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Anodot

A 5-Step Recipe for Spot-On Alerts - That May Just Save Your Marriage

While checking in recently with one of Anodot’s newest clients, I got the sort of feedback that every product owner loves hearing. I asked, “During this past month, have you been able to check alerts triggered for your region? Do you use them? Do you have any feedback?” They replied, “The alerts are spot on. Thanks all.” The company then went on to adopt Anodot across more teams. So why are we so obsessed with alerts being spot-on?

Is Your CI/CD Process Past Its Prime?

At the advent of the technological era, developers found themselves wasting hours of valuable resources on manual QA. As software was released, teams manually confirmed that it was bug-free and reliable, all the while testing new features and checking for regression of existing features. Unfortunately, this manual approach was prone to mistakes, created long delays in workflows and was tedious and time-consuming.

Demystifying Augmented Analytics

Augmented analytics is trending. You’ve read about it, you’ve heard about it, you may even be in the process of acquiring systems running it. But what exactly is it, and how can you recognize it? As the guys building augmented analytics, we’re here to dispel some of the hype. On the highest level, augmented analytics is the machine learning processes geared at making data more accessible and actionable for both data scientists and business users.

Internet Leader Natural Intelligence Now Resolving Glitches in Minutes Rather than Days

Natural Intelligence runs comparison websites that generate millions in ad traffic. A glitch could easily cost the company thousands in ad revenue. CTO Lior Schachter and other members of the NI team share the difference Anodot Autonomous Analytics has made across the company.

Building Consistent Revenue Monitoring with AI

The digital era has brought vast cultural transformations – the sharing economy, microtransactions, lightning-fast communication and much more. Much of this has also resulted in considerable innovation in revenue-related areas. Companies from various industries today manage a large number of revenue streams from different revenue models.

Extending the Competitive Advantage in Telecom

The telecom industry has always seemed to navigate well through tech changes. As the industry has evolved, it’s managed to transform from landline to mobile carriers, then from voice calls to messaging and data-centric networks. In many developed markets telcos are creating ecosystems for the data-driven economy. The next frontier is shaping up to be one driven by machine learning (ML) and artificial intelligence (AI).

Integrating Time Series Correlation to Accelerate Root Cause Analysis

In any platform of sufficient complexity, multiple anomalies are likely to occur. For many organizations, NOC operators triage multiple anomalies based on their severity. There are internal, non-customer-facing issues that might affect only a small part of your workforce and one-time issues that affect only a small number of customers. Both of the issues get ticketed and sent to low-level support.

Real-Time Analytics for Time Series

Let’s start with simple definitions. Time series data is largely what it sounds like – a stream of numerical data representing events that happen in sequence. One can analyze this data for any number of use cases, but here we will be focusing on two: forecasting and anomaly detection. First, you can use time series data to extrapolate the future.