시장보고서
상품코드
1937582

AI 모델 모니터링 및 드리프트 감지 시장(2026-2030년)

Global AI Model Monitoring And Drift Detection Market 2026-2030

발행일: | 리서치사: TechNavio | 페이지 정보: 영문 291 Pages | 배송안내 : 즉시배송

    
    
    




※ 본 상품은 영문 자료로 한글과 영문 목차에 불일치하는 내용이 있을 경우 영문을 우선합니다. 정확한 검토를 위해 영문 목차를 참고해주시기 바랍니다.

세계의 AI 모델 모니터링 및 드리프트 감지 시장은 2025년부터 2030년까지 29억 4,590만 달러 증가하고, 예측 기간 동안 CAGR은 22.6%로 예측됩니다.

세계의 AI 모델 모니터링 및 드리프트 감지 시장에 대해 조사 분석했으며, 시장 규모와 예측, 동향, 성장 촉진요인, 과제, 25개 벤더 분석 등의 정보를 전해드립니다.

본 보고서는 현재 시장 상황, 최신 동향 및 촉진요인, 시장 환경 전반에 대한 최신 분석을 제공합니다. 시장 성장요인으로는 규제 준수와 세계 AI 거버넌스 프레임워크 도입, 대규모 언어 모델 보급과 생성형 AI의 신뢰성 확보 필요성, MLOps의 성숙도, 모델 관측가능성으로의 전략적 전환 등을 꼽을 수 있습니다.

이번 조사는 업계 주요 관계자들의 정보를 비롯해 1차 정보와 2차 정보를 객관적으로 조합하여 진행되었습니다. 이 보고서에는 주요 기업 분석과 함께 종합적인 시장 규모 데이터, 지역별 분석과 함께 부문 및 공급업체 현황이 포함되어 있습니다. 보고서에는 과거 데이터와 예측 데이터가 수록되어 있습니다.

시장 범위
기준 연도 2026년
종료 연도 2030년
예측 기간 2026-2030년
성장 모멘텀 가속
전년비 2026년 21.1%
CAGR 22.6%
증가액 29억 4,590만 달러

이 보고서는 향후 몇 년 동안 세계 AI 모델 모니터링 및 드리프트 감지 시장의 성장을 견인할 주요 요인 중 하나로 연합 학습 모니터링과 분산형 드리프트 감지 메커니즘을 꼽았습니다. 또한, 엣지 인텔리전스 및 IoT 생태계를 위한 하드웨어 지원 드리프트 분석과 고위험 산업 분야를 위한 고도화된 의미론적 드리프트 감지가 시장에서 상당한 수요를 창출할 것으로 예상됩니다.

목차

제1장 주요 요약

제2장 Technavio 분석

제3장 시장 구도

제4장 시장 규모

제5장 시장 규모 실적

제6장 정성 분석

제7장 Five Forces 분석

제8장 시장 세분화 : 전개별

제9장 시장 세분화 : 유형별

제10장 시장 세분화 : 최종사용자별

제11장 고객 상황

제12장 지역별 상황

제13장 촉진요인, 과제, 기회

제14장 경쟁 구도

제15장 경쟁 분석

제16장 부록

KSM

The global AI model monitoring and drift detection market is forecasted to grow by USD 2945.9 mn during 2025-2030, accelerating at a CAGR of 22.6% during the forecast period. The report on the global AI model monitoring and drift detection market provides a holistic analysis, market size and forecast, trends, growth drivers, and challenges, as well as vendor analysis covering around 25 vendors.

The report offers an up-to-date analysis regarding the current market scenario, the latest trends and drivers, and the overall market environment. The market is driven by regulatory compliance and implementation of global AI governance frameworks, proliferation of large language models and necessity for generative AI reliability, maturation of mlops and strategic shift toward model observability.

The study was conducted using an objective combination of primary and secondary information including inputs from key participants in the industry. The report contains a comprehensive market size data, segment with regional analysis and vendor landscape in addition to an analysis of the key companies. Reports have historic and forecast data.

Market Scope
Base Year2026
End Year2030
Series Year2026-2030
Growth MomentumAccelerate
YOY 202621.1%
CAGR22.6%
Incremental Value$2945.9 mn

Technavio's global AI model monitoring and drift detection market is segmented as below:

By Deployment

  • Cloud-based
  • On-premises
  • Hybrid

By Type

  • Model performance monitoring
  • Data drift detection
  • Concept drift detection
  • Bias and fairness monitoring

By End-User

  • Large enterprises
  • SMEs

Geography

  • North America
    • US
    • Canada
    • Mexico
  • Europe
    • Germany
    • UK
    • France
    • The Netherlands
    • Italy
    • Spain
  • APAC
    • China
    • India
    • Japan
    • South Korea
    • Australia
    • Indonesia
  • Middle East and Africa
    • UAE
    • South Africa
    • Turkey
  • South America
    • Brazil
    • Argentina
    • Colombia
  • Rest of World (ROW)

This study identifies the federated learning monitoring and decentralized drift detection mechanisms as one of the prime reasons driving the global AI model monitoring and drift detection market growth during the next few years. Also, hardware-aware drift analysis for edge intelligence and iot ecosystems and advanced semantic drift detection for high-stakes industrial verticals will lead to sizable demand in the market.

The report on the global AI model monitoring and drift detection market covers the following areas:

  • Global AI model monitoring and drift detection market sizing
  • Global AI model monitoring and drift detection market forecast
  • Global AI model monitoring and drift detection market industry analysis

The robust vendor analysis is designed to help clients improve their market position, and in line with this, this report provides a detailed analysis of several leading global AI model monitoring and drift detection market vendors that include Amazon.com Inc., Aporia Technologies, ARTHUR, Censius, Cisco Systems Inc., Comet ML Inc., Datadog Inc., DataRobot Inc., Deepchecks AI, Domino Data Lab Inc., Dynatrace Inc., Evidently AI, Fiddler AI, Google LLC, H2O.ai Inc., New Relic Inc., Seldon Technologies, Snowflake Inc., Superwise, WhyLabs, Inc.. Also, the global AI model monitoring and drift detection market analysis report includes information on upcoming trends and challenges that will influence market growth. This is to help companies strategize and leverage all forthcoming growth opportunities.

The publisher presents a detailed picture of the market by the way of study, synthesis, and summation of data from multiple sources by an analysis of key parameters such as profit, pricing, competition, and promotions. It presents various market facets by identifying the key industry influencers. The data presented is comprehensive, reliable, and a result of extensive primary and secondary research. The market research reports provide a complete competitive landscape and an in-depth vendor selection methodology and analysis using qualitative and quantitative research to forecast accurate market growth.

Table of Contents

1 Executive Summary

  • 1.1 Market overview
    • Executive Summary - Chart on Market Overview
    • Executive Summary - Data Table on Market Overview
    • Executive Summary - Chart on Global Market Characteristics
    • Executive Summary - Chart on Market by Geography
    • Executive Summary - Chart on Market Segmentation by Deployment
    • Executive Summary - Chart on Market Segmentation by Type
    • Executive Summary - Chart on Market Segmentation by End-user
    • Executive Summary - Chart on Incremental Growth
    • Executive Summary - Data Table on Incremental Growth
    • Executive Summary - Chart on Company Market Positioning

2 Technavio Analysis

  • 2.1 Analysis of price sensitivity, lifecycle, customer purchase basket, adoption rates, and purchase criteria
    • Analysis of price sensitivity, lifecycle, customer purchase basket, adoption rates, and purchase criteria
  • 2.2 Criticality of inputs and Factors of differentiation
  • 2.3 Factors of disruption
  • 2.4 Impact of drivers and challenges

3 Market Landscape

  • 3.1 Market ecosystem
  • 3.2 Market characteristics
  • 3.3 Value chain analysis

4 Market Sizing

  • 4.1 Market definition
  • 4.2 Market segment analysis
    • Market segments
  • 4.3 Market size 2025
  • 4.4 Market outlook: Forecast for 2025-2030

5 Historic Market Size

  • 5.1 Global AI Model Monitoring And Drift Detection Market 2020 - 2024
    • Historic Market Size - Data Table on Global AI Model Monitoring And Drift Detection Market 2020 - 2024 ($ million)
  • 5.2 Deployment segment analysis 2020 - 2024
    • Historic Market Size - Deployment Segment 2020 - 2024 ($ million)
  • 5.3 Type segment analysis 2020 - 2024
    • Historic Market Size - Type Segment 2020 - 2024 ($ million)
  • 5.4 End-user segment analysis 2020 - 2024
    • Historic Market Size - End-user Segment 2020 - 2024 ($ million)
  • 5.5 Geography segment analysis 2020 - 2024
    • Historic Market Size - Geography Segment 2020 - 2024 ($ million)
  • 5.6 Country segment analysis 2020 - 2024
    • Historic Market Size - Country Segment 2020 - 2024 ($ million)

6 Qualitative Analysis

  • 6.1 Impact of AI on Global AI Model Monitoring and Drift Detection Market

7 Five Forces Analysis

  • 7.1 Five forces summary
    • Five forces analysis - Comparison between 2025 and 2030
  • 7.2 Bargaining power of buyers
    • Bargaining power of buyers - Impact of key factors 2025 and 2030
  • 7.3 Bargaining power of suppliers
    • Bargaining power of suppliers - Impact of key factors in 2025 and 2030
  • 7.4 Threat of new entrants
    • Threat of new entrants - Impact of key factors in 2025 and 2030
  • 7.5 Threat of substitutes
    • Threat of substitutes - Impact of key factors in 2025 and 2030
  • 7.6 Threat of rivalry
    • Threat of rivalry - Impact of key factors in 2025 and 2030
  • 7.7 Market condition

8 Market Segmentation by Deployment

  • 8.1 Market segments
  • 8.2 Comparison by Deployment
  • 8.3 Cloud-based - Market size and forecast 2025-2030
  • 8.4 On-premises - Market size and forecast 2025-2030
  • 8.5 Hybrid - Market size and forecast 2025-2030
  • 8.6 Market opportunity by Deployment
    • Market opportunity by Deployment ($ million)

9 Market Segmentation by Type

  • 9.1 Market segments
  • 9.2 Comparison by Type
  • 9.3 Model performance monitoring - Market size and forecast 2025-2030
  • 9.4 Data drift detection - Market size and forecast 2025-2030
  • 9.5 Concept drift detection - Market size and forecast 2025-2030
  • 9.6 Bias and fairness monitoring - Market size and forecast 2025-2030
  • 9.7 Market opportunity by Type
    • Market opportunity by Type ($ million)

10 Market Segmentation by End-user

  • 10.1 Market segments
  • 10.2 Comparison by End-user
  • 10.3 Large enterprises - Market size and forecast 2025-2030
  • 10.4 SMEs - Market size and forecast 2025-2030
  • 10.5 Market opportunity by End-user
    • Market opportunity by End-user ($ million)

11 Customer Landscape

  • 11.1 Customer landscape overview
    • Analysis of price sensitivity, lifecycle, customer purchase basket, adoption rates, and purchase criteria

12 Geographic Landscape

  • 12.1 Geographic segmentation
  • 12.2 Geographic comparison
  • 12.3 North America - Market size and forecast 2025-2030
    • 12.3.1 US - Market size and forecast 2025-2030
    • 12.3.2 Canada - Market size and forecast 2025-2030
    • 12.3.3 Mexico - Market size and forecast 2025-2030
  • 12.4 Europe - Market size and forecast 2025-2030
    • 12.4.1 Germany - Market size and forecast 2025-2030
    • 12.4.2 UK - Market size and forecast 2025-2030
    • 12.4.3 France - Market size and forecast 2025-2030
    • 12.4.4 The Netherlands - Market size and forecast 2025-2030
    • 12.4.5 Italy - Market size and forecast 2025-2030
    • 12.4.6 Spain - Market size and forecast 2025-2030
  • 12.5 APAC - Market size and forecast 2025-2030
    • 12.5.1 China - Market size and forecast 2025-2030
    • 12.5.2 India - Market size and forecast 2025-2030
    • 12.5.3 Japan - Market size and forecast 2025-2030
    • 12.5.4 South Korea - Market size and forecast 2025-2030
    • 12.5.5 Australia - Market size and forecast 2025-2030
    • 12.5.6 Indonesia - Market size and forecast 2025-2030
  • 12.6 Middle East and Africa - Market size and forecast 2025-2030
    • 12.6.1 Saudi Arabia - Market size and forecast 2025-2030
    • 12.6.2 UAE - Market size and forecast 2025-2030
    • 12.6.3 South Africa - Market size and forecast 2025-2030
    • 12.6.4 Israel - Market size and forecast 2025-2030
    • 12.6.5 Turkey - Market size and forecast 2025-2030
  • 12.7 South America - Market size and forecast 2025-2030
    • 12.7.1 Brazil - Market size and forecast 2025-2030
    • 12.7.2 Argentina - Market size and forecast 2025-2030
    • 12.7.3 Colombia - Market size and forecast 2025-2030
  • 12.8 Market opportunity by geography
    • Market opportunity by geography ($ million)
    • Data Tables on Market opportunity by geography ($ million)

13 Drivers, Challenges, and Opportunity

  • 13.1 Market drivers
    • Regulatory compliance and implementation of global AI governance frameworks
    • Proliferation of large language models and necessity for generative AI reliability
    • Maturation of MLOps and strategic shift toward model observability
  • 13.2 Market challenges
    • Complexity of high-dimensional data and detection of subtle semantic drift
    • High computational costs and trade-off between monitoring depth and latency
    • Scarcity of specialized talent and integration gap with legacy architectures
  • 13.3 Impact of drivers and challenges
    • Impact of drivers and challenges in 2025 and 2030
  • 13.4 Market opportunities
    • Federated learning monitoring and decentralized drift detection mechanisms
    • Hardware-aware drift analysis for edge intelligence and IoT ecosystems
    • Advanced semantic drift detection for high-stakes industrial verticals

14 Competitive Landscape

  • 14.1 Overview
  • 14.2 Competitive Landscape
    • Overview on criticality of inputs and factors of differentiation
  • 14.3 Landscape disruption
    • Overview on factors of disruption
  • 14.4 Industry risks
    • Impact of key risks on business

15 Competitive Analysis

  • 15.1 Companies profiled
    • Companies covered
  • 15.2 Company ranking index
    • Company ranking index
  • 15.3 Market positioning of companies
    • Matrix on companies position and classification
  • 15.4 Amazon.com Inc.
    • Amazon.com Inc. - Overview
    • Amazon.com Inc. - Business segments
    • Amazon.com Inc. - Key news
    • Amazon.com Inc. - Key offerings
    • Amazon.com Inc. - Segment focus
    • SWOT
  • 15.5 Aporia Technologies
    • Aporia Technologies - Overview
    • Aporia Technologies - Product / Service
    • Aporia Technologies - Key offerings
    • SWOT
  • 15.6 ARTHUR
    • ARTHUR - Overview
    • ARTHUR - Product / Service
    • ARTHUR - Key offerings
    • SWOT
  • 15.7 Datadog Inc.
    • Datadog Inc. - Overview
    • Datadog Inc. - Product / Service
    • Datadog Inc. - Key offerings
    • SWOT
  • 15.8 DataRobot Inc.
    • DataRobot Inc. - Overview
    • DataRobot Inc. - Product / Service
    • DataRobot Inc. - Key offerings
    • SWOT
  • 15.9 Deepchecks AI
    • Deepchecks AI - Overview
    • Deepchecks AI - Product / Service
    • Deepchecks AI - Key offerings
    • SWOT
  • 15.10 Domino Data Lab Inc.
    • Domino Data Lab Inc. - Overview
    • Domino Data Lab Inc. - Product / Service
    • Domino Data Lab Inc. - Key offerings
    • SWOT
  • 15.11 Dynatrace Inc.
    • Dynatrace Inc. - Overview
    • Dynatrace Inc. - Product / Service
    • Dynatrace Inc. - Key news
    • Dynatrace Inc. - Key offerings
    • SWOT
  • 15.12 Evidently AI
    • Evidently AI - Overview
    • Evidently AI - Product / Service
    • Evidently AI - Key offerings
    • SWOT
  • 15.13 Fiddler AI
    • Fiddler AI - Overview
    • Fiddler AI - Product / Service
    • Fiddler AI - Key offerings
    • SWOT
  • 15.14 Google LLC
    • Google LLC - Overview
    • Google LLC - Product / Service
    • Google LLC - Key offerings
    • SWOT
  • 15.15 New Relic Inc.
    • New Relic Inc. - Overview
    • New Relic Inc. - Product / Service
    • New Relic Inc. - Key offerings
    • SWOT
  • 15.16 Snowflake Inc.
    • Snowflake Inc. - Overview
    • Snowflake Inc. - Product / Service
    • Snowflake Inc. - Key offerings
    • SWOT
  • 15.17 Superwise
    • Superwise - Overview
    • Superwise - Product / Service
    • Superwise - Key offerings
    • SWOT
  • 15.18 WhyLabs, Inc.
    • WhyLabs, Inc. - Overview
    • WhyLabs, Inc. - Product / Service
    • WhyLabs, Inc. - Key offerings
    • SWOT

16 Appendix

  • 16.1 Scope of the report
    • Market definition
    • Objectives
    • Notes and caveats
  • 16.2 Inclusions and exclusions checklist
    • Inclusions checklist
    • Exclusions checklist
  • 16.3 Currency conversion rates for US$
    • Currency conversion rates for US$
  • 16.4 Research methodology
    • Research methodology
  • 16.5 Data procurement
    • Information sources
  • 16.6 Data validation
    • Data validation
  • 16.7 Validation techniques employed for market sizing
    • Validation techniques employed for market sizing
  • 16.8 Data synthesis
    • Data synthesis
  • 16.9 360 degree market analysis
    • 360 degree market analysis
  • 16.10 List of abbreviations
    • List of abbreviations
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