Operations | Monitoring | ITSM | DevOps | Cloud

Time Series Forecasting With TensorFlow and InfluxDB

This article was originally published in The New Stack and is reposted here with permission. You may be familiar with live examples of machine learning (ML) and deep learning (DL) technologies, like face recognition, optical character recognition OCR, the Python language translator, and natural language search (NLS). But now, DL and ML are working toward predicting things like the stock market, weather and credit fraud with astounding accuracy.

InfluxDB's Strengths and Use Cases Applied in Data Science

This article was written by Shane from Infosys. Infosys is a global IT Leader, headquartered in India, with over 200,000 employees and a focus on digital transformation, AI/ML, and Analytics. Our organization faces challenges when working with data to assist with proactive anomaly detection, triaging incidents to accommodate for data and volume growth, and maintaining high availability and SLA’s for a near 100% uptime.

3 key ingredients for operational excellence

The definition of operational excellence is undergoing profound change. Instead of an enterprise consisting of multiple islands of expertise and efficiency, operational excellence now means breaking down the operational barriers to improve collaboration across departmental lines. This more holistic approach unites the complementary expertise of different teams to create a whole that’s greater than the sum of its parts.

RESOLVE '22: The SOC and the NOC

In our RESOLVE ’22 event The SOC and the NOC, moderator and 3 Tree Tech VP of Cybersecurity Kris Taylor welcomed two esteemed guests to the stage: As Kris noted at the top of the event, we brought our panelists together to talk about “the culture of the network operating center (NOC) and security operations center (SOC).” Along the way, they discussed different philosophical and practical takes on the high-level topics of networking and security.

Are Your Engineers Gonna Need A Bigger Boat?

If you asked your engineering team how well they can handle all of the security and observability data they’re managing, would you get a resounding “Yeah boss, we’re good to go!” in response? Possible, but unlikely. Chances are they feel like they’re stuck on a boat that’s taking on water, spending their day using tiny buckets to scoop some of it out, with no way to plug any of the leaks.

AIOps: Hype vs. Reality

What is AIOps? How does an AIOps platform help your observability practice? AIOps platforms analyze telemetry and events, and identify meaningful patterns that provide insights to support proactive responses. AIOps platforms have five characteristics:1 The above is Gartner’s definition and is part of the Gartner® “Market Guide for AIOps Platforms.” The Gartner definition is also aligned with our view.

Your Cloud Provider Will Fail You Eventually

Cloud has become the de facto way to build infrastructure, meaning cloud providers end up in charge of a significant amount of the apps we use every day. From the likes of Netflix, Slack, Ring and Doordash running on AWS or PayPal, Twitter and HSBC on GCP, it's easy to see how impactful a failure of any type can be. Let's look at some of the issues that have happened recently that have led business to consider how dependent they are on a single provider.

Get To Your Jobs Faster! How Data-Driven Tools Assist In Route Optimisation

In the day-to-day running of a business, many operations might require you or your workers to travel. That includes delivering orders to customers in various locations. Without proper predictive planning, this might cost you significant amounts and reduce your overall revenue. For example, longer routes may lead to increased fuel consumption and time wastage.