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πŸ“š Bibliography

The page contains an organized list of all papers used by this course. The papers are organized by topic.

To cite this course, use the provided citation in the Github repository.

πŸ”΅ = Paper directly cited in this course. Other papers have informed my understanding of the topic.

Note: since neither the GPT-3 nor the GPT-3 Instruct paper correspond to davinci models, I attempt not to cite them as such.

Prompt Engineering Strategies​

Chain of Thought1 πŸ”΅β€‹

Zero Shot Chain of Thought2 πŸ”΅β€‹

Self Consistency3 πŸ”΅β€‹

What Makes Good In-Context Examples for GPT-3?4 πŸ”΅β€‹

Generated Knowledge5 πŸ”΅β€‹

Rethinking the role of demonstrations6 πŸ”΅β€‹

Scratchpads7​

Maieutic Prompting8​

STaR9​

Least to Most10​

Reliability​

The Unreliability of Explanations in Few-shot Prompting for Textual Reasoning11 πŸ”΅β€‹

Prompting GPT-3 to be reliable12​

Diverse Prompts13 πŸ”΅β€‹

Calibrate Before Use: Improving Few-Shot Performance of Language Models14 πŸ”΅β€‹

Enhanced Self Consistency15​

Bias and Toxicity in Zero-Shot CoT16 πŸ”΅β€‹

Constitutional AI: Harmlessness from AI Feedback17 πŸ”΅β€‹

Compositional Generalization - SCAN18​

Automated Prompt Engineering​

AutoPrompt19 πŸ”΅β€‹

Automatic Prompt Engineer20​

Models​

Language Models​

GPT-321 πŸ”΅β€‹

GPT-3 Instruct22 πŸ”΅β€‹

PaLM23 πŸ”΅β€‹

BLOOM24 πŸ”΅β€‹

BLOOM+1 (more languages/ 0 shot improvements)25​

Jurassic 126 πŸ”΅β€‹

GPT-J-6B27​

Roberta28​

Image Models​

Stable Diffusion29 πŸ”΅β€‹

DALLE30 πŸ”΅β€‹

Soft Prompting​

Soft Prompting31 πŸ”΅β€‹

Interpretable Discretized Soft Prompts32 πŸ”΅β€‹

Datasets​

GSM8K33 πŸ”΅β€‹

HotPotQA34 πŸ”΅β€‹

Fever35 πŸ”΅β€‹

BBQ: A Hand-Built Bias Benchmark for Question Answering36 πŸ”΅β€‹

Image Prompt Engineering​

Taxonomy of prompt modifiers37​

DiffusionDB38​

The DALLE 2 Prompt Book39 πŸ”΅β€‹

Prompt Engineering for Text-Based Generative Art40 πŸ”΅β€‹

With the right prompt, Stable Diffusion 2.0 can do hands.41 πŸ”΅β€‹

Optimizing Prompts for Text-to-Image Generation42​

Prompt Engineering IDEs​

Prompt IDE43 πŸ”΅β€‹

Prompt Source44 πŸ”΅β€‹

PromptChainer45 πŸ”΅β€‹

PromptMaker46 πŸ”΅β€‹

Tooling​

LangChain47 πŸ”΅β€‹

TextBox 2.0: A Text Generation Library with Pre-trained Language Models48 πŸ”΅β€‹

OpenPrompt: An Open-source Framework for Prompt-learning49 πŸ”΅β€‹

GPT Index50 πŸ”΅β€‹

Applied Prompt Engineering​

Language Model Cascades51​

MRKL52 πŸ”΅β€‹

ReAct53 πŸ”΅β€‹

PAL: Program-aided Language Models54 πŸ”΅β€‹

User Interface Design​

Design Guidelines for Prompt Engineering Text-to-Image Generative Models55​

Prompt Injection​

Machine Generated Text: A Comprehensive Survey of Threat Models and Detection Methods56 πŸ”΅β€‹

Evaluating the Susceptibility of Pre-Trained Language Models via Handcrafted Adversarial Examples57 πŸ”΅β€‹

Prompt injection attacks against GPT-358 πŸ”΅β€‹

Exploiting GPT-3 prompts with malicious inputs that order the model to ignore its previous directions59 πŸ”΅β€‹

adversarial-prompts60 πŸ”΅β€‹

GPT-3 Prompt Injection Defenses61 πŸ”΅β€‹

Talking to machines: prompt engineering & injection62​

Exploring Prompt Injection Attacks63 πŸ”΅β€‹

Using GPT-Eliezer against ChatGPT Jailbreaking64 πŸ”΅β€‹

Jailbreaking​

Ignore Previous Prompt: Attack Techniques For Language Models65​

Lessons learned on Language Model Safety and misuse66​

Toxicity Detection with Generative Prompt-based Inference67​

New and improved content moderation tooling68​

OpenAI API69 πŸ”΅β€‹

OpenAI ChatGPT70 πŸ”΅β€‹

ChatGPT 4 Tweet71 πŸ”΅β€‹

Acting Tweet72 πŸ”΅β€‹

Research Tweet73 πŸ”΅β€‹

Pretend Ability Tweet74 πŸ”΅β€‹

Responsibility Tweet75 πŸ”΅β€‹

Lynx Mode Tweet76 πŸ”΅β€‹

Sudo Mode Tweet77 πŸ”΅β€‹

Ignore Previous Prompt78 πŸ”΅β€‹

Updated Jailbreaking Prompts79 πŸ”΅β€‹

Surveys​

Pre-train, Prompt, and Predict: A Systematic Survey of Prompting Methods in Natural Language Processing80​

PromptPapers81​

Dataset Generation​

Discovering Language Model Behaviors with Model-Written Evaluations82​

Selective Annotation Makes Language Models Better Few-Shot Learners83​

Applications​

Atlas: Few-shot Learning with Retrieval Augmented Language Models84​

STRUDEL: Structured Dialogue Summarization for Dialogue Comprehension85​

Miscl​

Prompting Is Programming: A Query Language For Large Language Models86​

Parallel Context Windows Improve In-Context Learning of Large Language Models87​

Learning to Perform Complex Tasks through Compositional Fine-Tuning of Language Models88​

Super-NaturalInstructions: Generalization via Declarative Instructions on 1600+ NLP Tasks89​

Making Pre-trained Language Models Better Few-shot Learners90​

Grounding with search results91​

How to Prompt? Opportunities and Challenges of Zero- and Few-Shot Learning for Human-AI Interaction in Creative Applications of Generative Models92​

On Measuring Social Biases in Prompt-Based Multi-Task Learning93​

Plot Writing From Pre-Trained Language Models94 πŸ”΅β€‹

StereoSet: Measuring stereotypical bias in pretrained language models95​

Survey of Hallucination in Natural Language Generation96​

Examples97​

Wordcraft98​

PainPoints99​

Self-Instruct: Aligning Language Model with Self Generated Instructions100​

From Images to Textual Prompts: Zero-shot VQA with Frozen Large Language Models101​

Exploiting Cloze Questions for Few Shot Text Classification and Natural Language Inference102​

A Watermark for Large Language Models103​


  1. Wei, J., Wang, X., Schuurmans, D., Bosma, M., Ichter, B., Xia, F., Chi, E., Le, Q., & Zhou, D. (2022). Chain of Thought Prompting Elicits Reasoning in Large Language Models. ↩
  2. Kojima, T., Gu, S. S., Reid, M., Matsuo, Y., & Iwasawa, Y. (2022). Large Language Models are Zero-Shot Reasoners. ↩
  3. Wang, X., Wei, J., Schuurmans, D., Le, Q., Chi, E., Narang, S., Chowdhery, A., & Zhou, D. (2022). Self-Consistency Improves Chain of Thought Reasoning in Language Models. ↩
  4. Liu, J., Shen, D., Zhang, Y., Dolan, B., Carin, L., & Chen, W. (2021). What Makes Good In-Context Examples for GPT-3? ↩
  5. Liu, J., Liu, A., Lu, X., Welleck, S., West, P., Bras, R. L., Choi, Y., & Hajishirzi, H. (2021). Generated Knowledge Prompting for Commonsense Reasoning. ↩
  6. Min, S., Lyu, X., Holtzman, A., Artetxe, M., Lewis, M., Hajishirzi, H., & Zettlemoyer, L. (2022). Rethinking the Role of Demonstrations: What Makes In-Context Learning Work? ↩
  7. Nye, M., Andreassen, A. J., Gur-Ari, G., Michalewski, H., Austin, J., Bieber, D., Dohan, D., Lewkowycz, A., Bosma, M., Luan, D., Sutton, C., & Odena, A. (2021). Show Your Work: Scratchpads for Intermediate Computation with Language Models. ↩
  8. Jung, J., Qin, L., Welleck, S., Brahman, F., Bhagavatula, C., Bras, R. L., & Choi, Y. (2022). Maieutic Prompting: Logically Consistent Reasoning with Recursive Explanations. ↩
  9. Zelikman, E., Wu, Y., Mu, J., & Goodman, N. D. (2022). STaR: Bootstrapping Reasoning With Reasoning. ↩
  10. Zhou, D., SchΓ€rli, N., Hou, L., Wei, J., Scales, N., Wang, X., Schuurmans, D., Cui, C., Bousquet, O., Le, Q., & Chi, E. (2022). Least-to-Most Prompting Enables Complex Reasoning in Large Language Models. ↩
  11. Ye, X., & Durrett, G. (2022). The Unreliability of Explanations in Few-shot Prompting for Textual Reasoning. ↩
  12. Si, C., Gan, Z., Yang, Z., Wang, S., Wang, J., Boyd-Graber, J., & Wang, L. (2022). Prompting GPT-3 To Be Reliable. ↩
  13. Li, Y., Lin, Z., Zhang, S., Fu, Q., Chen, B., Lou, J.-G., & Chen, W. (2022). On the Advance of Making Language Models Better Reasoners. ↩
  14. Zhao, T. Z., Wallace, E., Feng, S., Klein, D., & Singh, S. (2021). Calibrate Before Use: Improving Few-Shot Performance of Language Models. ↩
  15. Mitchell, E., Noh, J. J., Li, S., Armstrong, W. S., Agarwal, A., Liu, P., Finn, C., & Manning, C. D. (2022). Enhancing Self-Consistency and Performance of Pre-Trained Language Models through Natural Language Inference. ↩
  16. Shaikh, O., Zhang, H., Held, W., Bernstein, M., & Yang, D. (2022). On Second Thought, Let’s Not Think Step by Step! Bias and Toxicity in Zero-Shot Reasoning. ↩
  17. Bai, Y., Kadavath, S., Kundu, S., Askell, A., Kernion, J., Jones, A., Chen, A., Goldie, A., Mirhoseini, A., McKinnon, C., Chen, C., Olsson, C., Olah, C., Hernandez, D., Drain, D., Ganguli, D., Li, D., Tran-Johnson, E., Perez, E., … Kaplan, J. (2022). Constitutional AI: Harmlessness from AI Feedback. ↩
  18. Lake, B. M., & Baroni, M. (2018). Generalization without Systematicity: On the Compositional Skills of Sequence-to-Sequence Recurrent Networks. https://doi.org/10.48550/arXiv.1711.00350 ↩
  19. Shin, T., Razeghi, Y., Logan IV, R. L., Wallace, E., & Singh, S. (2020). AutoPrompt: Eliciting Knowledge from Language Models with Automatically Generated Prompts. Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing (EMNLP). https://doi.org/10.18653/v1/2020.emnlp-main.346 ↩
  20. Zhou, Y., Muresanu, A. I., Han, Z., Paster, K., Pitis, S., Chan, H., & Ba, J. (2022). Large Language Models Are Human-Level Prompt Engineers. ↩
  21. Brown, T. B., Mann, B., Ryder, N., Subbiah, M., Kaplan, J., Dhariwal, P., Neelakantan, A., Shyam, P., Sastry, G., Askell, A., Agarwal, S., Herbert-Voss, A., Krueger, G., Henighan, T., Child, R., Ramesh, A., Ziegler, D. M., Wu, J., Winter, C., … Amodei, D. (2020). Language Models are Few-Shot Learners. ↩
  22. Ouyang, L., Wu, J., Jiang, X., Almeida, D., Wainwright, C. L., Mishkin, P., Zhang, C., Agarwal, S., Slama, K., Ray, A., Schulman, J., Hilton, J., Kelton, F., Miller, L., Simens, M., Askell, A., Welinder, P., Christiano, P., Leike, J., & Lowe, R. (2022). Training language models to follow instructions with human feedback. ↩
  23. Chowdhery, A., Narang, S., Devlin, J., Bosma, M., Mishra, G., Roberts, A., Barham, P., Chung, H. W., Sutton, C., Gehrmann, S., Schuh, P., Shi, K., Tsvyashchenko, S., Maynez, J., Rao, A., Barnes, P., Tay, Y., Shazeer, N., Prabhakaran, V., … Fiedel, N. (2022). PaLM: Scaling Language Modeling with Pathways. ↩
  24. Scao, T. L., Fan, A., Akiki, C., Pavlick, E., IliΔ‡, S., Hesslow, D., CastagnΓ©, R., Luccioni, A. S., Yvon, F., GallΓ©, M., Tow, J., Rush, A. M., Biderman, S., Webson, A., Ammanamanchi, P. S., Wang, T., Sagot, B., Muennighoff, N., del Moral, A. V., … Wolf, T. (2022). BLOOM: A 176B-Parameter Open-Access Multilingual Language Model. ↩
  25. Yong, Z.-X., Schoelkopf, H., Muennighoff, N., Aji, A. F., Adelani, D. I., Almubarak, K., Bari, M. S., Sutawika, L., Kasai, J., Baruwa, A., Winata, G. I., Biderman, S., Radev, D., & Nikoulina, V. (2022). BLOOM+1: Adding Language Support to BLOOM for Zero-Shot Prompting. ↩
  26. Lieber, O., Sharir, O., Lentz, B., & Shoham, Y. (2021). Jurassic-1: Technical Details and Evaluation, White paper, AI21 Labs, 2021. URL: Https://Uploads-Ssl. Webflow. Com/60fd4503684b466578c0d307/61138924626a6981ee09caf6_jurassic_ Tech_paper. Pdf. ↩
  27. Wang, B., & Komatsuzaki, A. (2021). GPT-J-6B: A 6 Billion Parameter Autoregressive Language Model. https://github.com/kingoflolz/mesh-transformer-jax. https://github.com/kingoflolz/mesh-transformer-jax ↩
  28. Liu, Y., Ott, M., Goyal, N., Du, J., Joshi, M., Chen, D., Levy, O., Lewis, M., Zettlemoyer, L., & Stoyanov, V. (2019). Roberta: A robustly optimized bert pretraining approach. arXiv Preprint arXiv:1907.11692. ↩
  29. Rombach, R., Blattmann, A., Lorenz, D., Esser, P., & Ommer, B. (2021). High-Resolution Image Synthesis with Latent Diffusion Models. ↩
  30. Ramesh, A., Dhariwal, P., Nichol, A., Chu, C., & Chen, M. (2022). Hierarchical Text-Conditional Image Generation with CLIP Latents. ↩
  31. Lester, B., Al-Rfou, R., & Constant, N. (2021). The Power of Scale for Parameter-Efficient Prompt Tuning. ↩
  32. Khashabi, D., Lyu, S., Min, S., Qin, L., Richardson, K., Welleck, S., Hajishirzi, H., Khot, T., Sabharwal, A., Singh, S., & Choi, Y. (2021). Prompt Waywardness: The Curious Case of Discretized Interpretation of Continuous Prompts. ↩
  33. Cobbe, K., Kosaraju, V., Bavarian, M., Chen, M., Jun, H., Kaiser, L., Plappert, M., Tworek, J., Hilton, J., Nakano, R., Hesse, C., & Schulman, J. (2021). Training Verifiers to Solve Math Word Problems. ↩
  34. Yang, Z., Qi, P., Zhang, S., Bengio, Y., Cohen, W. W., Salakhutdinov, R., & Manning, C. D. (2018). HotpotQA: A Dataset for Diverse, Explainable Multi-hop Question Answering. ↩
  35. Thorne, J., Vlachos, A., Christodoulopoulos, C., & Mittal, A. (2018). FEVER: a large-scale dataset for Fact Extraction and VERification. ↩
  36. Parrish, A., Chen, A., Nangia, N., Padmakumar, V., Phang, J., Thompson, J., Htut, P. M., & Bowman, S. R. (2021). BBQ: A Hand-Built Bias Benchmark for Question Answering. ↩
  37. Oppenlaender, J. (2022). A Taxonomy of Prompt Modifiers for Text-To-Image Generation. ↩
  38. Wang, Z. J., Montoya, E., Munechika, D., Yang, H., Hoover, B., & Chau, D. H. (2022). DiffusionDB: A Large-scale Prompt Gallery Dataset for Text-to-Image Generative Models. ↩
  39. Parsons, G. (2022). The DALLE 2 Prompt Book. https://dallery.gallery/the-dalle-2-prompt-book/ ↩
  40. Oppenlaender, J. (2022). Prompt Engineering for Text-Based Generative Art. ↩
  41. Blake. (2022). With the right prompt, Stable Diffusion 2.0 can do hands. https://www.reddit.com/r/StableDiffusion/comments/z7salo/with_the_right_prompt_stable_diffusion_20_can_do/ ↩
  42. Hao, Y., Chi, Z., Dong, L., & Wei, F. (2022). Optimizing Prompts for Text-to-Image Generation. ↩
  43. Strobelt, H., Webson, A., Sanh, V., Hoover, B., Beyer, J., Pfister, H., & Rush, A. M. (2022). Interactive and Visual Prompt Engineering for Ad-hoc Task Adaptation with Large Language Models. arXiv. https://doi.org/10.48550/ARXIV.2208.07852 ↩
  44. Bach, S. H., Sanh, V., Yong, Z.-X., Webson, A., Raffel, C., Nayak, N. V., Sharma, A., Kim, T., Bari, M. S., Fevry, T., Alyafeai, Z., Dey, M., Santilli, A., Sun, Z., Ben-David, S., Xu, C., Chhablani, G., Wang, H., Fries, J. A., … Rush, A. M. (2022). PromptSource: An Integrated Development Environment and Repository for Natural Language Prompts. ↩
  45. Wu, T., Jiang, E., Donsbach, A., Gray, J., Molina, A., Terry, M., & Cai, C. J. (2022). PromptChainer: Chaining Large Language Model Prompts through Visual Programming. ↩
  46. Jiang, E., Olson, K., Toh, E., Molina, A., Donsbach, A., Terry, M., & Cai, C. J. (2022). PromptMaker: Prompt-Based Prototyping with Large Language Models. Extended Abstracts of the 2022 CHI Conference on Human Factors in Computing Systems. https://doi.org/10.1145/3491101.3503564 ↩
  47. Chase, H. (2022). LangChain (0.0.66) [Computer software]. https://github.com/hwchase17/langchain ↩
  48. Tang, T., Junyi, L., Chen, Z., Hu, Y., Yu, Z., Dai, W., Dong, Z., Cheng, X., Wang, Y., Zhao, W., Nie, J., & Wen, J.-R. (2022). TextBox 2.0: A Text Generation Library with Pre-trained Language Models. ↩
  49. Ding, N., Hu, S., Zhao, W., Chen, Y., Liu, Z., Zheng, H.-T., & Sun, M. (2021). OpenPrompt: An Open-source Framework for Prompt-learning. arXiv Preprint arXiv:2111.01998. ↩
  50. Liu, J. (2022). GPT Index. https://doi.org/10.5281/zenodo.1234 ↩
  51. Dohan, D., Xu, W., Lewkowycz, A., Austin, J., Bieber, D., Lopes, R. G., Wu, Y., Michalewski, H., Saurous, R. A., Sohl-dickstein, J., Murphy, K., & Sutton, C. (2022). Language Model Cascades. ↩
  52. Karpas, E., Abend, O., Belinkov, Y., Lenz, B., Lieber, O., Ratner, N., Shoham, Y., Bata, H., Levine, Y., Leyton-Brown, K., Muhlgay, D., Rozen, N., Schwartz, E., Shachaf, G., Shalev-Shwartz, S., Shashua, A., & Tenenholtz, M. (2022). MRKL Systems: A modular, neuro-symbolic architecture that combines large language models, external knowledge sources and discrete reasoning. ↩
  53. Yao, S., Zhao, J., Yu, D., Du, N., Shafran, I., Narasimhan, K., & Cao, Y. (2022). ReAct: Synergizing Reasoning and Acting in Language Models. ↩
  54. Gao, L., Madaan, A., Zhou, S., Alon, U., Liu, P., Yang, Y., Callan, J., & Neubig, G. (2022). PAL: Program-aided Language Models. ↩
  55. Liu, V., & Chilton, L. B. (2022). Design Guidelines for Prompt Engineering Text-to-Image Generative Models. Proceedings of the 2022 CHI Conference on Human Factors in Computing Systems. https://doi.org/10.1145/3491102.3501825 ↩
  56. Crothers, E., Japkowicz, N., & Viktor, H. (2022). Machine Generated Text: A Comprehensive Survey of Threat Models and Detection Methods. ↩
  57. Branch, H. J., Cefalu, J. R., McHugh, J., Hujer, L., Bahl, A., del Castillo Iglesias, D., Heichman, R., & Darwishi, R. (2022). Evaluating the Susceptibility of Pre-Trained Language Models via Handcrafted Adversarial Examples. ↩
  58. Willison, S. (2022). Prompt injection attacks against GPT-3. https://simonwillison.net/2022/Sep/12/prompt-injection/ ↩
  59. Goodside, R. (2022). Exploiting GPT-3 prompts with malicious inputs that order the model to ignore its previous directions. https://twitter.com/goodside/status/1569128808308957185 ↩
  60. Chase, H. (2022). adversarial-prompts. https://github.com/hwchase17/adversarial-prompts ↩
  61. Goodside, R. (2022). GPT-3 Prompt Injection Defenses. https://twitter.com/goodside/status/1578278974526222336?s=20&t=3UMZB7ntYhwAk3QLpKMAbw ↩
  62. Mark, C. (2022). Talking to machines: prompt engineering & injection. https://artifact-research.com/artificial-intelligence/talking-to-machines-prompt-engineering-injection/ ↩
  63. Selvi, J. (2022). Exploring Prompt Injection Attacks. https://research.nccgroup.com/2022/12/05/exploring-prompt-injection-attacks/ ↩
  64. Stuart Armstrong, R. G. (2022). Using GPT-Eliezer against ChatGPT Jailbreaking. https://www.alignmentforum.org/posts/pNcFYZnPdXyL2RfgA/using-gpt-eliezer-against-chatgpt-jailbreaking ↩
  65. Perez, F., & Ribeiro, I. (2022). Ignore Previous Prompt: Attack Techniques For Language Models. arXiv. https://doi.org/10.48550/ARXIV.2211.09527 ↩
  66. Brundage, M. (2022). Lessons learned on Language Model Safety and misuse. In OpenAI. OpenAI. https://openai.com/blog/language-model-safety-and-misuse/ ↩
  67. Wang, Y.-S., & Chang, Y. (2022). Toxicity Detection with Generative Prompt-based Inference. arXiv. https://doi.org/10.48550/ARXIV.2205.12390 ↩
  68. Markov, T. (2022). New and improved content moderation tooling. In OpenAI. OpenAI. https://openai.com/blog/new-and-improved-content-moderation-tooling/ ↩
  69. (2022). https://beta.openai.com/docs/guides/moderation ↩
  70. (2022). https://openai.com/blog/chatgpt/ ↩
  71. ok I saw a few people jailbreaking safeguards openai put on chatgpt so I had to give it a shot myself. (2022). https://twitter.com/alicemazzy/status/1598288519301976064 ↩
  72. Bypass @OpenAI’s ChatGPT alignment efforts with this one weird trick. (2022). https://twitter.com/m1guelpf/status/1598203861294252033 ↩
  73. ChatGPT jailbreaking itself. (2022). https://twitter.com/haus_cole/status/1598541468058390534 ↩
  74. Using β€œpretend” on #ChatGPT can do some wild stuff. You can kind of get some insight on the future, alternative universe. (2022). https://twitter.com/NeroSoares/status/1608527467265904643 ↩
  75. I kinda like this one even more! (2022). https://twitter.com/NickEMoran/status/1598101579626057728 ↩
  76. Degrave, J. (2022). Building A Virtual Machine inside ChatGPT. Engraved. https://www.engraved.blog/building-a-virtual-machine-inside/ ↩
  77. (2022). https://www.sudo.ws/ ↩
  78. Perez, F., & Ribeiro, I. (2022). Ignore Previous Prompt: Attack Techniques For Language Models. arXiv. https://doi.org/10.48550/ARXIV.2211.09527 ↩
  79. AIWithVibes. (2023). 7 ChatGPT JailBreaks and Content Filters Bypass that work. https://chatgpt-jailbreak.super.site/ ↩
  80. Liu, P., Yuan, W., Fu, J., Jiang, Z., Hayashi, H., & Neubig, G. (2022). Pre-train, Prompt, and Predict: A Systematic Survey of Prompting Methods in Natural Language Processing. ACM Computing Surveys. https://doi.org/10.1145/3560815 ↩
  81. PromptPapers. (2022). https://github.com/thunlp/PromptPapers ↩
  82. Perez, E., Ringer, S., LukoΕ‘iΕ«tΔ—, K., Nguyen, K., Chen, E., Heiner, S., Pettit, C., Olsson, C., Kundu, S., Kadavath, S., Jones, A., Chen, A., Mann, B., Israel, B., Seethor, B., McKinnon, C., Olah, C., Yan, D., Amodei, D., … Kaplan, J. (2022). Discovering Language Model Behaviors with Model-Written Evaluations. ↩
  83. Su, H., Kasai, J., Wu, C. H., Shi, W., Wang, T., Xin, J., Zhang, R., Ostendorf, M., Zettlemoyer, L., Smith, N. A., & Yu, T. (2022). Selective Annotation Makes Language Models Better Few-Shot Learners. ↩
  84. Izacard, G., Lewis, P., Lomeli, M., Hosseini, L., Petroni, F., Schick, T., Dwivedi-Yu, J., Joulin, A., Riedel, S., & Grave, E. (2022). Atlas: Few-shot Learning with Retrieval Augmented Language Models. ↩
  85. Wang, B., Feng, C., Nair, A., Mao, M., Desai, J., Celikyilmaz, A., Li, H., Mehdad, Y., & Radev, D. (2022). STRUDEL: Structured Dialogue Summarization for Dialogue Comprehension. ↩
  86. Beurer-Kellner, L., Fischer, M., & Vechev, M. (2022). Prompting Is Programming: A Query Language For Large Language Models. ↩
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