πŸ˜ƒ Basics
🧠 Advanced
Zero-Shot
🟒 Introduction
🟒 Emotion Prompting
🟒 Role Prompting
🟒 Re-reading (RE2)
🟒 Rephrase and Respond (RaR)
🟦 SimToM
β—† System 2 Attention (S2A)
Few-Shot
🟒 Introduction
🟒 Self-Ask
🟒 Self Generated In-Context Learning (SG-ICL)
🟒 Chain-of-Dictionary (CoD)
🟒 Cue-CoT
🟦 Chain of Knowledge (CoK)
β—† K-Nearest Neighbor (KNN)
β—†β—† Vote-K
β—†β—† Prompt Mining
Thought Generation
🟒 Introduction
🟒 Chain of Draft (CoD)
🟦 Contrastive Chain-of-Thought
🟦 Automatic Chain of Thought (Auto-CoT)
🟦 Tabular Chain-of-Thought (Tab-CoT)
🟦 Memory-of-Thought (MoT)
🟦 Active Prompting
🟦 Analogical Prompting
🟦 Complexity-Based Prompting
🟦 Step-Back Prompting
🟦 Thread of Thought (ThoT)
Ensembling
🟒 Introduction
🟒 Universal Self-Consistency
🟦 Mixture of Reasoning Experts (MoRE)
🟦 Max Mutual Information (MMI) Method
🟦 Prompt Paraphrasing
🟦 DiVeRSe (Diverse Verifier on Reasoning Step)
🟦 Universal Self-Adaptive Prompting (USP)
🟦 Consistency-based Self-adaptive Prompting (COSP)
🟦 Multi-Chain Reasoning (MCR)
Self-Criticism
🟒 Introduction
🟒 Self-Calibration
🟒 Chain of Density (CoD)
🟒 Chain-of-Verification (CoVe)
🟦 Self-Refine
🟦 Cumulative Reasoning
🟦 Reversing Chain-of-Thought (RCoT)
β—† Self-Verification
Decomposition
🟒 Introduction
🟒 Chain-of-Logic
🟦 Decomposed Prompting
🟦 Plan-and-Solve Prompting
🟦 Program of Thoughts
🟦 Tree of Thoughts
🟦 Chain of Code (CoC)
🟦 Duty-Distinct Chain-of-Thought (DDCoT)
β—† Faithful Chain-of-Thought
β—† Recursion of Thought
β—† Skeleton-of-Thought
πŸ”“ Prompt Hacking
🟒 Defensive Measures
🟒 Introduction
🟒 Filtering
🟒 Instruction Defense
🟒 Post-Prompting
🟒 Random Sequence Enclosure
🟒 Sandwich Defense
🟒 XML Tagging
🟒 Separate LLM Evaluation
🟒 Other Approaches
🟒 Offensive Measures
🟒 Introduction
🟒 Simple Instruction Attack
🟒 Context Ignoring Attack
🟒 Compound Instruction Attack
🟒 Special Case Attack
🟒 Few-Shot Attack
🟒 Refusal Suppression
🟒 Context Switching Attack
🟒 Obfuscation/Token Smuggling
🟒 Task Deflection Attack
🟒 Payload Splitting
🟒 Defined Dictionary Attack
🟒 Indirect Injection
🟒 Recursive Injection
🟒 Code Injection
🟒 Virtualization
🟒 Pretending
🟒 Alignment Hacking
🟒 Authorized User
🟒 DAN (Do Anything Now)
🟒 Bad Chain
πŸ”¨ Tooling
Prompt Engineering IDEs
🟒 Introduction
GPT-3 Playground
Dust
Soaked
Everyprompt
Prompt IDE
PromptTools
PromptSource
PromptChainer
Prompts.ai
Snorkel 🚧
Human Loop
Spellbook 🚧
Kolla Prompt 🚧
Lang Chain
OpenPrompt
OpenAI DALLE IDE
Dream Studio
Patience
Promptmetheus
PromptSandbox.io
The Forge AI
AnySolve
Conclusion

Sentiment Analysis

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Last updated on November 12, 2024

Valeriia Kuka

Sentiment analysis is the task of classifying text into positive, negative, or other sentiments.

Valeriia Kuka

Valeriia Kuka, Head of Content at Learn Prompting, is passionate about making AI and ML accessible. Valeriia previously grew a 60K+ follower AI-focused social media account, earning reposts from Stanford NLP, Amazon Research, Hugging Face, and AI researchers. She has also worked with AI/ML newsletters and global communities with 100K+ members and authored clear and concise explainers and historical articles.