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Deep Learning Market Size to Garner USD 978.88 Billion by 2032

The global deep learning market size accounted for US$ 52.13  Bn in 2022 and is projected to reach around USD 978.88  Bn by 2032, growing at a CAGR of 34.08% from 2023 to 2032.

Deep Learning Market Size 2023 To 2032

Key Takeaways:

Report Summary

The global deep learning market report provides a Point-by-Point and In-Depth analysis of global market size, regional and country-level market size, market share, segmentation market growth, competitive landscape, sales analysis, opportunities analysis, strategic market growth analysis, the impact of domestic and global market key players, value chain optimization, trade regulations, recent developments, product launches, area marketplace expanding, and technological innovations.

The study offers a comprehensive analysis on diverse features, including production capacities, demand, product developments, revenue generation, and sales in the deep learning market across the globe.

A comprehensive estimate on the deep learning market has been provided through an optimistic scenario as well as a conservative scenario, taking into account the sales of deep learning during the forecast period. Price point comparison by region with global average price is also considered in the study.

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Deep Learning Market  Report Scope 

Report Coverage Details
Market Size in 2023 USD 69.9 Billion
Market Size by 2032 USD 978.88 Billion
Growth Rate from 2023 to 2032 CAGR of 34.08%
Largest Market North America
Base Year 2022
Forecast Period 2023 to 2032
Segments Covered By Type, By Application, and By End-user
Regions Covered North America, Europe, Asia-Pacific, Latin America, and Middle East & Africa

Market Segments:

Application:

Deep learning has found applications in stock photography and video websites, making visual content more accessible to users. This technology enables visual search, allowing users to find similar images or products using a reference image. Additionally, deep learning is utilized in various fields, such as medical image analysis, facial recognition for security and surveillance, and image detection in social media analytics.

The growth of visual content on social media platforms and the demand for content modernization are significant drivers for the deep learning market in image recognition applications. For example, in 2018, Instagram introduced a feature based on deep learning algorithms that describe photos to users with visual impairments. This feature identifies images using image recognition technology and automatically generates descriptions for them.

During the forecast period, data mining applications are projected to experience the highest Compound Annual Growth Rate (CAGR) of over 37%. Deep learning plays a vital role in addressing challenges in data mining and extraction processes, such as handling fast-moving streaming data, ensuring the reliability of data analysis, managing imbalanced input data, and dealing with highly distributed input sources. Deep learning algorithms excel in semantic indexing and tagging of videos, text, and images, performing discriminative tasks. They also demonstrate the ability to perform complex tasks through featured engineering, ultimately providing improved data representation.

End Users:

The autonomous vehicle represents a groundbreaking technology that demands immense computational power. Leveraging a Deep Neural Network (DNN), the autonomous vehicle can swiftly execute a wide array of tasks without human intervention.

Anticipated to gain significant momentum in the forthcoming years, the development of autonomous vehicles has garnered the attention of numerous startups and major corporations. Among them, Google Inc., Uber Technologies, Inc., and Tesla, Inc. stand out as prominent players, showcasing their prowess in this domain. Notably, in December 2019, Nvidia introduced the NVIDIA DRIVE platform dedicated to autonomous vehicles.

Substantial investments are being poured into advancing deep learning techniques, aimed at refining the capabilities of autonomous vehicles. A noteworthy example is Wayve, a London-based startup, which secured a substantial funding of USD 200 million in January 2022. This funding boost is poised to aid organizations in developing cutting-edge deep learning methodologies, enabling the training and evolution of artificial intelligence capable of handling complex driving scenarios.

Key Highlights:

Reports Coverage: It incorporates key market sections, key makers secured, the extent of items offered in the years considered, worldwide containerized deep learning market and study goals. Moreover, it contacts the division study gave in the report based on the sort of item and applications.

Market Outline: This area stresses the key investigations, market development rate, serious scene, market drivers, patterns, and issues notwithstanding the naturally visible pointers.

Market Production by Region: The report conveys information identified with import and fare, income, creation, and key players of every single local market contemplated are canvassed right now.

Also Read:  Artificial Intelligence in Agriculture Market Size To Cross USD 11.13 Bn By 2032

Market Players

The report includes the profiles of key deep learning market companies along with their SWOT analysis and market strategies. In addition, the report focuses on leading industry players with information such as company profiles, components and services offered, financial information, key development in past five years.

Major companies operating in this area

Deep Learning Market Segmentation

By Type

By Application

By End-user

Regional Segmentation

Research Methodology

Secondary Research

It involves company databases such as Hoover’s: This assists us to recognize financial information, the structure of the market participants and industry’s competitive landscape.

The secondary research sources referred in the process are as follows:

Primary Research

Primary research includes face-to-face interviews, online surveys, and telephonic interviews.

TABLE OF CONTENT

Chapter 1. Introduction

1.1. Research Objective

1.2. Scope of the Study

1.3. Definition

Chapter 2. Research Methodology (Premium Insights)

2.1. Research Approach

2.2. Data Sources

2.3. Assumptions & Limitations

Chapter 3. Executive Summary

3.1. Market Snapshot

Chapter 4. Market Variables and Scope 

4.1. Introduction

4.2. Market Classification and Scope

4.3. Industry Value Chain Analysis

4.3.1. Raw Material Procurement Analysis

4.3.2. Sales and Distribution Channel Analysis

4.3.3. Downstream Buyer Analysis

Chapter 5. COVID 19 Impact on Deep Learning Market 

5.1. COVID-19 Landscape: Deep Learning Industry Impact

5.2. COVID 19 – Impact Assessment for the Industry

5.3. COVID 19 Impact: Global Major Government Policy

5.4. Market Trends and Opportunities in the COVID-19 Landscape

Chapter 6. Market Dynamics Analysis and Trends

6.1. Market Dynamics

6.1.1. Market Drivers

6.1.2. Market Restraints

6.1.3. Market Opportunities

6.2. Porter’s Five Forces Analysis

6.2.1. Bargaining power of suppliers

6.2.2. Bargaining power of buyers

6.2.3. Threat of substitute

6.2.4. Threat of new entrants

6.2.5. Degree of competition

Chapter 7. Competitive Landscape

7.1.1. Company Market Share/Positioning Analysis

7.1.2. Key Strategies Adopted by Players

7.1.3. Vendor Landscape

7.1.3.1. List of Suppliers

7.1.3.2. List of Buyers

Chapter 8. Global Deep Learning Market, By Type

8.1. Deep Learning Market, by Type, 2023-2032

8.1.1 Software

8.1.1.1. Market Revenue and Forecast (2020-2032)

8.1.2. Hardware

8.1.2.1. Market Revenue and Forecast (2020-2032)

8.1.3. Services

8.1.3.1. Market Revenue and Forecast (2020-2032)

Chapter 9. Global Deep Learning Market, By Application

9.1. Deep Learning Market, by Application, 2023-2032

9.1.1. Image Recognition

9.1.1.1. Market Revenue and Forecast (2020-2032)

9.1.2. Signal Recognition

9.1.2.1. Market Revenue and Forecast (2020-2032)

9.1.3. Data Processing

9.1.3.1. Market Revenue and Forecast (2020-2032)

Chapter 10. Global Deep Learning Market, By End-user 

10.1. Deep Learning Market, by End-user, 2023-2032

10.1.1. Retail

10.1.1.1. Market Revenue and Forecast (2020-2032)

10.1.2. BFSI

10.1.2.1. Market Revenue and Forecast (2020-2032)

10.1.3. Manufacturing

10.1.3.1. Market Revenue and Forecast (2020-2032)

10.1.4. Healthcare

10.1.4.1. Market Revenue and Forecast (2020-2032)

10.1.5. Automotive

10.1.5.1. Market Revenue and Forecast (2020-2032)

10.1.6. Telecom and Media

10.1.6.1. Market Revenue and Forecast (2020-2032)

Chapter 11. Global Deep Learning Market, Regional Estimates and Trend Forecast

11.1. North America

11.1.1. Market Revenue and Forecast, by Type (2020-2032)

11.1.2. Market Revenue and Forecast, by Application (2020-2032)

11.1.3. Market Revenue and Forecast, by End-user (2020-2032)

11.1.4. U.S.

11.1.4.1. Market Revenue and Forecast, by Type (2020-2032)

11.1.4.2. Market Revenue and Forecast, by Application (2020-2032)

11.1.4.3. Market Revenue and Forecast, by End-user (2020-2032)

11.1.5. Rest of North America

11.1.5.1. Market Revenue and Forecast, by Type (2020-2032)

11.1.5.2. Market Revenue and Forecast, by Application (2020-2032)

11.1.5.3. Market Revenue and Forecast, by End-user (2020-2032)

11.2. Europe

11.2.1. Market Revenue and Forecast, by Type (2020-2032)

11.2.2. Market Revenue and Forecast, by Application (2020-2032)

11.2.3. Market Revenue and Forecast, by End-user (2020-2032)

11.2.4. UK

11.2.4.1. Market Revenue and Forecast, by Type (2020-2032)

11.2.4.2. Market Revenue and Forecast, by Application (2020-2032)

11.2.4.3. Market Revenue and Forecast, by End-user (2020-2032)

11.2.5. Germany

11.2.5.1. Market Revenue and Forecast, by Type (2020-2032)

11.2.5.2. Market Revenue and Forecast, by Application (2020-2032)

11.2.5.3. Market Revenue and Forecast, by End-user (2020-2032)

11.2.6. France

11.2.6.1. Market Revenue and Forecast, by Type (2020-2032)

11.2.6.2. Market Revenue and Forecast, by Application (2020-2032)

11.2.6.3. Market Revenue and Forecast, by End-user (2020-2032)

11.2.7. Rest of Europe

11.2.7.1. Market Revenue and Forecast, by Type (2020-2032)

11.2.7.2. Market Revenue and Forecast, by Application (2020-2032)

11.2.7.3. Market Revenue and Forecast, by End-user (2020-2032)

11.3. APAC

11.3.1. Market Revenue and Forecast, by Type (2020-2032)

11.3.2. Market Revenue and Forecast, by Application (2020-2032)

11.3.3. Market Revenue and Forecast, by End-user (2020-2032)

11.3.4. India

11.3.4.1. Market Revenue and Forecast, by Type (2020-2032)

11.3.4.2. Market Revenue and Forecast, by Application (2020-2032)

11.3.4.3. Market Revenue and Forecast, by End-user (2020-2032)

11.3.5. China

11.3.5.1. Market Revenue and Forecast, by Type (2020-2032)

11.3.5.2. Market Revenue and Forecast, by Application (2020-2032)

11.3.5.3. Market Revenue and Forecast, by End-user (2020-2032)

11.3.6. Japan

11.3.6.1. Market Revenue and Forecast, by Type (2020-2032)

11.3.6.2. Market Revenue and Forecast, by Application (2020-2032)

11.3.6.3. Market Revenue and Forecast, by End-user (2020-2032)

11.3.7. Rest of APAC

11.3.7.1. Market Revenue and Forecast, by Type (2020-2032)

11.3.7.2. Market Revenue and Forecast, by Application (2020-2032)

11.3.7.3. Market Revenue and Forecast, by End-user (2020-2032)

11.4. MEA

11.4.1. Market Revenue and Forecast, by Type (2020-2032)

11.4.2. Market Revenue and Forecast, by Application (2020-2032)

11.4.3. Market Revenue and Forecast, by End-user (2020-2032)

11.4.4. GCC

11.4.4.1. Market Revenue and Forecast, by Type (2020-2032)

11.4.4.2. Market Revenue and Forecast, by Application (2020-2032)

11.4.4.3. Market Revenue and Forecast, by End-user (2020-2032)

11.4.5. North Africa

11.4.5.1. Market Revenue and Forecast, by Type (2020-2032)

11.4.5.2. Market Revenue and Forecast, by Application (2020-2032)

11.4.5.3. Market Revenue and Forecast, by End-user (2020-2032)

11.4.6. South Africa

11.4.6.1. Market Revenue and Forecast, by Type (2020-2032)

11.4.6.2. Market Revenue and Forecast, by Application (2020-2032)

11.4.6.3. Market Revenue and Forecast, by End-user (2020-2032)

11.4.7. Rest of MEA

11.4.7.1. Market Revenue and Forecast, by Type (2020-2032)

11.4.7.2. Market Revenue and Forecast, by Application (2020-2032)

11.4.7.3. Market Revenue and Forecast, by End-user (2020-2032)

11.5. Latin America

11.5.1. Market Revenue and Forecast, by Type (2020-2032)

11.5.2. Market Revenue and Forecast, by Application (2020-2032)

11.5.3. Market Revenue and Forecast, by End-user (2020-2032)

11.5.4. Brazil

11.5.4.1. Market Revenue and Forecast, by Type (2020-2032)

11.5.4.2. Market Revenue and Forecast, by Application (2020-2032)

11.5.4.3. Market Revenue and Forecast, by End-user (2020-2032)

11.5.5. Rest of LATAM

11.5.5.1. Market Revenue and Forecast, by Type (2020-2032)

11.5.5.2. Market Revenue and Forecast, by Application (2020-2032)

11.5.5.3. Market Revenue and Forecast, by End-user (2020-2032)

Chapter 12. Company Profiles

12.1. Facebook Inc.

12.1.1. Company Overview

12.1.2. Product Offerings

12.1.3. Financial Performance

12.1.4. Recent Initiatives

12.2. Google LLC

12.2.1. Company Overview

12.2.2. Product Offerings

12.2.3. Financial Performance

12.2.4. Recent Initiatives

12.3. Microsoft Corporation

12.3.1. Company Overview

12.3.2. Product Offerings

12.3.3. Financial Performance

12.3.4. Recent Initiatives

12.4. IBM Corporation

12.4.1. Company Overview

12.4.2. Product Offerings

12.4.3. Financial Performance

12.4.4. Recent Initiatives

12.5. Amazon Web Services Inc.

12.5.1. Company Overview

12.5.2. Product Offerings

12.5.3. Financial Performance

12.5.4. Recent Initiatives

Chapter 13. Research Methodology

13.1. Primary Research

13.2. Secondary Research

13.3. Assumptions

Chapter 14. Appendix

14.1. About Us

14.2. Glossary of Terms

Thanks for reading you can also get individual chapter-wise sections or region-wise report versions such as North America, Europe, or the Asia Pacific.

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