bd5f2fc3c46f74bf971d3058a7148484817cf8472c52bdb830b2f47ab
|
|
|
torchrl-linux-3.12_cpu.whl
|
8.4 MB |
sha256:bdae9913b60c67f6ada11ec20fe10881ec617a06f2c8e0af54a8c6bdece42207
|
|
|
torchrl-linux-3.13_cpu.whl
|
8.4 MB |
sha256:8088c82fe99fa2496f937bf3a65a769650d43fe0093cc2c329e9aa17ef2f7671
|
|
|
torchrl-linux-3.14_cpu.whl
|
8.39 MB |
sha256:33928b8a0f70c413429978f2faa35c3b16c8526095392d4028fd1e6452dff4ed
|
|
|
torchrl-macos-3.10_cpu.whl
|
2.2 MB |
sha256:2fcb09827f14ca974c549eb9a0b1740cf4657220694ed0a52de9344d59bce4a4
|
|
|
torchrl-macos-3.11_cpu.whl
|
2.2 MB |
sha256:956a77e02b889587fb3a530b890d428b4418eebad69b531c1190ffdb46f5ec8c
|
|
|
torchrl-macos-3.12_cpu.whl
|
2.19 MB |
sha256:ce803c8d3208ad7a0d1986c8353aa0c820d35118251f8b93dba476689420962b
|
|
|
torchrl-macos-3.13_cpu.whl
|
2.19 MB |
sha256:07aa63caaa7d8d0fb3b85d0216ec1e1d30aac85fb96ef03766c5deda3c233f19
|
|
|
torchrl-macos-3.14_cpu.whl
|
2.19 MB |
sha256:bdf8dd57091ce51616b15b934cbc119fd3bc55209c3ff43ec4e96574c35244ab
|
|
|
torchrl-win-3.10.whl
|
1.95 MB |
sha256:9390b762e2d93bf4db2e6260d31f5bf6af98e595aa7002119a9c2b6184122896
|
|
|
torchrl-win-3.11.whl
|
1.95 MB |
sha256:0bcb222bc6098c2444f98e6efd5d8fb5e19353089ec15be3c9b98538b8eda728
|
|
|
torchrl-win-3.12.whl
|
1.95 MB |
sha256:a31e4d9cc7a1b51f08df88f45b603a44a5f40359538f925749b1a370d7555323
|
|
|
torchrl-win-3.13.whl
|
1.95 MB |
sha256:071af237f2ce69f5dd1ce79298ec07fe5333de54f20040da0df762a07caaf56a
|
|
|
torchrl-win-3.14.whl
|
1.96 MB |
sha256:fc7d58d92060ec717c470c467823bf68f83a9c44baa7b64d5970ece31a1b9314
|
|