As AI and automation redefine enterprise landscapes, corporations are grappling with tips on how to combine these applied sciences successfully whereas balancing innovation, governance, and scalability. Shankar Narayanan SGS, Principal Architect at Microsoft, brings deep experience in AI, cloud platforms, and enterprise automation. On this dialog, Shankar explores the shifts from rule-based automation to Agentic AI, the evolving dynamics between proprietary and open-source AI, and the essential safeguards for accountable AI adoption. He additionally shares his insights on the way forward for AI-native cloud platforms and the position of huge language fashions in enterprise ecosystems.
Uncover associated interviews right here: Suvoraj Biswas, Architect at Ameriprise Monetary Providers — Generative AI Framework, Compliance, AI at Scale, Cloud Convergence, DevSecOps, AI Governance, International Rules, and Future AI Developments
Out of your expertise at Microsoft, what are essentially the most important shifts you’ve seen in how companies combine AI and automation into their workflows?
From my expertise at Microsoft, essentially the most important shift in AI and automation integration has been the transition from rule-based automation to Agentic AI and AI as a Platform (AIaaP). Companies are shifting past activity automation in the direction of AI-driven decision-making and autonomous workflows, the place Agentic AI methods dynamically adapt to real-time knowledge, self-improve, and make complicated choices with out human intervention. This shift is driving the adoption of AI-native cloud platforms like Snowflake Cortex AI and Azure AI, enabling enterprises to construct scalable, domain-specific AI brokers that optimize operations and improve productiveness.
Furthermore, AI as a Platform (AIaaP) is redefining how organizations eat and deploy AI, providing pre-trained fashions, AI APIs, and low-code/no-code AI options that speed up innovation. As a substitute of creating AI from scratch, companies now leverage cloud-based AI ecosystems to combine pure language processing, predictive analytics, and autonomous brokers seamlessly into their workflows. AI-powered copilots and multi-agent AI methods are remodeling industries by enhancing software program growth, buyer engagement, and resolution intelligence.
One other main transformation is the concentrate on accountable AI, guaranteeing that Agentic AI and AI platforms are explainable, unbiased, and compliant with international laws. The mixture of AI as a Service, clever brokers, and automation is pushing enterprises towards a future the place AI isn’t just a device, however an adaptive, decision-making entity embedded throughout each enterprise operate.
Because the co-creator of the Snowflake AI Toolkit, what challenges did you suppose organizations encounter whereas bridging AI capabilities with cloud knowledge platforms, and the way do you see this house evolving?
When creating the Snowflake AI Toolkit, one of many greatest challenges we recognized was the fragmentation between AI capabilities and cloud knowledge platforms. Organizations battle with seamless AI integration, as conventional knowledge warehouses weren’t designed for AI workloads, resulting in inefficiencies in knowledge motion, mannequin deployment, and inferencing at scale. Many enterprises additionally face hurdles in mannequin operationalization, the place AI fashions are in-built separate environments and require complicated workflows to be productized inside cloud ecosystems.
A serious enterprise demand right now is for fast prototyping and fast AI wins—companies wish to validate AI use instances swiftly with out lengthy growth cycles. Nevertheless, many organizations lack the infrastructure and experience to experiment with AI fashions in a versatile, low-risk setting. The necessity for plug-and-play AI options that permit for fast iteration, low-code experimentation, and minimal configuration is essential for enterprises to check AI’s worth earlier than committing to large-scale implementation.
One other essential problem is AI accessibility—whereas AI instruments have gotten extra highly effective, many organizations battle to coach, deploy, and optimize AI fashions inside their cloud knowledge ecosystems. There’s additionally rising concern round price effectivity and governance, as AI workloads demand compute-intensive processing, which may result in unpredictable cloud prices and compliance dangers with out correct monitoring.
Trying forward, this house is evolving quickly with the rise of AI-embedded cloud platforms like Snowflake Cortex AI, which permit for fast mannequin deployment, vector search, and AI-assisted analytics with out knowledge motion. AI is changing into extra composable and modular, enabling enterprises to leverage pre-trained AI fashions, low-code growth environments, and native LLM functions for fast experimentation and productionization. The longer term lies in serverless AI features, automated AI governance, and real-time AI-driven decision-making, making fast AI adoption and enterprise impression extra achievable than ever earlier than.
How do you see the steadiness between proprietary AI platforms and open-source AI options evolving? Is there a future the place they coexist harmoniously, or will one dominate?
As we speak, proprietary AI platforms and open-source AI options are complementing one another reasonably than competing, making a extra built-in AI ecosystem. Cloud suppliers like Microsoft Azure, AWS, and Google Cloud now host open-source AI fashions alongside their proprietary AI companies, permitting enterprises to leverage each seamlessly. Platforms akin to Azure AI Mannequin Catalog, AWS Bedrock, and Google Vertex AI supply pre-trained open-source fashions from Hugging Face, Meta’s Llama, Mistral, and Stability AI, enabling organizations to experiment with open fashions whereas benefiting from enterprise-grade safety, scalability, and managed companies.
Proprietary AI platforms excel in offering absolutely managed, scalable, and safe AI companies, that are essential for enterprises that want dependable, production-ready AI with built-in compliance and governance. In the meantime, open-source AI drives innovation, customization, and fine-tuning capabilities, giving organizations extra management over their fashions and knowledge. Many companies at the moment are adopting a hybrid strategy, the place they fine-tune open-source fashions and deploy them on proprietary cloud platforms, attaining the very best of each worlds—flexibility and enterprise-grade infrastructure.
This coexistence can also be accelerating AI adoption. Proprietary AI companies decrease the barrier for corporations trying to implement AI shortly with out deep experience, whereas open-source AI fosters a collaborative, community-driven ecosystem for analysis and fast developments. Multi-modal AI architectures, the place enterprises mix closed-source AI companies with open-source fashions for particular use instances, have gotten the trade commonplace.
Trying forward, cloud suppliers will proceed integrating open-source AI into their ecosystems, providing model-as-a-service choices, enhanced interoperability, and hybrid AI deployments. AI’s future just isn’t about selecting between proprietary and open-source, however about leveraging their synergy to construct extra highly effective, environment friendly, and accountable AI options.
With the fast development of AI, considerations round moral use and governance are rising. What steps ought to companies take to make sure accountable AI adoption?
With the fast development of AI, guaranteeing moral use and governance is essential to sustaining belief, equity, and safety in AI adoption. Companies should take a multi-layered strategy that integrates AI governance, bias mitigation, transparency, knowledge safety, and regulatory compliance into their AI methods.
One of the vital basic steps is establishing a powerful AI governance framework that aligns with international laws just like the EU AI Act, GDPR, and rising AI compliance requirements. These frameworks ought to outline moral AI rules, guaranteeing AI methods stay honest, accountable, and unbiased in decision-making.
One other important part is powerful knowledge governance. Since AI fashions are solely pretty much as good as the information they’re skilled on, companies should implement knowledge integrity, lineage monitoring, and entry management to stop knowledge drift, misinformation, and biased mannequin coaching. Implementing knowledge safety measures, akin to encryption, differential privateness, and zero-trust architectures, safeguards delicate knowledge in opposition to breaches and unauthorized use, guaranteeing AI stays compliant and privacy-centric.
To mitigate AI bias, organizations ought to use various and consultant coaching datasets and undertake automated fairness-checking instruments like SHAP, LIME, and adversarial debiasing methods. This ensures AI-driven choices don’t disproportionately impression particular person teams.
Moreover, companies should improve AI transparency and accountability by incorporating explainability instruments and audit logs. AI methods ought to present clear, interpretable outputs, guaranteeing stakeholders can hint, validate, and audit AI-driven choices—particularly in high-risk sectors like finance, healthcare, and regulation.
Lastly, fostering a tradition of accountable AI growth by steady coaching, human oversight, and AI ethics schooling is essential. By embedding sturdy AI governance, knowledge safety, and moral frameworks, companies can guarantee AI methods stay protected, honest, and aligned with regulatory and societal expectations, driving reliable and accountable AI adoption at scale.
In your guide, Final Information to Snowpark, you dive deep into Snowflake’s AI capabilities. What misconceptions do you suppose individuals have about AI in knowledge platforms, and what excites you most about its future?
One of many greatest misconceptions about AI in knowledge platforms is that AI is simply an add-on characteristic reasonably than an built-in, scalable functionality. Many assume that AI fashions have to be constructed externally and imported into knowledge platforms, when in actuality, trendy platforms like Snowflake Cortex AI are designed to natively help AI workloads, enabling in-database machine studying, vector search, and real-time inferencing with out knowledge motion. This eliminates silos, enhances efficiency, and accelerates AI adoption for enterprises.
One other false impression is that AI in knowledge platforms requires deep knowledge science experience. Whereas customized AI mannequin growth will be complicated, right now’s AI-embedded cloud platforms supply pre-built fashions, automated ML pipelines, and no-code AI capabilities, making AI extra accessible to analysts, engineers, and enterprise customers. AI isn’t only for analysis labs anymore—it’s changing into a core enterprise operate for resolution intelligence and operational effectivity.
What excites me most concerning the future is the evolution of AI-native knowledge ecosystems. We’re shifting in the direction of agentic AI, the place AI fashions will autonomously optimize knowledge queries, detect anomalies, and generate predictive insights in actual time. Options like retrieval-augmented era (RAG), fine-tunable AI fashions, and serverless AI execution will permit companies to run generative AI immediately on enterprise knowledge, enhancing decision-making with out complicated knowledge engineering.
Moreover, the convergence of AI with knowledge governance and safety is guaranteeing that AI just isn’t solely highly effective but additionally accountable, explainable, and auditable. As AI turns into embedded into each facet of cloud knowledge platforms, the longer term will probably be outlined by AI-powered automation, real-time intelligence, and composable AI architectures, making data-driven decision-making extra highly effective and environment friendly than ever earlier than.
With the fast evolution of huge language fashions (LLMs), what safeguards ought to organizations put in place to handle dangers like misinformation, bias, and privateness breaches whereas sustaining AI’s transformative potential?
With the fast evolution of huge language fashions (LLMs), organizations should implement sturdy safeguards to steadiness AI’s transformative potential with danger mitigation in areas akin to misinformation, bias, and privateness.
First, bias detection and mitigation have to be embedded into AI pipelines. Organizations ought to use various, consultant coaching datasets and constantly audit fashions for bias drift utilizing instruments like SHAP, LIME, and fairness-aware coaching methods. High quality-tuning LLMs on curated, domain-specific knowledge reasonably than relying solely on broad internet-trained fashions can considerably scale back misinformation and improve mannequin accuracy.
Second, knowledge privateness and safety ought to be a prime precedence. Corporations should implement differential privateness methods, encryption, and zero-trust architectures to stop knowledge leaks and unauthorized entry. AI governance frameworks ought to prohibit the publicity of delicate enterprise knowledge to LLMs, guaranteeing compliance with GDPR, CCPA, and rising AI laws. Retrieval-augmented era (RAG) is an efficient method that permits LLMs to question personal, structured information bases reasonably than storing all knowledge internally, minimizing hallucinations and knowledge publicity dangers.
Third, mannequin transparency and explainability are essential for accountability. Organizations ought to undertake interpretable AI fashions, audit logs, and real-time AI monitoring to hint decision-making pathways and detect anomalies. Offering confidence scores, supply attribution, and AI-generated content material disclaimers helps mitigate misinformation dangers and construct belief in AI-driven outputs.
Lastly, human oversight and steady monitoring should stay integral to AI deployment. LLM-generated responses ought to be reviewed in high-stakes use instances, guaranteeing that AI augments decision-making reasonably than changing human judgment solely. Organizations also needs to practice staff on AI literacy, guaranteeing groups perceive AI limitations, moral concerns, and accountable utilization practices.
By integrating bias controls, knowledge privateness safeguards, AI explainability, and human oversight, companies can harness LLMs responsibly, guaranteeing they continue to be highly effective, compliant, and aligned with moral requirements, driving reliable and transformative AI adoption.
Trying forward 5 years, what are essentially the most transformative traits you foresee in AI, knowledge, and cloud computing, and the way ought to companies put together for them?
Over the following 5 years, AI, knowledge, and cloud computing will bear transformative shifts, reshaping how companies function, innovate, and compete. Probably the most important traits will probably be Agentic AI, AI-native cloud platforms, real-time AI-driven automation, and the convergence of AI with governance and safety.
1. Rise of Agentic AI & Autonomous Programs:
AI will transfer past static fashions to autonomous AI brokers that constantly be taught, adapt, and optimize in actual time. Companies will deploy multi-agent AI methods that deal with complicated decision-making, automate workflows, and autonomously execute duties, lowering the necessity for guide intervention in enterprise operations. Organizations should put together by integrating AI-powered automation frameworks into their cloud environments to remain aggressive.
2. AI-Native Cloud Platforms & AI as a Platform (AIaaP):
Cloud suppliers will embed AI immediately into their platforms, making AI an integral a part of enterprise knowledge architectures. As a substitute of constructing customized AI fashions from scratch, companies will eat AI as a service, leveraging pre-trained fashions, generative AI copilots, and AI-driven analytics with no-code/low-code capabilities. Corporations ought to begin investing in AI-powered cloud ecosystems to make sure seamless adoption.
3. Actual-Time AI & Predictive Intelligence:
AI will shift from batch processing to real-time inferencing, the place fashions constantly analyze, predict, and optimize choices on streaming knowledge. This will probably be essential in areas like fraud detection, provide chain optimization, and customized buyer engagement. Companies have to modernize their knowledge pipelines, incorporating event-driven architectures and AI-driven resolution intelligence to unlock real-time worth.
4. AI Governance, Explainability & Safety Integration:
With AI laws tightening, companies should embed governance, bias mitigation, and explainability frameworks into their AI fashions. AI safety will turn into paramount, with organizations adopting privacy-preserving AI, zero-trust safety, and federated studying to make sure compliance and trustworthiness. Enterprises ought to begin creating AI ethics insurance policies and governance controls now to keep away from future regulatory dangers.
5. AI-Pushed Information Contracts & Autonomous Information Administration:
The way forward for knowledge governance will probably be AI-driven, with AI managing knowledge entry, lineage, and compliance autonomously. AI-powered knowledge contracts will permit organizations to implement insurance policies dynamically, lowering human overhead in knowledge governance and safety. Corporations ought to undertake self-service AI-driven knowledge platforms that automate governance and compliance.
To arrange, companies should prioritize AI adoption, put money into cloud-based AI infrastructure, combine automation into workflows, and embed accountable AI practices. The businesses that embrace AI-native architectures, real-time intelligence, and autonomous methods will lead the following wave of digital transformation.