# -*- coding: utf-8 -*- # Part of Odoo. See LICENSE file for full copyright and licensing details. import collections import json import itertools import operator from odoo import api, fields, models, tools, _ from odoo.exceptions import ValidationError class SurveyQuestion(models.Model): """ Questions that will be asked in a survey. Each question can have one of more suggested answers (eg. in case of multi-answer checkboxes, radio buttons...). Technical note: survey.question is also the model used for the survey's pages (with the "is_page" field set to True). A page corresponds to a "section" in the interface, and the fact that it separates the survey in actual pages in the interface depends on the "questions_layout" parameter on the survey.survey model. Pages are also used when randomizing questions. The randomization can happen within a "page". Using the same model for questions and pages allows to put all the pages and questions together in a o2m field (see survey.survey.question_and_page_ids) on the view side and easily reorganize your survey by dragging the items around. It also removes on level of encoding by directly having 'Add a page' and 'Add a question' links on the tree view of questions, enabling a faster encoding. However, this has the downside of making the code reading a little bit more complicated. Efforts were made at the model level to create computed fields so that the use of these models still seems somewhat logical. That means: - A survey still has "page_ids" (question_and_page_ids filtered on is_page = True) - These "page_ids" still have question_ids (questions located between this page and the next) - These "question_ids" still have a "page_id" That makes the use and display of these information at view and controller levels easier to understand. """ _name = 'survey.question' _description = 'Survey Question' _rec_name = 'title' _order = 'sequence,id' @api.model def default_get(self, fields): defaults = super(SurveyQuestion, self).default_get(fields) if (not fields or 'question_type' in fields): defaults['question_type'] = False if defaults.get('is_page') == True else 'text_box' return defaults # question generic data title = fields.Char('Title', required=True, translate=True) description = fields.Html( 'Description', translate=True, sanitize=False, # TDE TODO: sanitize but find a way to keep youtube iframe media stuff help="Use this field to add additional explanations about your question or to illustrate it with pictures or a video") survey_id = fields.Many2one('survey.survey', string='Survey', ondelete='cascade') scoring_type = fields.Selection(related='survey_id.scoring_type', string='Scoring Type', readonly=True) sequence = fields.Integer('Sequence', default=10) # page specific is_page = fields.Boolean('Is a page?') question_ids = fields.One2many('survey.question', string='Questions', compute="_compute_question_ids") questions_selection = fields.Selection( related='survey_id.questions_selection', readonly=True, help="If randomized is selected, add the number of random questions next to the section.") random_questions_count = fields.Integer( 'Random questions count', default=1, help="Used on randomized sections to take X random questions from all the questions of that section.") # question specific page_id = fields.Many2one('survey.question', string='Page', compute="_compute_page_id", store=True) question_type = fields.Selection([ ('text_box', 'Multiple Lines Text Box'), ('char_box', 'Single Line Text Box'), ('numerical_box', 'Numerical Value'), ('date', 'Date'), ('datetime', 'Datetime'), ('simple_choice', 'Multiple choice: only one answer'), ('multiple_choice', 'Multiple choice: multiple answers allowed'), ('matrix', 'Matrix')], string='Question Type', compute='_compute_question_type', readonly=False, store=True) is_scored_question = fields.Boolean( 'Scored', compute='_compute_is_scored_question', readonly=False, store=True, copy=True, help="Include this question as part of quiz scoring. Requires an answer and answer score to be taken into account.") # -- scoreable/answerable simple answer_types: numerical_box / date / datetime answer_numerical_box = fields.Float('Correct numerical answer', help="Correct number answer for this question.") answer_date = fields.Date('Correct date answer', help="Correct date answer for this question.") answer_datetime = fields.Datetime('Correct datetime answer', help="Correct date and time answer for this question.") answer_score = fields.Float('Score', help="Score value for a correct answer to this question.") # -- char_box save_as_email = fields.Boolean( "Save as user email", compute='_compute_save_as_email', readonly=False, store=True, copy=True, help="If checked, this option will save the user's answer as its email address.") save_as_nickname = fields.Boolean( "Save as user nickname", compute='_compute_save_as_nickname', readonly=False, store=True, copy=True, help="If checked, this option will save the user's answer as its nickname.") # -- simple choice / multiple choice / matrix suggested_answer_ids = fields.One2many( 'survey.question.answer', 'question_id', string='Types of answers', copy=True, help='Labels used for proposed choices: simple choice, multiple choice and columns of matrix') allow_value_image = fields.Boolean('Images on answers', help='Display images in addition to answer label. Valid only for simple / multiple choice questions.') # -- matrix matrix_subtype = fields.Selection([ ('simple', 'One choice per row'), ('multiple', 'Multiple choices per row')], string='Matrix Type', default='simple') matrix_row_ids = fields.One2many( 'survey.question.answer', 'matrix_question_id', string='Matrix Rows', copy=True, help='Labels used for proposed choices: rows of matrix') # -- display & timing options column_nb = fields.Selection([ ('12', '1'), ('6', '2'), ('4', '3'), ('3', '4'), ('2', '6')], string='Number of columns', default='12', help='These options refer to col-xx-[12|6|4|3|2] classes in Bootstrap for dropdown-based simple and multiple choice questions.') is_time_limited = fields.Boolean("The question is limited in time", help="Currently only supported for live sessions.") time_limit = fields.Integer("Time limit (seconds)") # -- comments (simple choice, multiple choice, matrix (without count as an answer)) comments_allowed = fields.Boolean('Show Comments Field') comments_message = fields.Char('Comment Message', translate=True, default=lambda self: _("If other, please specify:")) comment_count_as_answer = fields.Boolean('Comment Field is an Answer Choice') # question validation validation_required = fields.Boolean('Validate entry') validation_email = fields.Boolean('Input must be an email') validation_length_min = fields.Integer('Minimum Text Length', default=0) validation_length_max = fields.Integer('Maximum Text Length', default=0) validation_min_float_value = fields.Float('Minimum value', default=0.0) validation_max_float_value = fields.Float('Maximum value', default=0.0) validation_min_date = fields.Date('Minimum Date') validation_max_date = fields.Date('Maximum Date') validation_min_datetime = fields.Datetime('Minimum Datetime') validation_max_datetime = fields.Datetime('Maximum Datetime') validation_error_msg = fields.Char('Validation Error message', translate=True, default=lambda self: _("The answer you entered is not valid.")) constr_mandatory = fields.Boolean('Mandatory Answer') constr_error_msg = fields.Char('Error message', translate=True, default=lambda self: _("This question requires an answer.")) # answers user_input_line_ids = fields.One2many( 'survey.user_input.line', 'question_id', string='Answers', domain=[('skipped', '=', False)], groups='survey.group_survey_user') # Conditional display is_conditional = fields.Boolean( string='Conditional Display', copy=False, help="""If checked, this question will be displayed only if the specified conditional answer have been selected in a previous question""") triggering_question_id = fields.Many2one( 'survey.question', string="Triggering Question", copy=False, compute="_compute_triggering_question_id", store=True, readonly=False, help="Question containing the triggering answer to display the current question.", domain="""[('survey_id', '=', survey_id), '&', ('question_type', 'in', ['simple_choice', 'multiple_choice']), '|', ('sequence', '<', sequence), '&', ('sequence', '=', sequence), ('id', '<', id)]""") triggering_answer_id = fields.Many2one( 'survey.question.answer', string="Triggering Answer", copy=False, compute="_compute_triggering_answer_id", store=True, readonly=False, help="Answer that will trigger the display of the current question.", domain="[('question_id', '=', triggering_question_id)]") _sql_constraints = [ ('positive_len_min', 'CHECK (validation_length_min >= 0)', 'A length must be positive!'), ('positive_len_max', 'CHECK (validation_length_max >= 0)', 'A length must be positive!'), ('validation_length', 'CHECK (validation_length_min <= validation_length_max)', 'Max length cannot be smaller than min length!'), ('validation_float', 'CHECK (validation_min_float_value <= validation_max_float_value)', 'Max value cannot be smaller than min value!'), ('validation_date', 'CHECK (validation_min_date <= validation_max_date)', 'Max date cannot be smaller than min date!'), ('validation_datetime', 'CHECK (validation_min_datetime <= validation_max_datetime)', 'Max datetime cannot be smaller than min datetime!'), ('positive_answer_score', 'CHECK (answer_score >= 0)', 'An answer score for a non-multiple choice question cannot be negative!'), ('scored_datetime_have_answers', "CHECK (is_scored_question != True OR question_type != 'datetime' OR answer_datetime is not null)", 'All "Is a scored question = True" and "Question Type: Datetime" questions need an answer'), ('scored_date_have_answers', "CHECK (is_scored_question != True OR question_type != 'date' OR answer_date is not null)", 'All "Is a scored question = True" and "Question Type: Date" questions need an answer') ] @api.depends('is_page') def _compute_question_type(self): for question in self: if not question.question_type or question.is_page: question.question_type = False @api.depends('survey_id.question_and_page_ids.is_page', 'survey_id.question_and_page_ids.sequence') def _compute_question_ids(self): """Will take all questions of the survey for which the index is higher than the index of this page and lower than the index of the next page.""" for question in self: if question.is_page: next_page_index = False for page in question.survey_id.page_ids: if page._index() > question._index(): next_page_index = page._index() break question.question_ids = question.survey_id.question_ids.filtered( lambda q: q._index() > question._index() and (not next_page_index or q._index() < next_page_index) ) else: question.question_ids = self.env['survey.question'] @api.depends('survey_id.question_and_page_ids.is_page', 'survey_id.question_and_page_ids.sequence') def _compute_page_id(self): """Will find the page to which this question belongs to by looking inside the corresponding survey""" for question in self: if question.is_page: question.page_id = None else: page = None for q in question.survey_id.question_and_page_ids.sorted(): if q == question: break if q.is_page: page = q question.page_id = page @api.depends('question_type', 'validation_email') def _compute_save_as_email(self): for question in self: if question.question_type != 'char_box' or not question.validation_email: question.save_as_email = False @api.depends('question_type') def _compute_save_as_nickname(self): for question in self: if question.question_type != 'char_box': question.save_as_nickname = False @api.depends('is_conditional') def _compute_triggering_question_id(self): """ Used as an 'onchange' : Reset the triggering question if user uncheck 'Conditional Display' Avoid CacheMiss : set the value to False if the value is not set yet.""" for question in self: if not question.is_conditional or question.triggering_question_id is None: question.triggering_question_id = False @api.depends('triggering_question_id') def _compute_triggering_answer_id(self): """ Used as an 'onchange' : Reset the triggering answer if user unset or change the triggering question or uncheck 'Conditional Display'. Avoid CacheMiss : set the value to False if the value is not set yet.""" for question in self: if not question.triggering_question_id \ or question.triggering_question_id != question.triggering_answer_id.question_id\ or question.triggering_answer_id is None: question.triggering_answer_id = False @api.depends('question_type', 'scoring_type', 'answer_date', 'answer_datetime', 'answer_numerical_box') def _compute_is_scored_question(self): """ Computes whether a question "is scored" or not. Handles following cases: - inconsistent Boolean=None edge case that breaks tests => False - survey is not scored => False - 'date'/'datetime'/'numerical_box' question types w/correct answer => True (implied without user having to activate, except for numerical whose correct value is 0.0) - 'simple_choice / multiple_choice': set to True even if logic is a bit different (coming from answers) - question_type isn't scoreable (note: choice questions scoring logic handled separately) => False """ for question in self: if question.is_scored_question is None or question.scoring_type == 'no_scoring': question.is_scored_question = False elif question.question_type == 'date': question.is_scored_question = bool(question.answer_date) elif question.question_type == 'datetime': question.is_scored_question = bool(question.answer_datetime) elif question.question_type == 'numerical_box' and question.answer_numerical_box: question.is_scored_question = True elif question.question_type in ['simple_choice', 'multiple_choice']: question.is_scored_question = True else: question.is_scored_question = False # ------------------------------------------------------------ # VALIDATION # ------------------------------------------------------------ def validate_question(self, answer, comment=None): """ Validate question, depending on question type and parameters for simple choice, text, date and number, answer is simply the answer of the question. For other multiple choices questions, answer is a list of answers (the selected choices or a list of selected answers per question -for matrix type-): - Simple answer : answer = 'example' or 2 or question_answer_id or 2019/10/10 - Multiple choice : answer = [question_answer_id1, question_answer_id2, question_answer_id3] - Matrix: answer = { 'rowId1' : [colId1, colId2,...], 'rowId2' : [colId1, colId3, ...] } return dict {question.id (int): error (str)} -> empty dict if no validation error. """ self.ensure_one() if isinstance(answer, str): answer = answer.strip() # Empty answer to mandatory question if self.constr_mandatory and not answer and self.question_type not in ['simple_choice', 'multiple_choice']: return {self.id: self.constr_error_msg} # because in choices question types, comment can count as answer if answer or self.question_type in ['simple_choice', 'multiple_choice']: if self.question_type == 'char_box': return self._validate_char_box(answer) elif self.question_type == 'numerical_box': return self._validate_numerical_box(answer) elif self.question_type in ['date', 'datetime']: return self._validate_date(answer) elif self.question_type in ['simple_choice', 'multiple_choice']: return self._validate_choice(answer, comment) elif self.question_type == 'matrix': return self._validate_matrix(answer) return {} def _validate_char_box(self, answer): # Email format validation # all the strings of the form "@." will be accepted if self.validation_email: if not tools.email_normalize(answer): return {self.id: _('This answer must be an email address')} # Answer validation (if properly defined) # Length of the answer must be in a range if self.validation_required: if not (self.validation_length_min <= len(answer) <= self.validation_length_max): return {self.id: self.validation_error_msg} return {} def _validate_numerical_box(self, answer): try: floatanswer = float(answer) except ValueError: return {self.id: _('This is not a number')} if self.validation_required: # Answer is not in the right range with tools.ignore(Exception): if not (self.validation_min_float_value <= floatanswer <= self.validation_max_float_value): return {self.id: self.validation_error_msg} return {} def _validate_date(self, answer): isDatetime = self.question_type == 'datetime' # Checks if user input is a date try: dateanswer = fields.Datetime.from_string(answer) if isDatetime else fields.Date.from_string(answer) except ValueError: return {self.id: _('This is not a date')} if self.validation_required: # Check if answer is in the right range if isDatetime: min_date = fields.Datetime.from_string(self.validation_min_datetime) max_date = fields.Datetime.from_string(self.validation_max_datetime) dateanswer = fields.Datetime.from_string(answer) else: min_date = fields.Date.from_string(self.validation_min_date) max_date = fields.Date.from_string(self.validation_max_date) dateanswer = fields.Date.from_string(answer) if (min_date and max_date and not (min_date <= dateanswer <= max_date))\ or (min_date and not min_date <= dateanswer)\ or (max_date and not dateanswer <= max_date): return {self.id: self.validation_error_msg} return {} def _validate_choice(self, answer, comment): # Empty comment if self.constr_mandatory \ and not answer \ and not (self.comments_allowed and self.comment_count_as_answer and comment): return {self.id: self.constr_error_msg} return {} def _validate_matrix(self, answers): # Validate that each line has been answered if self.constr_mandatory and len(self.matrix_row_ids) != len(answers): return {self.id: self.constr_error_msg} return {} def _index(self): """We would normally just use the 'sequence' field of questions BUT, if the pages and questions are created without ever moving records around, the sequence field can be set to 0 for all the questions. However, the order of the recordset is always correct so we can rely on the index method.""" self.ensure_one() return list(self.survey_id.question_and_page_ids).index(self) # ------------------------------------------------------------ # STATISTICS / REPORTING # ------------------------------------------------------------ def _prepare_statistics(self, user_input_lines): """ Compute statistical data for questions by counting number of vote per choice on basis of filter """ all_questions_data = [] for question in self: question_data = {'question': question, 'is_page': question.is_page} if question.is_page: all_questions_data.append(question_data) continue # fetch answer lines, separate comments from real answers all_lines = user_input_lines.filtered(lambda line: line.question_id == question) if question.question_type in ['simple_choice', 'multiple_choice', 'matrix']: answer_lines = all_lines.filtered( lambda line: line.answer_type == 'suggestion' or ( line.answer_type == 'char_box' and question.comment_count_as_answer) ) comment_line_ids = all_lines.filtered(lambda line: line.answer_type == 'char_box') else: answer_lines = all_lines comment_line_ids = self.env['survey.user_input.line'] skipped_lines = answer_lines.filtered(lambda line: line.skipped) done_lines = answer_lines - skipped_lines question_data.update( answer_line_ids=answer_lines, answer_line_done_ids=done_lines, answer_input_done_ids=done_lines.mapped('user_input_id'), answer_input_skipped_ids=skipped_lines.mapped('user_input_id'), comment_line_ids=comment_line_ids) question_data.update(question._get_stats_summary_data(answer_lines)) # prepare table and graph data table_data, graph_data = question._get_stats_data(answer_lines) question_data['table_data'] = table_data question_data['graph_data'] = json.dumps(graph_data) all_questions_data.append(question_data) return all_questions_data def _get_stats_data(self, user_input_lines): if self.question_type == 'simple_choice': return self._get_stats_data_answers(user_input_lines) elif self.question_type == 'multiple_choice': table_data, graph_data = self._get_stats_data_answers(user_input_lines) return table_data, [{'key': self.title, 'values': graph_data}] elif self.question_type == 'matrix': return self._get_stats_graph_data_matrix(user_input_lines) return [line for line in user_input_lines], [] def _get_stats_data_answers(self, user_input_lines): """ Statistics for question.answer based questions (simple choice, multiple choice.). A corner case with a void record survey.question.answer is added to count comments that should be considered as valid answers. This small hack allow to have everything available in the same standard structure. """ suggested_answers = [answer for answer in self.mapped('suggested_answer_ids')] if self.comment_count_as_answer: suggested_answers += [self.env['survey.question.answer']] count_data = dict.fromkeys(suggested_answers, 0) for line in user_input_lines: if line.suggested_answer_id or (line.value_char_box and self.comment_count_as_answer): count_data[line.suggested_answer_id] += 1 table_data = [{ 'value': _('Other (see comments)') if not sug_answer else sug_answer.value, 'suggested_answer': sug_answer, 'count': count_data[sug_answer] } for sug_answer in suggested_answers] graph_data = [{ 'text': _('Other (see comments)') if not sug_answer else sug_answer.value, 'count': count_data[sug_answer] } for sug_answer in suggested_answers] return table_data, graph_data def _get_stats_graph_data_matrix(self, user_input_lines): suggested_answers = self.mapped('suggested_answer_ids') matrix_rows = self.mapped('matrix_row_ids') count_data = dict.fromkeys(itertools.product(matrix_rows, suggested_answers), 0) for line in user_input_lines: if line.matrix_row_id and line.suggested_answer_id: count_data[(line.matrix_row_id, line.suggested_answer_id)] += 1 table_data = [{ 'row': row, 'columns': [{ 'suggested_answer': sug_answer, 'count': count_data[(row, sug_answer)] } for sug_answer in suggested_answers], } for row in matrix_rows] graph_data = [{ 'key': sug_answer.value, 'values': [{ 'text': row.value, 'count': count_data[(row, sug_answer)] } for row in matrix_rows ] } for sug_answer in suggested_answers] return table_data, graph_data def _get_stats_summary_data(self, user_input_lines): stats = {} if self.question_type in ['simple_choice', 'multiple_choice']: stats.update(self._get_stats_summary_data_choice(user_input_lines)) elif self.question_type == 'numerical_box': stats.update(self._get_stats_summary_data_numerical(user_input_lines)) if self.question_type in ['numerical_box', 'date', 'datetime']: stats.update(self._get_stats_summary_data_scored(user_input_lines)) return stats def _get_stats_summary_data_choice(self, user_input_lines): right_inputs, partial_inputs = self.env['survey.user_input'], self.env['survey.user_input'] right_answers = self.suggested_answer_ids.filtered(lambda label: label.is_correct) if self.question_type == 'multiple_choice': for user_input, lines in tools.groupby(user_input_lines, operator.itemgetter('user_input_id')): user_input_answers = self.env['survey.user_input.line'].concat(*lines).filtered(lambda l: l.answer_is_correct).mapped('suggested_answer_id') if user_input_answers and user_input_answers < right_answers: partial_inputs += user_input elif user_input_answers: right_inputs += user_input else: right_inputs = user_input_lines.filtered(lambda line: line.answer_is_correct).mapped('user_input_id') return { 'right_answers': right_answers, 'right_inputs_count': len(right_inputs), 'partial_inputs_count': len(partial_inputs), } def _get_stats_summary_data_numerical(self, user_input_lines): all_values = user_input_lines.filtered(lambda line: not line.skipped).mapped('value_numerical_box') lines_sum = sum(all_values) return { 'numerical_max': max(all_values, default=0), 'numerical_min': min(all_values, default=0), 'numerical_average': round(lines_sum / (len(all_values) or 1), 2), } def _get_stats_summary_data_scored(self, user_input_lines): return { 'common_lines': collections.Counter( user_input_lines.filtered(lambda line: not line.skipped).mapped('value_%s' % self.question_type) ).most_common(5) if self.question_type != 'datetime' else [], 'right_inputs_count': len(user_input_lines.filtered(lambda line: line.answer_is_correct).mapped('user_input_id')) } class SurveyQuestionAnswer(models.Model): """ A preconfigured answer for a question. This model stores values used for * simple choice, multiple choice: proposed values for the selection / radio; * matrix: row and column values; """ _name = 'survey.question.answer' _rec_name = 'value' _order = 'sequence, id' _description = 'Survey Label' question_id = fields.Many2one('survey.question', string='Question', ondelete='cascade') matrix_question_id = fields.Many2one('survey.question', string='Question (as matrix row)', ondelete='cascade') sequence = fields.Integer('Label Sequence order', default=10) value = fields.Char('Suggested value', translate=True, required=True) value_image = fields.Image('Image', max_width=256, max_height=256) is_correct = fields.Boolean('Is a correct answer') answer_score = fields.Float('Score for this choice', help="A positive score indicates a correct choice; a negative or null score indicates a wrong answer") @api.constrains('question_id', 'matrix_question_id') def _check_question_not_empty(self): """Ensure that field question_id XOR field matrix_question_id is not null""" for label in self: if not bool(label.question_id) != bool(label.matrix_question_id): raise ValidationError(_("A label must be attached to only one question."))