As you're new with python you probably should start slower and try to mess around with `numpy`

first. `pandas`

is a library build around `numpy`

, which expects you to be familiar with that.

We can simplify your code a bit. I've added some comments to guide you through.

```
# You do not need that many import statements, so we just import
# numpy and matplotlib using the common alias 'np' and 'plt'.
import numpy as np
import matplotlib.pyplot as plt
matplotlib.style.use('ggplot')
# Using numpy we can use the function loadtxt to load your CSV file.
# We ignore the first line with the column names and use ',' as a delimiter.
data = np.loadtxt('myflight.csv', delimiter=',', skiprows=1)
# You can access the columns directly, but let us just define them for clarity.
# This uses array slicing/indexing to cut the correct columns into variables.
time = data[:,0]
ground_speed = data[:,1]
voltage = data[:,2]
airspeed = data[:,3]
# With matplotlib we define a new subplot with a certain size (10x10)
fig, ax = plt.subplots(figsize=(10,10))
ax.plot(time, ground_speed, label='Ground speed [m/s]')
ax.plot(time, voltage, label='Voltage [V]')
# Show the legend
plt.legend()
```

This code will get you this graph here:

## References

You can find the documentation to the functions used in the NumPy reference.

## Update

To clarify on the use of `plt.subplots(figsize=(10,10))`

: You create a new figure with this command, but matplotlib wants to return several values (two in this case). Therefore you need to specify two variables to accept those. `fig`

saves the Figure instance, while `ax`

will save the current `subplot`

.
A figure can have an unlimited amount of subplots, so you can do fancy things as shown here. In the example above we are only defining one subplot.

The `figsize`

attribute defines the size of the Figure in inches, thus the resulting output is 10 x 10 inches. You can play around with the values and look at the outputs.

`pd.read_clipboard()`

works correctly. Also the keys you use for plotting do not match the keys in your example data. – Khris Sep 30 '16 at 7:20