Dataset Viewer
Auto-converted to Parquet Duplicate
prompt
stringclasses
1 value
label
stringlengths
107
131
metadata
dict
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Plate-None-Fridge-7/trial_T20190909_065023_650475/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Plate-None-Fridge-7/trial_T20190909_065023_650475/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-Candle-None-CounterTop-417/trial_T20190909_142343_223524/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-Candle-None-CounterTop-417/trial_T20190909_142343_223524/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/look_at_obj_in_light-CD-None-DeskLamp-305/trial_T20190909_132423_909909/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/look_at_obj_in_light-CD-None-DeskLamp-305/trial_T20190909_132423_909909/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curricu...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-KeyChain-None-ArmChair-217/trial_T20190906_213211_993051/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-KeyChain-None-ArmChair-217/trial_T20190906_213211_993051/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Bowl-None-DiningTable-21/trial_T20190907_000031_668520/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Bowl-None-DiningTable-21/trial_T20190907_000031_668520/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "r...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-TissueBox-None-Toilet-402/trial_T20190908_060020_023543/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-TissueBox-None-Toilet-402/trial_T20190908_060020_023543/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "c...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-SoapBottle-None-Toilet-426/trial_T20190906_180946_873820/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-SoapBottle-None-Toilet-426/trial_T20190906_180946_873820/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-CreditCard-None-Shelf-307/trial_T20190908_141017_721379/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-CreditCard-None-Shelf-307/trial_T20190908_141017_721379/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "c...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-HandTowel-None-CounterTop-409/trial_T20190909_065422_153174/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-HandTowel-None-CounterTop-409/trial_T20190909_065422_153174/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl",...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-CD-None-Safe-317/trial_T20190906_180511_344768/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-CD-None-Safe-317/trial_T20190906_180511_344768/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curriculum...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Book-None-Bed-328/trial_T20190907_060344_224282/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Book-None-Bed-328/trial_T20190907_060344_224282/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curricul...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Kettle-None-DiningTable-18/trial_T20190906_233756_544999/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Kettle-None-DiningTable-18/trial_T20190906_233756_544999/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Tomato-None-DiningTable-11/trial_T20190908_215900_237409/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Tomato-None-DiningTable-11/trial_T20190908_215900_237409/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-Book-None-Desk-310/trial_T20190909_121828_424706/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-Book-None-Desk-310/trial_T20190909_121828_424706/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curricul...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Egg-None-CounterTop-12/trial_T20190908_215643_953236/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Egg-None-CounterTop-12/trial_T20190908_215643_953236/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl",...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Tomato-None-DiningTable-23/trial_T20190909_000922_271997/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Tomato-None-DiningTable-23/trial_T20190909_000922_271997/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/look_at_obj_in_light-CellPhone-None-DeskLamp-316/trial_T20190907_075452_465579/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/look_at_obj_in_light-CellPhone-None-DeskLamp-316/trial_T20190907_075452_465579/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/look_at_obj_in_light-CD-None-DeskLamp-323/trial_T20190908_051139_258301/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/look_at_obj_in_light-CD-None-DeskLamp-323/trial_T20190908_051139_258301/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curricu...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-Box-None-ArmChair-212/trial_T20190908_032830_891800/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-Box-None-ArmChair-212/trial_T20190908_032830_891800/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curri...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-SoapBottle-None-GarbageCan-421/trial_T20190908_045256_126150/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-SoapBottle-None-GarbageCan-421/trial_T20190908_045256_126150/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl",...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-SprayBottle-None-Toilet-411/trial_T20190909_110934_367159/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-SprayBottle-None-Toilet-411/trial_T20190909_110934_367159/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Pan-None-CounterTop-7/trial_T20190909_072619_689367/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Pan-None-CounterTop-7/trial_T20190909_072619_689367/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Egg-None-GarbageCan-2/trial_T20190909_101128_479012/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Egg-None-GarbageCan-2/trial_T20190909_101128_479012/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/look_at_obj_in_light-CD-None-DeskLamp-307/trial_T20190906_200425_670027/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/look_at_obj_in_light-CD-None-DeskLamp-307/trial_T20190906_200425_670027/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curricu...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Apple-None-Fridge-12/trial_T20190909_151749_236238/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Apple-None-Fridge-12/trial_T20190909_151749_236238/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-Pillow-None-Ottoman-208/trial_T20190906_172125_756234/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-Pillow-None-Ottoman-208/trial_T20190906_172125_756234/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "cur...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Cloth-None-Toilet-417/trial_T20190908_152140_753366/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Cloth-None-Toilet-417/trial_T20190908_152140_753366/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curr...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Potato-None-Fridge-6/trial_T20190907_125528_464872/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Potato-None-Fridge-6/trial_T20190907_125528_464872/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Candle-None-Toilet-417/trial_T20190907_182625_222433/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Candle-None-Toilet-417/trial_T20190907_182625_222433/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "cur...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Tomato-None-CounterTop-7/trial_T20190906_185127_887683/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Tomato-None-CounterTop-7/trial_T20190906_185127_887683/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Spoon-None-SideTable-21/trial_T20190908_232124_221443/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Spoon-None-SideTable-21/trial_T20190908_232124_221443/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-SoapBottle-None-Toilet-406/trial_T20190909_104206_052441/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-SoapBottle-None-Toilet-406/trial_T20190909_104206_052441/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Bowl-None-Shelf-7/trial_T20190906_185932_528745/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Bowl-None-Shelf-7/trial_T20190906_185932_528745/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "c...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Cup-None-SideTable-28/trial_T20190907_165415_245751/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Cup-None-SideTable-28/trial_T20190907_165415_245751/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Bowl-None-Microwave-23/trial_T20190908_101019_780853/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Bowl-None-Microwave-23/trial_T20190908_101019_780853/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl"...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-SoapBar-None-GarbageCan-418/trial_T20190909_055504_993999/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-SoapBar-None-GarbageCan-418/trial_T20190909_055504_993999/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/look_at_obj_in_light-AlarmClock-None-DeskLamp-318/trial_T20190906_180821_654558/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/look_at_obj_in_light-AlarmClock-None-DeskLamp-318/trial_T20190906_180821_654558/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Newspaper-None-ArmChair-222/trial_T20190907_044124_447733/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Newspaper-None-ArmChair-222/trial_T20190907_044124_447733/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-SaltShaker-None-Drawer-5/trial_T20190907_151211_150451/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-SaltShaker-None-Drawer-5/trial_T20190907_151211_150451/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "c...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-KeyChain-None-ArmChair-322/trial_T20190908_223409_609518/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-KeyChain-None-ArmChair-322/trial_T20190908_223409_609518/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Candle-None-Drawer-411/trial_T20190909_055913_544549/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Candle-None-Drawer-411/trial_T20190909_055913_544549/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "cur...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Tomato-None-Fridge-18/trial_T20190909_045742_414595/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Tomato-None-Fridge-18/trial_T20190909_045742_414595/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl",...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Ladle-None-Cabinet-16/trial_T20190910_022155_266935/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Ladle-None-Cabinet-16/trial_T20190910_022155_266935/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl",...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Bowl-None-Fridge-6/trial_T20190911_205333_848673/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Bowl-None-Fridge-6/trial_T20190911_205333_848673/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-Kettle-None-Cabinet-18/trial_T20190909_013018_393040/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-Kettle-None-Cabinet-18/trial_T20190909_013018_393040/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curr...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-SoapBottle-None-Drawer-423/trial_T20190909_064832_959288/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-SoapBottle-None-Drawer-423/trial_T20190909_064832_959288/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Newspaper-None-Sofa-212/trial_T20190908_112632_208041/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Newspaper-None-Sofa-212/trial_T20190908_112632_208041/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "cu...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Knife-None-Drawer-21/trial_T20190908_141841_920948/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Knife-None-Drawer-21/trial_T20190908_141841_920948/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-CD-None-Safe-317/trial_T20190906_180452_867280/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-CD-None-Safe-317/trial_T20190906_180452_867280/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curriculum...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-Bowl-None-Fridge-6/trial_T20190906_230933_751794/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-Bowl-None-Fridge-6/trial_T20190906_230933_751794/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curricul...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Pot-None-StoveBurner-4/trial_T20190907_151406_550745/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Pot-None-StoveBurner-4/trial_T20190907_151406_550745/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl"...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-Box-None-Sofa-205/trial_T20190907_214830_497445/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-Box-None-Sofa-205/trial_T20190907_214830_497445/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curriculu...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Mug-None-CoffeeMachine-14/trial_T20190906_213559_289639/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Mug-None-CoffeeMachine-14/trial_T20190906_213559_289639/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-ToiletPaper-None-Cabinet-402/trial_T20190908_144830_163459/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-ToiletPaper-None-Cabinet-402/trial_T20190908_144830_163459/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Ladle-None-CounterTop-20/trial_T20190907_130836_804995/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Ladle-None-CounterTop-20/trial_T20190907_130836_804995/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "r...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Egg-None-GarbageCan-5/trial_T20190906_190603_375591/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Egg-None-GarbageCan-5/trial_T20190906_190603_375591/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-Watch-None-CoffeeTable-207/trial_T20190907_152215_435376/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-Watch-None-CoffeeTable-207/trial_T20190907_152215_435376/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-SaltShaker-None-SideTable-21/trial_T20190909_041626_844806/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-SaltShaker-None-SideTable-21/trial_T20190909_041626_844806/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/look_at_obj_in_light-Newspaper-None-DeskLamp-216/trial_T20190908_143004_004127/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/look_at_obj_in_light-Newspaper-None-DeskLamp-216/trial_T20190908_143004_004127/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Cup-None-Cabinet-2/trial_T20190908_031003_719573/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Cup-None-Cabinet-2/trial_T20190908_031003_719573/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curricu...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Cup-None-Cabinet-12/trial_T20190909_102554_108303/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Cup-None-Cabinet-12/trial_T20190909_102554_108303/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Potato-None-DiningTable-27/trial_T20190908_204107_992431/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Potato-None-DiningTable-27/trial_T20190908_204107_992431/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-CellPhone-None-Desk-327/trial_T20190907_162342_304038/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-CellPhone-None-Desk-327/trial_T20190907_162342_304038/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "cur...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Pot-None-StoveBurner-1/trial_T20190908_134336_754601/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Pot-None-StoveBurner-1/trial_T20190908_134336_754601/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl"...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-AlarmClock-None-Dresser-319/trial_T20190908_002747_623437/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-AlarmClock-None-Dresser-319/trial_T20190908_002747_623437/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Tomato-None-Microwave-6/trial_T20190908_082241_050373/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Tomato-None-Microwave-6/trial_T20190908_082241_050373/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl"...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Cloth-None-Drawer-427/trial_T20190909_070356_398456/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Cloth-None-Drawer-427/trial_T20190909_070356_398456/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl",...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-SprayBottle-None-Dresser-413/trial_T20190906_193324_684519/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-SprayBottle-None-Dresser-413/trial_T20190906_193324_684519/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Mug-None-Shelf-20/trial_T20190907_054109_225243/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Mug-None-Shelf-20/trial_T20190907_054109_225243/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "c...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Mug-None-CoffeeMachine-18/trial_T20190907_142057_604429/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Mug-None-CoffeeMachine-18/trial_T20190907_142057_604429/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "r...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Mug-None-CoffeeMachine-24/trial_T20190906_185323_832715/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Mug-None-CoffeeMachine-24/trial_T20190906_185323_832715/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Cup-None-Cabinet-28/trial_T20190909_052944_317093/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Cup-None-Cabinet-28/trial_T20190909_052944_317093/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-Pencil-None-SideTable-322/trial_T20190908_112624_358795/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-Pencil-None-SideTable-322/trial_T20190908_112624_358795/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "c...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-CellPhone-None-Bed-312/trial_T20190907_035112_615160/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-CellPhone-None-Bed-312/trial_T20190907_035112_615160/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "cur...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/look_at_obj_in_light-Statue-None-DeskLamp-304/trial_T20190909_035310_552898/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/look_at_obj_in_light-Statue-None-DeskLamp-304/trial_T20190909_035310_552898/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "cur...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/look_at_obj_in_light-Pen-None-DeskLamp-305/trial_T20190907_115849_734053/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/look_at_obj_in_light-Pen-None-DeskLamp-305/trial_T20190907_115849_734053/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curric...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Tomato-None-Fridge-14/trial_T20190908_091707_240737/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Tomato-None-Fridge-14/trial_T20190908_091707_240737/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-SprayBottle-None-GarbageCan-409/trial_T20190908_054803_198732/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-SprayBottle-None-GarbageCan-409/trial_T20190908_054803_198732/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl"...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Pen-None-SideTable-329/trial_T20190906_203209_061579/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Pen-None-SideTable-329/trial_T20190906_203209_061579/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "cur...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Cloth-None-CounterTop-409/trial_T20190908_150707_250921/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Cloth-None-CounterTop-409/trial_T20190908_150707_250921/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-AlarmClock-None-Shelf-320/trial_T20190907_121126_621870/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-AlarmClock-None-Shelf-320/trial_T20190907_121126_621870/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "c...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-SprayBottle-None-Toilet-411/trial_T20190909_110956_758459/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-SprayBottle-None-Toilet-411/trial_T20190909_110956_758459/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-CD-None-Dresser-318/trial_T20190907_190229_164232/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-CD-None-Dresser-318/trial_T20190907_190229_164232/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "curricu...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-ToiletPaper-None-SideTable-420/trial_T20190909_114817_260394/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-ToiletPaper-None-SideTable-420/trial_T20190909_114817_260394/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl"...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-ToiletPaper-None-Toilet-415/trial_T20190908_080148_528030/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-ToiletPaper-None-Toilet-415/trial_T20190908_080148_528030/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Bread-None-CounterTop-25/trial_T20190906_203227_781169/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_cool_then_place_in_recep-Bread-None-CounterTop-25/trial_T20190906_203227_781169/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Plate-None-CounterTop-28/trial_T20190907_180330_211175/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Plate-None-CounterTop-28/trial_T20190907_180330_211175/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-SprayBottle-None-GarbageCan-423/trial_T20190909_013120_095952/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-SprayBottle-None-GarbageCan-423/trial_T20190909_013120_095952/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Pan-None-CounterTop-13/trial_T20190908_113205_515477/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Pan-None-CounterTop-13/trial_T20190908_113205_515477/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl"...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-KeyChain-None-Dresser-217/trial_T20190910_203316_646156/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-KeyChain-None-Dresser-217/trial_T20190910_203316_646156/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "c...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Pan-None-StoveBurner-26/trial_T20190909_042547_767945/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Pan-None-StoveBurner-26/trial_T20190909_042547_767945/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Lettuce-None-GarbageCan-20/trial_T20190909_033324_286989/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_clean_then_place_in_recep-Lettuce-None-GarbageCan-20/trial_T20190909_033324_286989/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-SaltShaker-None-DiningTable-26/trial_T20190907_113736_672101/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-SaltShaker-None-DiningTable-26/trial_T20190907_113736_672101/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl",...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-AlarmClock-None-Desk-307/trial_T20190907_013752_725369/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-AlarmClock-None-Desk-307/trial_T20190907_013752_725369/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "c...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_and_place_simple-WineBottle-None-DiningTable-15/trial_T20190906_184006_967003/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_and_place_simple-WineBottle-None-DiningTable-15/trial_T20190906_184006_967003/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl",...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Candle-None-Toilet-417/trial_T20190907_182724_868283/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Candle-None-Toilet-417/trial_T20190907_182724_868283/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "cur...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_two_obj_and_place-Bowl-None-CoffeeTable-203/trial_T20190907_153332_888821/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_two_obj_and_place-Bowl-None-CoffeeTable-203/trial_T20190907_153332_888821/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Potato-None-Fridge-2/trial_T20190909_030845_198194/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Potato-None-Fridge-2/trial_T20190909_030845_198194/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/look_at_obj_in_light-TissueBox-None-DeskLamp-301/trial_T20190908_011302_767722/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/look_at_obj_in_light-TissueBox-None-DeskLamp-301/trial_T20190908_011302_767722/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", "...
You are an expert agent operating in the ALFRED Embodied Environment. Complete the household task by interacting with the environment. At each step, first reason step-by-step within <think> </think> tags, then choose exactly one admissible action and put it within <action> </action> tags.
alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Mug-None-Cabinet-20/trial_T20190908_230106_156334/game.tw-pddl
{ "env_name": "alfworld", "env_input": "alf-data/json_2.1.1/train/pick_heat_then_place_in_recep-Mug-None-Cabinet-20/trial_T20190908_230106_156334/game.tw-pddl", "expert_actions": [], "workflow_args": "{\"mode\": \"rl\", \"curriculum\": \"none\", \"max_env_steps\": 30}", "max_env_steps": 30, "mode": "rl", ...
End of preview. Expand in Data Studio

Agent Environment Task Sets (ALFWorld & ScienceWorld)

Task sets for RL / OPD / RL+OPD runs on the Slime agent_envs stack. Rows are stored in the Slime-readable schema so train.py can load them directly with --input-key prompt --label-key label --metadata-key metadata.

Row schema (all configs)

Every row separates the model-input field from the environment-input fields:

  • prompt (model input, raw text): the fixed instruction the model receives. The live per-turn content (observation + admissible actions + history) is appended by the env rollout at run time.
  • label: the environment input string (same as metadata.env_input).
  • metadata (environment input, struct) consumed by agent_envs.envs.base.task_from_sample:
    • env_name: alfworld / scienceworld
    • env_input: repo-relative env path. ALFWorld: game file like alf-data/json_2.1.1/.../game.tw-pddl. ScienceWorld: JSON string with task_name / var_num / jar_path (jar_path relative, e.g. scienceworld/scienceworld.jar). At run time the launch script sets AGENT_ENV_DATA_ROOT (default datasets/env_assets) and the rollout joins it with these relative paths; absolute paths are used as-is.
    • expert_actions: expert action list (non-empty for ALFWorld train_expert / train_hard; used by TCOD b2f/f2b)
    • workflow_args: JSON string (e.g. max_env_steps, mode, curriculum)
    • max_env_steps, mode (rl/opd/rl_opd), curriculum (none/b2f/f2b), split

Load in Slime with --input-key prompt --label-key label --metadata-key metadata.

Configs (subsets)

Switch environment with the config dropdown, then pick a split:

  • alfworld: splits train, train_expert, train_hard, test, test_unseen
  • scienceworld: splits train, test

Usage (inspect a config)

from datasets import load_dataset

alf = load_dataset("huzican/agent_envs", "alfworld", split="train")
sci = load_dataset("huzican/agent_envs", "scienceworld", split="test")

Run with a single path (DATASETS_DIR)

env_input paths are relative to env_assets/, and env_assets/ lives next to the parquet, so the whole thing is self-contained: point one DATASETS_DIR at a prepared datasets dir and the run scripts derive everything.

Layout of a prepared dir:

<DATASETS_DIR>/
  alfworld/*.parquet
  scienceworld/*.parquet
  env_assets/{alf-data, scienceworld}   # ALFWorld games + ScienceWorld jar (~2.5G)

The run scripts set PROMPT_DATA=<DATASETS_DIR>/<env>/train.parquet and AGENT_ENV_DATA_ROOT=<DATASETS_DIR>/env_assets automatically:

DATASETS_DIR=/path/to/datasets \
HF_CHECKPOINT=... REF_LOAD=... \
bash scripts/agent_envs/run_rl_scienceworld.sh

The large env_assets/ is shipped separately as env_assets.tar.(zst|gz) in this repo. To assemble a ready DATASETS_DIR from HuggingFace:

bash scripts/agent_envs/prepare_datasets.sh /path/to/datasets   # downloads + extracts
DATASETS_DIR=/path/to/datasets bash scripts/agent_envs/run_rl_scienceworld.sh

Note

ALFWorld game files and the ScienceWorld jar inside env_assets/ are third-party data; consider keeping this repo private.

Downloads last month
29