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Overview Trackings Overview Trackings Category Tracking Name Description Essential cbAcAuth This cookie is necessary to authenticate an affiliate. Cookies Essential cbAcAuth1 This cookie is necessary to authenticate an affiliate. Cookies Essential This cookie is used to save information about your session so cbsession Cookies that we can correctly process your purchase. Essential This cookie is necessary to authenticate your session on our cbsession1 Cookies platform. Essential This cookie is necessary to process your actions on our cbsession2 Cookies platform. This cookie is used to save important information about your Essential p0 purchase so we can correctly display your purchase Cookies information. Essential This cookie is necessary to correctly process payment provider pr_{transactionId} Cookies information. AB Testing and Machine Learning. Conductrics uses machine Performance learning to optimize website or application behavior to meet Conductrics Cookies defined objectives. Machine learning can be cross-referenced with "targeting" data like geo-location or user segment. Performance enableFlash This cookie is necessary to enable Flash on our website. Cookies Performance Google Optimize Google Optimize is a custom A/B Testing from Google. Cookies A/B Testing from google. Tests different variations of a website Performance Google Optimizer and then tailors it to deliver a personalized experience for each Cookies Asynchronous customer and their business. Performance InsertTask This cookie is necessary to correctly process task information. Cookies Performance License Key Push for Custom script sharing your license key with Acronis. This is Cookies vmProtect required for proper use of their product. Performance This cookie is used to identify that a checkout preview is active preview-{sessionId} Cookies and used to load the checkout preview data. Performance This cookie is necessary to display the correct shopping rpurl_{ClientId} Cookies experience to you. Performance This cookie is used to save session referral information so that session0_{clientId} Cookies we can correctly process your purchase. Performance This cookie is used to save session referral information so that session0_p{productId} Cookies we can correctly process your purchase. This is a custom cookie script which will read cookie values Performance Supplier Cart Cookie from the Supplier and pass them back via the URL in the Cookies confirmation page. This is used as a conversion tool. This tool drops a cookie which contains the product ID you Performance Supplier cookie purchased. This is used by the Supplier to optimize your shop Cookies experience. 1 Overview Trackings Category Tracking Name Description Performance Supplier Cookie to x- Adds a cookie name to the x-parameters on the confirmation Cookies parameter page. Cookie which saves the product to show customers who did Performance Supplier Product Cookie not finish the purchase the cart again over a layer at the Cookies Supplier website. AB Tasty is an application providing A/B tests. Cookies allow Analytical AB Tasty to send all test data (visitorID, test and variant IDs, AB Tasty Cookies timestamps) and identify a unique session. They allow to determine that a new session has begun for a given user. Mboxs are used for recording data to be used in the business logic that helps select and generate the content to inside of them, as one is able to pass various custom parameters to the "mboxCreate" function that are passed on to the Omniture servers. Some of this extra data is used for reporting-on things Analytical Omniture - mBox - Test such as revenue, categories and products visited, etc.- which Cookies and Target is in turn again used to refine the output to the mbox. An example is recording every category from which a visitor views or buy products and using this information to formu-late category affinity information which is used in target-ing content based on which category a visitor is most interested in. Provides insights into the customer experience and opportunity by simplifying data science exploration through machine Analytical intelligence and Big Data. Quantum Metric performs a full Quantum Metric Cookies session, replay capture. This includes page hits, mouse movements, scrolling, typing, dozens of out-of-the-box errors and events, API calls, etc. Analytical Conversion pixel which notifies the Supplier that a successful Read Server Cookies purchase was made. revstarsmedia.com - Analytical This is a conversion pixel which notifies the vendor of your Revenue Driven Network Cookies purchase and passes along product and revenue information. www.rstrx.com Analytical This is a conversion pixel which notifies the vendor of your SchoolCraft Conversion Cookies purchase. No information is passed. Analytical Conversion pixel which notifies the Supplier that a successful SecuredShopgate Cookies purchase was made. Analytical Conversion pixel which notifies the Supplier that a successful Shinysoft Conversion Cookies purchase was made. Analytical Softonic - Conversion Conversion pixel which notifies the Supplier that a successful Cookies tracking purchase was made. Analytical Conversion pixel which notifies the Supplier that a successful SuperClix Cookies purchase was made. Panda Affiliate Conversion Pixel - notifies them of a conversion Analytical Supplier Affiliate and which affiliate counts as referral. No personal identifiable Cookies Conversion Pixel information is passed. 2 Overview Trackings Category Tracking Name Description Analytical A conversion pixel notifying the vendor of your purchase and Supplier API Cookies sharing product details. Analytical A conversion pixel notifying the vendor of your referrer, your Supplier Billing Cookies purchase, your license key and product details. Analytical A conversion pixel notifying the Supplier of page views and Supplier PGM Cookies conversions. Analytical A conversion script notifying the Supplier of the product you Supplier Retargeting Cookies purchased and which pages you visited. Analytical Conversion pixel which notifies the Supplier that a successful Supplier Sales Tracker Cookies purchase was made. Analytical This tool notifies the Supplier of your purchase, email and Supplier Upgrade Cookies license key which is required to upgrade your tool. Analytical A conversion pixel notifying the Supplier of your purchase and Teradata (eCircle) Cookies sharing product details. Analytical TrackingSoft A tracking solution for affiliate program and advertising Cookies ROIAdvantage campain management (tracking of traffic and conversions). ValueClick Return on Analytical A conversion pixel notifying the vendor of your purchase and Investment Pixel Cookies sharing product details. (FastClick) Analytical Yahoo conversion code notifying of a page view and Yahoo! - Conversion Cookies conversion. No personally identifiable information is available. Loads a static pixel that collects the info from our cookie and Analytical ZeoBit API matches it with the ref. number. Custom solution that sends a Cookies conversion ping to Kromtech. Analytical Conversion pixel which notifies the Supplier that a successful ZeoBit Billing Cookies purchase was made. Targeting A8 conversion cookie that works with Apple Intelligent A8FLY Cookies Tracking Prevention. Targeting Conversion pixel which notifies the Supplier that a successful Active Response Cookies purchase was made. The Adcell 3rd Party Tracking makes is possible to work with Targeting Adcell own tracking pixels and thus to use all necessary data in real Cookies time in one's own system. Adconion Media Group is an independent global audience and content network, dedicated to true partnerships with agencies Targeting and marketers. Adconion provides agencies with customized Adconion Conversion Cookies technology and products designed in-house whilst delivering global reach across multiple platforms through a single network. 3 Overview Trackings Category Tracking Name Description Adform is a media agnostic tech vendor for media agencies, trading desks, advertisers and publishers that offers the world’s only programmatic brand-led media platform Targeting AdForm supporting all aspects of multi-screen brand advertising. The Cookies Adform tech stack includes a demand side platform, third party ad server, data management platform, private marketplace, programmatic publisher ad server and a robust creative suite. Adform's Data Management Platform (DMP) enables publishers and data providers to monetize their audience data. Targeting AdForm Basket and The DMP is fully integrated with the Adform system, providing Cookies Conversion seamless platform for both buyers and sellers of digital display inventory. Adknowledge is an advertiser marketplace specializing in performance-based marketing solutions that help make the long tail web accessible to search engine advertisers. Utilizing Targeting Adknowledge (Conversion) predictive technology and completely anonymous consumer Cookies response patterns, they connect advertisers with consumers across multiple channels, including email, search, mobile, domains, and social networks. Collects information about visitors behavior. It is most Targeting adMarketplace commonly used to track a desired action such as an order, or Cookies lead submission. ADNOLOGIES GmbH is an independent supplier of software Targeting Adnologie (HEIAS) solutions for contemporary digital marketing to agencies, sales Cookies houses, networks and the operators of portals. DataXu is an open, neutral platform that enables marketers
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