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train_0
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "black black\nmaroon maroon\ngreen green\ngrey grey\nmaroon maroon\nblack black\nmaroon maroon\npink pink\nmaroon maroon\nmaroon maroon" ]
train_1
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "black black black black black teal black black black black teal black black black black black teal black black\nblack black black black black teal black black black black teal black black black black black teal black black\nblack black black black black teal black black black black teal black black black black bla...
train_2
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "yellow yellow yellow green yellow yellow yellow yellow yellow yellow yellow yellow green yellow yellow yellow\nyellow yellow yellow yellow yellow grey teal black black teal grey yellow yellow yellow yellow yellow\nyellow grey yellow yellow yellow green orange yellow yellow orange green yellow yellow yellow grey ye...
train_3
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "grey grey grey grey grey grey grey grey grey grey black black black black black black grey grey grey grey grey grey grey grey grey grey\ngrey grey grey grey grey grey grey grey grey grey black black black black black black grey grey grey grey grey grey grey grey grey grey\ngrey grey grey grey grey grey grey grey g...
train_4
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "pink pink pink pink pink pink pink pink pink pink pink pink pink pink pink\npink pink pink pink pink pink pink pink pink pink teal teal teal pink pink\npink pink pink pink pink pink pink pink pink pink teal pink teal pink pink\npink pink pink pink pink pink pink pink pink pink teal teal teal pink pink\npink pink p...
train_5
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "blue blue blue green green green green green green green green green green green blue blue blue blue blue blue green\nblue green green green blue blue blue green green green green green green green green green green green green blue green\nblue green blue blue green green blue green green green green green green g...
train_6
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "green green yellow green yellow yellow green yellow yellow green green green green green green\ngreen yellow green yellow yellow yellow green green yellow green green green yellow yellow yellow\nyellow green yellow green green green yellow yellow yellow yellow green yellow yellow yellow yellow\nyellow green green ...
train_7
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "grey grey grey grey grey grey grey grey black green grey grey grey grey grey grey grey grey grey grey green green green black black black grey grey grey grey\npink pink black black grey grey grey grey pink black grey grey grey grey grey grey grey grey grey grey green green green black black black grey grey grey gr...
train_8
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "green green maroon green maroon green green green green green green green green green\nmaroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon green green\ngreen green maroon red maroon red maroon green green green green green green green\ngreen green maroon maroon maroon maroon maroon ...
train_9
[ { "content": "<image> <image> <image> You are given multiple images of input and output grid pairs. The output is obtained by an unknown transformation rule. Only the last image contains a single input grid. We call this the test input grid. <image>\nYour task is to identify the transformation applied in the ex...
[ "maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon\nmaroon orange orange maroon maroon yellow yellow maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon maroon\nmaroon orange orange maroon maroo...
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