Informatica, a renowned provider of end-to-end data management solutions, has announced the release of Claire GPT, a generative artificial intelligence tool designed to simplify various aspects of data management.
Within the framework of the company’s annual conference in Las Vegas, this innovative offer was presented that will allow business users to consume, process, manage and analyze data through natural language commands. Claire GPT will integrate with Informatica’s Intelligent Data Management Platform (IDMC) and start rolling out in the second half of 2023.
Simplifying data management through natural language interaction
Effective data management is critical to business success. However, given the immense volume of data that companies must deal with today, manual approaches are no longer relevant or efficient. These traditional methods require a great deal of time, resources, and effort, and not everyone in an organization has the technical knowledge to perform these tasks.
Informatica’s Claire GPT aims to address this gap by providing a text interface to IDMC in which users can enter simple natural language commands to discover, interact with, and manage their data assets.
A wide range of functionalities within the IDMC platform
Although the solution has yet to be widely implemented, the company claims that Claire GPT will support multiple tasks within the IDMC platform. This includes everything from data discovery, creating and editing data pipelines, exploring metadata and relationships, to generating data quality rules.
Amit Walia, CEO of Informatica, explained to VentureBeat that Claire GPT leverages a multiple language model (LLM) architecture. It uses public LLMs for non-sensitive queries (such as intent classification, where LLMs are used to identify user intent, metadata exploration, data exploration, pipeline creation, and so on) and finely tuned Informatica-hosted LLMs that generate data management artifacts. According to Walia, this solution can reduce the time spent by experienced data users, such as engineers, analysts and scientists, on key data management tasks by up to 80%.
The pairing of Claire and GPT
Informatica has designed this new conversational experience for data management by combining its enterprise-scale AI engine, Claire, with the capabilities of GPT. Claire processes more than 54 billion transactions each month, ensuring that the answers provided by the virtual assistant are based on real data and not mere speculation.
Kevin Petrie, vice president of research at the Eckerson Group, noted that while large-scale language models (LLMs) can be useful for designing and generating tasks such as building data pipelines, they also present governance and control challenges. . LLMs are black boxes that can issue errors or generate incorrect information. To consistently reap the benefits of LLMs, it is necessary to place them in a governed environment. Combining the capabilities of GPT with Informatica’s Claire platform enables data teams to improve productivity with artificial intelligence while maintaining governance and control over processes.
It is important to mention that Informatica is not the only company using generative artificial intelligence in this way. Salesforce recently released SlackGPT, a combination of Slack insider knowledge with LLMs. Also, New Relic, a major observability company, has introduced Grok, an artificial intelligence assistant for monitoring software performance and troubleshooting.
A Revolutionary Change in Data Management
Informatica’s introduction of Claire GPT marks a milestone in the field of data management. By allowing users to interact with data through natural language commands, the technical barrier is removed and data management processes are streamlined. Combining the power of Claire with the generative capabilities of GPT opens up new possibilities to improve productivity and efficiency in data management.
However, as these technologies are adopted, it is critical to address the challenges related to the governance and reliability of large-scale language models. It is necessary to find the right balance between automation and control to ensure that the results are accurate and reliable.