1. [Home](https://www.g2.com/)
2. ...
3. [AI Search & Retrieval Infrastructure Platforms Software](https://www.g2.com/categories/ai-search-retrieval-infrastructure-platforms)
4. [Vespa.ai Discussions](https://www.g2.com/products/vespa-ai/discuss)

[
 ![Product Avatar Image](https://images.g2crowd.com/uploads/product/image/large_detail/large_detail_94b3dd160f3cf0d1a14eb1ee62696754/vespa-ai.png "Product Avatar Image")
](/products/vespa-ai/reviews)

[

Vespa.ai

](/products/vespa-ai/reviews)

(8)4.6/5

Developers building customer-facing, large-scale search, Retrieval-Augmented Generation (RAG), and recommendation systems face a core challenge: retrieving and operationalizing data in real time. Data is fragmented across formats, including PDFs, free text, and semi-structured sources. This makes it difficult to unify, index, and serve data efficiently to applications and end users. Without the right infrastructure, applications become slow, brittle, and costly to scale. Vespa addresses this by unifying structured, unstructured, vector, and tensor data in a single system, enabling efficient, real-time retrieval and ranking at scale. The Vespa AI search platform is built for real-time retrieval, ranking, and inference on AWS, powering customer-facing applications including search, RAG, recommendations, and personalization. It unifies structured, unstructured, vector, and tensor data to deliver fast, accurate, and highly relevant results at millisecond latency. Vespa is purpose-built for customer-facing experiences where latency, relevance, and scale directly impact engagement, conversion, and revenue. By combining full-text search, vector search, and machine-learned ranking within a single query pipeline, Vespa delivers consistent, high-quality results across every user interaction. Its tensor-based ranking architecture enables applications to evaluate multiple signals simultaneously, including semantic meaning, behavioral data, and real-time context, enabling results to continuously adapt to user intent and business priorities. Ranking and inference run directly within the engine, eliminating external pipelines and enabling real-time updates to content, models, and business signals. Running on AWS, Vespa delivers elastic scalability, high availability, and fully managed infrastructure through Vespa Cloud. Automated provisioning, scaling, monitoring, and upgrades reduce operational overhead while supporting high-throughput, low-latency workloads. Vespa is trusted in production by organizations including Perplexity, Spotify, and Yahoo to power large-scale, real-time search, recommendation, and AI applications. Developers use Vespa to build responsive, intelligent applications that enhance the customer experience, improve conversion rates, and drive measurable business outcomes.

Show More

When users leave Vespa.ai reviews, G2 also collects common questions about the day-to-day use of Vespa.ai. These questions are then answered by our community of 850k professionals. Submit your question below and join in on the G2 Discussion.

* * *

### 75.0

Nps Score

### All Vespa.ai Discussions

Search

Most CommentedMost HelpfulPinned by G2Newest

All DiscussionsDiscussions with CommentsPinned by G2Discussions without Comments

FilterFilter

Filter byExpand/Collapse 

Sort by

Most Commented

Most Helpful

Pinned by G2

Newest

Filter by

All Discussions

Discussions with Comments

Pinned by G2

Discussions without Comments

Sorry...

There are no questions about Vespa.ai yet.

## Start a New Software Discussion

Have a software question?

Get answers from real users and experts

[Start A Discussion](/products/vespa-ai/discussions/new)

* * *

 ![Product Avatar Image](https://images.g2crowd.com/uploads/product/hd_favicon/5881b2e8fff8f63576490f0e9a9b478d/vespa-ai.svg "Product Avatar Image")

### Have you used Vespa.ai before?

Answer a few questions to help the Vespa.ai community

[
Yes
](javascript:void(0))[
Yes
](https://www.g2.com/authorize?form=signup&return_to=https%3A%2F%2Fwww.g2.com%2Fproducts%2Fvespa-ai%2Fdiscuss%3Fsmall_ask%3Dvespa-ai)
No