Sponsored by BrandGhost - BrandGhost is a social media automation tool... Visit now

Zilliz

Added β€’ Updated

If you're frustrated by managing complex infrastructure for large-scale vector search and AI integrations, Zilliz offers a fully managed, enterprise-grade vector database solution that simplifies deployment.

Streamline AI Data Management

With Zilliz, experience high performance and scalability for billion-scale vector search, empowering your AI applications to deliver faster, more accurate insights.

Achieve Seamless AI Integration

Its cloud-agnostic architecture and robust security make Zilliz the perfect tool to upgrade your AI infrastructure without hassle, helping you focus on your core projects and innovations.

Verification Options:

1.

Email Verification: Verify ownership through your domain email.

2.

File Verification: Place our file in your server.

After verification, you'll have access to manage your AI tool's information (pending approval).

Zilliz website preview
Zilliz preview

How Zilliz Works In 3 Steps?

  1. 1. Sign up for Zilliz Cloud

    Create a free account to access scalable vector database features and start managing your enterprise AI data.
  2. 2. Integrate SDKs for deployment

    Download SDKs (Python, Java, Go, Node.js) to connect your applications with Zilliz's high-performance vector search platform.
  3. 3. Perform vector searches

    Create collections and execute similarity searches to enable efficient AI-driven retrieval and analysis.

Direct Comparison

See how Zilliz compares to its alternative:

Zilliz VS Zillion
Core Features
  • Fully managed Milvus service: simplifies deployment
  • Billion-scale vector search: handles large datasets
  • High performance: faster retrieval
  • Highly Scalable: supports up to 100 billion items
  • Security & Governance: ensures data protection
  • Built-in Embedding Pipelines: streamlines AI workflows
  • Multi-Cloud availability: flexible deployment options
Advantages
  • Handles billion-scale data
  • High availability with 99.95% uptime
  • Multi-cloud support
  • Security certifications such as SOC2 and ISO27001
  • Fast integration via SDKs and APIs
  • Supports large enterprises with scalable architecture
Use Cases
  • Retrieval Augmented Generation (RAG)
  • Recommender System
  • Text/Semantic Search
  • Image Similarity Search
  • Audio Similarity Search
  • Video Similarity Search
  • Multimodal Similarity Search

Frequently Asked Questions

What is a Compute Unit (CU)?

A Compute Unit (CU) represents the compute capacity allocated for your vector database workloads, impacting performance and scalability.

How many CUs do I need for a collection?

The number depends on your dataset size and performance needs; higher CUs improve speed and capacity.

Does Zilliz offer a free trial?

Yes, Zilliz offers a free plan with 5 GB storage, suitable for learning and prototyping, with options to upgrade.

Alternatives of Zilliz

Customer Reviews for Zilliz

Review Analytics

Comprehensive insights and trends

Excellent

100%

Recommendation Rate

0%

Developer Response

95

Avg. Words/Review

Monthly Growth

0%

0%

Same as last month

This month

6-Month Review Timeline

0 reviews
Apr
0 reviews
May
2 reviews
Jun
0 reviews
Jul
0 reviews
Aug
0 reviews
Sep

Most Helpful Review

Found helpful
Charlotte Taylor

Charlotte Taylor

As a data scientist at a mid-sized tech firm, I needed a reliable way to handle billion-scale image embeddings for our visual search app. Zilliz's fully managed Milvus service simplified deployment tremendouslyβ€”within hours, I had a robust, scalable setup without the hassle of managing infrastructure. Its high-performance vector search made retrieval speeds lightning-fast, which was crucial for user experience. The built-in embedding pipelines streamlined our AI workflow, especially during model updates. My only wish is that multi-cloud deployment could offer more seamless migrations between providers, but overall, it's been a game changer for our project.

Frequently Mentioned Topics

fast reliable

Recent Activity

No reviews in the last 30 days

Be the first to share your experience!

Please select a rating

Good titles: "Great for beginners", "Powerful but complex", "Worth every penny"

/2000

Tips for a helpful review:

  • Describe your use case and what you were trying to achieve
  • Compare with similar tools you've used
  • Mention specific features that stood out (good or bad)
  • Include any workarounds or tips you discovered

By submitting, you agree to our review guidelines

Filter by rating:

Showing 1 - 2 of 2 reviews .

User avatar for Charlotte Taylor

Charlotte Taylor

4.0
Recommends

Good for Large-Scale Recommendations, But Room for Improvement

Used for 1-3 months

What I liked

  • Supports billion-scale vector search suitable for large recommender systems
  • Multi-cloud deployment offers flexible hosting options
  • Built-in embedding pipelines simplify integration for multimodal data
  • High performance retrieval improves responsiveness

What could be better

  • Initial setup documentation could be more comprehensive for complex, multimodal datasets
  • Limited built-in governance tools make compliance harder for sensitive data

I'm a freelance developer working on a multimodal video recommendation system for a startup. Zilliz's support for billion-scale vector search was impressiveβ€”deploying their managed service meant I didn't need to worry about scaling issues. The multi-cloud options allowed us to host across different environments to optimize latency. However, I found the setup documentation somewhat sparse, especially around fine-tuning indexing parameters for multimodal data. Also, integrating the embedding pipelines was straightforward, but I wish there were more built-in tools for advanced governance and data privacy. Still, for large-scale projects, Zilliz offers a robust backbone.

User avatar for Charlotte Taylor

Charlotte Taylor

5.0
Recommends

Streamlined AI Data Management with Milvus Integration

Used for over year

What I liked

  • Fully managed Milvus service simplified deployment, saving me days of setup time
  • Billion-scale vector search handles our large image dataset efficiently
  • Built-in embedding pipelines streamline our AI workflows
  • High performance retrieval speeds improve user experience

What could be better

  • Multi-cloud deployment could be more flexible; moving datasets between clouds isn't as straightforward as I'd like
  • Lack of detailed granular access controls in the current security features

As a data scientist at a mid-sized tech firm, I needed a reliable way to handle billion-scale image embeddings for our visual search app. Zilliz's fully managed Milvus service simplified deployment tremendouslyβ€”within hours, I had a robust, scalable setup without the hassle of managing infrastructure. Its high-performance vector search made retrieval speeds lightning-fast, which was crucial for user experience. The built-in embedding pipelines streamlined our AI workflow, especially during model updates. My only wish is that multi-cloud deployment could offer more seamless migrations between providers, but overall, it's been a game changer for our project.

Primary Tasks For Zilliz

# Task Popularity Impact Follow
1
πŸ“ŠπŸ”βœ¨

Vector databases

18% Popular
85% Impact
2
πŸ”πŸ€–πŸ’»βœ¨

AI tools search

23% Popular
85% Impact
3
πŸ€–πŸ’ΌπŸ“Šβœ¨

Enterprise ai consulting

19% Popular
85% Impact
4
πŸ”πŸ“Šβœ¨

Vector search

11% Popular
85% Impact
5
πŸ€–πŸ’‘βœ¨

Custom ai solutions

27% Popular
85% Impact
6
πŸ€–πŸ’»πŸŒβœ¨

AI website integration

31% Popular
85% Impact
7
πŸ€–πŸ“ŠπŸ—‚οΈβœ¨

AI project management

29% Popular
85% Impact
8
πŸ’ΎπŸ“ŠπŸ€–

Ai data management

16% Popular
85% Impact
9
πŸ”πŸ€–πŸ’»βœ¨

AI generated content search tool

22% Popular
85% Impact
10
πŸ€–πŸ’»βœ¨πŸ”

AI development

25% Popular
85% Impact

Best Fit Jobs For Zilliz

# Task Popularity Impact
1
πŸ€–πŸ’»πŸ“ŠπŸ”
Machine Learning Engineer
0% Popular
85% Impact
2
πŸ”„πŸ”§πŸš°
Pipeline
1% Popular
75% Impact