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November 05.2025
4 Minutes Read

Explore How the Celonis Agent Miner App Will Transform AI Governance and Workflows

AI Governance with Agent Miner theme showcasing RPA technology.

A Revolutionary Step for AI Integration: Introducing the Celonis Agent Miner App

In a landscape rapidly evolving with artificial intelligence, Bloomfilter is stepping up with exciting innovations that promise to change how enterprises manage both human and AI workforce integration. At the upcoming Celosphere 2025 in Munich, Bloomfilter will showcase the Celonis Agent Miner by Bloomfilter app, a groundbreaking tool designed to enhance governance and optimization of AI agents within business processes.

The Complexity of Coordinating Human and AI Interaction

As businesses rush to deploy AI agents across their operations, research indicates a staggering 95% of AI pilots fail to gain traction—primarily due to integration challenges between these autonomous systems and existing workflows. The Celonis Agent Miner app seeks to alleviate this ‘coordination crisis’ by offering enterprises a way to monitor agent performance closely and ensure alignment with their business objectives.

“We understand the critical nature of governance and security to the AI transition,” states Aaron Fulkerson, CEO of Opaque, a Bloomfilter client.

Companies like Opaque are eagerly anticipating the capabilities of the Celonis Agent Miner, which will allow for the effective governance of AI agents, ensuring compliance and strategic alignment within their operations.

Harnessing Process Intelligence with AI

The app capitalizes on process intelligence to fuse event data between traditional and agentic systems, resulting in a unified understanding of productivity and efficiency. With this newfound insight, businesses have the potential to:

  • Assess the ROI of AI-driven workflows more effectively.
  • Oversee autonomous agents functioning alongside human workers.
  • Utilize process intelligence to enhance agent capabilities.

This multidimensional approach echoes findings from IBM experts who suggest that the true power of AI agents lies not just in their ability to perform tasks but in their capacity for collaborative operation within human-centric environments.

AI Agents: A Future-Paced Revolution

Experts foresee 2025 as a pivotal year for AI agents, hinting at a significant shift towards models that can autonomously manage entire workflows. With Bloomfilter's offerings, organizations can harness the proper framework to navigate this evolving landscape, balancing efficiency alongside necessary safeguarding measures.

However, the conversation surrounding the potential perils of autonomously operating agents is prominent. A global report emphasizes the need for robust governance mechanisms that not only enhance performance but also address the ethical implications of AI-driven operations. Unlike traditional roles that require regular human input, future AI agents may possess the ability to make autonomous decisions.

Professor Yoshua Bengio notes, "We need to prioritize not only capability but also the ethical dimensions that come with powerful AI systems.”

This sentiment is echoed in the current dialogues surrounding AI governance from leaders across sectors, including announcements about the establishment of frameworks for AI’s responsible use at the UN’s AI Governance Dialogue.

Cultivating Trust and Accountability in AI Systems

At the forefront of these discussions is the significant emphasis on transparency and accountability in AI applications. The challenges with integrating AI into existing business infrastructures highlight a critical need for organizations to acknowledge the dual-use potential of AI agents. For AI to be effective in service delivery across various industries—be it healthcare, finance, or customer service—expertise in both AI technology and regulatory frameworks is essential.

The collaborative efforts being spearheaded at forums like the AI Governance Dialogue underscore the unified call for ethical standards, best practices, and engagement from all stakeholders. “AI is not just about algorithms; it encompasses our social fabric and requires corporate responsibility,” concludes Prof. Daniela Rus of MIT.

The Road Ahead: Preparing for a Hybrid Workforce

With the AI landscape continuously evolving, Bloomfilter’s introduction of the Celonis Agent Miner app represents just a glimpse of the future. As organizations refine their AI governance strategies, the balance between human oversight and machine efficiency will be paramount.

As noted during the UN discussions, the focus must remain on building systems that prioritize popular engagement, ethical training, and diverse perspectives to ensure AI works for everyone. The integration of AI within enterprises is more than a technological enhancement; it represents a cultural shift towards collaborative governance and intelligent workflows.

Conclusion: Engaging in the AI Dialogue

As we navigate this momentous transformation, it will become increasingly essential for industries to engage in dialogues that shape the future of AI governance. The Celonis Agent Miner app serves as an innovative solution in this regard, fostering collaborative efforts between human and digital workers. With an emphasis on ethical usage and transparency, the future of AI holds tremendous promise—but realization rests on informed decisions and global cooperation.

To explore more about how to leverage AI responsibly, stay engaged with future discussions and innovations surrounding AI governance frameworks.

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12.09.2025

The Urgent Need for Visibility in Agentic AI Security: Only 21% Have It!

Update Understanding the Rise of Agentic AI in EnterprisesThe Akto 2025 State of Agentic AI Security Report highlights a critical moment in technology adoption: the integration of Agentic AI into mainstream enterprise workflows. This shift signifies not just adoption but a transformative wave reshaping industries like finance, healthcare, and technology. With 31.7% of organizations actively experimenting and 38.6% deploying these AI agents at scale, businesses are racing ahead, but at what cost?The Visibility Gap: A Cause for ConcernOne of the most alarming findings from the report is that only 21% of security leaders have full visibility into the actions of AI agents or their data access behaviors. This alarming statistic underscores the absence of essential oversight mechanisms, allowing potential threats to proliferate unchecked. Security teams are thus faced with a paradox: the faster AI technology is embedded into workflows, the greater the risk of vulnerabilities remaining undetected.Guardrails for the Future: Are We Prepared?The report emphasizes the urgent need for robust guardrails and continuous testing, as a staggering 65% of organizations acknowledge these as critical yet only half have implemented them. Traditional security measures such as manual reviews fall short in environments where AI operates autonomously. This leads security experts to call for a paradigm shift toward proactive strategies that integrate well with the operational pace of AI development.Anticipating the Future: Security Measures Needed by 2026As enterprises gear up for 2026, expectations for Agentic AI security evolve into necessities. Organizations are recognizing the importance of shared security ownership between AppSec and Platform Engineering and standardized permission boundaries across AI access. Continuous agent red teaming, mandatory action-level logging, and thorough risk classification are becoming non-negotiable requirements.The Role of Identity and Access Management in the Age of AIWith the expansion of Agentic AI, identity security must evolve. Companies are faced with the challenge of shadow AI operations—artificial intelligence tools created outside official IT oversight that could harbor risks. As highlighted by industry leaders, the time has come to not just adopt AI, but to do so within a secure framework that integrates identity and access management with a focus on governance.Call to Action: Rethink AI Integration for SecurityThe rapidly changing landscape of Agentic AI calls for more than just awareness; it requires immediate action. As enterprises integrate AI into their operations, they also must commit to proactive security measures that address existing gaps. Ensuring visibility and control over AI agents is not merely advantageous but essential for safeguarding sensitive data and maintaining trust in automated systems.

12.08.2025

As AI in Production Surges, Will Data Quality Keep Pace?

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12.06.2025

Maximizing Value in Hybrid Cloud: The Role of VMware Cloud Foundation

Update Unlocking Value in a Cloud-Driven Future As enterprises navigate the evolving landscape of digital transformation, the need to maximize investments in complex technologies has never been more critical. RapidScale, a trusted partner in managed services, champions organizations on this journey with its newly introduced Accelerated VMware Adoption Program. This initiative aims to guide enterprises through the intricacies of VMware Cloud Foundation (VCF) and optimize their cloud infrastructures by leveraging consumption-based service delivery. What is the VMware Cloud Foundation? VMware Cloud Foundation represents a significant technological evolution—combining compute, storage, and networking under a single platform. By offering a robust architecture, VCF assists companies in adopting hybrid cloud strategies that promise flexibility, scalability, and resilience. As the demand for efficient workload management grows, understanding and implementing VCF becomes essential for enterprises invested in leveraging cloud capabilities effectively. Strategic Partnerships Driving Transformation RapidScale’s collaboration with key industry players, including Broadcom and major cloud providers like AWS, Azure, and Google Cloud, fortifies their commitment to helping organizations transition smoothly. This synergy not only enhances service delivery but also reaffirms RapidScale’s role in shaping the future of multicloud environments. By forming these partnerships, RapidScale provides enterprises with a comprehensive suite of resources that enable them to maximize the utilization of their existing VCF investments. Client-Centric Solutions for Agile Environments RapidScale adopts a client-first approach to ensure businesses can effectively navigate the shift from traditional data center virtualization to advanced hybrid cloud structures. Their offerings include: Immediate Access to VCF Subscriptions: Clients are granted instantaneous access to the latest VCF technology, significantly reducing downtime while accelerating time-to-market. Subscription Portability: The ability to transition existing VCF subscriptions into RapidScale’s hosted environments allows enterprises to conserve their investments while optimizing costs. Streamlined Asset Migration: Ensuring compliance and operational resilience is key; RapidScale facilitates seamless asset migration, minimizing disruptions during transitions. Flexible Subscription Models: By providing various service options, businesses can tailor their VCF usage to align with long-term objectives effectively. Expert Insights for Future Planning Leaders in the industry are continuously examining emerging trends such as artificial intelligence, machine learning, and robotic process automation (RPA), which will significantly influence how enterprises approach their digital infrastructure. As organizations consider these technologies, the necessity for a hybrid cloud strategy necessitates utilizing frameworks like VMware Cloud Foundation. The Future of Enterprise IT: Anticipating Challenges and Opportunities Enterprises today face myriad challenges, from rising data security concerns to the complexity of managing multi-cloud architectures. Understanding how to leverage VCF not only addresses organizational needs but also better prepares businesses for unforeseen shifts in the technological landscape. With innovative solutions from partners like RapidScale, organizations can stay ahead of these developments and foster sustainable growth. The Journey Ahead: Actionable Insights for Businesses As organizations embrace the cloud-first mindset, establishing agile, scalable, and secure environments will be paramount. Here are some strategic insights for enterprises looking to optimize their VCF investments: Prioritize training for staff to handle cloud-based architectures. Adopt a phased approach to implementing new technologies to mitigate risks. Conduct thorough assessments of existing infrastructural needs before transitioning to VCF. Leverage data analytics for continuous improvement in service delivery and operations. Conclusion: Seize Opportunities Along the Cloud Journey In the rapidly changing landscape of hybrid cloud technology, organizations must remain adaptable and informed. By turning to services like RapidScale’s Accelerated VMware Adoption Program, businesses not only secure their digital future but also cultivate the flexibility necessary for ongoing innovation. The journey towards maximizing value in this new era of VCF is one filled with potential—embracing it can unlock limitless possibilities for growth and efficiency.

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