devboxbackup / playground /inference /active_cases /run_parallel_models.sh
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#!/bin/bash
# Run 20-model active-cases eval in parallel across 8 GPUs.
# Models are assigned to GPUs in round-robin batches of 8.
# Each model runs on a dedicated GPU β†’ full utilization.
#
# Usage:
# bash run_parallel_models.sh [--skip-extract] [--models m1,m2,...]
set -uo pipefail
SCRIPT_DIR=/mlx/users/jiashuo.fan/playground/inference/active_cases
PYTHON_ABBIE=/mlx/users/jiashuo.fan/miniconda3/envs/abbie/bin/python3
LOG_DIR=$SCRIPT_DIR/logs
FRAMES_DIR=$SCRIPT_DIR/frames_cache
OUTPUT_DIR=/mnt/bn/bohanzhainas1/jiashuo/exp/active_cases_eval
mkdir -p "$LOG_DIR" "$FRAMES_DIR" "$OUTPUT_DIR"
SKIP_EXTRACT=false
ONLY_MODELS=""
for arg in "$@"; do
case $arg in
--skip-extract) SKIP_EXTRACT=true ;;
--models=*) ONLY_MODELS="${arg#*=}" ;;
esac
done
# ── Step 1: Frame extraction ─────────────────────────────────────────────────
if [ "$SKIP_EXTRACT" = false ]; then
echo "========================================================"
echo "STEP 1: Extracting frames (if not already done)"
echo "========================================================"
n_frames=$(ls "$FRAMES_DIR"/*.json 2>/dev/null | wc -l)
if [ "$n_frames" -ge 200 ]; then
echo "[SKIP] Already have $n_frames frame JSON files."
else
LOG_EXTRACT=$LOG_DIR/extract_frames.log
$PYTHON_ABBIE -u $SCRIPT_DIR/extract_frames.py \
--output-dir "$FRAMES_DIR" 2>&1 | tee "$LOG_EXTRACT"
echo "Frame extraction done."
fi
fi
# ── Model list: name:type:flags ──────────────────────────────────────────────
ALL_MODELS=(
"qwen3vl_finetuned:qwen3vl:--finetuned"
"qwen3vl_base:qwen3vl:"
"qwen3vl_instruct:qwen3vl:"
"qwen25vl_7b:qwen25vl:"
"internvl3_8b:internvl:"
"internvl35:internvl:"
"llava_ov:llava:"
"llama32_11b_vision:llama32_vision:"
"phi35_vision:phi3_vision:"
"minicpm_v25:minicpm_v:"
"qwen2vl_7b:qwen25vl:"
"pixtral_12b:pixtral:"
"smolvlm:generic:"
"glm4v_9b:generic:"
"idefics3_8b:generic:"
"phi4_multimodal:generic:"
"cogvlm2_19b:generic:"
"deepseek_vl2_small:generic:"
"videollama2_7b:generic:"
"gemma3_4b:generic:"
"janus_pro_7b:janus:"
"molmo_7b:molmo:"
"moondream2:moondream:"
)
# Filter to requested models if --models= was specified
if [ -n "$ONLY_MODELS" ]; then
IFS=',' read -ra REQUESTED <<< "$ONLY_MODELS"
FILTERED=()
for entry in "${ALL_MODELS[@]}"; do
model_name="${entry%%:*}"
for req in "${REQUESTED[@]}"; do
[ "$model_name" = "$req" ] && FILTERED+=("$entry")
done
done
ALL_MODELS=("${FILTERED[@]:-}")
fi
# Filter out already-completed models
PENDING=()
for entry in "${ALL_MODELS[@]}"; do
model_name="${entry%%:*}"
OUT_FILE="$OUTPUT_DIR/${model_name}.json"
if [ -f "$OUT_FILE" ]; then
N_RESULTS=$($PYTHON_ABBIE -c "
import json
d = json.load(open('$OUT_FILE'))
print(d.get('evaluated', 0))
" 2>/dev/null || echo "0")
if [ "$N_RESULTS" -ge 200 ]; then
echo "[DONE] $model_name ($N_RESULTS evaluated) β€” skipping"
continue
fi
fi
PENDING+=("$entry")
done
echo ""
echo "========================================================"
echo "STEP 2: Running ${#PENDING[@]} models on 8 GPUs"
echo "========================================================"
echo ""
if [ ${#PENDING[@]} -eq 0 ]; then
echo "All models already evaluated!"
else
# Process in batches of 8 (one per GPU)
i=0
while [ $i -lt ${#PENDING[@]} ]; do
BATCH_PIDS=()
BATCH_NAMES=()
GPU_ID=0
echo "--- Batch starting at index $i ---"
for (( j=i; j<i+8 && j<${#PENDING[@]}; j++ )); do
entry="${PENDING[$j]}"
model_name="${entry%%:*}"
rest="${entry#*:}"
model_type="${rest%%:*}"
extra_flags="${rest#*:}"
# Check model path exists
MODEL_PATH=$($PYTHON_ABBIE -c "
import sys; sys.path.insert(0,'$SCRIPT_DIR')
from models import MODELS_BY_NAME
m = MODELS_BY_NAME.get('$model_name', {})
print(m.get('model_path', ''))
" 2>/dev/null)
if [ -z "$MODEL_PATH" ] || [ ! -d "$MODEL_PATH" ]; then
echo "[SKIP] $model_name β€” model path not found: $MODEL_PATH"
GPU_ID=$((GPU_ID + 1))
continue
fi
LOG_FILE="$LOG_DIR/eval_${model_name}.log"
CMD="CUDA_VISIBLE_DEVICES=$GPU_ID $PYTHON_ABBIE -u $SCRIPT_DIR/eval_active_cases.py \
--model-name $model_name \
--model-type $model_type \
--frames-dir $FRAMES_DIR \
--output-dir $OUTPUT_DIR \
--gpu-id $GPU_ID"
[ -n "$extra_flags" ] && CMD="$CMD $extra_flags"
echo " GPU$GPU_ID ← $model_name (log: $LOG_FILE)"
eval "$CMD" >> "$LOG_FILE" 2>&1 &
BATCH_PIDS+=($!)
BATCH_NAMES+=("$model_name")
GPU_ID=$((GPU_ID + 1))
done
# Wait for all in this batch to finish
echo "Waiting for batch: ${BATCH_NAMES[*]}"
for pid in "${BATCH_PIDS[@]}"; do
wait "$pid" || true
done
echo "Batch done: $(date)"
i=$((i + 8))
done
fi
# ── Step 3: Summary table ────────────────────────────────────────────────────
echo ""
echo "========================================================"
echo "FINAL SUMMARY"
echo "========================================================"
$PYTHON_ABBIE -u $SCRIPT_DIR/compare_results.py \
--results-dir "$OUTPUT_DIR" 2>/dev/null || echo "(no results yet)"
echo ""
echo "Results at: $OUTPUT_DIR"
echo "Logs at: $LOG_DIR"