Microsoft 365 Copilot Adds AI Deep Research Tools: Researcher and Analyst

Microsoft has upgraded its 365 Copilot with AI-driven toolsโ€”Researcher and Analystโ€”designed to handle deep research, strategic analysis, and data insights. Powered by OpenAI models, these features allow users to perform complex tasks like market planning, client reporting, and advanced analytics, while integrating data from platforms like Salesforce and Confluence.
Microsoft 365 Copilot Adds AI Deep Research Tools: Researcher and Analyst
Image Credit: Micosoft 365 Copilot

Microsoft has recently upgraded its Microsoft 365 Copilot by incorporating new AI-powered deep research tools, named Researcher and Analyst. This enhancement aligns Microsoft with other major players in the tech industry who have introduced similar advanced AI chatbots, such as OpenAI‘s ChatGPT, Google‘s Gemini, and xAI’s Grok.

Exploring Microsoft 365 Copilot’s New Features: Researcher and Analyst


The latest features in Microsoft 365 Copilot, Researcher and Analyst, integrate sophisticated AI reasoning models. These are specifically engineered to perform in-depth analysis and fact-checking, vital for thorough research on diverse topics. Researcher, powered by OpenAI‘s deep research model, is further boosted with advanced orchestration and deep search capabilities. It is designed to handle complex tasks, like developing market strategies or preparing detailed client reports.

Analyst, on the other hand, operates on OpenAI’s o3-mini reasoning model and focuses on advanced data analytics. It processes problems iteratively, refining methodologies to provide detailed insights. A key component of Analyst is its capability to run Python code, enabling it to manage complex data sets and display its workings transparently, which can be crucial for data verification and process understanding.

What Makes Microsoft’s Deep Research Tools Stand Out?

Microsoft’s new tools distinguish themselves by accessing both extensive internet data and internal business data. For instance, Researcher can connect with third-party data sources like Confluence, ServiceNow, and Salesforce through data connectors. This feature allows the integration of various data from multiple AI agents and applications, providing a comprehensive and interconnected research experience.

Tackling the Challenges of AI in Deep Research

While Microsoft’s AI tools boast advanced capabilities, they are not without challenges, such as ensuring data accuracy and avoiding the generation of incorrect information, commonly known as “hallucinations” in AI parlance. The AI models, including o3-mini, used in these tools can sometimes output errors like mis-citing sources or drawing wrong conclusions from unreliable data.

Microsoft recognizes these issues and is actively working to enhance the reliability of its AI tools. Ensuring the accuracy and credibility of the information provided by Researcher and Analyst is crucial for maintaining user trust and delivering actionable insights.

Early Access via the Frontier Program

Microsoft is introducing the Frontier program to offer Microsoft 365 Copilot users early access to the newly developed tools. This program is designed to allow participants to be among the first to test new and experimental features within Copilot, starting with Researcher and Analyst, which are expected to be available from April.

As AI technology continues to evolve, tools like Researcher and Analyst from Microsoft 365 Copilot are poised to significantly alter how professionals manage data analysis and in-depth research. These tools aim to simplify complex tasks and enhance accuracy. With continuous improvements and a commitment to addressing the inherent challenges of AI, Microsoft is set to lead in the utilization of AI technology for professional and research purposes.

In conclusion, Microsoft’s integration of AI-powered deep research tools into Microsoft 365 Copilot not only enhances the functionality of its platform but also sets a new standard in the use of AI for complex problem-solving and data analysis in the business environment. By continuing to refine these tools, Microsoft supports professionals in achieving more reliable and efficient outcomes.


Recent Content

Explore the transformative potential of Open Radio Access Networks (O-RAN) as it integrates AI, enhances security, and fosters interoperability to reshape mobile network infrastructure. In this article, we explore the advancements and challenges of O-RAN, revealing how it sets the stage for future mobile communications with smarter, more secure, and highly adaptable network solutions. Dive into the strategic implications for the telecommunications industry and learn why O-RAN is critical for the next generation of digital connectivity.
Nvidia’s Open Power AI Consortium is pioneering the integration of AI in energy management, collaborating with industry giants to enhance grid efficiency and sustainability. This initiative not only caters to the rising demands of data centers but also promotes the use of renewable energy, illustrating a significant shift towards environmentally sustainable practices. Discover how this synergy between technology and energy sectors is setting new benchmarks in innovative and sustainable energy solutions.
SK Telecomโ€™s AI assistant, adot, now features Googleโ€™s Gemini 2.0 Flash, unlocking real-time Google search, source verification, and support for 12 large language models. The integration boosts user trust, expands adoption from 3.2M to 8M users, and sets a new standard in AI transparency and multi-model flexibility for digital assistants in the telecom sector.
SoftBank has launched the Large Telecom Model (LTM), a domain-specific, AI-powered foundation model built to automate telecom network operations. From base station optimization to RAN performance enhancement, LTM enables real-time decision-making across large-scale mobile networks. Developed with NVIDIA and trained on SoftBankโ€™s operational data, the model supports rapid configuration, predictive insights, and integration with SoftBankโ€™s AITRAS orchestration platform. LTM marks a major step in SoftBankโ€™s AI-first strategy to build autonomous, scalable, and intelligent telecom infrastructure.
Telecom providers have spent over $300 billion since 2018 on 5G, fiber, and cloud-based infrastructureโ€”but returns are shrinking. The missing link? Network observability. Without real-time visibility, telecoms canโ€™t optimize performance, preempt outages, or respond to security threats effectively. This article explores why observability must become a core priority for both operators and regulators, especially as networks grow more dynamic, virtualized, and AI-driven.
Selective transparency in open-source AI is creating a false sense of openness. Many companies, like Meta, release only partial model details while branding their AI as open-source. This article dives into the risks of such practices, including erosion of trust, ethical lapses, and hindered innovation. Examples like LAION 5B and Metaโ€™s Llama 3 show why true openness โ€” including training data and configuration โ€” is essential for responsible, collaborative AI development.

Download Magazine

With Subscription
Whitepaper
System integrators play a crucial role in the network ecosystem by bringing together various components and technologies from the diverse network ecosystem players to build, deploy, and operate comprehensive end-to-end solutions that meet the specific needs of their clients....
Tech Mahindra Logo

It seems we can't find what you're looking for.

Subscribe To Our Newsletter

Scroll to Top