---
title: "Databricks 和 Palantir 不是竞争对手"
type: "Topics"
locale: "en"
url: "https://longbridge.com/en/topics/33220687.md"
description: "Core View: Databricks and Palantir Are Not Competitors Comparing Databricks and Palantir is an excellent way to understand the strategic differences between modern data and AI platforms. Some Longbridge community members say &#39;Databricks is not as good as PLTR,&#39; but I think this conclusion might be too absolute because it depends on the perspective. A more accurate description is: they are companies targeting different markets and solving different problems, with fundamental differences in core philosophy, target customers, and business models..."
datetime: "2025-08-21T16:46:51.000Z"
locales:
  - [en](https://longbridge.com/en/topics/33220687.md)
  - [zh-CN](https://longbridge.com/zh-CN/topics/33220687.md)
  - [zh-HK](https://longbridge.com/zh-HK/topics/33220687.md)
author: "[奇迹的交易员cola](https://longbridge.com/en/profiles/10743314.md)"
---

# Databricks 和 Palantir 不是竞争对手

Core View: Databricks and Palantir Are Not Competitors

Comparing Databricks and Palantir is an excellent way to understand the strategic differences between modern data and AI platforms.

Some Longbridge community members say "Databricks is inferior to PLTR." Personally, I believe this conclusion may be too absolute because it depends on the perspective from which it is measured. A more accurate description is: They are companies targeting different markets and solving different problems, with fundamental differences in their core philosophies, target customers, and business models.

#### Core Philosophy and Product Positioning: "Operating System" vs. "Toolchain"

#### Palantir: Top-Down "End-to-End Operating System"

-   Philosophical Perspective: The biggest problem for enterprises is not the lack of data tools but data silos and fragmented toolchains.
-   PLTR provides a unified, closed, and highly integrated platform (Foundry, AIP), aiming to be the sole "decision hub" for enterprises. It emphasizes out-of-the-box solutions and strong standardization, telling enterprises "what the best practices should look like."
-   Goal: To directly provide decision-makers (e.g., officers, CEOs, business analysts) with decision-making capabilities, encapsulating data and AI models into easy-to-use applications. The phrase "enterprise AI neural hub" perfectly captures its ambition.

####   
Databricks: Bottom-Up "Open-Source Unified Data Platform"

-   Philosophical Perspective: To provide enterprises with the best and most flexible tools, enabling data engineers, data scientists, and analysts (rather than CEOs directly) to build the solutions they need. It is built on the Lakehouse architecture, unifying the flexibility of data lakes with the performance management of data warehouses.
-   Goal: To become the "Swiss Army knife" for data professionals. It offers powerful tools (e.g., Spark, Delta Lake, MLflow), but how these tools are assembled to solve specific business problems depends on the customer's team or partners. It is more open and flexible but also more reliant on the customer's technical capabilities.

#### Needs Addressed and Target Customers

#### PLTR: Solves the problem of "I don't know how to gain insights from my data." Its ideal customers are:

1.  Non-technical decision-makers: Such as government agencies (CIA, FDA) and large traditional enterprises (Airbus, United Airlines). These customers have money and data but lack strong AI engineering teams.
2.  Scenarios requiring highly customized, complex problem-solving: Such as anti-fraud, supply chain optimization, and military mission planning. These scenarios require deep integration of multi-source data.

####   
Databricks: Solves the problem of "My data team needs more powerful, unified tools to handle massive data and build AI." Its ideal customers are:

1.  Companies with strong technical capabilities: Such as Netflix, Adobe, and numerous internet and tech companies. These companies have large teams of data engineers and scientists.
2.  Scenarios requiring processing of extremely large-scale data and analysis: Such as user behavior analysis, recommendation systems, and ETL pipelines.

#### Business Models and Moats

#### PLTR:

1.  High stickiness, high switching costs: Once deployed, it becomes deeply embedded in the customer's core business, making it almost irreplaceable. This is what you call the "neural hub"—replacing it is like performing a "brain transplant" on the enterprise.
2.  High contract value, sales-driven: Contracts are large and expand over time (land-and-expand).
3.  Moat: Complex system integration capabilities, deep domain knowledge, and a vast case library from first-mover advantage.

####   
· Databricks:

1.  Consumption-based pricing (Pay-as-you-go): Customers pay based on the usage of computing and storage resources.
2.  Moat: Strong open-source ecosystem (Spark, MLflow have become industry standards), technical leadership (pioneer of the Lakehouse concept), and a large developer community. Its risk lies in a more "commoditized" model and fiercer competition (e.g., Snowflake, Google BigQuery).

#### Conclusion

1.  Current Market Narrative: The focus of AI has shifted from "underlying tools" to "top-level applications." People are no longer amazed by "I can train a model" but care more about "How can AI directly make me money or save costs?" PLTR's AIP story hits this pain point, while Databricks appears more like an "infrastructure provider."
2.  Target Market Visibility: PLTR solves "high-level" macro-decision problems (saving planes, catching terrorists), making its story more glamorous; Databricks works more behind the scenes on data pipelines, making its story more technical.

However, it is unreasonable to categorically state that "Databricks is inferior to PLTR" or "PLTR will be replaced by Databricks." In fact, the two can collaborate in many areas.

1.  Market: The market for Databricks' general-purpose data platform is enormous, with almost all digital enterprises as potential customers.
2.  Irreplaceability: For tech-driven companies, Databricks is almost indispensable infrastructure.
3.  Many companies even use both: Databricks for data cleaning and model training, and PLTR for deployment and decision-making applications.

To use an analogy:

-   Palantir is like hiring McKinsey Consulting + a top-tier software team to tailor a complete solution for your company, but you must follow their approach entirely.
-   Databricks is like going to Home Depot to buy the world's best tools and materials, but you need your own designers and construction team to build the house.

Which is "better" depends on whether the customer needs a "turnkey furnished apartment" (PLTR) or a "blank slate with top-tier materials for free design" (Databricks). Both are leaders in their respective fields. This is not a zero-sum game but an opportunity for collaboration to push the boundaries of AI applications together.

### Related Stocks

- [PLTR.US](https://longbridge.com/en/quote/PLTR.US.md)

## Comments (9)

- **jasonw · 2025-08-21T17:47:17.000Z · 👍 1**: Must buy some Databricks when it goes public, just for the product I've been using for coding all these years.
- **娃娃鱼哇哇哇 · 2025-08-21T17:10:23.000Z · 👍 1**: Is this written by AI?
  - **奇迹的交易员cola** (2025-08-21T17:12:11.000Z): AI will write better than me.
  - **你猜我猜你猜不猜** (2025-08-21T17:35:28.000Z): The article structure needs to be adjusted.
  - **奇迹的交易员cola** (2025-08-21T17:37:00.000Z): Can you help me optimize it with AI? You sent 😂, bro is resting.
- **yimiao · 2025-08-21T16:57:51.000Z · 👍 1**: Cola is indeed also in the computer field.
  - **奇迹的交易员cola** (2025-08-21T16:59:20.000Z): No, I'm a liberal arts student. Everything else is self-taught.
  - **yimiao** (2025-08-21T17:00:50.000Z): Awesome, big data talks the talk.｡◕‿◕｡
- **奇迹的交易员cola · 2025-08-21T16:48:45.000Z · 👍 1**: Had another dream, don't take it seriously, just random thoughts, going back to sleep 🛌
