As 2024 comes to a close, I find myself on a well-deserved year-end break, reflecting on the journey of the past twelve months. This post serves as both a summary of my experiences and a benchmark for the goals I aim to achieve in 2025.
I’ve never been one for traditional New Year’s resolutions—they often fade into oblivion before the first quarter ends. Instead, I prefer setting meaningful goals, both personal and professional. Goals provide a sense of direction, ignite curiosity, and keep me motivated to continually learn and contribute.
A Professional Turning Point
Having managed technology projects for some time now, I’ve learned that not every year offers a chance to dive into something entirely new. However, Q4 of 2023 was an exception. It was a period of exploration and growth that reignited my enthusiasm for learning.
The emergence of large language models (LLMs), like ChatGPT, has transformed the tech landscape. With their rising demand in enterprise applications—especially in the realm of search—the opportunity to explore LLM-enabled solutions presented itself. Despite having no prior experience, I embraced the challenge, bringing a fresh perspective to the problem.
Key Observations from the Journey
- Unstructured Data's Untapped Potential Over the past decade, many companies have focused on centralizing structured data via data lakes and platforms. Yet, unstructured data has largely been overlooked due to a lack of credible solutions. LLMs now offer a pathway to navigate this space, unlocking untapped insights.
- The Silo Problem: Knowledge Islands Enterprise search mirrors the challenges of internet search but with a unique twist—information silos within organizations. The larger the organization, the more pronounced these silos become. A robust search engine is key to bridging these knowledge islands.
- Federated Knowledge Enterprises often use diverse tools for information processing and storage, creating fragmented knowledge hubs. Building a unified search platform without duplicating data is challenging but essential for maintaining data integrity.
Surprising Discoveries
- Dynamic Metadata Expansion Unlike structured data, unstructured data lacks predefined metadata. As new content emerges, so does the need for adaptive metadata management—a challenge often underestimated during solution development.
- Extended Ownership As search platforms become the primary access point for various data sources, they inadvertently assume responsibility for user experiences. Issues in source data quality often manifest as search quality concerns, necessitating extensive optimizations.
- The Complexity of Context Language is unpredictable, and acronyms are a prime example of how context can complicate search results. Different departments often use identical acronyms with varying meanings, presenting challenges for semantic understanding.
- Scaling Costs Scaling search capabilities comes at a cost. Retraining models, reindexing data, and recalibrating knowledge graphs significantly increase computational expenses. Optimizing these processes is critical to managing budgets.
- Observability Challenges Observability in LLM-enabled systems is still evolving, with few industry standards to guide implementation. Building custom observability frameworks often leads to technical debt and frequent code refactoring.
Operational Risks to Monitor
- Session Token Management: Ensuring seamless session retention across integrated applications is tricky, especially with varied corporate tools.
- Security Vulnerabilities: LLMs are prone to risks like prompt injection, potentially generating incorrect or harmful content.
- Data Privacy Concerns: Handling sensitive enterprise data responsibly is crucial, especially with public models.
- Integration Complexities: Harmonizing LLMs with existing enterprise systems involves challenges in access control, content prioritization, and answer quality.
Why It’s Worth the Effort
Despite the challenges, the answer is a resounding YES—pursuing this path is worth it. Enterprises are sitting on a goldmine of data. Unlocking insights can lead to new revenue streams, reveal operational inefficiencies, and bolster organizational resilience, productivity, and innovation.
Looking Ahead
There are many more discoveries and behavioural patterns to explore in this journey. While I’ll save those for another conversation, I’d love to hear your thoughts. If any of the above resonates with you or sparks your curiosity, feel free to connect. Together, we can make this journey smoother and more impactful.
#GenAI #search #LLM #AI #ML #ChatGPT #projectmanagement
Founder | Enabling Workplace Success
3 周This is why we built Auxi Labs to solve those silo problem both in terms of data and tooling that an enterprise uses. Use LLMs to answer on your existing wiki without using anything for training and for those detrministic use cases we have no-code workflows that sees the employee through the challenge they are trying to solve. And the best part is we make this available to employees in tools they already use Slack/Teams etc.
Zilliz & Milvus Advocate in Asia | Enabling Production-ready AI with Vector Database
2 个月I share your excitement about navigating the potential and challenges of AI applications. While I missed the “crossing the chasm” moment of the digital adoption of computers, it’s thrilling to witness a similar transformation now with AI. Your point about enterprise search ties closely to one of the biggest challenges in knowledge management: balancing accessibility with relevance. With so much unstructured data, the problem isn’t just breaking down silos—it’s ensuring that users get contextually accurate and prioritized information. LLMs offer exciting potential here, but they also force us to rethink how we deliver insights in a way that truly aligns with user needs.
Director, Enterprise Data Management, Novartis, Ex HDFC BANK, Ex Vodafone, Ex Maersk, Ex Altisource
2 个月While I can not agree more on the way forward Shailendra M., I am equally curious to learn from your approach to tap unstructured data management and shaping dynamic meta data management!! 2025 definitely will be exciting!!!
Co-Founder of Altrosyn and DIrector at CDTECH | Inventor | Manufacturer
2 个月The convergence of LLMs and enterprise search is indeed fascinating, pushing the boundaries of how we access and utilize information. It's intriguing to consider how these technologies will reshape knowledge management within organizations, enabling more intuitive and personalized search experiences. As we move towards a future where AI-powered assistants become commonplace, I wonder if there's a risk of over-reliance on these systems, potentially hindering critical thinking and independent research skills. What are your thoughts on striking a balance between leveraging AI's capabilities and nurturing human intellectual autonomy in this evolving landscape?