>>> df.collect()
[Row(user_id=1, attr_name=u'age', attr_value=u'30', income=50, expenses=40), Row(user_id=1, attr_name=u'city', attr_value=u'beijing', income=50, expenses=40), Row(user_id=1, attr_name=u'gender', attr_value=u'fale', income=50, expenses=40), Row(user_id=1, attr_name=u'height', attr_value=u'172cm', income=50, expenses=40), Row(user_id=1, attr_name=u'weight', attr_value=u'70kg', income=50, expenses=40), Row(user_id=2, attr_name=u'age', attr_value=u'26', income=100, expenses=80), Row(user_id=2, attr_name=u'city', attr_value=u'beijing', income=100, expenses=80), Row(user_id=2, attr_name=u'gender', attr_value=u'fale', income=100, expenses=80), Row(user_id=2, attr_name=u'height', attr_value=u'170cm', income=100, expenses=80), Row(user_id=2, attr_name=u'weight', attr_value=u'65kg', income=100, expenses=80), Row(user_id=3, attr_name=u'age', attr_value=u'35', income=99, expenses=99), Row(user_id=3, attr_name=u'city', attr_value=u'nanjing', income=99, expenses=99), Row(user_id=3, attr_name=u'gender', attr_value=u'female', income=99, expenses=99), Row(user_id=3, attr_name=u'height', attr_value=u'161cm', income=99, expenses=99), Row(user_id=3, attr_name=u'weight', attr_value=u'50kg', income=99, expenses=99)]