import streamlit as st st.header(":blue[DISTRIBUTION]") st.write("A distribution describes how the values of a random variable are spread or distributed.It provides the probabilities or frequencies with which different possible outcomes occur. there are two type of random variables: discrete and continuous which we discuss in the last page") st.subheader(":rainbow[1. Discrete Probability Distribution]") st.write("For discrete variables, the outcomes are countable.") multi = """:green[Example:]Number of cars passing a red light - This could be 0, 1, 2, 3, or more cars. - The probability of each number would depend on factors like traffic volume and the timing of the red light. """ st.markdown(multi) st.subheader(":red[Probability mass function (PMF):]") st.write("A probability mass function (pmf) is a function over the sample space of a discrete random variable X which gives the probability that X is equal to a certain value.") st.markdown(":grey-background[Formula:]") st.latex("P(x)=P[X=x]") st.subheader(":rainbow[2. Continuous Probability Distribution]") st.write("For continuous variables, the outcomes are uncountable.") multi = """:green[Example:]"""