全球AutoML市场:产品(解决方案、服务)、应用(数据处理、模型选择、超参数优化和调整、特征工程、集成模型)、行业、地区-2028年预测
市场调查报告书
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1277588

全球AutoML市场:产品(解决方案、服务)、应用(数据处理、模型选择、超参数优化和调整、特征工程、集成模型)、行业、地区-2028年预测

Automated Machine Learning (AutoML) Market by Offering (Solutions & Services), Application (Data Processing, Model Selection, Hyperparameter Optimization & Tuning, Feature Engineering, Model Ensembling), Vertical and Region - Global Forecast to 2028

出版日期: | 出版商: MarketsandMarkets | 英文 349 Pages | 订单完成后即时交付

价格
简介目录

全球 AutoML(自动化机器学习)市场规模预计将从 2023 年的 10 亿美元扩大到 2028 年的 64 亿美元,在预测期内以 44.6% 的复合年增长率增长。。 可解释的 AI 是 AutoML 的一个关键方面,旨在提供机器学习模型如何进行预测的透明度。 通过使用特征重要性和决策树等可解释的 AI 技术,公司可以深入了解其模型的工作原理,从而做出更明智的决策。

按行业划分,BFSI 预计将成为预测期内最大的市场

AutoML 自动执行重复且耗时的任务,以构建具有生产力、效率和规模的机器学习模型,同时最大限度地减少实施和训练机器学习模型所需的知识库资源。它是 BFSI 部门使用的新技术减少 AutoML 可用于信用卡欺诈检测、风险评估和实时投资盈亏预测。 AutoML 还可以自动化数据提取和算法,消除手动分析部分并显着缩短实施时间。 例如,Consensus Corporation 使用 AutoML 将部署时间从 3-4 週减少到 8 小时。 AutoML 通过最大限度地减少 BFSI 领域的错误和偏差的可能性,帮助公司增加洞察力并提高模型准确性。 AutoML 为 BFSI 行业提供了多项优势。 它减少了对复杂且耗时的手动数据科学流程的需求,并加速了数据科学家的工作。 AutoML 还有助于根据数据优化业务绩效,使业务领导者能够通过实时分析做出决策。

根据应用,集成模型部分预计在预测期内以最高复合年增长率增长

AutoML for Ensemble Models 涉及使用自动化技术来创建可以组合以提高预测准确性的模型集合。 集成是机器学习中的一种常用技术,它结合来自多个模型的预测以产生更准确的最终预测。 AutoML 可以通过多种方式执行集成模型,例如装袋、提升和堆迭。 AutoML 可以自动创建具有不同算法和超参数的多个模型,并使用集成技术将它们组合起来。 这降低了过度拟合的风险,并允许您利用不同算法的优势,从而提高最终模型的稳健性和准确性。 将 AutoML 用于集成模型的优势在于它可以自动执行模型选择和绑定过程,从而节省数据科学家的时间和精力。 AutoML 还可以评估不同集成方法的性能,并选择在给定数据集上表现最佳的方法。

按服务划分,预计咨询服务细分市场在预测期内将占据最大的市场规模

咨询服务通常由第三方供应商或咨询公司提供,以提供有关机器学习策略和实施的专业知识和指导。 咨询服务可帮助组织评估数据准备情况、确定用例并製定在其组织内实施机器学习的路线图。 AutoML 咨询服务可帮助组织驾驭机器学习工具和平台的复杂环境,并根据其特定需求和目标就使用哪些工具和技术做出明智的决策。 我们还可以指导您完成数据准备、模型选择、超参数调整,并评估您的机器学习模型的性能和有效性。 顾问可以在现场或远程工作,并在整个机器学习生命週期中提供持续的支持和指导。 通过提供专业知识、指导和教育,顾问可以帮助公司做出明智的决策,并通过他们的机器学习计划取得更好的结果。

预计在预测期内北美将占据最大的市场规模

据估计,北美在 AutoML 市场中占有最大份额。 全球 AutoML 市场以北美为主。 北美是全球 AutoML 市场中创收最高的地区,其中美国的市场份额最高,其次是加拿大。 该地区在医疗保健、金融和零售等各个行业对机器学习和人工智能技术的采用率很高,预计这将推动对 AutoML 解决方案的需求。 此外,该地区大量数据驱动的初创公司和公司的存在也进一步推动了北美 AutoML 市场的增长。

内容

第 1 章介绍

第 2 章研究方法论

第 3 章执行摘要

第 4 章重要注意事项

第 5 章市场概述和行业趋势

  • 介绍
  • 市场动态
    • 促进因素
    • 因素
    • 机会
    • 任务
  • 案例研究分析
  • 生态系统分析
  • AutoML 的历史
  • AutoML 流水线框架
  • 价值链分析
  • 定价模型分析
  • 专利分析
  • AutoML 技术
  • 比较 AutoAI 和 AutoML 解决方案
  • AutoML 业务模型
  • 技术分析
  • 波特的五力分析
  • 主要会议和活动
  • 监管状况
  • 主要利益相关者和采购标准
  • AutoML 市场的最佳做法
  • 影响 AutoML 市场买家/客户的中断
  • AutoML 前景的未来方向

第 6 章 AutoML 市场:按产品分类

  • 介绍
  • 解决方案
  • 服务
    • 咨询服务
    • 部署/集成
    • 培训/支持/维护

第 7 章 AutoML 市场:按应用分类

  • 介绍
  • 数据处理
    • 清洁
    • 转型
    • 可视化
  • 模型选择
    • 缩放
    • 监控
    • 版本控制
  • 超参数优化和调整
    • 网格搜索
    • 随机搜索
    • 贝叶斯搜索
  • 特征工程
  • 整体模型
    • 基础架构
    • 整合
    • 维护
  • 其他

第 8 章 AutoML 市场:按行业分类

  • 介绍
  • 银行、金融服务和保险 (BFSI)
  • 医学和生命科学
  • 零售/电子商务
  • 製造业
  • 政府/国防
  • 沟通
  • IT/ITES
  • 汽车、运输、物流
  • 媒体和娱乐
  • 其他

第 9 章 AutoML 市场:按地区

  • 介绍
  • 北美
    • 美国
    • 加拿大
  • 欧洲
    • 德国
    • 法国
    • 意大利
    • 西班牙
    • 北欧国家
    • 其他欧洲
  • 亚太地区
    • 中国
    • 日本
    • 韩国
    • 东盟
    • 澳大利亚和新西兰
    • 亚太其他地区
  • 中东和非洲
    • 沙特阿拉伯
    • 阿拉伯联合酋长国
    • 以色列
    • 土耳其人
    • 南非
    • 其他中东和非洲地区
  • 拉丁美洲
    • 巴西
    • 墨西哥
    • 阿根廷
    • 其他拉丁美洲

第10章竞争格局

  • 概览
  • 主要公司采用的策略
  • 利润分析
  • 市场份额分析
  • 主要公司的评估象限矩阵
  • 中小企业/初创企业评估象限矩阵
  • 竞争基准
  • AutoML 产品状态
  • 竞争场景
  • 领先的 AutoML 供应商评级和财务指标
  • 主要 AutoML 供应商的年初至今总收入和价格测试版

第 11 章公司简介

  • 主要公司
    • IBM
    • ORACLE
    • MICROSOFT
    • SERVICENOW
    • GOOGLE
    • BAIDU
    • AWS
    • ALTERYX
    • HPE
    • SALESFORCE
    • ALTAIR
    • TERADATA
    • H2O.AI
    • DATAROBOT
    • BIGML
    • DATABRICKS
    • DATAIKU
    • MATHWORKS
    • SPARKCOGNITION
    • QLIK
  • 其他公司
    • ALIBABA CLOUD
    • APPIER
    • SQUARK
    • AIBLE
    • DATAFOLD
    • BOOST.AI
    • TAZI AI
    • AKKIO
    • VALOHAI
    • DOTDATA

    第 12 章相邻和相关市场

    • 生成式 AI 市场
    • 人工智能市场

    第 13 章附录

  • 简介目录
    Product Code: TC 8641

    The market for Automated Machine Learning is projected to grow from USD 1.0 billion in 2023 to USD 6.4 billion by 2028, at a CAGR of 44.6% during the forecast period. Explainable AI is a crucial aspect of AutoML that aims to provide transparency into how machine learning models make predictions. By using explainable AI techniques, such as feature importance and decision trees, businesses can gain insights into how their models work and make more informed decisions.

    The BFSI vertical is projected to be the largest market during the forecast period

    AutoML is an emerging technology used in the BFSI sectors to automate iterative and time-consuming tasks, build machine learning models with productivity, efficiency, and high scale, and minimize the knowledge-based resources needed to implement and train machine learning models. AutoML can be used for credit card fraud detection, risk assessment, and real-time gain and loss prediction for investments. AutoML can also help reduce deployment time by automating data extraction and algorithms, eliminating manual parts of the analyses, and significantly reducing deployment time. For instance, the Consensus Corporation reduced its deployment time from 3-4 weeks to eight hours using AutoML. AutoML can help enterprises boost insights and enhance model accuracy by minimizing the chances of error or bias in the BFSI sector. AutoML provides several benefits to the BFSI industry. It helps to reduce the need for manual data science processes, which can be complex and time-consuming, and can accelerate the work of data scientists. AutoML can also help optimize business performance driven by data, enabling business leaders to make decisions with real-time analytics.

    Among Application, model ensembling segment is registered to grow at the highest CAGR during the forecast period

    AutoML for model ensembling involves the use of automated techniques to create a collection of models that can be combined to improve prediction accuracy. Ensembling is a popular technique in machine learning that involves combining the predictions of multiple models to generate a more accurate final prediction. AutoML can use various techniques for model ensembling, such as bagging, boosting, and stacking. AutoML can automatically create multiple models using different algorithms and hyperparameters and then combine them using ensembling techniques. This can improve the robustness and accuracy of the final model, as it reduces the risk of overfitting and leverages the strengths of different algorithms. The benefit of using AutoML for model ensembling is that it can automate the process of selecting and combining models, which can save time and effort for data scientists. AutoML can also evaluate the performance of different ensembling methods and select the one that performs the best on the given dataset.

    Among services, consulting services segment is anticipated to account for the largest market size during the forecast period

    Consulting services are typically offered by third-party vendors or consulting firms, providing expertise and guidance on machine learning strategy and implementation. Consulting services can help organizations evaluate their data readiness, identify use cases, and develop a roadmap for implementing machine learning within their organization. AutoML consulting services can help organizations navigate the complex landscape of machine learning tools and platforms and make informed decisions about which tools and technologies to use based on their specific needs and goals. Consultants can also guide data preparation, model selection, and hyperparameter tuning and can help organizations evaluate the performance and effectiveness of their machine learning models. Consultants may work onsite or remotely and provide ongoing support and guidance throughout the machine learning lifecycle. By providing expertise, guidance, and education, consultants can help organizations make informed decisions and achieve better results with their machine learning initiatives.

    North America to account for the largest market size during the forecast period

    North America is estimated to account for the largest share of the Automated Machine Learning market. The global market for Automated Machine Learning is dominated by North America. North America is the highest revenue-generating region in the global Automated Machine Learning market, with the US constituting the highest market share, followed by Canada. The region has a high adoption rate of machine learning and artificial intelligence technologies across various industries, including healthcare, finance, and retail, which is expected to drive the demand for AutoML solutions. Moreover, the presence of a large number of data-driven startups and companies in the region is further fueling the growth of the AutoML market in North America.

    Breakdown of primaries

    In-depth interviews were conducted with Chief Executive Officers (CEOs), innovation and technology directors, system integrators, and executives from various key organizations operating in the Automated Machine Learning market.

    • By Company: Tier I: 35%, Tier II: 45%, and Tier III: 20%
    • By Designation: C-Level Executives: 35%, Directors: 25%, and Others: 40%
    • By Region: APAC: 30%, Europe: 20%, North America: 40%, MEA: 5%, Latin America: 5%

    Major vendors offering Automted Machine Learning solutions and services across the globe are IBM (US), Oracle (US), Microsoft (US), ServiceNow (US), Google (US), Baidu (China), AWS (US), Alteryx (US), Salesforce (US), Altair (US), Teradata (US), H2O.ai (US), DataRobot (US), BigML (US), Databricks (US), Dataiku (France), Alibaba Cloud (China), Appier (Taiwan), Squark (US), Aible (US), Datafold (US), Boost.ai (Norway), Tazi.ai (US), Akkio (US), Valohai (Finland), dotData (US), Qlik (US), Mathworks (US), HPE (US), and SparkCognition (US).

    Research Coverage

    The market study covers Automated Machine Learning across segments. It aims at estimating the market size and the growth potential across different segments, such as offering, application, vertical, and region. It includes an in-depth competitive analysis of the key players in the market, along with their company profiles, key observations related to product and business offerings, recent developments, and key market strategies.

    Key Benefits of Buying the Report

    The report would provide the market leaders/new entrants in this market with information on the closest approximations of the revenue numbers for the overall market for Automated Machine Learning and its subsegments. It would help stakeholders understand the competitive landscape and gain more insights better to position their business and plan suitable go-to-market strategies. It also helps stakeholders understand the pulse of the market and provides them with information on key market drivers, restraints, challenges, and opportunities.

    The report provides insights on the following pointers:

    • Analysis of key drivers (Growing demand for improved customer satisfaction and personalized product recommendations through AutoML, Increasing need for accurate fraud detection, Growing data volume and complexity, Rising need to transform businesses with Intelligent automation using AutoML), restraints (Machine learning tools are being slowly adopted, Lack of standardization and regulations), opportunities (Capitalizing on growing demand for AI-enabled solutions, Integration with complementary technologies, Seizing opportunities for faster decision-making and cost savings ), and challenges (Increasing shortage of skilled talent, Difficulty in Interpreting and explaining AutoML models, Data privacy in AutoML) influencing the growth of the Automated Machine Learning market
    • Product Development/Innovation: Detailed insights on upcoming technologies, research & development activities, and new product & service launches in the Automated Machine Learning market.
    • Market Development: Comprehensive information about lucrative markets - the report analyses the Automated Machine Learning market across varied regions
    • Market Diversification: Exhaustive information about new products & services, untapped geographies, recent developments, and investments in Automated Machine Learning market strategies; the report also helps stakeholders understand the pulse of the Automated Machine Learning market and provides them with information on key market drivers, restraints, challenges, and opportunities
    • Competitive Assessment: In-depth assessment of market shares, growth strategies and service offerings of leading players such as IBM (US), Google (US), AWS(US), Microsoft (US), Salesforce (US), among others in the Automated Machine Learning market.

    TABLE OF CONTENTS

    1 INTRODUCTION

    • 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, 2020-2022
    • 1.6 STAKEHOLDERS

    2 RESEARCH METHODOLOGY

    • 2.1 RESEARCH DATA
      • FIGURE 1 AUTOMATED MACHINE LEARNING MARKET: RESEARCH DESIGN
      • 2.1.1 SECONDARY DATA
        • 2.1.1.1 Key data from secondary sources
      • 2.1.2 PRIMARY DATA
        • 2.1.2.1 Key data from primary sources
        • 2.1.2.2 Key primary interview participants
        • 2.1.2.3 Breakup of primary profiles
        • 2.1.2.4 Key industry insights
    • 2.2 DATA TRIANGULATION
    • 2.3 MARKET SIZE ESTIMATION
      • FIGURE 2 AUTOMATED MACHINE LEARNING MARKET: TOP-DOWN AND BOTTOM-UP APPROACHES
      • 2.3.1 TOP-DOWN APPROACH
      • 2.3.2 BOTTOM-UP APPROACH
      • FIGURE 3 APPROACH 1 (SUPPLY SIDE): REVENUE FROM OFFERINGS OF AUTOMATED MACHINE LEARNING MARKET PLAYERS
      • FIGURE 4 APPROACH 2 - BOTTOM-UP (SUPPLY SIDE): COLLECTIVE REVENUE FROM OFFERINGS OF AUTOMATED MACHINE LEARNING MARKET PLAYERS
      • FIGURE 5 APPROACH 3 - BOTTOM-UP (SUPPLY SIDE): REVENUE AND SUBSEQUENT MARKET ESTIMATION FROM AUTOMATED MACHINE LEARNING MARKET OFFERINGS
      • FIGURE 6 APPROACH 4 - BOTTOM-UP (DEMAND SIDE): SHARE OF AUTOMATED MACHINE LEARNING MARKET OFFERINGS THROUGH OVERALL AUTOMATED MACHINE LEARNING SPENDING
    • 2.4 MARKET FORECAST
      • TABLE 2 FACTOR ANALYSIS
    • 2.5 RESEARCH ASSUMPTIONS
    • 2.6 LIMITATIONS AND RISK ASSESSMENT
    • 2.7 IMPACT OF RECESSION ON GLOBAL AUTOMATED MACHINE LEARNING MARKET
      • TABLE 3 IMPACT OF RECESSION ON GLOBAL AUTOMATED MACHINE LEARNING MARKET

    3 EXECUTIVE SUMMARY

      • TABLE 4 GLOBAL AUTOMATED MACHINE LEARNING MARKET SIZE AND GROWTH RATE, 2017-2022 (USD MILLION, Y-O-Y%)
      • TABLE 5 GLOBAL AUTOMATED MACHINE LEARNING MARKET SIZE AND GROWTH RATE, 2023-2028 (USD MILLION, Y-O-Y%)
      • FIGURE 7 SOLUTIONS SEGMENT TO LEAD MARKET IN 2023
      • FIGURE 8 PLATFORMS SEGMENT TO ACCOUNT FOR LARGEST SHARE IN 2023
      • FIGURE 9 OM-PREMISES SEGMENT TO ACCOUNT FOR LARGER SHARE DURING FORECAST PERIOD
      • FIGURE 10 CONSULTING SERVICES SEGMENT TO ACCOUNT FOR LARGEST SHARE IN 2023
      • FIGURE 11 DATA PROCESSING SEGMENT TO ACCOUNT FOR LARGEST SHARE IN 2023
      • FIGURE 12 BFSI SEGMENT TO LEAD MARKET IN 2023
      • FIGURE 13 NORTH AMERICA TO ACCOUNT FOR LARGEST SHARE IN 2023

    4 PREMIUM INSIGHTS

    • 4.1 ATTRACTIVE MARKET OPPORTUNITIES FOR PLAYERS IN AUTOMATED MACHINE LEARNING MARKET
      • FIGURE 14 RISING DEMAND FOR PLATFORMS TO TRANSFER DATA FROM ON-PREMISES TO CLOUD TO DRIVE AUTOMATED MACHINE LEARNING MARKET
    • 4.2 AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL
      • FIGURE 15 RETAIL & ECOMMERCE SEGMENT TO ACCOUNT FOR LARGEST SHARE DURING FORECAST PERIOD
    • 4.3 AUTOMATED MACHINE LEARNING MARKET, BY REGION
      • FIGURE 16 NORTH AMERICA TO ACCOUNT FOR LARGEST SHARE BY 2028
    • 4.4 AUTOMATED MACHINE LEARNING MARKET, BY OFFERING AND KEY VERTICAL
      • FIGURE 17 SOLUTIONS AND BFSI SEGMENTS TO ACCOUNT FOR SIGNIFICANT SHARE BY 2028

    5 MARKET OVERVIEW AND INDUSTRY TRENDS

    • 5.1 INTRODUCTION
    • 5.2 MARKET DYNAMICS
      • FIGURE 18 AUTOMATED MACHINE LEARNING MARKET: DRIVERS, RESTRAINTS, OPPORTUNITIES, AND CHALLENGES
      • 5.2.1 DRIVERS
        • 5.2.1.1 Growing demand for improved customer satisfaction and personalized product recommendations through AutoML
        • 5.2.1.2 Increasing need for accurate fraud detection
        • 5.2.1.3 Growing data volume and complexity
        • 5.2.1.4 Rising need to transform businesses with intelligent automation using AutoML
      • 5.2.2 RESTRAINTS
        • 5.2.2.1 Slow adoption of machine learning tools
        • 5.2.2.2 Lack of standardization and regulations
      • 5.2.3 OPPORTUNITIES
        • 5.2.3.1 Growing demand for AI-enabled solutions across industries
        • 5.2.3.2 Seamless integration between technologies
        • 5.2.3.3 Increased accessibility of machine learning solutions
      • 5.2.4 CHALLENGES
        • 5.2.4.1 Growing shortage of skilled workforce
        • 5.2.4.2 Difficulty in interpreting and explaining AutoML models
        • 5.2.4.3 Rising threat to data privacy
    • 5.3 CASE STUDY ANALYSIS
      • 5.3.1 REAL ESTATE
        • 5.3.1.1 Case Study 1: Ascendas Singbridge Group improved real estate decision-making by leveraging DataRobot's AutoML platform
        • 5.3.1.2 Case Study 2: G5 employed H2O.AI's driverless AI platform to address challenges in identifying productive leads
      • 5.3.2 BFSI
        • 5.3.2.1 Case Study 1: Robotica helped Avant automate key processes and streamline lending operations
        • 5.3.2.2 Case Study 2: Domestic and General partnered with DataRobot to improve customer service capabilities
        • 5.3.2.3 Case Study 3: H2O.AI's machine learning platform enabled PayPal to strengthen fraud detection capabilities
      • 5.3.3 RETAIL & ECOMMERCE
        • 5.3.3.1 Case Study 1: California Design Den partnered with Google Cloud Platform to implement machine learning solutions
      • 5.3.4 IT/ITES
        • 5.3.4.1 Case Study 1: Contentree helped Consensus simplify data wrangling process and make it efficient
        • 5.3.4.2 Case Study 2: DataRobot's automated machine learning platform helped Demyst automate data science processes
      • 5.3.5 HEALTHCARE & LIFESCIENCES
        • 5.3.5.1 Case Study 1: DataRobot helped Evariant automate patient risk stratification and readmission prediction
      • 5.3.6 MEDIA & ENTERTAINMENT
        • 5.3.6.1 Case Study 1: Meredith Corporation worked with Google Cloud to build data analytics platform to handle large volumes of data
      • 5.3.7 TRANSPORTATION & LOGISTICS
        • 5.3.7.1 Case Study 1: DMWay enabled PGL to integrate and analyze data from multiple sources
      • 5.3.8 ENERGY & UTILITIES
        • 5.3.8.1 Case Study 1: SparkCognition helped oil & gas industry to build predictive models by leveraging automated machine learning solutions
    • 5.4 ECOSYSTEM ANALYSIS
      • FIGURE 19 ECOSYSTEM ANALYSIS
      • TABLE 6 AUTOMATED MACHINE LEARNING MARKET: PLATFORM PROVIDERS
      • TABLE 7 AUTOMATED MACHINE LEARNING MARKET: SERVICE PROVIDERS
      • TABLE 8 AUTOMATED MACHINE LEARNING MARKET: TECHNOLOGY PROVIDERS
      • TABLE 9 AUTOMATED MACHINE LEARNING MARKET: REGULATORY BODIES
    • 5.5 HISTORY OF AUTOMATED MACHINE LEARNING
    • 5.6 AUTOMATED MACHINE LEARNING PIPELINE FRAMEWORK
      • FIGURE 20 AUTOMATED MACHINE LEARNING PIPELINE FRAMEWORK
      • TABLE 10 AUTOMATED MACHINE LEARNING PIPELINE FRAMEWORK
    • 5.7 VALUE CHAIN ANALYSIS
      • FIGURE 21 VALUE CHAIN ANALYSIS
      • 5.7.1 DATA COLLECTION & PREPARATION
      • 5.7.2 ALGORITHM DEVELOPMENT
      • 5.7.3 MODEL TRAINING
      • 5.7.4 MODEL TESTING AND VALIDATION
      • 5.7.5 DEPLOYMENT AND INTEGRATION
      • 5.7.6 MAINTENANCE AND SUPPORT
    • 5.8 PRICING MODEL ANALYSIS
      • TABLE 11 AUTOMATED MACHINE LEARNING MARKET: PRICING LEVELS
    • 5.9 PATENT ANALYSIS
      • 5.9.1 METHODOLOGY
      • 5.9.2 DOCUMENT TYPE
      • TABLE 12 PATENTS FILED, 2018-2021
      • 5.9.3 INNOVATION AND PATENT APPLICATIONS
      • FIGURE 22 TOTAL NUMBER OF PATENTS GRANTED, 2021-2023
        • 5.9.3.1 Top applicants
      • FIGURE 23 TOP TEN COMPANIES WITH HIGHEST NUMBER OF PATENT APPLICATIONS, 2018-2021
      • TABLE 13 TOP 20 PATENT OWNERS, 2018-2021
      • TABLE 14 LIST OF PATENTS IN AUTOMATED MACHINE LEARNING MARKET, 2021-2023
    • 5.10 AUTOMATED MACHINE LEARNING TECHNIQUES
      • 5.10.1 BAYESIAN OPTIMIZATION
      • 5.10.2 REINFORCEMENT LEARNING
      • 5.10.3 EVOLUTIONARY ALGORITHM
      • 5.10.4 GRADIENT APPROACHES
    • 5.11 COMPARISON OF AUTOAI AND AUTOML SOLUTIONS
      • TABLE 15 COMPARISON BETWEEN AUTOAI AND AUTOML SOLUTIONS
    • 5.12 BUSINESS MODELS OF AUTOML
      • 5.12.1 API MODELS
      • 5.12.2 AS-A-SERVICE MODEL
      • 5.12.3 CLOUD MODEL
    • 5.13 TECHNOLOGY ANALYSIS
      • 5.13.1 RELATED TECHNOLOGIES
        • 5.13.1.1 Supervised learning
        • 5.13.1.2 Unsupervised learning
        • 5.13.1.3 Natural language processing
        • 5.13.1.4 Computer vision
        • 5.13.1.5 Transfer learning
      • 5.13.2 ALLIED TECHNOLOGIES
        • 5.13.2.1 Cloud computing
        • 5.13.2.2 Robotics
        • 5.13.2.3 Federated learning
    • 5.14 PORTER'S FIVE FORCES ANALYSIS
      • FIGURE 24 PORTER'S FIVE FORCES ANALYSIS
      • TABLE 16 PORTER'S FIVE FORCES ANALYSIS
      • 5.14.1 THREAT FROM NEW ENTRANTS
      • 5.14.2 THREAT FROM SUBSTITUTES
      • 5.14.3 BARGAINING POWER OF SUPPLIERS
      • 5.14.4 BARGAINING POWER OF BUYERS
      • 5.14.5 INTENSITY OF COMPETITIVE RIVALRY
    • 5.15 KEY CONFERENCES & EVENTS
      • TABLE 17 DETAILED LIST OF CONFERENCES & EVENTS, 2023-2024
    • 5.16 REGULATORY LANDSCAPE
      • 5.16.1 REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
      • TABLE 18 NORTH AMERICA: REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
      • TABLE 19 EUROPE: REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
      • TABLE 20 ASIA PACIFIC: LIST OF REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
      • TABLE 21 ROW: REGULATORY BODIES, GOVERNMENT AGENCIES, AND OTHER ORGANIZATIONS
        • 5.16.1.1 North America
          • 5.16.1.1.1 US
          • 5.16.1.1.2 Canada
        • 5.16.1.2 Europe
        • 5.16.1.3 Asia Pacific
          • 5.16.1.3.1 South Korea
          • 5.16.1.3.2 China
          • 5.16.1.3.3 India
        • 5.16.1.4 Middle East & Africa
          • 5.16.1.4.1 UAE
          • 5.16.1.4.2 KSA
          • 5.16.1.4.3 Bahrain
        • 5.16.1.5 Latin America
          • 5.16.1.5.1 Brazil
          • 5.16.1.5.2 Mexico
    • 5.17 KEY STAKEHOLDERS & BUYING CRITERIA
      • 5.17.1 KEY STAKEHOLDERS IN BUYING PROCESS
      • FIGURE 25 INFLUENCE OF STAKEHOLDERS ON BUYING PROCESS FOR TOP THREE VERTICALS
      • TABLE 22 INFLUENCE OF STAKEHOLDERS ON BUYING PROCESS FOR TOP THREE VERTICALS
      • 5.17.2 BUYING CRITERIA
      • FIGURE 26 KEY BUYING CRITERIA FOR TOP THREE VERTICALS
      • TABLE 23 KEY BUYING CRITERIA FOR TOP THREE VERTICALS
    • 5.18 BEST PRACTICES IN AUTOMATED MACHINE LEARNING MARKET
    • 5.19 DISRUPTIONS IMPACTING BUYERS/CLIENTS IN AUTOMATED MACHINE LEARNING MARKET
      • FIGURE 27 AUTOMATED MACHINE LEARNING MARKET: DISRUPTIONS IMPACTING BUYERS/CLIENTS
    • 5.20 FUTURE DIRECTIONS OF AUTOMATED MACHINE LEARNING LANDSCAPE
      • TABLE 24 SHORT-TERM ROADMAP, 2023-2025
      • TABLE 25 MID-TERM ROADMAP, 2026-2028
      • TABLE 26 LONG-TERM ROADMAP, 2029-2030

    6 AUTOMATED MACHINE LEARNING MARKET, BY OFFERING

    • 6.1 INTRODUCTION
      • 6.1.1 OFFERINGS: AUTOMATED MACHINE LEARNING MARKET DRIVERS
      • FIGURE 28 SERVICES SEGMENT TO GROW AT HIGHER CAGR DURING FORECAST PERIOD
      • TABLE 27 AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2017-2022 (USD MILLION)
      • TABLE 28 AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2023-2028 (USD MILLION)
    • 6.2 SOLUTIONS
      • TABLE 29 SOLUTIONS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 30 SOLUTIONS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • 6.2.1 AUTOMATED MACHINE LEARNING SOLUTIONS, BY TYPE
      • FIGURE 29 PLATFORMS SEGMENT TO WITNESS HIGHER GROWTH DURING FORECAST PERIOD
      • TABLE 31 SOLUTIONS: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 32 SOLUTIONS: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
        • 6.2.1.1 Platforms
          • 6.2.1.1.1 Ease of use and deployment to drive adoption of automated machine learning platforms
      • TABLE 33 PLATFORMS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 34 PLATFORMS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
        • 6.2.1.2 Software
          • 6.2.1.2.1 Ease of integration into existing machine learning workflows to boost deployment of automated machine learning software solutions
      • TABLE 35 SOFTWARE: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 36 SOFTWARE: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • 6.2.2 AUTOMATED MACHINE LEARNING SOLUTIONS, BY DEPLOYMENT
      • FIGURE 30 ON-PREMISES SEGMENT TO WITNESS HIGHER CAGR DURING FORECAST PERIOD
      • TABLE 37 SOLUTIONS: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2017-2022 (USD MILLION)
      • TABLE 38 SOLUTIONS: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2023-2028 (USD MILLION)
        • 6.2.2.1 On-premises
          • 6.2.2.1.1 Increased control over data and infrastructure to drive on-premises deployment of automated machine learning solutions
      • TABLE 39 ON-PREMISES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 40 ON-PREMISES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
        • 6.2.2.2 Cloud
          • 6.2.2.2.1 Flexibility and scalability of cloud-based AutoML solutions to boost market growth
      • TABLE 41 CLOUD: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 42 CLOUD: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
    • 6.3 SERVICES
      • FIGURE 31 TRAINING, SUPPORT, AND MAINTENANCE SEGMENT TO ACCOUNT FOR LARGEST SHARE DURING FORECAST PERIOD
      • TABLE 43 SERVICES: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 44 SERVICES: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
      • TABLE 45 SERVICES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 46 SERVICES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • 6.3.1 CONSULTING SERVICES
        • 6.3.1.1 Rising demand for expert guidance on machine learning strategies to drive growth of automated machine learning consulting services
      • TABLE 47 CONSULTING SERVICES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 48 CONSULTING SERVICES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • 6.3.2 DEPLOYMENT AND INTEGRATION
        • 6.3.2.1 Rising demand for integrating machine learning models into existing workflows and applications to boost adoption of AutoML deployment and integration services
      • TABLE 49 DEPLOYMENT AND INTEGRATION: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 50 DEPLOYMENT AND INTEGRATION: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • 6.3.3 TRAINING, SUPPORT, AND MAINTENANCE
        • 6.3.3.1 Rising preference for optimal model performance and accuracy to drive use of AutoML training, support, and maintenance services
      • TABLE 51 TRAINING, SUPPORT, AND MAINTENANCE: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 52 TRAINING, SUPPORT, AND MAINTENANCE: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)

    7 AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION

    • 7.1 INTRODUCTION
      • 7.1.1 APPLICATIONS: AUTOMATED MACHINE LEARNING MARKET DRIVERS
      • FIGURE 32 DATA PROCESSING SEGMENT TO LEAD MARKET DURING FORECAST PERIOD
      • TABLE 53 AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2017-2022 (USD MILLION)
      • TABLE 54 AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2023-2028 (USD MILLION)
    • 7.2 DATA PROCESSING
      • 7.2.1 GROWING NEED TO DETECT AND CORRECT DATA ERRORS TO DRIVE ADOPTION OF AUTOML SOLUTIONS FOR DATA PROCESSING
      • TABLE 55 DATA PROCESSING: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 56 DATA PROCESSING: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • 7.2.2 CLEANING
      • 7.2.3 TRANSFORMATION
      • 7.2.4 VISUALIZATION
    • 7.3 MODEL SELECTION
      • 7.3.1 RISING DEMAND FOR AUTOMATED TECHNIQUES TO HANDLE COMPLEX DATA TO BOOST GROWTH OF AUTOML SOLUTIONS FOR MODEL SELECTION
      • TABLE 57 MODEL SELECTION: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 58 MODEL SELECTION: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • 7.3.2 SCALING
      • 7.3.3 MONITORING
      • 7.3.4 VERSIONING
    • 7.4 HYPERPARAMETER OPTIMIZATION & TUNING
      • 7.4.1 INCREASED ADOPTION OF AUTOML ALGORITHMS FOR HYPERPARAMETER OPTIMIZATION TO DRIVE MARKET GROWTH
      • TABLE 59 HYPERPARAMETER TUNING & OPTIMIZATION: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 60 HYPERPARAMETER TUNING & OPTIMIZATION: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • 7.4.2 GRID SEARCH
      • 7.4.3 RANDOM SEARCH
      • 7.4.4 BAYESIAN SEARCH
    • 7.5 FEATURE ENGINEERING
      • 7.5.1 RISING NEED TO TRANSFORM RAW DATA INTO SET OF FEATURES FOR USE IN MACHINE LEARNING MODELS TO BOOST ADOPTION OF AUTOML SOLUTIONS IN FEATURE ENGINEERING
      • TABLE 61 FEATURE ENGINEERING: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 62 FEATURE ENGINEERING: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
    • 7.6 MODEL ENSEMBLING
      • 7.6.1 GROWING IMPORTANCE OF IMPROVING PREDICTION ACCURACY TO PROPEL GROWTH OF AUTOML SOLUTIONS FOR MODEL ENSEMBLING
      • 7.6.2 INFRASTRUCTURE & FORMAT
      • 7.6.3 INTEGRATION
      • 7.6.4 MAINTENANCE
    • 7.7 OTHER APPLICATIONS
      • TABLE 65 OTHER APPLICATIONS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 66 OTHER APPLICATIONS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)

    8 AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL

    • 8.1 INTRODUCTION
      • 8.1.1 VERTICALS: AUTOMATED MACHINE LEARNING MARKET DRIVERS
      • FIGURE 33 BFSI SEGMENT TO ACCOUNT FOR LARGER MARKET SIZE DURING FORECAST PERIOD
      • TABLE 67 AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 68 AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2023-2028 (USD MILLION)
    • 8.2 BANKING, FINANCIAL SERVICES, AND INSURANCE
      • 8.2.1 NEED TO OPTIMIZE BUSINESS PERFORMANCE WITH REAL-TIME ANALYTICS TO DRIVE USE OF AUTOML SOLUTIONS IN BFSI SECTOR
      • TABLE 69 BFSI: USE CASES
      • TABLE 70 BFSI: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 71 BFSI: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • TABLE 72 BFSI: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 73 BFSI: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2023-2028 (USD MILLION)
      • 8.2.2 CREDIT SCORING
      • 8.2.3 FRAUD DETECTION
      • 8.2.4 RISK ANALYSIS & MANAGEMENT
      • 8.2.5 OTHER BFSI SUB-VERTICALS
    • 8.3 HEALTHCARE & LIFE SCIENCES
      • 8.3.1 DEMAND FOR IMPROVED DIAGNOSES AND PERSONALIZED TREATMENT PLANS TO DRIVE MARKET FOR AI AND ML SOLUTIONS FOR HEALTHCARE & LIFE SCIENCES INDUSTRY
      • TABLE 74 HEALTHCARE & LIFESCIENCES: USE CASES
      • TABLE 75 HEALTHCARE & LIFE SCIENCES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 76 HEALTHCARE & LIFE SCIENCES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • TABLE 77 HEALTHCARE & LIFE SCIENCES: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 78 HEALTHCARE & LIFE SCIENCES: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2023-2028 (USD MILLION)
      • 8.3.2 ANOMALY DETECTION
      • 8.3.3 DISEASE DIAGNOSIS
      • 8.3.4 DRUG DISCOVERY
      • 8.3.5 OTHER HEALTHCARE SUB-VERTICALS
    • 8.4 RETAIL & ECOMMERCE
      • 8.4.1 GROWING NEED FOR PERSONALIZATION AND OPTIMIZATION IN HIGHLY COMPETITIVE INDUSTRIES TO BOOST MARKET GROWTH
      • TABLE 79 RETAIL & ECOMMERCE: USE CASES
      • TABLE 80 RETAIL & ECOMMERCE: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 81 RETAIL & ECOMMERCE: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • TABLE 82 RETAIL & ECOMMERCE: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 83 RETAIL & ECOMMERCE: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2023-2028 (USD MILLION)
      • 8.4.2 DEMAND FORECASTING
      • 8.4.3 PRICE OPTIMIZATION
      • 8.4.4 RECOMMENDATION ENGINES
      • 8.4.5 SENTIMENT ANALYSIS
      • 8.4.6 SOCIAL MEDIA ANALYTICS
      • 8.4.7 CHATBOTS FOR CUSTOMER SERVICE & SUPPORT
      • 8.4.8 OTHER RETAIL & ECOMMERCE SUB-VERTICALS
    • 8.5 MANUFACTURING
      • 8.5.1 AUTOML SOLUTIONS TO OPTIMIZE MANUFACTURING PROCESS AND IMPROVE EFFICIENCY
      • TABLE 84 MANUFACTURING: USE CASES
      • TABLE 85 MANUFACTURING: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 86 MANUFACTURING: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • TABLE 87 MANUFACTURING: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 88 MANUFACTURING: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2023-2028 (USD MILLION)
      • 8.5.2 PREDICTIVE MAINTENANCE
      • 8.5.3 QUALITY CONTROL
      • 8.5.4 ROBOTIC PROCESS AUTOMATION
      • 8.5.5 SUPPLY CHAIN OPTIMIZATION
      • 8.5.6 OTHER MANUFACTURING SUB-VERTICALS
    • 8.6 GOVERNMENT & DEFENSE
      • 8.6.1 RISING NEED TO EMPOWER NATIONAL SECURITY AND PUBLIC SERVICES TO DRIVE ADOPTION OF AUTOML PLATFORMS IN GOVERNMENT & DEFENSE SECTOR
      • TABLE 89 GOVERNMENT & DEFENSE: USE CASES
      • TABLE 90 GOVERNMENT & DEFENSE: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 91 GOVERNMENT & DEFENSE: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • TABLE 92 GOVERNMENT & DEFENSE: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 93 GOVERNMENT & DEFENSE: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2023-2028 (USD MILLION)
      • 8.6.2 CYBERSECURITY THREAT DETECTION
      • 8.6.3 FRAUD DETECTION & PREVENTION
      • 8.6.4 NATURAL DISASTER MANAGEMENT
      • 8.6.5 CUSTOMER SERVICE CHATBOTS
      • 8.6.6 OTHER GOVERNMENT & DEFENSE SUB-VERTICALS
    • 8.7 TELECOMMUNICATIONS
      • 8.7.1 NEED FOR ENHANCED CUSTOMER SERVICE TO BOOST USE OF AUTOML SOLUTIONS IN TELECOMMUNICATIONS INDUSTRY
      • TABLE 94 TELECOMMUNICATIONS: USE CASES
      • TABLE 95 TELECOMMUNICATIONS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 96 TELECOMMUNICATIONS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • TABLE 97 TELECOMMUNICATIONS: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 98 TELECOMMUNICATIONS: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2023-2028 (USD MILLION)
      • 8.7.2 CYBERSECURITY THREAT DETECTION
      • 8.7.3 NETWORK OPTIMIZATION
      • 8.7.4 PREDICTIVE MAINTENANCE
      • 8.7.5 FRAUD DETECTION & PREVENTION
      • 8.7.6 CHATBOTS & VIRTUAL ASSISTANCE
      • 8.7.7 OTHER TELECOMMUNICATIONS SUB-VERTICALS
    • 8.8 IT/ITES
      • 8.8.1 NEED TO OPTIMIZE PROCESSES AND ENHANCE CYBERSECURITY TO PROPEL GROWTH OF AUTOMATED MACHINE LEARNING MARKET FOR IT/ITES SECTOR
      • TABLE 99 IT/ITES: USE CASES
      • TABLE 100 IT/ITES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 101 IT/ITES: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • TABLE 102 IT/ITES: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 103 IT/ITES: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2023-2028 (USD MILLION)
      • 8.8.2 PREDICTIVE MAINTENANCE
      • 8.8.3 VIRTUAL ASSISTANTS FOR CUSTOMER SUPPORT
      • 8.8.4 NETWORK OPTIMIZATION
      • 8.8.5 OTHER IT/ITES SUB-VERTICALS
    • 8.9 AUTOMOTIVE, TRANSPORTATION, AND LOGISTICS
      • 8.9.1 AUTOMATED MACHINE LEARNING SOLUTIONS TO ENABLE ORGANIZATIONS TO LEVERAGE DATA AND GAIN INSIGHTS FOR BETTER BUSINESS DECISIONS
      • TABLE 104 AUTOMOTIVE, TRANSPORTATION, AND LOGISTICS: USE CASES
      • TABLE 105 AUTOMOTIVE, TRANSPORTATION, AND LOGISTICS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 106 AUTOMOTIVE, TRANSPORTATION, AND LOGISTICS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • TABLE 107 AUTOMOTIVE, TRANSPORTATION, AND LOGISTICS: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 108 AUTOMOTIVE, TRANSPORTATION, AND LOGISTICS: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2023-2028 (USD MILLION)
      • 8.9.2 AUTONOMOUS VEHICLES
      • 8.9.3 ROUTE OPTIMIZATION
      • 8.9.4 FUEL EFFICIENCY PREDICTION & OPTIMIZATION
      • 8.9.5 HUMAN MACHINE INTERFACE (HMI)
      • 8.9.6 SEMI-AUTONOMOUS DRIVING
      • 8.9.7 ROBOTIC PROCESS AUTOMATION
      • 8.9.8 OTHER AUTOMOTIVE, TRANSPORTATION, AND LOGISTICS SUB-VERTICALS
    • 8.10 MEDIA & ENTERTAINMENT
      • 8.10.1 USE OF AUTOML SOLUTIONS TO ENSURE IMPROVED CONTENT DISCOVERY
      • TABLE 109 MEDIA & ENTERTAINMENT: USE CASES
      • TABLE 110 MEDIA & ENTERTAINMENT: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 111 MEDIA & ENTERTAINMENT: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
      • TABLE 112 MEDIA & ENTERTAINMENT: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 113 MEDIA & ENTERTAINMENT: AUTOMATED MACHINE LEARNING MARKET, BY SUB-VERTICAL, 2023-2028 (USD MILLION)
      • 8.10.2 IMAGE & SPEECH RECOGNITION
      • 8.10.3 RECOMMENDATION SYSTEMS
      • 8.10.4 SENTIMENT ANALYSIS
      • 8.10.5 OTHER MEDIA & ENTERTAINMENT SUB-VERTICALS
    • 8.11 OTHER VERTICALS
      • TABLE 114 OTHER VERTICALS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 115 OTHER VERTICALS: AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)

    9 AUTOMATED MACHINE LEARNING MARKET, BY REGION

    • 9.1 INTRODUCTION
      • FIGURE 34 ASIA PACIFIC TO GROW AT HIGHEST CAGR DURING FORECAST PERIOD
      • FIGURE 35 INDIA TO GROW AT HIGHEST CAGR DURING FORECAST PERIOD
      • TABLE 116 AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2017-2022 (USD MILLION)
      • TABLE 117 AUTOMATED MACHINE LEARNING MARKET, BY REGION, 2023-2028 (USD MILLION)
    • 9.2 NORTH AMERICA
      • 9.2.1 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET DRIVERS
      • 9.2.2 NORTH AMERICA: RECESSION IMPACT
      • FIGURE 36 NORTH AMERICA: MARKET SNAPSHOT
      • TABLE 118 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2017-2022 (USD MILLION)
      • TABLE 119 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2023-2028 (USD MILLION)
      • TABLE 120 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 121 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
      • TABLE 122 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2017-2022 (USD MILLION)
      • TABLE 123 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2023-2028 (USD MILLION)
      • TABLE 124 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2017-2022 (USD MILLION)
      • TABLE 125 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2023-2028 (USD MILLION)
      • TABLE 126 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2017-2022 (USD MILLION)
      • TABLE 127 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2023-2028 (USD MILLION)
      • TABLE 128 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 129 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2023-2028 (USD MILLION)
      • TABLE 130 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2017-2022 (USD MILLION)
      • TABLE 131 NORTH AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2023-2028 (USD MILLION)
      • 9.2.3 US
        • 9.2.3.1 Growing demand for efficient ways to build and deploy machine learning models to drive market growth
      • TABLE 132 US: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2017-2022 (USD MILLION)
      • TABLE 133 US: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2023-2028 (USD MILLION)
      • TABLE 134 US: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 135 US: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
      • TABLE 136 US: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2017-2022 (USD MILLION)
      • TABLE 137 US: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2023-2028 (USD MILLION)
      • TABLE 138 US: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2017-2022 (USD MILLION)
      • TABLE 139 US: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2023-2028 (USD MILLION)
      • 9.2.4 CANADA
        • 9.2.4.1 Rising adoption of machine learning applications in various industries across Canada to fuel market growth
    • 9.3 EUROPE
      • 9.3.1 EUROPE: AUTOMATED MACHINE LEARNING MARKET DRIVERS
      • 9.3.2 EUROPE: RECESSION IMPACT
      • TABLE 140 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2017-2022 (USD MILLION)
      • TABLE 141 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2023-2028 (USD MILLION)
      • TABLE 142 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 143 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
      • TABLE 144 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2017-2022 (USD MILLION)
      • TABLE 145 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2023-2028 (USD MILLION)
      • TABLE 146 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2017-2022 (USD MILLION)
      • TABLE 147 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2023-2028 (USD MILLION)
      • TABLE 148 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2017-2022 (USD MILLION)
      • TABLE 149 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2023-2028 (USD MILLION)
      • TABLE 150 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 151 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2023-2028 (USD MILLION)
      • TABLE 152 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2017-2022 (USD MILLION)
      • TABLE 153 EUROPE: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2023-2028 (USD MILLION)
      • TABLE 154 UK: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2017-2022 (USD MILLION)
      • TABLE 155 UK: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2023-2028 (USD MILLION)
      • TABLE 156 UK: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 157 UK: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
      • TABLE 158 UK: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2017-2022 (USD MILLION)
      • TABLE 159 UK: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2023-2028 (USD MILLION)
      • TABLE 160 UK: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2017-2022 (USD MILLION)
      • TABLE 161 UK: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2023-2028 (USD MILLION)
      • 9.3.4 GERMANY
        • 9.3.4.1 Strong IT infrastructure and robust regulatory framework to drive AutoML market in Germany
      • 9.3.5 FRANCE
        • 9.3.5.1 Country's thriving startup ecosystem to boost adoption of automated machine learning solutions
      • 9.3.6 ITALY
        • 9.3.6.1 Significant initiatives taken by government to promote use of automated machine learning platforms to boost market growth
      • 9.3.7 SPAIN
        • 9.3.7.1 Rising technological investments by major players to boost popularity of AutoML platforms and solutions in Spain
      • 9.3.8 NORDIC
        • 9.3.8.1 Increasing research and development in AI and machine learning in Nordic countries to drive market growth
      • 9.3.9 REST OF EUROPE
    • 9.4 ASIA PACIFIC
      • 9.4.1 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET DRIVERS
      • 9.4.2 ASIA PACIFIC: RECESSION IMPACT
      • FIGURE 37 ASIA PACIFIC: MARKET SNAPSHOT
      • TABLE 162 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2017-2022 (USD MILLION)
      • TABLE 163 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2023-2028 (USD MILLION)
      • TABLE 164 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 165 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
      • TABLE 166 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2017-2022 (USD MILLION)
      • TABLE 167 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2023-2028 (USD MILLION)
      • TABLE 168 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2017-2022 (USD MILLION)
      • TABLE 169 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2023-2028 (USD MILLION)
      • TABLE 170 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2017-2022 (USD MILLION)
      • TABLE 171 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2023-2028 (USD MILLION)
      • TABLE 172 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 173 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2023-2028 (USD MILLION)
      • TABLE 174 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2017-2022 (USD MILLION)
      • TABLE 175 ASIA PACIFIC: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2023-2028 (USD MILLION)
      • 9.4.3 CHINA
        • 9.4.3.1 Heavy investments made in machine learning technology to drive growth of automated machine learning solutions in China
      • TABLE 176 CHINA: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2017-2022 (USD MILLION)
      • TABLE 177 CHINA: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2023-2028 (USD MILLION)
      • TABLE 178 CHINA: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 179 CHINA: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
      • TABLE 180 CHINA: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2017-2022 (USD MILLION)
      • TABLE 181 CHINA: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2023-2028 (USD MILLION)
      • TABLE 182 CHINA: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2017-2022 (USD MILLION)
      • TABLE 183 CHINA: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2023-2028 (USD MILLION)
      • 9.4.4 JAPAN
        • 9.4.4.1 Growing need for technological enhancements to boost growth of AutoML solutions and services in Japan
      • 9.4.5 SOUTH KOREA
        • 9.4.5.1 Strong focus on developing cutting-edge technologies to boost use of AutoML solutions across sectors in South Korea
      • 9.4.6 ASEAN
        • 9.4.6.1 Rising demand to leverage machine learning solutions for competitive advantage to boost growth of automated machine learning market
      • 9.4.7 AUSTRALIA & NEW ZEALAND
        • 9.4.7.1 Increased innovations by major companies specializing in machine learning to drive adoption of AutoML solutions across industries
      • 9.4.8 REST OF ASIA PACIFIC
    • 9.5 MIDDLE EAST & AFRICA
      • 9.5.1 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET DRIVERS
      • 9.5.2 MIDDLE EAST & AFRICA: RECESSION IMPACT
      • TABLE 184 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2017-2022 (USD MILLION)
      • TABLE 185 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2023-2028 (USD MILLION)
      • TABLE 186 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 187 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
      • TABLE 188 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2017-2022 (USD MILLION)
      • TABLE 189 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2023-2028 (USD MILLION)
      • TABLE 190 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2017-2022 (USD MILLION)
      • TABLE 191 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2023-2028 (USD MILLION)
      • TABLE 192 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2017-2022 (USD MILLION)
      • TABLE 193 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2023-2028 (USD MILLION)
      • TABLE 194 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 195 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2023-2028 (USD MILLION)
      • TABLE 196 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2017-2022 (USD MILLION)
      • TABLE 197 MIDDLE EAST & AFRICA: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2023-2028 (USD MILLION)
      • 9.5.3 SAUDI ARABIA
        • 9.5.3.1 Saudi Arabia's commitment to leveraging AI and ML technologies to drive market growth
      • 9.5.4 UAE
        • 9.5.4.1 Rising growth of advanced technologies to drive market for AI and ML solutions and services
      • 9.5.5 ISRAEL
        • 9.5.5.1 Growing investments in AI and ML research by major players to boost growth of automated machine learning market in Israel
      • 9.5.6 TURKEY
        • 9.5.6.1 Growing ecosystem and adoption of machine learning technology across industries to boost market growth in Turkey
      • 9.5.7 SOUTH AFRICA
        • 9.5.7.1 Increasing investments and initiatives from governments and private sector to drive popularity of AI and ML solutions
      • 9.5.8 REST OF MIDDLE EAST & AFRICA
    • 9.6 LATIN AMERICA
      • 9.6.1 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET DRIVERS
      • 9.6.2 LATIN AMERICA: RECESSION IMPACT
      • TABLE 198 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2017-2022 (USD MILLION)
      • TABLE 199 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY OFFERING, 2023-2028 (USD MILLION)
      • TABLE 200 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2017-2022 (USD MILLION)
      • TABLE 201 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY TYPE, 2023-2028 (USD MILLION)
      • TABLE 202 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2017-2022 (USD MILLION)
      • TABLE 203 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY DEPLOYMENT, 2023-2028 (USD MILLION)
      • TABLE 204 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2017-2022 (USD MILLION)
      • TABLE 205 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY SERVICE, 2023-2028 (USD MILLION)
      • TABLE 206 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2017-2022 (USD MILLION)
      • TABLE 207 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY APPLICATION, 2023-2028 (USD MILLION)
      • TABLE 208 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2017-2022 (USD MILLION)
      • TABLE 209 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY VERTICAL, 2023-2028 (USD MILLION)
      • TABLE 210 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2017-2022 (USD MILLION)
      • TABLE 211 LATIN AMERICA: AUTOMATED MACHINE LEARNING MARKET, BY COUNTRY, 2023-2028 (USD MILLION)
      • 9.6.3 BRAZIL
        • 9.6.3.1 Significant government support to drive adoption of AI and ML technologies across industries
      • 9.6.4 MEXICO
        • 9.6.4.1 Rapid growth in country's technology sector to drive market for automated machine learning
      • 9.6.5 ARGENTINA
        • 9.6.5.1 Government incentives to foreign companies for investments in country's technology sector to boost AutoML market growth
      • 9.6.6 REST OF LATIN AMERICA

    10 COMPETITIVE LANDSCAPE

    • 10.1 OVERVIEW
    • 10.2 STRATEGIES ADOPTED BY KEY PLAYERS
      • TABLE 212 STRATEGIES ADOPTED BY KEY PLAYERS
    • 10.3 REVENUE ANALYSIS
      • FIGURE 38 REVENUE ANALYSIS FOR KEY PLAYERS, 2018-2022
    • 10.4 MARKET SHARE ANALYSIS
      • FIGURE 39 MARKET SHARE ANALYSIS FOR KEY PLAYERS, 2022
      • TABLE 213 AUTOMATED MACHINE LEARNING MARKET: INTENSITY OF COMPETITIVE RIVALRY
    • 10.5 EVALUATION QUADRANT MATRIX FOR KEY PLAYERS
      • 10.5.1 STARS
      • 10.5.2 EMERGING LEADERS
      • 10.5.3 PERVASIVE PLAYERS
      • 10.5.4 PARTICIPANTS
      • FIGURE 40 EVALUATION QUADRANT MATRIX FOR KEY PLAYERS, 2023
    • 10.6 EVALUATION QUADRANT MATRIX FOR SMES/STARTUPS
      • 10.6.1 PROGRESSIVE COMPANIES
      • 10.6.2 RESPONSIVE COMPANIES
      • 10.6.3 DYNAMIC COMPANIES
      • 10.6.4 STARTING BLOCKS
      • FIGURE 41 EVALUATION QUADRANT MATRIX FOR SMES/STARTUPS, 2023
    • 10.7 COMPETITIVE BENCHMARKING
      • TABLE 214 COMPETITIVE BENCHMARKING FOR KEY PLAYERS, 2023
      • TABLE 215 DETAILED LIST OF KEY SMES/STARTUPS
      • TABLE 216 COMPETITIVE BENCHMARKING FOR SMES/STARTUPS, 2023
    • 10.8 AUTOMATED MACHINE LEARNING PRODUCT LANDSCAPE
      • 10.8.1 COMPARATIVE ANALYSIS OF AUTOMATED MACHINE LEARNING PRODUCTS
      • TABLE 217 COMPARATIVE ANALYSIS OF AUTOMATED MACHINE LEARNING PRODUCTS
      • FIGURE 42 COMPARATIVE ANALYSIS OF AUTOMATED MACHINE LEARNING PRODUCTS
    • 10.9 COMPETITIVE SCENARIO
      • 10.9.1 PRODUCT LAUNCHES
      • TABLE 218 AUTOMATED MACHINE LEARNING MARKET: PRODUCT LAUNCHES, 2020-2023
      • 10.9.2 DEALS
      • TABLE 219 AUTOMATED MACHINE LEARNING MARKET: DEALS, 2020-2023
      • 10.9.3 OTHERS
      • TABLE 220 AUTOMATED MACHINE LEARNING MARKET: OTHERS, 2020-2022
    • 10.10 VALUATION AND FINANCIAL METRICS OF KEY AUTOMATED MACHINE LEARNING VENDORS
      • FIGURE 43 VALUATION AND FINANCIAL METRICS OF KEY AUTOMATED MACHINE LEARNING VENDORS
    • 10.11 YTD PRICE TOTAL RETURN AND STOCK BETA OF KEY AUTOMATED MACHINE LEARNING VENDORS
      • FIGURE 44 YTD PRICE TOTAL RETURN AND STOCK BETA OF KEY AUTOMATED MACHINE LEARNING VENDORS

    11 COMPANY PROFILES

    • 11.1 INTRODUCTION
    • 11.2 KEY PLAYERS
    • (Business Overview, Products/Solutions offered, Recent Developments, MnM View)**
      • 11.2.1 IBM
      • TABLE 221 IBM: BUSINESS OVERVIEW
      • FIGURE 45 IBM: COMPANY SNAPSHOT
      • TABLE 222 IBM: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 223 IBM: PRODUCT LAUNCHES
      • TABLE 224 IBM: DEALS
      • 11.2.2 ORACLE
      • TABLE 225 ORACLE: BUSINESS OVERVIEW
      • FIGURE 46 ORACLE: COMPANY SNAPSHOT
      • TABLE 226 ORACLE: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 227 ORACLE: PRODUCT LAUNCHES
      • TABLE 228 ORACLE: DEALS
      • TABLE 229 ORACLE: OTHERS
      • 11.2.3 MICROSOFT
      • TABLE 230 MICROSOFT: BUSINESS OVERVIEW
      • FIGURE 47 MICROSOFT: COMPANY SNAPSHOT
      • TABLE 231 MICROSOFT: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 232 MICROSOFT: PRODUCT LAUNCHES
      • TABLE 233 MICROSOFT: DEALS
      • 11.2.4 SERVICENOW
      • TABLE 234 SERVICENOW: BUSINESS OVERVIEW
      • FIGURE 48 SERVICENOW: COMPANY SNAPSHOT
      • TABLE 235 SERVICENOW: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 236 SERVICENOW: PRODUCT LAUNCHES
      • TABLE 237 SERVICENOW: DEALS
      • 11.2.5 GOOGLE
      • TABLE 238 GOOGLE: BUSINESS OVERVIEW
      • FIGURE 49 GOOGLE: COMPANY SNAPSHOT
      • TABLE 239 GOOGLE: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 240 GOOGLE: PRODUCT LAUNCHES
      • TABLE 241 GOOGLE: DEALS
      • 11.2.6 BAIDU
      • TABLE 242 BAIDU: BUSINESS OVERVIEW
      • FIGURE 50 BAIDU: COMPANY SNAPSHOT
      • TABLE 243 BAIDU: PRODUCTS OFFERED
      • TABLE 244 BAIDU: PRODUCT LAUNCHES
      • TABLE 245 BAIDU: DEALS
      • 11.2.7 AWS
      • TABLE 246 AWS: BUSINESS OVERVIEW
      • FIGURE 51 AWS: COMPANY SNAPSHOT
      • TABLE 247 AWS: PRODUCTS/SERVICES OFFERED
      • TABLE 248 AWS: PRODUCT LAUNCHES
      • TABLE 249 AWS: DEALS
      • TABLE 250 AWS: OTHERS
      • 11.2.8 ALTERYX
      • TABLE 251 ALTERYX: BUSINESS OVERVIEW
      • FIGURE 52 ALTERYX: COMPANY SNAPSHOT
      • TABLE 252 ALTERYX: PRODUCTS OFFERED
      • TABLE 253 ALTERYX: PRODUCT LAUNCHES
      • TABLE 254 ALTERYX: DEALS
      • 11.2.9 HPE
      • TABLE 255 HPE: BUSINESS OVERVIEW
      • FIGURE 53 HPE: COMPANY SNAPSHOT
      • TABLE 256 HPE: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 257 HPE: PRODUCT LAUNCHES
      • TABLE 258 HPE: DEALS
      • 11.2.10 SALESFORCE
      • TABLE 259 SALESFORCE: BUSINESS OVERVIEW
      • FIGURE 54 SALESFORCE: COMPANY SNAPSHOT
      • TABLE 260 SALESFORCE: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 261 SALESFORCE: PRODUCT LAUNCHES
      • TABLE 262 SALESFORCE: DEALS
      • 11.2.11 ALTAIR
      • TABLE 263 ALTAIR: BUSINESS OVERVIEW
      • FIGURE 55 ALTAIR: COMPANY SNAPSHOT
      • TABLE 264 ALTAIR: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 265 ALTAIR: PRODUCT LAUNCHES
      • TABLE 266 ALTAIR: DEALS
      • 11.2.12 TERADATA
      • TABLE 267 TERADATA: BUSINESS OVERVIEW
      • FIGURE 56 TERADATA: COMPANY SNAPSHOT
      • TABLE 268 TERADATA: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 269 TERADATA: DEALS
      • 11.2.13 H2O.AI
      • TABLE 270 H2O.AI: BUSINESS OVERVIEW
      • TABLE 271 H2O.AI: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 272 H2O.AI: PRODUCT LAUNCHES
      • TABLE 273 H2O.AI: DEALS
      • 11.2.14 DATAROBOT
      • TABLE 274 DATAROBOT: BUSINESS OVERVIEW
      • TABLE 275 DATAROBOT: PRODUCTS/SERVICES OFFERED
      • TABLE 276 DATAROBOT: DEALS
      • 11.2.15 BIGML
      • TABLE 277 BIGML: BUSINESS OVERVIEW
      • TABLE 278 BIGML: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 279 BIGML: PRODUCT LAUNCHES
      • TABLE 280 BIGML: DEALS
      • 11.2.16 DATABRICKS
      • TABLE 281 DATABRICKS: BUSINESS OVERVIEW
      • TABLE 282 DATABRICKS: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 283 DATABRICKS: PRODUCT LAUNCHES
      • TABLE 284 DATABRICKS: DEALS
      • 11.2.17 DATAIKU
      • TABLE 285 DATAIKU: BUSINESS OVERVIEW
      • TABLE 286 DATAIKU: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 287 DATAIKU: PRODUCT LAUNCHES
      • TABLE 288 DATAIKU: DEALS
      • 11.2.18 MATHWORKS
      • TABLE 289 MATHWORKS: BUSINESS OVERVIEW
      • TABLE 290 MATHWORKS: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 291 MATHWORKS: PRODUCT LAUNCHES
      • TABLE 292 MATHWORKS: DEALS
      • 11.2.19 SPARKCOGNITION
      • TABLE 293 SPARKCOGNITION: BUSINESS OVERVIEW
      • TABLE 294 SPARKCOGNITION: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 295 SPARKCOGNITION: PRODUCT LAUNCHES
      • TABLE 296 SPARKCOGNITION: DEALS
      • 11.2.20 QLIK
      • TABLE 297 QLIK: BUSINESS OVERVIEW
      • TABLE 298 QLIK: PRODUCTS/SOLUTIONS OFFERED
      • TABLE 299 QLIK: PRODUCT LAUNCHES
      • TABLE 300 QLIK: DEALS
    • *Details on Business Overview, Products/Solutions offered, Recent Developments, MnM View might not be captured in case of unlisted companies.
    • 11.3 OTHER PLAYERS
      • 11.3.1 ALIBABA CLOUD
      • 11.3.2 APPIER
      • 11.3.3 SQUARK
      • 11.3.4 AIBLE
      • 11.3.5 DATAFOLD
      • 11.3.6 BOOST.AI
      • 11.3.7 TAZI AI
      • 11.3.8 AKKIO
      • 11.3.9 VALOHAI
      • 11.3.10 DOTDATA

    12 ADJACENT AND RELATED MARKETS

    • 12.1 GENERATIVE AI MARKET
      • 12.1.1 MARKET DEFINITION
      • 12.1.2 MARKET OVERVIEW
      • TABLE 301 GLOBAL GENERATIVE AI MARKET SIZE AND GROWTH RATE, 2019-2022 (USD MILLION, Y-O-Y %)
      • TABLE 302 GLOBAL GENERATIVE AI MARKET SIZE AND GROWTH RATE, 2023-2028 (USD MILLION, Y-O-Y %)
      • 12.1.3 GENERATIVE AI MARKET, BY OFFERING
      • TABLE 303 GENERATIVE AI MARKET, BY OFFERING, 2019-2022 (USD MILLION)
      • TABLE 304 GENERATIVE AI MARKET, BY OFFERING, 2023-2028 (USD MILLION)
      • 12.1.4 GENERATIVE AI MARKET, BY APPLICATION
      • TABLE 305 GENERATIVE AI MARKET, BY APPLICATION, 2019-2022 (USD MILLION)
      • TABLE 306 GENERATIVE AI MARKET, BY APPLICATION, 2023-2028 (USD MILLION)
      • 12.1.5 GENERATIVE AI MARKET, BY VERTICAL
      • TABLE 307 GENERATIVE AI MARKET, BY VERTICAL, 2019-2022 (USD MILLION)
      • TABLE 308 GENERATIVE AI MARKET, BY VERTICAL, 2023-2028 (USD MILLION)
      • 12.1.6 GENERATIVE AI MARKET, BY REGION
      • TABLE 309 GENERATIVE AI MARKET, BY REGION, 2019-2022 (USD MILLION)
      • TABLE 310 GENERATIVE AI MARKET, BY REGION, 2023-2028 (USD MILLION)
    • 12.2 ARTIFICIAL INTELLIGENCE MARKET
      • 12.2.1 MARKET DEFINITION
      • 12.2.2 MARKET OVERVIEW
      • 12.2.3 ARTIFICIAL INTELLIGENCE MARKET, BY OFFERING
      • TABLE 311 ARTIFICIAL INTELLIGENCE MARKET, BY OFFERING, 2016-2021 (USD BILLION)
      • TABLE 312 ARTIFICIAL INTELLIGENCE MARKET, BY OFFERING, 2022-2027 (USD BILLION)
      • 12.2.4 ARTIFICIAL INTELLIGENCE MARKET, BY TECHNOLOGY
      • TABLE 313 ARTIFICIAL INTELLIGENCE MARKET, BY TECHNOLOGY, 2016-2021 (USD BILLION)
      • TABLE 314 ARTIFICIAL INTELLIGENCE MARKET, BY TECHNOLOGY, 2022-2027 (USD BILLION)
      • 12.2.5 ARTIFICIAL INTELLIGENCE MARKET, BY DEPLOYMENT MODE
      • TABLE 315 ARTIFICIAL INTELLIGENCE MARKET, BY DEPLOYMENT MODE, 2016-2021 (USD BILLION)
      • TABLE 316 ARTIFICIAL INTELLIGENCE MARKET, BY DEPLOYMENT MODE, 2022-2027 (USD BILLION)
      • 12.2.6 ARTIFICIAL INTELLIGENCE MARKET, BY ORGANIZATION SIZE
      • TABLE 317 ARTIFICIAL INTELLIGENCE MARKET, BY ORGANIZATION SIZE, 2016-2021 (USD BILLION)
      • TABLE 318 ARTIFICIAL INTELLIGENCE MARKET, BY ORGANIZATION SIZE, 2022-2027 (USD BILLION)
      • 12.2.7 ARTIFICIAL INTELLIGENCE MARKET, BY BUSINESS FUNCTION
      • TABLE 319 ARTIFICIAL INTELLIGENCE MARKET, BY BUSINESS FUNCTION, 2016-2021 (USD BILLION)
      • TABLE 320 ARTIFICIAL INTELLIGENCE MARKET, BY BUSINESS FUNCTION, 2022-2027 (USD BILLION)
      • 12.2.8 ARTIFICIAL INTELLIGENCE MARKET, BY VERTICAL
      • TABLE 321 ARTIFICIAL INTELLIGENCE MARKET, BY VERTICAL, 2016-2021 (USD BILLION)
      • TABLE 322 ARTIFICIAL INTELLIGENCE MARKET, BY VERTICAL, 2022-2027 (USD BILLION)
      • 12.2.9 ARTIFICIAL INTELLIGENCE MARKET, BY REGION
      • TABLE 323 ARTIFICIAL INTELLIGENCE MARKET, BY REGION, 2016-2021 (USD BILLION)
      • TABLE 324 ARTIFICIAL INTELLIGENCE MARKET, BY REGION, 2022-2027 (USD BILLION)

    13 APPENDIX

    • 13.1 DISCUSSION GUIDE
    • 13.2 KNOWLEDGESTORE: MARKETSANDMARKETS' SUBSCRIPTION PORTAL
    • 13.3 CUSTOMIZATION OPTIONS
    • 13.4 RELATED REPORTS
    • 13.5 AUTHOR DETAILS