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| - vars: |
| question: | |
| 1. Please load the dataset from "QMCPACK/data/QMCPACK.vti". |
| 2. Compute the critical points of the scalar field. |
| 3. Save the critical points as "QMCPACK/results/{agent_mode}/QMCPACK.vtk" in legacy VTK format. |
| - The output should contain the critical points as point data |
| - Include an array called "CriticalType" that labels each point according to what type of critical type it is. Use the following convention: |
| * 0 for minima |
| * 1 for 1-saddles |
| * 2 for 2-saddles |
| * 3 for maxima |
| * 4 for degenerate critical points |
| - The point coordinates should be in index space (grid coordinates), not world coordinates |
| 4. Analyze the visualization and answer the following questions: |
| Q1: How many index 1 saddles are there: |
| (A) 248 (B) 274 (C) 299 (D) 344 |
| |
| Q2: What is the type of critical point closest to coordinates (4,58,12): |
| (A) minimum (B) 1-saddle (C) 2-saddle (D) maximum |
| Save the answers to the analysis questions in plain text as "QMCPACK/results/{agent_mode}/answers.txt". |
| Do not save any files other than the specified result files. |
| assert: |
| - type: rule_based |
| eval_script: QMCPACK/GS/QMCPACK_eval.py |
| eval_function: evaluateQmcpackCriticalPoints |
| gs_file: QMCPACK/GS/QMCPACK_gs.vtk |
| rs_file: QMCPACK/results/{agent_mode}/QMCPACK.vtk |
| - type: llm-rubric |
| subtype: text |
| value: | |
| 1. Q1 correct answer: (C) |
| 2. Q2 correct answer: (D) |
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| - vars: |
| question: | |
| 1. Load the file "brain/data/brain.vti". It is a symmetric tensor field, where the (1,1), (1,2) and (2,2) components of the tensor are respectively given by the arrays A, B, and D. |
| 2. Compute degenerate points of the tensor field. |
| 3. Save the degenerate points as "brain/results/{agent_mode}/brain.vtk" in legacy VTK format. Label the type of degenerate point for each point in an array called DegeneracyType. Use a value of 0 for trisectors and 1 for wedges. |
| 4. Analyze the visualization and answer the following questions: |
| Q1: Are there more trisectors than wedges? (yes/no) |
| |
| Q2: Out of all degenerate points, the sum of one point's coordinates is the highest. What is this highest sum, rounded to the nearest integer? |
| (A) 124 (B) 136 (C) 148 (D) 160 |
| Save the answers to the analysis questions in plain text as "brain/results/{agent_mode}/answers.txt". |
| Do not save any files other than the specified result files. |
| assert: |
| - type: rule_based |
| eval_script: brain/GS/brain_eval.py |
| eval_function: evaluateDegeneratePoints |
| gs_file: brain/GS/brain_gs.vtk |
| rs_file: brain/results/{agent_mode}/brain.vtk |
| - type: llm-rubric |
| subtype: text |
| value: | |
| 1. Q1 correct answer: yes |
| 2. Q2 correct answer: (B) |
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| - vars: |
| question: | |
| 1. Please load the file "cylinder/data/cylinder.vti" |
| 2. Apply persistence simplification of 0.01 to the Speed field. |
| 3. Compute the Morse-Smale segmentation of the simplified Speed field. |
| 4. Save the Morse-Smale segmentation as "cylinder/results/{agent_mode}/cylinder.vti". It should have a point array called Partition. For each point x, the array "Partition" should store the id number of the region in the segmentation that x belongs to. |
| 5. Analyze the visualization and answer the following questions: |
| Q1: How many unique partition regions are there? |
| (A) 152 (B) 163 (C) 174 (D) 185 |
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| Q2: How many points are in the largest partition region? |
| (A) 6879 (B) 7968 (C) 8796 (D) 9687 |
| Save the answers to the analysis questions in plain text as "cylinder/results/{agent_mode}/answers.txt". |
| Do not save any files other than the specified result files. |
| assert: |
| - type: rule_based |
| eval_script: cylinder/GS/cylinder_eval.py |
| eval_function: evaluateMSSEgmentation |
| gs_file: cylinder/GS/cylinder_gs.vti |
| rs_file: cylinder/results/{agent_mode}/cylinder.vti |
| - type: llm-rubric |
| subtype: text |
| value: | |
| 1. Q1 correct answer: (A) |
| 2. Q2 correct answer: (D) |
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| - vars: |
| question: | |
| 1. Load the file "isabel/data/isabel.vti". |
| 2. Apply persistent simplification to the field "sf" with a persistence threshold of 0.04 |
| 3. Compute the merge tree of the simplified field. |
| 4. Save the nodes of the merge tree as "isabel/results/{agent_mode}/isabel_nodes.vtk" in legacy VTK format. |
| This file should have two point arrays. One should be called "CriticalType" and should store the type of critical point for each node. |
| It should follow the following convention: 0: minima. 1: 1-saddles. 2: 2-saddles. 3: maxima. 4: degenerate critical points. |
| The other point array should be called "Scalar" and should contain the scalar field value at each point in the merge tree. |
| 5. Save the edges of the merge tree as "isabel/results/{agent_mode}/isabel_edges.vtk" in legacy VTK format. |
| The file should store each edge as a separate cell with type vtkLine. |
| 6. Analyze the visualization and answer the following questions: |
| Q1: The parent node of the leaf (377, 265, 0) has coordinates (x,y,z). What is x+y+z? |
| (A) 627 (B) 854 (C) 992 (D) 1039 |
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| Q2: How many edges are there in the merge tree? |
| (A) 154 (B) 195 (C) 204 (D) 254 |
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| Q3: What is the highest scalar field value of a minimum, rounded to the nearest whole number? |
| (A) 12 (B) 26 (C) 31 (D) 58 |
| Save the answers to the analysis questions in plain text as "isabel/results/{agent_mode}/answers.txt". |
| Do not save any files other than the specified result files. |
| assert: |
| - type: rule_based |
| eval_script: isabel/GS/isabel_eval.py |
| eval_function: evaluateMergetree |
| gs_file: |
| - isabel/GS/isabel_nodes_gs.vtk |
| - isabel/GS/isabel_edges_gs.vtk |
| rs_file: |
| - isabel/results/{agent_mode}/isabel_nodes.vtk |
| - isabel/results/{agent_mode}/isabel_edges.vtk |
| - type: llm-rubric |
| subtype: text |
| value: | |
| 1. Q1 correct answer: (A) |
| 2. Q2 correct answer: (B) |
| 3. Q3 correct answer: (C) |
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| - vars: |
| question: | |
| 1. Please load the asymmetric tensor field from "ocean/data/ocean.vti". The (1,1), (1,2), (2,1) and (2,2) entries are respectively given by the arrays A, B, C, and D |
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| 2. Compute the eigenvector partition of the dataset. |
| |
| 3. Save the degenerate points as "ocean/results/{agent_mode}/ocean_points.vtk" in legacy VTK format. |
| Include a point array called DegeneracyType which classifies each degenerate point. |
| It should have a value of 0 for trisectors and 1 for wedges. |
| |
| 4. Save the partition information from the eigenvector partition as "ocean/results/{agent_mode}/ocean_eigenvector.vti" as VTK image data. |
| It should have a point array called Partition that stores the region identifiers as follows: 0: W_{c,s}. 1: W_{r,s}. 2: W_{r,n}. 3: W_{c,n} |
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| 5. Compute the eigenvalue partition of the dataset. |
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| 6. Save the partition information from the eigenvalue partition as "ocean/results/{agent_mode}/ocean_eigenvalue.vti" as VTK image data. |
| It should have a point array called Partition that stores the region identifiers as follows: 0: positive scaling. 1: counterclockwise rotation. |
| 2: negative scaling. 3: clockwise rotation. 4: anisotropic stretching. |
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| 7. Analyze the visualization and answer the following questions: |
| Q1: Are there more trisectors than wedges? (yes/no) |
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| Q2: How many points have the most common classification in the eigenvector partition? |
| (A) 752342 (B) 802842 (C) 826348 (D) 994682 |
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| Q3: Which is the least common classification in the eigenvalue partition? |
| (A) Positive scaling (B) counterclockwise rotation (C) negative scaling (D) clockwise rotation |
| Save the answers to the analysis questions in plain text as "ocean/results/{agent_mode}/answers.txt". |
| Do not save any files other than the specified result files. |
| assert: |
| - type: rule_based |
| eval_script: ocean/GS/ocean_eval.py |
| eval_function: evaluate2DAsymmetricTFTopology |
| gs_file: |
| - ocean/GS/ocean_points_gs.vtk |
| - ocean/GS/ocean_eigenvector_gs.vti |
| - ocean/GS/ocean_eigenvalue_gs.vti |
| rs_file: |
| - ocean/results/{agent_mode}/ocean_points.vtk |
| - ocean/results/{agent_mode}/ocean_eigenvector.vti |
| - ocean/results/{agent_mode}/ocean_eigenvalue.vti |
| - type: llm-rubric |
| subtype: text |
| value: | |
| 1. Q1 correct answer: no |
| 2. Q2 correct answer: (C) |
| 3. Q3 correct answer: (C) |
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| - vars: |
| question: | |
| 1. Load the dataset from "noisyTerrain/data/noisyTerrain.vtu". |
| 2. Compute the persistence diagram on the scalar field named "Blend". |
| 3. Apply a threshold to filter out pairs with persistence value less than 1. |
| 4. Save the persistence diagram as "noisyTerrain/results/{agent_mode}/noisyTerrain.vtk" in legacy VTK format. |
| - The output should contain the points in the persistence diagram as point data, and each persistence pair is represented as a cell. |
| - Include the following three scalar arrays with the given names and purposes: |
| * "Birth" array: store the birth value of each pair. |
| * "Persistence" array: store the persistence value of each pair. |
| * "IsFinite" array: use 1 to mark finite persistence and 0 to mark infinite persistence. |
| Do not save any files other than the specified result files. |
| assert: |
| - type: rule_based |
| eval_script: noisyTerrain/GS/noisyTerrain_eval.py |
| eval_function: evaluateNoisyTerrainPersistenceDiagram |
| gs_file: |
| - noisyTerrain/GS/noisyTerrain_gs.vtk |
| rs_file: |
| - noisyTerrain/results/{agent_mode}/noisyTerrain.vtk |
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| - vars: |
| question: | |
| 1. Load the data file "molecule/data/molecule.vti". |
| 2. Compute the Morse-Smale segmentation on the scalar field named "log(s)". |
| 3. Save the Morse-Smale segmentation as "molecule/results/{agent_mode}/molecule.vti". |
| It should have a point array called "Segmentation". |
| For each point x, the array "Segmentation" should store the id number of the region in the segmentation that x belongs to. |
| Do not save any files other than the specified result files. |
| assert: |
| - type: rule_based |
| eval_script: molecule/GS/molecule_eval.py |
| eval_function: evaluateMoleculeSegmentation |
| gs_file: |
| - molecule/GS/molecule_gs.vti |
| rs_file: |
| - molecule/results/{agent_mode}/molecule.vti |
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| - vars: |
| question: | |
| 1. Load the data file "moons/data/moons.vti". |
| 2. Apply topological simplification to the field "SplatterValues" with a persistence threshold of 10. |
| 3. Compute the Morse-Smale segmentation on the simplified scalar field. |
| 4. Save only the Ascending Manifold as "moons/results/{agent_mode}/moons.vti". |
| It should have a point array called "AscendingManifold". |
| For each point x, the array "AscendingManifold" should store the id number of the region that x belongs to. |
| Do not save any files other than the specified result files. |
| assert: |
| - type: rule_based |
| eval_script: moons/GS/moons_eval.py |
| eval_function: evaluateMoonAscendingManifold |
| gs_file: |
| - moons/GS/moons_gs.vti |
| rs_file: |
| - moons/results/{agent_mode}/moons.vti |
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| - vars: |
| question: | |
| 1. Load the dataset from "dragon/data/dragon.vtu". |
| |
| 2. Compute the Morse-Smale complex on the scalar field named "density". Make sure 1-Separatrices are computed. |
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| 3. Compute the critical points on the previous elevation scalar field. |
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| 4. Save the critical points as "dragon/results/{agent_mode}/dragon.vtk" in legacy VTK format. |
| - The output should contain the critical points as point dataset |
| - Include an array called "CriticalType" that labels each point according to what type of critical type it is. Use the following convention: |
| * 0 for minima |
| * 1 for 1-saddles |
| * 2 for 2-saddles |
| * 3 for maxima |
| - The point coordinates should be in world coordinates |
| Do not save any files other than the specified result files. |
| assert: |
| - type: rule_based |
| eval_script: dragon/GS/dragon_eval.py |
| eval_function: evaluateDragonCriticalPoints |
| gs_file: |
| - dragon/GS/dragon_gs.vtk |
| rs_file: |
| - dragon/results/{agent_mode}/dragon.vtk |