for analytics.
Generative AI is no longer a side experiment or productivity hack. With increased access to generative AI tools like ChatGPT, Copilot, and AI-native features embedded across the analytics tools and platforms in our day-to-day lives, the work we do with data is structurally changing.
AI in the work of data professionals is used not only to increase efficiency and solve problems faster; data professionals are collaborating with these systems that can reason, explore, and act autonomously.
And this is the shift where agentic analytics enters the picture.
An AI agent is now the first analyst and the data professional these days defers to a prompt and expects the AI agent to:
- Proactively explore data and detect patterns, risks, or anomalies
- Run follow-up analyses on its own
- Recommend or make decisions with minimal human intervention
The real shift, however, isn’t just technical — it’s a mindset change.
Data professionals are no longer valued solely for writing queries or building models, but for knowing where and how best to use the intelligence and how to close the gap between insight and action.
What makes these times especially interesting is that many non-technical professionals have always had strong analytical instincts but they were not the most well-versed with querying data, writing code, and operationalizing analysis. With the abilities agentic systems offer, those barriers are beginning to be removed.
Data Roles Are Expanding
A data scientist or data analyst role is becoming full-stack. With AI becoming more capable, we are already seeing data roles stretch beyond traditional modeling and dashboards into areas like:
- Building ML and AI systems end-to-end
- Designing and maintaining RAG systems for unstructured data
- Training, fine-tuning, and working with foundation models
- Implementing guardrails, monitoring, and AI evaluations
The scope of data work continues to widen and data professionals are expected to act as…
- System designers and architects
- Translators between business and data
- Storytellers who drive decisions, not just insights (I cannot emphasize enough how much this is valuable and the key factor that keeps you relevant)
With AI taking up space, much of the technical execution will be automated in the near future. But, what remains firmly human is judgment, context, and accountability.
In my opinion, the human aspect of it all is exactly how we, as data professionals, can continue to matter. If we sit at the confluence of business, engineering, and decision-making, I think, that acumen is tough to replace.
So, What Can You and I Do to Stay Relevant
1. Work on Data Projects Outside of your Day Job
In the past few years of me working progressively on my role as an analytics professional, I have found my company’s tech stack to be limiting me as compared to the pace of the industry around.
To stay intellectually sharp and updated, I need to go outside my work, do some learning, work on external projects and build an intuition for where the field is going. That, when I bring back to my team, awards myself and my peers with relevance with the industry.
What can you do?
- Take on independent research or exploratory projects
- Contribute to open datasets or publish technical write-ups (like white papers or even research papers if you are working on an independent research)
- Experiment with new tools, models, or workflows and see if and how they can be a part of your day-to-day work, before they reach enterprise adoption.
2. Share your Learnings and Experiences Publicly
As a technology blogger, documenting enforces clarity of thought in me. From writing and sharing my thoughts and learnings with a community of like-minded people, I am able to receive feedback, apply new knowledge to practice, and build credibility beyond a job title.
By the time I sit down to write something, I would’ve read a lot and brought myself up to speed on where the industry is, which awards me with the relevance of skills, tools, concepts around the industry.
What can you do?
- Write blogs and /or newsletters to share with a community of readers
- Share short-form insights on social media: could be LinkedIn, Substack or even Instagram
- Talk openly about what works and what doesn’t for you, on a platform you feel most comfortable with
3. Participating in Tech Communities and Conferences
Each new year, as I set my personal and professional goals for the year, I put down one thing for sure — to attend community events like meetups, conferences or talks. I feel knowing how others are solving similar problems positions me as someone thinking ahead, not just executing tasks at my workplace. The tech communities and conferences often share a lot more on the key advancements, new concepts, nuanced problems and solutions to stay relevant with where the industry is headed.
What can you do?
- Apply to attend or (even better) speak at meetups and industry events
- Attend conferences that align with your next role more than your current role
- Participate in panels and roundtables where you have the opportunity to share your thoughts with other perspectives on the same topic
4. Expanding your Skillset Through Structured Learning
While reading articles or listening to podcasts is helpful, structured learning channels like online certifications, bootcamps, and workshops are able to provide a clear framework for in-depth learning and upskilling. The motivation in staying relevant should be to build depth where intuition alone isn’t enough, especially around AI systems, governance, and emerging best practices.
What can you do?
- Take targeted online courses, workshops, and certifications that teach you new skills, tools and concepts – your employer might have collaborations with learning platforms, use that!
- Enroll in micro-master’s or executive programs focused on AI strategy, systems, or leadership to commit dedicated time to the learning
- Engage in mentored learning
5. Stay Connected to the Bigger Picture
With changing expectations from the roles of data professionals, maintaining relevance in a rapidly changing environment evolves as well. Looking at the big picture of things I am working on enables strategic decision-making, prevents excessive focus on minor details, and fosters adaptability, which is crucial for professional longevity.
Beyond skills, relevance also comes from perspective.
What can you do?
- Reading blogs and long-form essays on data and AI
- Listening to podcasts from practitioners and researchers
- Studying shifts in the data and AI job market
- Having coffee chats with people across roles and industries
- Attending meetups, conferences, and community events
If You Want to Get Ahead in 2026, Bring This With You
Double Down on Human-Centric Skills: As execution becomes automated, differentiation will come from human judgment, communication, and translating insights into real decisions
Focus on End-to-End Thinking: The highest leverage comes from understanding how data models, infrastructure, and decision-making piece together in the puzzle.
Start Future-Proofing Now: The gap between those who adapt to the changing dynamics of this tech world early and those who wait will widen faster than one would expect. Relevance is not about chasing every new tool —it’s about continuously redefining where your value sits in an evolving system.
Closing Thoughts
Staying relevant in today’s world of AI isn’t about competing with AI but learning how to work with it, while strengthening your unique human skills that technology cannot replace! The future belongs to data professionals who can think hand-in-hand with AI systems, communicate findings with clarity, and anchor advanced analytics in real-world context.
That is the kind of data professional I intend to become in 2026.
That’s it from my end on this blog post. Thank you for reading! I hope you found it an interesting read. Let me know in the comments about your experience with storytelling, your journey in data, and what you are looking for in the new year!
Rashi is a data wiz from Chicago who loves to analyze data and create data stories to communicate insights. She’s a full-time senior healthcare analytics consultant and likes to write blogs about data on weekends with a cup of coffee.
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