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Title page
Contents
REPORT HIGHLIGHTS 10
CHAPTER 1: RESEARCH & DEVELOPMENT 13
OVERVIEW 15
CHAPTER HIGHLIGHTS 16
1.1. PUBLICATIONS 17
OVERVIEW 17
Total Number of AI Publications 17
By Type of Publication 18
By Field of Study 19
By Sector 20
Cross-Country Collaboration 22
Cross-Sector Collaboration 23
AI JOURNAL PUBLICATIONS 24
Overview 24
By Region 25
By Geographic Area 26
Citations 27
AI CONFERENCE PUBLICATIONS 28
Overview 28
By Region 29
By Geographic Area 30
Citations 31
AI REPOSITORIES 32
Overview 32
By Region 33
By Geographic Area 34
Citations 35
AI PATENTS 36
Overview 36
By Region and Application Status 37
By Geographic Area and Application Status 39
1.2. CONFERENCES 41
CONFERENCE ATTENDANCE 41
WOMEN IN MACHINE LEARNING (WIML) NEURIPS WORKSHOP 43
Workshop Participants 43
Demographics Breakdown 44
1.3. AI OPEN-SOURCE SOFTWARE LIBRARIES 45
GITHUB STARS 45
CHAPTER 2: TECHNICAL PERFORMANCE 47
OVERVIEW 50
CHAPTER HIGHLIGHTS 51
2.1. COMPUTER VISION-IMAGE 52
IMAGE CLASSIFICATION 52
ImageNet 52
ImageNet: Top-1 Accuracy 52
ImageNet: Top-5 Accuracy 52
IMAGE GENERATION 54
STL-10: Frechet Inception Distance (FID) Score 54
CIFAR-10: Frechet Inception Distance (FID) Score 55
DEEPFAKE DETECTION 56
FaceForensics++ 56
Celeb-DF 57
HUMAN POSE ESTIMATION 57
Leeds Sports Poses: Percentage of Correct Keypoints (PCK) 58
Human3.6M: Average Mean Per Joint Position Error (MPJPE) 59
SEMANTIC SEGMENTATION 60
Cityscapes 60
MEDICAL IMAGE SEGMENTATION 61
CVC-ClinicDB and Kvasir-SEG 61
FACE DETECTION AND RECOGNITION 62
National Institute of Standards and Technology (NIST) Face Recognition Vendor Test (FRVT) 62
FACE DETECTION: EFFECTS OF MASK-WEARING 63
Face Recognition Vendor Test (FRVT): Face-Mask Effects 63
Masked Labeled Faces in the Wild (MLFW) 64
VISUAL REASONING 65
Visual Question Answering (VQA) Challenge 65
2.2. COMPUTER VISION-VIDEO 67
ACTIVITY RECOGNITION 67
Kinetics-400, Kinetics-600, Kinetics-700 67
ActivityNet: Temporal Action Localization Task 69
OBJECT DETECTION 70
Common Object in Context (COCO) 71
You Only Look Once (YOLO) 72
Visual Commonsense Reasoning (VCR) 73
2.3. LANGUAGE 74
ENGLISH LANGUAGE UNDERSTANDING 74
SuperGLUE 74
Stanford Question Answering Dataset (SQuAD) 75
Reading Comprehension Dataset Requiring Logical Reasoning (ReClor) 76
TEXT SUMMARIZATION 78
arXiv 78
PubMed 79
NATURAL LANGUAGE INFERENCE 80
Stanford Natural Language Inference (SNLI) 80
Abductive Natural Language Inference (aNLI) 81
SENTIMENT ANALYSIS 82
SemEval 2014 Task 4 Sub Task 2 82
MACHINE TRANSLATION (MT) 83
WMT 2014, English-German and English-French 84
Number of Commercially Available MT Systems 85
2.4. SPEECH 86
SPEECH RECOGNITION 86
Transcribe Speech: LibriSpeech (Test-Clean and Other Datasets) 86
VoxCeleb 87
2.5. RECOMMENDATION 88
Commercial Recommendation: MovieLens 20M 88
Click-Through Rate Prediction: Criteo 89
2.6. REINFORCEMENT LEARNING 90
REINFORCEMENT LEARNING ENVIRONMENTS 90
Arcade Learning Environment: Atari-57 90
Procgen 91
Human Games: Chess 93
2.7. HARDWARE 94
MLPerf: Training Time 94
MLPerf: Number of Accelerators 96
IMAGENET: Training Cost 97
2.8. ROBOTICS 98
Price Trends in Robotic Arms 98
AI Skills Employed by Robotics Professors 99
CHAPTER 3: TECHNICAL AI ETHICS 100
OVERVIEW 102
ACKNOWLEDGMENT 103
CHAPTER HIGHLIGHTS 105
3.1. META-ANALYSIS OF FAIRNESS AND BIAS METRICS 106
AI ETHICS DIAGNOSTIC METRICS AND BENCHMARKS 107
3.2. NATURAL LANGUAGE PROCESSING BIAS METRICS 109
TOXICITY: REALTOXICITYPROMPTS AND THE PERSPECTIVE API 109
LARGE LANGUAGE MODELS AND TOXICITY 111
DETOXIFICATION OF MODELS CAN NEGATIVELY INFLUENCE PERFORMANCE 113
STEREOSET 114
CROWS-PAIRS 115
WINOGENDER AND WINOBIAS 117
WINOMT: GENDER BIAS IN MACHINE TRANSLATION SYSTEMS 119
WORD AND IMAGE EMBEDDING ASSOCIATION TESTS 120
MULTILINGUAL WORD EMBEDDINGS 122
Mitigating Bias in Word Embeddings With Intrinsic Bias Metrics 122
3.3. AI ETHICS TRENDS AT FACCT AND NEURIPS 123
ACM CONFERENCE ON FAIRNESS, ACCOUNTABILITY, AND TRANSPARENCY (FACCT) 123
NEURIPS WORKSHOPS 125
Interpretability, Explainability, and Causal Reasoning 126
Privacy and Data Collection 127
Fairness and Bias 129
3.4. FACTUALITY AND TRUTHFULNESS 130
FACT-CHECKING WITH AI 130
Measuring Fact-Checking Accuracy With FEVER Benchmark 133
TOWARD TRUTHFUL LANGUAGE MODELS 134
Model Size and Truthfulness 134
MULTIMODAL BIASES IN CONTRASTIVE LANGUAGE-IMAGE PRETRAINING (CLIP) 136
Denigration Harm 136
Gender Bias 136
Propagating Learned Bias Downstream 138
Underperformance on Non-English Languages 138
CHAPTER 4: THE ECONOMY AND EDUCATION 139
OVERVIEW 141
CHAPTER HIGHLIGHTS 142
4.1. JOBS 143
AI HIRING 143
AI LABOR DEMAND 145
Global AI Labor Demand 145
U.S. AI Labor Demand: By Skill Cluster 146
U.S. Labor Demand: By Sector 147
U.S. Labor Demand: By State 147
AI SKILL PENETRATION 149
Global Comparison 149
Global Comparison: By Industry 149
Global Comparison: By Gender 150
4.2. INVESTMENT 151
CORPORATE INVESTMENT 151
STARTUP ACTIVITY 152
Global Trend 152
Regional Comparison by Funding Amount 154
Regional Comparison by Newly Funded AI Companies 156
Focus Area Analysis 158
4.3. CORPORATE ACTIVITY 160
INDUSTRY ADOPTION 160
Global Adoption of AI 160
AI Adoption by Industry and Function 161
Type of AI Capabilities Adopted 162
Consideration and Mitigation of Risks From Adopting AI 163
4.4. AI EDUCATION 165
CS UNDERGRADUATE GRADUATES IN NORTH AMERICA 165
NEW CS PHDS IN NORTH AMERICA 166
New CS PhDs by Specialty 166
New CS PhDs with AI/ML and Robotics/Vision Specialties 167
NEW AI PHDS EMPLOYMENT IN NORTH AMERICA 168
Academia vs. Industry vs. Government 168
DIVERSITY OF NEW AI PHDS IN NORTH AMERICA 169
By Gender 169
By Race/Ethnicity 170
NEW INTERNATIONAL AI PHDS IN NORTH AMERICA 171
CHAPTER 5: AI POLICY AND GOVERNANCE 172
OVERVIEW 174
CHAPTER HIGHLIGHTS 175
5.1. AI AND POLICYMAKING 176
GLOBAL LEGISLATION RECORDS ON AI 176
By Geographic Area 177
Federal AI Legislation in the United States 178
A Closer Look at the Legislation 179
STATE-LEVEL AI LEGISLATION IN THE UNITED STATES 180
By State 181
Sponsorship by Political Party 182
MENTIONS OF AI IN LEGISLATIVE RECORDS 183
AI Mentions in U.S. Congressional Records 183
AI Mentions in Global Legislative Proceedings 184
By Geographic Area 185
U.S. AI POLICY PAPERS 186
By Topic 187
5.2. U.S. PUBLIC INVESTMENT IN AI 188
FEDERAL BUDGET FOR NONDEFENSE AI R&D 188
U.S. DEPARTMENT OF DEFENSE BUDGET REQUEST 189
DOD Top Five Highest-Funded Programs 190
DOD AI R&D Spending by Department 191
U.S. GOVERNMENT AI-RELATED CONTRACT SPENDING 192
Total Contract Spending 192
Contract Spending by Department and Agency 193
Largest Contract for Five Top-Spending Departments in 2021 195
APPENDIX 196
CHAPTER 1: RESEARCH & DEVELOPMENT 198
CHAPTER 2: TECHNICAL PERFORMANCE 200
CHAPTER 3: TECHNICAL AI ETHICS 212
CHAPTER 4: THE ECONOMY AND EDUCATION 216
CHAPTER 5: AI POLICY AND GOVERNANCE 222
Table 4.2.1. (Omit) 153
Table 5.2.1. DOD Top Five Highest-Funded Programs 190
Table 5.2.2. Largest Contract for Five Top-Spending Departments in 2021 195
FIGURE 1.1.1. NUMBER OF AI PUBLICATIONS IN THE WORLD, 2010-21 17
FIGURE 1.1.2. NUMBER OF AI PUBLICATIONS BY TYPE, 2010-21 18
FIGURE 1.1.3. NUMBER OF AI PUBLICATIONS BY FIELD OF STUDY (EXCLUDING OTHER AI), 2010-21 19
FIGURE 1.1.4A. AI PUBLICATIONS (% OF TOTAL) BY SECTOR, 2010-21 20
FIGURE 1.1.4B. AI PUBLICATIONS IN UNITED STATES (% OF TOTAL) BY SECTOR, 2010-21 20
FIGURE 1.1.4C. AI PUBLICATIONS IN CHINA (% OF TOTAL) BY SECTOR, 2010-21 21
FIGURE 1.1.4D. AI PUBLICATIONS IN EUROPEAN UNION AND UNITED KINGDOM (% OF TOTAL) BY SECTOR, 2010-21 21
FIGURE 1.1.5A. UNITED STATES AND CHINA COLLABORATIONS IN AI PUBLICATIONS, 2010-21 22
FIGURE 1.1.5B. CROSS-COUNTRY COLLABORATIONS IN AI PUBLICATIONS (EXCLUDING U.S. AND CHINA), 2010-21 23
FIGURE 1.1.6. CROSS-SECTOR COLLABORATIONS IN AI PUBLICATIONS, 2010-21 23
FIGURE 1.1.7. NUMBER OF AI JOURNAL PUBLICATIONS, 2010-21 24
FIGURE 1.1.8. AI JOURNAL PUBLICATIONS (% OF TOTAL JOURNAL PUBLICATIONS), 2010-21 24
FIGURE 1.1.9. AI JOURNAL PUBLICATIONS (% OF WORLD TOTAL) BY REGION, 2010-21 25
FIGURE 1.1.10. AI JOURNAL PUBLICATIONS (% OF WORLD TOTAL) BY GEOGRAPHIC AREA, 2010-21 26
FIGURE 1.1.11. AI JOURNAL CITATIONS (% OF WORLD TOTAL) BY GEOGRAPHIC AREA, 2010-21 27
FIGURE 1.1.12. NUMBER OF AI CONFERENCE PUBLICATIONS, 2010-21 28
FIGURE 1.1.13. AI CONFERENCE PUBLICATIONS (% OF TOTAL CONFERENCE PUBLICATIONS), 2010-21 28
FIGURE 1.1.14. AI CONFERENCE PUBLICATIONS (% OF WORLD TOTAL) BY REGION, 2010-21 29
FIGURE 1.1.15. AI CONFERENCE PUBLICATIONS (% OF WORLD TOTAL) BY GEOGRAPHIC AREA, 2010-21 30
FIGURE 1.1.16. AI CONFERENCE CITATIONS (% OF WORLD TOTAL) BY GEOGRAPHIC AREA, 2010-21 31
FIGURE 1.1.17. NUMBER OF AI REPOSITORY PUBLICATIONS, 2010-21 32
FIGURE 1.1.18. AI REPOSITORY PUBLICATIONS (% OF TOTAL REPOSITORY PUBLICATIONS), 2010-21 32
FIGURE 1.1.19. AI REPOSITORY PUBLICATIONS (% OF WORLD TOTAL) BY REGION, 2010-21 33
FIGURE 1.1.20. AI REPOSITORY PUBLICATIONS (% OF WORLD TOTAL) BY GEOGRAPHIC AREA, 2010-21 34
FIGURE 1.1.21. AI REPOSITORY CITATIONS (% OF WORLD TOTAL) BY GEOGRAPHIC AREA, 2010-21 35
FIGURE 1.1.22. NUMBER OF AI PATENT FILINGS, 2010-21 36
FIGURE 1.1.23A. AI PATENT FILINGS (% OF WORLD TOTAL) BY REGION, 2010-21 37
FIGURE 1.1.23B. GRANTED AI PATENTS (% OF WORLD TOTAL) BY REGION, 2010-21 (PART 1) 38
FIGURE 1.1.23C. GRANTED AI PATENTS (% OF WORLD TOTAL) BY REGION, 2010-21 (PART 2) 38
FIGURE 1.1.24A. AI PATENT FILINGS (% OF WORLD TOTAL) BY GEOGRAPHIC AREA, 2010-21 39
FIGURE 1.1.24B. GRANTED AI PATENTS (% OF WORLD TOTAL) BY GEOGRAPHIC AREA, 2010-21 39
FIGURE 1.1.24C. AI PATENTS BY APPLICATION STATUS BY GEOGRAPHIC AREA, 2010-21 40
FIGURE 1.2.1. NUMBER OF ATTENDEES AT SELECT AI CONFERENCES, 2010-21 41
FIGURE 1.2.2. ATTENDANCE AT LARGE AI CONFERENCES, 2010-21 42
FIGURE 1.2.3. ATTENDANCE AT SMALL AI CONFERENCES, 2010-21 42
FIGURE 1.2.4. ATTENDANCE AT NEURIPS WOMEN IN MACHINE LEARNING WORKSHOP, 2010-21 43
FIGURE 1.2.5. CONTINENT OF RESIDENCE OF PARTICIPANTS AT NEURIPS WOMEN IN MACHINE LEARNING WORKSHOP, 2021 44
FIGURE 1.2.6. PROFESSIONAL POSITIONS OF PARTICIPANTS AT NEURIPS WOMEN IN MACHINE LEARNING WORKSHOP, 2021 44
FIGURE 1.3.1. NUMBER OF GITHUB STARS BY AI LIBRARY (OVER 40K STARS), 2014-21 45
FIGURE 1.3.2. NUMBER OF GITHUB STARS BY AI LIBRARY (UNDER 40K STARS), 2014-21 46
FIGURE 2.1.1. A DEMONSTRATION OF IMAGE CLASSIFICATION 52
FIGURE 2.1.2. IMAGENET CHALLENGE: TOP-1 ACCURACY 53
FIGURE 2.1.3. IMAGENET CHALLENGE: TOP-5 ACCURACY 53
FIGURE 2.1.4. GAN PROGRESS ON FACE GENERATION 54
FIGURE 2.1.5. STL-10: FRÉCHET INCEPTION DISTANCE (FID) SCORE 54
FIGURE 2.1.6. CIFAR-10: FRÉCHET INCEPTION DISTANCE (FID) SCORE 55
FIGURE 2.1.7. FACEFORENSICS++: ACCURACY 56
FIGURE 2.1.8. CELEB-DF: AREA UNDER CURVE SCORE (AUC) 57
FIGURE 2.1.9. A DEMONSTRATION OF HUMAN POSE ESTIMATION 57
FIGURE 2.1.10. LEEDS SPORTS POSES: PERCENTAGE OF CORRECT KEYPOINTS (PCK) 58
FIGURE 2.1.11. HUMAN3.6M: AVERAGE MEAN PER JOINT POSITION ERROR (MPJPE) 59
FIGURE 2.1.12. A DEMONSTRATION OF SEMANTIC SEGMENTATION 60
FIGURE 2.1.13. CITYSCAPES CHALLENGE, PIXEL-LEVEL SEMANTIC LABELING TASK: MEAN INTERSECTION-OVER-UNION (IOU) 60
FIGURE 2.1.14. A DEMONSTRATION OF KIDNEY SEGMENTATION 61
FIGURE 2.1.15A. CVC-CLINICDB: MEAN DICE 61
FIGURE 2.1.15B. KVASIR-SEG: MEAN DICE 61
FIGURE 2.1.16. NATIONAL INSTITUTE OF STANDARDS AND TECHNOLOGY (NIST) FACE RECOGNITION VENDOR TEST (FRVT): VERIFICATION ACCURACY... 62
FIGURE 2.1.17. NIST FRVT FACE MASK EFFECTS: FALSE-NON MATCH RATE 63
FIGURE 2.1.18. EXAMPLES OF MASKED FACES IN THE MASKED LABELED FACES IN THE WILD (MLFW) DATABASE 64
FIGURE 2.1.19. STATE-OF-THE-ART FACE DETECTION METHODS ON MASKED LABELED FACES IN THE WILD (MLFW): ACCURACY 64
FIGURE 2.1.20. AN EXAMPLE OF A VISUAL REASONING TASK 65
FIGURE 2.1.21. SAMPLE QUESTIONS IN THE VISUAL QUESTION ANSWERING (VQA) CHALLENGE 65
FIGURE 2.1.22. VISUAL QUESTION ANSWERING (VQA) CHALLENGE: ACCURACY 66
FIGURE 2.2.1. EXAMPLE CLASSES FROM THE KINETICS DATASET 67
FIGURE 2.2.2. KINETICS-400, KINETICS-600, KINETICS-700: TOP-1 ACCURACY 68
FIGURE 2.2.3. ACTIVITYNET, TEMPORAL ACTION LOCALIZATION TASK: MEAN AVERAGE PRECISION (mAP) 69
FIGURE 2.2.4. A DEMONSTRATION OF HOW OBJECT DETECTION APPEARS TO AI SYSTEMS 70
FIGURE 2.2.5. COCO-TEST-DEV: MEAN AVERAGE PRECISION (mAP50) 71
FIGURE 2.2.6. STATE OF THE ART (SOTA) VS. YOU ONLY LOOK ONCE (YOLO): MEAN AVERAGE PRECISION (mAP50) 72
FIGURE 2.2.7. A SAMPLE QUESTION OF THE VISUAL COMMONSENSE REASONING (VCR) CHALLENGE 73
FIGURE 2.2.8. VISUAL COMMONSENSE REASONING (VCR) TASK: Q-〉AR SCORE 73
FIGURE 2.3.1. A SET OF SUPERGLUE TASKS 74
FIGURE 2.3.2. SUPERGLUE: SCORE 75
FIGURE 2.3.3. HARDER QUESTIONS ADDED TO STANFORD QUESTION ANSWERING DATASET (SQUAD) 2.0 75
FIGURE 2.3.4. SQUAD 1.1 AND SQUAD 2.0: F1 SCORE 76
FIGURE 2.3.5. A SAMPLE QUESTION IN READING COMPREHENSION DATASET REQUIRING LOGICAL REASONING (RECLOR) 76
FIGURE 2.3.6. READING COMPREHENSION DATASET REQUIRING LOGICAL REASONING (RECLOR): ACCURACY 77
FIGURE 2.3.7. ARXIV: ROUGE-1 78
FIGURE 2.3.8. PUBMED: ROUGE-1 79
FIGURE 2.3.9. QUESTIONS AND LABELS IN STANFORD NATURAL LANGUAGE INFERENCE (SNLI) 80
FIGURE 2.3.10. STANFORD NATURAL LANGUAGE INFERENCE (SNLI): ACCURACY 81
FIGURE 2.3.11. EXAMPLE QUESTIONS IN ABDUCTIVE NATURAL LANGUAGE INFERENCE (ANLI) 81
FIGURE 2.3.12. ABDUCTIVE NATURAL LANGUAGE INFERENCE (ANLI): ACCURACY 82
FIGURE 2.3.13. A SAMPLE SEMEVAL TASK 82
FIGURE 2.3.14. SEMEVAL 2014 TASK 4 SUB TASK 2: ACCURACY 83
FIGURE 2.3.15. WMT2014, ENGLISH-FRENCH: BLEU SCORE, WMT2014, ENGLISH-GERMAN: BLEU SCORE 84
FIGURE 2.3.16. NUMBER OF INDEPENDENT MACHINE TRANSLATION SERVICES 85
FIGURE 2.4.1. LIBRISPEECH, TEST CLEAN: WORD ERROR RATE (WER), LIBRISPEECH, TEST OTHER: WORD ERROR RATE (WER) 86
FIGURE 2.4.2. VOXCELEB: EQUAL ERROR RATE (EER) 87
FIGURE 2.5.1. MOVIELENS 20M: NORMALIZED DISCOUNTED CUMULATIVE GAIN@100 (NDCG@100) 88
FIGURE 2.5.2. CRITEO: AREA UNDER CURVE SCORE (AUC) 89
FIGURE 2.6.1. ATARI-57: MEAN HUMAN-NORMALIZED SCORE 91
FIGURE 2.6.2. A SCREENSHOT OF THE 16 GAME ENVIRONMENTS IN PROCGEN 91
FIGURE 2.6.3. PROCGEN: MEAN-NORMALIZED SCORE 92
FIGURE 2.6.4. CHESS SOFTWARE ENGINES: ELO SCORE 93
FIGURE 2.7.1. MLPERF TRAINING TIME OF TOP SYSTEMS BY TASK: MINUTES 94
FIGURE 2.7.2. MLPERF: SCALE OF IMPROVEMENT ACROSS TASK 95
FIGURE 2.7.3. MLPERF HARDWARE: ACCELERATORS 96
FIGURE 2.7.4. IMAGENET: TRAINING COST (TO 93% ACCURACY) 97
FIGURE 2.8.1. MEDIAN PRICE OF ROBOTIC ARMS, 2017-21 98
FIGURE 2.8.2. DISTRIBUTION OF ROBOTIC ARM PRICES, 2017-21 99
FIGURE 2.8.3. AI SKILLS EMPLOYED BY ROBOTICS PROFESSORS 99
FIGURE 3.1.1. NUMBER OF AI FAIRNESS AND BIAS METRICS, 2016-21 106
FIGURE 3.1.2. NUMBER OF AI FAIRNESS AND BIAS METRICS (DIAGNOSTIC METRICS VS. BENCHMARKS), 2016-21 108
FIGURE 3.2.1. TOXICITY: REALTOXICITYPROMPTS AND THE PERSPECTIVE API 109
FIGURE 3.2.2. TOXICITY IN LANGUAGE MODELS BY TRAINING DATASET 110
FIGURE 3.2.3A. GOPHER: PROBABILITY OF TOXIC CONTINUATIONS BASED ON PROMPT TOXICITY BY MODEL SIZE 111
FIGURE 3.2.3B. GOPHER: FEW-SHOT TOXICITY CLASSIFICATION ON THE CIVILCOMMENTS DATASET 112
FIGURE 3.2.4. PERPLEXITY: LANGUAGE MODELING PERFORMANCE BY MINORITY GROUPS ON ENGLISH POST-DETOXIFICATION 113
FIGURE 3.2.5. STEREOSET: STEREOTYPE SCORE BY MODEL SIZE 114
FIGURE 3.2.6. CROWS-PAIRS: LANGUAGE MODEL PERFORMANCE ACROSS BIAS ATTRIBUTES 115
FIGURE 3.2.7. BOOKCORPUS AND SMASHWORDS21: SHARE OF BOOKS ABOUT RELIGION IN PRETRAINING DATASETS 116
FIGURE 3.2.8. MODEL PERFORMANCE ON THE WINOGENDER TASK FROM THE SUPERGLUE BENCHMARK 117
FIGURE 3.2.9. WINOBIAS AND WINOGENDER: NUMBER OF CITATIONS, 2018-21 118
FIGURE 3.2.10. WINOMT: GENDER BIAS IN GOOGLE TRANSLATE ACROSS LANGUAGES 119
FIGURE 3.2.11. SENTENCE EMBEDDING ASSOCIATION TEST (SEAT): MEASURING STEREOTYPICAL ASSOCIATIONS WITH EFFECT SIZE 120
FIGURE 3.2.12. GENDER AND RACIAL BIAS IN WORD EMBEDDINGS TRAINED ON 100 YEARS OF TEXT DATA 121
FIGURE 3.2.13. GENDER BIAS IN SPANISH WORD EMBEDDINGS: EMBEDDING SIMILARITY DISTANCE 122
FIGURE 3.3.1. NUMBER OF ACCEPTED FACCT CONFERENCE SUBMISSIONS BY AFFILIATION, 2018-21 123
FIGURE 3.3.2. NUMBER OF ACCEPTED FACCT CONFERENCE SUBMISSIONS BY REGION, 2018-21 124
FIGURE 3.3.3. NEURIPS WORKSHOP RESEARCH TOPICS: NUMBER OF ACCEPTED PAPERS ON REAL-WORLD IMPACTS, 2015-21 125
FIGURE 3.3.4. NEURIPS RESEARCH TOPICS: NUMBER OF ACCEPTED PAPERS ON CAUSAL EFFECT AND COUNTERFACTUAL REASONING, 2015-2021 126
FIGURE 3.3.5. NEURIPS RESEARCH TOPICS: NUMBER OF ACCEPTED PAPERS ON INTERPRETABILITY AND EXPLAINABILITY, 2015-21 127
FIGURE 3.3.6. NEURIPS RESEARCH TOPICS: NUMBER OF ACCEPTED PAPERS ON PRIVACY IN AI, 2015-21 128
FIGURE 3.3.7. NEURIPS RESEARCH TOPICS: NUMBER OF ACCEPTED PAPERS ON FAIRNESS AND BIAS IN AI, 2015-21 129
FIGURE 3.4.1. DATASETS FOR AUTOMATED FACT-CHECKING: GRANULARITY OF LABELS 130
FIGURE 3.4.2. AUTOMATED FACT-CHECKING BENCHMARKS: NUMBER OF CITATIONS, 2017-21 131
FIGURE 3.4.3. NUMBER OF AUTOMATED FACT-CHECKING BENCHMARKS FOR ENGLISH, 2010-21 132
FIGURE 3.4.4. NUMBER OF AUTOMATED FACT-CHECKING BENCHMARKS BY LANGUAGE 132
FIGURE 3.4.5. FACT EXTRACTION AND VERIFICATION (FEVER) BENCHMARK: ACCURACY AND FEVER SCORE, 2018-21 133
FIGURE 3.4.6. TRUTHFULQA MULTIPLE-CHOICE TASK: TRUTHFUL AND INFORMATIVE ANSWERS BY MODEL 134
FIGURE 3.4.7. TRUTHFULQA GENERATION TASK: TRUTHFUL AND INFORMATIVE ANSWERS BY MODEL 135
FIGURE 3.4.8. BIAS IN CLIP: FREQUENCY OF IMAGE LABELS BY GENDER 137
FIGURE 3.4.9. RESULTS OF THE CLIP-EXPERIMENTS PERFORMED WITH THE COLOR IMAGE OF THE ASTRONAUT EILEEN 138
FIGURE 4.1.1. RELATIVE AI HIRING INDEX BY GEOGRAPHIC AREA, 2021 143
FIGURE 4.1.2. RELATIVE AI HIRING INDEX BY GEOGRAPHIC AREA, 2016-21 144
FIGURE 4.1.3. AI JOB POSTINGS (% OF ALL JOB POSTINGS) BY GEOGRAPHIC AREA, 2013-21 145
FIGURE 4.1.4. AI JOB POSTINGS (% OF ALL JOB POSTINGS) IN THE UNITED STATES BY SKILL CLUSTER, 2010-21 146
FIGURE 4.1.5. AI JOB POSTINGS (% OF ALL JOB POSTINGS) IN THE UNITED STATES BY SECTOR, 2021 147
FIGURE 4.1.6. NUMBER OF AI JOB POSTINGS IN THE UNITED STATES BY STATE, 2021 147
FIGURE 4.1.7. AI JOB POSTINGS (TOTAL AND % OF ALL JOB POSTINGS) BY U.S. STATE AND DISTRICT, 2021 148
FIGURE 4.1.8. RELATIVE AI SKILL PENETRATION RATE BY GEOGRAPHIC AREA, 2015-21 149
FIGURE 4.1.9. RELATIVE AI SKILL PENETRATION RATE BY INDUSTRY ACROSS GEOGRAPHIC AREA, 2015-21 150
FIGURE 4.1.10. RELATIVE AI SKILL PENETRATION RATE BY GENDER, 2015-21 150
FIGURE 4.2.1. GLOBAL CORPORATE INVESTMENT IN AI BY INVESTMENT ACTIVITY, 2013-21 151
FIGURE 4.2.2. PRIVATE INVESTMENT IN AI, 2013-21 152
FIGURE 4.2.3. NUMBER OF NEWLY FUNDED AI COMPANIES IN THE WORLD, 2013-21 153
FIGURE 4.2.4. PRIVATE INVESTMENT IN AI BY GEOGRAPHIC AREA, 2021 154
FIGURE 4.2.5. PRIVATE INVESTMENT IN AI BY GEOGRAPHIC AREA, 2013-21 155
FIGURE 4.2.6. PRIVATE INVESTMENT IN AI BY GEOGRAPHIC AREA, 2013-21 155
FIGURE 4.2.7. NUMBER OF NEWLY FUNDED AI COMPANIES BY GEOGRAPHIC AREA, 2021 156
FIGURE 4.2.8. NUMBER OF NEWLY FUNDED AI COMPANIES BY GEOGRAPHIC AREA, 2013-21 (SUM) 157
FIGURE 4.2.9. NUMBER OF NEWLY FUNDED AI COMPANIES BY GEOGRAPHIC AREA, 2013-21 157
FIGURE 4.2.10. PRIVATE INVESTMENT IN AI BY FOCUS AREA, 2020 VS. 2021 158
FIGURE 4.2.11. PRIVATE INVESTMENT IN AI BY FOCUS AREA, 2017-21 (SUM) 158
FIGURE 4.2.12. PRIVATE INVESTMENT IN AI BY FOCUS AREA, 2017-21 159
FIGURE 4.3.1. AI ADOPTION BY ORGANIZATIONS IN THE WORLD, 2020-21 160
FIGURE 4.3.2. AI ADOPTION BY INDUSTRY AND FUNCTION, 2021 161
FIGURE 4.3.3. AI CAPABILITIES EMBEDDED IN STANDARD BUSINESS PROCESSES, 2021 162
FIGURE 4.3.4. RISKS FROM ADOPTING AI THAT ORGANIZATIONS CONSIDER RELEVANT, 2019-21 163
FIGURE 4.3.5. RISKS FROM ADOPTING AI THAT ORGANIZATIONS TAKE STEPS TO MITIGATE, 2019-21 164
FIGURE 4.4.1. NUMBER OF NEW CS UNDERGRADUATE GRADUATES AT DOCTORAL INSTITUTIONS IN NORTH AMERICA, 2010-20 165
FIGURE 4.4.2. NEW CS PHDS (% OF TOTAL) IN THE UNITED STATES BY SPECIALITY, 2020 166
FIGURE 4.4.3. PERCENTAGE POINT CHANGE IN NEW CS PHDS IN THE UNITED STATES BY SPECIALTY, 2010-20 167
FIGURE 4.4.4A. NEW CS PHDS WITH AI/ML AND ROBOTICS/VISION SPECIALTY IN THE UNITED STATES, 2010-20 167
FIGURE 4.4.4B. NEW CS PHDS (% OF TOTAL) WITH AI/ML AND ROBOTICS/VISION SPECIALTY IN THE UNITED STATES, 2010-20 167
FIGURE 4.4.5A. EMPLOYMENT OF NEW AI PHDS TO ACADEMIA, GOVERNMENT, OR INDUSTRY IN NORTH AMERICA, 2010-20 168
FIGURE 4.4.5B. EMPLOYMENT OF NEW AI PHDS (% OF TOTAL) TO ACADEMIA, GOVERNMENT, OR INDUSTRY IN NORTH AMERICA, 2010-20 168
FIGURE 4.4.6. FEMALE NEW AI AND CS PHDS (% OF TOTAL NEW AI AND CS PHDS) IN NORTH AMERICA, 2010-20 169
FIGURE 4.4.7. NEW U.S. AI RESIDENT PHDS (% OF TOTAL) BY RACE/ETHNICITY, 2010-20 170
FIGURE 4.4.8. NEW COMPUTING PHDS, U.S. RESIDENT (% OF TOTAL) BY RACE/ETHNICITY, 2010-20 170
FIGURE 4.4.9. NEW INTERNATIONAL AI PHDS (% OF TOTAL NEW AI PHDS) IN NORTH AMERICA, 2010-20 171
FIGURE 4.4.10. INTERNATIONAL NEW AI PHDS (% OF TOTAL) IN THE UNITED STATES BY LOCATION OF EMPLOYMENT, 2020 171
FIGURE 5.1.1. NUMBER OF AI-RELATED BILLS PASSED INTO LAW IN 25 SELECT COUNTRIES, 2016-21 176
FIGURE 5.1.2A. NUMBER OF AI-RELATED BILLS PASSED INTO LAW IN SELECT COUNTRIES, 2021 177
FIGURE 5.1.2B. NUMBER OF AI-RELATED BILLS PASSED INTO LAW IN SELECT COUNTRIES, 2016-21 (SUM) 178
FIGURE 5.1.3. NUMBER OF AI-RELATED BILLS IN THE UNITED STATES, 2015-21 (PROPOSED VS. PASSED) 178
FIGURE 5.1.4. STATE-LEVEL AI LEGISLATION IN THE UNITED STATES 180
FIGURE 5.1.5. NUMBER OF STATE-LEVEL PROPOSED AI-RELATED BILLS IN THE UNITED STATES BY STATE, 2012-21 (SUM) 181
FIGURE 5.1.6. NUMBER OF STATE-LEVEL PROPOSED AI-RELATED BILLS IN THE UNITED STATES BY STATE, 2021 181
FIGURE 5.1.7. NUMBER OF STATE-LEVEL PROPOSED AI-RELATED BILLS IN THE UNITED STATES BY SPONSOR PARTY, 2012-21 182
FIGURE 5.1.8. MENTIONS OF AI IN THE U.S. CONGRESSIONAL RECORD BY LEGISLATIVE SESSION, 2001-21 183
FIGURE 5.1.9. NUMBER OF MENTIONS OF AI IN LEGISLATIVE PROCEEDINGS IN 25 SELECT COUNTRIES, 2016-21 184
FIGURE 5.1.10A. NUMBER OF MENTIONS OF AI IN LEGISLATIVE PROCEEDINGS IN SELECT COUNTRIES, 2021 185
FIGURE 5.1.10B. NUMBER OF MENTIONS OF AI IN LEGISLATIVE PROCEEDINGS IN SELECT COUNTRIES, 2016-2021 (SUM) 185
FIGURE 5.1.11. NUMBER OF AI-RELATED POLICY PAPERS BY U.S.-BASED ORGANIZATIONS, 2018-21 186
FIGURE 5.1.12. NUMBER OF AI-RELATED POLICY PAPERS BY U.S.-BASED ORGANIZATIONS BY TOPIC, 2021 187
FIGURE 5.2.1. U.S. FEDERAL BUDGET FOR NONDEFENSE AI R&D, FY 2018-22 188
FIGURE 5.2.2. U.S. DOD BUDGET FOR AI-SPECIFIC RESEARCH, DEVELOPMENT, TEST AND EVALUATION (RDT&E), FY 2020-22 189
FIGURE 5.2.3. U.S. DOD BUDGET FOR AI-SPECIFIC RESEARCH, DEVELOPMENT, TEST AND EVALUATION (RDT&E) BY DEPARTMENT, FY 2020-22 191
FIGURE 5.2.4. U.S. GOVERNMENT TOTAL CONTRACT SPENDING ON AI, FY 2000-21 192
FIGURE 5.2.5. TOP CONTRACT SPENDING ON AI BY U.S. GOVERNMENT DEPARTMENT AND AGENCY, 2021 193
FIGURE 5.2.6. TOP CONTRACT SPENDING ON AI BY U.S. GOVERNMENT DEPARTMENT AND AGENCY, 2000-21 (SUM) 194
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