Dublin, Nov. 07, 2022 (GLOBE NEWSWIRE) -- The "Intelligent Process Automation Market with Covid-19 Impact Analysis by Component, Technology, Application, Business Function (IT, Finance & Accounts, and Human Resource), Deployment Mode, Organisation Size, Vertical and Region - Global Forecast to 2027" report has been added to ResearchAndMarkets.com's offering.
The publisher forecasts the global Intelligent Process Automation Market size is expected to grow USD 13.9 billion in 2022 to USD 21.1 billion by 2027, at a Compound Annual Growth Rate (CAGR) of 8.7% during the forecast period.
By Application, the Contact Center Management segment to grow at the highest market share during the forecast period
Contact center management is a tool that organizations use to manage the daily operations of the workforce across multiple touchpoints and channels to assist omnichannel customer journeys. Contact center management includes workforce forecasting, agent scheduling, time management, employee empowerment and enrichment, reporting, and customer interactions.
There is an increase in customer expectations; customers call for a change in pattern from customer service management to customer experience management. Contact centers are moving toward building a digital workforce in place of their automation strategy by integrating RPA, AI, NLP, ML, and analytics elements to automate their business processes.
Developments are being done to automate processes that were earlier seen as non-automatable due to their input in unstructured formats, such as free flow text documents and scanned images. This is why newer technologies are developed to assist and help agents interact with customers and drive more satisfaction.
By Organization Size, the Large Enterprises segment to hold the larger market size during the forecast period
Organizations with more than 1,000 employees are considered large enterprises. The adoption of the IPA solution among large enterprises is expected to increase in the coming years. The large enterprises are expected to have adopted the IPA solution for reducing operational costs, improving business functioning, enhancing operational efficiency, and sustaining the intense competition.
With the increasing amount of data, processes, and tasks, large enterprises have started investing in IT infrastructure and technical expertise to automate their various tasks. The IPA solution helps save infrastructure costs, improve business functioning, and enhance agility.
Large enterprises possess a huge amount of data across business functions, which they need to analyze for entity extraction, text classification, summarization, and sentiment analysis. Large organizations in BFSI, retail, healthcare, and telecommunications verticals need AI technology for identifying patterns in data. AI helps data management teams realize which practices are ineffective and what all are working best.
Several organizational departments have been utilizing data to enhance their operations. For instance, sales departments that study consumer trends can get useful insights. AI makes sure that data reaches the right user without getting intercepted by cybercriminals who may employ man-in-the-middle, spear phishing, ransomware, spyware, or any other cyberattacks.
By Region, North America to grow at the highest market share during the forecast period
In terms of market size, North America is expected to be the major contributor to the IPA market during the forecast period. The US and Canada are expected to be the major contributors to the North American market. Enterprises in this region are the early adopters of technologies, such as machine learning, AI, NLP, and virtual bots adoption. Most of the North American industry verticals have already gone through digital transformation.
This rapid adoption of technologies has led to the generation of massive data by North American companies and presented positive opportunities for the deployment of IPA software to maintain and manage such data. The automation of business processes results in less need for manpower and saves a lot of time and cost, enabling companies to focus on business-critical decisions.
Key Topics Covered:
1 Introduction
2 Research Methodology
3 Executive Summary
4 Premium Insights
4.1 Attractive Opportunities in Market
4.2 Market, by Deployment Mode, 2022
4.3 North American Intelligent Process Automation Market, 2022
4.4 Asia-Pacific Market, 2022
4.5 Market, by Country
5 Market Overview and Industry Trends
5.1 Introduction
5.2 Market Dynamics
5.2.1 Drivers
5.2.1.1 Rising Adoption of Rpa
5.2.1.2 Increasing Inheritance of Ml and Advanced Analytics
5.2.1.3 Faster Decision-Making Across Organizations
5.2.1.4 Rising Demand for Automated Solutions for Business Continuity Planning
5.2.2 Restraints
5.2.2.1 Massive Data Handling and Cost Computation
5.2.2.2 Absence of Highly Sophisticated and Skilled Manpower
5.2.2.3 High Cost of Investment
5.2.3 Opportunities
5.2.3.1 Effective Monitoring of Data and Fraud Detection
5.2.3.2 Increasing Investment in Ipa Market
5.2.4 Challenges
5.2.4.1 Hike in Cybersecurity Threats
5.2.4.2 Difficulties in Rising in Maturity Chain
5.2.4.3 Poor Communication Infrastructure to Restrict Growth
5.3 Industry Trends
5.3.1 Supply/Value Chain Analysis
5.3.2 Ecosystem/Market Map
5.3.3 Porter's Five Forces Analysis
5.3.4 Key Stakeholders and Buying Criteria
5.3.4.1 Key Stakeholders in Buying Process
5.3.4.2 Buying Criteria
5.3.5 Technology Analysis
5.3.6 Trends and Disruptions Impacting Buyers
5.3.7 Patent Analysis
5.3.8 Pricing Analysis
5.3.9 Market Assessment by Data Type
5.3.10 Use Cases
5.3.10.1 Contact Center Management
5.3.10.1.1 Use Case 1: Ke Holdings Inherited Laiye's Rpa Deployment to Accelerate Data Transmission
5.3.10.1.2 Use Case 2: E.On Chose Cognigy.Ai as a Solution for Its High Modularity and Custom Integration Capabilities
5.3.10.2 Business Process Automation
5.3.10.2.1 Use Case 3: Flowforma Managed Multi-Cloud Infrastructure of Global Pharma Organization
5.3.10.2.2 Use Case 4: Bizagi Automation Platform Automated Audi Japan Kk's Finance Processes
5.3.10.3 Application Management
5.3.10.3.1 Use Case 5: Laiye Built Ai-Powered Conversational Robot for Astrazeneca
5.3.10.4 Content Management
5.3.10.4.1 Use Case 6: Deutsche Bank Selected Workfusion to Streamline Processes
5.3.10.4.2 Use Case 7: Kofax Selected Cognigy.Ai to Enhance Its Search Engine for Its Knowledge Base
5.3.10.5 Security Management
5.3.10.5.1 Use Case 8: Future-Proofing a Captive Auto Finance Organization with Pegasystems
5.3.11 Tariff & Regulatory Impact
5.3.11.1 Regulatory Bodies, Government Agencies, and Other Organizations
5.3.12 Key Conferences & Events in 2022
5.4 COVID-19 Market Outlook for Market
6 Intelligent Process Automation Market, by Component
6.1 Introduction
6.1.1 Component: COVID-19 Impact
6.2 Platform
6.2.1 Platform: on Market Drivers
6.3 Solution
6.3.1 Solution: Intelligent Process Automation Market Drivers
6.4 Services
6.4.1 Services: Market Drivers
6.4.2 Professional Services
6.4.2.1 Advisory/Consulting
6.4.2.2 Design & Implementation
6.4.2.3 Training
6.4.2.4 Support & Maintenance
6.4.3 Managed Services
7 Intelligent Process Automation Market, by Technology
7.1 Introduction
7.2 Technology: Market Drivers
7.3 Technology: COVID-19 Impact
7.4 Natural Language Processing
7.5 Machine and Deep Learning
7.6 Neural Networks
7.7 Virtual Agents
7.8 Mini Bots
7.9 Computer Vision
7.10 Other Technologies
8 Intelligent Process Automation Market, by Application
8.1 Introduction
8.1.1 Application: COVID-19 Impact
8.2.1 Contact Center Management: Market Drivers
8.3 Business Process Automation
8.3.1 Business Process Automation: Market Drivers
8.4 Application Management
8.4.1 Application Management: Intelligent Process Automation Market Drivers
8.5 Content Management
8.5.1 Content Management: Market Drivers
8.6 Security Management
8.6.1 Security Management: Market Drivers
8.7 Other Applications
9 Intelligent Process Automation Market, by Business Function
9.1 Introduction
9.1.1 Business Functions: COVID-19 Impact
9.2 Information Technology
9.2.1 Information Technology: Market Drivers
9.3 Finance & Accounts
9.3.1 Finance & Accounts: Intelligent Process Automation Market Drivers
9.4 Human Resources
9.4.1 Human Resources: Market Drivers
9.5 Operations & Supply Chain
9.5.1 Operations & Supply Chain: Market Drivers
10 Intelligent Process Automation Market, by Deployment Mode
10.1 Introduction
10.1.1 Deployment Mode: COVID-19 Impact
10.2 On-Premises
10.2.1 On-Premises: Market Drivers
10.3 Cloud
10.3.1 Cloud: Market Drivers
11 Intelligent Process Automation Market, by Organization Size
11.1 Introduction
11.1.1 Organization Size: COVID-19 Impact
11.2 Large Enterprises
11.2.1 Large Enterprises: Market Drivers
11.3 Small and Medium-Sized Enterprises
11.3.1 Small and Medium-Sized Enterprises: Market Drivers
12 Intelligent Process Automation Market, by Vertical
12.1 Introduction
12.1.1 Vertical: COVID-19 Impact
12.2 Banking, Financial Services, and Insurance
12.2.1 Banking, Financial Services and Insurance: Market Drivers
12.3 Telecommunications & It
12.3.1 Telecommunications & It: Intelligent Process Automation Market Drivers
12.4 Manufacturing & Logistics
12.4.1 Manufacturing & Logistics: Market Drivers
12.5 Media & Entertainment
12.5.1 Media & Entertainment: Market Drivers
12.6 Retail & Ecommerce
12.6.1 Retail & Ecommerce: Intelligent Process Automation Market Drivers
12.7 Healthcare & Life Sciences
12.7.1 Healthcare & Life Sciences: Market Drivers
12.8 Other Verticals
13 Intelligent Process Automation Market, by Region
14 Competitive Landscape
14.1 Overview
14.2 Market Evaluation Framework
14.3 Key Player Strategies/Right to Win
14.4 Competitive Scenario and Trends
14.4.1 Product Launches
14.4.2 Deals
14.4.3 Others
14.5 Market Share Analysis of Top Players
14.6 Historical Revenue Analysis
14.7 Company Evaluation Matrix Overview
14.8 Company Evaluation Matrix Methodology and Definitions
14.8.1 Star
14.8.2 Emerging Leaders
14.8.3 Pervasive
14.8.4 Participants
14.9 Company Product Footprint Analysis
14.10 Company Market Ranking Analysis
14.11 Startup/Sme Evaluation Matrix Methodology and Definitions
14.11.1 Progressive Companies
14.11.2 Responsive Companies
14.11.3 Dynamic Companies
14.11.4 Starting Blocks
14.12 Competitive Benchmarking for Sme/Startup
15 Company Profiles
15.1 Key Players
15.1.1 Atos
15.1.2 Ibm
15.1.3 Genpact
15.1.4 Hcl Technologies
15.1.5 Pegasystems
15.1.6 Blue Prism
15.1.7 Capgemini
15.1.8 Cgi
15.1.9 Nice
15.1.10 Cognizant
15.1.11 Accenture
15.1.12 Infobip
15.1.13 Infosys
15.1.14 Tcs
15.1.15 Tech Mahindra
15.1.16 Uipath
15.1.17 Wipro
15.1.18 Xerox Corporation
15.1.19 Happiest Minds
15.1.20 Workfusion
15.1.21 Automation Anywhere
15.2 Smes/ Startups
15.2.1 Virtual Operations
15.2.2 Hive
15.2.3 Hyperscience
15.2.4 Laiye
15.2.5 Cognigy
15.2.6 Jiffy.Ai
15.2.7 InfinitUS
15.2.8 Electroneek
15.2.9 Snorkel Ai
15.2.10 Vianai
15.2.11 Kryon
15.2.12 Rossum
15.2.13 Autologyx
15.2.14 Automation Edge
16 Adjacent/Related Market
17 Appendix
For more information about this report visit https://www.researchandmarkets.com/r/yu2xmw
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