Operations | Monitoring | ITSM | DevOps | Cloud

Our Super Friendly AI Sloth that Analyzes Your Performance Data

Seems like everyone is building a ChatGPT thing right now, doesn’t it? Well we are too! Inspired by so many others, we decided to see what AI could do with our simplified analytics and observability data. Turns out, it can do quite a lot. I’m thrilled to share that we’ve shipped our first AI insights chatbot, Professor Sloth.

What Is Prompt Engineering? Strategies for Creating Effective AI Inputs

The release of ChatGPT in November of 2022 elicited excitement from all corners of the internet. It could write code, diagnose patients, ace exams, write books and more — all in a matter of seconds. Yet, many people were left underwhelmed by the results. Inputting “write a blog post about…” resulted in bland and formulaic articles no one wanted to read. The AI doomers could breathe a sigh of relief as it became apparent AI wasn’t coming for tech jobs any time soon.

Top tips: Implementing ChatGPT at an enterprise level

ChatGPT is quickly being adopted for optimizing pretty much any vertical. You can write reports, come up with content, analyze data, and even get the tool to write code for you. Gartner predicts that by 2025, the AI market would be worth about $134 billion. Thankfully, many businesses are embracing this technology instead of acting hostile. This is a good thing because there is a multitude of ways in which enterprises can leverage ChatGPT.

The Future of Website Development: Exploring the Impact of Artificial Intelligence and Machine Learning

Artificial intelligence (AI) and machine learning (ML) are two cutting-edge technologies that are revolutionizing the field of website development. AI refers to the ability of computers to perform tasks that typically require human intelligence, such as recognizing speech, understanding natural language, and making decisions based on data. On the other hand, ML is a subset of AI that involves training algorithms to learn from data and make predictions or decisions based on that learning.

Accelerating the adoption of AI in banking with MLOps

There is rapid adoption of artificial intelligence (AI) and machine learning (ML) in the finance sector. AI in banking is reshaping client experiences, including communication with financial service providers (for example, chat bots). Banks are exploring ways to use AI/ML to handle the high volume of loan applications and to improve their underwriting process.

10 Keys to Successful AI/ML Adoption & Transformation

We know that for many retailers and CPG companies, AI/ML solutions represent a game-changing technology. Yet, this journey seldom comes without a few expectable “growing pains”—from adoption and scale through a fully-fledged data-driven transformation. For multiple internal stakeholders across an organization, the end-to-end process can seem quite daunting—especially without a well-defined plan.

5 ChatGPT Limitations to Consider Before Going All-In with AI

Many partners I’ve spoken with are experimenting with ChatGPT to automate script generation, write proposals etc—you name it, it’s being tried. But even in a budget-conscious economy, it’s still not worth sacrificing the human element. This is especially true if that move results in script errors, unreliable information, introducing cybersecurity risks, or compromising your company’s intellectual property. You still need a human involved in the coding process today.

ChatGPT uncertain about the future of cloud computing

ChatGPT has been the talk of the town for more than four months now. As the first ever artificial intelligence (AI) -powered chatbot, it has quickly gained immense popularity, helping students, engineers and even executives generate content, write and debug code and run market analyses. But could ChatGPT be used for anything other than natural language processing (NPL)? Could it, for example, assist businesses with strategic decision-making? I decided to try it out.

From Manual to Digital: The Impact of Technology on Business Operation

A little over a decade ago, businesses relied heavily on manual processes to carry out their day-to-day operations. Unfortunately, manual completion of business tasks was often time-consuming and prone to costly errors, leading to lower productivity and decreased profitability. Fast forward to 2023, businesses all around the world are turning to technology to streamline their operations, making them more efficient and productive.

Creating AWS email templates with Handlebars.js and MJML

In the next two posts (maybe more) I'll share how we have developed elmah.io's email templates currently sent out using Amazon Web Services (AWS). This first post will introduce template development using MJML and Handlebars.js. In the next post, I'll explain the process of building them on Azure DevOps and deploying them to AWS.