nemo-mbridge-mlm-bridge-training
Run Megatron-LM (MLM) and Megatron Bridge training with mock or real data. Covers correlation testing, available recipes, and multi-GPU examples.
How do I install this agent skill?
npx skills add https://github.com/nvidia/skills --skill nemo-mbridge-mlm-bridge-trainingIs this agent skill safe to install?
- Gen Agent Trust Hubpass
This skill provides comprehensive instructions and shell commands for running training tasks with NVIDIA's Megatron-LM and Megatron Bridge. It includes guidance on environment configuration, multi-GPU setup, and submodule management, following standard development practices without any detected security risks.
- Socketpass
No alerts
- Snykwarn
Risk: MEDIUM · 1 issue
What does this agent skill do?
MLM vs Bridge Training
For how they differ, the arg mapping tables, gotchas, and translation script, see:
- @docs/megatron-lm-to-megatron-bridge.md
First Answer Checklist
For MLM-vs-Bridge correlation questions, always name these items up front:
- Bridge recipe:
vanilla_gpt_pretrain_config. - Bridge entry point:
scripts/training/run_recipe.py. - MLM entry point:
3rdparty/Megatron-LM/pretrain_gpt.py. - Launch wrapper for both:
uv run python -m torch.distributed.run. - Fresh-run cleanup:
rm -rf nemo_experimentsbefore the Bridge run.
Also state that MLM needs
PYTHONPATH=3rdparty/Megatron-LM:$PYTHONPATH, matched Bridge and MLM losses
should agree within BF16 rounding, and files under 3rdparty/Megatron-LM/
should not be modified from this repo.
Correlation Testing
Use vanilla_gpt_pretrain_config for loss-correlation testing. This recipe uses
bare GPTModelProvider defaults (LayerNorm, GeLU, learned_absolute position
embeddings, vocab_size inherited from tokenizer) — matching MLM
pretrain_gpt.py defaults with no args.
MLM Correlation Run (2L/256H, 1 GPU)
PYTHONPATH=3rdparty/Megatron-LM:$PYTHONPATH \
uv run python -m torch.distributed.run --nproc_per_node=1 \
3rdparty/Megatron-LM/pretrain_gpt.py \
--num-layers 2 --hidden-size 256 --num-attention-heads 4 \
--ffn-hidden-size 1024 --seq-length 512 --max-position-embeddings 512 \
--micro-batch-size 4 --global-batch-size 32 \
--train-iters 10 --eval-iters 2 --eval-interval 10 \
--mock-data --bf16 --use-mcore-models \
--tokenizer-type NullTokenizer --vocab-size 32000 \
--lr 3e-4 --min-lr 3e-5 --seed 1234 --log-interval 1
Bridge Correlation Run (same config, 1 GPU)
rm -rf nemo_experiments && \
uv run python -m torch.distributed.run --nproc_per_node=1 \
scripts/training/run_recipe.py \
--recipe vanilla_gpt_pretrain_config \
model.num_layers=2 model.hidden_size=256 \
model.num_attention_heads=4 model.ffn_hidden_size=1024 \
model.seq_length=512 dataset.sequence_length=512 \
train.train_iters=10 train.global_batch_size=32 train.micro_batch_size=4 \
validation.eval_interval=10 validation.eval_iters=2 \
optimizer.lr=3e-4 optimizer.min_lr=3e-5 \
scheduler.lr_warmup_iters=1 scheduler.lr_decay_iters=10 \
rng.seed=1234 logger.log_interval=1
Verification
With matched parameters the LM losses should be nearly identical at each
iteration. Compare lm loss values from both logs — they should agree to
within BF16 rounding.
Multi-GPU Examples
MLM 2-GPU with TP=2
PYTHONPATH=3rdparty/Megatron-LM:$PYTHONPATH \
uv run python -m torch.distributed.run --nproc_per_node=2 \
3rdparty/Megatron-LM/pretrain_gpt.py \
--tensor-model-parallel-size 2 --sequence-parallel \
--num-layers 4 --hidden-size 256 --num-attention-heads 4 \
--seq-length 1024 --max-position-embeddings 1024 \
--micro-batch-size 2 --global-batch-size 16 \
--train-iters 10 --eval-iters 2 --eval-interval 10 \
--mock-data --bf16 --use-mcore-models \
--tokenizer-type NullTokenizer --vocab-size 1024 \
--lr 1e-4 --log-interval 1
Bridge 2-GPU with TP=2
rm -rf nemo_experiments && \
uv run python -m torch.distributed.run --nproc_per_node=2 \
scripts/training/run_recipe.py \
--recipe vanilla_gpt_pretrain_config \
model.tensor_model_parallel_size=2 model.sequence_parallel=true \
model.num_layers=4 model.hidden_size=256 \
model.num_attention_heads=4 model.ffn_hidden_size=1024 \
model.seq_length=1024 dataset.sequence_length=1024 \
train.train_iters=10 train.global_batch_size=16 train.micro_batch_size=2 \
validation.eval_interval=10 validation.eval_iters=2 \
scheduler.lr_warmup_iters=2 scheduler.lr_decay_iters=10 \
logger.log_interval=1
Available Recipes
Common recipes (use with --recipe):
vanilla_gpt_pretrain_config— Minimal GPT (bare GPTModelProvider defaults, ideal for correlation testing and custom configs)llama32_1b_pretrain_config— Llama 3.2 1B (16L, 2048H, GBS=512, seq=8192)llama3_8b_pretrain_config— Llama 3 8Bqwen3_8b_pretrain_config— Qwen3 8Bdeepseek_v2_lite_pretrain_config— DeepSeek-V2-Lite 16B MoE
SFT/PEFT variants use _sft_config / _peft_config suffix.
Megatron-Core Submodule
For what the submodule is and why two versions exist, see @docs/megatron-lm-to-megatron-bridge.md.
Check current version
./scripts/switch_mcore.sh status
Switch to dev for testing newer MCore features
./scripts/switch_mcore.sh dev
# uv sync (without --locked) since lockfile is for main
uv sync
Switch back to main
./scripts/switch_mcore.sh main
After pulling latest main
When you pull the latest Bridge main branch, the submodule pointer may have been updated. Re-sync the submodule:
git submodule update --init 3rdparty/Megatron-LM
Pitfalls
-
Always
rm -rf nemo_experimentsbefore a fresh correlation run. Bridge auto-resumes from stale checkpoints silently. -
uv runrequired: Always useuv run python -m torch.distributed.run(not baretorchrunorpython). -
MLM PYTHONPATH: Must include
3rdparty/Megatron-LMsogpt_builders.pyis importable. -
Scheduler overrides: When overriding
train.train_itersto a small value, also setscheduler.lr_warmup_itersandscheduler.lr_decay_itersor you get an assertion error. -
Use
dataset.sequence_lengthin CLI overrides, notdataset.seq_length. -
MoE OOM: Large MoE models require full activation recomputation and typically multi-node EP. TP does NOT reduce per-GPU expert memory.
-
uv sync --lockedfails after switching to dev: The lockfile is generated against the main MCore commit. Useuv sync(without--locked) when on dev.
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/nvidia/skills/nemo-mbridge-mlm-bridge-training">View nemo-mbridge-mlm-bridge-training on skillZs</a>