tao-finetune-cosmos-embed

द्वारा nvidia

Cosmos-Embed1 video-text embedding for text-to-video retrieval, video-to-video search, semantic deduplication, and fine-tuning. Use when the user asks to…

npx skills add https://github.com/nvidia/skills --skill tao-finetune-cosmos-embed

Cosmos-Embed

Cosmos-Embed1 is a joint video-text embedder for text-to-video retrieval, video-to-video search, zero-shot/kNN classification, and semantic deduplication. The packaged CLI is cosmos-embed1 and supports train, evaluate, inference, and export.

Container image and per-action commands are in references/skill_info.yaml. Compact starting specs are in references/spec_template_*.yaml.

Train Action Policy

AutoML is not packaged for this model skill because there are no Cosmos-Embed schemas under schemas/. Always use the direct model skill actions for train, evaluate, inference, and export, even when a higher-level request includes automl_policy: on. Do not route Cosmos-Embed through workflow or AutoML skills until model-specific train schemas and templates are added.

Non-train actions such as evaluate, inference, export, and deploy flows stay in this model skill. The per-run automl_policy override does not change model metadata.

Quick Start

Use the published Cosmos-Embed container declared by references/skill_info.yaml and resolved through versions.yaml. Do not build from the private Cosmos-Embed1 source tree for normal skill use; build from source only when developing the container itself.

TAO_SKILL_BANK_PATH="${TAO_SKILL_BANK_PATH:-$PWD}"
COSMOS_EMBED_IMAGE="${COSMOS_EMBED_IMAGE:-$(
  python "$TAO_SKILL_BANK_PATH/scripts/resolve_tao_image.py" \
    --skill-bank "$TAO_SKILL_BANK_PATH" \
    --model tao-finetune-cosmos-embed \
    --action train \
    --format json |
  python -c 'import json,sys; print(json.load(sys.stdin)["image"])'
)}"
docker pull "$COSMOS_EMBED_IMAGE"

Expected local workspace layout:

workspace/
├── data/
│   ├── msrvtt_test_1k.json
│   └── video/
│       ├── video7020.mp4
│       └── ...
├── model/
│   └── Cosmos-Embed1-224p/        # optional if using HF repo id
├── specs/
│   ├── train.yaml
│   ├── evaluate.yaml
│   ├── inference.yaml
│   ├── export_onnx.yaml
│   └── export_hf.yaml
└── results/

Use these Docker options for all actions unless the local Docker/platform skill gives a stricter environment-specific command:

TAO_SKILL_BANK_PATH="${TAO_SKILL_BANK_PATH:-$PWD}"
COSMOS_EMBED_IMAGE="${COSMOS_EMBED_IMAGE:-$(
  python "$TAO_SKILL_BANK_PATH/scripts/resolve_tao_image.py" \
    --skill-bank "$TAO_SKILL_BANK_PATH" \
    --model tao-finetune-cosmos-embed \
    --action train \
    --format json |
  python -c 'import json,sys; print(json.load(sys.stdin)["image"])'
)}"
RUN_ROOT="${RUN_ROOT:-$PWD}"
DOCKER_COMMON=(
  --rm --gpus all --ipc=host --network=host
  --shm-size=64g
  --ulimit memlock=-1
  --ulimit stack=67108864
  -e HF_TOKEN
  -e WANDB_DISABLED=true
  -e WANDB_MODE=disabled
  -e HUGGINGFACE_HUB_CACHE=/hf_cache
  -v "$RUN_ROOT/data:/data:ro"
  -v "$RUN_ROOT/model:/model"
  -v "$RUN_ROOT/specs:/specs:ro"
  -v "$RUN_ROOT/results:/results"
  -v "$RUN_ROOT/hf_cache:/hf_cache"
)

For Cosmos-Embed images that ship protobuf==7.x, run a small startup preamble before every action:

python -m pip install "protobuf<7"

The image contains wandb==0.21.0 with protobuf==7.x; importing W&B fails before training/evaluation unless protobuf is pinned below 7. Use WANDB_DISABLED=true and WANDB_MODE=disabled for smoke or offline runs. Cosmos-Embed may still download the public google-bert/bert-base-uncased Q-Former component even when the model checkpoint is disabled, so pass HF_TOKEN as an environment variable or mount a persistent HuggingFace cache. Do not write the token into specs, logs, or reports.

Train:

docker run "${DOCKER_COMMON[@]}" "$COSMOS_EMBED_IMAGE" \
  bash -lc "python -m pip install 'protobuf<7' && cosmos-embed1 train -e /specs/train.yaml results_dir=/results"

Evaluate:

docker run "${DOCKER_COMMON[@]}" "$COSMOS_EMBED_IMAGE" \
  bash -lc "python -m pip install 'protobuf<7' && cosmos-embed1 evaluate -e /specs/evaluate.yaml results_dir=/results"

Inference:

docker run "${DOCKER_COMMON[@]}" "$COSMOS_EMBED_IMAGE" \
  bash -lc "python -m pip install 'protobuf<7' && cosmos-embed1 inference -e /specs/inference.yaml \
  'inference.query.input_texts=[\"a man is singing on stage\"]' \
  inference.k=5 \
  results_dir=/results"

Export ONNX:

docker run "${DOCKER_COMMON[@]}" "$COSMOS_EMBED_IMAGE" \
  bash -lc "python -m pip install 'protobuf<7' && cosmos-embed1 export -e /specs/export_onnx.yaml \
  export.checkpoint=/results/train/checkpoints/iter_000000001.pt \
  export.onnx_file=/results/export/cosmos_embed1_combined.onnx \
  results_dir=/results"

Export HuggingFace format:

docker run "${DOCKER_COMMON[@]}" "$COSMOS_EMBED_IMAGE" \
  bash -lc "python -m pip install 'protobuf<7' && cosmos-embed1 export -e /specs/export_hf.yaml \
  export.checkpoint=/results/train/checkpoints/iter_000000001.pt \
  export.hf_output_dir=/results/export_hf/cosmos_embed1_hf \
  results_dir=/results"

Smoke Overrides

For a small functional check, keep the same specs and override the expensive knobs:

train.max_iter=1
train.validation_iter=2
train.checkpoint_iter=1
train.optim.optim=adamw
train.optim.warmup_steps=0
train.optim.lr_decay_iters=1
dataset.train_dataset.batch_size=1
dataset.val_dataset.batch_size=1
dataset.train_dataset.workers=0
dataset.val_dataset.workers=0

When shortening the cosine scheduler for smoke runs, keep train.optim.lr_decay_iters greater than train.optim.warmup_steps, or set train.optim.warmup_steps=0 as shown above. The scheduler divides by lr_decay_iters - warmup_steps, so equal values fail before the checkpoint is written.

If no local Cosmos-Embed1 pretrained checkpoint is available, set model.pretrained_model_path=null for a plumbing-only smoke train. The model quality is meaningless in that mode, but the train/evaluate/inference/export action paths can still be exercised. In the current container, the Q-Former path can still fetch google-bert/bert-base-uncased; provide HF_TOKEN or a mounted HuggingFace cache for fresh ephemeral containers.

For evaluation and inference smoke tests on a tiny subset:

evaluate.callbacks.embedding_visualization=false
evaluate.callbacks.max_eval_samples=8
dataset.test_dataset.batch_size=1
dataset.test_dataset.workers=0
inference.k=2
dataset.inference_dataset.batch_size=1
dataset.inference_dataset.workers=0

Data Format

The MSR-VTT path expects a local video glob and a JSON metadata file:

dataset:
  train_dataset:
    dataset_type: msrvtt
    mp4_urls: /data/video/*.mp4
    metadata: /data/msrvtt_test_1k.json

List-format metadata rows must include at least video and caption:

{"video_id": "video7020", "video": "video7020.mp4", "caption": "a woman creating a fondant baby and flower"}

The dataset loader derives the video id from the local .mp4 filename and filters to videos present in the metadata. If a run finds zero videos, check that mp4_urls points to a container-local glob and that metadata video names match the filenames.

Model Weights

  • Local HF directory: mount it under /model and set model.pretrained_model_path=/model/Cosmos-Embed1-224p.
  • HuggingFace repo: set model.pretrained_model_path=nvidia/Cosmos-Embed1-224p and pass HF_TOKEN if access is gated.
  • Fine-tuned checkpoint: set downstream actions to the resolver-selected /results/train/checkpoints/iter_#########.pt file.

Training writes full checkpoints under results/train/checkpoints/iter_#########.pt, updates results/train/checkpoints/latest_checkpoint.txt, and creates a cosmos_embed1_model_latest.pth symlink. For evaluate.checkpoint, inference.checkpoint, export.checkpoint, and train.resume_training_checkpoint_path, resolve and pass the exact iter_#########.pt file for the intended iteration. The action spec templates intentionally leave these checkpoint fields null so the model-skill runner or the user must provide the resolver-selected checkpoint. Use the latest symlink only when the user explicitly asks for latest.

For single-GPU resume/retrain from a consolidated checkpoint, set model.fsdp_shard_size: 1. The container default is 8, which sends resumed training through an FSDP apply path that Cosmos-Embed1 does not implement for this model class.

Variants:

VariantResolutionFramesEmbedding dim
Cosmos-Embed1-224p224 x 2248256
Cosmos-Embed1-336p336 x 3368768
Cosmos-Embed1-448p448 x 4488768

Keep model.network.embed_dim, model.input_hw, and model.network.spatial_resolution aligned with the selected variant.

Important Parameters

ParameterNotes
train.num_gpus1 for single GPU, >1 auto-launches torchrun, -1 auto-detects visible GPUs.
train.max_iterMain training length. Use 1 only for smoke testing.
train.optim.optimfused_adamw is faster when available; adamw is safer for smoke and portability.
model.lora.enabledEnables LoRA. Set model.network.visual_encoder.transformer_engine=false when LoRA is on.
model.lora.lora_rankLoRA rank. Start with 8; try 4, 8, or 16 for manual or AutoML-style sweeps.
model.lora.lora_alphaLoRA scaling factor. Start with 16; keep near 2 * lora_rank unless experiments show otherwise.
model.lora.lora_dropoutLoRA dropout. Start with 0.1; sweep 0.0, 0.05, and 0.1 for small datasets.
model.lora.biasBias policy: none, all, or lora_only. Keep none unless intentionally training biases.
model.lora.use_rslora / use_doraOptional LoRA variants. Enable one at a time and record the setting with the checkpoint.
model.lora.target_modulesOptional module-name patterns for LoRA injection. Leave empty for the default ViT + Q-Former attention/MLP targets.
model.lora.modules_to_saveOptional modules to keep fully trainable alongside LoRA. Leave empty unless preserving a task-specific head.
evaluate.load_dataset_pkl / save_dataset_pklCache evaluation embeddings.
inference.load_dataset_pkl / save_dataset_pklCache the search database for repeated retrieval.
export.modevideo, text, combined, or huggingface.
export.on_cpuRecommended for export to avoid device mismatch issues.

LoRA and AutoML Notes

For parameter-efficient fine-tuning, set model.lora.enabled=true and keep model.network.visual_encoder.transformer_engine=false; TAO Core's Cosmos-Embed1 config notes that PEFT cannot inject adapters into Transformer Engine layers. Treat the LoRA fields above as the first candidate parameters for manual tuning or AutoML-style search before unfreezing larger model blocks. Avoid changing target_modules or modules_to_save unless the user explicitly needs custom adapter placement.

S3 Staging

The Cosmos-Embed1 CLI consumes local paths and Python globs, not raw s3://.../*.mp4 URIs. For S3-backed runs, first stage a subset or full dataset to the execution host/container filesystem, then use local paths such as /data/video/*.mp4 in the spec.

Recommended S3 layout for staged MSR-VTT data:

s3://bucket/path/cosmos-embed/msrvtt-subset/
├── msrvtt_test_1k.json
└── video/
    ├── video7020.mp4
    └── ...

After downloading/syncing that prefix into the mounted data/ directory, use the same Docker commands above.

Outputs

results/
├── train/
│   ├── cosmos_embed1_model_latest.pth
│   ├── cosmos_embed1_model_<iter>.pth
│   └── experiment.yaml
├── evaluate/
│   ├── metrics.json
│   └── experiment.yaml
├── inference/
│   ├── results.json
│   └── experiment.yaml
├── export/
│   ├── cosmos_embed1_combined.onnx
│   └── export_config.yaml
└── export_hf/
    └── cosmos_embed1_hf/

Known Pitfalls

SymptomCauseFix
MSRVTTDataset: 0 videos foundmp4_urls is not a local glob or metadata filenames do not match videos.Mount data into the container and set mp4_urls=/data/video/*.mp4.
HF download/auth failureMissing or invalid HF_TOKEN, or model agreement not accepted.Accept the model terms and pass -e HF_TOKEN.
cannot import name 'Imports' from 'wandb.proto.wandb_telemetry_pb2'wandb==0.21.0 in the container is incompatible with protobuf==7.x.Run python -m pip install "protobuf<7" in the container before invoking cosmos-embed1.
Resume fails with Model does not implement 'apply_fsdp'Single-GPU resume loaded a consolidated checkpoint while model.fsdp_shard_size stayed at the default 8.Set model.fsdp_shard_size=1 for local single-GPU resume/retrain.
LoRA injection failureTransformer Engine visual encoder is enabled.Set model.network.visual_encoder.transformer_engine=false.
ONNX/HF export complains about missing componentsExport checkpoint is partial or adapter-only.Use a full checkpoint or configure pretrained visual/text sources before export.
CUDA OOMBatch/resolution too high for the GPU.Reduce batch size, use 224p, enable LoRA, or use more GPUs.

nvidia की और Skills

compileiq-debug
nvidia
Use when something is wrong: Search() hangs, all evaluations return INVALID_SCORE, scores aren't improving, every config returns the same number, ptxas errors…
official
create-github-pr
nvidia
Create GitHub pull requests using the gh CLI. Use when the user wants to create a new PR, submit code for review, or open a pull request. Trigger keywords -…
official
diagnose-perf
nvidia
First-responder performance triage for Isaac Sim and Isaac Lab. Identifies bottleneck category (GPU-bound, CPU-bound, VRAM, loading) using nvidia-smi and…
official
eagle3-review-logs
nvidia
Review EAGLE3 pipeline experiment logs from the launcher's experiments/ directory. Summarizes pass/fail status for all 4 tasks, diagnoses failures with root…
official
nemoclaw-maintainer-cross-issue-sweep
nvidia
Scans other open issues to find ones a given PR may also fix or accidentally break. Outputs adjacent-fix opportunities and contradiction risks with file:line…
official
karpathy-guidelines
nvidia
सामान्य LLM कोडिंग गलतियों को कम करने के लिए व्यवहार संबंधी दिशानिर्देश। कोड लिखते, समीक्षा करते या रिफैक्टर करते समय उपयोग करें ताकि अत्यधिक जटिलता से बचा जा सके, सर्जिकल बदलाव किए जा सकें,…
official
fhir-basics
nvidia
Teaches agents how FHIR R4 APIs work, what resources are available, how to query them with search parameters, and how to correctly parse all response formats…
official
underdeclared-agent
nvidia
A helpful assistant agent
official