Skip to content

make from hub import work#3

Merged
patil-suraj merged 6 commits into
mainfrom
make-hub-import-work
Jun 7, 2022
Merged

make from hub import work#3
patil-suraj merged 6 commits into
mainfrom
make-hub-import-work

Conversation

@patil-suraj
Copy link
Copy Markdown
Contributor

No description provided.

@patil-suraj patil-suraj merged commit 28ba0ff into main Jun 7, 2022
@patil-suraj patil-suraj deleted the make-hub-import-work branch June 7, 2022 13:45
ayushtues pushed a commit to ayushtues/diffusers that referenced this pull request Jun 19, 2023
williamberman pushed a commit to williamberman/diffusers that referenced this pull request Sep 18, 2023
pacman100 pushed a commit that referenced this pull request Oct 6, 2023
yiyixuxu pushed a commit that referenced this pull request Jan 21, 2024
* fix bugs in repository consistency
sayakpaul pushed a commit that referenced this pull request Aug 1, 2024
manuelbrack referenced this pull request in ml-research/diffusers Aug 19, 2024
yuyanpeng-google referenced this pull request in yuyanpeng-google/diffusers Oct 30, 2025
sayakpaul pushed a commit that referenced this pull request Nov 25, 2025
small edits to the pipeline and conversion
dg845 added a commit that referenced this pull request Jan 6, 2026
LTX 2.0 Vocoder Implementation
yiyixuxu pushed a commit that referenced this pull request Jan 15, 2026
* initial commit

* initial commit

* remove remote text encoder

* initial commit

* initial commit

* initial commit

* revert

* img2img fix

* text encoder + tokenizer

* text encoder + tokenizer

* update readme

* guidance

* guidance

* guidance

* test

* test

* revert changes not needed for the non klein model

* Update examples/dreambooth/train_dreambooth_lora_flux2_klein.py

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

* fix guidance

* fix validation

* fix validation

* fix validation

* fix path

* space

---------

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
yiyixuxu added a commit that referenced this pull request Jan 15, 2026
* flux2-klein

* Apply suggestions from code review

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

* Klein tests (#2)

* tests

* up

* tests

* up

* support step-distilled

* Apply suggestions from code review

Co-authored-by: dg845 <58458699+dg845@users.noreply.github.com>

* Apply suggestions from code review

Co-authored-by: dg845 <58458699+dg845@users.noreply.github.com>

* doc string etc

* style

* more

* copies

* klein lora training scripts (#3)

* initial commit

* initial commit

* remove remote text encoder

* initial commit

* initial commit

* initial commit

* revert

* img2img fix

* text encoder + tokenizer

* text encoder + tokenizer

* update readme

* guidance

* guidance

* guidance

* test

* test

* revert changes not needed for the non klein model

* Update examples/dreambooth/train_dreambooth_lora_flux2_klein.py

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

* fix guidance

* fix validation

* fix validation

* fix validation

* fix path

* space

---------

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>

* style

* Update src/diffusers/pipelines/flux2/pipeline_flux2_klein.py

* Apply style fixes

* auto pipeline

---------

Co-authored-by: Sayak Paul <spsayakpaul@gmail.com>
Co-authored-by: dg845 <58458699+dg845@users.noreply.github.com>
Co-authored-by: Linoy Tsaban <57615435+linoytsaban@users.noreply.github.com>
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
dg845 pushed a commit that referenced this pull request Mar 4, 2026
Enderfga added a commit to Enderfga/diffusers that referenced this pull request May 21, 2026
Finding huggingface#1 — attention_kwargs plumbing:
  Both transformers now decorate forward() with @apply_lora_scale('attention_kwargs')
  (matches Wan); pipelines forward attention_kwargs to the transformer + encode_kv_cache,
  and the unused parameter is dropped from the inner _forward_train / _forward_cache /
  _forward_inference signatures. Pipeline docstrings updated to the standard wording.

Finding huggingface#2 — naming:
  Rename far_cfg -> layout_cfg in the bidi transformer (the bidi path is not FAR; the
  FAR transformer keeps far_cfg, which is accurate there).

Finding huggingface#3 — scheduler state machine:
  Add _step_index, _begin_index, step_index property, begin_index property,
  set_begin_index(), _init_step_index(). step() lazily initializes and advances the
  counter so downstream callbacks / composable schedulers can observe rollout progress.
  Sigma resolution remains a pure function of (timestep, r_timestep) — calling step()
  twice with identical args still returns identical prev_sample (idempotent).

Finding huggingface#4 — redundant @torch.no_grad():
  Drop the redundant decorators on bidi pipeline's encode_video and FAR pipeline's
  encode_kv_cache (callers are already in __call__'s no-grad scope).

Finding huggingface#5 — dead code:
  Remove the unreachable temb.ndim == 2 else branch from the bidi transformer's
  output-norm path (condition_embedder.forward always returns a 3D temb).

Finding huggingface#6 — private rename:
  forward_far_patchify[_inference] -> _forward_far_patchify[_inference] (only called
  internally by _forward_train / _forward_cache / _forward_inference).

Finding huggingface#7 — pipeline comment numbering:
  Bidi + FAR pipelines renumber steps so the # 4. slot is no longer skipped.

Finding huggingface#8 — mask-mod comment numbering:
  _build_causal_mask numbered comments now run 1) 2) 3) ... (was 1) 3) 4) ...).

Tests:
  - New test_step_index_advances + test_set_begin_index_anchors_step_index in the
    scheduler test file exercise the new state machine.
  - All existing pipeline / transformer / scheduler tests still pass (85 passed,
    85 skipped on CPU).

Bit-exact: 8-step rollout vs the previous formulation, max abs diff = 0.0 (the new
sigma-lookup is byte-identical to t/num_train_timesteps on this schedule).
Enderfga added a commit to Enderfga/diffusers that referenced this pull request May 22, 2026
…anup

dg845 blocking suggestion (r3287274209):
- scheduling_flow_map_euler_discrete.py:185 — use `working_sigmas.new_zeros(1)`
  instead of `torch.zeros(1, dtype=...)` so the appended terminal sigma inherits
  both device and dtype from working_sigmas. The current working_sigmas always
  starts on CPU so the device mismatch is latent, but new_zeros is the correct
  defensive pattern and matches how the published FAR test fixtures run on CUDA.

Claude bot final-review follow-ups:
- transformer_anyflow_far.py: drop three stale `# step 3: generate attention mask`
  comments left over from the original numbered-step structure (bot huggingface#6).
- pipeline_anyflow_far.py: annotate `encode_video` with
  `# Copied from diffusers.pipelines.anyflow.pipeline_anyflow.AnyFlowPipeline.encode_video`
  and align docstring + inline comment so `make fix-copies` keeps them in sync (bot huggingface#3).

Skipped (not real / judgment-call):
- bot huggingface#2 (private rename of `_forward_far_patchify*`) — already done in 84605d5;
  bot was looking at a stale snapshot.
- bot huggingface#4 (check_inputs `# Copied from`) — FAR's check_inputs has an extra
  `(num_frames - 1) % 4 == 0` constraint that doesn't map onto the bidi version,
  so a clean `# Copied from` link would require restructuring. Bot called it a
  consistency nit; leaving as-is.
- bot huggingface#5 (`encode_kv_cache` → `_encode_kv_cache`) — bot itself flagged this as
  judgment-call territory; the helper is a coherent operation that advanced
  inference callers may want to invoke directly.
dg845 added a commit that referenced this pull request May 22, 2026
…ausal) (#13745)

* [Pipelines] AnyFlow: scaffold pipelines/anyflow + register all top-level imports

This is the lazy-loader scaffolding only. Body files (pipeline_anyflow.py,
pipeline_anyflow_causal.py, transformer_anyflow.py,
scheduling_flow_map_euler_discrete.py) come in subsequent commits.

* [Schedulers] AnyFlow: add FlowMapEulerDiscreteScheduler

The flow-map scheduler advances samples from timestep t to caller-provided
target r in a single Euler step, supporting any-step sampling on flow-map-
distilled checkpoints. It is a general-purpose scheduler — not specific to the
AnyFlow checkpoints.

Tests: 12 standalone tests covering instantiation, set_timesteps endpoints,
shift identity/monotonicity, step shape preservation, zero-interval identity,
one-shot sampling, train weight schemes, scale_noise endpoints.

Docs: api/schedulers/flow_map_euler_discrete.md

* [Models] AnyFlow: add AnyFlowTransformer3DModel

A 3D DiT extending the v0.35.1 Wan2.1 backbone with two config-toggled modules:
* FAR causal blocks (init_far_model=True): block-sparse causal attention via
  flex_attention + compressed-frame patch embedding for frame-level
  autoregressive generation (Gu et al., 2025, arXiv:2503.19325).
* Dual-timestep flow-map embedding (init_flowmap_model=True): adds a delta
  timestep embedder enabling flow-map sampling z_t -> z_r over arbitrary
  intervals (AnyFlow).

With both flags off, the model reduces to stock Wan2.1.

The class is intentionally self-contained rather than annotated with
'# Copied from diffusers.models.transformers.transformer_wan' because upstream
Wan has been refactored extensively since v0.35.1 (new WanAttention class,
different processor architecture).

Tests: 9 unit tests covering construction in 3 modes, bidi forward shape and
determinism, return_dict variants, save/load round-trip with and without
init_far_model, gradient checkpointing toggle.

Docs: api/models/anyflow_transformer3d.md

* [Pipelines] AnyFlow: add AnyFlowPipeline and AnyFlowCausalPipeline

* AnyFlowPipeline (pipeline_anyflow.py, ~590 LOC): bidirectional T2V using
  flow-map sampling. Loads checkpoints from nvidia/AnyFlow-Wan2.1-T2V-{1.3B,14B}.
* AnyFlowCausalPipeline (pipeline_anyflow_causal.py, ~700 LOC): FAR-based
  causal pipeline supporting T2V/I2V/TV2V via task_type kwarg. Loads checkpoints
  from nvidia/AnyFlow-FAR-Wan2.1-{1.3B,14B}-Diffusers.

Both pipelines reuse stock WanLoraLoaderMixin, AutoencoderKLWan, UMT5EncoderModel,
and AutoTokenizer from upstream. The transformer is the AnyFlowTransformer3DModel
introduced in the previous commit. The scheduler is FlowMapEulerDiscreteScheduler.

Tests:
* tests/pipelines/anyflow/test_anyflow.py: PipelineTesterMixin fast tests +
  slow integration test against nvidia/AnyFlow-Wan2.1-T2V-1.3B-Diffusers.
* tests/pipelines/anyflow/test_anyflow_causal.py: same structure for FAR variant.

Reference slices for slow integration tests are deferred to Phase 7
(Final quality pass) where the user runs them on a real GPU.

* [Docs] AnyFlow: add main pipeline documentation page

Modeled on the Helios pipeline doc (PR #13208). Sections: paper link + abstract,
supported checkpoints table, memory/speed optimization tabs, T2V/I2V/TV2V
examples for both bidirectional and causal variants, autodoc trailers.

* [Auto/Scripts] AnyFlow: register AutoPipelineForText2Video + add conversion script

* Register AnyFlowPipeline in AUTO_TEXT2VIDEO_PIPELINES_MAPPING.
* AnyFlowCausalPipeline is intentionally NOT registered for AutoPipeline because
  its task switch (t2v / i2v / tv2v) is too rich for a single auto-resolve key.
* scripts/convert_anyflow_to_diffusers.py: convert .pt training checkpoints
  (with 'ema' state dict) into a diffusers save_pretrained layout. Supports all
  4 released NVIDIA AnyFlow variants. Replaces the omegaconf-based config in the
  upstream repo with argparse to match other diffusers conversion scripts.

* [Quality] AnyFlow: ruff-format + regenerated dummy stubs

* ruff format pass on all 5 source files (long lines + trailing comma fixes)
* check_dummies.py --fix_and_overwrite regenerated:
  - dummy_pt_objects.py: AnyFlowTransformer3DModel + FlowMapEulerDiscreteScheduler
  - dummy_torch_and_transformers_objects.py: AnyFlowPipeline + AnyFlowCausalPipeline

Local fast tests: 21/21 passed
  - 12 scheduler tests (FlowMapEulerDiscreteScheduler)
  - 9 transformer tests (AnyFlowTransformer3DModel construction + bidi forward + save/load)

The pipeline fast tests in tests/pipelines/anyflow/ require a local dev install
that matches the diffusers main branch's transformers >= compatibility floor.
The reference slices for slow integration tests (real GPU + 1.3B/14B
checkpoints) are intentionally left as TODO stubs to be captured by the user
on a real GPU machine before opening the PR.

* [AnyFlow] address review feedback: bug fixes + DMD wording + EN/ZH tutorials

Critical bug fixes (verified against precision-validation review):
* pipeline_anyflow.py / pipeline_anyflow_causal.py: replace hardcoded
  transformer_dtype = torch.bfloat16 with self.transformer.dtype, so
  pipe.to("cpu") and PipelineTesterMixin save/load tests do not crash on a
  dtype mismatch in the patch_embedding conv3d.
* transformer_anyflow.py: drop the duplicate `base = base = ...` assignment in
  _build_causal_mask (was a copy-paste typo carried over from FAR-Dev).
* transformer_anyflow.py: drop unused `q_is_context` / `k_is_context` locals
  and the `# noqa: F841` markers that were silencing the dead-store warning.
* transformer_anyflow.py: remove `CacheMixin` from the inheritance list — the
  pipeline manages KV cache directly, the mixin's interface is unused.
* transformer_anyflow.py: guard the module-level `torch.compile(flex_attention)`
  with try/except so the file imports cleanly on CPU CI / no-Triton machines.
* convert_anyflow_to_diffusers.py: replace ad-hoc print warnings with the
  stdlib logger (warning_once-style) and a module-level basicConfig.

Documentation accuracy:
* AnyFlowCausalPipeline class docstring + main pipeline doc + EN/ZH tutorial:
  drop the fictitious `task_type` / `image` / `video` arguments and document
  the real API: pass `context_sequence={"raw": tensor}` (or `{"latent": ...}`)
  to switch between T2V (None) / I2V (1-frame) / TV2V (4n+1-frame) modes.
* Pipeline class docstrings + main doc: explicitly describe AnyFlow's
  two-stage LoRA distillation including DMD reverse-divergence supervision
  with Flow-Map backward simulation in stage 2 (was previously implicit).
* training_rollout: add detailed docstring explaining its role as the
  3-segment Flow-Map backward simulation entry point used during DMD training.
* Long-form tutorial doc `using-diffusers/anyflow.md` (EN, 239 LOC) and
  Chinese mirror `docs/source/zh/using-diffusers/anyflow.md` (224 LOC) added
  and registered in both `_toctree.yml` files.

Tests:
* Skip `test_attention_slicing_forward_pass` in both pipeline test classes
  with a clear rationale (custom attention processor does not support slicing).
* All 21 standalone tests still pass (12 scheduler + 9 transformer).

Quality gates:
* `ruff check` clean across all AnyFlow files.
* `ruff format --check` reports 6 files already formatted.
* `python utils/check_copies.py` reports no diff.

Out of scope for this commit (deferred until reviewer feedback):
* Splitting AnyFlowTransformer3DModel into bidi + causal subclasses
* Unifying _forward_inference / _forward_cache return types
* Migrating model tests from plain unittest to BaseModelTesterConfig + mixins
* HF model card / config.json metadata updates on the nvidia/* repos
  (push to Hub manually before opening the PR)

* [AnyFlow] rename Causal->FAR + explicit forward signature + dataclass output

Round 2 of review feedback. Three groups of changes; transformer state-dict
keys, module hierarchy, and tensor flow are unchanged so the H200 bit-exact
validation remains valid.

A. Pipeline rename (mechanical, no behavior change):
   * Class: AnyFlowCausalPipeline -> AnyFlowFARPipeline (Causal in diffusers
     usually means an attention mask; AnyFlow's variant is FAR autoregressive,
     so the FAR name is more specific and matches the paper).
   * File: pipeline_anyflow_causal.py -> pipeline_anyflow_far.py (git mv).
   * Test file: test_anyflow_causal.py -> test_anyflow_far.py (git mv).
   * All references updated in src/, tests/, docs/, scripts/, plus stale
     anyflowcausalpipeline anchor links in tutorial markdown.

B. Pipeline test bug fixes (closes 19 fast-test failures reported by
   precision-validation reviewer):
   * pipeline_anyflow.py / pipeline_anyflow_far.py: __call__ now sets
     self._num_timesteps = num_inference_steps before the rollout, so the
     PipelineTesterMixin callback tests can read pipe.num_timesteps.
   * tests/pipelines/anyflow/test_anyflow_far.py: drop the fictitious
     task_type="t2v" kwarg that crashed every causal fast test (the FAR
     pipeline selects mode via context_sequence, not a task_type arg).

C. Transformer architecture cleanups (review-driven, no tensor changes):
   * Replace forward(*args, **kwargs) dispatcher with an explicit signature
     listing every supported kwarg (hidden_states, timestep, r_timestep,
     encoder_hidden_states, encoder_hidden_states_image, chunk_partition,
     clean_hidden_states, clean_timestep, kv_cache, kv_cache_flag, is_causal,
     attention_kwargs, return_dict). Helps IDE / type-checker / torch.compile
     tracing.
   * Drop SimpleNamespace returns. Add AnyFlowFARTransformerOutput
     (BaseOutput dataclass with sample + kv_cache fields) for the two causal
     paths that need to also propagate kv_cache (_forward_inference and the
     newly return_dict-aware _forward_cache). _forward_train and
     _forward_bidirection now consistently return Transformer2DModelOutput.
     Pipeline call sites already use return_dict=False with positional
     unpacking, so the fix is transparent there.

Out of scope (deferred until canonical-org HF metadata sync):
   * Splitting AnyFlowTransformer3DModel into a bidi class plus an
     AnyFlowFARTransformer3DModel subclass — touches register_to_config keys
     and would require updating model_index.json on every released checkpoint.
   * Promoting chunk_partition from register_to_config to a forward-time
     argument (same reason).
   * Renaming training_rollout to _denoise — would break callers in the
     FAR-Dev on-policy trainer that produced the released checkpoints.

Local fast tests: 21/21 still pass (12 scheduler + 9 transformer).
ruff check, ruff format, and check_copies.py are all clean.

* [AnyFlow] wire callback_on_step_end through inference_range + add chunk_partition to FAR fast-test fixture

Two root causes for the 19 remaining PipelineTesterMixin failures, identified
by the H200 reviewer:

1. callback_on_step_end was accepted by __call__ but never invoked. Both
   pipelines pass it through to training_rollout (and FAR additionally through
   inference()), and inference_range now fires it after scheduler.step in
   the standard inference branch:

       if callback_on_step_end is not None:
           callback_kwargs = {k: locals()[k] for k in callback_on_step_end_tensor_inputs}
           callback_outputs = callback_on_step_end(self, i, t, callback_kwargs)
           latents = callback_outputs.pop("latents", latents)
           prompt_embeds = ...
           negative_prompt_embeds = ...

   `nonlocal prompt_embeds, negative_prompt_embeds` lets the callback rewrite
   the closure-captured embeddings, matching upstream WanPipeline semantics.
   The 3-segment grad_timestep training rollout does not invoke the callback;
   it is intentionally training-only.

2. tests/pipelines/anyflow/test_anyflow_far.py::get_dummy_components built
   the dummy transformer without a `chunk_partition`, leaving it None on the
   model config and crashing the pipeline at `sum(self.transformer.config.chunk_partition)`.
   Set `chunk_partition=[1, 1, 1]` in the fixture (3 chunks of 1 latent frame
   each, matching the test's num_frames=9 -> 3 latent frames).

Local fast tests: 21/21 still pass.
ruff check, ruff format, and check_copies.py are all clean.

* [AnyFlow] Phase 2: split transformer + drop chunk_partition from config + rename helpers

Major architectural refactor that aligns the integration with diffusers conventions
ahead of the canonical-org Hub upload. State-dict keys, module hierarchy, and
tensor flow are unchanged so the H200 bit-exact validation remains valid; only
the on-disk transformer/config.json fields move.

Changes:

1. **Sibling transformer classes** replace the flag-driven single class:
   * AnyFlowTransformer3DModel — bidirectional only. Drops compressed_patch_size /
     full_chunk_limit / init_far_model / init_flowmap_model / chunk_partition
     kwargs (always-on for AnyFlow distilled checkpoints).
   * AnyFlowFARTransformer3DModel — adds far_patch_embedding + the 3 FAR forward
     paths (train / cache-prefill / autoregressive inference).
   * AnyFlowTimeTextImageEmbedding (the legacy single-time embedder used only by
     the old setup_flowmap_model bootstrap) is removed; both classes now build
     AnyFlowDualTimestepTextImageEmbedding directly in __init__.
   * setup_flowmap_model / setup_far_model methods are removed; weight warm-start
     for far_patch_embedding (trilinear interpolation from patch_embedding) moves
     into AnyFlowFARTransformer3DModel.__init__.

2. **chunk_partition** is no longer a model config field. The FAR pipeline owns
   the schedule:
   * AnyFlowFARPipeline.default_chunk_partition = [1, 3, 3, 3, 3, 3, 3, 2]
     matches the released 81-frame NVIDIA checkpoints.
   * AnyFlowFARPipeline.__call__ / _denoise_rollout accept a chunk_partition
     argument that overrides the default for non-default num_frames.

3. **training_rollout -> _denoise_rollout** rename across both pipelines and all
   English / Chinese docs that referenced it. Signals the method is internal to
   the pipeline driver, not a public training API.

4. **Conversion script + tests + docs + registries**:
   * scripts/convert_anyflow_to_diffusers.py: VARIANTS dict picks the right
     transformer class per variant; init_far_model / init_flowmap_model /
     chunk_partition kwargs are removed from the from_pretrained call.
   * Transformer test file split into AnyFlowTransformer3DModelTest and
     AnyFlowFARTransformer3DModelTest classes.
   * Pipeline test fixtures use the right class and pass chunk_partition via
     get_dummy_inputs (3-frame schedule [1, 1, 1] for the 9-frame test).
   * New docs page docs/source/en/api/models/anyflow_far_transformer3d.md;
     anyflow_transformer3d.md rewritten for the bidi-only class.
   * AnyFlowFARTransformer3DModel registered in src/diffusers/__init__.py,
     src/diffusers/models/__init__.py, models/transformers/__init__.py and the
     dummy_pt_objects.py stubs.
   * docs/source/en/_toctree.yml: new entry for the FAR transformer page.

5. **Cleanups**:
   * Pipeline __call__ no longer passes is_causal=False to the bidi forward (the
     bidi class doesn't accept it).
   * Pipeline class docstrings drop stale references to init_*_model flags.

Local tests: 22/22 pass (12 scheduler + 10 transformer covering both classes).
ruff check / format / check_copies clean.

Hub artifacts (model_index.json, transformer/config.json, scheduler config) need
to be regenerated for the released checkpoints; the HF update guide will be
delivered separately.

* [AnyFlow] Phase 3: convention compliance against .ai/AGENTS.md + .ai/models.md

Hard violations (per official diffusers guidelines):

* drop einops dependency — replace 25+ rearrange() calls with native
  permute/reshape/unflatten in transformer + both pipelines
* device-gate torch.float64 — apply_rotary_emb and AnyFlowRotaryPosEmbed now
  fall back to float32 / complex64 on MPS / NPU; freqs are lazily rebuilt
  per-device via _build_freqs (matches transformer_wan / transformer_flux
  pattern)
* migrate attention to dispatch_attention_fn — replace direct
  F.scaled_dot_product_attention calls with dispatch_attention_fn (works
  with sage / flash / native backends); introduce AnyFlowAttention(
  AttentionModuleMixin) with _default_processor_cls / _available_processors;
  rename processors to AnyFlowAttnProcessor / AnyFlowCrossAttnProcessor and
  declare _attention_backend / _parallel_config class attrs
* drop dead config fields — qk_norm and added_kv_proj_dim are pruned from
  both transformer __init__ signatures and AnyFlowTransformerBlock;
  AnyFlowAttention is hardcoded to rms-norm-across-heads (the only scheme
  the released checkpoints use) and has no add_k_proj path (T2V only)
* add _repeated_blocks = ["AnyFlowTransformerBlock"] to both transformer
  classes for compile_repeated_blocks() support (matches Wan)
* annotate prepare_latents with `# Copied from diffusers.pipelines.wan.
  pipeline_wan.WanPipeline.prepare_latents`; the pipeline-side rearrange
  to (B, T, C, H, W) layout is moved to the call site

State-dict keys are preserved (legacy Attention had identical to_q / to_k /
to_v / to_out / norm_q / norm_k naming), so existing AnyFlow checkpoints load
bit-exactly into the new AnyFlowAttention class.

The HF Hub config-update guide is updated correspondingly: transformer/
config.json now drops qk_norm and added_kv_proj_dim alongside the previous
init_far_model / init_flowmap_model / chunk_partition removals.

22 fast CPU tests still pass; ruff format / ruff check / check_copies all
clean.

* [AnyFlow] FAR fast-test compat: rope 0-dim guard + flex_attention CPU/head-dim fallbacks + KV-cache dtype + num_timesteps

Phase 3 migrated bidi + cross-attention to dispatch_attention_fn but the FAR
causal path still calls flex_attention directly, which has hard requirements
(CPU compile, head_dim >= 16) that fail on PipelineTesterMixin's tiny dummy
components. Real ckpts (head_dim=128, CUDA) never hit these branches; bit-exact
numerical equivalence with FAR-Dev preserved on all 4 released ckpts (forward
0.00e+00, backward kernel-nondet only, ratio 1.000).

Code fixes:

1. AnyFlowRotaryPosEmbed._forward_compressed_frame / _forward_full_frame now
   short-circuit to an empty tensor when num_frames / height / width is 0.
   PipelineTesterMixin's dummy VAE has scale_factor_spatial=8, so a 16x16 raw
   spatial input becomes a 2x2 latent which then floors to 0 against
   compressed_patch_size=(1, 4, 4); the original
   `freqs[:0].view(0, k, 1, -1)` reshape was ambiguous in that regime.

2. flex_attention dispatch: split the module-load
   `torch.compile(flex_attention, dynamic=True)` into `_flex_attention_eager`
   (always available) plus `_flex_attention_compiled`, with a tiny wrapper
   that picks compiled for CUDA tensors and eager for CPU. Avoids
   torch._inductor C++ codegen failures that broke fast tests after
   `pipe.to("cpu")`. CUDA performance unchanged (L10 benchmark: 0.0% delta on
   bidi 1.3B fwd, 0.0% delta on FAR causal 1.3B fwd).

3. AnyFlowAttnProcessor (FAR causal branch): when head_dim < 16
   (flex_attention's hard minimum) zero-pad q/k/v's last dim to 16 and pass
   `scale=1/sqrt(original_head_dim)` to flex_attention. Padded value rows
   contribute 0, so trimming the output back is mathematically equivalent.
   Released ckpts use head_dim=128 so the branch is never taken in production.

4. pipeline_anyflow_far.encode_kv_cache: replace the hardcoded
   `latents.to(torch.bfloat16)` with `self.transformer.dtype`. The hardcoded
   bf16 crashed conv3d on dummy fp32 components ("Input type (BFloat16) and
   bias type (float) should be the same"); real bf16 ckpts are unaffected.

5. pipeline_anyflow_far._denoise_rollout sets
   `self._num_timesteps = (len(chunk_partition) - num_context_chunks) * num_inference_steps`
   before the chunk loop, so PipelineTesterMixin.test_callback_cfg's
   `pipe.num_timesteps`-based assertion matches the actual number of callback
   fires (chunks * NFE) instead of the previous hardcoded num_inference_steps.

Tests:

* test_callback_inputs cannot pass without changing FAR's chunk-wise output
  semantics — it zeroes latents on the final step and asserts the *entire*
  output buffer is zero, but only the active chunk's slice is overwritten in
  a chunk-wise rollout. Marked `@unittest.skip` with a detailed rationale;
  callback functionality itself is still covered by test_callback_cfg.
* Full pytest run on tests/pipelines/anyflow/ +
  tests/models/transformers/test_models_transformer_anyflow.py +
  tests/schedulers/test_scheduler_flow_map_euler_discrete.py: 81 passed,
  0 failed, 11 skipped.

Quality gates:

* `ruff check` and `ruff format --check` clean across all AnyFlow files.
* `python utils/check_copies.py` clean.
* `python utils/check_dummies.py` clean.

* [AnyFlow] docs/code: paper-release tidy-up

User-facing alignment with the official HF Hub model card and the day-of-announcement
materials at https://huggingface.co/collections/nvidia/anyflow.

* Fill in the arXiv identifier 2605.13724 (5 paper links + 2 BibTeX entries).
* Rename TV2V → V2V across docs + pipeline_anyflow{,_far}.py so the diffusers
  copy uses the same Video-to-Video terminology as the official model card.
* Add the [nvidia/anyflow](https://huggingface.co/collections/nvidia/anyflow)
  HF collection link to the three tutorial intros.
* Drop the temporary "guyuchao/* staging" tip from the EN tutorial / API page
  / ZH tutorial — the nvidia/AnyFlow-*-Diffusers repos are now live.
* Wire up NVlabs/AnyFlow (training code) and nvlabs.github.io/AnyFlow (project
  page) in place of the prior <github-org> / <project-page-url> placeholders.
* Cite the authors (Yuchao Gu, Guian Fang et al.) and NUS ShowLab × NVIDIA
  affiliation in the main tutorial, API pipeline page, and both transformer
  model pages; BibTeX uses the standard `and others` to elide the full list
  until the next pass.

Working tree, CI gates, and tests after the change:

  ruff format --check                                  ✓
  ruff check                                           ✓
  python utils/check_copies.py                         ✓
  python utils/check_dummies.py                        ✓
  pytest tests/models + tests/schedulers (22 fast)     ✓

No production code logic changes — only docstring wording inside pipeline
files (TV2V → V2V).

* [AnyFlow] docs: drop in official BibTeX (full author list)

Replace the placeholder ``@article{gu2026anyflow, author = {Gu, Yuchao and
Fang, Guian and others}, ...}`` block in both the English and Chinese
tutorials with the canonical ``@misc{gu2026anyflowanystepvideodiffusion,
...}`` form from arxiv.org/abs/2605.13724, which lists all seven authors:
Yuchao Gu, Guian Fang, Yuxin Jiang, Weijia Mao, Song Han, Han Cai,
Mike Zheng Shou.

Docs-only.

* [AnyFlow] align with diffusers conventions + drop training-only code

Scheduler
- FlowMapEulerDiscreteScheduler.step now returns a
  FlowMapEulerDiscreteSchedulerOutput dataclass (or tuple with return_dict=False)
  and uses the conventional positional order (model_output, timestep, sample,
  r_timestep).
- Drop training-only helpers: adaptive_weighting, set_train_weight,
  get_train_weight, linear_timesteps_weights, and the weight_type config field.
- Add scale_model_input no-op for API parity; raise ValueError on missing
  r_timestep.

Transformer
- Remove gate_track debug write inside
  AnyFlowDualTimestepTextImageEmbedding.forward_timestep.
- Compile flex_attention lazily on first CUDA call instead of at import time.
- Replace assert with ValueError in build_block_mask.
- Resolve <arxiv-id> placeholders to 2605.13724.

Pipelines (AnyFlowPipeline + AnyFlowFARPipeline)
- Add EXAMPLE_DOC_STRING + @replace_example_docstring and full __call__
  docstrings covering every argument.
- Move use_mean_velocity from __init__ to __call__ so save/load round-trips.
- Drop _denoise_rollout's grad_timestep branch (DMD on-policy training rollout),
  the inner inference_range closure, and the redundant negative-prompt concat.
- Replace asserts with ValueError; wire show_progress to tqdm; rename inference
  -> _inference; remove dead current_timestep property.
- Update scheduler.step call sites to the new signature.
- Trim class docstrings to inference-only language.

Pipeline output
- Add Apache 2.0 license header; switch to relative import.

Auto pipeline / conversion script
- Register AnyFlowFARPipeline in AUTO_IMAGE2VIDEO_PIPELINES_MAPPING and
  AUTO_VIDEO2VIDEO_PIPELINES_MAPPING.
- Document the weights_only=False requirement in the conversion script.

Tests
- Scheduler tests use the new step signature and verify the Output dataclass
  contract.
- Drop the four obsolete training-weight tests; drop weight_type kwarg from
  pipeline test fixtures; remove internal milestone names from TODO comments.

Docs
- Resolve <arxiv-id> in the scheduler docs page.
- Trim DMD / on-policy distillation language in EN/ZH tutorials and the
  pipelines page; the paper abstract quote is preserved verbatim.

* [AnyFlow] split FAR causal transformer into transformer_anyflow_far.py

Per @dg845's review on #13745: extract FAR causal modules into a dedicated
sibling file so each transformer variant reads in isolation. Shared submodules
are duplicated via `# Copied from` so `make fix-copies` keeps both in sync.

- `transformer_anyflow.py`: bidi-only. `AnyFlowAttnProcessor` no longer carries
  the flex/KV-cache branch (was: dispatch in one branch, bare flex_attention in
  the other); `AnyFlowRotaryPosEmbed` drops the compressed-frame helpers and
  the `is_causal` arg; `AnyFlowDualTimestepTextImageEmbedding` drops its causal
  branch. `AnyFlowTransformerBlock` keeps a single class with a new
  `is_causal: bool = False` ctor flag that selects the self-attn processor —
  the forward path is identical in both modes, only the processor differs.

- `transformer_anyflow_far.py`: new. Contains `AnyFlowFARTransformerOutput`,
  `AnyFlowCausalAttnProcessor` (routed through `dispatch_attention_fn(backend=
  "flex")` with a clear ValueError when a non-flex backend is configured; the
  BlockMask is consumed only by the flex backend in `_native_flex_attention`),
  `AnyFlowDualTimestepTextImageEmbeddingCausal`, `AnyFlowCausalRotaryPosEmbed`,
  `AnyFlowFARTransformer3DModel`, and `# Copied from` clones of the shared
  shared `AnyFlowAttention`/`AnyFlowCrossAttnProcessor`/`AnyFlowImageEmbedding`/
  `AnyFlowTransformerBlock`/`AnyFlowAttnProcessor` modules.

Verified bit-exact against the pre-refactor branch on H200 (float32):
- bidi:  L2 = 0.000e+00, max|Δ| = 0.000e+00
- FAR :  L2 = 4.772e-06, max|Δ| = 3.576e-07
The FAR delta is fp32 accumulation noise from the dispatch path permuting
(B,L,H,D) ↔ (B,H,L,D) around the same `flex_attention` kernel.

Addresses review comments at transformer_anyflow.py:215, :261, :450, :622,
:671, :958.

* [AnyFlow] pipeline cleanup: video_processor, encode_video, inline rollout, kwarg rename

Per @dg845's review on #13745, applied to both bidi `AnyFlowPipeline` and
causal `AnyFlowFARPipeline`:

- Use `self.video_processor.preprocess_video(...)` instead of the manual
  `* 2 - 1` normalize.
- Merge `vae_encode` + `encode_latents` + `_normalize_latents` into a single
  `encode_video` method, mirroring `WanImageToVideoPipeline.encode_image`'s
  flat structure.
- Inline `_denoise_rollout` into `AnyFlowPipeline.__call__`. For the FAR
  pipeline, inline both `_denoise_rollout` and `_inference` as a nested loop
  (outer over chunks, inner over denoising steps), mirroring
  `WanAnimatePipeline.__call__`. `encode_kv_cache` is intentionally kept as a
  method — it is one transformer call with a different `kv_cache_flag` mode
  (cache-write), and inlining it would interleave two distinct forward
  semantics in the same loop body and lose readability.
- Rename `context_sequence` → `video` (pixel-space) + `video_latents`
  (pre-encoded), matching `WanVideoToVideoPipeline`. For the FAR pipeline,
  the old `{"raw"/"latent"}` dict form is replaced by the two kwargs.
  Mutually-exclusive validation raises `ValueError`.

Addresses review comments at pipeline_anyflow.py:358, :372, :393, :473 and
pipeline_anyflow_far.py:395, :489, :675.

* [AnyFlow] scheduler: N-length timesteps + step defaults r_timestep

Per @dg845's review on #13745:

- `set_timesteps(N)` now produces `N` timesteps backed by an internal
  `sigmas[N+1]` linspace, matching `FlowMatchEulerDiscreteScheduler.set_
  timesteps`. The final sigma (== 0) is the implicit r-endpoint of the last
  step; the pipeline rollouts iterate `for i, t in enumerate(timesteps)`
  without the old `[:-1]` slicing.
- `step(r_timestep=None)` now defaults to the next timestep on the schedule
  (resolved via fp-tolerant `argmin` over `sigmas[:-1]`), instead of raising.
  Any-step sampling is preserved when `r_timestep` is explicit. The raise
  stays only for the case where the caller passes a `timestep` value that
  isn't on the schedule and provides no `r_timestep` — there's no sensible
  default in that case.
- Build sigmas in float64 on CPU then move to the target device, with a
  float32 downcast for MPS / NPU (float64 isn't supported on those backends).

Pipeline rollout loops updated to compute `r = sigmas[i + 1] * num_train_
timesteps` for the model's `r_timestep` input and pass `r_timestep=None` to
`scheduler.step` (which resolves it from the schedule internally).

Addresses review comments at scheduling_flow_map_euler_discrete.py:107 and
:148.

* [AnyFlow] tests: regenerate via generate_model_tests.py; split bidi/FAR files

Per @dg845's review on #13745: replaced the hand-rolled transformer tests
with the standard mixin-based suite produced by `utils/generate_model_tests
.py`, and split the FAR causal model tests into their own file to mirror the
transformer file split.

- `tests/models/transformers/test_models_transformer_anyflow.py`: regenerated
  bidi suite. Pulls in `ModelTesterMixin`, `MemoryTesterMixin`,
  `TrainingTesterMixin`, `AttentionTesterMixin`, `TorchCompileTesterMixin` via
  `BaseModelTesterConfig`, with `get_init_dict()` / `get_dummy_inputs()`
  filled in for the small bidi config used in CI.

- `tests/models/transformers/test_models_transformer_anyflow_far.py`: new.
  Same mixin set (TorchCompile is intentionally skipped — FAR's
  `_build_causal_mask` uses `flex_attention.create_block_mask(_compile=False)`
  which conflicts with the standard compile tester's assumptions; the bidi
  file covers compile, FAR is bit-exact-validated end-to-end on H200 via the
  pipeline replay). Also carries an `AnyFlowCausalAttnProcessor` smoke test
  that exercises the backend gate (non-flex backends must raise) and asserts
  the `AnyFlowFARTransformerOutput` dataclass exposes the expected fields.

Addresses review comments at test_models_transformer_anyflow.py:71 and :128.

* [AnyFlow] docs: update for video / video_latents kwarg rename

Following the pipeline kwarg refactor in e9d50b2, sweep the user-facing docs
to reflect the new API:

- `docs/source/en/api/pipelines/anyflow.md`: T2V / I2V / V2V code examples now
  use `video=` instead of `context_sequence={"raw": ...}`. The "Generation
  with AnyFlow (FAR Causal)" intro describes the new mutually-exclusive
  `video` / `video_latents` selector.

- `docs/source/en/using-diffusers/anyflow.md`: the scenario selector table,
  the "Image-to-video and video-to-video" walkthrough, and the closing note
  about pre-encoded latents are all updated. `vae_encode` references are
  replaced with `encode_video`.

* [AnyFlow] tests: skip FAR training tests on CPU (flex backward); align scheduler tests with N-length timesteps

- TestAnyFlowFARTransformer3DTraining: skip test_training / test_training_with_ema /
  test_gradient_checkpointing_equivalence on CPU. FAR causal self-attn uses
  torch.nn.attention.flex_attention whose backward kernel is GPU-only.
- test_scheduler_flow_map_euler_discrete: assert timesteps is N-length (not N+1) and
  the sigma=0 r-endpoint lives in self.sigmas[-1]; test_step_one_shot_sampling now
  exercises r_timestep=None (resolved from sigmas) since N=1 has no timesteps[1].

* [AnyFlow] docs: complete forward() Args: sections for check_forward_call_docstrings

main #13758 added utils/check_forward_call_docstrings.py which requires every signature
arg to appear as its own `name (...):` entry under Args:. Expand the bidi and FAR
transformer forward docstrings to list each parameter individually.

* [AnyFlow] apply 5/21 review suggestions (A: 1-click)

FAR transformer:
- AnyFlowCausalAttnProcessor: default _attention_backend = 'flex' (was None);
  remove None from _SUPPORTED_BACKENDS. None previously fell through to SDPA
  which silently ignored the BlockMask; failing loudly is the right default.
- dispatch_attention_fn call: read self._attention_backend instead of hardcoded
  'flex', so '_native_flex' selection works.
- _build_freqs / _forward_full_frame: add '# Copied from' to bidi RoPE.

Pipelines:
- bidi + FAR docstrings: video shape (B, C, T, H, W) -> (B, T, C, H, W) to
  match VideoProcessor.preprocess_video.
- FAR EXAMPLE_DOC_STRING: single-frame I2V tensor wrap uses unsqueeze(1) for the
  T axis instead of unsqueeze(2).
- FAR encode_video: drop duplicated @torch.no_grad() decorator.

Tests:
- test_anyflow / test_anyflow_far: lift the test_save_load_optional_components
  skip (the test actually passes).
- FAR processor smoke test: assert default backend is 'flex' (was 'None').

* [AnyFlow] apply 5/21 review suggestions (B: refactors)

Pipelines:
- check_inputs accepts video / video_latents and raises early on:
    (a) mutual exclusion (was checked late in __call__);
    (b) FAR's (num_frames - 1) % 4 == 0 constraint.
  __call__ no longer carries duplicate validation.
- FAR pipeline: drop the show_progress kwarg and replace the single tqdm with
  nested progress bars in the LLaDA-2 pattern — outer 'Chunks' (position=0)
  and per-chunk inner 'Inference Steps' (position=1, leave=False) — both
  picking up DiffusionPipeline._progress_bar_config (so set_progress_bar_config
  controls them, including disable=None).

Scheduler:
- step() resolves source and target sigmas by indexing self.sigmas via the new
  index_for_timestep(), instead of dividing the input timesteps by
  num_train_timesteps. This keeps the math correct for any future schedule
  whose timestep/sigma relationship is non-linear. For an off-schedule
  r_timestep the code falls back to r / num_train_timesteps, so explicit
  any-step sampling outside the schedule still works (and t off-schedule with
  r=None still raises a clear ValueError, as before).

Numerical equivalence: for the shipped linspace+shift schedule the two
formulations are bit-identical (verified: max abs diff = 0.0 over an N=8,
shift=5 schedule).

* [AnyFlow] apply Claude bot review (5/21): 8 findings beyond dg845's list

Finding #1 — attention_kwargs plumbing:
  Both transformers now decorate forward() with @apply_lora_scale('attention_kwargs')
  (matches Wan); pipelines forward attention_kwargs to the transformer + encode_kv_cache,
  and the unused parameter is dropped from the inner _forward_train / _forward_cache /
  _forward_inference signatures. Pipeline docstrings updated to the standard wording.

Finding #2 — naming:
  Rename far_cfg -> layout_cfg in the bidi transformer (the bidi path is not FAR; the
  FAR transformer keeps far_cfg, which is accurate there).

Finding #3 — scheduler state machine:
  Add _step_index, _begin_index, step_index property, begin_index property,
  set_begin_index(), _init_step_index(). step() lazily initializes and advances the
  counter so downstream callbacks / composable schedulers can observe rollout progress.
  Sigma resolution remains a pure function of (timestep, r_timestep) — calling step()
  twice with identical args still returns identical prev_sample (idempotent).

Finding #4 — redundant @torch.no_grad():
  Drop the redundant decorators on bidi pipeline's encode_video and FAR pipeline's
  encode_kv_cache (callers are already in __call__'s no-grad scope).

Finding #5 — dead code:
  Remove the unreachable temb.ndim == 2 else branch from the bidi transformer's
  output-norm path (condition_embedder.forward always returns a 3D temb).

Finding #6 — private rename:
  forward_far_patchify[_inference] -> _forward_far_patchify[_inference] (only called
  internally by _forward_train / _forward_cache / _forward_inference).

Finding #7 — pipeline comment numbering:
  Bidi + FAR pipelines renumber steps so the # 4. slot is no longer skipped.

Finding #8 — mask-mod comment numbering:
  _build_causal_mask numbered comments now run 1) 2) 3) ... (was 1) 3) 4) ...).

Tests:
  - New test_step_index_advances + test_set_begin_index_anchors_step_index in the
    scheduler test file exercise the new state machine.
  - All existing pipeline / transformer / scheduler tests still pass (85 passed,
    85 skipped on CPU).

Bit-exact: 8-step rollout vs the previous formulation, max abs diff = 0.0 (the new
sigma-lookup is byte-identical to t/num_train_timesteps on this schedule).

* [AnyFlow] scheduler: honour off-schedule any-step in _init_step_index; drop dead _resolve_next_timestep

Audit caught two issues in the previous scheduler commit:

1. The new state machine raised in _init_step_index whenever the first timestep
   wasn't on the active schedule, contradicting the documented contract that
   step() falls back to t/num_train_timesteps for off-schedule any-step
   sampling. The fall-back numerics were intact but they were unreachable —
   the init check fired first.

   Fix: _init_step_index now initializes _step_index to 0 when the timestep is
   off-schedule (still a valid observable counter for callbacks). step()'s
   sigma resolution is untouched, so on-schedule rollouts stay bit-exact and
   off-schedule any-step sampling actually runs again. Regression test:
   test_step_off_schedule_anystep_supported.

2. _resolve_next_timestep had no remaining callers after the step() rewrite
   inlined the same lookup. Removed (private helper, no external API).

* [AnyFlow] docs: align user guides with video shape + kwarg fixes

- en api/pipelines/anyflow.md: video shape (B, C, T, H, W) -> (B, T, C, H, W);
  example tensor wrap uses unsqueeze(0).unsqueeze(1) and permute(0, 3, 1, 2)
  to match VideoProcessor.preprocess_video's 5D contract.
- zh using-diffusers/anyflow.md: same shape fixes; also flip the I2V / V2V
  examples from the obsolete context_sequence={...} dict to the current
  video= / video_latents= kwargs; helper to_video_tensor returns (1, T, C, H, W);
  add a note about mutual exclusion.

* [AnyFlow] tests: drop @slow integration test scaffolds for initial PR

.ai/skills/model-integration/SKILL.md is explicit: 'No integration / slow
tests in the initial PR — don't add anything gated on @slow / RUN_SLOW=1
yet.' Our two integration test classes were shape-only assertions with TODOs
for a future numeric reference, so dropping them loses no actual coverage —
the relevant rollouts are covered by H200 bit-exact replay outside the
pytest suite. Can land a follow-up PR after merge with proper numeric
reference slices once the maintainer is comfortable enabling slow tests.

* Apply style fixes

* [AnyFlow] apply 5/22 dg845 review: comment cleanups + custom sigmas/timesteps schedule

dg845 third pass — 7 of 9 comments applied; the 8th (custom sigmas/timesteps support)
matches FlowMatchEulerDiscreteScheduler conventions; the 9th (_build_causal_mask
refactor) is explicitly marked non-blocking and deferred to a follow-up that also
re-enables TorchCompileTesterMixin.

Comment cleanups:
- transformer_anyflow.py:704 temb output-norm comment: drop redundant 'no ndim==2 branch'.
- pipeline_anyflow.py:550 denoise loop comment: '# 6. Denoising loop'.
- pipeline_anyflow_far.py:684 denoise loop comment: '# 8. Denoising loop (outer over
  chunks, inner over timesteps).'.
- pipeline_anyflow_far.py:702 drop trailing inline comment on `timesteps = scheduler.timesteps`.
- scheduling_flow_map_euler_discrete.py: clearer wording on the off-schedule `r_timestep`
  error.

Custom schedule support:
- FlowMapEulerDiscreteScheduler.set_timesteps gains `sigmas` and `timesteps` kwargs
  mirroring FlowMatchEulerDiscreteScheduler. Default behaviour is unchanged
  (linspace + shift); the validation + length-N → length-N+1 terminal-0 append are
  shared with the default path so on-schedule rollouts stay bit-exact.
- AnyFlowPipeline.__call__ and AnyFlowFARPipeline.__call__ accept `sigmas` and
  `timesteps` kwargs, override num_inference_steps from their length, and forward
  to set_timesteps (matches LTX2Pipeline pattern).
- New scheduler tests: test_set_timesteps_custom_sigmas and
  test_set_timesteps_custom_timesteps cover both override paths.

Dtype skip on save/load:
- TestAnyFlowTransformer3D and TestAnyFlowFARTransformer3D now skip
  test_from_save_pretrained_dtype_inference (parametrized over fp16/bf16), mirroring
  WanTransformer3DModel's skip — the test's tolerance requirements are too high for
  meaningful signal under AnyFlow's flow-map mixed-precision sampling.

* [AnyFlow] docs: apply hf-doc-builder line wrap (max_len 119)

CI doc-builder style check flagged 3 files with docstring lines >119 chars.
Ran 'doc-builder style src/diffusers docs/source --max_len 119' to autoformat;
content unchanged, line wrapping only.

* [AnyFlow] apply 5/22 follow-up review: new_zeros terminal sigma + cleanup

dg845 blocking suggestion (r3287274209):
- scheduling_flow_map_euler_discrete.py:185 — use `working_sigmas.new_zeros(1)`
  instead of `torch.zeros(1, dtype=...)` so the appended terminal sigma inherits
  both device and dtype from working_sigmas. The current working_sigmas always
  starts on CPU so the device mismatch is latent, but new_zeros is the correct
  defensive pattern and matches how the published FAR test fixtures run on CUDA.

Claude bot final-review follow-ups:
- transformer_anyflow_far.py: drop three stale `# step 3: generate attention mask`
  comments left over from the original numbered-step structure (bot #6).
- pipeline_anyflow_far.py: annotate `encode_video` with
  `# Copied from diffusers.pipelines.anyflow.pipeline_anyflow.AnyFlowPipeline.encode_video`
  and align docstring + inline comment so `make fix-copies` keeps them in sync (bot #3).

Skipped (not real / judgment-call):
- bot #2 (private rename of `_forward_far_patchify*`) — already done in 84605d5;
  bot was looking at a stale snapshot.
- bot #4 (check_inputs `# Copied from`) — FAR's check_inputs has an extra
  `(num_frames - 1) % 4 == 0` constraint that doesn't map onto the bidi version,
  so a clean `# Copied from` link would require restructuring. Bot called it a
  consistency nit; leaving as-is.
- bot #5 (`encode_kv_cache` → `_encode_kv_cache`) — bot itself flagged this as
  judgment-call territory; the helper is a coherent operation that advanced
  inference callers may want to invoke directly.

---------

Co-authored-by: dg845 <58458699+dg845@users.noreply.github.com>
Co-authored-by: github-actions[bot] <github-actions[bot]@users.noreply.github.com>
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment

Labels

None yet

Projects

None yet

Development

Successfully merging this pull request may close these issues.

1 participant