# Matplotlib: Display value next to each point on chart

Is it possible to display each point's value next to it on chart diagram:

Values shown on points are: [7, 57, 121, 192, 123, 240, 546]

``````values = list(map(lambda x: x[0], result)) #[7, 57, 121, 192, 123, 240, 546]
labels = list(map(lambda x: x[1], result)) #['1950s', '1960s', '1970s', '1980s', '1990s', '2000s', '2010s']

plt.plot(labels, values, 'bo')
plt.show()
``````

Here's my current code for this chart.

I would like to know each point value shown on graph, currently I can only predict values based on y-axis.

• Add more detail to your code so that your figure is reproducable. Currently it's no good at all without knowing the variables Sep 9, 2018 at 9:39
• @Bazingaa I've edited question. Sep 9, 2018 at 12:46

Based on your values, here is one solution using `plt.text`

``````import matplotlib.pyplot as plt

fig = plt.figure()
values = [7, 57, 121, 192, 123, 240, 546]
labels = ['1950s', '1960s', '1970s', '1980s', '1990s', '2000s', '2010s']

plt.plot(range(len(labels)), values, 'bo') # Plotting data
plt.xticks(range(len(labels)), labels) # Redefining x-axis labels

for i, v in enumerate(values):
ax.text(i, v+25, "%d" %v, ha="center")
plt.ylim(-10, 595)
plt.show()
``````

Output

• Amazing response. Thank you! Sep 9, 2018 at 14:27

Solution based on `plt.annotate`

``````fig = plt.figure()
values = [7, 57, 121, 192, 123, 240, 546]
labels = ['1950s', '1960s', '1970s', '1980s', '1990s', '2000s', '2010s']

plt.plot(range(len(labels)), values, 'bo') # Plotting data
plt.xticks(range(len(labels)), labels) # Redefining x-axis labels

for i, v in enumerate(values):
ax.annotate(str(v), xy=(i,v), xytext=(-7,7), textcoords='offset points')
plt.ylim(-10, 595)
``````

Output:

Alright, for anyone needing something a little more complicated, here's an extension of @Sheldore's answer on my own data:

## How to plot the `(x, y)` text for each point using `plt.text()`, and handle the first and last points with custom text formatting:

#### Here's the gist of it:

``````# generalized form
plt.text(x_loc, y_loc, f"my label", horizontalalignment="left|center|right")

# example
plt.text(x+.2, y, f"({x} KiB, {y:.0f} MB/sec)", horizontalalignment="left")
``````

See the official `matplotlib.pyplot.text()` documentation here: https://matplotlib.org/stable/api/_as_gen/matplotlib.pyplot.text.html

#### Full, runnable example:

``````import matplotlib.pyplot as plt

from statistics import mean

# cluster size (KiB) vs speed (MB/s)
x_cluster_size = [0.5, 4, 8, 32, 128, 32768]
y_speed = [
mean([87.36, 96.84]),
mean([285.36, 352.37, 309.35]),
mean([333.19, 320.87, 360.62]),
mean([360.59, 329.26, 387.60]),
mean([392.01, 363.88, 413.63]),
mean([437.09, 409.12, 436.98]),
]
plt.plot(x_cluster_size, y_speed, 'b-o', label='When writing a 5.3 GB file')
plt.legend(loc='lower right')
plt.xscale('log', base=2)
plt.ylabel('Speed (MB/sec)')
plt.xlabel('exFAT cluster size (KiB)')
plt.title("exFAT cluster size vs speed")
# display (x, y) values next to each point
for i, x in enumerate(x_cluster_size):
y = y_speed[i]
# first element
if i == 0:
plt.text(x+.2, y, f"({x} KiB, {y:.0f} MB/sec)", horizontalalignment="left")
# last element
elif i == len(x_cluster_size) - 1:
plt.text(x-10000, y, f"({x} KiB, {y:.0f} MB/sec)", horizontalalignment="right")
else:
plt.text(x, y-20, f"({x} KiB, {y:.0f} MB/sec)", horizontalalignment="left")
plt.show()
``````

To go further, and add figure super titles, subtitles, footers, etc, see my other answer here.