# Fundamentals of generative AI (GenAI)

> Fundamentals of generative AI (GenAI) - Learn the basics of building GenAI workflow— connect to your
> data, build and compare LLM blueprints, automate compliance, register and deploy.

This Markdown file sits beside the HTML page at the same path (with a `.md` suffix). It summarizes the topic and lists links for tools and LLM context.

Companion generated at `2026-05-06T18:17:09.939739+00:00` (UTC).

## Primary page

- [Fundamentals of generative AI (GenAI)](https://docs.datarobot.com/en/docs/get-started/day0/genai-start/genai-fundamentals.html): Full documentation for this topic (HTML).

## Sections on this page

- [GenAI overview](https://docs.datarobot.com/en/docs/get-started/day0/genai-start/genai-fundamentals.html#genai-overview): In-page section heading.
- [GenAI problem statement](https://docs.datarobot.com/en/docs/get-started/day0/genai-start/genai-fundamentals.html#genai-problem-statement): In-page section heading.
- [DataRobot solution](https://docs.datarobot.com/en/docs/get-started/day0/genai-start/genai-fundamentals.html#datarobot-solution): In-page section heading.
- [Read more](https://docs.datarobot.com/en/docs/get-started/day0/genai-start/genai-fundamentals.html#read-more): In-page section heading.

## Related documentation

- [Get started](https://docs.datarobot.com/en/docs/get-started/index.html): Linked from this page.
- [First time here?](https://docs.datarobot.com/en/docs/get-started/day0/index.html): Linked from this page.
- [Start with GenAI](https://docs.datarobot.com/en/docs/get-started/day0/genai-start/index.html): Linked from this page.
- [Generative AI (GenAI)](https://docs.datarobot.com/en/docs/agentic-ai/index.html): Linked from this page.
- [FAQ](https://docs.datarobot.com/en/docs/get-started/day0/trial-faq.html): Linked from this page.
- [predictive](https://docs.datarobot.com/en/docs/workbench/index.html): Linked from this page.
- [deployment in Registry](https://docs.datarobot.com/en/docs/workbench/nxt-registry/index.html): Linked from this page.
- [generalized discussion](https://docs.datarobot.com/en/docs/get-started/day0/genai-start/genai-workflow.html): Linked from this page.
- [GenAI how-to](https://docs.datarobot.com/en/docs/get-started/how-to/genai-walk-basic.html): Linked from this page.
- [GenAI how-to](https://docs.datarobot.com/en/docs/get-started/how-to/genai-space.html): Linked from this page.

## Documentation content

[Generative AI (GenAI)](https://docs.datarobot.com/en/docs/agentic-ai/index.html) available in Workbench, allows you to build, govern, and operate enterprise-grade generative AI solutions with confidence. The solution provides the freedom to rapidly innovate and adapt with the best-of-breed components of your choice (LLMs, vector databases, embedding models), across cloud environments. DataRobot's GenAI:

- Safeguards proprietary data by extending your LLMs and monitoring cost of your generative AI experiments in real-time.
- Shepherds you through creating, deploying, and maintaining safe, high-quality, generative AI applications and solutions in production, using your tool-of-choice.
- Lets you confidently manage and govern LLMs in production, quickly detecting and correcting unexpected and unwanted behaviors.
- Continuously improve GenAI applications with predictive modeling and user feedback.

This page provides an overview of the functionality.

> [!NOTE] For trial users
> If you are a DataRobot trial user, see the [FAQ](https://docs.datarobot.com/en/docs/get-started/day0/trial-faq.html) for information on trial-specific capabilities. To start a DataRobot trial of predictive and generative AI, click Start a free trial at the top of this page.

## GenAI overview

The DataRobot GenAI platform provides both API and GUI options, allowing you to experiment, compare, and assess the best GenAI components through qualitative and quantitative comparisons at an individual prompt and response level. The DataRobot AI Platform supports experimentation with common LLMs or you can bring your favorite libraries, bring or choose your LLMs, vector databases, and embeddings, and integrate third-party tools.

### GenAI problem statement

With open source and GPU clusters offered by the cloud providers, it's possible to build GenAI workflows yourself, but it's hard to get those solutions into production in an enterprise setting. It's challenging to get the governance and guardrails in place to ensure you can confidently put your workflow into production while still ensuring that it meets your compliance and performance standards. With consultants that build an agentic application for you, you don't have the flexibility to adjust the implementation as your needs change over time.

While there is a perception that "it's all about the model," in reality, the value depends more on the GenAI end-to-end strategy. Quality of the vector database (if used), prompting strategy, and monitoring, maintenance, and governance are all critical components of success.

### DataRobot solution

Sitting between do-it-yourself open source options and the full white-glove treatment of consultants that build GenAI workflows and agents for you, DataRobot provides:

- An AI platform that allows you to build whatever you need to support your business with Generative AI.
- A suite of applications that show you how to implement end-to-end solutions for common use cases.
- One unified experience for all users, no matter the ingestion data layer, cloud provider, or consumption layer.

DataRobot is the "AI intelligence layer" that sits between the data infrastructure (unstructured data, on the left in the image below) and the consumption layer.

DataRobot provides a comprehensive suite of tools to build and evaluate GenAI workflows. Out-of-the-box observability and state-of-the-art inference let you scale workflows and understand what's happening in production and across the entire lifecycle. Governance functionality ensures you're comfortable with your workflow in the enterprise setting. Application templates provide pre-built applications for common use cases, as well as the code associated with the implementation. This allows you to customize—now and in the future—how all aspects of the application work, ensuring that the needs of your use case are met.

The general DataRobot architecture is used for both [generative](https://docs.datarobot.com/en/docs/agentic-ai/index.html) and [predictive](https://docs.datarobot.com/en/docs/workbench/index.html) AI, whether it's preparing data, building and optimizing, or sharing insight. From experimentation in Workbench through [deployment in Registry](https://docs.datarobot.com/en/docs/workbench/nxt-registry/index.html), all models can be managed and monitored through [Console](https://docs.datarobot.com/en/docs/workbench/nxt-registry/index.html) production capabilities. This includes governance, ability to deploy and manage, and continuous and ongoing monitoring.

> [!TIP] Tip
> See the [generalized discussion](https://docs.datarobot.com/en/docs/get-started/day0/genai-start/genai-workflow.html) of the steps to build generative models in a playground. Or, try it yourself with the [GenAI how-to](https://docs.datarobot.com/en/docs/get-started/how-to/genai-walk-basic.html).

## Read more

- GenAI how-to compares multiple retrieval-augmented generation (RAG) pipelines ( video here ). When completed, you'll have multiple end-to-end pipelines with built-in evaluation, assessment, and logging, providing governance and guardrails.
- What AI tools aren’t delivering for AI leaders (blog)
- Everything You Need to Know About LLMOps (White paper)
- 10 Key Considerations for Generative AI in Production (White paper)
- The enterprise path to agentic AI (Blog)
- Agentic AI: Real-world business impact, enterprise-ready solutions (Blog)
- GenAI Accelerators GitHub repo
