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Uprise’s “Monitoring on Steroids” with Anodot
Uprise, an ad-tech company, uses a 'continuous delivery' approach for its software development, pushing around 20 new software releases into production each day. Each new release can affect the platform’s performance, making it crucial to monitor results in a timely fashion to determine if the new release should be kept in production or rolled back. The ad tech environment itself has many moving parts, each of which is a potential point of failure. These can include server issues, changes at the ad affiliates, introduction of ad blocking software, or even fraud. Whenever a problem occurs, isolating the source can require complex, time-consuming analysis. Identifying issues in the first place is also tricky, since network traffic behaves seasonally. With the traffic naturally reaching various peaks and valleys throughout the day, noticing a 20% loss or gain at any given point is next to impossible.
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Anodot Finds “All the Anomalies Fit to Print” for Media Giant PMC
Penske Media Corporation (PMC) was facing significant delays in discovering important incidents in their active, online business. The company was using Google Analytics’ alerting function to track business incidents but found it inadequate due to the millions of users across dozens of household-name and professional publications. The initial use case for PMC was to start using Anodot to track its Google Analytics activity, for example, to identify anomalous behavior in impressions or click-through rates for advertising units.
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Affiliate Marketing Company Uses Anodot to Proactively Manage 1000S of Fast-Moving Accounts
The company, an affiliate network with over 200,000 members, was struggling to monitor business and technical incidents that were impacting their bottom line. The dynamic nature of their marketplace and the extensive metrics they had to track made it difficult to monitor changes in real-time. Factors such as changes in search engine algorithms and third-party trends, as well as changes in affiliate accounts, could significantly impact their business. The tools they were using required them to set thresholds manually, which allowed time for incidents to escalate.
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Etoro Gets to the Root Cause Faster with Anodot
As a real-time trading company, eToro must provide users with reliable market rates as quickly as possible, necessitating close monitoring of the quality of the connection from both the client and server side. eToro had been using open-source tools to monitor the metrics from their Price Streams service that sends price quotes to their users. However, the company quickly realized that it needed to expand the number of metrics being monitored and faced resource challenges adapting their traditional monitoring tools to meet the new demands. With stringent regulations in Cyprus and the UK, eToro treats any trading error or problem as critical.
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Magnite Automates Real Time Business Monitoring with Anodot
Magnite, the world’s largest independent sell-side advertising platform, processes trillions of transactions each month in real-time auctions that each occur within 40 milliseconds. The company's internal teams and existing tools could not scale to handle the growing volume and velocity of data. They needed real-time insight into incidents that were being detected too late, such as anomalies in normal transaction volume from a large buyer. Their manual alerting system with static thresholds also created costly alert noise and false positives. Magnite works with many demand-side platforms (DSPs) across its global data centers in different time zones. Along the bid stream, there are many potential areas for communication or technical breakdown, which would prevent the bid from going into the auction, and negatively affect overall bid health.
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Get More Value From the Data You Collect in Snowflake
Companies are generating more data than ever before, and traditional dashboards are unable to keep up with the volume and complexity of the vital business data collected. This is particularly true for companies using a Snowflake warehouse. The businesses served by Anodot have millions of customers across the globe and must manage millions of daily business metrics involving product usage, application performance, APIs, log-ins, and payment gateways, among others. Traditional manual business monitoring solutions cause significant delays of at least 24 hours or longer in detecting and resolving critical incidents, which threaten to impact customer satisfaction, brand equity, and the company’s bottom line. Transactional and customer experience data is too volatile for static monitoring. Since business data is complex and dynamic, AI/ML-based autonomous solutions are critical for achieving business outcomes and avoiding blind spots. Static monitoring approaches based on dashboards, and manual thresholds aren’t sensitive, robust, or agile enough to withstand this challenge. AI-based early detection of revenue issues and business system failures is nonnegotiable.
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