Vector Database Market

Vector Database Market by Offering (Solutions and Services), Technology (NLP, Computer Vision, and Recommendation Systems), Vertical (Media & Entertainment, IT & ITeS, Healthcare & Life Sciences) and Region - Global Forecast to 2028

Report Code: TC 8828 Oct, 2023, by marketsandmarkets.com

[254 Pages Report] The global vector database market is expected to grow from USD 1.5 billion in 2023 to USD 4.3 billion by 2028 at a CAGR of 23.3% during the forecast period.

The growth of the vector database market is the growing demand of the media & entertainment and healthcare & life sciences industries. It has witnessed the fastest growth owing to the increasing adoption of AI, ML, NLP, and LLM technologies. The key reasons for adopting these technologies are that vector databases can support real-time applications, such as recommendation and search engines, more efficiently than traditional relational databases because vector databases can quickly identify similar data points within a dataset, even when the dataset is extensive.

Vector databases support recommendation engines on websites like Netflix, Amazon, and Spotify. These recommendation engines can quickly identify similar items to recommend to users based on their past behavior. Vector databases are used to power search engines like Google and Bing. These search engines can quickly identify documents relevant to a user’s query by searching for similar records in a vector database. Vector databases power NLP applications such as machine translation and chatbots . These applications can quickly identify similar phrases and documents, which are essential for translating languages and generating text. End users use vector databases to detect fraudulent transactions and other types of fraud. By storing data about past fraudulent transactions in a vector database, fraud detection systems can quickly identify new transactions similar to known ones. These are driving factors of the vector database market.

Vector Database Market Global Forecast To 2028

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Vector Database Market

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Drivers: Advancements in AI and ML

ML and AI are becoming integral to modern businesses. Vector databases are seamlessly integrated with machine learning frameworks, enabling real-time analytics, model training, and deployment. This integration is particularly valuable for AI-driven applications, including recommendation systems and predictive analytics. The rise of machine learning and artificial intelligence has led to an increased need for vector data, as vectors are fundamental to representing and processing data for tasks such as image recognition, natural language processing , recommendation systems, and more. Vector databases play a crucial role in ML by providing efficient storage, retrieval, and manipulation of high-dimensional vectors or embeddings. One of the primary functions of vector databases in machine learning is to perform similarity searches. ML models often need to find similar data points based on vector representations. For example, recommendation systems commonly find identical items or users based on their embeddings. Vector databases use indexing techniques and algorithms optimized for fast similarity search. In AI, data is often represented as vectors or embeddings, which capture essential features or characteristics of the data. These embeddings can represent various data types, such as images, text, audio, or structured data.

Restraint: Privacy and security of the data stored on databases

The privacy and security of databases have always been significant concerns in terms of accessibility and sensitivity of data for both users who fear the exposure of their data and hackers who like to break into the database systems. Many companies have confidential data with high levels of regulations, which requires a proper identity and access management solution. Despite organization-owned infrastructures, the threat of confidentiality still thrives. Moreover, the privacy of information and applications can be challenging for companies.

Security has been a significant threat to the data stored on the database; it also depends upon the encryption methods used and the data storage location. Migrating databases to the vector increases the customers’ expectations, such as authenticated user accessibility, proper life cycle management, data confidentiality, integrity, and data availability.

Loss of access control is one of the significant security threats for database users. While outsourcing sensitive data to vector providers, organizations lose control over their data, resulting in security risks. Although external threats are certainly a big concern, the majority of access control threats originate from the internal employees of the company as well as the service providers. Databases are stored at different locations and on servers. So, clients do not know where their data is stored. The companies are also concerned about the security of their data when third-party database service providers handle it. Therefore, the DBAs must ensure proper access management and monitoring procedures for databases to ensure the privacy and security of the data.

Opportunities: Increase demand for semantic search

Semantic search through a vector database involves using vector representations (embeddings) of data to perform search queries beyond keyword matching. It enables more contextually relevant and conceptually accurate search results by considering the semantic relationships between items or documents. Semantic search and vector databases are closely related, as vector databases play a crucial role in enabling efficient semantic search. Semantic search goes beyond traditional keyword-based search and focuses on understanding the meaning and context of the user’s query and the content searched. Semantic search can extend beyond text to include multi-modal data, such as combining text with images or audio. The vector database can store and index embeddings for different modalities, enabling cross-modal search. The vector database can be designed for real-time or near-real-time tracking, allowing users to receive immediate results as they enter their queries. Semantic search can support faceted search, where users can refine their questions based on attributes or facets related to the search results, providing a more interactive and exploratory search experience.

Challenges: Lack of technical expertise

Vector database tools and services provide a conclusive view of large data volumes in real-time. The integration of solutions offers a larger picture to decision-makers and provides actionable insights to boost the overall performance of the systems. Vector database solutions can be customized to enable integration with tools and services, depending on the level and nature of the analysis. Today’s business and user requirements demand applications that connect more and more of the world’s data and expect high performance and reliability levels. Vector database engines require a different approach to application development, a custom storage model, and special query tools.

Additionally, large enterprises and SMEs need professional services to customize a particular product’s capability to meet the customer’s requirement. Since the vector database concept is growing, the availability of skilled labor is limited, which can restrain market growth. Companies should invest significantly in training and certifications for their workforce to effectively implement the insights received from large data volumes. Additionally, as retail organizations scale up their performance, integrating data from various industry verticals across geometric locations becomes more necessary. The knowledge constraints and inadequate workforce skills may limit end users from adopting vector database software and associated services.

Ecosystem

Vector Database Market

Based on the offering, the consulting services under the professional services segment significantly contribute the highest CAGR to the vector database market during the forecast period.

Consulting services deal with complex inquiries and have numerous clients that demand constant changes in their solutions and service offerings. These services focus more on offering superior customer service. The business consulting service focuses on user pain points, goals, and timelines while considering the technology and human resource bandwidths. Service providers offer consulting services to help clients implement new methodologies for recognizing additional revenue streams. Consulting services help in defining deployable use cases for achieving better business performance. Consulting services help businesses and individuals stay updated with the latest technologies and techniques in vector databases and support developing and implementing custom solutions. Consulting services, on the other hand, offer personalized advice and guidance on specific projects and applications, including data analysis, model selection, and deployment strategies.

Leading vendors in the training and consulting space for vector databases include Google, Microsoft, and Amazon Web Services. These companies offer various services and resources for businesses of all sizes, from online courses and workshops to customized consulting engagements. In addition, an increasing number of specialized firms and independent consultants offer niche expertise in specific areas of vector databases, such as image or video generation, voice recognition, or language translation.

Based on the vertical, the IT & ITeS segment holds a significant share of the vector database market during the forecast period.

Vector databases are playing a significant role in the IT industry. With the exponential growth in data and computing power, vector databases are emerging as a tool for creating novel and innovative solutions to complex problems. IT and ITeS companies are increasingly adopting vector databases to manage and analyze AI and machine learning-related data, including embeddings and feature vectors. IT and ITeS companies use vector databases for fraud detection, anomaly detection, and cybersecurity . These industries can identify unusual patterns and potential security threats by storing and analyzing vectors representing user behavior or network traffic. NLP and search capabilities are essential in customer support and content management industries. Vector databases help keep and query text embeddings efficiently, making building advanced search and chatbot systems easier.

Vector Database Market by Region

Asia Pacific to grow at the highest CAGR during the forecast period.

The adoption of advanced technologies, such as IoT and AI, and the generation of a vast amount of data across verticals will drive the growth of the vector database market in the Asia Pacific. The increasing investments from private sectors, robust government support, and availability of a vast population drive the growth of new and emerging technologies in the Asia Pacific. Many countries in the Asia-Pacific region are embracing AI and machine learning technologies across industries, including finance, healthcare, e-commerce, and manufacturing. Vector databases are essential for storing and querying high-dimensional data generated by AI and ML models. E-commerce is booming in APAC, and vector databases are crucial in personalization, recommendation systems, and fraud detection. Retailers are using these databases to provide a customized shopping experience for their customers. Some of the key countries driving the growth of the vector database market in the Asia Pacific include China, Japan, India, and South Korea. These countries have a large and growing IT sector and invest heavily in AI and machine learning research. The vector database market in the Asia Pacific is still in its early stages of development. Still, it will increase in the coming years due to the increasing adoption of machine learning and AI in the region and the growing demand for real-time applications and cloud computing.

Key Players

Microsoft (US), Elastic (US), Alibaba Cloud (China), MongoDB (US), Redis (US), SingleStore (US), Zilliz (US), Pinecone (US), Google (US), AWS (US), Milvus (US), Weaviate (Netherlands), and Qdrant (Berlin) Datastax (US), KX (US), GSI Technology (US), Clarifai (US), Kinetica (US), Rockset (US), Activeloop (US), OpenSearch (US), Vespa (Norway), Marqo AI (Australia), and Clickhouse (US) are the key players in the vector database market.

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Scope of the Report

Report Metric

Details

Market size available for years

2019–2028

Base year considered

2022

Forecast period

2023–2028

Forecast units

Million/Billion (USD)

Segments Covered

Offering, Technology, Vertical, and region

Geographies covered

North America, Europe, Asia Pacific, and Rest of the World

Companies covered

Microsoft (US), Elastic (US), Alibaba Cloud (China), MongoDB (US), Redis (US), SingleStore (US), Zilliz (US), Pinecone (US), Google (US), AWS (US), Milvus (US), Weaviate (Netherlands), and Qdrant (Berlin) Datastax (US), KX (US), GSI Technology (US), Clarifai (US), Kinetica (US), Rockset (US), Activeloop (US), OpenSearch (US), Vespa (Norway), Marqo AI (Australia), and Clickhouse (US).

This research report categorizes the Vector Database market based on offering, technology, verticals, and regions.

Based on the Offering, the Vector Database market segments are as follows:
  • Solution
    • Vector Generation
    • Vector Search
    • Storage and Retrieval Vectors
  • Service
    • Professional Services
      • Consulting
      • Deployment & Integration
      • Training, Support, and Maintenance
    • Managed Services
Based on technology, the Vector Database market segments are as follows:
  • Natural Language Processing
  • Computer Vision
  • Recommendation Systems
Based on vertical, the Vector Database market segments are as follows:
  • BFSI
  • Retail & eCommerce
  • Healthcare & Life Sciences
  • IT & ITeS
  • Media & Entertainment
  • Manufacturing
  • Other Verticals
Based on regions, the Vector Database market segments are as follows:
  • North America
    • US
    • Canada
  • Europe
    • UK
    • Germany
    • France
    • Italy
    • Rest of Europe
  • Asia Pacific
    • China
    • Japan
    • ANZ
    • Rest of Asia Pacific
  • Rest of the World

Recent Developments

  • In February 2023, Microsoft introduced new Microsoft Dynamics 365 Copilot artificial intelligence (AI) capabilities to help sales teams. Copilot AI hooks into Microsoft 365 Graph data and Customer Relationship Management (CRM) information to generate product descriptions that can be edited and uploaded to sales sites. It also suggests sales-message replies to customer e-mails.
  • In March 2023, Alibaba Cloud announced a collaboration with its long-term partner Dubai Holding in its Dubai-based data center to upgrade the facility with cutting-edge cloud infrastructure and a broader range of products and services in analytics, databases, industry solutions, and AI services to provide customers with the best possible digital solutions throughout their digitalization journey.
  • In November 2022, AWS and Redia announced a multi-year strategic collaboration agreement (SCA). This agreement, which builds on the companies’ previous collaboration, will make it easier and faster for customers to combine Redis Enterprise Cloud’s real-time data processing capabilities with the global reach of AWS services.

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TABLE OF CONTENTS
 
1 INTRODUCTION (Page No. - 25)
    1.1 STUDY OBJECTIVES 
    1.2 MARKET DEFINITION 
           1.2.1 INCLUSIONS AND EXCLUSIONS
    1.3 MARKET SCOPE 
           1.3.1 MARKET SEGMENTATION
           1.3.2 REGIONS COVERED
    1.4 YEARS CONSIDERED 
    1.5 CURRENCY CONSIDERED 
           TABLE 1 USD EXCHANGE RATES, 2018–2022
    1.6 STAKEHOLDERS 
    1.7 RECESSION IMPACT 
 
2 RESEARCH METHODOLOGY (Page No. - 30)
    2.1 RESEARCH DATA 
           FIGURE 1 VECTOR DATABASE MARKET: RESEARCH DESIGN
           2.1.1 SECONDARY DATA
           2.1.2 PRIMARY DATA
                    2.1.2.1 Breakup of primary profiles
                    2.1.2.2 Key insights from industry experts
    2.2 DATA TRIANGULATION 
           FIGURE 2 MARKET: DATA TRIANGULATION
    2.3 MARKET SIZE ESTIMATION 
           FIGURE 3 MARKET: TOP-DOWN AND BOTTOM-UP APPROACHES
           2.3.1 TOP-DOWN APPROACH
                    FIGURE 4 MARKET SIZE ESTIMATION METHODOLOGY: TOP-DOWN APPROACH
           2.3.2 BOTTOM-UP APPROACH
                    FIGURE 5 MARKET SIZE ESTIMATION METHODOLOGY: BOTTOM-UP APPROACH
                    FIGURE 6 VECTOR DATABASE MARKET: RESEARCH FLOW
           2.3.3 MARKET ESTIMATION APPROACHES
                    FIGURE 7 MARKET SIZE ESTIMATION METHODOLOGY (SUPPLY SIDE): ILLUSTRATION OF VENDOR REVENUE ESTIMATION
                    FIGURE 8 MARKET SIZE ESTIMATION METHODOLOGY: SUPPLY-SIDE ANALYSIS
                    FIGURE 9 BOTTOM-UP APPROACH FROM SUPPLY SIDE: COLLECTIVE REVENUE OF VENDORS
                    FIGURE 10 DEMAND-SIDE APPROACH: REVENUE GENERATED FROM DIFFERENT VERTICALS
                    FIGURE 11 DEMAND-SIDE APPROACH: MARKET
    2.4 MARKET FORECAST 
           TABLE 2 FACTOR ANALYSIS
    2.5 IMPACT OF RECESSION ON GLOBAL MARKET 
    2.6 RESEARCH ASSUMPTIONS 
    2.7 LIMITATIONS AND RISK ASSESSMENT 
 
3 EXECUTIVE SUMMARY (Page No. - 46)
    TABLE 3 VECTOR DATABASE MARKET SIZE AND GROWTH, 2019–2022 (USD MILLION, Y-O-Y %) 
    TABLE 4 MARKET SIZE AND GROWTH, 2023–2028 (USD MILLION, Y-O-Y %) 
    FIGURE 12 GLOBAL MARKET TO WITNESS SIGNIFICANT GROWTH 
    FIGURE 13 NORTH AMERICA TO ACCOUNT FOR LARGEST SHARE IN 2023 
    FIGURE 14 FASTEST-GROWING SEGMENTS OF MARKET 
 
4 PREMIUM INSIGHTS (Page No. - 50)
    4.1 ATTRACTIVE OPPORTUNITIES FOR COMPANIES IN VECTOR DATABASE MARKET 
           FIGURE 15 MACHINE LEARNING AND ARTIFICIAL INTELLIGENCE TO DRIVE GROWTH OF MARKET
    4.2 MARKET, BY OFFERING, 2023 VS. 2028 
           FIGURE 16 SOLUTIONS SEGMENT TO HOLD LARGER MARKET SHARE IN 2023
           4.2.1 MARKET, BY SOLUTION, 2023 VS. 2028
                    FIGURE 17 VECTOR SEARCH SEGMENT TO HOLD LARGEST MARKET SHARE IN 2023
           4.2.2 MARKET, BY SERVICE, 2023 VS. 2028
                    FIGURE 18 PROFESSIONAL SERVICES SEGMENT TO HOLD LARGER MARKET SHARE IN 2023
    4.3 MARKET, BY PROFESSIONAL SERVICE, 2023 VS. 2028 
           FIGURE 19 DEPLOYMENT & INTEGRATION SEGMENT TO HOLD LARGEST MARKET SHARE IN 2023
    4.4 MARKET, BY TECHNOLOGY, 2023 VS. 2028 
           FIGURE 20 NLP SEGMENT TO HOLD LARGEST MARKET SHARE IN 2023
    4.5 MARKET, BY VERTICAL, 2023 VS. 2028 
           FIGURE 21 MEDIA & ENTERTAINMENT VERTICAL TO HOLD LARGEST MARKET SHARE IN 2023
    4.6 VECTOR DATABASE MARKET: REGIONAL SCENARIO, 2023–2028 
           FIGURE 22 ASIA PACIFIC TO EMERGE AS BEST MARKET FOR INVESTMENTS IN NEXT FIVE YEARS
 
5 MARKET OVERVIEW AND INDUSTRY TRENDS (Page No. - 54)
    5.1 INTRODUCTION 
    5.2 MARKET DYNAMICS 
           FIGURE 23 MARKET DYNAMICS: VECTOR DATABASE MARKET
           5.2.1 DRIVERS
                    5.2.1.1 Advancements in AI and ML
                    5.2.1.2 Increasing usage of large language models
                    5.2.1.3 Growing demand for solutions to process low-latency queries
                    5.2.1.4 Increasing demand for automating repetitive database management processes
                    5.2.1.5 Huge investments in vector database
                               FIGURE 24 VECTOR DATABASE INVESTMENTS BY COMPANIES IN 2022–2023 (USD MILLION)
           5.2.2 RESTRAINTS
                    5.2.2.1 Privacy and security of data stored on databases
           5.2.3 OPPORTUNITIES
                    5.2.3.1 Rising demand for real-time analytics
                    5.2.3.2 Rising demand for semantic search
                    5.2.3.3 Data complexity and diversity
           5.2.4 CHALLENGES
                    5.2.4.1 Lack of technical expertise
                    5.2.4.2 Need for strict adherence to regulatory and compliance policies
    5.3 CASE STUDY ANALYSIS 
           5.3.1 CASE STUDY 1: MONGODB ATLAS HELPED TO MANAGE DATABASE PROPERLY
           5.3.2 CASE STUDY 2: CHIPPER CASH DECREASED FRAUDULENT ACTIVITIES BY USING PINECONE
           5.3.3 CASE STUDY 3: SMARTNEWS HANDLED LARGE VECTOR DATA BY USING MILVUS
           5.3.4 CASE STUDY 4: ACI SAVED MILLIONS OF DOLLARS OF CUSTOMERS BY USING DATASTAX
           5.3.5 CASE STUDY 5: BEIERSDORF HELPED SUMMARIZE DOCUMENTS BY USING AZURE COGNITIVE SEARCH
    5.4 PORTER’S FIVE FORCES ANALYSIS 
           FIGURE 25 VECTOR DATABASE MARKET: PORTER’S FIVE FORCES ANALYSIS
           TABLE 5 IMPACT OF PORTER’S FIVE FORCES ON MARKET
           5.4.1 THREAT OF NEW ENTRANTS
           5.4.2 THREAT OF SUBSTITUTES
           5.4.3 BARGAINING POWER OF SUPPLIERS
           5.4.4 BARGAINING POWER OF BUYERS
           5.4.5 INTENSITY OF COMPETITIVE RIVALRY
    5.5 PRICING ANALYSIS 
           5.5.1 AVERAGE SELLING PRICE (ASP) TREND OF KEY PLAYERS, BY SOLUTION
                    FIGURE 26 AVERAGE SELLING PRICE TREND OF KEY PLAYERS, BY SOLUTION (USD MILLION/MONTH)
           5.5.2 INDICATIVE PRICING ANALYSIS OF VECTOR DATABASE SOLUTIONS
                    TABLE 6 INDICATIVE PRICING ANALYSIS OF VECTOR DATABASE SOLUTIONS
    5.6 PATENT ANALYSIS 
           FIGURE 27 NUMBER OF PATENTS PUBLISHED, 2012–2022
           FIGURE 28 TOP FIVE PATENT OWNERS (GLOBAL)
           TABLE 7 TOP TEN PATENT OWNERS (US)
           TABLE 8 PATENTS IN VECTOR DATABASE MARKET, 2023
    5.7 TECHNOLOGY ANALYSIS 
           5.7.1 KEY TECHNOLOGIES
                    5.7.1.1 NLP
                    5.7.1.2 Computer Vision
           5.7.2 COMPLEMENTARY TECHNOLOGIES
                    5.7.2.1 Cloud
                    5.7.2.2 IoT
                    5.7.2.3 Big Data
           5.7.3 ADJACENT TECHNOLOGIES
                    5.7.3.1 Deep Learning Models
                    5.7.3.2 Machine Learning Frameworks
                    5.7.3.3 Generative AI
    5.8 REGULATORY LANDSCAPE 
           5.8.1 REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
                    TABLE 9 NORTH AMERICA: REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
                    TABLE 10 EUROPE: REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
                    TABLE 11 ASIA PACIFIC: REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
                    TABLE 12 MIDDLE EAST & AFRICA: REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
                    TABLE 13 LATIN AMERICA: REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
           5.8.2 THE EUROPEAN UNION (EU) - ARTIFICIAL INTELLIGENCE ACT (AIA)
           5.8.3 INTERIM ADMINISTRATIVE MEASURES FOR GENERATIVE ARTIFICIAL INTELLIGENCE SERVICES
           5.8.4 GENERAL DATA PROTECTION REGULATION
           5.8.5 NATIONAL ARTIFICIAL INTELLIGENCE INITIATIVE ACT (NAIIA)
           5.8.6 INFORMATION SECURITY TECHNOLOGY - PERSONAL INFORMATION SECURITY SPECIFICATION GB/T 35273-2017
           5.8.7 THE ARTIFICIAL INTELLIGENCE AND DATA ACT (AIDA)
           5.8.8 GENERAL DATA PROTECTION LAW
           5.8.9 LAW NO 13 OF 2016 ON PROTECTING PERSONAL DATA
           5.8.10 NIST SPECIAL PUBLICATION 800-144 - GUIDELINES ON SECURITY AND PRIVACY IN PUBLIC CLOUD COMPUTING
    5.9 KEY CONFERENCES AND EVENTS, 2023–2024 
           TABLE 14 VECTOR DATABASE MARKET: DETAILED LIST OF CONFERENCES AND EVENTS, 2023–2024
    5.10 KEY STAKEHOLDERS AND BUYING CRITERIA 
           5.10.1 KEY STAKEHOLDERS IN BUYING PROCESS
                    FIGURE 29 INFLUENCE OF STAKEHOLDERS ON BUYING PROCESS FOR MAJOR VERTICALS
                    TABLE 15 INFLUENCE OF STAKEHOLDERS ON BUYING PROCESS FOR MAJOR VERTICALS (%)
           5.10.2 BUYING CRITERIA
                    FIGURE 30 KEY BUYING CRITERIA FOR MAJOR VERTICALS
                    TABLE 16 KEY BUYING CRITERIA FOR MAJOR VERTICALS
    5.11 VALUE CHAIN ANALYSIS 
                    FIGURE 31 MARKET: VALUE CHAIN
    5.12 ECOSYSTEM ANALYSIS 
                    FIGURE 32 MARKET: ECOSYSTEM
                    TABLE 17 MARKET: COMPANIES AND THEIR ROLE IN ECOSYSTEM
    5.13 TRENDS/DISRUPTIONS IMPACTING BUYERS/CLIENTS’ BUSINESSES 
                    FIGURE 33 MARKET: TRENDS/DISRUPTIONS IMPACTING BUYERS/CLIENTS’ BUSINESSES
    5.14 MARKET: BUSINESS MODEL ANALYSIS 
                    FIGURE 34 MARKET: BUSINESS MODELS
           5.14.1 SUBSCRIPTION MODEL
           5.14.2 MANAGED SERVICE MODEL
 
6 VECTOR DATABASE MARKET, BY OFFERING (Page No. - 89)
    6.1 INTRODUCTION 
           6.1.1 OFFERING: MARKET DRIVERS
                    FIGURE 35 SOLUTIONS SEGMENT TO HOLD LARGEST MARKET SIZE DURING FORECAST PERIOD
                    TABLE 18 MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                    TABLE 19 MARKET, BY OFFERING, 2023–2028 (USD MILLION)
    6.2 SOLUTIONS 
           FIGURE 36 VECTOR SEARCH SEGMENT TO HOLD LARGEST MARKET SIZE DURING FORECAST PERIOD
           TABLE 20 SOLUTIONS: MARKET, BY REGION, 2019–2022 (USD MILLION)
           TABLE 21 SOLUTIONS: MARKET, BY REGION, 2023–2028 (USD MILLION)
           TABLE 22 MARKET, BY SOLUTION, 2019–2022 (USD MILLION)
           TABLE 23 MARKET, BY SOLUTION, 2023–2028 (USD MILLION)
           6.2.1 VECTOR GENERATION
                    6.2.1.1 Rise of AI and ML to lead to development of new and sophisticated vector-generation algorithms
                               TABLE 24 VECTOR GENERATION: VECTOR DATABASE MARKET, BY REGION, 2019–2022 (USD MILLION)
                               TABLE 25 VECTOR GENERATION: MARKET, BY REGION, 2023–2028 (USD MILLION)
                               6.2.1.1.1 Word Embeddings
                               6.2.1.1.2 Image Embeddings
                               6.2.1.1.3 Others
           6.2.2 VECTOR SEARCH
                    6.2.2.1 Statistical models to provide powerful ways to capture complex patterns in data and generate precise outputs
                               TABLE 26 VECTOR SEARCH: MARKET, BY REGION, 2019–2022 (USD MILLION)
                               TABLE 27 VECTOR SEARCH: MARKET, BY REGION, 2023–2028 (USD MILLION)
                               6.2.2.1.1 Exact Vector Search
                               6.2.2.1.2 Semantic Search
                               6.2.2.1.3 Approximate Nearest Neighbor Search
                               6.2.2.1.4 Others
           6.2.3 STORAGE AND RETRIEVAL VECTORS
                    6.2.3.1 Deep learning models to excel at generative tasks requiring fine-grained details
                               TABLE 28 STORAGE AND RETRIEVAL VECTORS: VECTOR DATABASE MARKET, BY REGION, 2019–2022 (USD MILLION)
                               TABLE 29 STORAGE AND RETRIEVAL VECTORS: MARKET, BY REGION, 2023–2028 (USD MILLION)
                               6.2.3.1.1 Text Vectors
                               6.2.3.1.2 Image Vectors
                               6.2.3.1.3 Geospatial Vectors
    6.3 SERVICES 
           FIGURE 37 MANAGED SERVICES SEGMENT TO REGISTER HIGHER CAGR DURING THE FORECAST PERIOD
           TABLE 30 SERVICES: VECTOR DATABASE MARKET, BY REGION, 2019–2022 (USD MILLION)
           TABLE 31 SERVICES: MARKET, BY REGION, 2023–2028 (USD MILLION)
           TABLE 32 MARKET, BY SERVICE, 2019–2022 (USD MILLION)
           TABLE 33 MARKET, BY SERVICE, 2023–2028 (USD MILLION)
           6.3.1 PROFESSIONAL SERVICES
                    6.3.1.1 Professional services to offer specialized expertise in vector databases to meet specific needs
                               FIGURE 38 DEPLOYMENT & INTEGRATION TO HOLD LARGEST MARKET SIZE DURING FORECAST PERIOD
                               TABLE 34 PROFESSIONAL SERVICES: MARKET, BY REGION, 2019–2022 (USD MILLION)
                               TABLE 35 PROFESSIONAL SERVICES: MARKET, BY REGION, 2023–2028 (USD MILLION)
                               TABLE 36 MARKET, BY PROFESSIONAL SERVICE, 2019–2022 (USD MILLION)
                               TABLE 37 MARKET, BY PROFESSIONAL SERVICE, 2023–2028 (USD MILLION)
                               6.3.1.1.1 Consulting
                               TABLE 38 CONSULTING: VECTOR DATABASE MARKET, BY REGION, 2019–2022 (USD MILLION)
                               TABLE 39 CONSULTING: MARKET, BY REGION, 2023–2028 (USD MILLION)
                               6.3.1.1.2 Deployment & Integration
                               TABLE 40 DEPLOYMENT & INTEGRATION: MARKET, BY REGION, 2019–2022 (USD MILLION)
                               TABLE 41 DEPLOYMENT & INTEGRATION: MARKET, BY REGION, 2023–2028 (USD MILLION)
                               6.3.1.1.3 Training, Support, and Maintenance
                               TABLE 42 TRAINING, SUPPORT, AND MAINTENANCE: MARKET, BY REGION, 2019–2022 (USD MILLION)
                               TABLE 43 TRAINING, SUPPORT, AND MAINTENANCE: MARKET, BY REGION, 2023–2028 (USD MILLION)
           6.3.2 MANAGED SERVICES
                    6.3.2.1 Managed services to provide end-to-end management for vector databases and help businesses focus on core competencies
                               TABLE 44 MANAGED SERVICES: MARKET, BY REGION, 2019–2022 (USD MILLION)
                               TABLE 45 MANAGED SERVICES: MARKET, BY REGION, 2023–2028 (USD MILLION)
 
7 VECTOR DATABASE MARKET, BY TECHNOLOGY (Page No. - 109)
    7.1 INTRODUCTION 
           7.1.1 TECHNOLOGY: MARKET DRIVERS
                    FIGURE 39 COMPUTER VISION SEGMENT TO GROW AT HIGHEST CAGR DURING FORECAST PERIOD
                    TABLE 46 MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                    TABLE 47 MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
    7.2 NATURAL LANGUAGE PROCESSING 
           7.2.1 VECTOR DATABASE TO BE USED FOR DOCUMENT RETRIEVAL, SEMANTIC SEARCH, SENTIMENT ANALYSIS, AND CHATBOTS IN NLP
                    TABLE 48 NLP: MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 49 NLP: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    7.2.1.1 Semantic Search
                    7.2.1.2 Document/Text Retrieval
                    7.2.1.3 Sentiment Analysis
                    7.2.1.4 Chatbots & Virtual Assistants
                    7.2.1.5 Others
    7.3 COMPUTER VISION 
           7.3.1 COMPUTER VISION AND VECTOR DATABASES TO OFFER POWERFUL SOLUTIONS FOR APPLICATIONS THAT INVOLVE PROCESSING AND UNDERSTANDING VISUAL CONTENT EFFICIENTLY
                    TABLE 50 COMPUTER VISION: VECTOR DATABASE MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 51 COMPUTER VISION: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    7.3.1.1 Image Retrieval
                    7.3.1.2 Object Detection
                    7.3.1.3 Face/Image Recognition
                    7.3.1.4 Others
    7.4 RECOMMENDATION SYSTEMS 
           7.4.1 ENHANCED ACCURACY AND EFFICIENCY OF CONTENT RECOMMENDATIONS TO DRIVE MARKET GROWTH
                    TABLE 52 RECOMMENDATION SYSTEMS: MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 53 RECOMMENDATION SYSTEMS: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    7.4.1.1 Collaborative Filtering
                    7.4.1.2 Content-based Filtering
                    7.4.1.3 Session-based Recommendations
                    7.4.1.4 Others
 
8 VECTOR DATABASE MARKET, BY VERTICAL (Page No. - 119)
    8.1 INTRODUCTION 
           8.1.1 VERTICAL: MARKET DRIVERS
                    FIGURE 40 MEDIA & ENTERTAINMENT TO RECORD LARGEST MARKET SIZE DURING FORECAST PERIOD
                    TABLE 54 MARKET, BY VERTICAL, 2019–2022 (USD MILLION)
                    TABLE 55 MARKET, BY VERTICAL, 2023–2028 (USD MILLION)
    8.2 BFSI 
           8.2.1 VECTOR DATABASE TO OPTIMIZE OPERATIONS, IMPROVE CUSTOMER EXPERIENCE, AND MANAGE RISKS
           8.2.2 BFSI: VECTOR DATABASE USE CASES
                    TABLE 56 BFSI: VECTOR DATABASE MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 57 BFSI: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    8.2.2.1 Risk Assessment
                    8.2.2.2 Customer Segmentation
                    8.2.2.3 Fraud Detection/Risk Management
                    8.2.2.4 Others
    8.3 RETAIL & E-COMMERCE 
           8.3.1 VECTOR DATABASE TO HELP RETAIL SECTOR OPTIMIZE INVENTORY PLANNING WHILE REDUCING SHELF SHRINKAGE
           8.3.2 RETAIL & E-COMMERCE: VECTOR DATABASE USE CASES
                    TABLE 58 RETAIL & E-COMMERCE: MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 59 RETAIL & E-COMMERCE: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    8.3.2.1 Product Recommendations
                    8.3.2.2 Inventory Management
                    8.3.2.3 Others
    8.4 HEALTHCARE & LIFE SCIENCES 
           8.4.1 VECTOR DATABASES TO HELP IN DIAGNOSING DISEASES AND CREATING NEW DRUGS
           8.4.2 HEALTHCARE & LIFE SCIENCES: VECTOR DATABASE USE CASES
                    TABLE 60 HEALTHCARE & LIFE SCIENCES: MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 61 HEALTHCARE & LIFE SCIENCES: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    8.4.2.1 Medical Imaging
                    8.4.2.2 EHR
                    8.4.2.3 Others
    8.5 IT & ITES 
           8.5.1 VECTOR DATABASE TO HELP IMPROVE CYBERSECURITY, MINIMIZE COSTS, AND ENHANCE USER EXPERIENCE
           8.5.2 IT & ITES: VECTOR DATABASE USE CASES
                    TABLE 62 IT & ITES: VECTOR DATABASE MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 63 IT & ITES: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    8.5.2.1 IT Operations and Monitoring
                    8.5.2.2 Search and Content Recommendation
                    8.5.2.3 Customer Support and Chatbots
                    8.5.2.4 Others
    8.6 MEDIA & ENTERTAINMENT 
           8.6.1 VECTOR DATABASE TO PRODUCE CAPTIVATING AND EXCLUSIVE CONTENT EFFICIENTLY THAN TRADITIONAL METHODS
           8.6.2 MEDIA & ENTERTAINMENT: VECTOR DATABASE USE CASES
                    TABLE 64 MEDIA & ENTERTAINMENT: MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 65 MEDIA & ENTERTAINMENT: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    8.6.2.1 Content Recommendation
                    8.6.2.2 Content Metadata Management
                    8.6.2.3 Content Similarity Search
                    8.6.2.4 Others
    8.7 MANUFACTURING 
           8.7.1 VECTOR DATABASE TO IMPROVE PROTOTYPE DESIGN AND CAPACITY PLANNING IN SMART FACTORIES
           8.7.2 MANUFACTURING: VECTOR DATABASE USE CASES
                    TABLE 66 MANUFACTURING: VECTOR DATABASE MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 67 MANUFACTURING: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    8.7.2.1 Quality Control and Inspection
                    8.7.2.2 Predictive Maintenance
                    8.7.2.3 Others
    8.8 GOVERNMENT & DEFENSE 
           8.8.1 VECTOR DATABASE TOOLS TO DETECT THREAT AND ENHANCE SURVEILLANCE
           8.8.2 GOVERNMENT & DEFENSE: VECTOR DATABASE USE CASES
                    TABLE 68 GOVERNMENT & DEFENSE: MARKET, BY REGION, 2019–2022 (USD MILLION)
                    TABLE 69 GOVERNMENT & DEFENSE: MARKET, BY REGION, 2023–2028 (USD MILLION)
                    8.8.2.1 Geospatial Intelligence
                    8.8.2.2 Image Analysis and Recognition
                    8.8.2.3 Others
    8.9 OTHER VERTICALS 
           TABLE 70 OTHER VERTICALS: MARKET, BY REGION, 2019–2022 (USD MILLION)
           TABLE 71 OTHER VERTICALS: MARKET, BY REGION, 2023–2028 (USD MILLION)
 
9 VECTOR DATABASE MARKET, BY REGION (Page No. - 139)
    9.1 INTRODUCTION 
           FIGURE 41 ASIA PACIFIC TO GROW AT HIGHEST CAGR DURING FORECAST PERIOD
           TABLE 72 MARKET, BY REGION, 2019–2022 (USD MILLION)
           TABLE 73 MARKET, BY REGION, 2023–2028 (USD MILLION)
    9.2 NORTH AMERICA 
           9.2.1 NORTH AMERICA: MARKET DRIVERS
           9.2.2 NORTH AMERICA: RECESSION IMPACT
                    FIGURE 42 NORTH AMERICA: MARKET SNAPSHOT
                    TABLE 74 NORTH AMERICA: VECTOR DATABASE MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                    TABLE 75 NORTH AMERICA: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                    TABLE 76 NORTH AMERICA: MARKET, BY SOLUTION, 2019–2022 (USD MILLION)
                    TABLE 77 NORTH AMERICA: MARKET, BY SOLUTION, 2023–2028 (USD MILLION)
                    TABLE 78 NORTH AMERICA: MARKET, BY SERVICE, 2019–2022 (USD MILLION)
                    TABLE 79 NORTH AMERICA: MARKET, BY SERVICE, 2023–2028 (USD MILLION)
                    TABLE 80 NORTH AMERICA: MARKET, BY PROFESSIONAL SERVICE, 2019–2022 (USD MILLION)
                    TABLE 81 NORTH AMERICA: MARKET, BY PROFESSIONAL SERVICE, 2023–2028 (USD MILLION)
                    TABLE 82 NORTH AMERICA: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                    TABLE 83 NORTH AMERICA: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
                    TABLE 84 NORTH AMERICA: MARKET, BY VERTICAL, 2019–2022 (USD MILLION)
                    TABLE 85 NORTH AMERICA: MARKET, BY VERTICAL, 2023–2028 (USD MILLION)
                    TABLE 86 NORTH AMERICA: MARKET, BY COUNTRY, 2019–2022 (USD MILLION)
                    TABLE 87 NORTH AMERICA: MARKET, BY COUNTRY, 2023–2028 (USD MILLION)
           9.2.3 US
                    9.2.3.1 Rising demand for vector database majorly contributing to US revenue
                               TABLE 88 US: VECTOR DATABASE MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                               TABLE 89 US: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                               TABLE 90 US: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                               TABLE 91 US: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
           9.2.4 CANADA
                    9.2.4.1 Increasing investments in cutting-edge technologies to fuel market growth
                               TABLE 92 CANADA: MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                               TABLE 93 CANADA: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                               TABLE 94 CANADA: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                               TABLE 95 CANADA: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
    9.3 EUROPE 
           9.3.1 EUROPE: MARKET DRIVERS
           9.3.2 EUROPE: RECESSION IMPACT
                    TABLE 96 EUROPE: VECTOR DATABASE MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                    TABLE 97 EUROPE: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                    TABLE 98 EUROPE: MARKET, BY SOLUTION, 2019–2022 (USD MILLION)
                    TABLE 99 EUROPE: MARKET, BY SOLUTION, 2023–2028 (USD MILLION)
                    TABLE 100 EUROPE: MARKET, BY SERVICE, 2019–2022 (USD MILLION)
                    TABLE 101 EUROPE: MARKET, BY SERVICE, 2023–2028 (USD MILLION)
                    TABLE 102 EUROPE: MARKET, BY PROFESSIONAL SERVICE, 2019–2022 (USD MILLION)
                    TABLE 103 EUROPE: MARKET, BY PROFESSIONAL SERVICE, 2023–2028 (USD MILLION)
                    TABLE 104 EUROPE: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                    TABLE 105 EUROPE: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
                    TABLE 106 EUROPE: MARKET, BY VERTICAL, 2019–2022 (USD MILLION)
                    TABLE 107 EUROPE: MARKET, BY VERTICAL, 2023–2028 (USD MILLION)
                    TABLE 108 EUROPE: MARKET, BY COUNTRY, 2019–2022 (USD MILLION)
                    TABLE 109 EUROPE: MARKET, BY COUNTRY, 2023–2028 (USD MILLION)
           9.3.3 UK
                    9.3.3.1 Increasing focus on digitalization to drive market growth
                               TABLE 110 UK: MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                               TABLE 111 UK: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                               TABLE 112 UK: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                               TABLE 113 UK: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
           9.3.4 GERMANY
                    9.3.4.1 German government ready to become global tech leader by galvanizing AI research, development, and applications
                               TABLE 114 GERMANY: VECTOR DATABASE MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                               TABLE 115 GERMANY: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                               TABLE 116 GERMANY: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                               TABLE 117 GERMANY: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
           9.3.5 FRANCE
                    9.3.5.1 Increasing research and educational excellence to drive demand for chatbots, data retrieval, and image retrieval
                               TABLE 118 FRANCE: MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                               TABLE 119 FRANCE: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                               TABLE 120 FRANCE: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                               TABLE 121 FRANCE: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
           9.3.6 ITALY
                    9.3.6.1 Italian researchers to build deep learning model that can perform source separation and music generation
                               TABLE 122 ITALY: VECTOR DATABASE MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                               TABLE 123 ITALY: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                               TABLE 124 ITALY: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                               TABLE 125 ITALY: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
           9.3.7 REST OF EUROPE
                    TABLE 126 REST OF EUROPE: MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                    TABLE 127 REST OF EUROPE: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                    TABLE 128 REST OF EUROPE: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                    TABLE 129 REST OF EUROPE: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
    9.4 ASIA PACIFIC 
           9.4.1 ASIA PACIFIC: MARKET DRIVERS
           9.4.2 ASIA PACIFIC: RECESSION IMPACT
                    FIGURE 43 ASIA PACIFIC: VECTOR DATABASE MARKET SNAPSHOT
                    TABLE 130 ASIA PACIFIC: MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                    TABLE 131 ASIA PACIFIC: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                    TABLE 132 ASIA PACIFIC: MARKET, BY SOLUTION, 2019–2022 (USD MILLION)
                    TABLE 133 ASIA PACIFIC: MARKET, BY SOLUTION, 2023–2028 (USD MILLION)
                    TABLE 134 ASIA PACIFIC: MARKET, BY SERVICE, 2019–2022 (USD MILLION)
                    TABLE 135 ASIA PACIFIC: MARKET, BY SERVICE, 2023–2028 (USD MILLION)
                    TABLE 136 ASIA PACIFIC: MARKET, BY PROFESSIONAL SERVICE, 2019–2022 (USD MILLION)
                    TABLE 137 ASIA PACIFIC: MARKET, BY PROFESSIONAL SERVICE, 2023–2028 (USD MILLION)
                    TABLE 138 ASIA PACIFIC: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                    TABLE 139 ASIA PACIFIC: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
                    TABLE 140 ASIA PACIFIC: MARKET, BY VERTICAL, 2019–2022 (USD MILLION)
                    TABLE 141 ASIA PACIFIC: MARKET, BY VERTICAL, 2023–2028 (USD MILLION)
                    TABLE 142 ASIA PACIFIC: MARKET, BY COUNTRY, 2019–2022 (USD MILLION)
                    TABLE 143 ASIA PACIFIC: MARKET, BY COUNTRY, 2023–2028 (USD MILLION)
           9.4.3 CHINA
                    9.4.3.1 Rising number of local players producing vector databases to propel market
                               TABLE 144 CHINA: VECTOR DATABASE MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                               TABLE 145 CHINA: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                               TABLE 146 CHINA: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                               TABLE 147 CHINA: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
           9.4.4 JAPAN
                    9.4.4.1 Tokyo-1 to accelerate Japan’s pharma industry
                               TABLE 148 JAPAN: MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                               TABLE 149 JAPAN: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                               TABLE 150 JAPAN: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                               TABLE 151 JAPAN: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
           9.4.5 AUSTRALIA & NEW ZEALAND
                    9.4.5.1 Australia & New Zealand to explore AI and big data analytics’ potential more broadly
                               TABLE 152 ANZ: VECTOR DATABASE MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                               TABLE 153 ANZ: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                               TABLE 154 ANZ: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                               TABLE 155 ANZ: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
           9.4.6 REST OF ASIA PACIFIC
                    TABLE 156 REST OF ASIA PACIFIC: MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                    TABLE 157 REST OF ASIA PACIFIC: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                    TABLE 158 REST OF ASIA PACIFIC: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                    TABLE 159 REST OF ASIA PACIFIC: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
    9.5 REST OF THE WORLD 
           9.5.1 MIDDLE EAST & AFRICA
           9.5.2 LATIN AMERICA
                    TABLE 160 REST OF THE WORLD: VECTOR DATABASE MARKET, BY OFFERING, 2019–2022 (USD MILLION)
                    TABLE 161 REST OF THE WORLD: MARKET, BY OFFERING, 2023–2028 (USD MILLION)
                    TABLE 162 REST OF THE WORLD: MARKET, BY SOLUTION, 2019–2022 (USD MILLION)
                    TABLE 163 REST OF THE WORLD: MARKET, BY SOLUTION, 2023–2028 (USD MILLION)
                    TABLE 164 REST OF THE WORLD: MARKET, BY SERVICE, 2019–2022 (USD MILLION)
                    TABLE 165 REST OF THE WORLD: MARKET, BY SERVICE, 2023–2028 (USD MILLION)
                    TABLE 166 REST OF THE WORLD: MARKET, BY PROFESSIONAL SERVICE, 2019–2022 (USD MILLION)
                    TABLE 167 REST OF THE WORLD: MARKET, BY PROFESSIONAL SERVICE, 2023–2028 (USD MILLION)
                    TABLE 168 REST OF THE WORLD: MARKET, BY TECHNOLOGY, 2019–2022 (USD MILLION)
                    TABLE 169 REST OF THE WORLD: MARKET, BY TECHNOLOGY, 2023–2028 (USD MILLION)
                    TABLE 170 REST OF THE WORLD: MARKET, BY VERTICAL, 2019–2022 (USD MILLION)
                    TABLE 171 REST OF THE WORLD: MARKET, BY VERTICAL, 2023–2028 (USD MILLION)
 
10 COMPETITIVE LANDSCAPE (Page No. - 180)
     10.1 OVERVIEW 
     10.2 STRATEGIES ADOPTED BY KEY PLAYERS 
               TABLE 172 OVERVIEW OF STRATEGIES BY KEY VECTOR DATABASE VENDORS
     10.3 REVENUE ANALYSIS 
               FIGURE 44 HISTORICAL FIVE-YEAR SEGMENTAL REVENUE ANALYSIS OF KEY VECTOR DATABASE PROVIDERS
     10.4 MARKET SHARE ANALYSIS 
               FIGURE 45 MARKET SHARE ANALYSIS, 2022
               TABLE 173 MARKET: INTENSITY OF COMPETITIVE RIVALRY
     10.5 BRANDS COMPARISON/VENDOR PRODUCT LANDSCAPE 
               TABLE 174 BRANDS COMPARISON/VENDOR PRODUCT LANDSCAPE
     10.6 GLOBAL SNAPSHOT OF KEY MARKET PARTICIPANTS 
               FIGURE 46 VECTOR DATABASE MARKET: GLOBAL SNAPSHOT OF KEY MARKET PARTICIPANTS
     10.7 COMPANY EVALUATION MATRIX 
               FIGURE 47 COMPANY EVALUATION MATRIX: CRITERIA WEIGHTAGE
             10.7.1 STARS
             10.7.2 EMERGING LEADERS
             10.7.3 PERVASIVE PLAYERS
             10.7.4 PARTICIPANTS
                       FIGURE 48 COMPANY EVALUATION MATRIX
             10.7.5 COMPANY FOOTPRINT
                       TABLE 175 COMPANY REGIONAL FOOTPRINT
                       TABLE 176 COMPANY OFFERING FOOTPRINT
                       TABLE 177 COMPANY FOOTPRINT
     10.8 START-UP/SME EVALUATION MATRIX 
               FIGURE 49 SME/START-UP EVALUATION MATRIX: CRITERIA WEIGHTAGE
             10.8.1 PROGRESSIVE COMPANIES
             10.8.2 RESPONSIVE COMPANIES
             10.8.3 DYNAMIC COMPANIES
             10.8.4 STARTING BLOCKS
                       FIGURE 50 START-UP/SME EVALUATION MATRIX
             10.8.5 COMPETITIVE BENCHMARKING
                       TABLE 178 DETAILED LIST OF KEY START-UPS/SMES
                       TABLE 179 COMPANY FOOTPRINT FOR START-UPS/SMES, BY REGION
     10.9 VALUATION AND FINANCIAL METRICS OF VECTOR DATABASE VENDORS 
               FIGURE 51 VALUATION AND FINANCIAL METRICS OF VECTOR DATABASE VENDORS
     10.10 KEY MARKET DEVELOPMENTS 
               10.10.1 PRODUCT LAUNCHES AND PRODUCT ENHANCEMENTS
                       TABLE 180 MARKET: PRODUCT LAUNCHES
               10.10.2 DEALS
                       TABLE 181 VECTOR DATABASE MARKET: DEALS
 
11 COMPANY PROFILES (Page No. - 201)
     11.1 INTRODUCTION 
     11.2 KEY PLAYERS 
(Business Overview, Products/Solutions/Services offered, Recent Developments, MnM View)*
             11.2.1 MICROSOFT
                       TABLE 182 MICROSOFT: COMPANY OVERVIEW
                       FIGURE 52 MICROSOFT: COMPANY SNAPSHOT
                       TABLE 183 MICROSOFT: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 184 MICROSOFT: PRODUCT LAUNCHES
                       TABLE 185 MICROSOFT: DEALS
             11.2.2 ALIBABA CLOUD
                       TABLE 186 ALIBABA CLOUD: COMPANY OVERVIEW
                       FIGURE 53 ALIBABA CLOUD: COMPANY SNAPSHOT
                       TABLE 187 ALIBABA CLOUD: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 188 ALIBABA CLOUD: PRODUCT LAUNCHES
                       TABLE 189 ALIBABA CLOUD: DEALS
                       TABLE 190 ALIBABA CLOUD: OTHERS
             11.2.3 ELASTIC
                       TABLE 191 ELASTIC: COMPANY OVERVIEW
                       FIGURE 54 ELASTIC: COMPANY SNAPSHOT
                       TABLE 192 ELASTIC: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 193 ELASTIC: PRODUCT LAUNCHES
                       TABLE 194 ELASTIC: DEALS
             11.2.4 MONGODB
                       TABLE 195 MONGODB: COMPANY OVERVIEW
                       FIGURE 55 MONGODB: COMPANY SNAPSHOT
                       TABLE 196 MONGODB: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 197 MONGODB: PRODUCT LAUNCHES
                       TABLE 198 MONGODB: DEALS
             11.2.5 REDIS
                       TABLE 199 REDIS: COMPANY OVERVIEW
                       TABLE 200 REDIS: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 201 REDIS: PRODUCT LAUNCHES
                       TABLE 202 REDIS: DEALS
             11.2.6 SINGLESTORE
                       TABLE 203 SINGLESTORE: COMPANY OVERVIEW
                       TABLE 204 SINGLESTORE: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 205 SINGLESTORE: PRODUCT LAUNCHES
             11.2.7 DATASTAX
                       TABLE 206 DATASTAX: COMPANY OVERVIEW
                       TABLE 207 DATASTAX: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 208 DATASTAX: PRODUCT LAUNCHES
             11.2.8 ZILLIZ
                       TABLE 209 ZILLIZ: COMPANY OVERVIEW
                       TABLE 210 ZILLIZ: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 211 ZILLIZ: PRODUCT LAUNCHES
             11.2.9 PINECONE
                       TABLE 212 PINECONE: COMPANY OVERVIEW
                       TABLE 213 PINECONE: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 214 PINECONE: PRODUCT LAUNCHES
             11.2.10 GOOGLE
                       TABLE 215 GOOGLE: COMPANY OVERVIEW
                       FIGURE 56 GOOGLE: COMPANY SNAPSHOT
                       TABLE 216 GOOGLE: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 217 GOOGLE: PRODUCT LAUNCHES
                       TABLE 218 GOOGLE: DEALS
             11.2.11 AWS
                       TABLE 219 AWS: COMPANY OVERVIEW
                       FIGURE 57 AWS: COMPANY SNAPSHOT
                       TABLE 220 AWS: PRODUCTS/SOLUTIONS/SERVICES OFFERED
                       TABLE 221 AWS: PRODUCT LAUNCHES
                       TABLE 222 AWS: DEALS
     11.3 OTHER PLAYERS 
             11.3.1 KX
             11.3.2 MILVUS
             11.3.3 GSI TECHNOLOGY
             11.3.4 CLARIFAI
             11.3.5 KINETICA
             11.3.6 ROCKSET
             11.3.7 QDRANT
             11.3.8 ACTIVELOOP
             11.3.9 WEAVIATE
             11.3.10 OPENSEARCH
             11.3.11 VESPA
             11.3.12 MARQO AI
             11.3.13 CLICKHOUSE
*Details on Business Overview, Products/Solutions/Services offered, Recent Developments, MnM View might not be captured in case of unlisted companies.
 
12 ADJACENT AND RELATED MARKETS (Page No. - 244)
     12.1 INTRODUCTION 
             12.1.1 RELATED MARKETS
     12.2 GENERATIVE AI MARKET 
               TABLE 223 GENERATIVE AI MARKET, BY OFFERING, 2019–2022 (USD MILLION)
               TABLE 224 GENERATIVE AI MARKET, BY OFFERING, 2023–2030 (USD MILLION)
               TABLE 225 GENERATIVE AI MARKET, BY REGION, 2019–2022 (USD MILLION)
               TABLE 226 GENERATIVE AI MARKET, BY REGION, 2023–2030 (USD MILLION)
 
13 APPENDIX (Page No. - 246)
     13.1 DISCUSSION GUIDE 
     13.2 KNOWLEDGESTORE: MARKETSANDMARKETS’ SUBSCRIPTION PORTAL 
     13.3 CUSTOMIZATION OPTIONS 
     13.4 RELATED REPORTS 
     13.5 AUTHOR DETAILS 

The study involved four major activities in estimating the market size for vector databases. An exhaustive secondary research helped to collect information on the market, peer, and parent markets. The next step was to validate these assumptions, findings, and sizing with the industry experts across the value chain through primary research. Both bottom-up and top-down approaches were employed to estimate the complete market size. After that, we used market breakup and data triangulation to assess the overall market size of segments and sub-segments.

Secondary Research

We determined the vector database market’s size based on the secondary data available via paid and unpaid information sources. It was also arrived at by analyzing the product portfolios of major companies and rating the companies based on their performance and quality.

In the secondary research process, we referred to various secondary sources for identifying and collecting information for this study. The secondary sources include press releases, annual reports, & investor presentations, white papers, certified publications, articles from recognized associations, and government publishing sources.

Primary Research

We interviewed various sources from the supply and demand sides to obtain qualitative and quantitative information for this report in the immediate research process. The primary sources from the supply side included various industry experts, including Chief Experience Officers (CXOs); Vice Presidents (VPs); directors from business development, marketing, and product development/innovation teams; related vital executives from vector database vendors, industry associations, and independent consultants; and key opinion leaders.

We conducted primary interviews to gather insights, such as market statistics, the latest trends disrupting the market, new use cases implemented, data on revenue collected from products and services, market breakups, market size estimations, market forecasts, and data triangulation. Primary research also helped understand various technology trends, offerings, end users, and regions. Demand-side stakeholders, such as Chief Information Officers (CIOs), Chief Technology Officers (CTOs), Chief Security Officers (CSOs), and digital initiatives project teams, were interviewed to understand the buyer’s perspective on suppliers, products, service providers, and their current use, which would affect the overall vector database market.

Vector Database Market Size, and Share

To know about the assumptions considered for the study, download the pdf brochure

Market Size Estimation

We employed multiple approaches to estimate and forecast the size of the vector database market. In the market engineering process, we used the top-down and bottom-up approaches and data triangulation procedures to perform market forecasts and estimations for the global market segments and sub-segments listed in this report.

  • We identified key players in the market through secondary market analysis and their revenue contributions in respective regions through primary and secondary research.
  • This procedure included studying top market players’ financial reports and interviews for key insights from experts.
  • All percentage breakups were determined using secondary sources and verified through primary inputs.

Primary research has accounted for and verified all possible market parameters affecting the market. MarketsandMarkets consolidated the data with detailed inputs and analysis.

Bottom-Up Approach

In the bottom-up approach, we identified the adoption trend of vector databases in key countries concerning regions that contribute to most of the market share. The adoption trend of vector databases and different use cases concerning their business segments was identified and extrapolated for cross-validation. Weightage was given to the use cases identified in other areas for the calculation. We prepared an exhaustive list of all vendors offering solutions and services in the vector database market. The revenue contribution of all vendors in the market was estimated through annual reports, press releases, funding, investor presentations, paid databases, and primary interviews. We considered vendors with vector database offerings to evaluate the market size.

We determined the geographic split with primary and secondary sources based on these numbers. The procedure included an analysis of the vector database market’s region-wise penetration. Various factors considered are – ICT spending and strategic vendor analysis of system integration service providers. Other factors analyzed were the socioeconomic analysis of each country and local and global players’ organic and inorganic business strategies.

With the data triangulation process and data validation via primaries, this study determined and confirmed the exact values of the overall vector database market and its segments’ market size.

Vector Database Market by Bottom-Up Approach

To know about the assumptions considered for the study, Request for Free Sample Report

Top-Down Approach

The top-down approach prepared a detailed list of vendors offering solutions and services in the vector database market. The revenue contribution for all vendors in the market was estimated through annual reports, PRs, investor presentations, funding, paid databases, and expert interviews. We evaluated players based on their offerings. The summation of all companies’ revenues was extrapolated to reach the overall market size. Each subsegment was further studied and analyzed for its global market size and regional penetration. The primary procedure included obtaining critical insights from industry leaders, such as VPs, CEOs, directors, and marketing executives. We derived the vector database market from vector database subscriptions adopted by different verticals. We triangulated the market numbers with the existing MarketsandMarkets KS repository for validation.

Vector Database Market by Top-Down Approach

Data Triangulation

A research technique called data triangulation uses two or more methods to confirm findings and outcomes. It is employed to verify the findings’ integrity and ensure that the data support the hypothesis. Data triangulation, used frequently in qualitative research, entails confirming data by those who collected and analyzed it. With the data triangulation process and data validation through primaries, we established the exact values of the overall vector database market and its segments’ market size.

Market Definition

A vector database, often called a Vector Database Management System (VDBMS), is specifically designed to store and manage vector data. Vector data consists of points represented as vectors, mathematical representations of features or attributes that define various data types, such as text, images, audio, video, etc. They are popular in building widespread applications in multiple domains, including recommender systems, chatbots, and tools for searching similar images, videos, and audio content. With the rise of AI and Large Language Models (LLMs) like ChatGPT, vector databases are also beneficial in addressing LLM hallucinations.

Key Stakeholders

  • IT service providers
  • Vector database solution vendors
  • Vector database service vendors
  • Managed service providers
  • Support and maintenance service providers
  • System integrators (SIs)/Migration service providers
  • Value-added resellers (VARs) and distributors
  • Independent software vendors (ISVs)
  • Third-party providers
  • Technology providers

Report Objectives

  • To define, describe, and forecast the vector database market based on Offering (solution and service), Technology, Verticals, and Regions          
  • To provide detailed information about the major factors (drivers, opportunities, restraints, and challenges) influencing the growth of the market
  • To analyze the opportunities in the market for stakeholders by identifying the high-growth segments of the market
  • To forecast the size of the market segments concerning regions: North America, Europe, Asia Pacific, and Rest of the World
  • To analyze subsegments of the market concerning individual growth trends, prospects, and contributions to the overall market
  • To profile the key players of the market and comprehensively analyze their market size and core competencies
  • To track and analyze global competitive developments in the vector database market, such as product enhancements and new product launches, acquisitions, partnerships, and collaborations.

Available Customizations

With the given market data, MarketsandMarkets offers customizations based on the company’s requirements. The following customization options are available for the report:

Product Analysis

  • The product matrix provides a detailed comparison of the product portfolio of each company.

Geographic Analysis

  • Further breakup of the Asia Pacific market into countries contributing 75% to the regional market size
  • Further breakup of the North American market into countries contributing 75% to the regional market size
  • Further breakup of the European market into countries contributing 75% to the regional market size

Company Information

  • Detailed analysis and profiling of five additional market players
Custom Market Research Services

We will customize the research for you, in case the report listed above does not meet with your exact requirements. Our custom research will comprehensively cover the business information you require to help you arrive at strategic and profitable business decisions.

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