Organizations are keen to maneuver into the period of agentic AI, however shifting AI tasks from growth to manufacturing stays a problem. Deploying agentic AI apps typically requires complicated configurations and integrations, delaying time to worth.
Limitations to deploying agentic AI:
- Understanding the place to start out: With no structured framework, connecting instruments and configuring programs is time-consuming.
- Scaling successfully: Efficiency, reliability, and price administration turn out to be useful resource drains with no scalable infrastructure.
- Making certain safety and compliance: Many options depend on uncontrolled knowledge and fashions as an alternative of permissioned, examined ones
- Governance and observability: AI infrastructure and deployments want clear documentation and traceability.
- Monitoring and upkeep: Making certain efficiency, updates, and system compatibility is complicated and tough with out strong monitoring.
Now, DataRobot comes with NVIDIA AI Enterprise embedded — providing the quickest option to develop and ship agentic AI.
With a totally validated AI stack, organizations can scale back the dangers of open-source instruments and DIY AI whereas deploying the place it is smart, with out added complexity.
This allows AI options to be custom-tailored for enterprise issues and optimized in ways in which would in any other case be unimaginable.
On this weblog put up, we’ll discover how AI practitioners can quickly develop agentic AI purposes utilizing DataRobot and NVIDIA AI Enterprise, in comparison with assembling options from scratch. We’ll additionally stroll by means of methods to construct an AI-powered dashboard that permits real-time decision-making for warehouse managers.
Use Case: Actual-time warehouse optimization
Think about that you simply’re a warehouse supervisor making an attempt to determine whether or not to carry shipments upstream. If the warehouse is full, that you must reorganize your stock effectively. If it’s empty, you don’t need to waste assets; your workforce has different priorities
However manually monitoring warehouse capability is time-consuming, and a easy API received’t minimize it. You want an intuitive answer that matches into your workflow with out required coding.
Moderately than piecing collectively an AI app manually, AI groups can quickly develop an answer utilizing DataRobot and NVIDIA AI Enterprise. Right here’s how:
- AI-powered video evaluation: Makes use of the NVIDIA AI Blueprint for video search and summarization as an embedded agent to determine open areas or empty warehouse cabinets in actual time.
- Predictive stock forecasting: Leverages DataRobot Predictive AI to forecast earnings stock quantity.
- Actual-time insights and conversational AI: Shows stay insights on a dashboard with a conversational AI interface.
- Simplified AI administration: Gives simplified mannequin administration with NVIDIA NIM and DataRobot monitoring.
This is only one instance of how AI groups can construct agentic AI apps sooner with DataRobot and NVIDIA.
Fixing the hardest roadblocks in constructing and deploying agentic AI
Constructing agentic AI purposes is an iterative course of that requires balancing integration, efficiency, and flexibility. Success will depend on seamlessly connecting — LLMs, retrieval programs, instruments, and {hardware} — whereas guaranteeing they work collectively effectively.
Nevertheless, the complexity of agentic AI can result in extended debugging, optimization cycles, and deployment delays.
The problem is delivering AI tasks at scale with out getting caught in countless iteration.
How NVIDIA AI Enterprise and DataRobot simplify agentic AI growth
Versatile beginning factors with NVIDIA AI Blueprints and DataRobot AI Apps
Select between NVIDIA AI Blueprints or DataRobot AI Apps to jumpstart AI software growth. These pre-built reference architectures decrease the entry barrier by offering a structured framework to construct from, considerably decreasing setup time.
To combine NVIDIA AI Blueprint for video search and summarization, merely import the blueprint from the NVIDIA NGC gallery into your DataRobot surroundings, eliminating the necessity for handbook setup.

Accelerating predictive AI with RAPIDS and DataRobot
To construct the forecast, groups can leverage RAPIDS knowledge science libraries together with DataRobot’s full suite of predictive AI capabilities to automate key steps in mannequin coaching, testing, and comparability.
This allows groups to effectively determine the highest-performing mannequin for his or her particular use case.

Optimizing RAG workflows with NVIDIA NIM and DataRobot’s LLM Playground
Utilizing the LLM playground in DataRobot, groups can improve RAG workflows by testing completely different fashions just like the NVIDIA NeMo Retriever textual content reranking NIM or the NVIDIA NeMo Retriever textual content embedding NIM, after which evaluate completely different configurations aspect by aspect. This analysis might be accomplished utilizing an NVIDIA LLM NIM as a choose, and if desired, increase the evaluations with human enter.
This strategy helps groups determine the optimum mixture of prompting, embedding, and different methods to search out the best-performing configuration for the particular use case, enterprise context, and end-user preferences.

Making certain operational readiness
Deploying AI isn’t the end line — it’s simply the beginning. As soon as stay, agentic AI should adapt to real-world inputs whereas staying constant. Steady monitoring helps catch drift, bugs, and slowdowns, making sturdy observability instruments important. Scaling provides complexity, requiring environment friendly infrastructure and optimized inference.
AI groups can rapidly turn out to be overwhelmed with balancing growth of recent options and easily preserving current ones.
For our agentic AI app, DataRobot and NVIDIA simplify administration whereas guaranteeing excessive efficiency and safety:
- DataRobot monitoring and NVIDIA NIM optimize efficiency and reduce danger, even because the variety of customers grows from 100 to 10K to 10M.
- DataRobot Guardrails, together with NeMo Guardrails, present automated checks for knowledge high quality, bias detection, mannequin explainability, and deployment frameworks, guaranteeing reliable AI.
- Automated compliance instruments and full end-to-end observability assist groups keep forward of evolving rules.

Deploy the place it’s wanted
Managing agentic AI purposes over time requires sustaining compliance, efficiency, and effectivity with out fixed intervention.
Steady monitoring helps detect drift, regulatory dangers, and efficiency drops, whereas automated evaluations guarantee reliability. Scalable infrastructure and optimized pipelines scale back downtime, enabling seamless updates and fine-tuning with out disrupting operations.
The purpose is to stability adaptability with stability, guaranteeing the AI stays efficient whereas minimizing handbook oversight.
DataRobot, accelerated by NVIDIA AI Enterprise, delivers hyperscaler-grade ease of use with out vendor lock-in throughout various environments, together with self-managed on-premises, DataRobot-managed cloud, and even hybrid deployments.
With this seamless integration, any deployed fashions get the identical constant assist and providers no matter your deployment selection — eliminating the necessity to manually arrange, tune, or handle AI infrastructure.
The brand new period of agentic AI
DataRobot with NVIDIA embedded accelerates growth and deployment of AI apps and brokers by means of simplifying the method on the mannequin, app, and enterprise stage. This allows AI groups to quickly develop and ship agentic AI apps that resolve complicated, multistep use circumstances and rework how finish customers work with AI.
To study extra, request a {custom} demo of DataRobot with NVIDIA.
In regards to the creator

Chris deMontmollin is Product Advertising and marketing Supervisor, Strategic Companions and Tech Alliances at DataRobot. With earlier roles at Zayo, Alteryx and TIBCO, he has years of expertise in enterprise analytics, buyer technique, and tech advertising. He obtained his BA from College of Florida and his MS in Enterprise Analytics from College of Colorado.

Kumar Venkateswar is VP of Product, Platform and Ecosystem at DataRobot. He leads product administration for DataRobot’s foundational providers and ecosystem partnerships, bridging the gaps between environment friendly infrastructure and integrations that maximize AI outcomes. Previous to DataRobot, Kumar labored at Amazon and Microsoft, together with main product administration groups for Amazon SageMaker and Amazon Q Enterprise.

Dr. Ramyanshu (Romi) Datta is the Vice President of Product for AI Platform at DataRobot, answerable for capabilities that allow orchestration and lifecycle administration of AI Brokers and Purposes. Beforehand he was at AWS, main product administration for AWS’ AI Platforms – Amazon Bedrock Core Techniques and Generative AI on Amazon SageMaker. He was additionally GM for AWS’s Human-in-the-Loop AI providers. Previous to AWS, Dr. Datta has additionally held engineering and product roles at IBM and Nvidia. He obtained his M.S. and Ph.D. levels in Laptop Engineering from the College of Texas at Austin, and his MBA from College of Chicago Sales space College of Enterprise. He’s a co-inventor of 25+ patents on topics starting from Synthetic Intelligence, Cloud Computing & Storage to Excessive-Efficiency Semiconductor Design and Testing.