Overview:
This report evaluates various AI technologies and their use relative to analytics solutions within the rapidly growing enterprise and industrial data arena. The report assesses emerging business models, leading companies, and solutions. The report also analyzes how different forms of AI may be best used for problem-solving. The report also evaluates the market for AI in IoT networks and systems. The report provides forecasting for unit growth and revenue for both analytics and IoT from 2022 to 2027.
Select Report Findings:
- Global market for AI in big data and IoT as a whole will reach $31.4B by 2027
- Embedded AI in support of IoT-connected things will reach $7.2B globally by 2027
- AI makes IoT data 28% more efficient and analytics 47% more effective for industry apps
- Overall market for AI in big data and IoT will be led by Asia Pac followed by North America
- AI in industrial machines will reach $823M globally by 2027 with collaborative robot growth at 41.9% CAGR
- AI in autonomous weapon systems will reach $298M globally by 2027 with AI in military robotics growing at 41.2% CAGR
- Machine learning will become a key AI technology to realize the full potential of big data and IoT, particularly in edge computing platforms
- Top three segments will be: (1) Data Mining and Automation, (2) Automated Planning, Monitoring, and Scheduling, and (3) Data Storage and Customer Intelligence
The Internet of Things (IoT) in consumer, enterprise, industrial, and government market segments has very unique needs in terms of infrastructure, devices, systems, and processes. One thing they all have in common is that they each produce massive amounts of data, most of which is of the unstructured variety, requiring big data technologies for management.
Artificial Intelligence (AI) algorithms enhance the ability for big data analytics and IoT platforms to provide value to each of these market segments. The author sees three different types of IoT Data: (1) Raw (untouched and unstructured) Data, (2) Meta (data about data), and (3) Transformed (valued-added data). Artificial Intelligence (AI) will be useful in support of managing each of these data types in terms of identifying, categorizing, and decision making.
AI coupled with advanced big data analytics provides the ability to make raw data meaningful and useful as information for decision-making purposes. The use of AI for decision making in IoT and data analytics will be crucial for efficient and effective decision making, especially in the area of streaming data and real-time analytics associated with edge computing networks.
Real-time data will be a key value proposition for all use cases, segments, and solutions. The ability to capture streaming data, determine valuable attributes, and make decisions in real-time will add an entirely new dimension to service logic. In many cases, the data itself, and actionable information will be the service.
Companies in Report:
- Amazon
- AOL
- Apple
- Augury Systems
- Baidu
- C-B4
- Comfy
- Facebook
- FocusMotion
- Glassbeam
- Google
- H2O.ai
- IBM
- Imagimob
- Inbenta
- Intel
- Maana
- Microsoft
- mnubo
|
- MoBagel
- Moov
- Neura
- NVIDIA
- OpenAI
- PointGrab
- Salesforce
- Sentenai
- Sentrian
- Skype
- SparkCognition
- Tachyus
- Tellmeplus
- Tesla
- Twitter
- Veros Systems
- x.ai
- Yahoo
|
Table of Contents
1.0 Executive Summary
2.0 Introduction
3.0 Overview
- 3.1 Artificial Intelligence and Machine Learning
- 3.2 AI Types
- 3.3 AI & ML Language
- 3.4 Artificial Intelligence Technology
- 3.4.1 Machine Learning
- 3.4.2 Natural Language Generation and Processing
- 3.4.3 Image Processing
- 3.4.4 Voice Recognition
- 3.4.5 Artificial Neural Network
- 3.4.6 Deep Learning
- 3.4.7 Others
- 3.5 AI and ML Technology Goal
- 3.5.1 Reasoning
- 3.5.2 Knowledge Representation
- 3.5.3 Planning
- 3.5.4 Learning
- 3.5.5 Communication
- 3.5.6 Machine Perception
- 3.5.7 Motion Manipulation
- 3.5.8 Social Intelligence
- 3.5.9 Creativity
- 3.5.10 Artificial General Intelligence
- 3.5.11 Computer Vision
- 3.5.12 Robotics
- 3.6 AI Approaches
- 3.6.1 Cybernetics and Brain Simulation
- 3.6.2 Symbolic
- 3.6.3 Sub-Symbolic
- 3.6.4 Statistical
- 3.6.5 Integration
- 3.7 AI Tools
- 3.7.1 Search and Optimization
- 3.7.2 Logic
- 3.7.3 Probability
- 3.7.4 Classifier and Statistics
- 3.7.5 Neural Network
- 3.7.6 Deep Feedforward Neural Network
- 3.7.7 Deep Recurrent Neural Network
- 3.7.8 Control Theory
- 3.7.9 Language
- 3.8 AI Outcomes
- 3.8.1 Testing Tools
- 3.8.2 Virtual Assistant
- 3.8.3 AI Optimized IoT Hardware
- 3.8.4 Decision Management System
- 3.8.5 Biometrics Solutions
- 3.8.6 Robotic Process Automation
- 3.9 Neural Network and Artificial Intelligence
- 3.10 Deep Learning and Artificial Intelligence
- 3.11 Predictive Analytics and Artificial Intelligence
- 3.12 Internet of Things and Big Data Analytics
- 3.13 IoT and Artificial Intelligence
- 3.14 Consumer IoT, Big Data Analytics, and Artificial Intelligence
- 3.15 Industrial IoT, Big Data Analytics, and Machine Learning
- 3.16 Artificial intelligence and cognitive computing
- 3.17 Transhumanism or H+ and Artificial Intelligence
- 3.18 Rise of Analysis of Things (AoT)
- 3.19 Supervised vs. Unsupervised Learning
- 3.20 AI as New form of UI
4.0 AI Technology in Big Data and IoT
- 4.1 Machine Learning Everywhere
- 4.1.1 Machine Learning as Open Source Technology
- 4.1.2 Machine Learning and Intelligent Discovery in IoT
- 4.1.3 Supervised and Unsupervised Machine Learning
- 4.1.4 Machine Learning as Big Data Analysis Technique
- 4.1.5 Machine Learning AI Robots
- 4.1.6 Machine Learning and Data Democratization
- 4.2 Machine Learning APIs and Big Data Development
- 4.2.1 Phases of Machine Learning APIs
- 4.2.2 Machine Learning API Challenges
- 4.2.3 Top Machine Learning APIs
- 4.2.3.1 IBM Watson API
- 4.2.3.2 Microsoft Azure Machine Learning API
- 4.2.3.3 Google Prediction API
- 4.2.3.4 Amazon Machine Learning API
- 4.2.3.5 BigML
- 4.2.3.6 AT&T Speech API
- 4.2.3.7 Wit.ai
- 4.2.3.8 AlchemyAPI
- 4.2.3.9 Diffbot
- 4.2.3.10 PredictionIO
- 4.2.4 Machine Learning API in the General Application Environment
- 4.3 Enterprise Benefits of Machine Learning
- 4.4 Machine Learning in IoT Data
- 4.5 Ultra Scale Analytics and Artificial Intelligence
- 4.6 Rise of Algorithmic Business
- 4.7 Cloud Hosted Machine Intelligence
- 4.8 Contradiction of Machine Learning
- 4.9 Value Chain Analysis
- 4.9.1 AI & Machine Learning Companies
- 4.9.2 IoT Companies
- 4.9.3 Big Data Analytics Providers
- 4.9.4 Connectivity Solution and Infrastructure Providers
- 4.9.5 Hardware and Equipment Manufacturers
- 4.9.6 Developers and Data Scientists
- 4.9.7 End Users
5.0 AI Technology Application and Use Case
- 5.1 Intelligence Performance Monitoring
- 5.2 Infrastructure Monitoring
- 5.3 Generating Accurate Models
- 5.4 Recommendation Engine
- 5.5 Blockchain and Crypto Technologies
- 5.6 Enterprise Application
- 5.7 Contextual Awareness
- 5.8 Customer Feedback
- 5.9 Self-Driving Car
- 5.10 Fraud Detection System
- 5.11 Personalized Medicine and Healthcare Service
- 5.12 Predictive Data Modelling
- 5.13 Smart Machines
- 5.14 Cybersecurity Solutions
- 5.15 Autonomous Agents
- 5.16 Intelligent Assistant
- 5.17 Intelligent Decision Support System
- 5.18 Risk Management
- 5.19 Data Mining and Management
- 5.20 Intelligent Robotics
- 5.21 Financial Technology
- 5.22 Machine Intelligence
6.0 AI Technology Impact on Vertical Market
- 6.1 Enterprise Productivity Gain
- 6.2 Digital Twinning and Physical Asset Security
- 6.3 IT Process Efficiency Increase
- 6.4 AI to Replace Human Form Work
- 6.5 Enterprise AI Adoption Trend
- 6.6 Inclusion of AI as an IT Requirement
7.0 AI Predictive Analytics in Vertical Industry
- 7.1 E-Commerce Services
- 7.2 Banking and Finance Services
- 7.3 Manufacturing Services
- 7.4 Real Estate Services
- 7.5 Government and Public Services
8.0 Company Analysis
- 8.1 Google Inc.
- 8.2 Twitter Inc.
- 8.3 Microsoft Corporation
- 8.4 IBM Corporation
- 8.5 Apple Inc.
- 8.6 Facebook Inc.
- 8.7 Amazon.com Inc.
- 8.8 Skype
- 8.9 Salesforce.com
- 8.10 Intel Corporation
- 8.11 Yahoo Inc.
- 8.12 AOL Inc.
- 8.13 Nvidia Corporation
- 8.14 x.ai
- 8.15 Tesla Inc.
- 8.16 Baidu Inc.
- 8.17 H2O.ai
- 8.18 SparkCognition Inc.
- 8.19 OpenAI
- 8.20 Inbenta
- 8.21 CISCO Systems Inc.
- 8.22 Infineon Technologies AG
- 8.23 McAfee
- 8.24 Happiest Minds Technologies
- 8.25 Tachyus
- 8.26 Sentrian
- 8.27 MAANA
- 8.28 Veros Systems Inc.
- 8.29 NEURA
- 8.30 Augury Systems Ltd.
- 8.31 glassbeam
- 8.32 Comfy
- 8.33 mnubo
- 8.34 C-B4
- 8.35 PointGrab Ltd.
- 8.36 Tellmeplus
- 8.37 moov
- 8.38 Sentenai Inc.
- 8.39 imagimob
- 8.40 FocusMotion
- 8.41 MoBagel
9.0 AI in Big Data and IoT Market Analysis and Forecasts 2022 - 2027
- 9.1 AI in Big Data and IoT Market 2022 - 2027
- 9.2 AI in Big Data and IoT Market by Solution Components 2022 - 2027
- 9.2.1 Embedded AI Solutions
- 9.2.1.1 IoT Device
- 9.2.1.1.1 Wearable Devices
- 9.2.1.1.2 Medical and Healthcare Devices
- 9.2.1.1.3 Industrial Machines
- 9.2.1.1.4 Networking Device
- 9.2.1.1.5 Smart Grid Device
- 9.2.1.1.6 Robots and Drone
- 9.2.1.1.6.1 Service Robots
- 9.2.1.1.7 Smart Appliances
- 9.2.1.1.8 Security Devices
- 9.2.1.1.9 Entertainment Devices
- 9.2.1.1.10 In-Vehicle Device
- 9.2.1.1.11 Military Device
- 9.2.1.1.12 Energy Management Device
- 9.2.1.1.13 Agriculture Specific Device
- 9.2.1.2 IoT Things/Objects
- 9.2.1.3 Software
- 9.2.1.3.1 Digital Personal Assistants
- 9.2.1.4 IoT Platform
- 9.2.2 Storage and Analytics
- 9.2.2.1 Storage and Analytics Tools
- 9.2.3 Services
- 9.2.3.1 Professional Services
- 9.3 AI in Big Data and IoT Market by Management Functions
- 9.4 AI in Big Data and IoT Market by Technology
- 9.5 AI in Big Data and IoT Market by Industry Vertical
- 9.5.1 Medical and Healthcare
- 9.5.2 Manufacturing
- 9.5.3 Consumer Electronics
- 9.5.4 Automotive and Transportation
- 9.5.5 Retail and Apparel
- 9.5.6 Marketing and Advertising
- 9.5.7 FinTech
- 9.5.8 Building and Construction
- 9.5.9 Agriculture
- 9.5.10 Security and Surveillance
- 9.5.11 Government, Military, and Aerospace
- 9.5.12 Human Resource
- 9.5.13 Legal and Law
- 9.5.14 Telecommunication and IT
- 9.5.15 Oil, Gas, and Mining
- 9.5.16 Logistics
- 9.5.17 Education and Learning
- 9.6 AI in Big Data and IoT Market by Solution
- 9.7 AI in Big Data and IoT Market by Application
- 9.8 AI in Big Data and IoT Market by Deployment
- 9.9 AI in Big Data and IoT Market by AI System
- 9.10 AI in Big Data and IoT Market by AI Type
- 9.11 AI in Big Data and IoT Market by Connectivity
- 9.11.1 Non-Telecom Connectivity
- 9.11.2 Telecom Connectivity
- 9.11.3 Connectivity Standards
- 9.11.4 Enterprise
- 9.12 AI in Big Data and IoT Market by Edge Network
- 9.13 AI in Big Data and IoT Market in Smart City
- 9.14 AI in Big Data and IoT Market by Intent-Based Networking
- 9.15 AI in Big Data and IoT Market by Virtualization
- 9.16 AI in Big Data and IoT Market by 5G
- 9.17 AI in Big Data and IoT Market by Blockchain Networks
- 9.18 AI in Big Data and IoT Market by Region
- 9.18.1 North America
- 9.18.2 Asia Pacific
- 9.18.2.1 China
- 9.18.2.2 South Korea
- 9.18.2.3 Taiwan
- 9.18.2.4 Rest of Asia
- 9.18.3 Europe
- 9.18.4 Middle East and Africa
- 9.18.5 Latin America
10.0 Conclusions and Recommendations
- 10.1 AI Predictions
- 10.2 Data Analytics Providers
- 10.3 AI and Machine Learning Companies
- 10.4 IoT Companies and Equipment Manufacturers
- 10.5 Service Providers
- 10.6 Enterprises
11.0 Appendix
- 11.1 AI Embedded IoT Unit Deployment Forecast
- 11.1.1 IoT Unit Deployment by Solution
- 11.1.1.1 IoT Device
- 11.1.1.2 IoT Things and Objects
- 11.1.1.3 IoT Semiconductor
- 11.1.1.4 Software
- 11.1.2 IoT Unit Deployment by Region
- 11.1.2.1 North America
- 11.1.2.2 Asia Pacific
- 11.1.2.3 Europe
- 11.1.2.4 Middle East and Africa
- 11.1.2.5 Latin America
- 11.2 AI Embedded IoT Market Forecast
- 11.2.1 IoT Market by Segments
- 11.2.1.1 IoT Device
- 11.2.1.2 IoT Things and Objects
- 11.2.1.3 IoT Semiconductor
- 11.2.1.4 Software
- 11.2.2 IoT Market by Region
- 11.2.2.1 North America
- 11.2.2.2 Asia Pacific
- 11.2.2.3 Europe
- 11.2.2.4 Middle East and Africa
- 11.2.2.5 Latin America