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Title page 1
Contents 13
Report Highlights 14
CHAPTER 1: Research and Development 27
Overview 29
Chapter Highlights 30
1.1. Publications 31
Overview 31
Total Number of AI Publications 31
By Type of Publication 32
By Field of Study 33
By Sector 34
AI Journal Publications 36
AI Conference Publications 37
1.2. Patents 38
AI Patents 38
Overview 38
By Filing Status and Region 39
1.3. Frontier AI Research 45
General Machine Learning Models 45
Overview 45
Sector Analysis 46
National Affiliation 47
Parameter Trends 49
Compute Trends 50
Highlight: Will Models Run Out of Data? 52
Foundation Models 56
Model Release 56
Organizational Affiliation 58
National Affiliation 61
Training Cost 63
1.4. AI Conferences 66
Conference Attendance 66
1.5. Open-Source AI Software 69
Projects 69
Stars 71
CHAPTER 2: Technical Performance 73
Overview 76
Chapter Highlights 77
2.1. Overview of AI in 2023 78
Timeline: Significant Model Releases 78
State of AI Performance 81
AI Index Benchmarks 82
2.2. Language 85
Understanding 86
HELM: Holistic Evaluation of Language Models 86
MMLU: Massive Multitask Language Understanding 87
Generation 88
Chatbot Arena Leaderboard 88
Factuality and Truthfulness 90
TruthfulQA 90
HaluEval 92
2.3. Coding 94
Generation 94
HumanEval 94
SWE-bench 95
2.4. Image Computer Vision and Image Generation 96
Generation 96
HEIM: Holistic Evaluation of Text-to-Image Models 97
Highlighted Research: MVDream 98
Instruction-Following 99
VisIT-Bench 99
Editing 100
EditVal 100
Highlighted Research: ControlNet 101
Highlighted Research: Instruct-NeRF2NeRF 103
Segmentation 105
Highlighted Research: Segment Anything 105
3D Reconstruction From Images 107
Highlighted Research: Skoltech3D 107
Highlighted Research: RealFusion 108
2.5. Video Computer Vision and Video Generation 109
Generation 109
UCF101 109
Highlighted Research: Align Your Latents 110
Highlighted Research: Emu Video 111
2.6. Reasoning 112
General Reasoning 112
MMMU: A Massive Multi-discipline Multimodal Understanding and Reasoning Benchmark for Expert AGI 112
GPQA: A Graduate-Level Google-Proof Q&A Benchmark 115
Highlighted Research: Comparing Humans, GPT-4, and GPT-4V on Abstraction and Reasoning Tasks 116
Mathematical Reasoning 117
GSM8K 117
MATH 119
PlanBench 120
Visual Reasoning 121
Visual Commonsense Reasoning (VCR) 121
Moral Reasoning 122
MoCa 122
Causal Reasoning 124
BigToM 124
Highlighted Research: Tübingen Cause-Effect Pairs 126
2.7. Audio 127
Generation 127
Highlighted Research: UniAudio 128
Highlighted Research: MusicGEN and MusicLM 129
2.8. Agents 131
General Agents 131
AgentBench 131
Highlighted Research: Voyageur 133
Task-Specific Agents 134
MLAgentBench 134
2.9. Robotics 135
Highlighted Research: PaLM-E 135
Highlighted Research: RT-2 137
2.10. Reinforcement Learning 138
Reinforcement Learning from Human Feedback 138
Highlighted Research: RLAIF 139
Highlighted Research: Direct Preference Optimization 140
2.11. Properties of LLMs 141
Highlighted Research: Challenging the Notion of Emergent Behavior 141
Highlighted Research: Changes in LLM Performance Over Time 143
Highlighted Research: LLMs Are Poor Self-Correctors 145
Closed vs. Open Model Performance 146
2.12. Techniques for LLM Improvement 148
Prompting 148
Highlighted Research: Graph of Thoughts Prompting 148
Highlighted Research: Optimization by PROmpting (OPRO) 150
Fine-Tuning 151
Highlighted Research: QLoRA 151
Attention 152
Highlighted Research: Flash-Decoding 152
2.13. Environmental Impact of AI Systems 154
General Environmental Impact 154
Training 154
Inference 156
Positive Use Cases 157
CHAPTER 3: Responsible AI 158
Overview 160
Chapter Highlights 161
3.1. Assessing Responsible AI 163
Responsible AI Definitions 163
AI Incidents 164
Examples 164
Risk Perception 166
Risk Mitigation 167
Overall Trustworthiness 168
Benchmarking Responsible AI 169
Tracking Notable Responsible AI Benchmarks 169
Reporting Consistency 170
3.2. Privacy and Data Governance 172
Current Challenges 172
Privacy and Data Governance in Numbers 173
Academia 173
Industry 174
Featured Research 175
Extracting Data From LLMs 175
Foundation Models and Verbatim Generation 177
Auditing Privacy in AI Models 179
3.3. Transparency and Explainability 180
Current Challenges 180
Transparency and Explainability in Numbers 181
Academia 181
Industry 182
Featured Research 183
The Foundation Model Transparency Index 183
Neurosymbolic Artificial Intelligence (Why, What, and How) 185
3.4. Security and Safety 186
Current Challenges 186
AI Security and Safety in Numbers 187
Academia 187
Industry 188
Featured Research 191
Do-Not-Answer: A New Open Dataset for Comprehensive Benchmarking of LLM Safety Risks 191
Universal and Transferable Attacks on Aligned Language Models 193
MACHIAVELLI Benchmark 195
3.5. Fairness 197
Current Challenges 197
Fairness in Numbers 197
Academia 197
Industry 198
Featured Research 199
(Un)Fairness in AI and Healthcare 199
Social Bias in Image Generation Models 200
Measuring Subjective Opinions in LLMs 201
LLM Tokenization Introduces Unfairness 203
3.6. AI and Elections 205
Generation, Dissemination, and Detection of Disinformation 205
Generating Disinformation 205
Dissemination of Fake Content 207
Detecting Deepfakes 208
LLMs and Political Bias 210
Impact of AI on Political Processes 211
CHAPTER 4: Economy 213
Overview 215
Chapter Highlights 216
4.1. What's New in 2023: A Timeline 218
4.2. Jobs 223
AI Labor Demand 223
Global AI Labor Demand 223
U.S. AI Labor Demand by Skill Cluster and Specialized Skill 224
U.S. AI Labor Demand by Sector 228
U.S. AI Labor Demand by State 229
AI Hiring 232
AI Skill Penetration 234
AI Talent 236
Highlight: How Much Do Computer Scientists Earn? 240
4.3. Investment 242
Corporate Investment 242
Startup Activity 243
Global Trends 243
Regional Comparison by Funding Amount 247
Regional Comparison by Newly Funded AI Companies 251
Focus Area Analysis 254
4.4. Corporate Activity 258
Industry Adoption 258
Adoption of AI Capabilities 258
Adoption of Generative AI Capabilities 266
Use of AI by Developers 269
Preference 269
Workflow 270
AI's Labor Impact 272
Earnings Calls 277
Aggregate Trends 277
Specific Themes 278
Highlight: Projecting AI's Economic Impact 279
4.5. Robot Installations 283
Aggregate Trends 283
Industrial Robots: Traditional vs. Collaborative Robots 285
By Geographic Area 286
Country-Level Data on Service Robotics 290
Sectors and Application Types 292
China vs. United States 294
CHAPTER 5: Science and Medicine 296
Overview 298
Chapter Highlights 299
5.1. Notable Scientific Milestones 300
AlphaDev 300
FlexiCubes 301
Synbot 303
GraphCast 304
GNoME 305
Flood Forecasting 306
5.2. AI in Medicine 307
Notable Medical Systems 307
SynthSR 307
Coupled Plasmonic Infrared Sensors 309
EVEscape 310
AlphaMissence 312
Human Pangenome Reference 313
Clinical Knowledge 314
MedQA 314
Highlighted Research: GPT-4 Medprompt 315
Highlighted Research: MediTron-70B 317
Diagnosis 318
Highlighted Research: CoDoC 318
Highlighted Research: CT Panda 319
Other Diagnostic Uses 320
FDA-Approved AI-Related Medical Devices 321
Administration and Care 323
Highlighted Research: MedAlign 323
CHAPTER 6: Education 325
Overview 327
Chapter Highlights 328
6.1. Postsecondary CS and AI Education 329
United States and Canada 329
CS Bachelor's Graduates 329
CS Master's Graduates 331
CS PhD Graduates 333
CS, CE, and Information Faculty 336
Europe 344
Informatics, CS, CE, and IT Bachelor's Graduates 344
Informatics, CS, CE, and IT Master's Graduates 347
Informatics, CS, CE, and IT PhD Graduates 351
AI-Related Study Programs 355
Total Courses 355
Education Level 356
Geographic Distribution 357
6.2. K-12 CS and AI Education 359
United States 359
State-Level Trends 359
AP Computer Science 361
Highlight: Access Issues 363
Highlight: ChatGPT Usage Among Teachers and Students 364
CHAPTER 7: Policy and Governance 366
Overview 368
Chapter Highlights 369
7.1. Overview of AI Policy in 2023 370
7.2. AI and Policymaking 376
Global Legislative Records on AI 376
Overview 376
By Geographic Area 378
By Relevance 379
By Approach 380
By Subject Matter 381
U.S. Legislative Records 382
Federal Level 382
State Level 383
AI Mentions 385
Overview 385
U.S. Committee Mentions 388
7.3. National AI Strategies 391
By Geographic Area 391
7.4. AI Regulation 393
U.S. Regulation 393
Overview 393
By Relevance 394
By Agency 395
By Approach 396
By Subject Matter 397
EU Regulation 398
Overview 398
By Relevance 399
By Agency 400
By Approach 401
By Subject Matter 402
7.5. U.S. Public Investment in AI 403
Federal Budget for AI R&D 403
U.S. Department of Defense Budget Requests 405
U.S. Government AI-Related Contract Spending 406
AI Contract Spending 406
Microelectronics and Semiconductor Spending 409
CHAPTER 8: Diversity 411
Overview 413
Chapter Highlights 414
8.1. AI Postsecondary Education 415
North America 415
CS Bachelor's Graduates 415
CS Master's Graduates 417
CS PhD Graduates 419
Disability Status of CS, CE, and Information Students 421
CS, CE, and Information Faculty 422
Europe 425
Informatics, CS, CE, and IT Bachelor's Graduates 425
Informatics, CS, CE, and IT Master's Graduates 425
Informatics, CS, CE, and IT PhD Graduates 425
8.2. AI Conferences 429
Women in Machine Learning (WiML) NeurIPS Workshop 429
Workshop Participants 429
Demographic Breakdown 430
8.3. K-12 Education 432
AP Computer Science: Gender 432
AP Computer Science: Ethnicity 433
CHAPTER 9: Public Opinion 435
Overview 437
Chapter Highlights 438
9.1. Survey Data 439
Global Public Opinion 439
AI Products and Services 439
AI and Jobs 444
AI and Livelihood 446
Attitudes on ChatGPT 448
AI Concerns 451
U.S. Public Opinion 452
9.2. Social Media Data 454
Dominant Models 454
Highlight: AI-Related Social Media Discussion in 2023 456
Appendix 458
Chapter 1: Research and Development 460
Chapter 2: Technical Performance 465
Chapter 3: Responsible AI 472
Chapter 4: Economy 478
Chapter 5: Science and Medicine 488
Chapter 6: Education 491
Chapter 7: Policy and Governance 495
Chapter 8: Diversity 500
Chapter 9: Public Opinion 501
Figures 31
Figure 1.1.1. Number of AI publications in the world, 2010-22 31
Figure 1.1.2. Number of AI publications by type, 2010-22 32
Figure 1.1.3. Number of AI publications by field of study (excluding Other AI), 2010-22 33
Figure 1.1.4. AI publications (% of total) by sector, 2010-22 34
Figure 1.1.5. AI publications (% of total) by sector and geographic area, 2022 35
Figure 1.1.6. Number of AI journal publications, 2010-22 36
Figure 1.1.7. Number of AI conference publications, 2010-22 37
Figure 1.2.1. Number of AI patents granted, 2010-22 38
Figure 1.2.2. AI patents by application status, 2010-22 39
Figure 1.2.3. AI patents by application status by geographic area, 2010-22 40
Figure 1.2.4. Granted AI patents (% of world total) by region, 2010-22 41
Figure 1.2.5. Granted AI patents (% of world total) by geographic area, 2010-22 42
Figure 1.2.6. Granted AI patents per 100,000 inhabitants by country, 2022 43
Figure 1.2.7. Percentage change of granted AI patents per 100,000 inhabitants by country, 2012 vs. 2022 44
Figure 1.3.1. Number of notable machine learning models by sector, 2003-23 46
Figure 1.3.2. Number of notable machine learning models by geographic area, 2023 47
Figure 1.3.3. Number of notable machine learning models by select geographic area, 2003-23 47
Figure 1.3.4. Number of notable machine learning models by geographic area, 2003-23 (sum) 48
Figure 1.3.5. Number of parameters of notable machine learning models by sector, 2003-23 49
Figure 1.3.6. Training compute of notable machine learning models by sector, 2003-23 50
Figure 1.3.7. Training compute of notable machine learning models by domain, 2012-23 51
Figure 1.3.8. Projections of ML data exhaustion by stock type: median and 90% CI dates 52
Figure 1.3.9. A demonstration of model collapse in a VAE 53
Figure 1.3.10. Convergence of generated data densities in descendant models 54
Figure 1.3.11. An example of MAD in image-generation models 55
Figure 1.3.12. Assessing FFHQ syntheses: FID, precision, and recall in synthetic and mixed-data training loops 55
Figure 1.3.13. Foundation models by access type, 2019-23 56
Figure 1.3.14. Foundation models (% of total) by access type, 2019-23 57
Figure 1.3.15. Number of foundation models by sector, 2019-23 58
Figure 1.3.16. Number of foundation models by organization, 2023 59
Figure 1.3.17. Number of foundation models by organization, 2019-23 (sum) 60
Figure 1.3.18. Number of foundation models by geographic area, 2023 61
Figure 1.3.19. Number of foundation models by select geographic area, 2019-23 61
Figure 1.3.20. Number of foundation models by geographic area, 2019-23 (sum) 62
Figure 1.3.21. Estimated training cost of select AI models, 2017-23 64
Figure 1.3.22. Estimated training cost of select AI models, 2016-23 64
Figure 1.3.23. Estimated training cost and compute of select AI models 65
Figure 1.4.1. Attendance at select AI conferences, 2010-23 66
Figure 1.4.2. Attendance at large conferences, 2010-23 67
Figure 1.4.3. Attendance at small conferences, 2010-23 68
Figure 1.5.1. Number of GitHub AI projects, 2011-23 69
Figure 1.5.2. GitHub AI projects (% of total) by geographic area, 2011-23 70
Figure 1.5.3. Number of GitHub stars in AI projects, 2011-23 71
Figure 1.5.4. Number of GitHub stars by geographic area, 2011-23 72
Figure 2.1.1. (Omit) 78
Figure 2.1.2. (Omit) 78
Figure 2.1.3. (Omit) 78
Figure 2.1.4. (Omit) 78
Figure 2.1.5. (Omit) 79
Figure 2.1.6. (Omit) 79
Figure 2.1.7. (Omit) 79
Figure 2.1.8. (Omit) 79
Figure 2.1.9. (Omit) 79
Figure 2.1.10. (Omit) 79
Figure 2.1.11. (Omit) 80
Figure 2.1.12. (Omit) 80
Figure 2.1.13. (Omit) 80
Figure 2.1.14. (Omit) 80
Figure 2.1.15. (Omit) 80
Figure 2.1.16. Select AI Index technical performance benchmarks vs. human performance 81
Figure 2.1.17. A selection of deprecated benchmarks from the 2023 AI Index report 82
Figure 2.1.18. Year-over-year improvement over time on select AI Index technical performance benchmarks 83
Figure 2.1.19. New benchmarks featured in the 2024 AI Index report 84
Figure 2.2.1. A sample output from GPT-4 85
Figure 2.2.2. Gemini handling image and audio inputs 85
Figure 2.2.3. HELM: mean win rate 86
Figure 2.2.4. Leaders on individual HELM sub-benchmarks 86
Figure 2.2.5. A sample question from MMLU 87
Figure 2.2.6. MMLU: average accuracy 87
Figure 2.2.7. A sample model response on the Chatbot Arena Leaderboard 88
Figure 2.2.8. LMSYS Chatbot Arena for LLMs: Elo rating 89
Figure 2.2.9. Sample TruthfulQA questions 90
Figure 2.2.10. Multiple-choice task on TruthfulQA: MC1 91
Figure 2.2.11. A generated hallucinated QA example and a human-labeled ChatGPT response for a user query 92
Figure 2.2.12. HaluEnal hallucination classification accuracy 93
Figure 2.3.1. Sample HumanEval problem 94
Figure 2.3.2. HumanEval: Pass@1 94
Figure 2.3.3. A sample model input from SWE-bench 95
Figure 2.3.4. SWE-bench: percent resolved 95
Figure 2.4.1. Which face is real? 96
Figure 2.4.2. Midjourney generations over time: "a hyper-realistic image of Harry Potter" 96
Figure 2.4.3. Image-text alignment: human evaluation 97
Figure 2.4.4. Model leaders on select HEIM sub-benchmarks 97
Figure 2.4.5. Sample generations from MVDream 98
Figure 2.4.6. Quantitative evaluation on image synthesis quality 98
Figure 2.4.7/Figure 2.4.8. A sample VisIT-Bench instruction set 99
Figure 2.4.8/Figure 2.4.9. VisIT-Bench: Elo rating 99
Figure 2.4.9/Figure 2.4.10. A sample VisIT-Bench instruction set 100
Figure 2.4.10/Figure 2.4.11. EditVal automatic evaluation: editing accuracy 100
Figure 2.4.11/Figure 2.4.12. Sample edits using ControlNet 101
Figure 2.4.12/Figure 2.4.13. Average User Ranking (AUR): result quality and condition fidelity 102
Figure 2.4.13/Figure 2.4.14. A demonstration of Instruct-NeRF2NeRF in action 103
Figure 2.4.14/Figure 2.4.15. Evaluating text-image alignment and frame consistency 104
Figure 2.4.15/Figure 2.4.16. Various segmentation masks created by Segment Anything 105
Figure 2.4.16/Figure 2.4.17. SAM vs. RITM: mean IoU 106
Figure 2.4.17/Figure 2.4.18. Objects from the 3D reconstruction dataset 107
Figure 2.4.18/Figure 2.4.19. Skoltech3D vs. the most widely used multisensor datasets 107
Figure 2.4.19/Figure 2.4.20. Sample generations from RealFusion 108
Figure 2.4.20/Figure 2.4.21. Object reconstruction: RealFusion vs. Shelf-Supervised 108
Figure 2.5.1. Sample frames from UCF101 109
Figure 2.5.2. UCF101: FVD16 109
Figure 2.5.3. High-quality generation of milk dripping into a cup of coffee 110
Figure 2.5.4. Video LDM vs. LVG: FVD and FID 110
Figure 2.5.5. Sample Emu Video generations 111
Figure 2.5.6. Emu Video vs. prior works: human-evaluated video quality and text faithfulness win rate 111
Figure 2.6.1. Sample MMMU questions 113
Figure 2.6.2. MMMU: overall accuracy 114
Figure 2.6.3. MMMU: subject-specific accuracy 114
Figure 2.6.4. A sample chemistry question from GPQA 115
Figure 2.6.5. GPQA: accuracy on the main set 115
Figure 2.6.6. A sample ARC reasoning task 116
Figure 2.6.7. ConceptARC: accuracy on minimal tasks over all concepts 116
Figure 2.6.8. Sample problems from GSM8K 117
Figure 2.6.9. GSM8K: accuracy 118
Figure 2.6.10. A sample problem from the MATH dataset 119
Figure 2.6.11. MATH word problem-solving: accuracy 119
Figure 2.6.12. GPT-4 vs. I-GPT-3 on PlanBench 120
Figure 2.6.13. A sample question from the Visual Commonsense Reasoning (VCR) challenge 121
Figure 2.6.14. Visual Commonsense Reasoning (VCR) task: Q→AR score 121
Figure 2.6.15. A moral story from MoCa 122
Figure 2.6.16. Zero-shot alignment with human judgments on the moral permissibility task: discrete agreement 123
Figure 2.6.17. Sample BigToM scenario 124
Figure 2.6.18. Forward action inference with initial belief: accuracy 125
Figure 2.6.19. Backward belief inference with initial belief: accuracy 125
Figure 2.6.20. Forward belief inference with initial belief: accuracy 125
Figure 2.6.21. Sample cause-effect pairs from the Tübingen dataset 126
Figure 2.6.22. Performance on the Tübingen Cause-Effect Pairs dataset: accuracy 126
Figure 2.7.1. UniAudio vs. selected prior works in the training stage: objective evaluation metrics 128
Figure 2.7.2. Evaluation of MusicGen and baseline models on MusicCaps 130
Figure 2.8.1. Description of the AgentBench benchmark 131
Figure 2.8.2. AgentBench across eight environments: overall score 132
Figure 2.8.3. Voyager in action 133
Figure 2.8.4. Voyager's performance improvements over prior state of the art in Minecraft 133
Figure 2.8.5. MLAgentBench evaluation: success rate of select models across tasks 134
Figure 2.9.1. PaLM-E in action 136
Figure 2.9.2. Performance of select models on TAMP environment: success rate 136
Figure 2.9.3. Select models on mobile manipulation environment tests: failure detection 136
Figure 2.9.4. Evaluation of RT-2 models and baselines on seen and unseen tasks: success rate 137
Figure 2.10.1. Number of foundation models using RLHF, 2021-23 138
Figure 2.10.2. RLHF usage among foundation models 138
Figure 2.10.3. RLAIF and RLHF vs. SFT baseline: win rate 139
Figure 2.10.4. Harmless rate by policy 139
Figure 2.10.5. Comparison of different algorithms on TL;DR summarization task across different sampling temperatures 140
Figure 2.11.1. Emergence score over all Big-bench tasks 142
Figure 2.11.2. Performance of the March 2023 and June 2023 versions of GPT-4 on eight tasks 144
Figure 2.11.3. GPT-4 on reasoning benchmarks with intrinsic self-correction 145
Figure 2.11.4. Score differentials of top closed vs. open models on select benchmarks 146
Figure 2.11.5. Performance of top closed vs. open models on select benchmarks 147
Figure 2.12.1. Graph of Thoughts (GoT) reasoning flow 148
Figure 2.12.2. Number of errors in sorting tasks with ChatGPT-3.5 149
Figure 2.12.3. Sample OPRO prompts and optimization progress 150
Figure 2.12.4. Accuracy difference on 23 BIG-bench Hard (BBH) tasks using PaLM 2-L scorer 150
Figure 2.12.5. Model competitions based on 10,000 simulations using GPT-4 and the Vicuna benchmark 151
Figure 2.12.6. Flash-Decoding operation process 152
Figure 2.12.7. Performance comparison of multihead attention algorithms across batch sizes and sequence lengths 153
Figure 2.13.1. CO₂ equivalent emissions (tonnes) by select machine learning models and real-life examples, 2020-23 154
Figure 2.13.2. CO₂equivalent emissions (tonnes) and number of parameters by select machine learning models 155
Figure 2.13.3. nvironmental impact of select models 155
Figure 2.13.4. Carbon emissions by task during model inference 156
Figure 2.13.5. Positive AI environmental use cases 157
Figure 3.1.1. Responsible AI dimensions, definitions, and examples 163
Figure 3.1.2. Number of reported AI incidents, 2012-23 164
Figure 3.1.3. Tesla recognizing pedestrian but not slowing down at a crosswalk 165
Figure 3.1.4. Romantic chatbot generated by DALL-E 165
Figure 3.1.5. Relevance of selected responsible AI risks for organizations by region 166
Figure 3.1.6. Global responsible AI adoption by organizations by region 167
Figure 3.1.7. Average trustworthiness score across selected responsible AI dimensions 168
Figure 3.1.8. Number of papers mentioning select responsible AI benchmarks, 2020-23 169
Figure 3.1.9. Reported general benchmarks for popular foundation models 170
Figure 3.1.10. Reported responsible AI benchmarks for popular foundation models 171
Figure 3.2.1. AI privacy and data governance submissions to select academic conferences, 2019-23 173
Figure 3.2.2. Adoption of AI-related data governance measures by region 174
Figure 3.2.3. Adoption of AI-related data governance measures by industry 174
Figure 3.2.4. Extracting PII From ChatGPT 175
Figure 3.2.5. Recovered memorized output given different repeated tokens 176
Figure 3.2.6. Fraction of prompts discovering approximate memorization 177
Figure 3.2.7. Identical generation of Thanos 178
Figure 3.2.8. Identical generation of toys 178
Figure 3.2.9. Identical generation of Mario 178
Figure 3.2.10. Visualizing privacy-auditing in one training run 179
Figure 3.3.1. AI transparency and explainability submissions to select academic conferences, 2019-23 181
Figure 3.3.2. Adoption of AI-related transparency measures by region 182
Figure 3.3.3. Adoption of AI-related transparency measures by industry 182
Figure 3.3.4. Foundation model transparency total scores of open vs. closed developers, 2023 183
Figure 3.3.5. Levels of accessibility and release strategies of foundation models 184
Figure 3.3.6. Integrating neural network structures with symbolic representation 185
Figure 3.4.1. AI security and safety submissions to select academic conferences, 2019-23 187
Figure 3.4.2. Adoption of AI-related reliability measures by region 188
Figure 3.4.3. Adoption of AI-related reliability measures by industry 188
Figure 3.4.4. Adoption of AI-related cybersecurity measures by region 189
Figure 3.4.5. Adoption of AI-related cybersecurity measures by industry 189
Figure 3.4.6. Agreement with security statements 190
Figure 3.4.7. Harmful responses across different risk caregories by foundation model 191
Figure 3.4.8. Total number of harmful responses across different foundation models 192
Figure 3.4.9. Using suffixes to manipulate LLMs 193
Figure 3.4.10. Attack success rates of foundation models using different prompting techniques 194
Figure 3.4.11. Trade-offs on the MACHIAVELLI benchmark 195
Figure 3.4.12. Mean behavioral scores of AI agents across different categories 196
Figure 3.5.1. AI fairness and bias submissions to select academic conferences, 2019-23 197
Figure 3.5.2. Adoption of AI-related fairness measures by region 198
Figure 3.5.3. Adoption of AI-related fairness measures by industry 198
Figure 3.5.4. Number of runs (out of 5 total runs) with concerning race-based responses by large language model 199
Figure 3.5.5. Midjourney generation: "influential person" 200
Figure 3.5.6. Average image model bias scores for five widely used commercial image generation models 200
Figure 3.5.7. GlobalOpinionQA Dataset 201
Figure 3.5.8. Western-oriented bias in large language model responses 202
Figure 3.5.9. Context window 203
Figure 3.5.10. Variable language tokenization 203
Figure 3.5.11. Tokenization premium using XLM-RoBERTa and RoBERTa models by language 204
Figure 3.6.1. Potential uses of deepfakes 205
Figure 3.6.2. Progressive Slovakia leader Michal Šimečka 206
Figure 3.6.3. AI-based generation and dissemination pipeline 207
Figure 3.6.4. Generalizability of deepfake detectors to unseen datasets 208
Figure 3.6.5. Ethnic and gender distribution in FaceForensics++ training data 209
Figure 3.6.6. Default vs. political ChatGPT average agreement 210
Figure 3.6.7. Key research findings on audio deepfakes 211
Figure 3.6.8. AI usage, risks, and mitigation strategies in electoral processes 212
Figure 3.6.9. Assessments of AI integration and risks in electoral processes 212
Figure 4.1.1. InstaDeep acquired by BioNTech 218
Figure 4.1.2. Microsoft invests $10 billion in ChatGPT maker OpenAI 218
Figure 4.1.3. GitHub Copilot for Business becomes publicly available 218
Figure 4.1.4. Salesforce introduces Einstein GPT 218
Figure 4.1.5. Microsoft announces integration of GPT-4 into Office 365 219
Figure 4.1.6. Bloomberg announces LLM for finance 219
Figure 4.1.7. Adobe launches generative AI tools inside Photoshop 219
Figure 4.1.8. Cohere raises $270 million 219
Figure 4.1.9. Nvidia reaches $1 trillion valuation 220
Figure 4.1.10. Databricks buys MosaicML for $1.3 billion 220
Figure 4.1.11. Thomson Reuters acquires Casetext for $650 million 220
Figure 4.1.12. Inflection AI raises $1.3 billion from Bill Gates and Nvidia, among others 220
Figure 4.1.13. Hugging Face raises $235 million from investors 221
Figure 4.1.14. SAP introduces new generative AI assistant Joule 221
Figure 4.1.15. Amazon and Google make multibillion-dollar investments in Anthropic 221
Figure 4.1.16. Kai-Fu Lee launches OpenSource LLM 221
Figure 4.1.17. Sam Altman, OpenAI CEO, fired and then rehired 222
Figure 4.1.18. Mistral AI closes $415 million funding round 222
Figure 4.2.1. AI job postings (% of all job postings) by geographic area, 2014-23 223
Figure 4.2.2. AI job postings (% of all job postings) in the United States by skill cluster, 2010-23 224
Figure 4.2.3. Top 10 specialized skills in 2023 AI job postings in the United States, 2011-13 vs. 2023 225
Figure 4.2.4. Generative AI skills in AI job postings in the United States, 2023 226
Figure 4.2.5. Share of generative AI skills in AI job postings in the United States, 2023 227
Figure 4.2.6. AI job postings (% of all job postings) in the United States by sector, 2022 vs. 2023 228
Figure 4.2.7. Number of AI job postings in the United States by state, 2023 229
Figure 4.2.8. Percentage of US states job postings in AI, 2023 229
Figure 4.2.9. Percentage of US AI job postings by state, 2023 230
Figure 4.2.10. Percentage of US states' job postings in AI by select US state, 2010-23 230
Figure 4.2.11. Percentage of US AI job postings by select US state, 2010-23 231
Figure 4.2.12. Relative AI hiring rate year-over-year ratio by geographic area, 2023 232
Figure 4.2.13. Relative AI hiring rate year-over-year ratio by geographic area, 2018-23 233
Figure 4.2.14. Relative AI skill penetration rate by geographic area, 2015-23 234
Figure 4.2.15. Relative AI skill penetration rate across gender, 2015-23 235
Figure 4.2.16. AI talent concentration by geographic area, 2023 236
Figure 4.2.17. Percentage change in AI talent concentration by geographic area, 2016 vs. 2023 236
Figure 4.2.18. AI talent concentration by gender, 2016-23 237
Figure 4.2.19. Net AI talent migration per 10,000 LinkedIn members by geographic area, 2023 238
Figure 4.2.20. Net AI talent migration per 10,000 LinkedIn members by geographic area, 2019-23 239
Figure 4.2.21. Median yearly salary by professional developer type, 2023 241
Figure 4.3.1. Global corporate investment in AI by investment activity, 2013-23 242
Figure 4.3.2. Private investment in AI, 2013-23 243
Figure 4.3.3. Private investment in generative AI, 2019-23 244
Figure 4.3.4. Number of newly funded AI companies in the world, 2013-23 245
Figure 4.3.5. Average size of AI private investment events, 2013-23 245
Figure 4.3.6. Number of newly funded generative AI companies in the world, 2019-23 246
Figure 4.3.7. AI private investment events by funding size, 2022 vs. 2023 246
Figure 4.3.8. Private investment in AI by geographic area, 2023 247
Figure 4.3.9. Private investment in AI by geographic area, 2013-23 (sum) 248
Figure 4.3.10. Private investment in AI by geographic area, 2013-23 249
Figure 4.3.11. Private investment in generative AI by geographic area, 2019-23 250
Figure 4.3.12. Number of newly funded AI companies by geographic area, 2023 251
Figure 4.3.13. Number of newly funded AI companies by geographic area, 2013-23 (sum) 252
Figure 4.3.14. Number of newly funded AI companies by geographic area, 2013-23 253
Figure 4.3.15. Private investment in AI by focus area, 2022 vs. 2023 254
Figure 4.3.16. Private investment in AI by focus area, 2017-23 255
Figure 4.3.17. Private investment in AI by focus area and geographic area, 2017-23 257
Figure 4.4.1. Share of respondents who say their organizations have adopted AI in at least one function, 2017-23 258
Figure 4.4.2. Most commonly adopted AI use cases by function, 2023 259
Figure 4.4.3. AI capabilities embedded in at least one function or business unit, 2023 260
Figure 4.4.4. AI adoption by industry and function, 2023 261
Figure 4.4.5. Percentage point change in responses of AI adoption by industry and function, 2022 vs. 2023 262
Figure 4.4.6. AI-related roles that organizations hired in the last year by industry, 2023 263
Figure 4.4.7. Cost decrease and revenue increase from AI adoption by function, 2022 264
Figure 4.4.8. AI adoption by organizations in the world, 2022 vs. 2023 265
Figure 4.4.9. Most commonly adopted generative AI use cases by function, 2023 266
Figure 4.4.10. AI vs. generative AI adoption by function, 2023 267
Figure 4.4.11. Generative AI adoption by organizations in the world, 2023 268
Figure 4.4.12. Most popular AI developer tools among professional developers, 2023 269
Figure 4.4.13. Most popular AI search tools among professional developers, 2023 269
Figure 4.4.14. Top 10 most popular cloud platforms among professional developers, 2023 270
Figure 4.4.15. Adoption of AI tools in development tasks, 2023 270
Figure 4.4.16. Primary benefits of AI tools for professional developers, 2023 271
Figure 4.4.17. Sentiment toward AI tools in development among professional developers, 2023 271
Figure 4.4.18. Trust level in AI tool output accuracy, 2023 271
Figure 4.4.19. Cross-study comparison of task completion speed of Copilot users 272
Figure 4.4.20. Effect of GPT-4 use on a group of consultants 273
Figure 4.4.21. Impact of AI on customer support agents 273
Figure 4.4.22. Effect of GPT-4 use on legal analysis by task 274
Figure 4.4.23. Comparison of AI work performance effect by worker skill category 275
Figure 4.4.24. Effects on job performance of receiving different types of AI advice 276
Figure 4.4.25. Number of Fortune 500 earnings calls mentioning AI, 2018-23 277
Figure 4.4.26. Themes of AI mentions in Fortune 500 earnings calls, 2018 vs. 2023 278
Figure 4.4.27. Anticipated impact of generative AI on revenue by industry, 2023 279
Figure 4.4.28. Expectations about the impact of AI on organizations' workforces in the next 3 years, 2023 280
Figure 4.4.29. Anticipated effect of generative AI on number of employees in the next 3 years by business function, 2023 281
Figure 4.4.30. Estimated impact of AI adoption on annual productivity growth over a ten-year period 282
Figure 4.5.1. Number of industrial robots installed in the world, 2012-22 283
Figure 4.5.2. Operational stock of industrial robots in the world, 2012-22 284
Figure 4.5.3. Number of industrial robots installed in the world by type, 2017-22 285
Figure 4.5.4. Number of industrial robots installed by country, 2022 286
Figure 4.5.5. Number of new industrial robots installed in top 5 countries, 2012-22 287
Figure 4.5.6. Number of industrial robots installed (China vs. rest of the world), 2016-22 288
Figure 4.5.7. Annual growth rate of industrial robots installed by country, 2021 vs. 2022 289
Figure 4.5.8. Number of professional service robots installed in the world by application area, 2021 vs. 2022 290
Figure 4.5.9. Number of professional service robot manufacturers in top countries by type of company, 2022 291
Figure 4.5.10. Number of industrial robots installed in the world by sector, 2020-22 292
Figure 4.5.11. Number of industrial robots installed in the world by application, 2020-22 293
Figure 4.5.12. Number of industrial robots installed in China by sector, 2020-22 294
Figure 4.5.13. Number of industrial robots installed in the United States by sector, 2020-22 295
Figure 5.1.1. AlphaDev vs. human benchmarks when optimizing for algorithm length 300
Figure 5.1.2. Sample FlexiCubes surface reconstructions 301
Figure 5.1.3. Select quantitative results on 3D mesh reconstruction 302
Figure 5.1.4. Synbot design 303
Figure 5.1.5. Reaction kinetics of M1 autonomous optimization experiment, Synbot vs. reference 303
Figure 5.1.6. GraphCast weather prediction 304
Figure 5.1.7. Ten-day z500 forecast skill: GraphCast vs. HRES 304
Figure 5.1.8. Sample material structures 305
Figure 5.1.9. GNoME vs. Materials Project: stable crystal count 305
Figure 5.1.10. GNoME vs. Materials Project: distinct prototypes 305
Figure 5.1.11. Predictions of AI model vs. GloFAS across return periods 306
Figure 5.2.1. SynthSR generations 307
Figure 5.2.2. SynthSR correlation with ground-truth volumes on select brain regions 308
Figure 5.2.3. ImmunoSEIRA detection principle and the setup 309
Figure 5.2.4. Deep neural network predicted vs. actual fibrils percetages in test samples 309
Figure 5.2.5. EVEscape design 310
Figure 5.2.6. EVEscape vs. other models on SARS-CoV-2 RBD mutation prediction 311
Figure 5.2.7. Hemaglobin subunit beta (HBB) 312
Figure 5.2.8. AlphaMissense predictions 312
Figure 5.2.9. Graph genome for the MHC region of the genome 313
Figure 5.2.10. Ensembl mapping pipeline results 313
Figure 5.2.11. MedQA: accuracy 314
Figure 5.2.12. GPT-4 vs. Med-PaLM 2 answering a medical question 315
Figure 5.2.13. Model performance on MultiMedQA sub-benchmarks 316
Figure 5.2.14. Performance of select models on MedQA 317
Figure 5.2.15. CoDoC vs. standalone predictive AI system and clinical readers: sensitivity 318
Figure 5.2.16. PANDA detection 319
Figure 5.2.17. PANDA vs. mean radiologist on multicenter validation (6,239 patients) 319
Figure 5.2.18. PANDA performance on real-world multi-scenario validation (20,530 patients) 319
Figure 5.2.19. Additional research on diagnostic AI use cases 320
Figure 5.2.20. Number of AI medical devices approved by the FDA, 2012-22 321
Figure 5.2.21. Number of AI medical devices approved by the FDA by specialty, 2012-22 322
Figure 5.2.22. MedAlign workflow 323
Figure 5.2.23. Evaluation of model performance: human vs. COMET ranks 324
Figure 6.1.1. New CS bachelor's graduates in the United States and Canada, 2010-22 329
Figure 6.1.2. New international CS bachelor's graduates (% of total) in the United States and Canada, 2010-22 330
Figure 6.1.3. New CS master's graduates in the United States and Canada, 2010-22 331
Figure 6.1.4. New international CS master's graduates (% of total) in the United States and Canada, 2010-22 332
Figure 6.1.5. New CS PhD graduates in the United States and Canada, 2010-22 333
Figure 6.1.6. New international CS PhD graduates (% of total) in the United States and Canada, 2010-22 334
Figure 6.1.7. Employment of new AI PhDs (% of total) in the United States and Canada by sector, 2010-22 335
Figure 6.1.8. Employment of new AI PhDs in the United States and Canada by sector, 2010-22 335
Figure 6.1.9. Number of CS, CE, and information faculty in the United States and Canada, 2011-22 336
Figure 6.1.10. Number of CS faculty in the United States, 2011-22 337
Figure 6.1.11. New CS, CE, and information faculty hires in the United States and Canada, 2011-22 338
Figure 6.1.12. Source of new faculty in American and Canadian CS, CE, and information departments, 2018-22 339
Figure 6.1.13. Reason why new CS, CE, and information faculty positions remained unfilled (% of total), 2011-22 340
Figure 6.1.14. Faculty losses in American and Canadian CS, CE, and information departments, 2011-22 341
Figure 6.1.15. Median nine-month salary of CS faculty in the United States, 2015-22 342
Figure 6.1.16. New international CS, CE, and information tenure-track faculty hires (% of total) in the United States and Canada, 2010-22 343
Figure 6.1.17. New informatics, CS, CE, and IT bachelor's graduates by country in Europe, 2022 344
Figure 6.1.18. Percentage change of new informatics, CS, CE, and IT bachelor's graduates by country in Europe, 2012 vs. 2022 345
Figure 6.1.19. New informatics, CS, CE, and IT bachelor's graduates per 100,000 inhabitants by country in Europe, 2022 346
Figure 6.1.20. Percentage change of new CS, CE, and Information bachelor's graduates per 100,000 inhabitants by country in Europe, 2012 vs. 2022 346
Figure 6.1.21. New informatics, CS, CE, and IT master's graduates by country in Europe, 2022 347
Figure 6.1.22. Percentage change of new informatics, CS, CE, and IT master's graduates by country in Europe, 2012 vs. 2022 348
Figure 6.1.23. New informatics, CS, CE, and IT master's graduates per 100,000 inhabitants by country in Europe, 2022 349
Figure 6.1.24. Percentage change of new informatics, CS, CE, and IT master's graduates per 100,000 inhabitants by country in Europe, 2012 vs. 2022 350
Figure 6.1.25. New informatics, CS, CE, and IT PhD graduates by country in Europe, 2022 351
Figure 6.1.26. Percentage change of new informatics, CS, CE, and IT PhD graduates by country in Europe, 2012 vs. 2022 352
Figure 6.1.27. New informatics, CS, CE, and IT PhD graduates per 100,000 inhabitants by country in Europe, 2022 353
Figure 6.1.28. Percentage change of new informatics, CS, CE, and IT PhD graduates per 100,000 inhabitants by country in Europe, 2012 vs. 2022 354
Figure 6.1.29. Number of AI university study programs in English in the world, 2017-23 355
Figure 6.1.30. AI university study programs in English (% of total) by education level, 2023 356
Figure 6.1.31. Number of AI university study programs in English by geographic area, 2022 vs. 2023 357
Figure 6.1.32. AI university study programs in English per 100,000 inhabitants by geographic area, 2022 vs. 2023 358
Figure 6.2.1. States requiring that all high schools offer a foundational CS course, 2023 359
Figure 6.2.2. Public high schools teaching foundational CS (% of total in state), 2023 359
Figure 6.2.3. Changes over time in state-level US K-12 CS education 360
Figure 6.2.4. Number of AP computer science exams taken, 2007-22 361
Figure 6.2.5. Number of AP computer science exams taken, 2022 362
Figure 6.2.6. Number of AP computer science exams taken per 100,000 inhabitants, 2022 362
Figure 6.2.7. Schools offering foundational CS courses by size, 2023 363
Figure 6.2.8. Schools offering foundational CS courses by geographic area, 2023 363
Figure 6.2.9. ChatGPT usage rate among American K-12 teachers, 2023 364
Figure 6.2.10. ChatGPT usage purposes among American K-12 teachers, 2023 364
Figure 6.2.11. ChatGPT perceptions among educational users, 2023 365
Figure 7.1.1. China introduces regulation on administration of deep synthesis of the internet 370
Figure 7.1.2. U.S. legislators propose AI for National Security Act 370
Figure 7.1.3. U.S. policymakers introduce AI Leadership Training Act 371
Figure 7.1.4. U.S. policymakers propose National AI Commission Act 371
Figure 7.1.5. House of Representatives advances Jobs of the Future Act 371
Figure 7.1.6. U.S. Senate puts forward Artificial Intelligence and Biosecurity Risk Assessment Act 372
Figure 7.1.7. Private AI labs sign voluntary White House AI commitments 372
Figure 7.1.8. U.S. Senate passes Outbound Investment Transparency Act 372
Figure 7.1.9. U.S. Senate proposes CREATE AI Act 373
Figure 7.1.10. China updates cyberspace administration of generative AI measures 373
Figure 7.1.11. U.S. Senate puts forward Protect Elections from Deceptive AI Act 373
Figure 7.1.12. U.K. proposes principles to guide competitive AI markets and protect consumers 374
Figure 7.1.13. President Biden issues Executive Order on Safe, Secure, and Trustworthy AI 374
Figure 7.1.14. Frontier AI taskforce releases second progress report 374
Figure 7.1.15. U.K. hosts AI Safety Summit (2023) 375
Figure 7.1.16. U.K. announces AI Safety Institute 375
Figure 7.1.17. Europeans reach deal on EU AI Act 375
Figure 7.2.1. Number of AI-related bills passed into law by country, 2016-23 376
Figure 7.2.2. Number of AI-related bills passed into law in 128 select countries, 2016-23 377
Figure 7.2.3. Number of AI-related bills passed into law in select countries, 2023 378
Figure 7.2.4. Number of AI-related bills passed into law in select countries, 2016-23 (sum) 378
Figure 7.2.5. Number of AI-related bills passed into law in select countries by relevance to AI, 2016-23 379
Figure 7.2.6. Number of AI-related bills passed into law in select countries by approach, 2016-23 380
Figure 7.2.7. Number of AI-related bills passed into law in select countries by primary subject matter, 2016-23 381
Figure 7.2.8. Number of AI-related bills in the United States, 2016-23 (proposed vs. passed) 382
Figure 7.2.9. Number of AI-related bills passed into law in select US states, 2023 383
Figure 7.2.10. Number of state-level AI-related bills passed into law in the United States by state, 2016-23 (sum) 383
Figure 7.2.11. Number of state-level AI-related bills in the United States, 2016-23 (proposed vs. passed) 384
Figure 7.2.12. Number of mentions of AI in legislative proceedings in 80 select countries, 2016-23 385
Figure 7.2.13. Number of mentions of AI in legislative proceedings by country, 2023 386
Figure 7.2.14. Number of mentions of AI in legislative proceedings by country, 2016-23 (sum) 387
Figure 7.2.15. Mentions of AI in US committee reports by legislative session, 2001-23 388
Figure 7.2.16. Mentions of AI in committee reports of the US House of Representatives for the 118th congressional session, 2023 389
Figure 7.2.17. Mentions of AI in committee reports of the US Senate for the 118th congressional session, 2023 389
Figure 7.2.18. Mentions of AI in committee reports of the US House of Representatives, 2001-23 (sum) 390
Figure 7.2.19. Mentions of AI in committee reports of the US Senate, 2001-23 (sum) 390
Figure 7.3.1. Countries with a national strategy on AI, 2023 391
Figure 7.3.2. AI national strategies in development by country and year 392
Figure 7.3.3. Yearly release of AI national strategies by country 392
Figure 7.4.1. Number of AI-related regulations in the United States, 2016-23 393
Figure 7.4.2. Number of AI-related regulations in the United States by relevance to AI, 2016-23 394
Figure 7.4.3. Number of AI-related regulations in the United States by agency, 2016-23 395
Figure 7.4.4. Number of AI-related regulations in the United States by approach, 2016-23 396
Figure 7.4.5. Number of AI-related regulations in the United States by primary subject matter, 2016-23 397
Figure 7.4.6. Number of AI-related regulations in the European Union, 2017-23 398
Figure 7.4.7. Number of AI-related regulations in the European Union by relevance to AI, 2017-23 399
Figure 7.4.8. Number of AI-related regulations in the European Union by institution and body, 2017-23 400
Figure 7.4.9. Number of AI-related regulations in the European Union by approach, 2017-23 401
Figure 7.4.10. Number of AI-related regulations in the European Union by primary subject matter, 2017-23 402
Figure 7.5.1. US federal NITRD budget for AI, FY 2018-24 403
Figure 7.5.2. US governmental agency NITRD budgets for AI, FY 2021-24 404
Figure 7.5.3. US DoD budget request for AI-specific research, development, test, and evaluation (RDT&E), FY 2020-24 405
Figure 7.5.4. US government spending in AI/ML and autonomy by segment, FY 2018-23 406
Figure 7.5.5. US government spending in AI/ML and autonomy by segment, FY 2022 vs. 2023 407
Figure 7.5.6. Total value of contracts, grants, and OTAs awarded by the US government for AI/ML and autonomy, FY 2018-23 408
Figure 7.5.7. US government spending in microelectronics by segment, FY 2018-23 409
Figure 7.5.8. Total value of contracts, grants, and OTAs awarded by the US government for microelectronics, FY 2018-23 410
Figure 8.1.1. Gender of new CS bachelor's graduates (% of total) in the United States and Canada, 2010-22 415
Figure 8.1.2. Ethnicity of new resident CS bachelor's graduates in the United States and Canada, 2011-22 416
Figure 8.1.3. Ethnicity of new resident CS bachelor's graduates (% of total) in the United States and Canada, 2011-22 416
Figure 8.1.4. Gender of new CS master's graduates (% of total) in the United States and Canada, 2011-22 417
Figure 8.1.5. Ethnicity of new resident CS master's graduates in the United States and Canada, 2011-22 418
Figure 8.1.6. Ethnicity of new resident CS master's graduates (% of total) in the United States and Canada, 2011-22 418
Figure 8.1.7. Gender of new CS PhD graduates (% of total) in the United States and Canada, 2010-22 419
Figure 8.1.8. Ethnicity of new resident CS PhD graduates in the United States and Canada, 2011-22 420
Figure 8.1.9. Ethnicity of new resident CS PhD graduates (% of total) in the United States and Canada, 2011-22 420
Figure 8.1.10. CS, CE, and information students (% of total) with disability accomodations in United States and Canada, 2021 vs. 2022 421
Figure 8.1.11. Gender of CS, CE, and information faculty (% of total) in the United States and Canada, 2011-22 422
Figure 8.1.12. Gender of new CS, CE, and information faculty hires (% of total) in the United States and Canada, 2011-22 423
Figure 8.1.13. Ethnicity of resident CS, CE, and information faculty in the United States and Canada, 2011-22 424
Figure 8.1.14. Ethnicity of resident CS, CE, and information faculty (% of total) in the United States and Canada, 2011-22 424
Figure 8.1.15. Gender of new informatics, CS, CE, and IT bachelor's graduates (% of total) in Europe, 2011-22 426
Figure 8.1.16. Gender of new informatics, CS, CE, and IT master's graduates (% of total) in Europe, 2011-22 427
Figure 8.1.17. Gender of new informatics, CS, CE, and IT PhD graduates (% of total) in Europe, 2011-22 428
Figure 8.2.1. Attendance at NeurIPS Women in Machine Learning workshop, 2010-23 429
Figure 8.2.2. Attendance at NeurIPS Women in Machine Learning workshop (% of total), 2010-23 429
Figure 8.2.3. Continent of residence of participants at NeurIPS Women in Machine Learning workshop, 2022 vs. 2023 430
Figure 8.2.4. Gender breakdown of participants at NeurIPS Women in Machine Learning workshop, 2022 vs. 2023 431
Figure 8.3.1. AP computer science exams taken (% of total) by gender, 2007-22 432
Figure 8.3.2. AP computer science exams taken by female students (% of total), 2022 433
Figure 8.3.3. AP computer science exams taken by race/ethnicity, 2007-22 434
Figure 8.3.4. AP computer science exams taken (% of total responding students) by race/ethnicity, 2007-22 434
Figure 9.1.1. Global opinions on products and services using AI (% of total), 2022 vs. 2023 439
Figure 9.1.2. 'Products and services using AI have more benefits than drawbacks, 'by country (% of total), 2022 vs. 2023 441
Figure 9.1.3. Opinions about AI by country (% agreeing with statement), 2023 442
Figure 9.1.4. Percentage point change in opinions about AI by country (% agreeing with statement), 2022-23 443
Figure 9.1.5. Global opinions on the impact of AI on current jobs, 2023 444
Figure 9.1.6. Global opinions on the impact of AI on current jobs by demographic group, 2023 445
Figure 9.1.7. Global opinions on the potential of AI improving life by country, 2023 446
Figure 9.1.8. Global opinions on the potential of AI improving life by demographic group, 2023 447
Figure 9.1.9. Global awareness of ChatGPT (% of total), 2023 449
Figure 9.1.10. Global usage frequency of ChatGPT (% of total), 2023 450
Figure 9.1.11. Global concerns on the impacts of AI in the next few years, 2023 451
Figure 9.1.12. Americans' feelings toward increased use of AI in daily life (% of total), 2021-23 452
Figure 9.1.13. Americans' opinions of whether AI helps or hurts in specific settings (% of total), 2023 452
Figure 9.1.14. Differences in Americans' view of AI's impact by education level (% of total), 2023 453
Figure 9.2.1. Net sentiment score of AI models by quarter, 2023 454
Figure 9.2.2. Select models' share of AI social media attention by quarter, 2023 455
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