Given the names and grades for each student in a class N of students, store them in a nested list and print the name(s) of any student(s) having the second lowest grade.

Overview

Hackerank-Nested-List

Given the names and grades for each student in a class N of students, store them in a nested list and print the name(s) of any student(s) having the second lowest grade.

  scorex=[]
  namex=[]
  for _ in range(int(raw_input())):
      name = raw_input()
      score = float(raw_input())
      scorex.append(score)
      namex.append(name)

  i = min(scorex)
  flag = True
  while flag:
      if i in scorex:
          namex.pop(scorex.index(i))
          scorex.pop(scorex.index(i))
      else:
          flag=False
  t=min(scorex)
  names=[]
  flag=True

  count =scorex.count(t)

  for _ in range (count):
      names.append(namex[scorex.index(t)])
      namex.pop(scorex.index(t))
      scorex.pop(scorex.index(t))
  names.sort()
  for i in names:
      print i
Owner
Sangeeth Mathew John
Bachelor of Technology
Sangeeth Mathew John
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