- 비교
Chroma vs Pinecone
Chroma vs. Pinecone
Chroma와(과) Pinecone를 벡터 검색 워크로드 관점에서 비교하세요. 귀하의 사용 사례에 가장 적합한 벡터 데이터베이스를 선택하세요. 그게 우리가 아니더라도 말이죠.
벡터 데이터베이스는 검색 증강 생성(RAG), AI 에이전트, 멀티모달 및 시맨틱 검색, 다양한 산업 분야의 추천 시스템 등 최신 AI 애플리케이션의 핵심 인프라로 자리 잡았습니다. 올바른 벡터 데이터베이스를 선택하는 것은 이러한 애플리케이션의 성능, 확장성, 비용, 안정성에 직접적인 영향을 미칠 수 있습니다.
이 Chroma와 Pinecone 비교는 실제 프로덕션 워크로드를 위해 벡터 데이터베이스를 평가하는 엔지니어와 기술 팀을 위해 작성되었습니다. mainDb}}와 Pinecone는 모두 기본적인 벡터 검색 기능을 지원하지만 아키텍처, 확장성, 성능, 안정성 및 기타 여러 영역에서 큰 차이가 있습니다. 이러한 차이는 초기 실험에서는 미묘한 차이를 보이지만 데이터 양이 증가하고 워크로드가 다양해지며 시스템이 프로토타입에서 프로덕션으로 이동함에 따라 점점 더 중요해집니다.
이 가이드의 목표는 단순히 기능을 나열하는 것이 아니라, 저희 제품(Milvus / Zilliz Cloud)이 최종 선택이 아니더라도 특정 사용 사례, 제약 조건 및 성장 단계에 더 적합한 시스템을 결정하는 데 도움을 드리기 위한 것입니다.
{mainDb}} 대 Pinecone 한눈에 보기
네. 목적에 맞게 구축된 벡터 데이터베이스
네. 목적에 맞게 구축된 벡터 데이터베이스
Apache 라이선스 2.0
독점 라이선스
28,429
N/A
임베디드
클라우드
Chroma는 신속한 프로토타이핑과 AI 워크플로에 최적화된 경량 오픈 소스 벡터 데이터베이스입니다. 임베디드 우선 아키텍처는 로컬 환경으로의 통합을 단순화하여, 검색 증강 생성(RAG) 및 머신 러닝 파이프라인을 다루는 개발자에게 매끄러운 경험을 제공합니다. Chroma는 빠르고 반복적인 개발과 연구 중심 AI 프로젝트에 완벽합니다.
Pinecone은 고성능 벡터 검색 및 검색을 위해 설계된 완전 관리형 벡터 데이터베이스 서비스입니다. 확장성에 특화되어 있으며, 방대한 양의 벡터에 대해 실시간, 저지연 유사도 검색을 가능하게 합니다. Pinecone은 머신 러닝 워크플로와의 통합 및 자동 인덱싱 최적화를 통해 추천 시스템 및 의미론적 검색과 같은 애플리케이션에 이상적입니다.
기간}} 및 {{기간B}} 벤치마킹하기 데이터 세트 사용
성능에 대한 공급업체의 말을 믿지 말고 직접 테스트해 보세요.
VectorDBBench는 공정하고 재현 가능한 조건에서 벡터 데이터베이스를 비교하기 위해 특별히 제작된 오픈 소스 벤치마킹 도구입니다. 이 도구를 사용하면 여러 시스템에서 동일한 워크로드를 사용하거나 자체 데이터 세트를 사용하여 지연 시간, 처리량, 리콜, 인덱싱 속도, 확장 동작 등 실제 성능을 측정할 수 있습니다.
이를 통해 마케팅 자료뿐만 아니라 Chroma와 Pinecone가 실제로 어떻게 작동하는지 쉽게 확인할 수 있습니다. 모든 벤치마크를 자체 환경에서 로컬로 재현할 수 있으므로 애플리케이션에 중요한 결과를 검증할 수 있습니다.
주요 벡터 DB 성능을 빠르게 살펴보려면 VectorDBBench 리더보드를 확인하세요.
10,000개 이상의 엔터프라이즈 팀이 Milvus 및 Zilliz Cloud로 전환하는 이유
대부분의 벡터 데이터베이스는 데모나 소규모 배포에서는 괜찮아 보이지만, 데이터 세트가 증가하고 임베딩이 자주 새로고침되며 실제 트래픽에서도 지연 시간이 안정적으로 유지되어야 하는 프로덕션 환경에서는 그 차이가 드러납니다. 바로 이러한 이유로 팀들은 Milvus와 Zilliz Cloud (관리형 Milvus 서비스)를 선택합니다.
Milvus는 전 세계 10,000개 이상의 기업 팀에서 사용하는 오픈 소스 고성능 벡터 데이터베이스로, {{스타}}+ GitHub 별을 받은 대규모 오픈 소스 커뮤니티에서 신뢰하고 있습니다. 수천만에서 수백억 개의 벡터, 빈번한 삽입과 삭제, 하이브리드 검색(벡터+키워드+메타데이터+재랭크)을 혼란스러운 재색인이나 취약한 튜닝 없이 처리합니다. 데이터 볼륨, 쿼리 패턴, 모델 임베딩이 진화함에 따라 성능을 예측 가능하게 유지합니다. 이것이 바로 불안정성이 즉시 가시화되는 워크로드인 엔터프라이즈 RAG, AI 에이전트, 시맨틱 및 멀티모달 검색, 추천 시스템에 Milvus가 널리 배포되는 이유입니다.
Zilliz Cloud는 관리형 서비스와 동일한 Milvus 아키텍처를 제공하며, 고급 벡터 엔진(Cardinal)을 통해 더 높은 성능과 탄력적인 확장, 고가용성, 엔터프라이즈급 보안 및 규정 준수, 글로벌 배포를 제공합니다. 팀은 데이터베이스를 운영하거나 관리할 필요 없이 프로덕션에 바로 사용할 수 있는 안정성을 확보할 수 있습니다.
- 밀버스 및 질리즈 클라우드와 다른 벡터 데이터베이스를 비교하세요.
- 밀버스 또는 질리즈 클라우드를 직접 벤치마킹하기 위해 벡터DB벤치 사용

We believe AI agents will become a fundamental interface for how people work, learn, and make decisions, and that only happens if those systems can access real-world information with speed, precision, and trust. That’s what we’re building at Exa. Aside from web search, Exa also operates entity search, and Zilliz Cloud has been an important part of that journey, giving us the retrieval performance and operational simplicity we need to scale our entity search product quickly and confidently."
Jeffrey Wang
Co-founder of Exa

With Zilliz Cloud, we moved from operating at our limits to building with confidence. It gave us the scale, performance, and flexibility to protect music rights in real time—something we couldn’t achieve with traditional systems."
George Kastrinakis
Director of Data Science and AI Services at Orfium

With Zilliz Cloud, we've achieved query latencies as low as 5-10ms across our million-vector database. This represents performance that's twice as fast as our previous solution, which directly translates to more responsive chatbots for our customers."
Nguyễn Ngọc Hải Đăng_ Nguyễn Nhật Khoa
AI Engineer at CX Genie

Milvus has done an extraordinary job in revolutionizing Likee's video deduplication system, which significantly fueled the growth of BIGO's short-video business."
Xinyang Guo
Software Engineer at BIGO

Milvus has dramatically facilitated the MMU team in building various business systems and effectively supports our rapid business growth. Thanks to the Milvus team for developing such a fantastic vector database with stable vector search capabilities and rich functionalities."
The MMU team
Shopee

Our search system has been much more intelligent, stable, and reliable using Milvus. "
Rahul Yadav
Software Engineer at Tokopedia

We plan to expand the use of Milvus in different fields like content moderation and restriction and customized video services. BIGO and Milvus working together will benefit both businesses and I look forward to Milvus and its community to keep growing and prosper."
Xinyang Guo
Software Engineer at BIGO

I was benchmarking different vector databases, and Milvus was at the top among all the popular options on the market."
Saumil Patel
the Senior Data Scientist from Ivy.ai

We've gained so much from the Milvus community that we decided to contribute features like "hot reload," which have also benefited our internal operations."
Dennis Zhao
AI Infrastructure Lead at SmartNews

Milvus delivers unparalleled performance and flexibility, integrating seamlessly with leading vector index libraries like Faiss. Its intuitive API and robust solutions for high availability make it an indispensable tool in our APK security efforts."
Wei Huang
Senior Research Engineer

Milvus consistently outperformed Weaviate, emphasizing the indexing time for scenario S9, closely resembling the FARFETCH product catalog's dimensions."
PEDRO MOREIRA COSTA
Applied Scientist

When you're engineering a solution as complex as ours, you're not just ticking boxes—you're looking for that sweet spot where all your must-haves intersect. Think of it as an eight-circle Venn diagram; while many databases met one or two of our criteria, Milvus was the only one sitting right at the intersection of all eight. It checked every single box for us—something no other solution managed to do."
Jack Fischer
Co-founder & CTO at Credal AI
'wellSpent' is an intuitive mobile application designed to simplify and visualize spending habits. At its core, wellSpent displays a dynamic pie chart that offers a snapshot of expenditures. Users can access detailed transaction lists and explore predictive features like the travel planner, student debt planner, and other expense planners, all designed to optimize their financial journey. Built on Flutter and powered by Firebase, wellSpent stands as a testament to ensuring every penny is, indeed, well spent."
The wellSpent Team
at HackNC

Milvus has not only streamlined but also remarkably expedited the retrieval of millions of semantic vectors, showcasing a nearly tenfold improvement compared to our previous experience with other vector similarity search engines."
Tingting Wang
NLP Algorithm Engineer at Sohu

Milvus searches tens of millions of vectors in milliseconds, providing optimal performance while keeping development costs low and resource consumption minimal. "
Yu Fang
AI scientist at Mozat
Creating a user-centric interface that's both intuitive and efficient tops our list. We're also immensely proud of the predictive features – like creating comprehensive tools that will tell you how you can save money even after a transaction, along with other tools like customer trip planner already built using your spending transactions and trends. Using vector databases was our first time, and we are very proud of our outcome."
The wellSpent Team
at HackNC

When it comes to vector databases, Milvus has impressed us with its performance and scalability, meeting our stringent criteria for handling our AI use case backlog."
Toby Yu
Team Lead of AI, ML, and Platform Solutions

Milvus-powered vector search has been running steadily in our recommendation systems, providing high performance and allowing us more flexibility in selecting models and algorithms."
VIPSHOP Search Service Team
VIPSHOP

During batch ingestion tests, Milvus demonstrated that it could complete an entire collection dump into the database at speeds 5-10 times faster than competitors."
Toby Yu
Team Lead of AI, ML, and Platform Solutions

Zilliz Cloud stood out for us with its comprehensive range of index types, automatically optimizing for the perfect balance between recall and performance. Its robust security and private networking features, combined with the advantage of a fully-managed database, have significantly lightened our operational load, enabling us to concentrate on driving innovation rather than managing backend complexities. "
Ben Kramer
Co-founder & CTO of Monterey AI

When we conducted our first test run (on Zilliz Cloud), the performance improvement was astonishing. Our search time went from eight seconds down to sub one second. We were nearly falling off our chairs with amazement at the speed."
Alex Alexander
Co-founder & CEO of Picdmo Inc.

You can think of LlamaIndex as a black box around your data and LLM."
Jerry Liu
Co-founder and CEO of LlamaIndex

Zilliz Cloud perfectly aligns with MindStudio's vision. Its high-performance, secure platform and multi-tenancy simplifies data management and unlocks unprecedented productivity and innovation for our users’ AI applications. "
Sean Thielen
CTO @ MindStudio

As our business has expanded, the demands on our vector database have increased. We need a solution that minimizes operational costs, offers elastic scaling capabilities to manage vast amounts of vector data and unexpected traffic surges, provides faster vector search speeds, and ensures a high service level agreement (SLA)."
Chenhui Li
Tech Lead at Shulex

I appreciated using the open standard evaluation benchmarks for machine learning in general; this is also true for vector databases. The ones that Zilliz often publicizes have been beneficial, and the fact that they are open is significant. "
Sam Butler
Director of Machine Learning @ Dopple.AI

I can set up Milvus for scale in an hour, not overthinking it, and have a clear architecture path forward to grow my use case much larger without having to redo everything."
Zen Yui
Co-founder & CTO at Troop

Reliability, scalability, and performance are great. The fact that we can outsource all this kind of administration management and don't have to worry about servers breaking helps us put resources into product development and innovation, which truly differentiates our business. "
Michal Oglodek
CTO of Ivy.ai

Since transitioning from the open-source Milvus vector database to the fully managed Zilliz Cloud, we’ve experienced significant improvements in business performance. We’ve achieved lower operational costs, increased search speed, a more flexible system architecture, and a more stable user experience. Zilliz Cloud also provides expert support to resolve issues quickly and effectively. Overall, Zilliz Cloud has given us greater convenience and a competitive edge, and we are very pleased and optimistic about this change."
Shengyi Pan
CTO of Shulex

Even with numerous concurrent searches, we didn’t notice any slowdown in search speed with Milvus."
Mr. Zhang
BOSCH’s principal software engineer

We need an indexing technology that can handle complex search requirements and generative models, reduce training costs, improve update efficiency, and adapt flexibly to evolving data and query needs."
Mr. Zhang
BOSCH’s principal software engineer

When we identify a need for specific data, we can often find the required data in our database the same day using text or image search with Milvus. This greatly improves our data processing efficiency and has a positive effect on our business operations."
Mr. Zhang
BOSCH’s principal software engineer

I really like how Milvus' hybrid search allowed me to blend semantic and keyword search, which is crucial in a domain as technical and complex as EU policy."
Alessandro Saccoia
Co-Founder @ Veridien.ai

Milvus is renowned as one of the most advanced vector database platforms for AI applications. Rakuten Symphony engineers identified the Milvus Vector Database - an open source database which is horizontally scalable - as their platform of choice for LLM use and developing and maintaining AI applications."
Rakuten Symphony Engineering Team

Zilliz Cloud gave us the speed and scale we needed to power visual search at Leboncoin, meeting our sub-200ms latency target and making product discovery seamless for millions of users."
Yann Lemonnier
ML Engineer

Zilliz is a very integral part of our workflow. If we just swapped Zilliz Cloud with something else, the kind of loops that we get might not make sense, which means the end composition might not sound very nice or might not be very accurate to the text prompt you had given."
Sangarshanan Veera
Senior Software Engineer at Beatoven.ai

The competitive advantage for meeting transcription products in the future will come from personalization – providing tailored insights and recommendations based on each user's specific meeting data and usage patterns. This is why performant vector search is imperative."
Dai Tongjie
CTO

Zilliz Cloud enabled us to scale search while dramatically reducing our costs. Its hybrid search capabilities helped us achieve higher relevance for both text and image queries."
Celine Lightfoot
CTO of Beni

Milvus has become the only technical choice for vector databases in our upcoming business expansion across the life sciences industry."
Xiaoming Zhang
VP of Technology at Biomap

By migrating to Zilliz Cloud, we've reduced our vector database infrastructure costs by approximately 70% compared to our self-hosted setup. This allows us to reinvest those savings into improving our core AI capabilities rather than managing database infrastructure."
Nguyễn Ngọc Hải Đăng_ Nguyễn Nhật Khoa
AI Engineer at CX Genie

Thanks to the well-designed Python SDK and REST API, we were able to integrate Zilliz Cloud with our LangChain-based architecture in a matter of days. The schema-based collections perfectly aligned with how we structure our data, making the transition nearly seamless."
Nguyễn Ngọc Hải Đăng_ Nguyễn Nhật Khoa
AI Engineer at CX Genie

When it comes to vector databases, Milvus has impressed us with its performance and scalability, meeting our stringent criteria for handling our AI use case backlog."
Team Lead
AI, ML, and Platform Solutions

We were facing latency issues and scaling challenges with our previous solutions. When traffic spiked with millions of customer requests, our self-hosted infrastructure couldn't keep up, and document retrieval was taking too long. "
Sasidhar Janaki
Senior Software Engineer at Rexera

If I were to choose again, I would still choose Milvus at this point. The scalability, documentation quality, and continuous innovation make it the right foundation for our plagiarism detection platform."
Teis Petersen
Engineering Team Lead, UNIwise

Milvus’s real advantage was how easy and friendly it made things to understand and execute."
Hanlian Lyu
a Product Owner and BI Expert at Volvo Cars

We have achieved a true consciousness of data... bringing the data together in the way that an individual doing their job needs to see it."
Nathan Morris
Co-Founder of Filevine

We don’t have any concern related to database operations anymore after adopting Zilliz Cloud. Before, we had a lot of troubles—memory suddenly wasn’t enough, we needed to scale up, we didn’t have auto-scaling. All of those things caused a lot of problems. The most obvious benefits for us are the management and the data ingestion. That’s very attractive."
Lixiang Li
the engineering team lead at JERA

After integrating Zilliz Cloud vector database service, our system performance has significantly improved. During implementation, the Zilliz Cloud expert team provided excellent support and assistance, giving our EviMed platform a strong competitive advantage in the industry."
Dr. Zeyuan Wang
CEO of EviMed

What we wanted was to push intelligence to the user before they even asked. Milvus is what made that viable."
Rob Williams
Co-Founder and CTO at Read AI

During batch ingestion tests, Milvus demonstrated that it could complete an entire collection dump into the database at speeds 5–10 times faster than competitors."
Team Lead
AI, ML, and Platform Solutions

Working with Zilliz Cloud has been transformative for our AI agent architecture. The hybrid search capability alone delivered a 40% accuracy improvement, and the scalability means we never worry about performance, even during the highest traffic periods. It's been essential to our continued growth."
Sasidhar Janaki
Senior Software Engineer at Rexera

As a client of a law firm, at some point clients will demand that their law firms use AI because it's going to make them a better attorney to have the curation done versus some of the practices now where they just don't have complete info."
Brianna Connelly
AI Team Lead at Filevine

We have the full end-to-end data... law as a timeline. We have the incident, the start, everything that's happening, and the conclusion of the case. There's an enormous amount of power in having that all within the work system."
Brianna Connelly
AI Team Lead at Filevine

Milvus scaled really well with batches ranging from 1,000 to millions of records. That really impressed me."
Todor Voynikov
Data Engineer at TrialHub

We've got millions of monthly active users and all of the underlying data when we're trying to go find related conversations, find updates to an action item, find referenced documents...Milvus serves as the central repository and powers our information retrieval among billions of records."
Rob Williams
Co-Founder and CTO at Read AI

Choosing Zilliz Cloud was one of our best early decisions. It enabled us to build the product we envisioned rather than the product our infrastructure limitations would allow. In AI applications, that difference often determines success or failure."
Ethan Zheng
Co-Founder & CTO of Jobright.ai

The sub-10 millisecond latency for queries is quite the benchmark in the industry for vector databases. Combined with the cost savings and reliability, Zilliz Cloud has become a strategic enabler for our broader vision of transforming conversational AI across industries."
Rachit Jindal
Senior AI Engineer at Verbaflo.ai

Our strongest competitive moat isn't our AI models—it's our ability to deploy those models at scale with an exceptional user experience. Zilliz Cloud gave us that capability."
Ethan Zheng
Co-Founder & CTO of Jobright.ai

It has saved us cost by at least 25 to 30% on what we were earlier incurring on the vector database, with potential savings reaching up to 40-50% during peak traffic periods. "
Rachit Jindal
Senior AI Engineer at Verbaflo.ai

We were running a multilingual RAG system at scale, indexing all of Wikipedia into tens of millions of high-dimensional vectors. Latency targets were tight. We needed a system that could handle real-time retrieval over millions of knowledge vectors without breaking under load. Zilliz gave us that. It freed up engineering cycles and let us focus on improving reasoning on the model side, not managing infrastructure. That reliability mattered because we were operating at 3,500+ dimensions per vector, across a fast-growing corpus, with sub-300ms latency requirements in production. "
Dr. Pratyush Kumar
Co-Founder of Sarvam

We tested every mainstream vector database, and Milvus delivered the best overall performance."
Su Wei
CTO of Shining

Milvus has become the bridge that connects our multi-modal foundation models with real-world applications. It's not just about performance – it's about enabling entirely new approaches to biological discovery that were previously impossible."
Xiaoming Zhang
VP of Technology at Biomap

Milvus transformed our ability to detect semantic plagiarism at scale. We can now process variable workloads ranging from 10 to 10,000+ documents daily while maintaining cost-effectiveness, which would have been impossible with traditional solutions."
Teis Petersen
Engineering Team Lead, UNIwise

It was the best thing to offer—performance-wise, cost-wise, and ease-of-use-wise."
George Kastrinakis
Director of Data Science and AI Services at Orfium

From a system stability perspective, it's really quite good. Over the year-plus that we've been using it—from version 2.4.3 to now 2.5.8—I honestly haven't encountered many issues. The system can just run there for months, with new data being written every day and users searching every day, without any problems. I don't need to worry about it."
Jianping Wang
NVIDIA engineer

Whenever we demonstrate our solution with Milvus, we’re effectively crushing the cloud vendor solution’s performance. It’s a great benchmark because most enterprise users already know the vendor solution, so the comparison is immediate."
Hanlian Lyu
a Product Owner and BI Expert at Volvo Cars

Among Milvus's rich vector search capabilities, features such as support for multiple ANN index types, multi-vector support, and hybrid search have proven especially valuable in real-world service environments. As Milvus continues to evolve with new capabilities, NAVER expects even broader applications across its services."
NAVER Engineering Team

From a system stability perspective, it's really quite good. Over the year-plus that we've been using it—from version 2.4.3 to now 2.5.8—I honestly haven't encountered many issues. The system can just run there for months, with new data being written every day and users searching every day, without any problems. I don't need to worry about it."
Team Lead
Senior Infrastructure Engineer

From a performance standpoint, Zilliz Cloud's retrieval speed far exceeds our existing system. We achieved approximately 70% reduction in retrieval latency, which translates to a 4-5x improvement in overall problem-solving time when we successfully match original questions. Whether measured by speed, cost, or overall value, Zilliz Cloud perfectly met our expectations."
Dr. Nick Yuan
CTO

The migration was incredibly smooth. Using the built-in tools, we were able to import our data from Pinecone with essentially one click. The technical support has also been excellent — our questions get resolved almost instantly, and the documentation, demos, and examples are thorough and easy to work with."
Technical Team

The fully managed version really saves both my team and the developers a lot of time from having to deal with a lot of problems, a lot of self-managing of the cluster. And regarding latency — we went from an initial 100 milliseconds to now sub 30 to 50 milliseconds, a roughly 50% reduction while being able to maintain production throughput."
Su-Meng Yong
Engineering Team Lead

The biggest immediate impact for the company would be the cost side of things. We were able to bring the estimated cost of our search cluster from above five digits a month to a significantly lower figure. That would be the biggest improvement for our company."
Su-Meng Yong
Engineering Team Lead

We believe AI is becoming a meaningful support layer for physicians, but the experience has to feel trustworthy, reliable, and seamless. Building that kind of product requires a strong foundation behind the scenes. Zilliz Cloud has helped us create that foundation as we continue to grow and serve hundreds of thousands of clinicians."
Jagath Kumar
Head of Performance Engineering at OpenEvidence

We believe AI agents will become a fundamental interface for how people work, learn, and make decisions, and that only happens if those systems can access real-world information with speed, precision, and trust. That’s what we’re building at Exa. Aside from web search, Exa also operates entity search, and Zilliz Cloud has been an important part of that journey, giving us the retrieval performance and operational simplicity we need to scale our entity search product quickly and confidently."
Jeffrey Wang
Co-founder of Exa

With Zilliz Cloud, we moved from operating at our limits to building with confidence. It gave us the scale, performance, and flexibility to protect music rights in real time—something we couldn’t achieve with traditional systems."
George Kastrinakis
Director of Data Science and AI Services at Orfium
Milvus/Zilliz로 마이그레이션하는 방법
밀버스나 질리즈 클라우드로 마이그레이션하는 방법은 간단합니다. 추출 및 로딩을 자동화하는 기본 제공 도구를 사용하여 Qdrant, Weaviate, Pinecone, Elasticsearch, OpenSearch, Amazon S3 Vectors, PostgreSQL 등으로부터 데이터를 가져올 수 있습니다.
프로덕션 워크로드의 경우, 실시간 데이터 동기화를 통해 다운타임 없는 마이그레이션을 지원합니다. 많은 팀이 전환 후 벡터 인프라 비용을 최대 50%까지 절감하는 동시에 더 빠른 성능과 예측 가능한 확장성을 확보했습니다.
지금 Milvus/Zilliz로 마이그레이션 시작하기
비정형 및 벡터 데이터를 마이그레이션할 준비가 되셨나요? Elasticsearch, Pinecone 또는 다른 데이터베이스에서 마이그레이션하든, Zilliz를 사용하면 쉽게 마이그레이션할 수 있습니다.


SOC 2 Type II
Security and organizational controls for cloud providers.

ISO/ICE 27001
Global standard for information security management systems.

GDPR
Privacy protections for EU and EEA data.

HIPAA
U.S privacy regulation safeguarding health information.
Zilliz가 어떻게 최고 수준의 보안 및 규정 준수 기준을 충족하는지 신뢰 센터에서 확인하세요.
Chroma와(과) 다른 데이터베이스 비교하기
The Definitive Guide to Choosing a Vector Database
Overwhelmed by all the options? Learn key features to look for & how to evaluate with your own data. Choose with confidence.










