# Tag Info

1

You want to return 0 if no student is in the given year. This avoids division by zero. And as you mention there's no need for your else case within the loop: public double getClassAverage(int schoolYear){ int count = DEFAULT_ZERO; double totalScore = DEFAULT_DOUBLE_ZERO; for (School student : studentCensus){ int year = ...

1

Why do you want to return the current value if the schoolYear is not the year of student x? Don't you simply want to SKIP that student then, which means removing the else-block? And yes, you will have to check count to be greater than zero before dividing by it... // We may not divide by Zero, otherwise NaN, so return 0.0 then... if (count == DEFAULT_ZERO) ...

1

Take the return out of the if so all entries are processed. When you have exited from the loop, return 0.0 if count is zero, otherwise return your current expression.

1

You can just collect your positive and negative values as you go, then average them at the end. from numpy import mean neg_vals,pos_vals = [],[] #Two empty lists to add values into #Your code goes here ... ... ... ... if float(row[0].strip('%')) > 0: # change > to >= if you want to count 0 as positive print "FA, 1",row[0],',', ...

3

I think you have forgotten to initialize sI_Ssum. Set sI_Ssum to 0 - sI_Ssum = 0;

1

You could use numpy.average to calculate weighted average. In [13]: import numpy as np In [14]: rate = [14.424, 14.421, 14.417, 14.413, 14.41] In [15]: amount = [3058.0, 8826.0, 56705.0, 30657.0, 12984.0] In [17]: weighted_avg = np.average(rate, weights=amount) In [19]: weighted_avg Out[19]: 14.415602815646439

0

Let's use python zip function zip([iterable, ...]) This function returns a list of tuples, where the i-th tuple contains the i-th element from each of the argument sequences or iterables. The returned list is truncated in length to the length of the shortest argument sequence. When there are multiple arguments which are all of the same length, zip() is ...

3

for g in range(len(rate)): rate[g] = rate[g] * amount[g] / sum(amount)) rate = sum(rate) is the same as: sum(rate[g] * amount[g] / sum(amount) for g in range(len(rate))) which is the same as: sum(rate[g] * amount[g] for g in range(len(rate))) / sum(amount) which is the same as: sum(x * y for x, y in zip(rate, amount)) / sum(amount) Result: ...

1

This looks like a weighted average. a = [1, 2, 3, 4, 5] b = [2, 8, 50, 30, 10] s = 0 for x, y in zip(a, b): s += x * y average = s / sum(b) print(average) # 3.38 This outputs 3.38, which indeed tends more toward the values with the highest weight.

1

Use TOP 1 with Order by to get the City with max Average Salary SELECT TOP 1 CITY, AVG(SALARY) as AVG_SALARY FROM PILOTE GROUP BY CITY ORDER BY AVG_SALARY DESC or Use Row_number window Function select CITY,AVG_SALARY ( SELECT Row_number()over(order by AVG(SALARY) Desc) as RN,CITY, AVG(SALARY) as avg_salary FROM PILOTE GROUP BY CITY ) A Where RN =1

0

In your calculateAverage() function, you pass the argument n but for the for loop you use the local variable name readfile of function getGrades(). Also, the result of split is a list of strings. To convert them to integers to perform the summations you can use map(). map returns an iterator that applies function to every item of iterable, yielding the ...

0

Use Group by and Having clause SELECT `summonername`, AVG(rankvalue) FROM `players` Where tid=1 group by summonername Having AVG(rankvalue) between 8 and 12 ORDER BY rand() LIMIT 5

0

I haven't got time to check this so something is probably wrong. Test this before you trust it. Anyway, think about using mod % to help simplify this problem. I'm mostly reusing Beth's code. int index = 0; int numRows = 0; int columnTotals[5]; while (inFile.hasNext()) { columnTotals[index%5] += inFile.nextInt(); index++; } inFile.close(); ...

0

The average of a series of numbers is their sum divided by the number of numbers. It should be a simple modification to go from looping through and storing numbers in an array, to looping through each set of 5x9 numbers and calculating a total for each column, then dividing at the end by (9 * numLines). int index = 0; int numRows = 0; int columnTotals[5]; ...

-1

aver[x] = Example[x].sum() / Example[x].count()

0

Suppose your Sale object is defined as: class Sale { String id; String item; double price; int quantity; } Using the mongotemplate you would need a \$project stage in the pipeline before hand to get the calculated fields, which can be a bit counter-intuitive because with the native MongoDB aggregation all is done in one \$group operation ...

1

You just needed to add a counter inside your while loop: print (" please enter all the numbers you want to calculate the avarage. After you enter all of them press 'f' to finish.") s = i = 0 #declare counter: i = 0 x = raw_input ('please enter the number') while (x != 'f'): x = eval (x) s = s + x i+=1 #increment counter: ...

1

select productname, sum(unitprice * quantity) / sum(quantity) as avg_unit_price, sum(quantity) as cnt from your_table group by productname SQLFiddle demo

0

This function calculates the Average of any number of non-zero values: ''' <summary>Calcula el Promedio de los Valores ingresados. ''' Sólo tiene en cuenta los Valores mayores que 0.</summary> ''' <param name="diasValores">Valores a Calcular</param> Function PromedioValores(ByVal ParamArray diasValores() As Integer) 'Esta funcion ...

0

string dataColumnName = (string)RefdtClone.Columns[firstDataColumn + i].ColumnName; ComputeAVGColumn = String.Concat("AVG(["+ dataColumnName+ "])"); string filter = String.Format("[{0}] <= 9999", dataColumnName); Analysisdt.Rows[i]["Mean 1"] = RefdtClone.Compute(ComputeAVGColumn, filter); syntax for filter is described on MSDN DataColumn.Expression page ...

1

what about this? select student, avg(scorevalue) from (select s1.student, 1 as scorefield, s1.score1 as scorevalue from students s1 union select s2.student, 2 as scorefield, s2.score2 as scorevalue from students s2) group by student

1

An alternative way would be to use UNION ALL to unify your score columns into one and then use a plain AVG / GROUP BY: SELECT student, avg(score) AS score FROM (SELECT T1.STUDENT, T1.SCORE1 AS score FROM STUDENTS T1 UNION ALL SELECT T1.STUDENT, T1.SCORE2 AS score FROM STUDENTS T1) GROUP ...

1

Your method is a good one. I would write it as: select student, ((coalesce(score1, 0) + coalesce(score2, 0)) / nullif(nvl2(score1, 1, 0) + nvl2(score2, 1, 0), 0) ) as score_avg The advantage of this method (or the method in your question) is that it is easy to add more scores. That said, having columns with basically the same name ...

1

what about this: select student, case when score1 is null and score2 is not null then score2 when score1 is not null and score2 is null then score1 when score1 is null and score2 is null then 0 else (score1 + score2)/2 end from your_table

1

AND ratings_products.ratings >= '40' AND ratings_products.ratings <= 59 This means you want the values between 40 and 59. You display 20 and 85 in your example, neither is in the range you query for so that result is NULL Removing the AND ratings_products.ratings <= 59 part leaves a query for ratings higher than 40, that is 85, on its own, ...

0

You can do this by using AVG() as a window (analytic) function: SELECT id, name, country, class, company_value FROM ( SELECT t1.id, t1.name, t1.country, t1.class, t2.value1/t2.value2 AS company_value , AVG(t2.value1/t2.value2) OVER ( PARTITION BY t1.country, t1.class ) AS avg_value FROM table1 t1 INNER JOIN table2 t2 ON t1.id = ...

0

I think that you need something like this: with data as ( select cname, country, class, value1/value2 vv , avg(value1/value2) over (partition by country, class) av from vals join companies using (id) ) select country, class, count(case when vv/av < 0.2 then 1 end) cnt from data group by country, class SQLFiddle How it works? In first ...

0

You are calculating average incorrectly. You have 5 employees who all missed 5 days each. (5 + 5 + 5 + 5 + 5) / 5 = 5 Your average is 5. So if you have 5 employees who missed days in this sequence: 4, 3, 2, 4, 5. Then your average = (4 + 3 + 2 + 4 +5) / 5 = 3.6 Average is the sum of all observations divided by the number of observations.

0

I wrote(with a friend) a code that calculates the average number: package dingen; import java.util.Scanner; public class Gemiddelde { public static void main(String[] args) { // TODO Auto-generated method stub Scanner sc = new Scanner(System.in); float maxCount = 0; float avgCount = 0; System.out.println("How many numbers do you ...

0

#include<stdio.h> int main(void) { int count = 0, nSum = 0; char input = 0; double dAvg; while(scanf("%c", &input) != -1) { // while not error if(input == 'N') break; // go out of loop, you can do it another way: // while (scanf("%c", &input) != -1 && input != 'N') { if(input != 0) { // If you don't want ...

0

It isn't outputting the exact answer sometimes and I'm not sure why. This line of code is the culprit: dAvg = nSum / nums When you input 1, 2, 10, -3 you should get 2.5, but the decimal portion of the result is getting truncated. Instead, you should do double division: dAvg = double(nSum) / nums Also, is there a way to get it to break out of ...

0

The division operator gets two ints as operands and hence it returns an int. The result gets implicitly converted to a float by the addition of decimal points. If you want float divisions, you should give at least one of the two operands to the division operator as float.

1

Just cast the division arguments as double: dAvg = (double) nSum / nums; This had to be done because as nSum and nums both are int, they undergo integer division, that is the decimal part is truncated or the division operator returns an int. Hence, to avoid this, we have to explicitly cast double in the division.

2

You divide integers, you should do a double division: dAvg = nSum / (double)nums;

1

You should first calculate age from date of birth then find average of age Select AVG(Datediff("yyyy",DateOfBirth,getdate())) as AVGage from Students Select MIN(Datediff("yyyy",DateOfBirth,getdate())) as MINage from Students you can also calucate avg,min in one query Select AVG(Datediff("yyyy",DateOfBirth,getdate())) as AVGage , ...

0

Use aggregate functions AVG and MIN.. you can easily google it btw ...To count the age you can use getDate function and count the age - depends on your format of column DateOfBirth .. select AVG((getDate()-DateOfBirth)/365) as avgAge , MIN ((getDate()-DateOfBirth)/365) as minAge from Students

0

SELECT * FROM Students GROUP BY DateOfBirth ORDER BY DateOfBirth DESC SELECT MIN(DateOfBirth) AS MinAges FROM Students SELECT AVG(DateOfBirth) AS AverageAges FROM Students

0

Here's a simplistic implementation of what you asking. #include <stddef.h> #include <stdlib.h> #include <stdio.h> int normalize_weights(double *weights, size_t num_weights) { double sum = 0; for (size_t i = 0; i < num_weights; ++i) { if (weights[i] < 0) return -1; sum += weights[i]; } if (sum == 0) ...

0

This might not be exactly for what you are asking, but exponential moving average (EMA) is usually written something like this: double exp_avg(double avg, double sample, double sample_weight) { return sample * sample_weight + avg * (1 - sample_weight); // return avg + (sample - avg) * sample_weight; // equivalent alternative } When first ...

0

As this error saying Msg 8120, Level 16, State 1, Line 1 Column 'tblModules.Tutor' is invalid in the select list because it is not contained in either an aggregate function or the GROUP BY clause. and also mention in the comment @Gordon Linoff: You need to include all the non-aggregated columns in the group by SELECT tblEnrolments.GroupNo, ...

0

You have to group by all values in your select list , so the query will look like : SELECT tblEnrolments.GroupNo, Tutor, DayNo, Time, Room, Semester, AVG(CourseworkMark) AS AvgCourseworkMark, AVG(ExamMark) AS AvgExamMark FROM tblEnrolments INNER JOIN tblModules ON tblEnrolments.GroupNo = tblModules.GroupNo GROUP BY tblEnrolments.GroupNo, Tutor, ...

1

You can use a SUMmed CASE expression to do this; SELECT Title, AVG(CourseworkMark) AS AverageCoursework, AVG(ExamMark) AS AverageExam, SUM(CASE WHEN CourseworkMark > 70 THEN 1 ELSE 0 END) AS CourseworkMarkOver70, SUM(CASE WHEN CourseworkMark BETWEEN 60 AND 70 THEN 1 ELSE 0 END) AS CourseworkMarkOver60To69, SUM(CASE WHEN ...

0

There's many ways to do this, one would be to use the outer apply construct: select col2, AVG(t.col3_values) as "AVG(value personID_1-3)", a.col3_values as "Value PersonID_1", AVG(t.col3_values) - a.col3_values as "Difference" from your_table t outer apply ( select col3_values from your_table where Person_ID = 1 and t.col2 = col2 ) ...

5

For starters, this if (num < max) { max = num; } shall be if (num > max) { max = num; } at least. Also using the above approach with initialising min and max to 0 might not work for any kind of input. To be sure to detect all possiblities of input initialise min = FLT_MAX; and max = -FLT_MAX; If the ...

0

Try this:- SELECT userID, IFNULL(AVG(case when Aptitude = 1 then Mark * Aptitude end), 0) AS AptitudeAverage, IFNULL(AVG(case when English = 1 then Mark * English end), 0) AS EnglishAverage, IFNULL(AVG(case when Technical = 1 then Mark * Technical end), 0) AS TechnicalAverage FROM YOUR_TAB WHERE Status = 'F' GROUP BY userID; ...

2

You can do it with 2 list comprehensions and numpy.mean function or statistics.mean function if you use python 3: In [1]: [[x[0][0], round(np.mean([y[1] for y in x]))] for x in data] Out[1]: [['apple', 2.0], ['cake', 7.0], ['chocolate', 7.0], ['grapes', 6.0]] If you don't have mean function, you can calculate it like this In [2]: tmp = ([x[0][0], [y[1] ...

2

You can try x=[ [["apple",2]], [["cake",5],["cake",8]], [["chocolate",3],["chocolate",9],["chocolate",10]],[["grapes",6]] ] y=[] for i in x: avg=0 c=0 for k in i: avg=k[1]+avg c=c+1 avg=avg/c y.append([k[0],avg]) avg=0 c=0 print y Output: [['apple', 2], ['cake', 6], ['chocolate', 7], ['grapes', 6]]

3

You can use zip within a list comprehension: >>> from __future__ import division >>> [[set(i).pop(),round(sum(j)/len(j),0)] for i,j in [zip(*i) for i in data]] [['apple', 2.0], ['cake', 7.0], ['chocolate', 7.0], ['grapes', 6.0]] The zip function here would separate your values from names in nested lists: >>> [zip(*i) for i in ...

0

Seems like you are trying to do mathematical operations on strings. S = sum(map(float,xx_list))/len(y_list)

0

Assumptions: Your date dimension is called Date and has a Day level, which is the one you want to use on your average. You have a dimension called Time, which has multiple measurements, which are assumed to take place at regular intervals, lets say second (such that the average is the arithmetic average. If they are not and you need to calculate time between ...

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