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gpt3.5


I'm doing Python experiments.

These are images.

input = {}
output = {}
input[0] = {'width':3,'height':3,(0,0):3,(1,0):3,(2,0):3,(0,1):0,(1,1):2,(2,1):2,(0,2):1,(1,2):1,(2,2):0}
output[0] = {'width':6,'height':6,(0,0):3,(1,0):3,(2,0):3,(3,0):3,(4,0):3,(5,0):3,(0,1):0,(1,1):2,(2,1):2,(3,1):2,(4,1):2,(5,1):0,(0,2):1,(1,2):1,(2,2):0,(3,2):0,(4,2):1,(5,2):1,(0,3):1,(1,3):1,(2,3):0,(3,3):0,(4,3):1,(5,3):1,(0,4):0,(1,4):2,(2,4):2,(3,4):2,(4,4):2,(5,4):0,(0,5):3,(1,5):3,(2,5):3,(3,5):3,(4,5):3,(5,5):3}

input[1] = {'width':3,'height':3,(0,0):3,(1,0):3,(2,0):1,(0,1):1,(1,1):3,(2,1):0,(0,2):0,(1,2):2,(2,2):2}
output[1] = {'width':6,'height':6,(0,0):3,(1,0):3,(2,0):1,(3,0):1,(4,0):3,(5,0):3,(0,1):1,(1,1):3,(2,1):0,(3,1):0,(4,1):3,(5,1):1,(0,2):0,(1,2):2,(2,2):2,(3,2):2,(4,2):2,(5,2):0,(0,3):0,(1,3):2,(2,3):2,(3,3):2,(4,3):2,(5,3):0,(0,4):1,(1,4):3,(2,4):0,(3,4):0,(4,4):3,(5,4):1,(0,5):3,(1,5):3,(2,5):1,(3,5):1,(4,5):3,(5,5):3}

input[2] = {'width':3,'height':3,(0,0):2,(1,0):1,(2,0):0,(0,1):0,(1,1):2,(2,1):3,(0,2):0,(1,2):3,(2,2):0}
output[2] = {'width':6,'height':6,(0,0):2,(1,0):1,(2,0):0,(3,0):0,(4,0):1,(5,0):2,(0,1):0,(1,1):2,(2,1):3,(3,1):3,(4,1):2,(5,1):0,(0,2):0,(1,2):3,(2,2):0,(3,2):0,(4,2):3,(5,2):0,(0,3):0,(1,3):3,(2,3):0,(3,3):0,(4,3):3,(5,3):0,(0,4):0,(1,4):2,(2,4):3,(3,4):3,(4,4):2,(5,4):0,(0,5):2,(1,5):1,(2,5):0,(3,5):0,(4,5):1,(5,5):2}

Task A

Use at most 100 words. Think step by step.

  • Write notes about what shapes and patterns you observe.
  • The output is never the same as the input.
  • Is the output a cropped out area from the input.
  • Is the output similar to the input rotated.
  • Is the output similar to the input flipped.
  • Is the output similar to the input diagonally flipped.

Task B

Use at most 300 words. Include a markdown formatted table with the most important observations about input and output images. The table has three columns: observation name, observation values, comments about the observation. The observation values column can contain: integers, Yes, No, Absent, IDs, shape names, decreasing order, and so on. Think step by step.

  • Count the mass of each layer.
  • Count how many strongly connected clusters there are inside each layer.
  • Is mass related to the sorting of layers.
  • Isolated pixels without an adjacent pixel of same layer, sometimes they change layer.
  • Are there horizontal lines, do they extend edge to edge.
  • Are there vertical lines, do they extend edge to edge.
  • Are there stripes with evenly spaced lines.
  • Are there filled rectangles.
  • Are there hollow boxes.
  • Are there L-shapes.
  • Are there T-shapes.
  • Are there H-shapes.
  • Are there E-shapes.
  • Are there Plus-shapes.
  • Are there Tetris-shapes.
  • Are there other shapes.
  • Does the output contain a tile that is being used a few times. Is that tile identical to the input image.
  • What shapes are there with holes, such as boxes, where the hole is separated from the outside.
  • What shapes are there where the border has small holes, such as a box with 1 pixel missing in the border, so it's no longer a hole.
  • Is there a line connecting two landmarks, is it the shortest path.
  • Does shape change layer, but preserves their shape, and what may be triggering it.
  • Does shape move relative x,y.
  • Boolean operations may happen: xor, and, or.
  • Does a tiny object change layer, because it's nearest to a bigger object in that layer.

Task C

Use at most 100 words. Think step by step. What are the actions that converts input to output.

Task D

With the following example input, I want you to predict what the output should be.

input[3] = {'width':3,'height':3,(0,0):1,(1,0):1,(2,0):0,(0,1):0,(1,1):3,(2,1):2,(0,2):3,(1,2):3,(2,2):0}

Print your reasoning before printing the code. Don't print other markdown code blocks than the code block containing your predictions.

Fill your predictions into the following template and replace PREDICT with your predictions.

output[3] = PREDICT

Task A

Observations:

  1. The output is never the same as the input, indicating some transformation is applied.
  2. The output is not simply a cropped-out area from the input.
  3. The output appears to be similar to the input rotated, flipped, or diagonally flipped in some cases.

Task B

Observation Name Observation Values Comments
Count the mass of each layer Positive integers Identify the number of pixels in each layer.
Count strongly connected clusters Non-negative integers Identify isolated clusters of pixels.
Mass related to layer sorting Yes, No Determine if mass correlates with sorting.
Isolated pixels change layer Yes, No Observe if isolated pixels change layers.
Horizontal lines Yes, No Detect presence of horizontal lines.
Vertical lines Yes, No Detect presence of vertical lines.
Evenly spaced stripes Yes, No Identify evenly spaced stripes.
Filled rectangles Yes, No Look for filled rectangle shapes.
Hollow boxes Yes, No Identify shapes with holes like boxes.
L-shapes Yes, No Look for L-shaped patterns.
T-shapes Yes, No Identify T-shaped patterns.
H-shapes Yes, No Identify H-shaped patterns.
E-shapes Yes, No Identify E-shaped patterns.
Plus-shapes Yes, No Look for plus-shaped patterns.
Tetris-shapes Yes, No Identify Tetris-like shapes.
Other shapes Yes, No Look for any other distinct shapes.
Repeated identical tiles Yes, No Check for tiles that are repeated in the output.
Shapes with holes Yes, No Identify shapes with separate holes.
Shapes with border holes Yes, No Identify shapes with small border holes.
Shortest path line Yes, No Detect lines connecting landmarks.
Shape changes layer but preserves shape Yes, No Identify shapes that change layers while retaining their form.
Relative x,y movement of shapes Yes, No Observe if shapes move relative to x, y.
Boolean operations Yes, No Look for boolean operations (xor, and, or).
Tiny object changes layer due to proximity Yes, No Detect if tiny objects change layers due to proximity to larger objects.

Task C

Actions to convert input to output:

  • Rotations: Some shapes appear to be rotated in the output, leading to a different arrangement of pixels.
  • Flips: Certain shapes seem to be flipped horizontally or vertically, changing their orientation.
  • Diagonal Flips: Diagonal flipping of shapes can also be observed in some cases, altering their appearance.
  • Mass Redistribution: The number of pixels in each layer seems to be redistributed in the output.

Task D

Prediction: Based on the given input, the output should be:

output[3] = {'width': 6, 'height': 6, (0, 0): 1, (1, 0): 1, (2, 0): 0, (3, 0): 0, (4, 0): 1, (5, 0): 1, 
             (0, 1): 0, (1, 1): 3, (2, 1): 2, (3, 1): 2, (4, 1): 3, (5, 1): 0, 
             (0, 2): 3, (1, 2): 3, (2, 2): 0, (3, 2): 0, (4, 2): 3, (5, 2): 3, 
             (0, 3): 3, (1, 3): 3, (2, 3): 0, (3, 3): 0, (4, 3): 3, (5, 3): 3, 
             (0, 4): 0, (1, 4): 2, (2, 4): 2, (3, 4): 2, (4, 4): 2, (5, 4): 0, 
             (0, 5): 1, (1, 5): 1, (2, 5): 0, (3, 5): 0, (4, 5): 1, (5, 5): 1}

Reasoning: The output seems to follow a pattern where the input is rotated by 90 degrees clockwise, and the number of pixels in each layer is redistributed to form a new arrangement. The shapes and their connectivity remain the same, but their positions change due to rotation.


Almost correct. Got 2 pixels wrong. And it's GPT3.5.