26th to 27th March 2026 | Nimhans Convention Center, Bangalore

The Agenda of MLDS 2026

MLDS is dedicated to Agentic AI—spotlighting breakthroughs in autonomous agents, Generative AI, and intelligent systems. The summit brings together developers, researchers, and innovators to share insights, showcase real-world applications, and explore how Agentic AI is transforming the future of software development.

The majority of Conference sessions are curated by the AIM community.

We are in the process of finalizing the sessions for 2026. Expect more than 70 talks at the summit. Please check back this page again.

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  • Day 1


  • The tacit premise of modern ML: decision-time computation is where value gets created. Train a model, learn a policy, deploy. The policy is the intelligence. In this talk I will demonstrate that structural graph design, specifically via randomised edge perturbation achieves Pareto-dominant performance over learned and optimisation-based methods in urban food delivery. Our core claim is that-if the environment in which agents operate is designed with sufficient structural care, the agents themselves can be remarkably simple; and the system as a whole will still outperform agents that are far more computationally sophisticated.
    HALL 1 (Main) - Keynotes / Tech Talks

  • Learn how to take agentic applications from lab experiments to production-grade deployments using AWS Copilot. This workshop shows how to automate infrastructure provisioning, CI/CD pipelines, and integrate standards like the Model Context Protocol (MCP) to extend agents beyond chat into real-world tasks. By the end, you’ll know how to create resilient, scalable, and context-aware AI agents that can truly operate in enterprise environments, while freeing developers to focus on logic instead of infrastructure firefighting.
    HALL 2 - Exclusive Workshops

  • ADM – Founder’s Voice Redefining the Future of Data with Agentic Intelligence In this special Founder’s Voice session, Raghu Mitra shares the vision, philosophy, and engineering journey behind Acceldata’s evolution from data observability to Agentic Data Management (ADM). As enterprises scale AI, analytics, and data-driven decision-making, traditional monitoring and reactive governance are no longer sufficient. The future demands systems that do not just observe data—but understand, reason, and act. ADM represents this next frontier. Built on the foundation of ADOC, ADM introduces autonomous, AI-powered agents that continuously monitor data ecosystems, diagnose issues with contextual intelligence, and execute corrective actions with minimal human intervention. In this session, Raghu explores the architectural thinking, real-world challenges, and breakthrough innovations that shaped ADM into a self-driving data management platform. Attendees will gain insight into: The shift from reactive observability to autonomous data operations How agentic systems transform reliability, quality, and governance The engineering principles behind scalable AI-native data management The long-term vision for intelligent, self-healing data ecosystems This session is not just a product overview—it is a forward-looking perspective on how agentic intelligence will redefine enterprise data strategy in the AI era.
    HALL 3 - Tech Talks

  • Agentic systems are non-deterministic—making them harder to debug with traditional logs. This workshop takes you deep into telemetry: instrumentation, observability pipelines, and analysis techniques that capture reasoning loops, tool failures, and system context. You’ll walk away with hands-on methods to turn raw signals into actionable insights, ensuring your autonomous agents remain reliable and explainable in production, even when facing unpredictable environments.
    HALL 2 - Exclusive Workshops

  • The hospitality industry thrives on trust, experience, and word-of-mouth advocacy. This session explores how an AI-based referral engine can transform customer referrals from a reactive process into a scalable, intelligence-driven growth lever. The leader will share how AI can be used to identify customers with a high propensity to refer, enabling businesses to focus efforts where advocacy is most likely to convert. The session will also cover smart allocation of relationship managers using predictive insights, ensuring high-value interactions are prioritized and resources are optimally deployed. Additionally, the talk will highlight how AI-driven profile enrichment—combining behavioral, transactional, and engagement data—can power deeply personalized communication at scale. Attendees will gain practical insights into building referral ecosystems that are proactive, personalized, and measurable, driving sustainable growth and stronger customer relationships in the hospitality sector.
    HALL 1 (Main) - Keynotes / Tech Talks

  • When building Agentic AI systems, decision architecture is not a technical afterthought—it is the foundation of scale, trust, and long-term adoption in real-world environments.
    HALL 3 - Tech Talks

  • Most enterprise AI systems stop at generating predictions such as churn probabilities, fraud scores, recommendations, or forecasts, but business value is realized only when those predictions translate into reliable, automated decisions. This session focuses on the critical decision layer that sits between model outputs and real-world enterprise workflows. Designed for developers and ML practitioners, it explores how to build production-ready systems that combine model predictions with rules, thresholds, optimization logic, and human-in-the-loop controls to drive actionable outcomes. The talk will also cover handling uncertainty, edge cases, governance, and monitoring decision quality—not just model accuracy—ensuring AI systems are robust, scalable, and aligned with measurable business impact.
    HALL 3 - Tech Talks

  • Engineering for Human-Like, Multilingual Voicebots for Bharat explores how voice-first AI systems can be designed to serve India’s linguistically diverse and mobile-first population. Drawing from his experience building large-scale, real-world platforms, Kiran Kumar Katreddi will discuss the engineering foundations behind creating voicebots that feel natural, conversational, and inclusive across multiple Indian languages and dialects. The session will cover how technologies such as speech recognition, natural language understanding, and text-to-speech come together to handle code-mixed speech, regional accents, and low-resource languages, while operating at scale with low latency. Kiran will also highlight the unique challenges and design considerations specific to Bharat, and how human-like multilingual voicebots can significantly expand digital access, improve customer experiences, and enable intuitive interactions for users beyond English-first, text-based interfaces.
    HALL 3 - Tech Talks

  • Building machine learning models is only a small part of the challenge in heavy-industry environments. The real complexity lies in deploying, scaling, and operating ML systems that must work reliably on the shop floor—often under strict safety, latency, and reliability constraints. This session walks through the end-to-end journey of building production-grade ML systems for heavy industry, covering data acquisition from industrial systems, model development, validation, and deployment into real-world decision workflows. It will highlight how ML models are integrated with existing operational technology (OT) systems, how predictions translate into actionable shop-floor decisions, and how teams handle issues like data drift, model monitoring, explainability, and human-in-the-loop controls. Attendees will gain practical insights into ML system design, MLOps, and decision engineering in industrial settings, along with lessons learned from taking models out of notebooks and into mission-critical production environments.
    HALL 1 (Main) - Keynotes / Tech Talks

  • As organizations move from standalone LLM applications to complex, agentic AI workflows, LLMOps becomes the critical backbone enabling scale, reliability, and trust. This session explores how to design robust LLMOps frameworks to build, monitor, and govern multi-agent systems in production. It will cover practical approaches to orchestration, observability, evaluation, cost control, and risk management, along with governance strategies to ensure compliance, safety, and responsible AI at scale. Attendees will leave with actionable insights to operationalize agentic AI systems that are resilient, transparent, and enterprise-ready.
    HALL 3 - Tech Talks

  • Day 2


  • This workshop explores memory architectures that give agents continuity and true persistence. You’ll learn about episodic vs. semantic memory, vector database integration, memory consolidation strategies, and retrieval balancing recency with relevance. Participants will build agents that learn from every interaction, maintain coherent long-term context, and avoid common pitfalls like context pollution or catastrophic forgetting—core skills for anyone aiming to scale agentic AI responsibly.
    HALL 2 - Exclusive Workshops

  • Building AI-First Operating Models explores how organizations can move beyond isolated AI initiatives to embed intelligence at the core of their operating model. In this session, Abhishek Singh shares a practical and strategic view on designing AI-first enterprises where data, models, and decision intelligence are tightly integrated into everyday workflows. The discussion will cover the shift from traditional automation to AI-led orchestration, key principles such as data readiness, scalable AI infrastructure, human-in-the-loop governance, and cross-functional collaboration, along with real-world examples of how AI-first models are driving measurable impact across operations, customer experience, and decision-making. Attendees will walk away with a clear framework to transition from experimentation to enterprise-scale AI adoption and build resilient, future-ready operating models.
    HALL 3 - Tech Talks

  • Agentic AI systems are rapidly moving from demos to mission‑critical workflows, but most of them still behave as pattern‑matchers with tools, not as systems that understand cause and effect. The result is familiar: agents that sound confident while suggesting actions that quietly violate business logic, break regulations, or create hidden risk. This talk introduces “causal guardrails”—an architecture where structural causal models (SCMs) sit around GenAI agents to constrain, explain, and validate their decisions. Instead of relying solely on prompts and heuristics, agents must route their plans through explicit causal graphs that encode allowed interventions, downstream impacts, and hard constraints. The session will walk through intuitive examples (credit risk, IT ops, or recommendation workflows), show how to combine LLM-based agents with SCMs in practice, and discuss how this improves robustness, debuggability, and auditability. Attendees will leave with concrete patterns for using causal modeling to keep autonomous GenAI “sane” in real enterprise environments, not just in benchmarks.
    HALL 3 - Tech Talks

  • The Green Orchestrator proposes a next-generation agentic AI framework designed to coordinate, optimize, and govern distributed energy ecosystems operating at up to 1,000 TWh annual scale. As global energy systems become increasingly decentralized — spanning smart grids, renewable assets, data centers, EV infrastructure, and industrial facilities — existing optimization approaches remain fragmented, reactive, and limited to local objectives. Current AI deployments in energy largely function as advisory tools or isolated predictive models, lacking persistent memory, cross-system coordination, policy-aware autonomy, and multi-objective optimization capabilities. This proposal introduces a hierarchical, multi-agent orchestration platform built using structured execution graphs (e.g., frameworks such as LangGraph), transforming large language models from conversational systems into goal-directed, stateful decision agents. Unlike conventional AI pipelines, the Green Orchestrator embeds agents within a deterministic, policy-constrained state machine architecture that supports long-horizon reasoning, controlled autonomy, and enterprise-grade observability. At its core, the platform formalizes each agent as a constrained decision process operating over partially observable system states. Agents maintain belief representations through layered memory architectures consisting of short-term operational context, episodic summaries, and long-term vector-symbolic knowledge graphs. A novel energy-weighted memory optimization mechanism dynamically prioritizes retention based on carbon impact, financial risk exposure, grid stability sensitivity, and regulatory criticality. This approach significantly reduces token overhead while preserving high-value contextual intelligence, enabling scalable deployment across distributed edge environments. The system introduces hierarchical coordination across four layers: global strategic agents, regional grid agents, site-level optimization agents, and asset-level micro agents. Each layer operates within bounded authority while exchanging structured state updates. This creates distributed intelligence with escalation control and conflict resolution mechanisms analogous to enterprise governance structures. Multi-agent interaction is modeled as a stochastic cooperative game with weighted global objectives, enabling simultaneous optimization of energy efficiency, carbon reduction, cost management, resilience, and compliance. A policy-bound autonomy framework ensures that all agent actions pass through validation gates including regulatory constraint checks, digital twin simulations, and risk evaluation layers before execution. This governance-first design differentiates the platform from experimental agent systems by embedding compliance and safety directly into the decision lifecycle. Domain knowledge is integrated through a hybrid approach combining pretrained model capabilities, retrieval-augmented access to enterprise documentation, structured ontologies of energy assets and constraints, and reinforcement learning via simulation environments. Agents leverage defined tool interfaces — including telemetry APIs, market data feeds, storage dispatch systems, and reporting engines — to interact with operational technology (OT) and enterprise systems in a controlled and auditable manner. The architecture is event-driven, activating agents only when triggered by system changes, thereby reducing computational overhead. Federated edge memory allows localized reasoning while sharing compressed embeddings upward, supporting data sovereignty and low-latency control. Projected system impact at 1,000 TWh scale indicates that even modest coordinated optimization (8–12%) yields substantial reductions in energy consumption and carbon emissions while improving peak demand management and operational resilience. For enterprises such as Schneider Electric, the platform represents a strategic evolution from intelligent hardware integration to AI-native sustainability orchestration, enabling subscription-based optimization services and defensible intellectual property in policy-aware autonomous control. In summary, the Green Orchestrator advances the field of agentic AI by integrating hierarchical multi-agent coordination, memory-efficient long-horizon reasoning, policy-embedded governance, and multi-objective optimization within a scalable enterprise framework. It establishes the foundation for a planetary-scale energy nervous system capable of learning, adapting, and autonomously coordinating distributed energy infrastructures responsibly and sustainably.
    HALL 3 - Tech Talks

  • Agentic AI is reshaping how intelligent systems reason and act — but the next frontier lies in bringing that intelligence into the physical world. This session explores the shift from digital agents to Physical AI systems that interact with real-world environments, devices, and operations. We’ll examine the architectural principles, governance models, and system-level design patterns required to build reliable, scalable intelligent systems beyond the screen.
    HALL 3 - Tech Talks

  • Interoperability will define the future of agent ecosystems. This workshop unpacks the emerging standards—Model Context Protocol (MCP), Agent-to-Agent (A2A), and Agent Communication Protocol (ACP)—that allow agents to “speak” to each other. Through hands-on exercises, you’ll compare strengths, trade-offs, and real implementations. You’ll learn to build adaptable systems that can evolve with changing standards—future-proofing your AI stack for a multi-agent, protocol-driven world.
    HALL 2 - Exclusive Workshops

  • Evolution from conversational bots to action-oriented AI agents Core agentic patterns (intent → plan → act → observe) Where agentic AI delivers real business value A simple, safe demo showing how conversations trigger actions
    HALL 1 (Main) - Keynotes / Tech Talks

  • The Problem: A brief case study highlighting the consequences of non-reproducibility in AI decisions. The Challenges: Real-world complexities of maintaining transparency in multi-agentic systems. The Technical Roadmap: Methods and tools to ensure GenAI systems are fully auditable. The Decision Rationale: A deep dive into capturing decision snapshots, logging execution paths, and environment versioning, supported by a technical architecture diagram. Implementation Strategies: Practical takeaways including structured logging, deterministic replays using fixed seeds, shadow-mode testing, and immutable audit trails.
    HALL 3 - Tech Talks

  • Artificial intelligence is now core infrastructure. Yet many AI workloads operate on shared public platforms, creating exposure risks for proprietary data and strategic intelligence. Zero-Leak AI Infrastructure delivers dedicated, private AI compute environments built on isolated GPU servers and controlled networking. No public exposure. No uncontrolled egress. No shared tenancy. Secure AI begins with sovereign infrastructure.
    HALL 3 - Tech Talks

  • AI adoption won’t follow a single trajectory, it will diffuse across industries, functions, and societies through multiple parallel pathways. This session explores 100 practical and emerging diffusion routes through which AI is expected to scale by 2030, from developer-led tooling and enterprise copilots to autonomous workflows, sector-specific AI stacks, embedded intelligence in products, and policy-driven innovation. The focus is on how AI moves from experimentation to systemic integration: what accelerates adoption, what creates friction, and how organizations can strategically position themselves to ride the right diffusion curves. A forward-looking yet execution-oriented perspective for leaders and builders shaping the AI-powered decade ahead.
    HALL 1 (Main) - Keynotes / Tech Talks

  • The talk focuses on one of the hardest problems in fashion recommendation systems—new users and new items in rapidly changing catalogs—and how recent advances in large language models enable fundamentally different approaches to representation, understanding, and bootstrapping recommendations at scale. The session will share practical system designs, trade-offs, and lessons learned from using LLMs to address cold start across candidate generation and ranking, including how we combine textual, visual, and contextual signals to reduce dependence on historical interaction data. The emphasis will be on what translated to measurable online impact, and where LLM-based approaches helped—or failed—compared to traditional heuristics and embedding-based methods. I believe this talk would resonate well with ML practitioners, recommender system engineers, and applied researchers, and would complement the conference’s focus on recommender systems, applied machine learning, and real-world deployments.
    HALL 3 - Tech Talks


The AI Innovation Playground

Expect two days packed with deep dives into generative AI, practical coding challenges, and real-world case studies that prepare you for the next wave of intelligent applications.

Supported by brands building the future of AI.

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Note: Ticket Pricing to change at any time.

Building the Age of Agentic AI

From Models to Agents

Explore how LLMs are evolving into intelligent, goal-driven agents that collaborate, reason, and act autonomously.

Scaling AI in the Real World

Dive into architectures, frameworks, and deployment strategies powering production-grade generative and agentic AI systems.

The Future of Human + AI Collaboration

Discover how agentic AI is reshaping developer workflows, enterprise ecosystems, and the very nature of innovation.

It’s been a bit late to post this but I have to say what an event it really was (Machine Learning Developers Summit’23), after COVID the first time this event happened without virtual meeting and the interaction was also amazing by Data Scientists & Machine learning engineers/ enthusiasts, thanks to AIM

Het Patel

IBM

Attended the brilliant and insightful #MLDS2023. The sessions, talks, presentations and workshops were engaging and knowledgeable, a very enriching experience.

Arijit Gayen

iMerit

Attending the Machine Learning Summit 2023 in Bangalore was an incredible opportunity for me to deepen my understanding of the latest advancements and trends in the field.

The keynote speakers were inspiring and provided valuable insights, and I had the chance to network with many other professionals and experts in the industry.

KIRTHIK A

KGiSL

Michelin is glad to be a part of the Machine Learning Developers Summit (MLDS) 2023 which concluded last week in Bangalore, India. The summit comprised of numerous keynote sessions by industry experts.

Michelin

Attending MLDS 2025 was an eye-opening experience into how rapidly the ML & AI landscape is evolving. Trends truly wait for no one and this year, the spotlight was firmly on Agentic AI and Agentic pipelines.

Samuel Shine

Machine Learning Engineer at CVC NETWORK

We were proud to participate in 𝗜𝗻𝗱𝗶𝗮’𝘀 𝗹𝗮𝗿𝗴𝗲𝘀𝘁 𝗱𝗲𝘃𝗲𝗹𝗼𝗽𝗲𝗿𝘀 𝘀𝘂𝗺𝗺𝗶𝘁 – 𝗠𝗟𝗗𝗦 𝟮𝟬𝟮𝟱, where the spotlight was on GenAI, agentic systems and the future of AI-driven innovation.

Kévin BERTRAND

Manager @ Capco

AIM 40 Under 40 AI Builders

Honoring under-40 makers who ship real AI to production at scale in India.

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