I have a large data set that is parsed by a Ruby script. The script creates a CSV, then uploads it to a Redshift database. The majority of the lines in the logs are successfully uploaded, but many fail to upload due to "extra columns found". I have isolated a case where this happens.
The log data looks like this:
2014-09-22 13:02:16-0400,238 {"Items":[{"PubEndDate":"2002/04/09","ItmId":"1280429264","SourceType":"Government & Official Publications","ReasonCode":"","MyResearchUser":"","ProjectCode":"","PublicationCode":"","PubStartDate":"2002/04/09","ItmFrmt":"KWIC","Subrole":"KWIC","PaymentType":"PrePaid","UsageInfo":"P-1008361-158946-STAFF-null-2195091","Role":"KWIC","RetailPrice":1.19,"EffectivePrice":0,"ParentItemId":"396489"},{"PubEndDate":"2012/04/05","ItmId":"1139461559","SourceType":"Government & Official Publications","ReasonCode":"","MyResearchUser":"","ProjectCode":"","PublicationCode":"","PubStartDate":"2012/04/05","ItmFrmt":"KWIC","Subrole":"KWIC","PaymentType":"PrePaid","UsageInfo":"P-1008365-158946-STAFF-null-2195099","Role":"KWIC","RetailPrice":0.75,"EffectivePrice":0,"ParentItemId":"396490"}]}
I then create a CSV via a Ruby script that looks like this (excuse the large code block, it's a long script):
require 'json'
# add methods to unnest ruby hashes for converting nested json into an array with reasonable values
class Hash
def unnest
new_hash = {}
each do |key,val|
if val.is_a?(Hash)
new_hash.merge!(val.prefix_keys("#{key}-"))
else
new_hash[key] = val
end
end
new_hash
end
def prefix_keys(prefix)
Hash[map{|key,val| [prefix + key, val]}].unnest
end
end
def parse(usage)
usage = usage.gsub(/|/,'').gsub(/\n/, '')
#Array of all possible keys, make sure all fields in db are filled regardless of how many params are passed into the usage log
keys = ["UserAgent","IP","AppId","SessId","JSessionId","LangCd","UsageType","BreadCrumb","AuthType","UsageGroupId","SearchType","ResponseTime","EventType","LandedFirstPage","ReferringUrl","PubEndDate","ItmId","PubStartDate","ItmFrmt","OpenUrlRefId","OpenAccess","LinkSource","SourceType","Subrole","PremId","PaymentType","ObjectType","OrigSite","UsageInfo","Role","DeliveryMethod","ParentItemId","SearchAllProductsFlag","MarketSegment","SearchCount","SearchEngine","QryString","SubjectKey","SearchId","SearchHits","UserInfo-IP","UserInfo-AppId","UserInfo-SessId","UserInfo-UsageGroupId","SearchProductInfo","TurnAwayFlag","LinkOutTarget","LinkOutType","TranslationTime","TextSize","TextType","SourceLang","DestinationLang","ReasonCode","RetailPrice","EffectivePrice","MyResearchUser","ProjectCode","DocID","ListingType","MasterID","TerminatedSessionID","PublicationId","PublicationTitle","ItemTitle","AccessAgreementStatus"]
items_keys = ["ReferringUrl","PubEndDate","ItmId","SourceType","PubStartDate","PublicationCode","ItmFrmt","PaymentType","ObjectType","OrigSite","UsageInfo","OpenUrlRefId","TurnAwayFlag","OpenAccess","ParentItemId","SearchId","SearchProductInfo","EventName","HistoryId","AlertId","ReasonCode","Origin","MyResearchUser","ProjectCode","Subrole","NumberOfCopies","Role","RetailPrice","EffectivePrice","Multiplier","PublicationId","PublicationTitle","ItemTitle",]
# extract date and time from json, then parse json to ruby hash
date = usage.scan(/\d{4}-\d\d-\d\d/).first
time = usage.scan(/\d\d:\d\d:\d\d/).first
json = usage.scan(/\{.*\}/).first
parsed = JSON.parse(json).unnest
# return array of values, substituting 'Not Listed' for all missing attributes
result = []
items_result = []
result = (0...keys.length).map{ |i| parsed[keys[i]] || 'NA'}
result.unshift date
result.unshift time
result.push "save_space"#usage
items = JSON.parse(json)
temp_result = result
CSV.open("testing.csv", "a+", {:col_sep => "|"}) do |csv|
begin
items["Items"].each do |item|
item_result = (0...items_keys.length).map{ |i| item[items_keys[i]] || "NA" }
temp_result = (temp_result << item_result).flatten!
csv << temp_result
temp_result = result.flatten
item_result = []
end
rescue
item_result = (0...items_keys.length).map{ |i| "NA" }
temp_result = (temp_result << item_result).flatten!
csv << temp_result
temp_result = result.flatten
item_result = []
end
end
nil
end
File.readlines("file.log").each do |line|
parse(line)
end
`ruby upload_csv_to_redshift.rb usage_logs_testing`
This script creates a CSV that looks like this:
13:02:16|2014-09-22|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|save_space|NA|2002/04/09|1280429264|Government & Official Publications|2002/04/09|""|KWIC|PrePaid|NA|NA|P-1008361-158946-STAFF-null-2195091|NA|NA|NA|396489|NA|NA|NA|NA|NA|""|NA|""|""|KWIC|NA|KWIC|1.19|0|NA|NA|NA|NA
13:02:16|2014-09-22|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|NA|save_space|NA|2002/04/09|1280429264|Government & Official Publications|2002/04/09|""|KWIC|PrePaid|NA|NA|P-1008361-158946-STAFF-null-2195091|NA|NA|NA|396489|NA|NA|NA|NA|NA|""|NA|""|""|KWIC|NA|KWIC|1.19|0|NA|NA|NA|NA|NA|2012/04/05|1139461559|Government & Official Publications|2012/04/05|""|KWIC|PrePaid|NA|NA|P-1008365-158946-STAFF-null-2195099|NA|NA|NA|396490|NA|NA|NA|NA|NA|""|NA|""|""|KWIC|NA|KWIC|0.75|0|NA|NA|NA|NA
Which is uploaded to the Redshift database structured like this:
CREATE TABLE usage_logs_test
(
log_id bigint IDENTITY (0,1),
log_time varchar(200),
log_date varchar(200),
UserAgent varchar(max),
IP varchar(max),
AppId varchar(max),
SessId varchar(max),
JSessionId varchar(max),
LangCd varchar(max),
UsageType varchar(max),
BreadCrumb varchar(max),
AuthType varchar(max),
UsageGroupId varchar(max),
SearchType varchar(max),
ResponseTime varchar(max),
EventType varchar(max),
LandedFirstPage varchar(max),
ReferringUrl varchar(max),
PubEndDate varchar(max),
ItmId varchar(max),
PubStartDate varchar(max),
ItmFrmt varchar(max),
OpenUrlRefId varchar(max),
OpenAccess varchar(max),
LinkSource varchar(max),
SourceType varchar(max),
Subrole varchar(max),
PremId varchar(max),
PaymentType varchar(max),
ObjectType varchar(max),
OrigSite varchar(max),
UsageInfo varchar(max),
Role varchar(max),
DeliveryMethod varchar(max),
ParentItemId varchar(max),
SearchAllProductsFlag varchar(max),
MarketSegment varchar(max),
SearchCount varchar(max),
SearchEngine varchar(max),
QryString varchar(max),
SubjectKey varchar(max),
SearchId varchar(max),
SearchHits varchar(max),
UserInfo_IP varchar(max),
UserInfo_AppId varchar(max),
UserInfo_SessId varchar(max),
UserInfo_UsageGroupId varchar(max),
SearchProductInfo varchar(max),
TurnAwayFlag varchar(max),
LinkOutTarget varchar(max),
LinkOutType varchar(max),
TranslationTime varchar(max),
TextSize varchar(max),
TextType varchar(max),
SourceLang varchar(max),
DestinationLang varchar(max),
ReasonCode varchar(max),
RetailPrice varchar(max),
EffectivePrice varchar(max),
MyResearchUser varchar(max),
ProjectCode varchar(max),
DocID varchar(max),
ListingType varchar(max),
MasterID varchar(max),
TerminatedSessionID varchar(max),
PublicationId varchar(max),
PublicationTitle varchar(max),
ItemTitle varchar(max),
AccessAgreementStatus varchar(max),
full_log varchar(max)
ReferringUrl varchar(max),
PubEndDate varchar(max),
ItmId varchar(max),
SourceType varchar(max),
PubStartDate varchar(max),
PublicationCode varchar(max),
ItmFrmt varchar(max),
PaymentType varchar(max),
ObjectType varchar(max),
OrigSite varchar(max),
UsageInfo varchar(max),
OpenUrlRefId varchar(max),
TurnAwayFlag varchar(max),
OpenAccess varchar(max),
ParentItemId varchar(max),
SearchId varchar(max),
SearchProductInfo varchar(max),
EventName varchar(max),
HistoryId varchar(max),
AlertId varchar(max),
ReasonCode varchar(max),
Origin varchar(max),
MyResearchUser varchar(max),
ProjectCode varchar(max),
Subrole varchar(max),
NumberOfCopies varchar(max),
Role varchar(max),
RetailPrice varchar(max),
EffectivePrice varchar(max),
Multiplier varchar(max),
PublicationId varchar(max),
PublicationTitle varchar(max),
ItemTitle varchar(max),
OrigId varchar(200)
);
The problem seems to be that a lot of the data is being duplicated, as though the array I called temp_result
is not clearing back to the value of result
at the end of the items["Items"].each
block.
I realize that this is a very large problem but I've gone through great effort to simplify and generalize it as much as possible while maintaining a working code example.