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Tag: ITOps

Robotic Automations

BigPanda launches generative AI tool designed specifically for ITOps | TechCrunch


IT operations personnel have a lot going on, and when an incident occurs that brings down a key system, time is always going to be against them. Over the years, companies have looked for an edge in getting up faster with playbooks designed to find answers to common problems, and postmortems to keep them from repeating, but not every problem is easily solved, and there is so much data and so many possible points of failure.

It’s actually a perfect problem for generative AI to solve, and AIOps startup BigPanda announced a new generative AI tool today called Biggy to help solve some of these issues faster. Biggy is designed to look across a wide variety of IT-related data to learn how the company operates and compare it to the problem scenario and other similar scenarios and suggest a solution.

BigPanda has been using AI since the early days of the company and deliberately designed two separate systems: one for the data layer and another for the AI. This in a way prepared them for this shift to generative AI based on large language models. “The AI engine before Gen AI was building a lot of other types of AI, but it was feeding off of the same data engine that will be feeding what we’re doing with Biggy, and what we’re doing with generative and conversational AI,” BigPanda CEO Assaf Resnick told TechCrunch.

Like most generative AI tools, this one makes a prompt box available where users can ask questions and interact with the bot. In this case, the underlying models have been trained on data inside the customer company, as well as on publicly available data on a particular piece of hardware or software, and are tuned to deal with the kinds of problems IT deals with on a regular basis.

“The out-of-the box LLMs have been trained on a huge amount of data, and they’re really good actually as generalists in all of the operational fields we look at — infrastructure, network, application development, everything there. And they actually know all the hardware very well,” Jason Walker, chief innovation officer at BigPanda, said. “So if you ask it about a certain HP blade server with this error code, it’s pretty good at putting that together, and we use that for a lot of the event traffic.” Of course, it has to be more than that or a human engineer could simply look this up in Google Search.

It combines this knowledge with what it is able to cull internally across a range of data types. “BigPanda ingests the customer’s operational and contextual data from observability, change, CDMB (the file that stores configuration information) and topology along with historical data and human, institutional context — and normalizes the data into key-value pairs, or tags,” Walker said. That’s a lot of technical jargon, but basically it means it looks at system-level information, organizational data and human interactions to deliver a response to help engineers solve the problem.

When a user enters a prompt, it looks across all the data to generate an answer that will hopefully point the engineers in the right direction to fix the problem. They acknowledge that it’s not always perfect because no generative AI is, but they let the user know when there is a lower degree of certainty that the answer is correct.

“For areas where we think we don’t have as much certainty, then we tell them that this is our best information, but a human should take a look at this,” Resnick said. For other areas where there is more certainty, they may introduce automation, working with a tool like Red Hat Ansible to solve the issue without human interaction, he said.

The data ingestion part isn’t always going to be trivial for customers, and this is a first step toward providing an AI assistant that can help IT get at the root of problems and solve them faster. No AI is foolproof, but having an interactive AI tool should be an improvement over current, more time-consuming manual approaches to IT systems troubleshooting.


Software Development in Sri Lanka

Robotic Automations

NeuBird is building a generative AI solution for complex cloud-native environments | TechCrunch


NeuBird founders Goutham Rao and Vinod Jayaraman came from Portworx, a cloud-native storage solution they eventually sold to PureStorage in 2019 for $370 million. It was their third successful exit. 

When they went looking for their next startup challenge last year, they saw an opportunity to combine their cloud-native knowledge, especially around IT operations, with the burgeoning area of generative AI. 

Today NeuBird announced a $22 million investment from Mayfield to get the idea to market. It’s a hefty amount for an early-stage startup, but the firm is likely banking on the founders’ experience to build another successful company.

Rao, the CEO, says that while the cloud-native community has done a good job at solving a lot of difficult problems, it has created increasing levels of complexity along the way. 

“We’ve done an incredible job as a community over the past 10-plus years building cloud-native architectures with service-oriented designs. This added a lot of layers, which is good. That’s a proper way to design software, but this also came at a cost of increased telemetry. There’s just too many layers in the stack,” Rao told TechCrunch.

They concluded that this level of data was making it impossible for human engineers to find, diagnose and solve problems at scale inside large organizations. At the same time, large language models were beginning to mature, so the founders decided to put them to work on the problem.

“We’re leveraging large language models in a very unique way to be able to analyze thousands and thousands of metrics, alerts, logs, traces and application configuration information in a matter of seconds and be able to diagnose what the health of the environment is, detect if there’s a problem and come up with a solution,” he said.

The company is essentially building a trusted digital assistant to the engineering team. “So it’s a digital co-worker that works alongside SREs and ITOps engineers, and monitors all of the alerts and logs looking for issues,” he said. The goal is to reduce the amount of time it takes to respond to and solve an incident from hours to minutes, and they believe that by putting generative AI to work on the problem, they can help companies achieve that goal. 

The founders understand the limitations of large language models, and are looking to reduce hallucinated or incorrect responses by using a limited set of data to train the models, and by setting up other systems that help deliver more accurate responses.

“Because we’re using this in a very controlled manner for a very specific use case for environments we know, we can cross check the results that are coming out of the AI, again through a vector database and see if it’s even making sense and if we’re not comfortable with it, we won’t recommend it to the user.”

Customers can connect directly to their various cloud systems by entering their credentials, and without moving data, NeuBird can use the access to cross-check against other available information to come up with a solution, reducing the overall difficulty associated with getting the company-specific data for the model to work with. 

NeuBird uses various models, including Llama 2 for analyzing logs and metrics. They are using Mistral for other types of analysis. The company actually turns every natural language interaction into a SQL query, essentially turning unstructured data into structured data. They believe this will result in greater accuracy. 

The early-stage startup is working with design and alpha partners right now refining the idea as they work to bring the product to market later this year. Rao says they took a big chunk of money out of the gate because they wanted the room to work on the problem without having to worry about looking for more money too soon.


Software Development in Sri Lanka

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