7 stories matched Male and (16-21 or 22-30) and Respect and talent and slum
Your search did not match enough stories to do a complete analysis. Only basic information is showing.
How good is this collection? (48/100) When making inferences, it is important to have many perspectives. Running
our story quality test will measure this using the diversity of story collectors, named organizations,
locations, and the balance in story point of view and tone to estimate the collection's suitability for meta-analysis.
Each component of the score is between 0 and 100, with 100 being the best and 0 being the worst.
Diverse sources: 4/100 (highest when collection contains hundreds of stories with miniminal overlap among the storytellers, named organizations, and locations)
Completeness: 93/100 (100% when every storytellers answer every question)
Diverse points of view: 21/100 (100% when there is a good balance of points of view. Personal experiences carry more weight over organization perspectrives.
Balance in story tone: 74/100 (100% if collection has a balance of positive and negative perspectives)
Your collection has a negative tone.
q2:A certain non govermental institution has been on the fore front in slums to ensure that children get education and proceed to a level that can create employment this has yield fruits as many children are doing well also discovering their talents Q3:Naturing Talents Q4:Children of Kibera Q6:Kenya Q7:Nairobi Q8:Kibera- Olympic Q9:2-6 months ago Q10:Male Q12:Heard about it happening Q13:The right people Q15:Yes Q17:<<2012-10-25-NYANDOKIOI-S*212-P*001>> _ Q18:Happy Q19:Family and Friends,Respect,Fun Q23:50 Q37:Good idea that succeeded Q38:Specific solution Q39:Physical well-being Q40:Mixed Q122:22-30 Q132:None Q133:None Q134:Children Of Kibera
q2:Mary was a young lady who stayed with her grandmother at Soweto Slums. She really had a talent in football. Since female football was not rampant in the country, her talent almost collapsed until when an organisation which was supporting .football came around. Mary selected among the players who got a flight to Norway. She is now a professional footballer at Mathare Youths. Q3:From zero to hero Q4:MYSA Q6:Kenya Q7:Embakasi Q8:Soweto Q9:1-2 years ago Q10:Male Q12:Saw it happen Q13:The right people Q15:Yes Q17:<<29-02-2012-SOWETO/MZESA-S#224-P#01>>_ Q18:Inspired Q19:Food and shelter,Knowledge,Respect Q23:3 Q37:Good idea that succeeded Q38:Broad need Q39:Social relations Q40:Lasting change Q122:16-21 Q132:-1.31487200000000 Q133:36.80095900000000 Q134:Mysa
q2:Sports is the newest all time investment in the world.Young people are manking millions through their sport ventures,Young girls are through being left behind into thrill.These are especially girls in Kibera slums.While girls of their age are playing for big clubs and making a living they get no chance to enjoy these thrills too.
Girls soccer,though is changing this through their sports programme centered on soccer.
They have ensured that great soccer talents in the girls in Kibera has been tapped,nurtured and sold out there for the concerned stakeholders to expand and invest in. Q3:PLAYING THE GAME Q4:GIRL SOCCER Q6:KENYA Q7:KIBERA Q8:KAMBI MURU Q9:2-6 months ago Q10:Male Q12:Saw it happen Q13:The right people Q15:No Q17:<<2012-07-01-KIBERA-S#004-P#01>>_ Q18:Inspired Q19:Physical Needs,Respect,Freedom Q37:Good idea that succeeded Q38:Mixed Q39:Mixed Q40:Mixed Q122:16-21 Q132:None Q133:None Q134:None
q2:Mant youths in kibera has the running talent.The slum is capable of producing good runner to represent our countries both regionally and internationally.This was proved when sokoto toko organised a marathon race where some youth proved that they can actually represent our country. Q3:Talent nuturing Q4:sokotoko Q6:kenya Q7:nairobi Q8:kona mbaya Q9:1-2 years ago Q10:Male Q12:Saw it happen Q13:The right people Q15:No Q17:<<2011-08-09-ST. VINCENT DE PAUL-S#178-P#01>>_ Q18:Inspired Q19:Physical Needs,Knowledge,Respect Q37:Good idea that failed Q38:Mixed Q39:Social relations Q40:Mixed Q122:16-21 Q132:-1.13333000000000 Q133:34.55000000000000 Q134:Sokotoko
q2:The one thing that separates sadili from all other sport academies and foundtion in Kibera is the fact that they offer a wide range of sports. Most sports organizations in Kibera focus only on soccer and overlook other vital talents that are rotting in the slums.
Sadili is doing a good job by ensuring that other sports ventures like lawn tennis, basketball e.t.c are put intio consideration and this adequately invested info. Those are young children into slum who i have went who would wish to play other games but have been forced to involve in sports that is offered by organisations they,re info. Q3:A DIFFERENT VENTURE Q4:SADILI SPORTS Q6:KENYA Q7:KIBERA Q8:LANGATA Q9:7-12 months ago Q10:Male Q12:Saw it happen Q13:Nobody Q15:Yes Q17:<<2012-04-20-KIBERA-S#158-P#01>>_ Q18:Inspired Q19:Food and shelter,Knowledge,Respect Q23:19 Q37:Good idea that succeeded Q38:Broad need Q39:Physical well-being Q40:It requires a continuous effort Q122:16-21 Q132:-1.31666670000000 Q133:36.78333330000000 Q134:None
q2:A lot of boys and girls in the slum are talented but they have no hope.They try their level best and there is no hope at the at the end of the tarnel.There is only one hope .This is till a shofco fc was started .It has helped many and eat the fruits of their gift from God. Through this team many youths have been places and socialized with many other youths Q3:LIGHT AT THE END OF THE TARNEL Q4:SHOFCO Q6:Kenya Q7:Nairobi Q8:Katwekera Q9:7-12 months ago Q10:Male Q12:Saw it happen Q13:The right people Q15:Yes Q17:[HORIZON]CC 2011-08-01-KIBERA-S#07-P#01>>_ Q18:Inspired Q19:Food and shelter,Physical Needs,Respect Q23:20 Q37:Good idea that succeeded Q38:Specific problem Q39:Social relations Q40:It requires a continuous effort Q122:16-21 Q132:-1.31539030500000 Q133:36.78355324000000 Q134:Shining Hope for Communities
q2:Janet is a widow living in the slums of Kibera. She is a mother of three and she is the bread winner of the young kids. She is so hard working and her children are well kept. Besides that she is talented. she makes rings, bangles, necklesses and so on.She Does this but have no where to present or sell her items. one evening a woman walked through her door.She was the light in her life. The woman talked to her and told her about the power women shop where she could sell her items and also get more ideas to make them. This was an achievement to her Q3:ARTS PAY Q4:POWER WOMEN SHOP Q5:arts, power, kids, young, working Q6:KENYA Q7:NAIROBI Q8:LINDI Q9:7-12 months ago Q10:Male Q12:Saw it happen Q13:The right people Q15:Yes Q17:[HORIZON]QUESTION 19 NOT CAPTURED<<2011-08-01-KIBERA-S#022-P#01>>_ Q18:Happy Q19:Knowledge,Respect,Self-esteem Q23:27 Q37:Good idea that succeeded Q38:Specific problem Q39:Economic opportunity Q40:Lasting change Q122:16-21 Q132:-1.31615900000000 Q133:36.79246200000000 Q134:None
 
Found 7 records. mysql icon_filters: group_id between 0 and 5000 and q10 = 'Male' and q19 like '%Respect%' and q122 in ('16-21','22-30') and (( q2 like '%talent%' and q2 like '%slum%' ) or ( q3 like '%talent%' and q3 like '%slum%' ) or ( q4 like '%talent%' and q4 like '%slum%' ) or ( q5 like '%talent%' and q5 like '%slum%' ) or ( q6 like '%talent%' and q6 like '%slum%' ) or ( q7 like '%talent%' and q7 like '%slum%' ) or ( q8 like '%talent%' and q8 like '%slum%' ) or ( q11 like '%talent%' and q11 like '%slum%' ) or ( q17 like '%talent%' and q17 like '%slum%' ) or ( q26 like '%talent%' and q26 like '%slum%' ) or ( q27 like '%talent%' and q27 like '%slum%' ) or ( q28 like '%talent%' and q28 like '%slum%' ) or ( q29 like '%talent%' and q29 like '%slum%' ) or ( q35 like '%talent%' and q35 like '%slum%' ) or ( q41 like '%talent%' and q41 like '%slum%' ) or ( q42 like '%talent%' and q42 like '%slum%' ) or ( q43 like '%talent%' and q43 like '%slum%' ) or ( q46 like '%talent%' and q46 like '%slum%' ) or ( q47 like '%talent%' and q47 like '%slum%' ) or ( q60 like '%talent%' and q60 like '%slum%' ) or ( q65 like '%talent%' and q65 like '%slum%' ) or ( q70 like '%talent%' and q70 like '%slum%' ) or ( q71 like '%talent%' and q71 like '%slum%' ) or ( q72 like '%talent%' and q72 like '%slum%' ) or ( q73 like '%talent%' and q73 like '%slum%' ) or ( q74 like '%talent%' and q74 like '%slum%' ) or ( q75 like '%talent%' and q75 like '%slum%' ) or ( q76 like '%talent%' and q76 like '%slum%' ) or ( q77 like '%talent%' and q77 like '%slum%' ) or ( q80 like '%talent%' and q80 like '%slum%' ) or ( q81 like '%talent%' and q81 like '%slum%' ) or ( q86 like '%talent%' and q86 like '%slum%' ) or ( q87 like '%talent%' and q87 like '%slum%' ) or ( q88 like '%talent%' and q88 like '%slum%' ) or ( q89 like '%talent%' and q89 like '%slum%' ) or ( q98 like '%talent%' and q98 like '%slum%' ) or ( q99 like '%talent%' and q99 like '%slum%' ) or ( q110 like '%talent%' and q110 like '%slum%' ) or ( q111 like '%talent%' and q111 like '%slum%' ) or ( q116 like '%talent%' and q116 like '%slum%' ) or ( q117 like '%talent%' and q117 like '%slum%' ) or ( q123 like '%talent%' and q123 like '%slum%' ) or ( q125 like '%talent%' and q125 like '%slum%' ) or ( q132 like '%talent%' and q132 like '%slum%' ) or ( q133 like '%talent%' and q133 like '%slum%' ) or ( q134 like '%talent%' and q134 like '%slum%' ) or ( q135 like '%talent%' and q135 like '%slum%' ) or ( q136 like '%talent%' and q136 like '%slum%' ) or ( q138 like '%talent%' and q138 like '%slum%' ) or ( q141 like '%talent%' and q141 like '%slum%' ) or ( q142 like '%talent%' and q142 like '%slum%' ) or ( q151 like '%talent%' and q151 like '%slum%' )) LIMIT 4000; filter_questions ['q10', 'q19', 'q122'] merge:ignore A[Po7Q6Gj88Vr2]:SUCCESS: 1 rows inserted. not enough values to unpack (expected 3, got 2)