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機械学習(Machine Learning)の世界市場:業界別、用途別2022年予測

Machine Learning Market by Vertical (BFSI, Healthcare and Life Sciences, Retail, Telecommunication, Government and Defense, Manufacturing, Energy and Utilities), Deployment Mode, Service, Organization Size, and Region - Global Forecast to 2022

出版元:MarketsandMarketsLinkIcon出版元について
発行年:2017年9月
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【レポート紹介】
機械学習(Machine Learning)の世界市場は今後急速な成長が見込まれており、その市場規模は2017年段階の14億ドルから、2022年には88億ドル市場にまで増加するとレポートでは予測しています。カスタマーエクスペリエンス向上、ビジネス経営への活用を始め、今後見込まれる用途拡大は同市場のドライバーに挙げることができるでしょう。
当レポートでは、2022年に至る機械学習の世界市場予測(市場規模US$)、業界別用途別市場(銀行/金融/サービス/保険、医療ヘルスケア/ライフサイエンス、小売業、通信、政府/防衛、製造業、エネルギー/ユーティリティ、その他用途)、デプロイメントモード別市場(クラウド、オンプレミス)、組織規模別市場(中小企業、大企業)、サービス別市場(専門サービス、マネジメントサービス)、主要地域別市場など、詳細な市場予測データと分析を掲載しています。また市場分析、競合状況、主要メーカー企業12社プロフィール動向などの情報も交えて、機械学習市場の現在と今後展開を予測分析していきます。

【レポート構成概要】pic01_Semi.jpg
◆ 機械学習の世界市場予測2015-2022年
・市場規模(US$)

◆ 業界別、用途別市場-2022年
銀行、金融、サービス、保険
・不正、リスクマネジメント
・顧客セグメンテーション
・セールス、マーケティングキャンペーン
・投資予測
・デジタルアシスタント
・その他

医療ヘルスケア、ライフサイエンス
・疾患識別、診断
・画像解析
・個別化治療
・創薬、製薬
・その他

小売業
・在庫計画
・おすすめ機能(Recommendation engines)
・アップセル、クロスチャネルマーケティング
・セグメンテーション、ターゲティング
・その他

通信
・顧客分析
・ネットワークセキュリティー
・ネットワーク最適化
・その他

政府、防衛
・自律防衛システム
・脅威インテリジェンス
・その他

製造業
・予測メンテナンス
・収益予測
・需要予測
・サプライチェーンマネジメント
・その他

エネルギー、ユーティリティ
・電力/エネルギー使用量分析
・地震探査データ処理
・炭素排出
・スマートグリッドマネジメント
・その他

その他用途
(※市場規模US$)

◆ デプロイメントモード別、市場-2022年
・クラウド
・オンプレミス
(※市場規模US$)

◆ 組織規模別、市場-2022年
・中小企業
・大企業
(※市場規模US$)

◆ サービス別、市場-2022年
・専門サービス
・マネージドサービス
(※市場規模US$)

◆主要地域別市場-2022年
・北米
・欧州
・アジア太平洋
・中東アフリカ
・中南米
※ 地域ごとに全セグメントの細分化データ掲載、詳細は目次参照

◆市場分析
・市場ダイナミクス(ドライバー、障壁、機会、課題)
・市場トレンド(使用事例)
・競合状況

◆ 機械学習の主要企業プロフィール動向
・INTERNATIONAL BUSINESS MACHINES CORPORATION
・MICROSOFT CORPORATION
・SAP SE
・SAS INSTITUTE INC.
・AMAZON WEB SERVICES, INC.
・BIGML, INC.
・GOOGLE INC.
・FAIR ISAAC CORPORATION
・BAIDU, INC.
・HEWLETT PACKARD ENTERPRISE DEVELOPMENT LP
・INTEL CORPORATION
・H2O.AI

(全162頁)
【レポート詳細目次、データ項目一覧は当ページ下を参照ください】

英文詳細目次(table of contents)

【原文詳細目次】

Machine Learning Market by Vertical (BFSI, Healthcare and Life Sciences, Retail, Telecommunication, Government and Defense, Manufacturing, Energy and Utilities), Deployment Mode, Service, Organization Size, and Region - Global Forecast to 2022

Table of Contents

1 INTRODUCTION 16

1.1 OBJECTIVES OF THE STUDY 16
1.2 MARKET DEFINITION 16
1.3 MARKET SCOPE 17
1.4 YEARS CONSIDERED FOR THE STUDY 18
1.5 CURRENCY 18
1.6 STAKEHOLDERS 19

2 RESEARCH METHODOLOGY 20

2.1 RESEARCH DATA 20
2.1.1 SECONDARY DATA 21
2.1.2 PRIMARY DATA 21
2.1.2.1 Breakdown of primaries 21
2.1.2.2 Key industry insights 22
2.2 MARKET SIZE ESTIMATION 23
2.2.1 BOTTOM-UP APPROACH 24
2.2.2 TOP-DOWN APPROACH 25
2.3 MICROQUADRANT RESEARCH METHODOLOGY 25
2.3.1 VENDOR INCLUSION CRITERIA 26
2.4 RESEARCH ASSUMPTIONS 26
2.5 LIMITATIONS 27

3 EXECUTIVE SUMMARY 28
4 PREMIUM INSIGHTS 36

4.1 ATTRACTIVE MARKET OPPORTUNITIES IN THE MACHINE LEARNING MARKET 36
4.2 MACHINE LEARNING MARKET: TOP 3 VERTICALS 36
4.3 LIFECYCLE ANALYSIS, BY REGION, 2017–2022 37

5 MARKET OVERVIEW AND INDUSTRY TRENDS 39

5.1 INTRODUCTION 39
5.2 MARKET DYNAMICS 39
5.2.1 DRIVERS 40
5.2.1.1 Technological advancements 40
5.2.1.2 Proliferation in data generation 40
5.2.2 RESTRAINTS 40
5.2.2.1 Lack of skilled employees 40
5.2.3 OPPORTUNITIES 41
5.2.3.1 Increasing demand for intelligent business processes 41
5.2.3.2 Increasing adoption in modern applications 41
5.2.4 CHALLENGES 41
5.2.4.1 Sensitive data security 41
5.2.4.2 Ethical implications of the algorithms deployed 42
5.3 INDUSTRY TRENDS 42
5.3.1 MACHINE LEARNING: USE CASES 42
5.3.1.1 Introduction 42
5.3.1.2 USE CASE #1: Deliver analytics solution 42
5.3.1.3 USE CASE #2: Improve cross-selling capabilities 43
5.3.1.4 USE CASE #3: Increase revenue and decrease customer incompetence 43
5.3.1.5 USE CASE #4: Market basket analysis 44
5.4 MACHINE LEARNING PROCESS 44
5.5 REGULATORY IMPLICATIONS 45
5.5.1 INTRODUCTION 45
5.5.2 SARBANES-OXLEY ACT OF 2002 45
5.5.3 GENERAL DATA PROTECTION REGULATION 46
5.5.4 BASEL 46

6 MACHINE LEARNING MARKET ANALYSIS, BY VERTICAL 47

6.1 INTRODUCTION 48
6.1.1 MACHINE LEARNING APPLICATION IN BANKING, FINANCIAL SERVICES, AND INSURANCE 49
6.1.1.1 Fraud and risk management 50
6.1.1.2 Customer segmentation 50
6.1.1.3 Sales and marketing campaign management 50
6.1.1.4 Investment prediction 51
6.1.1.5 Digital assistance 51
6.1.1.6 Others 51
6.1.2 MACHINE LEARNING APPLICATION IN HEALTHCARE AND LIFE SCIENCES 51
6.1.2.1 Disease identification and diagnosis 52
6.1.2.2 Image analytics 53
6.1.2.3 Personalized treatment 53
6.1.2.4 Drug discovery/manufacturing 53
6.1.2.5 Others 53
6.1.3 MACHINE LEARNING APPLICATION IN RETAIL 53
6.1.3.1 Inventory planning 55
6.1.3.2 Recommendation engines 55
6.1.3.3 Upsells and cross channel marketing 55
6.1.3.4 Segmentation and targeting 55
6.1.3.5 Others 55
6.1.4 MACHINE LEARNING APPLICATION IN TELECOMMUNICATION 56
6.1.4.1 Customer analytics 57
6.1.4.2 Network security 57
6.1.4.3 Network optimization 58
6.1.4.4 Others 58
6.1.5 MACHINE LEARNING APPLICATION IN GOVERNMENT AND DEFENSE 58
6.1.5.1 Autonomous defense system 60
6.1.5.2 Threat intelligence 60
6.1.5.3 Others 60
6.1.6 MACHINE LEARNING APPLICATION IN MANUFACTURING 61
6.1.6.1 Predictive maintenance 62
6.1.6.2 Revenue estimation 62
6.1.6.3 Demand forecasting 62
6.1.6.4 Supply chain management 63
6.1.6.5 Others 63
6.1.7 MACHINE LEARNING APPLICATION IN ENERGY AND UTILITIES 63
6.1.7.1 Power/energy usage analytics 65
6.1.7.2 Seismic data processing 65
6.1.7.3 Carbon emission 65
6.1.7.4 Smart grid management 65
6.1.7.5 Others 65
6.1.8 OTHER APPLICATIONS 66

7 MACHINE LEARNING MARKET ANALYSIS, BY DEPLOYMENT MODE 67

7.1 INTRODUCTION 68
7.2 CLOUD 69
7.3 ON-PREMISES 69

8 MACHINE LEARNING MARKET ANALYSIS, BY ORGANIZATION SIZE 70

8.1 INTRODUCTION 71
8.2 LARGE ENTERPRISES 72
8.3 SMALL AND MEDIUM-SIZED ENTERPRISES 72

9 MACHINE LEARNING MARKET ANALYSIS, BY SERVICE 73

9.1 INTRODUCTION 74
9.2 PROFESSIONAL SERVICES 75
9.3 MANAGED SERVICES 75

10 GEOGRAPHIC ANALYSIS 76

10.1 INTRODUCTION 77
10.2 NORTH AMERICA 79
10.2.1 BY VERTICAL 81
10.2.1.1 Machine learning application trends in BFSI 82
10.2.1.2 Machine learning application trends in healthcare and life sciences 83
10.2.1.3 Machine learning application trends in retail 84
10.2.1.4 Machine learning application trends in telecommunication 84
10.2.1.5 Machine learning application trends in government and defense 85
10.2.1.6 Machine learning application trends in manufacturing 85
10.2.1.7 Machine learning application trends in energy and utilities 86
10.2.2 BY ORGANIZATION SIZE 86
10.2.3 BY DEPLOYMENT MODE 86
10.2.4 BY SERVICE 87
10.3 EUROPE 87
10.3.1 BY VERTICAL 88
10.3.1.1 Machine learning application trends in BFSI 89
10.3.1.2 Machine learning application trends in healthcare and life sciences 89
10.3.1.3 Machine learning application trends in retail 90
10.3.1.4 Machine learning application trends in telecommunication 90
10.3.1.5 Machine learning application trends in government and defense 91
10.3.1.6 Machine learning application trends in manufacturing 91
10.3.1.7 Machine learning application trends in energy and utilities 92
10.3.2 BY ORGANIZATION SIZE 92
10.3.3 BY DEPLOYMENT MODE 93
10.3.4 BY SERVICE 93
10.4 ASIA PACIFIC 94
10.4.1 BY VERTICAL 95
10.4.1.1 Machine learning application trends in BFSI 96
10.4.1.2 Machine learning application trends in healthcare and life sciences 96
10.4.1.3 Machine learning application trends in retail 97
10.4.1.4 Machine learning application trends in telecommunication 97
10.4.1.5 Machine learning application trends in government and defense 98
10.4.1.6 Machine learning application trends in manufacturing 98
10.4.1.7 Machine learning application trends in energy and utilities 99
10.4.2 BY ORGANIZATION SIZE 99
10.4.3 BY DEPLOYMENT MODE 100
10.4.4 BY SERVICE 100
10.5 MIDDLE EAST AND AFRICA 101
10.5.1 BY VERTICAL 101
10.5.1.1 Machine learning application trends in BFSI 102
10.5.1.2 Machine learning application trends in healthcare and life sciences 103
10.5.1.3 Machine learning application trends in retail 103
10.5.1.4 Machine learning application trends in telecommunication 104
10.5.1.5 Machine learning application trends in government and defense 104
10.5.1.6 Machine learning application trends in manufacturing 105
10.5.1.7 Machine learning application trends in energy and utilities 105
10.5.2 BY ORGANIZATION SIZE 106
10.5.3 BY DEPLOYMENT MODE 106
10.5.4 BY SERVICE 106
10.6 LATIN AMERICA 107
10.6.1 BY VERTICAL 107
10.6.1.1 Machine learning application trends in BFSI 108
10.6.1.2 Machine learning application trends in healthcare and life sciences 109
10.6.1.3 Machine learning application trends in retail 109
10.6.1.4 Machine learning application trends in telecommunication 110
10.6.1.5 Machine learning application trends in government and defense 110
10.6.1.6 Machine learning application trends in manufacturing 110
10.6.1.7 Machine learning application trends in energy and utilities 111
10.6.2 BY ORGANIZATION SIZE 111
10.6.3 BY DEPLOYMENT MODE 112
10.6.4 BY SERVICE 112

11 COMPETITIVE LANDSCAPE 113

11.1 MARKET RANKING FOR THE MACHINE LEARNING MARKET, 2017 113

12 COMPANY PROFILES 114

(Business Overview, Strength of product portfolio, Business strategy excellence, Recent developments)
12.1 INTERNATIONAL BUSINESS MACHINES CORPORATION 114
12.2 MICROSOFT CORPORATION 117
12.3 SAP SE 120
12.4 SAS INSTITUTE INC. 124
12.5 AMAZON WEB SERVICES, INC. 127
12.6 BIGML, INC. 130
12.7 GOOGLE INC. 133
12.8 FAIR ISAAC CORPORATION 136
12.9 BAIDU, INC. 139
12.10 HEWLETT PACKARD ENTERPRISE DEVELOPMENT LP 142
12.11 INTEL CORPORATION 145
12.12 H2O.AI 148
*Details on Overview, Strength of product portfolio, Business strategy excellence, Recent developments might not be captured in case of unlisted companies.

13 APPENDIX 151

LIST OF TABLES

TABLE 1 UNITED STATES DOLLAR EXCHANGE RATE, 2014–2016 18
TABLE 2 EVALUATION CRITERIA 25
TABLE 3 GLOBAL MACHINE LEARNING MARKET SIZE AND GROWTH RATE,
2015–2022 (USD MILLION, Y-O-Y %) 29
TABLE 4 MACHINE LEARNING MARKET SIZE, BY VERTICAL, 2015–2022 (USD MILLION) 48
TABLE 5 BANKING, FINANCIAL SERVICES, AND INSURANCE MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 50
TABLE 6 HEALTHCARE AND LIFE SCIENCES MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 52
TABLE 7 RETAIL MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 54
TABLE 8 TELECOMMUNICATION MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 57
TABLE 9 GOVERNMENT AND DEFENSE MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 59
TABLE 10 MANUFACTURING MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 62
TABLE 11 ENERGY AND UTILITIES MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 64
TABLE 12 MACHINE LEARNING MARKET SIZE, BY DEPLOYMENT MODE,
2015–2022 (USD MILLION) 68
TABLE 13 MACHINE LEARNING MARKET SIZE, BY ORGANIZATION SIZE,
2015–2022 (USD MILLION) 71
TABLE 14 MACHINE LEARNING MARKET SIZE, BY SERVICE, 2015–2022 (USD MILLION) 74
TABLE 15 MACHINE LEARNING MARKET SIZE, BY REGION, 2015–2022 (USD MILLION) 78
TABLE 16 NORTH AMERICA: MACHINE LEARNING MARKET SIZE, BY VERTICAL,
2015–2022 (USD MILLION) 81
TABLE 17 NORTH AMERICA: BANKING, FINANCIAL SERVICES, AND INSURANCE MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 82
TABLE 18 NORTH AMERICA: HEALTHCARE AND LIFE SCIENCES MARKET SIZE,
BY APPLICATION, 2015–2022 (USD MILLION) 83
TABLE 19 NORTH AMERICA: RETAIL MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 84
TABLE 20 NORTH AMERICA: TELECOMMUNICATION MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 84
TABLE 21 NORTH AMERICA: GOVERNMENT AND DEFENSE MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 85
TABLE 22 NORTH AMERICA: MANUFACTURING MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 85
TABLE 23 NORTH AMERICA: ENERGY AND UTILITIES MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 86
TABLE 24 NORTH AMERICA: MACHINE LEARNING MARKET SIZE, BY ORGANIZATION SIZE, 2015–2022 (USD MILLION) 86
TABLE 25 NORTH AMERICA: MACHINE LEARNING MARKET SIZE, BY DEPLOYMENT MODE, 2015–2022 (USD MILLION) 87
TABLE 26 NORTH AMERICA: MACHINE LEARNING MARKET SIZE, BY SERVICE,
2015–2022 (USD MILLION) 87
TABLE 27 EUROPE: MACHINE LEARNING MARKET SIZE, BY VERTICAL,
2015–2022 (USD MILLION) 88
TABLE 28 EUROPE: BANKING, FINANCIAL SERVICES, AND INSURANCE MARKET SIZE,
BY APPLICATION, 2015–2022 (USD MILLION) 89
TABLE 29 EUROPE: HEALTHCARE AND LIFE SCIENCES MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 90
TABLE 30 EUROPE: RETAIL MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 90
TABLE 31 EUROPE: TELECOMMUNICATION MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 91
TABLE 32 EUROPE: GOVERNMENT AND DEFENSE MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 91
TABLE 33 EUROPE: MANUFACTURING MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 92
TABLE 34 EUROPE: ENERGY AND UTILITIES MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 92
TABLE 35 EUROPE: MACHINE LEARNING MARKET SIZE, BY ORGANIZATION SIZE,
2015–2022 (USD MILLION) 93
TABLE 36 EUROPE: MACHINE LEARNING MARKET SIZE, BY DEPLOYMENT MODE,
2015–2022 (USD MILLION) 93
TABLE 37 EUROPE: MACHINE LEARNING MARKET SIZE, BY SERVICE,
2015–2022 (USD MILLION) 93
TABLE 38 ASIA PACIFIC: MACHINE LEARNING MARKET SIZE, BY VERTICAL,
2015–2022 (USD MILLION) 95
TABLE 39 ASIA PACIFIC: BANKING, FINANCIAL SERVICES, AND INSURANCE MARKET SIZE,
BY APPLICATION, 2015–2022 (USD MILLION) 96
TABLE 40 ASIA PACIFIC: HEALTHCARE AND LIFE SCIENCES MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 97
TABLE 41 ASIA PACIFIC: MACHINE LEARNING MARKET SIZE IN RETAIL, BY APPLICATION, 2015–2022 (USD MILLION) 97
TABLE 42 ASIA PACIFIC: TELECOMMUNICATION MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 98
TABLE 43 ASIA PACIFIC: GOVERNMENT AND DEFENSE MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 98
TABLE 44 ASIA PACIFIC: MANUFACTURING MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 99
TABLE 45 ASIA PACIFIC: ENERGY AND UTILITIES MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 99
TABLE 46 ASIA PACIFIC: MACHINE LEARNING MARKET SIZE, BY ORGANIZATION SIZE,
2015–2022 (USD MILLION) 100
TABLE 47 ASIA PACIFIC: MACHINE LEARNING MARKET SIZE, BY DEPLOYMENT MODE,
2015–2022 (USD MILLION) 100
TABLE 48 ASIA PACIFIC: MACHINE LEARNING MARKET SIZE, BY SERVICE,
2015–2022 (USD MILLION) 100
TABLE 49 MIDDLE EAST AND AFRICA: MACHINE LEARNING MARKET SIZE, BY VERTICAL, 2015–2022 (USD MILLION) 102
TABLE 50 MIDDLE EAST AND AFRICA: BANKING, FINANCIAL SERVICES, AND INSURANCE MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 102
TABLE 51 MIDDLE EAST AND AFRICA: HEALTHCARE AND LIFE SCIENCES MARKET SIZE,
BY APPLICATION, 2015–2022 (USD MILLION) 103
TABLE 52 MIDDLE EAST AND AFRICA: RETAIL MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 103
TABLE 53 MIDDLE EAST AND AFRICA: TELECOMMUNICATION MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 104
TABLE 54 MIDDLE EAST AND AFRICA: GOVERNMENT AND DEFENSE MARKET SIZE,
BY APPLICATION, 2015–2022 (USD MILLION) 104
TABLE 55 MIDDLE EAST AND AFRICA: MANUFACTURING MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 105
TABLE 56 MIDDLE EAST AND AFRICA: ENERGY AND UTILITIES MARKET SIZE,
BY APPLICATION, 2015–2022 (USD MILLION) 105
TABLE 57 MIDDLE EAST AND AFRICA: MACHINE LEARNING MARKET SIZE, BY ORGANIZATION SIZE, 2015–2022 (USD MILLION) 106
TABLE 58 MIDDLE EAST AND AFRICA: MACHINE LEARNING MARKET SIZE,
BY DEPLOYMENT MODE, 2015–2022 (USD MILLION) 106
TABLE 59 MIDDLE EAST AND AFRICA: MACHINE LEARNING MARKET SIZE, BY SERVICE, 2015–2022 (USD MILLION) 106
TABLE 60 LATIN AMERICA: MACHINE LEARNING MARKET SIZE, BY VERTICAL,
2015–2022 (USD MILLION) 108
TABLE 61 LATIN AMERICA: BANKING, FINANCIAL SERVICES, AND INSURANCE MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 108
TABLE 62 LATIN AMERICA: HEALTHCARE AND LIFE SCIENCES MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 109
TABLE 63 LATIN AMERICA: RETAIL MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 109
TABLE 64 LATIN AMERICA: TELECOMMUNICATION MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 110
TABLE 65 LATIN AMERICA: GOVERNMENT AND DEFENSE MARKET SIZE, BY APPLICATION, 2015–2022 (USD MILLION) 110
TABLE 66 LATIN AMERICA: MANUFACTURING MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 111
TABLE 67 LATIN AMERICA: ENERGY AND UTILITIES MARKET SIZE, BY APPLICATION,
2015–2022 (USD MILLION) 111
TABLE 68 LATIN AMERICA: MACHINE LEARNING MARKET SIZE, BY ORGANIZATION SIZE, 2015–2022 (USD MILLION) 112
TABLE 69 LATIN AMERICA: MACHINE LEARNING MARKET SIZE, BY DEPLOYMENT MODE, 2015–2022 (USD MILLION) 112
TABLE 70 LATIN AMERICA: MACHINE LEARNING MARKET SIZE, BY SERVICE,
2015–2022 (USD MILLION) 112
TABLE 71 MARKET RANKING FOR THE MACHINE LEARNING MARKET, 2017 113

LIST OF FIGURES

FIGURE 1 GLOBAL MACHINE LEARNING MARKET: MARKET SEGMENTATION 17
FIGURE 2 GLOBAL MACHINE LEARNING MARKET: RESEARCH DESIGN 20
FIGURE 3 BREAKDOWN OF PRIMARY INTERVIEWS: BY COMPANY SIZE, DESIGNATION,
AND REGION 21
FIGURE 4 DATA TRIANGULATION 23
FIGURE 5 MARKET SIZE ESTIMATION METHODOLOGY: BOTTOM-UP APPROACH 24
FIGURE 6 MARKET SIZE ESTIMATION METHODOLOGY: TOP-DOWN APPROACH 25
FIGURE 7 MACHINE LEARNING MARKET SNAPSHOT (2017), BY VERTICAL 29
FIGURE 8 MACHINE LEARNING MARKET SNAPSHOT (2017), BY BANKING,
FINANCIAL SERVICES, AND INSURANCE APPLICATION 30
FIGURE 9 MACHINE LEARNING MARKET SNAPSHOT (2017), BY HEALTHCARE
AND LIFE SCIENCES APPLICATION 30
FIGURE 10 MACHINE LEARNING MARKET SNAPSHOT (2017), BY RETAIL APPLICATION 31
FIGURE 11 MACHINE LEARNING MARKET SNAPSHOT (2017), BY TELECOMMUNICATION APPLICATION 31
FIGURE 12 MACHINE LEARNING MARKET SNAPSHOT (2017), BY GOVERNMENT
AND DEFENSE APPLICATION 32
FIGURE 13 MACHINE LEARNING MARKET SNAPSHOT (2017), BY MANUFACTURING APPLICATION 32
FIGURE 14 MACHINE LEARNING MARKET SNAPSHOT (2017), BY ENERGY AND UTILITIES APPLICATION 33
FIGURE 15 MACHINE LEARNING MARKET SNAPSHOT (2017), BY SERVICE 33
FIGURE 16 MACHINE LEARNING MARKET SNAPSHOT (2017), BY ORGANIZATION SIZE 34
FIGURE 17 MACHINE LEARNING MARKET SNAPSHOT (2017), BY DEPLOYMENT MODE 34
FIGURE 18 MACHINE LEARNING MARKET SNAPSHOT, BY REGION 35
FIGURE 19 PROLIFERATION IN DATA GENERATION IS ONE OF THE MAJOR FACTORS DRIVING THE OVERALL GROWTH OF THE MACHINE LEARNING MARKET DURING THE FORECAST PERIOD 36
FIGURE 20 HEALTHCARE AND LIFE SCIENCES VERTICAL IS EXPECTED TO GROW
AT THE HIGHEST CAGR DURING THE FORECAST PERIOD 36
FIGURE 21 ASIA PACIFIC IS EXPECTED TO EXHIBIT THE HIGHEST GROWTH POTENTIAL DURING THE FORECAST PERIOD 37
FIGURE 22 MARKET INVESTMENT SCENARIO: ASIA PACIFIC IS EXPECTED TO BE
THE BEST MARKET FOR INVESTMENT IN THE NEXT 5 YEARS 38
FIGURE 23 MACHINE LEARNING MARKET: DRIVERS, RESTRAINTS, OPPORTUNITIES,
AND CHALLENGES 39
FIGURE 24 MACHINE LEARNING PROCESS 45
FIGURE 25 HEALTHCARE AND LIFE SCIENCES VERTICAL IS EXPECTED TO EXHIBIT THE HIGHEST CAGR DURING THE FORECAST PERIOD 48
FIGURE 26 FRAUD AND RISK MANAGEMENT APPLICATION IS EXPECTED TO HOLD
THE LARGEST MARKET SIZE DURING THE FORECAST PERIOD 49
FIGURE 27 DISEASE IDENTIFICATION AND DIAGNOSIS APPLICATION IS EXPECTED TO HOLD THE LARGEST MARKET SIZE DURING THE FORECAST PERIOD 52
FIGURE 28 INVENTORY PLANNING APPLICATION IS EXPECTED TO HOLD THE LARGEST MARKET SIZE DURING THE FORECAST PERIOD 54
FIGURE 29 CUSTOMER ANALYTICS APPLICATION IS EXPECTED TO HOLD THE LARGEST MARKET SIZE DURING THE FORECAST PERIOD 56
FIGURE 30 THREAT INTELLIGENCE APPLICATION IS EXPECTED TO HOLD THE LARGEST MARKET SIZE DURING THE FORECAST PERIOD 59
FIGURE 31 PREDICTIVE MAINTENANCE APPLICATION IS EXPECTED TO HOLD THE LARGEST MARKET SIZE DURING THE FORECAST PERIOD 61
FIGURE 32 POWER/ENERGY USAGE ANALYTICS APPLICATION IS EXPECTED TO HOLD THE LARGEST MARKET SIZE DURING THE FORECAST PERIOD 64
FIGURE 33 CLOUD DEPLOYMENT MODE IS EXPECTED TO EXHIBIT A HIGHER CAGR DURING THE FORECAST PERIOD 68
FIGURE 34 SMALL AND MEDIUM-SIZED ENTERPRISES SEGMENT IS EXPECTED TO EXHIBIT
A HIGHER CAGR DURING THE FORECAST PERIOD 71
FIGURE 35 MANAGED SERVICES SEGMENT IS EXPECTED TO EXHIBIT A HIGHER CAGR DURING THE FORECAST PERIOD 74
FIGURE 36 NORTH AMERICA IS EXPECTED TO HOLD THE LARGEST MARKET SIZE DURING
THE FORECAST PERIOD 77
FIGURE 37 ASIA PACIFIC IS EXPECTED TO HAVE THE HIGHEST GROWTH RATE IN
THE MACHINE LEARNING MARKET DURING THE FORECAST PERIOD 78
FIGURE 38 NORTH AMERICA: MARKET SNAPSHOT 80
FIGURE 39 NORTH AMERICA: HEALTHCARE AND LIFE SCIENCES VERTICAL IS EXPECTED
TO GROW AT THE HIGHEST CAGR DURING THE FORECAST PERIOD 81
FIGURE 40 MAJOR FINTECH COMPANIES IN NORTH AMERICA USING MACHINE LEARNING 83
FIGURE 41 EUROPE: HEALTHCARE AND LIFE SCIENCES VERTICAL IS EXPECTED TO
GROW AT THE HIGHEST CAGR DURING THE FORECAST PERIOD 88
FIGURE 42 ASIA PACIFIC: MARKET SNAPSHOT 94
FIGURE 43 ASIA PACIFIC: HEALTHCARE AND LIFE SCIENCES VERTICAL IS EXPECTED
TO GROW AT THE HIGHEST CAGR DURING THE FORECAST PERIOD 95
FIGURE 44 MIDDLE EAST AND AFRICA: HEALTHCARE AND LIFE SCIENCES VERTICAL IS EXPECTED TO GROW AT THE HIGHEST CAGR DURING THE FORECAST PERIOD 101
FIGURE 45 LATIN AMERICA: HEALTHCARE AND LIFE SCIENCES VERTICAL IS EXPECTED TO GROW AT THE HIGHEST CAGR DURING THE FORECAST PERIOD 107
FIGURE 46 INTERNATIONAL BUSINESS MACHINES CORPORATION: COMPANY SNAPSHOT 114
FIGURE 47 MICROSOFT CORPORATION: COMPANY SNAPSHOT 117
FIGURE 48 SAP SE: COMPANY SNAPSHOT 120
FIGURE 49 AMAZON WEB SERVICES, INC.: COMPANY SNAPSHOT 127
FIGURE 50 GOOGLE INC.: COMPANY SNAPSHOT 133
FIGURE 51 FAIR ISAAC CORPORATION: COMPANY SNAPSHOT 136
FIGURE 52 BAIDU, INC.: COMPANY SNAPSHOT 139
FIGURE 53 HEWLETT PACKARD ENTERPRISE DEVELOPMENT LP: COMPANY SNAPSHOT 142
FIGURE 54 INTEL CORPORATION: COMPANY SNAPSHOT 145
FIGURE 55 MARKETS AND MARKETS KNOWLEDGE STORE: SNAPSHOT 1 156
FIGURE 56 MARKETS AND MARKETS KNOWLEDGE STORE: SNAPSHOT 2 157

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