All of the above functions can be used along Window functions. A sample would look somewhat like this.
from pyspark.sql.window import Window
from pyspark.sql.functions import lag, lead, first, last
df.withColumn('value', lag('col1name').over(
Window.partitionBy('colname2').orderBy('colname3')
)
)
The function is used on the partition only when you use the partitionBy clause. If you just want to lag / lead over the entire data, use a simple orderBy and don't use the patitionBy clause. However, that wouldn't be very efficient.
In case you want the lag / lead to perform in a reverse fashion, you can also use the following format:
from pyspark.sql.window import Window
from pyspark.sql.functions import lag, lead, first, last, desc
df.withColumn('value', lag('col1name').over(
Window.partitionBy('colname2').orderBy(desc('colname3'))
)
)
Although strictly speaking, you wouldn't need the desc for lag / lead type functions. They are primarily used in conjunction with rank / percent_rank / row_number type functions.