Upload llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16
Browse files- .gitattributes +1 -0
- llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/bench.slurm +111 -0
- llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/config.yaml +90 -0
- llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/log.out +330 -0
- llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/profiler/ip-26-0-163-147_624442.1719948565344187651.pt.trace.json +3 -0
- llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/status.txt +1 -0
.gitattributes
CHANGED
@@ -56,3 +56,4 @@ llama-1B/16_GPUS/dp-4_tp-1_pp-4_mbz-1/profiler/ip-26-0-171-62_3742865.1719947390
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llama-1B/16_GPUS/dp-4_tp-4_pp-1_mbz-4/profiler/ip-26-0-163-226_3009221.1719947741496087711.pt.trace.json filter=lfs diff=lfs merge=lfs -text
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llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-8/profiler/ip-26-0-168-238_1725490.1719947863309144444.pt.trace.json filter=lfs diff=lfs merge=lfs -text
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llama-1B/16_GPUS/dp-1_tp-8_pp-2_mbz-32/profiler/ip-26-0-163-226_3030049.1719948507718899130.pt.trace.json filter=lfs diff=lfs merge=lfs -text
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llama-1B/16_GPUS/dp-4_tp-4_pp-1_mbz-4/profiler/ip-26-0-163-226_3009221.1719947741496087711.pt.trace.json filter=lfs diff=lfs merge=lfs -text
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llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-8/profiler/ip-26-0-168-238_1725490.1719947863309144444.pt.trace.json filter=lfs diff=lfs merge=lfs -text
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llama-1B/16_GPUS/dp-1_tp-8_pp-2_mbz-32/profiler/ip-26-0-163-226_3030049.1719948507718899130.pt.trace.json filter=lfs diff=lfs merge=lfs -text
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llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/profiler/ip-26-0-163-147_624442.1719948565344187651.pt.trace.json filter=lfs diff=lfs merge=lfs -text
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llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/bench.slurm
ADDED
@@ -0,0 +1,111 @@
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#!/bin/bash
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#SBATCH --job-name=bench_cluster
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#SBATCH --time=00:59:00
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#SBATCH --partition=hopper-prod
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#SBATCH --nodes=2
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#SBATCH --gres=gpu:8
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#SBATCH --qos=high
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#SBATCH --ntasks-per-node=1
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#SBATCH --cpus-per-task=96
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#SBATCH --exclusive
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#SBATCH --output=/fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/log.out
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#SBATCH --error=/fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/log.out
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# Function to update status based on squeue output
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update_status() {
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job_id=$1
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status_file=$2
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# For unknown reasons, it doenst update status for pending. It only works for running
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while true; do
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job_status=$(squeue --job $job_id --noheader --format=%T)
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echo "Job status: $job_status"
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if [ -z "$job_status" ]; then
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# Job has finished or is not found
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break
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elif [ "$job_status" = "RUNNING" ]; then
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printf "running" > $status_file
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break
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fi
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sleep 10
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done
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}
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# Misc initializations.
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echo "========================"
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echo "START TIME: $(date)"
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source /fsx/ferdinandmom/miniforge3/etc/profile.d/conda.sh
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conda activate /fsx/ferdinandmom/miniforge3/envs/env-bench-cluster
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echo python3 version = $(python3 --version)
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echo "========================"
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# Slurm stuff
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export HOSTNAMES=$(scontrol show hostnames "$SLURM_JOB_NODELIST")
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export MASTER_ADDR=$(scontrol show hostnames "$SLURM_JOB_NODELIST" | head -n 1)
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export MASTER_PORT=$((1024 + RANDOM % 64511))
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export TMPDIR=/scratch
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export HF_DATASETS_CACHE="/admin/home/ferdinand_mom/.cache"
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export CUBLAS_WORKSPACE_CONFIG=":4096:8"
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export CUDA_DEVICE_MAX_CONNECTIONS="1"
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huggingface-cli login --token $HUGGINGFACE_TOKEN
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NANOTRON_REPO="/fsx/ferdinandmom/ferdinand-hf/bench_cluster/nanotron"
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CMD="$NANOTRON_REPO/run_train.py --config-file /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/config.yaml"
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LAUNCHER="torchrun \
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--nproc_per_node 8 \
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--nnodes 2 \
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--rdzv_endpoint ${MASTER_ADDR}:${MASTER_PORT} \
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--rdzv_backend c10d \
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--max_restarts 0 \
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--tee 3 \
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--node_rank ${SLURM_PROCID}"
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# Checkout the bench_cluster branch
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cd $NANOTRON_REPO
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git checkout bench_cluster
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cd ..
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# Get the current job ID
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job_id=${SLURM_JOB_ID}
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# Update status to "pending" or "running" in the background
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update_status $job_id /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/status.txt &
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# Run the main command
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srun -u $LAUNCHER $CMD
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exit_status=$?
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# Update status based on the exit status of `srun`
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if [ $exit_status -eq 0 ]; then
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printf "completed" > /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/status.txt
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else
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if grep -q "OutOfMemoryError" /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/log.out; then
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printf "oom" > /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/status.txt
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elif grep -q " CUDA error: an illegal memory access" /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/log.out; then
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printf "oom" > /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/status.txt
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elif grep -q "Timeout at NCCL" /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/log.out; then
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printf "timeout" > /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/status.txt
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else
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printf "fail" > /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/status.txt
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fi
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fi
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96 |
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# Run the report script if the job completed successfully
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97 |
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if [ $exit_status -eq 0 ]; then
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98 |
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python /fsx/ferdinandmom/ferdinand-hf/bench_cluster/main.py report --inp_dir /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16 --is_logs
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python /fsx/ferdinandmom/ferdinand-hf/bench_cluster/main.py report --inp_dir /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16 --is_profiler
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fi
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102 |
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103 |
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# Push to hub the folder using huggingface_cli
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huggingface-cli upload nanotron/bench_cluster /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16 llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16 --commit-message "Upload llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16"
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106 |
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# Verify the upload
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107 |
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if [ $? -eq 0 ]; then
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echo "Uploading to Huggingface Hub successful"
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else
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110 |
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echo "Failed to upload to Huggingface Hub"
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fi
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llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/config.yaml
ADDED
@@ -0,0 +1,90 @@
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general:
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2 |
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project: bench_cluster
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3 |
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seed: 42
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4 |
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model:
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5 |
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ddp_bucket_cap_mb: 25
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6 |
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dtype: bfloat16
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7 |
+
init_method:
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8 |
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std: 0.025
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9 |
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make_vocab_size_divisible_by: 1
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10 |
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model_config:
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11 |
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bos_token_id: 1
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12 |
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eos_token_id: 2
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13 |
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hidden_act: silu
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14 |
+
hidden_size: 2048
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15 |
+
initializer_range: 0.02
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16 |
+
intermediate_size: 4096
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17 |
+
is_llama_config: true
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18 |
+
max_position_embeddings: 4096
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19 |
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num_attention_heads: 32
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20 |
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num_hidden_layers: 24
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21 |
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num_key_value_heads: 32
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22 |
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pad_token_id: null
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23 |
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pretraining_tp: 1
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24 |
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rms_norm_eps: 1.0e-05
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25 |
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rope_scaling: null
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26 |
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rope_theta: 10000.0
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tie_word_embeddings: true
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28 |
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use_cache: true
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29 |
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vocab_size: 50257
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optimizer:
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31 |
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accumulate_grad_in_fp32: true
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32 |
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clip_grad: 1.0
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33 |
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learning_rate_scheduler:
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34 |
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learning_rate: 0.0001
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35 |
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lr_decay_style: linear
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36 |
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lr_warmup_style: linear
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lr_warmup_steps: 1
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min_decay_lr: 1.0e-05
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optimizer_factory:
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adam_beta1: 0.9
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adam_beta2: 0.95
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adam_eps: 1.0e-08
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name: adamW
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torch_adam_is_fused: true
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45 |
+
weight_decay: 0.01
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46 |
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zero_stage: 1
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47 |
+
parallelism:
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48 |
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dp: 2
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49 |
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expert_parallel_size: 1
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50 |
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pp: 2
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51 |
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pp_engine: 1f1b
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52 |
+
tp: 4
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53 |
+
tp_linear_async_communication: false
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54 |
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tp_mode: REDUCE_SCATTER
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55 |
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profiler:
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56 |
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profiler_export_path: /fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16
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57 |
+
tokenizer:
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58 |
+
tokenizer_max_length: null
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59 |
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tokenizer_name_or_path: openai-community/gpt2
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60 |
+
tokenizer_revision: null
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61 |
+
data_stages:
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62 |
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- name: Training Stage
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63 |
+
start_training_step: 1
|
64 |
+
data:
|
65 |
+
dataset:
|
66 |
+
dataset_overwrite_cache: false
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67 |
+
dataset_processing_num_proc_per_process: 64
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68 |
+
hf_dataset_config_name: null
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69 |
+
hf_dataset_or_datasets: roneneldan/TinyStories
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70 |
+
hf_dataset_splits: train
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71 |
+
text_column_name: text
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72 |
+
num_loading_workers: 32
|
73 |
+
seed: 42
|
74 |
+
lighteval: null
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75 |
+
tokens:
|
76 |
+
train_steps: 20
|
77 |
+
val_check_interval: -1
|
78 |
+
batch_accumulation_per_replica: 32
|
79 |
+
limit_test_batches: 0
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80 |
+
limit_val_batches: 0
|
81 |
+
micro_batch_size: 16
|
82 |
+
sequence_length: 4096
|
83 |
+
logging:
|
84 |
+
iteration_step_info_interval: 1
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85 |
+
log_level: info
|
86 |
+
log_level_replica: info
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87 |
+
checkpoints:
|
88 |
+
checkpoint_interval: 100000
|
89 |
+
checkpoints_path: /dev/null
|
90 |
+
resume_checkpoint_path: null
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llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/log.out
ADDED
@@ -0,0 +1,330 @@
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1 |
+
========================
|
2 |
+
START TIME: Tue Jul 2 19:25:45 UTC 2024
|
3 |
+
python3 version = Python 3.10.14
|
4 |
+
========================
|
5 |
+
The token has not been saved to the git credentials helper. Pass `add_to_git_credential=True` in this function directly or `--add-to-git-credential` if using via `huggingface-cli` if you want to set the git credential as well.
|
6 |
+
Token is valid (permission: write).
|
7 |
+
Your token has been saved to /admin/home/ferdinand_mom/.cache/huggingface/token
|
8 |
+
Login successful
|
9 |
+
Already on 'bench_cluster'
|
10 |
+
M examples/config_tiny_llama.py
|
11 |
+
M examples/config_tiny_llama.yaml
|
12 |
+
M examples/train_tiny_llama.sh
|
13 |
+
M src/nanotron/models/llama.py
|
14 |
+
M src/nanotron/trainer.py
|
15 |
+
Your branch is up to date with 'origin/bench_cluster'.
|
16 |
+
Job status: RUNNING
|
17 |
+
W0702 19:25:51.516000 140115800561472 torch/distributed/run.py:757]
|
18 |
+
W0702 19:25:51.516000 140115800561472 torch/distributed/run.py:757] *****************************************
|
19 |
+
W0702 19:25:51.516000 140115800561472 torch/distributed/run.py:757] Setting OMP_NUM_THREADS environment variable for each process to be 1 in default, to avoid your system being overloaded, please further tune the variable for optimal performance in your application as needed.
|
20 |
+
W0702 19:25:51.516000 140115800561472 torch/distributed/run.py:757] *****************************************
|
21 |
+
W0702 19:25:51.561000 140583072999232 torch/distributed/run.py:757]
|
22 |
+
W0702 19:25:51.561000 140583072999232 torch/distributed/run.py:757] *****************************************
|
23 |
+
W0702 19:25:51.561000 140583072999232 torch/distributed/run.py:757] Setting OMP_NUM_THREADS environment variable for each process to be 1 in default, to avoid your system being overloaded, please further tune the variable for optimal performance in your application as needed.
|
24 |
+
W0702 19:25:51.561000 140583072999232 torch/distributed/run.py:757] *****************************************
|
25 |
+
[default0]:07/02/2024 19:26:13 [WARNING|DP=0|PP=0|TP=0|ip-26-0-163-147]: [Vocab Size Padding] Padded vocab (size: 50257) with 3 dummy tokens (new size: 50260)
|
26 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Config:
|
27 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Config(general=GeneralArgs(project='bench_cluster',
|
28 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: run='%date_%jobid',
|
29 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: seed=42,
|
30 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: step=None,
|
31 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: consumed_train_samples=None,
|
32 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: benchmark_csv_path=None,
|
33 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: ignore_sanity_checks=True),
|
34 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: parallelism=ParallelismArgs(dp=2,
|
35 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: pp=2,
|
36 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: tp=4,
|
37 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: pp_engine=<nanotron.parallel.pipeline_parallel.engine.OneForwardOneBackwardPipelineEngine object at 0x7f80d336c790>,
|
38 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: tp_mode=<TensorParallelLinearMode.REDUCE_SCATTER: 2>,
|
39 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: tp_linear_async_communication=False,
|
40 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: expert_parallel_size=1),
|
41 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: model=ModelArgs(model_config=LlamaConfig(bos_token_id=1,
|
42 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: eos_token_id=2,
|
43 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: hidden_act='silu',
|
44 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: hidden_size=2048,
|
45 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: initializer_range=0.02,
|
46 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: intermediate_size=4096,
|
47 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: is_llama_config=True,
|
48 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: max_position_embeddings=4096,
|
49 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: num_attention_heads=32,
|
50 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: num_hidden_layers=24,
|
51 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: num_key_value_heads=32,
|
52 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: pad_token_id=None,
|
53 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: pretraining_tp=1,
|
54 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: rms_norm_eps=1e-05,
|
55 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: rope_scaling=None,
|
56 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: rope_theta=10000.0,
|
57 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: tie_word_embeddings=True,
|
58 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: use_cache=True,
|
59 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: vocab_size=50260),
|
60 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: init_method=RandomInit(std=0.025),
|
61 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: dtype=torch.bfloat16,
|
62 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: make_vocab_size_divisible_by=1,
|
63 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: ddp_bucket_cap_mb=25),
|
64 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: tokenizer=TokenizerArgs(tokenizer_name_or_path='openai-community/gpt2',
|
65 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: tokenizer_revision=None,
|
66 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: tokenizer_max_length=None),
|
67 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: checkpoints=CheckpointsArgs(checkpoints_path=Path('/dev/null'),
|
68 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: checkpoint_interval=100000,
|
69 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: save_initial_state=False,
|
70 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: resume_checkpoint_path=None,
|
71 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: checkpoints_path_is_shared_file_system=False),
|
72 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: logging=LoggingArgs(log_level='info',
|
73 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: log_level_replica='info',
|
74 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: iteration_step_info_interval=1),
|
75 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: tokens=TokensArgs(sequence_length=4096,
|
76 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: train_steps=20,
|
77 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: micro_batch_size=16,
|
78 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: batch_accumulation_per_replica=32,
|
79 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: val_check_interval=-1,
|
80 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: limit_val_batches=0,
|
81 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: limit_test_batches=0),
|
82 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: optimizer=OptimizerArgs(optimizer_factory=AdamWOptimizerArgs(adam_eps=1e-08,
|
83 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: adam_beta1=0.9,
|
84 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: adam_beta2=0.95,
|
85 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: torch_adam_is_fused=True,
|
86 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: name='adamW'),
|
87 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: zero_stage=1,
|
88 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: weight_decay=0.01,
|
89 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: clip_grad=1.0,
|
90 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: accumulate_grad_in_fp32=True,
|
91 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: learning_rate_scheduler=LRSchedulerArgs(learning_rate=0.0001,
|
92 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: lr_warmup_steps=1,
|
93 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: lr_warmup_style='linear',
|
94 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: lr_decay_style='linear',
|
95 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: lr_decay_steps=19,
|
96 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: lr_decay_starting_step=None,
|
97 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: min_decay_lr=1e-05)),
|
98 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: data_stages=[DatasetStageArgs(name='Training Stage',
|
99 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: start_training_step=1,
|
100 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: data=DataArgs(dataset=PretrainDatasetsArgs(hf_dataset_or_datasets='roneneldan/TinyStories',
|
101 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: hf_dataset_splits='train',
|
102 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: hf_dataset_config_name=None,
|
103 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: dataset_processing_num_proc_per_process=64,
|
104 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: dataset_overwrite_cache=False,
|
105 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: text_column_name='text'),
|
106 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: seed=42,
|
107 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: num_loading_workers=32))],
|
108 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: profiler=ProfilerArgs(profiler_export_path=Path('/fsx/ferdinandmom/ferdinand-hf/bench_cluster/results/llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16')),
|
109 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: lighteval=None)
|
110 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Model Config:
|
111 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: LlamaConfig(bos_token_id=1,
|
112 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: eos_token_id=2,
|
113 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: hidden_act='silu',
|
114 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: hidden_size=2048,
|
115 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: initializer_range=0.02,
|
116 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: intermediate_size=4096,
|
117 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: is_llama_config=True,
|
118 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: max_position_embeddings=4096,
|
119 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: num_attention_heads=32,
|
120 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: num_hidden_layers=24,
|
121 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: num_key_value_heads=32,
|
122 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: pad_token_id=None,
|
123 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: pretraining_tp=1,
|
124 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: rms_norm_eps=1e-05,
|
125 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: rope_scaling=None,
|
126 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: rope_theta=10000.0,
|
127 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: tie_word_embeddings=True,
|
128 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: use_cache=True,
|
129 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: vocab_size=50260)
|
130 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Building model..
|
131 |
+
[default0]:07/02/2024 19:26:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Setting PP block ranks...
|
132 |
+
[default1]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=1|ip-26-0-163-147]: Local number of parameters: 173M (329.19MiB)
|
133 |
+
[default1]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=1|ip-26-0-163-147]: [After model building] Memory usage: 344.13MiB. Peak allocated: 346.16MiB Peak reserved: 348.00MiB
|
134 |
+
[default1]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=1|ip-26-0-163-147]: No checkpoint path provided.
|
135 |
+
[default2]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=2|ip-26-0-163-147]: Local number of parameters: 173M (329.19MiB)
|
136 |
+
[default2]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=2|ip-26-0-163-147]: [After model building] Memory usage: 344.13MiB. Peak allocated: 346.16MiB Peak reserved: 348.00MiB
|
137 |
+
[default2]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=2|ip-26-0-163-147]: No checkpoint path provided.
|
138 |
+
[default3]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=3|ip-26-0-163-147]: Local number of parameters: 173M (329.19MiB)
|
139 |
+
[default3]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=3|ip-26-0-163-147]: [After model building] Memory usage: 344.13MiB. Peak allocated: 346.16MiB Peak reserved: 348.00MiB
|
140 |
+
[default3]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=3|ip-26-0-163-147]: No checkpoint path provided.
|
141 |
+
[default0]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Total number of parameters: 1.21G (2313.42MiB)
|
142 |
+
[default0]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Local number of parameters: 173M (329.19MiB)
|
143 |
+
[default0]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: [After model building] Memory usage: 344.13MiB. Peak allocated: 346.16MiB Peak reserved: 348.00MiB
|
144 |
+
[default0]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: No checkpoint path provided.
|
145 |
+
[default0]:07/02/2024 19:26:27 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Parametrizing model parameters using StandardParametrizator
|
146 |
+
[default0]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: Local number of parameters: 131M (249.16MiB)
|
147 |
+
[default0]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: [After model building] Memory usage: 260.10MiB. Peak allocated: 262.13MiB Peak reserved: 264.00MiB
|
148 |
+
[default0]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: No checkpoint path provided.
|
149 |
+
[default3]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=3|ip-26-0-172-73]: Local number of parameters: 131M (249.16MiB)
|
150 |
+
[default3]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=3|ip-26-0-172-73]: [After model building] Memory usage: 260.10MiB. Peak allocated: 262.13MiB Peak reserved: 264.00MiB
|
151 |
+
[default3]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=3|ip-26-0-172-73]: No checkpoint path provided.
|
152 |
+
[default2]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=2|ip-26-0-172-73]: Local number of parameters: 131M (249.16MiB)
|
153 |
+
[default2]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=2|ip-26-0-172-73]: [After model building] Memory usage: 260.10MiB. Peak allocated: 262.13MiB Peak reserved: 264.00MiB
|
154 |
+
[default2]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=2|ip-26-0-172-73]: No checkpoint path provided.
|
155 |
+
[default1]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=1|ip-26-0-172-73]: Local number of parameters: 131M (249.16MiB)
|
156 |
+
[default1]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=1|ip-26-0-172-73]: [After model building] Memory usage: 260.10MiB. Peak allocated: 262.13MiB Peak reserved: 264.00MiB
|
157 |
+
[default1]:07/02/2024 19:26:27 [INFO|DP=0|PP=1|TP=1|ip-26-0-172-73]: No checkpoint path provided.
|
158 |
+
[default7]:07/02/2024 19:26:28 [INFO|DP=1|PP=0|TP=3|ip-26-0-163-147]: No checkpoint path provided.
|
159 |
+
[default4]:07/02/2024 19:26:28 [INFO|DP=1|PP=0|TP=0|ip-26-0-163-147]: No checkpoint path provided.
|
160 |
+
[default5]:07/02/2024 19:26:28 [INFO|DP=1|PP=0|TP=1|ip-26-0-163-147]: No checkpoint path provided.
|
161 |
+
[default6]:07/02/2024 19:26:28 [INFO|DP=1|PP=0|TP=2|ip-26-0-163-147]: No checkpoint path provided.
|
162 |
+
[default6]:07/02/2024 19:26:28 [INFO|DP=1|PP=1|TP=2|ip-26-0-172-73]: No checkpoint path provided.
|
163 |
+
[default5]:07/02/2024 19:26:28 [INFO|DP=1|PP=1|TP=1|ip-26-0-172-73]: No checkpoint path provided.
|
164 |
+
[default4]:07/02/2024 19:26:28 [INFO|DP=1|PP=1|TP=0|ip-26-0-172-73]: No checkpoint path provided.
|
165 |
+
[default7]:07/02/2024 19:26:28 [INFO|DP=1|PP=1|TP=3|ip-26-0-172-73]: No checkpoint path provided.
|
166 |
+
[default0]:07/02/2024 19:26:30 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: [Optimizer Building] Using LearningRateForSP as learning rate
|
167 |
+
[default0]:07/02/2024 19:26:30 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: [ZeRO sharding] Size of optimizer params per rank:
|
168 |
+
[default0]:07/02/2024 19:26:30 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: [ZeRO sharding] DP Rank 0 has 86.3M out of 173M (50.00%) params' optimizer states
|
169 |
+
[default0]:07/02/2024 19:26:30 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: [ZeRO sharding] DP Rank 1 has 86.3M out of 173M (50.00%) params' optimizer states
|
170 |
+
[default0]:07/02/2024 19:26:31 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: [Training Plan] Stage Training Stage has 19 remaining training steps and has consumed 0 samples
|
171 |
+
[default0]:07/02/2024 19:26:31 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Using `datasets` library
|
172 |
+
[default0]:07/02/2024 19:26:31 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Loading tokenizer from openai-community/gpt2 and transformers/hf_hub versions ('4.41.2', '0.23.4')
|
173 |
+
[default0]:Repo card metadata block was not found. Setting CardData to empty.
|
174 |
+
[default0]:07/02/2024 19:26:32 [WARNING|DP=0|PP=0|TP=0|ip-26-0-163-147]: Repo card metadata block was not found. Setting CardData to empty.
|
175 |
+
[default0]:07/02/2024 19:26:33 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: [Training Plan] There are 1 training stages
|
176 |
+
[default0]:07/02/2024 19:26:33 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: [Stage Training Stage] start from step 1
|
177 |
+
[default0]:07/02/2024 19:26:33 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]:
|
178 |
+
[default0]:07/02/2024 19:26:33 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: [Start training] datetime: 2024-07-02 19:26:33.313347 | mbs: 16 | grad_accum: 32 | global_batch_size: 1024 | sequence_length: 4096 | train_steps: 20 | start_iteration_step: 0 | consumed_train_samples: 0
|
179 |
+
[default0]:07/02/2024 19:26:33 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Resuming training from stage Training Stage, it has trained for 0 samples and has 19 remaining train steps
|
180 |
+
[default0]:07/02/2024 19:26:33 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 1332.51MiB. Peak allocated 1332.51MiB. Peak reserved: 1338.00MiB
|
181 |
+
[default1]:07/02/2024 19:26:33 [WARNING|DP=0|PP=0|TP=1|ip-26-0-163-147]: Repo card metadata block was not found. Setting CardData to empty.
|
182 |
+
[default2]:07/02/2024 19:26:33 [WARNING|DP=0|PP=0|TP=2|ip-26-0-163-147]: Repo card metadata block was not found. Setting CardData to empty.
|
183 |
+
[default5]:Repo card metadata block was not found. Setting CardData to empty.
|
184 |
+
[default3]:07/02/2024 19:26:33 [WARNING|DP=0|PP=0|TP=3|ip-26-0-163-147]: Repo card metadata block was not found. Setting CardData to empty.
|
185 |
+
[default6]:Repo card metadata block was not found. Setting CardData to empty.
|
186 |
+
[default7]:Repo card metadata block was not found. Setting CardData to empty.
|
187 |
+
[default5]:07/02/2024 19:26:33 [WARNING|DP=1|PP=0|TP=1|ip-26-0-163-147]: Repo card metadata block was not found. Setting CardData to empty.
|
188 |
+
[default7]:07/02/2024 19:26:33 [WARNING|DP=1|PP=0|TP=3|ip-26-0-163-147]: Repo card metadata block was not found. Setting CardData to empty.
|
189 |
+
[default1]:Repo card metadata block was not found. Setting CardData to empty.
|
190 |
+
[default4]:07/02/2024 19:26:33 [WARNING|DP=1|PP=0|TP=0|ip-26-0-163-147]: Repo card metadata block was not found. Setting CardData to empty.
|
191 |
+
[default6]:07/02/2024 19:26:33 [WARNING|DP=1|PP=0|TP=2|ip-26-0-163-147]: Repo card metadata block was not found. Setting CardData to empty.
|
192 |
+
[default4]:Repo card metadata block was not found. Setting CardData to empty.
|
193 |
+
[default0]:07/02/2024 19:26:33 [WARNING|DP=0|PP=1|TP=0|ip-26-0-172-73]: Repo card metadata block was not found. Setting CardData to empty.
|
194 |
+
[default3]:07/02/2024 19:26:33 [WARNING|DP=0|PP=1|TP=3|ip-26-0-172-73]: Repo card metadata block was not found. Setting CardData to empty.
|
195 |
+
[default3]:Repo card metadata block was not found. Setting CardData to empty.
|
196 |
+
[default0]:Repo card metadata block was not found. Setting CardData to empty.
|
197 |
+
[default3]:Repo card metadata block was not found. Setting CardData to empty.
|
198 |
+
[default2]:Repo card metadata block was not found. Setting CardData to empty.
|
199 |
+
[default6]:Repo card metadata block was not found. Setting CardData to empty.
|
200 |
+
[default1]:07/02/2024 19:26:33 [WARNING|DP=0|PP=1|TP=1|ip-26-0-172-73]: Repo card metadata block was not found. Setting CardData to empty.
|
201 |
+
[default6]:07/02/2024 19:26:33 [WARNING|DP=1|PP=1|TP=2|ip-26-0-172-73]: Repo card metadata block was not found. Setting CardData to empty.
|
202 |
+
[default7]:Repo card metadata block was not found. Setting CardData to empty.
|
203 |
+
[default4]:Repo card metadata block was not found. Setting CardData to empty.
|
204 |
+
[default5]:07/02/2024 19:26:33 [WARNING|DP=1|PP=1|TP=1|ip-26-0-172-73]: Repo card metadata block was not found. Setting CardData to empty.
|
205 |
+
[default2]:07/02/2024 19:26:33 [WARNING|DP=0|PP=1|TP=2|ip-26-0-172-73]: Repo card metadata block was not found. Setting CardData to empty.
|
206 |
+
[default4]:07/02/2024 19:26:33 [WARNING|DP=1|PP=1|TP=0|ip-26-0-172-73]: Repo card metadata block was not found. Setting CardData to empty.
|
207 |
+
[default5]:Repo card metadata block was not found. Setting CardData to empty.
|
208 |
+
[default1]:Repo card metadata block was not found. Setting CardData to empty.
|
209 |
+
[default7]:07/02/2024 19:26:33 [WARNING|DP=1|PP=1|TP=3|ip-26-0-172-73]: Repo card metadata block was not found. Setting CardData to empty.
|
210 |
+
[default2]:Repo card metadata block was not found. Setting CardData to empty.
|
211 |
+
[default3]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
212 |
+
[default3]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
213 |
+
[default0]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
214 |
+
[default0]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
215 |
+
[default1]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
216 |
+
[default1]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
217 |
+
[default2]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
218 |
+
[default2]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
219 |
+
[default4]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
220 |
+
[default4]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
221 |
+
[default7]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
222 |
+
[default7]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
223 |
+
[default6]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
224 |
+
[default6]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
225 |
+
[default5]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
226 |
+
[default5]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
227 |
+
[default0]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
228 |
+
[default0]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
229 |
+
[default1]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
230 |
+
[default1]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
231 |
+
[default3]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
232 |
+
[default3]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
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+
[default2]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
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[default2]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
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+
[default5]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
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[default5]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
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+
[default6]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
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[default6]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
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+
[default7]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
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[default7]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
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+
[default4]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/autograd/graph.py:744: UserWarning: c10d::allreduce_: an autograd kernel was not registered to the Autograd key(s) but we are trying to backprop through it. This may lead to silently incorrect behavior. This behavior is deprecated and will be removed in a future version of PyTorch. If your operator is differentiable, please ensure you have registered an autograd kernel to the correct Autograd key (e.g. DispatchKey::Autograd, DispatchKey::CompositeImplicitAutograd). If your operator is not differentiable, or to squash this warning and use the previous behavior, please register torch::CppFunction::makeFallthrough() to DispatchKey::Autograd. (Triggered internally at ../torch/csrc/autograd/autograd_not_implemented_fallback.cpp:63.)
|
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[default4]: return Variable._execution_engine.run_backward( # Calls into the C++ engine to run the backward pass
|
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+
[default1]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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[default1]: warnings.warn(
|
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[default2]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default2]: warnings.warn(
|
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+
[default0]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default0]: warnings.warn(
|
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+
[default1]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default1]: warnings.warn(
|
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+
[default0]:07/02/2024 19:26:55 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 1404.07MiB. Peak allocated 46716.80MiB. Peak reserved: 47110.00MiB
|
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[default2]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default2]: warnings.warn(
|
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+
[default3]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default3]: warnings.warn(
|
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+
[default0]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default0]: warnings.warn(
|
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+
[default3]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default3]: warnings.warn(
|
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+
[default7]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default7]: warnings.warn(
|
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+
[default6]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default6]: warnings.warn(
|
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+
[default5]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default5]: warnings.warn(
|
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+
[default4]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default4]: warnings.warn(
|
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+
[default6]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default6]: warnings.warn(
|
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+
[default5]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default5]: warnings.warn(
|
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+
[default7]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default7]: warnings.warn(
|
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[default4]:/fsx/ferdinandmom/miniforge3/envs/env-bench-cluster/lib/python3.10/site-packages/torch/distributed/distributed_c10d.py:2261: UserWarning: torch.distributed.all_reduce_coalesced will be deprecated. If you must use it, please revisit our documentation later at https://pytorch.org/docs/master/distributed.html#collective-functions
|
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+
[default4]: warnings.warn(
|
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+
[default0]:07/02/2024 19:27:02 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 2888.12MiB. Peak reserved: 47440.00MiB
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[default0]:07/02/2024 19:27:02 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 1 / 20 | consumed_tokens: 4.19M | elapsed_time_per_iteration_ms: 27.5K | tokens_per_sec: 152K | tokens_per_sec_per_gpu: 9.52K | global_batch_size: 1.02K | lm_loss: 11.1 | lr: 0.0001 | model_tflops_per_gpu: 86.4 | hardware_tflops_per_gpu: 86.4 | grad_norm: 15 | cuda_memory_allocated: 1.65G | cuda_max_memory_reserved: 26.6G | hd_total_memory_tb: 312G | hd_used_memory_tb: 65.5G | hd_free_memory_tb: 247G
|
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[default0]:07/02/2024 19:27:15 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47696.00MiB
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[default0]:07/02/2024 19:27:16 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 2888.12MiB. Peak reserved: 47696.00MiB
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[default0]:07/02/2024 19:27:16 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 2 / 20 | consumed_tokens: 8.39M | elapsed_time_per_iteration_ms: 13.9K | tokens_per_sec: 302K | tokens_per_sec_per_gpu: 18.9K | global_batch_size: 1.02K | lm_loss: 11.1 | lr: 9.53e-05 | model_tflops_per_gpu: 171 | hardware_tflops_per_gpu: 171 | grad_norm: 15.1 | cuda_memory_allocated: 1.65G | cuda_max_memory_reserved: 26.6G | hd_total_memory_tb: 312G | hd_used_memory_tb: 65.5G | hd_free_memory_tb: 247G
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[default0]:07/02/2024 19:27:28 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:27:29 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 2888.12MiB. Peak reserved: 47952.00MiB
|
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[default0]:STAGE:2024-07-02 19:27:29 624442:624442 ActivityProfilerController.cpp:314] Completed Stage: Warm Up
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[default0]:07/02/2024 19:27:29 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 3 / 20 | consumed_tokens: 12.6M | elapsed_time_per_iteration_ms: 12.9K | tokens_per_sec: 325K | tokens_per_sec_per_gpu: 20.3K | global_batch_size: 1.02K | lm_loss: 11.4 | lr: 9.05e-05 | model_tflops_per_gpu: 184 | hardware_tflops_per_gpu: 184 | grad_norm: 106 | cuda_memory_allocated: 1.65G | cuda_max_memory_reserved: 26.6G | hd_total_memory_tb: 312G | hd_used_memory_tb: 65.5G | hd_free_memory_tb: 247G
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[default0]:07/02/2024 19:27:41 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:27:42 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 4 / 20 | consumed_tokens: 16.8M | elapsed_time_per_iteration_ms: 13.3K | tokens_per_sec: 315K | tokens_per_sec_per_gpu: 19.7K | global_batch_size: 1.02K | lm_loss: 11.7 | lr: 8.58e-05 | model_tflops_per_gpu: 179 | hardware_tflops_per_gpu: 179 | grad_norm: 24.5 | cuda_memory_allocated: 1.65G | cuda_max_memory_reserved: 26.6G | hd_total_memory_tb: 312G | hd_used_memory_tb: 65.5G | hd_free_memory_tb: 247G
|
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[default0]:07/02/2024 19:27:42 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 2888.12MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:27:55 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:27:55 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 5 / 20 | consumed_tokens: 21M | elapsed_time_per_iteration_ms: 13K | tokens_per_sec: 324K | tokens_per_sec_per_gpu: 20.2K | global_batch_size: 1.02K | lm_loss: 10 | lr: 8.11e-05 | model_tflops_per_gpu: 184 | hardware_tflops_per_gpu: 184 | grad_norm: 11
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[default0]:07/02/2024 19:28:07 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 6 / 20 | consumed_tokens: 25.2M | elapsed_time_per_iteration_ms: 12.5K | tokens_per_sec: 335K | tokens_per_sec_per_gpu: 20.9K | global_batch_size: 1.02K | lm_loss: 9.46 | lr: 7.63e-05 | model_tflops_per_gpu: 190 | hardware_tflops_per_gpu: 190 | grad_norm: 7.2
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[default0]:STAGE:2024-07-02 19:28:19 624442:624442 ActivityProfilerController.cpp:320] Completed Stage: Collection
|
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[default0]:STAGE:2024-07-02 19:28:20 624442:624442 ActivityProfilerController.cpp:324] Completed Stage: Post Processing
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[default0]:07/02/2024 19:29:44 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:29:56 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:29:56 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 7 / 20 | consumed_tokens: 29.4M | elapsed_time_per_iteration_ms: 108K | tokens_per_sec: 38.7K | tokens_per_sec_per_gpu: 2.42K | global_batch_size: 1.02K | lm_loss: 8.87 | lr: 7.16e-05 | model_tflops_per_gpu: 21.9 | hardware_tflops_per_gpu: 21.9 | grad_norm: 5.99
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[default0]:07/02/2024 19:30:09 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:30:09 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 8 / 20 | consumed_tokens: 33.6M | elapsed_time_per_iteration_ms: 13.5K | tokens_per_sec: 311K | tokens_per_sec_per_gpu: 19.4K | global_batch_size: 1.02K | lm_loss: 8.44 | lr: 6.68e-05 | model_tflops_per_gpu: 176 | hardware_tflops_per_gpu: 176 | grad_norm: 5.47
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[default0]:07/02/2024 19:30:22 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 9 / 20 | consumed_tokens: 37.7M | elapsed_time_per_iteration_ms: 12.4K | tokens_per_sec: 337K | tokens_per_sec_per_gpu: 21.1K | global_batch_size: 1.02K | lm_loss: 8.17 | lr: 6.21e-05 | model_tflops_per_gpu: 191 | hardware_tflops_per_gpu: 191 | grad_norm: 6.22
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[default0]:07/02/2024 19:30:22 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:30:34 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:30:34 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 10 / 20 | consumed_tokens: 41.9M | elapsed_time_per_iteration_ms: 12.7K | tokens_per_sec: 331K | tokens_per_sec_per_gpu: 20.7K | global_batch_size: 1.02K | lm_loss: 7.87 | lr: 5.74e-05 | model_tflops_per_gpu: 188 | hardware_tflops_per_gpu: 188 | grad_norm: 4.35
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[default0]:07/02/2024 19:30:47 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:30:47 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 11 / 20 | consumed_tokens: 46.1M | elapsed_time_per_iteration_ms: 12.9K | tokens_per_sec: 326K | tokens_per_sec_per_gpu: 20.4K | global_batch_size: 1.02K | lm_loss: 7.74 | lr: 5.26e-05 | model_tflops_per_gpu: 185 | hardware_tflops_per_gpu: 185 | grad_norm: 4.47
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[default0]:07/02/2024 19:31:00 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:31:00 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 12 / 20 | consumed_tokens: 50.3M | elapsed_time_per_iteration_ms: 12.7K | tokens_per_sec: 331K | tokens_per_sec_per_gpu: 20.7K | global_batch_size: 1.02K | lm_loss: 7.6 | lr: 4.79e-05 | model_tflops_per_gpu: 188 | hardware_tflops_per_gpu: 188 | grad_norm: 4.41
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[default0]:07/02/2024 19:31:13 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:31:13 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 13 / 20 | consumed_tokens: 54.5M | elapsed_time_per_iteration_ms: 12.8K | tokens_per_sec: 328K | tokens_per_sec_per_gpu: 20.5K | global_batch_size: 1.02K | lm_loss: 7.41 | lr: 4.32e-05 | model_tflops_per_gpu: 186 | hardware_tflops_per_gpu: 186 | grad_norm: 3.72
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[default0]:07/02/2024 19:31:26 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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[default0]:07/02/2024 19:31:26 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 14 / 20 | consumed_tokens: 58.7M | elapsed_time_per_iteration_ms: 13.7K | tokens_per_sec: 306K | tokens_per_sec_per_gpu: 19.1K | global_batch_size: 1.02K | lm_loss: 7.27 | lr: 3.84e-05 | model_tflops_per_gpu: 173 | hardware_tflops_per_gpu: 173 | grad_norm: 3.19
|
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[default0]:07/02/2024 19:31:40 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 15 / 20 | consumed_tokens: 62.9M | elapsed_time_per_iteration_ms: 13.3K | tokens_per_sec: 316K | tokens_per_sec_per_gpu: 19.8K | global_batch_size: 1.02K | lm_loss: 7.17 | lr: 3.37e-05 | model_tflops_per_gpu: 179 | hardware_tflops_per_gpu: 179 | grad_norm: 3
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[default0]:07/02/2024 19:31:40 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
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312 |
+
[default0]:07/02/2024 19:31:53 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 16 / 20 | consumed_tokens: 67.1M | elapsed_time_per_iteration_ms: 13.4K | tokens_per_sec: 312K | tokens_per_sec_per_gpu: 19.5K | global_batch_size: 1.02K | lm_loss: 7.07 | lr: 2.89e-05 | model_tflops_per_gpu: 177 | hardware_tflops_per_gpu: 177 | grad_norm: 3
|
313 |
+
[default0]:07/02/2024 19:31:53 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
|
314 |
+
[default0]:07/02/2024 19:32:08 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 17 / 20 | consumed_tokens: 71.3M | elapsed_time_per_iteration_ms: 14.8K | tokens_per_sec: 283K | tokens_per_sec_per_gpu: 17.7K | global_batch_size: 1.02K | lm_loss: 6.96 | lr: 2.42e-05 | model_tflops_per_gpu: 160 | hardware_tflops_per_gpu: 160 | grad_norm: 2.81
|
315 |
+
[default0]:07/02/2024 19:32:08 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
|
316 |
+
[default0]:07/02/2024 19:32:21 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
|
317 |
+
[default0]:07/02/2024 19:32:21 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 18 / 20 | consumed_tokens: 75.5M | elapsed_time_per_iteration_ms: 13.3K | tokens_per_sec: 314K | tokens_per_sec_per_gpu: 19.7K | global_batch_size: 1.02K | lm_loss: 6.88 | lr: 1.95e-05 | model_tflops_per_gpu: 178 | hardware_tflops_per_gpu: 178 | grad_norm: 3
|
318 |
+
[default0]:07/02/2024 19:32:35 [INFO|DP=0|PP=0|TP=0|ip-26-0-163-147]: Memory usage: 2064.33MiB. Peak allocated 47377.06MiB. Peak reserved: 47952.00MiB
|
319 |
+
[default0]:07/02/2024 19:32:35 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 19 / 20 | consumed_tokens: 79.7M | elapsed_time_per_iteration_ms: 13.6K | tokens_per_sec: 308K | tokens_per_sec_per_gpu: 19.2K | global_batch_size: 1.02K | lm_loss: 6.82 | lr: 1.47e-05 | model_tflops_per_gpu: 174 | hardware_tflops_per_gpu: 174 | grad_norm: 3.08
|
320 |
+
[default0]:07/02/2024 19:32:49 [INFO|DP=0|PP=1|TP=0|ip-26-0-172-73]: iteration: 20 / 20 | consumed_tokens: 83.9M | elapsed_time_per_iteration_ms: 14.1K | tokens_per_sec: 298K | tokens_per_sec_per_gpu: 18.6K | global_batch_size: 1.02K | lm_loss: 6.77 | lr: 1e-05 | model_tflops_per_gpu: 169 | hardware_tflops_per_gpu: 169 | grad_norm: 2.98
|
321 |
+
Traceback (most recent call last):
|
322 |
+
File "/fsx/ferdinandmom/ferdinand-hf/bench_cluster/main.py", line 4, in <module>
|
323 |
+
from bench_cluster.submit_jobs import submit_jobs, check_status
|
324 |
+
ImportError: cannot import name 'check_status' from 'bench_cluster.submit_jobs' (/fsx/ferdinandmom/ferdinand-hf/bench_cluster/bench_cluster/submit_jobs.py)
|
325 |
+
Traceback (most recent call last):
|
326 |
+
File "/fsx/ferdinandmom/ferdinand-hf/bench_cluster/main.py", line 4, in <module>
|
327 |
+
from bench_cluster.submit_jobs import submit_jobs, check_status
|
328 |
+
ImportError: cannot import name 'check_status' from 'bench_cluster.submit_jobs' (/fsx/ferdinandmom/ferdinand-hf/bench_cluster/bench_cluster/submit_jobs.py)
|
329 |
+
Consider using `hf_transfer` for faster uploads. This solution comes with some limitations. See https://huggingface.co/docs/huggingface_hub/hf_transfer for more details.
|
330 |
+
|
llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/profiler/ip-26-0-163-147_624442.1719948565344187651.pt.trace.json
ADDED
@@ -0,0 +1,3 @@
|
|
|
|
|
|
|
|
|
1 |
+
version https://git-lfs.github.com/spec/v1
|
2 |
+
oid sha256:a98a86a70d2a77afe7dcb16b1616bb1feaa3d2d0afe265aeecb615d9ae8cddcc
|
3 |
+
size 2632437586
|
llama-1B/16_GPUS/dp-2_tp-4_pp-2_mbz-16/status.txt
ADDED
@@ -0,0 +1 @@
|
|
|
|
|
1 |
+
completed
|