that the capabilities of LLMs have progressed dramatically in the previous couple of years, however it’s arduous to quantify simply how good they’ve grow to be.
That obtained me pondering again to a geometrical drawback I got here throughout on a YouTube channel final 12 months. This was in June 2024, and I attempted to get the main giant language mannequin on the time (GPT-4o) to resolve the puzzle. It didn’t go that nicely and required loads of effort to discover a resolution, and I puzzled how the newest LLMs would fare with the identical puzzle.
The puzzle
Right here’s a fast reminder of what I used to be asking the LLM to resolve again then. Assume we have now the next grid of dots/nodes. Within the x and y aircraft, every node is precisely one unit away from its adjoining neighbour. It appears to be like like this,
Now, the query I needed to reply was this,
What number of distinct squares will be drawn on this diagram?
It shortly grew to become clear that GPT-4o didn’t know the reply, so I modified tack barely and as an alternative requested it this.
I would really like a Python program that plots out all of the squares we will
draw on the connected diagram, assuming that the corners of any sq.
should lie on one of many spots on the diagram. Assume every adjoining spot is
1 unit aside in each the x and y instructions. Additionally print out a abstract of
the variety of squares of the identical dimension and what their aspect lengths are
Lengthy story brief, I ultimately obtained GPT-4o to provide you with an accurate Python-based resolution. Nonetheless, it took me round two hours and nicely over 40 iterations of me going backwards and forwards with the mannequin to refine its reply till it got here up with one thing that labored.
NB, have you ever labored out the reply but? Even now, I nonetheless can’t fairly consider that it’s 21 squares you possibly can draw on this graph.
Interplay with Sonnet 4.5
This brings us again to the current day and Anthropic’s latest launch of what’s thought-about the very best coding mannequin obtainable immediately, specifically Claude Sonnet 4.5. It’s been round 16 months since I final checked out this, so simply how a lot have LLMs improved within the intervening interval? Let’s see how Sonnet 4.5 copes with the puzzle.
To make use of Sonnet 4.5, I visited Anthropic’s homepage.
You need to see a web page like this.

Click on the massive black “Attempt Claude” button situated close to the highest proper of the display. You can be requested to log in at this level. For those who don’t have already got an account with Anthropic, please set one up now. It’s utterly free to take action.
As soon as you might be logged in, you may be taken to a display displaying a well-recognized chat-based window that lets you work together with and ask questions of Sonnet 4.5.
Earlier than I requested the mannequin to supply a Python program to resolve the puzzle, I requested it a straight query to see if it already knew the reply.

It got here again with,
this grid, I have to depend all attainable squares of various
sizes that may be shaped by connecting the dots.
Let me first determine the grid construction. The dots type:
2 dots within the high row
2 dots within the second row
6 dots within the third row
6 dots within the fourth row
2 dots within the fifth row
2 dots within the sixth row
This seems to be a cross or plus-sign formed grid sample.
Now I am going to depend squares by dimension:
1×1 squares: These are shaped by any 4 dots that make a unit sq..
Within the horizontal center part (rows 3-4): 5 squares per row × 1 = 5 squares
Within the vertical center part (columns the place the cross intersects): counting
the vertical segments provides us 5 extra squares
Complete: 10 small squares
2×2 squares: These want 4×4 preparations of dots.
Within the horizontal part: 4 squares
Within the vertical part: 4 squares
Overlap in heart: -1 (counted twice)
Complete: 7 squares of dimension 2×2
3×3 squares and bigger: The grid sample is barely 6 dots broad at its most, however the cross form limits the place bigger squares can match. Checking the geometry:
One 3×3 sq. can match within the heart the place the arms of the cross overlap
Complete: 1 sq. of dimension 3×3
Complete: 10 + 7 + 1 = 18 squares
So, confidently incorrect. Curious and intrigued concerning the mannequin’s reference to a 3×3 sq. (which is unattainable on this grid), I requested it to point out me the sq. on the diagram. It replied with this.
Wanting on the grid extra fastidiously, I have to rethink whether or not a 3×3 sq.
truly exists.
For a 3×3 sq. to exist, I would want a 4×4 association of dots
(since a 3×3 sq. requires 4 dots on all sides). Let me verify the grid
construction:
The grid seems to be:
Rows 1-2: solely 2 dots every (centered)
Rows 3-4: 6 dots every (full width)
Rows 5-6: solely 2 dots every (centered)
For a 3×3 sq., I would want 4 consecutive rows and 4 consecutive columns all with dots on the intersection factors. Nonetheless, wanting on the cross/plus sample:
The highest solely has 2 columns of dots
The center has 6 columns of dots
The underside solely has 2 columns of dots
Since rows 1-2 and rows 5-6 solely have 2 dots every (not spanning the complete width)
, there is not truly a 4×4 block of dots anyplace on this grid.
I have to right my reply: There's NO 3×3 sq. attainable on this grid.
The entire needs to be: 10 (1×1 squares) + 7 (2×2 squares) = 17 squares
I apologize for the error in my preliminary depend. The cross-shaped sample
prevents any sq. bigger than 2×2 from being shaped.
Alright, it semi-redeemed itself with that reply, however essentially, it didn’t accurately say there have been 21 squares in complete.
The ultimate reply
To maintain issues truthful with the mannequin comparability over the 16 months, I requested Sonnet 4.5 the very same query I had requested GPT-4o, which, as a reminder, was this.
I would really like a Python program that plots out all of the squares we will draw on
the connected diagram, assuming that the corners of any sq. should lie on one
of the spots on the diagram. Assume every adjoining spot is 1 unit aside in
each the x and y instructions. Additionally print out a abstract of the variety of
squares of the identical dimension and what their aspect lengths are
Sonnet 4.5 thought for all of 5 seconds earlier than producing its Python code.
import matplotlib.pyplot as plt
import numpy as np
from itertools import mixtures
from collections import defaultdict
# Outline the grid factors based mostly on the picture
factors = [
# Top two rows (2 dots each, centered)
(3, 6), (4, 6),
(3, 5), (4, 5),
# Middle two rows (6 dots each, full width)
(1, 4), (2, 4), (3, 4), (4, 4), (5, 4), (6, 4),
(1, 3), (2, 3), (3, 3), (4, 3), (5, 3), (6, 3),
# Bottom two rows (2 dots each, centered)
(3, 2), (4, 2),
(3, 1), (4, 1),
]
def is_square(p1, p2, p3, p4):
"""Test if 4 factors type a sq. and return aspect size if true."""
factors = [p1, p2, p3, p4]
# Calculate all pairwise distances
distances = []
for i in vary(len(factors)):
for j in vary(i + 1, len(factors)):
dist = np.sqrt((factors[i][0] - factors[j][0])**2 +
(factors[i][1] - factors[j][1])**2)
distances.append(dist)
distances.kind()
# For a sq.: 4 equal sides and a pair of equal diagonals
# Diagonals needs to be sqrt(2) instances the aspect size
if len(distances) == 6:
sides = distances[:4]
diagonals = distances[4:]
# Test if all sides are equal
if np.allclose(sides, [sides[0]] * 4, atol=1e-6):
# Test if diagonals are equal
if np.allclose(diagonals, [diagonals[0]] * 2, atol=1e-6):
# Test if diagonal = aspect * sqrt(2)
if np.allclose(diagonals[0], sides[0] * np.sqrt(2), atol=1e-6):
return True, sides[0]
return False, 0
def order_square_points(p1, p2, p3, p4):
"""Order factors of a sq. in counterclockwise order ranging from bottom-left."""
factors = [p1, p2, p3, p4]
# Discover centroid
cx = sum(p[0] for p in factors) / 4
cy = sum(p[1] for p in factors) / 4
# Kind by angle from centroid
def angle(p):
return np.arctan2(p[1] - cy, p[0] - cx)
factors.kind(key=angle)
return factors
# Discover all squares
squares = []
squares_by_size = defaultdict(listing)
for combo in mixtures(factors, 4):
is_sq, side_length = is_square(*combo)
if is_sq:
ordered = order_square_points(*combo)
squares.append(ordered)
squares_by_size[round(side_length, 2)].append(ordered)
# Print abstract
print("=" * 50)
print("SUMMARY OF SQUARES FOUND")
print("=" * 50)
total_squares = 0
for side_length in sorted(squares_by_size.keys()):
depend = len(squares_by_size[side_length])
total_squares += depend
print(f"Facet size {side_length}: {depend} sq.(s)")
print(f"nTotal squares: {total_squares}")
print("=" * 50)
# Create visualization
fig, axes = plt.subplots(2, 2, figsize=(14, 14))
axes = axes.flatten()
# Plot 1: All dots
ax = axes[0]
x_coords = [p[0] for p in factors]
y_coords = [p[1] for p in factors]
ax.scatter(x_coords, y_coords, c='black', s=100, zorder=3)
ax.set_xlim(0, 7)
ax.set_ylim(0, 7)
ax.set_aspect('equal')
ax.grid(True, alpha=0.3)
ax.set_title('Unique Grid', fontsize=14, fontweight='daring')
ax.set_xlabel('X')
ax.set_ylabel('Y')
# Plot 2: All squares overlaid
ax = axes[1]
ax.scatter(x_coords, y_coords, c='black', s=100, zorder=3)
colours = plt.cm.rainbow(np.linspace(0, 1, len(squares)))
for sq., shade in zip(squares, colours):
square_closed = sq. + [square[0]]
xs = [p[0] for p in square_closed]
ys = [p[1] for p in square_closed]
ax.plot(xs, ys, c=shade, linewidth=2, alpha=0.6)
ax.set_xlim(0, 7)
ax.set_ylim(0, 7)
ax.set_aspect('equal')
ax.grid(True, alpha=0.3)
ax.set_title(f'All {total_squares} Squares Overlaid', fontsize=14, fontweight='daring')
ax.set_xlabel('X')
ax.set_ylabel('Y')
# Plot 3 & 4: Squares by dimension
plot_idx = 2
for side_length in sorted(squares_by_size.keys()):
if plot_idx >= len(axes):
break
ax = axes[plot_idx]
ax.scatter(x_coords, y_coords, c='lightgray', s=100, zorder=2)
squares_of_size = squares_by_size[side_length]
colours = plt.cm.viridis(np.linspace(0, 1, len(squares_of_size)))
for sq., shade in zip(squares_of_size, colours):
square_closed = sq. + [square[0]]
xs = [p[0] for p in square_closed]
ys = [p[1] for p in square_closed]
ax.plot(xs, ys, c=shade, linewidth=2.5, marker='o', markersize=8)
ax.set_xlim(0, 7)
ax.set_ylim(0, 7)
ax.set_aspect('equal')
ax.grid(True, alpha=0.3)
ax.set_title(f'Squares with aspect size {side_length} ({len(squares_of_size)} complete)',
fontsize=14, fontweight='daring')
ax.set_xlabel('X')
ax.set_ylabel('Y')
plot_idx += 1
plt.tight_layout()
plt.present()
At first sight, I assumed there was no manner Sonnet may have provide you with an accurate resolution so shortly. GPT-4o had taken hours. Nonetheless, I put in all of the required libraries the code wanted and copied and pasted it right into a Jupyter Pocket book cell, working it and acquiring the next output. I’ve omitted the graphs for now, which had been additionally output.
==================================================
SUMMARY OF SQUARES FOUND
==================================================
Facet size 1.0: 9 sq.(s)
Facet size 1.41: 4 sq.(s)
Facet size 2.24: 2 sq.(s)
Facet size 2.83: 4 sq.(s)
Facet size 3.61: 2 sq.(s)
Complete squares: 21
==================================================
#
# Plus some graphs that I am not displaying right here
#
That shocked me. The reply was completely spot on.
The one slight factor the mannequin didn’t fairly get proper was that it didn’t output a plot of every set of in another way sized squares. It simply did the 9 1x1s and the 4 √2x√2 ones. I solved that by asking Sonnet to incorporate these, too.
Are you able to print the graphs in sq. aspect order. Can also you have got two graphs
aspect by aspect on every "line"
That is what it produced.



Lovely.
Abstract
To show simply how dramatically LLMs have superior in a few 12 months, I made a decision to revisit a difficult geometric puzzle I first tried to resolve with GPT-4o again in June 2024. The puzzle was to jot down a Python program that finds and plots all attainable squares on a selected cross-shaped grid of dots.
My expertise a bit of over a 12 months in the past was a wrestle; it took me roughly two hours and over 40 prompts to information GPT-4o to an accurate Python resolution.
Quick ahead to immediately, and I examined the brand new Claude Sonnet 4.5. After I first requested the mannequin the query instantly, it didn’t calculate the proper variety of squares. Not an incredible begin, nonetheless, the actual take a look at was giving it the very same immediate I used on GPT-4o.
To my shock, it produced an entire, right Python resolution in one shot. The code it generated not solely discovered all 21 squares but in addition accurately categorised them by their distinctive aspect lengths and generated detailed plots to visualise them. Whereas I wanted one fast follow-up immediate to excellent the plots, the core drawback was solved immediately.
May or not it’s that the very act of my attempting to resolve this puzzle final 12 months and publishing my findings launched it to the web-o-sphere, that means Anthropic have merely crawled it and included it into their mannequin data base? Sure, I suppose that might be it, however then why couldn’t the mannequin reply the primary direct query I requested it concerning the complete variety of squares accurately?
To me, this experiment starkly illustrates the unimaginable leap in LLM functionality. What was as soon as a two-hour iterative wrestle with the main mannequin of its time 16 months in the past is now a five-second, one-shot success with the main mannequin immediately.