Normal distribution describes continuous data which have a symmetric distribution, with a characteristic "bell" shape. The normal distribution is the most important continuous distribution. It is a good model for many characteristics that occur in nature, commerce, etc. For example, heights and weights, IQ, sales figures, package fill weights and so on. Such elements are all well modelled by a normal distribution. It is also known as the Gaussian distribution, named after the famous mathematician Carl Friedrich Gauss.
All normal distributions look like a symmetric, bell‐shaped curve, as shown below:
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On the other hand, binomial distribution describes the distribution of binary data from a finite sample. It therefore gives the probability of getting
events out of
trials. In the binomial distribution, all eligible phenomena are studied.
While I did not study the Bernoulli distribution, it appears that this distribution represents the success or failure of a single Bernoulli trial. The difference between the Bernoulli distribution and the binomial distribution is that the latter represents the number of successes and failures in
independent Bernoulli trials for some given value of
.
I hope this helps!