SQL: SELECT city,country,sum(events) ev FROM `joe` where country like 'graested' and action like 'hairdresser%' group by 1,2 order by ev desc limit 1 ROWS: 0
SQL: SELECT city,country,sum(events) ev FROM `joe` where city like 'graested' and action like 'hairdresser%' group by 1,2 order by ev desc limit 1 ROWS: 0
SQL: SELECT sVal FROM `joe_settings` where sTopic like 'hairdresser' and sName like 'color' ROWS: 5 ROW 0: {"sVal":"'25' => '#f2b434'"} ROW 1: {"sVal":"'>25' => '#990099'"} ROW 2: {"sVal":"'20' => '#259c5d'"} ROW 3: {"sVal":"'10' => '#4882ef'"} ROW 4: {"sVal":"'0' => '#d7483f'"}
SQL: SELECT sVal FROM `joe_settings` where sTopic like 'hairdresser' and sName like 'nice' ROWS: 1 ROW 0: {"sVal":"a Hairdresser (or Barber, Hair stylist, etc.)"}
SQL: SELECT sVal FROM `joe_settings` where sTopic like 'hairdresser' and sName like 'niceTagline' ROWS: 0
SQL: SELECT case when action like '%_20' then 10 when action like '%_15' then 5 when action like '%_13' then 2 when action like '%_12' then 1 else 0 end as action,sum(events) events FROM joe where lower(city) like 'graested' and country like '%' and action like 'hairdresser2_%' group by 1 order by action desc ROWS: 0
SQL: SELECT case when action like '%_20' then 10 when action like '%_15' then 5 when action like '%_13' then 2 when action like '%_12' then 1 else 0 end as action,sum(events) events FROM joe where country like '%' and action like 'hairdresser2_%' group by 1 order by action desc ROWS: 0
SQL: SELECT region, sum(action*events) action, sum(events) events from (SELECT case when action like '%_20' then 10 when action like '%_15' then 5 when action like '%_13' then 2 when action like '%_12' then 1 else 0 end as action, region,sum(events) events FROM joe where country like '%' and action like 'hairdresser2%' group by 1,2) g group by 1 ROWS: 0
SQL: SELECT country, sum(action*events) action, sum(events) events from (SELECT case when action like '%_20' then 10 when action like '%_15' then 5 when action like '%_13' then 2 when action like '%_12' then 1 else 0 end as action, country,sum(events) events FROM joe where country not like '(not set)' and action like 'hairdresser2%' group by 1,2) g group by 1 having sum(events)>4 ROWS: 0
SQL: SELECT lat, lon,t.city city, sum(action*events) action, sum(events) events from (SELECT case when action like '%_20' then 10 when action like '%_15' then 5 when action like '%_13' then 2 when action like '%_12' then 1 else 0 end as action, city,sum(events) events FROM joe where country like '%' and action like 'hairdresser2%' group by 1,2) t left join citiesLatLon ltln on t.city = ltln.city where lat is not null and t.city not like '(not set)' group by 1,2,3 having sum(events)>2 ROWS: 0
SQL: SELECT city,country,sum(events) ev FROM `joe` where country like 'graested' and action like '{$action_string}_%' group by 1,2 order by ev desc limit 1 ROWS: 0
SQL: SELECT city,country,sum(events) ev FROM `joe` where city like 'graested' and action like '{$action_string}_%' group by 1,2 order by ev desc limit 1 ROWS: 0SQL: SELECT * FROM joe where lower(city) like 'graested' and country like '%' and action like '{$action_string}__%' order by events desc ROWS: 0
SQL: Select count(distinct country) countries,count(distinct city) cities,sum(case when action not in (select min(action) from joe where action like 'hairdresser2_%') then events else 0 end) as love, sum(events) users from joe where action like 'hairdresser2_%' ; ROWS: 1 ROW 0: {"countries":"0","cities":"0","love":null,"users":null}
CITIES
Countries
USERS
Tip more than 0%
SQL: SELECT city from (SELECT city,sum(events) FROM ( SELECT * FROM joe) a left join ( select country country_2 FROM joe where lower(city) like 'graested' order by events desc limit 1 ) b on a.country = b.country_2 where country_2 is not null and city not like 'graested' and city not like '(not set)' group by 1 order by 2 desc ) yo limit 25 ROWS: 25 ROW 0: {"city":"Copenhagen"} ROW 1: {"city":"Aalborg"} ROW 2: {"city":"Aarhus"} ROW 3: {"city":"Naestved"} ROW 4: {"city":"Odense"} ROW 5: {"city":"Randers"} ROW 6: {"city":"Esbjerg"} ROW 7: {"city":"Ballerup"} ROW 8: {"city":"Herlev"} ROW 9: {"city":"Kastrup"}Copenhagen - Aalborg - Aarhus - Naestved - Odense - Randers - Esbjerg - Ballerup - Herlev - Kastrup - Nakskov - Rudkobing - Roslev - Krusa - Holeby - Ringsted - Grenaa - Struer - Gentofte - Frederikshavn - Skorping - Birkerod - Videbaek - Frederiksberg - Hedehusene -
SQL: SELECT * FROM joe_serp WHERE city like 'graested' ROWS: 0
SQL: SELECT city from ( SELECT city,sum(events) FROM joe WHERE city not like '(not set)' and city not like 'graested' group by 1 order by 2 desc limit 100) c ORDER BY RAND() limit 20 ROWS: 20 ROW 0: {"city":"Los Angeles"} ROW 1: {"city":"Washington"} ROW 2: {"city":"Stockholm"} ROW 3: {"city":"Kuala Lumpur"} ROW 4: {"city":"Istanbul"} ROW 5: {"city":"Edmonton"} ROW 6: {"city":"Portland"} ROW 7: {"city":"Irvine"} ROW 8: {"city":"Saskatoon"} ROW 9: {"city":"Kitchener"}Tipping in New York , Tipping in Orlando , Tipping in Los Angeles , Tipping in Victoria , Tipping in Edinburgh , Tipping in Houston , Tipping in Sofia , Tipping in Adelaide , Tipping in Kuala Lumpur , Tipping in Irvine , Tipping in Nashville , Tipping in Auckland , Tipping in Budapest , Tipping in Washington , Tipping in Tallinn , Tipping in The Hague , Tipping in Montreal , Tipping in Lisbon , Tipping in Atlanta , Tipping in Dubai ,