Category: All
-

Prompt Engineering: Key Concepts and Techniques
Prompt engineering is the art of crafting prompts that guide the behavior of large language models (LLMs), enabling them to generate text, translate languages, write different kinds of creative content, and answer your questions in an informative way. This post will introduce the key concepts and techniques of prompt engineering, including instructions, context, input data,…
-

Prompt Engineering: Prompt Engineering for Creative Writing
Prompt engineering can be a powerful tool for creative writing. By crafting effective prompts, you can guide LLMs to generate creative text formats of text content, like poems, code, scripts, musical pieces, email, letters, etc. This post will provide tips and examples for crafting prompts for creative writing. #PromptEngineering #CreativeWriting
-

Prompt Engineering:Prompt Engineering for Reasoning
Prompt engineering can also be used to improve the reasoning capabilities of LLMs. By crafting prompts that provide the LLM with clear instructions and context, you can help it to generate more logical and informative responses. This post will provide tips and examples for crafting prompts for reasoning. #PromptEngineering #Reasoning
-

Prompt Engineering: Prompt Engineering for Code Generation
Prompt engineering can also be used to generate code. By providing the LLM with clear instructions and examples, you can help it to generate code that is both functional and efficient. This post will provide tips and examples for crafting prompts for code generation. #PromptEngineering #CodeGeneration
-

Prompt Engineering: Advanced Prompt Engineering Techniques
This post will introduce some advanced prompt engineering techniques, such as generated knowledge prompting, self-consistency, and ReAct. These techniques can be used to improve the performance of LLMs on complex tasks, such as commonsense reasoning and generating code with reasoning traces. #PromptEngineering #AdvancedTechniques
-

AI In ERP: Oracle AI for Sales & Service , Finance: Identify High-Potential Accounts
Oracle Account Prioritization uses AI to rank prospects based on their potential value and fit with your ideal customer profile (ICP). This helps you focus your sales efforts on the accounts that are most likely to convert into customers. #OracleAI #AccountPrioritization
-

Crafting a Winning AI Strategy: Use Cases
Explore where generative AI fits into your enterprise and the importance of careful use in high-stakes situations. Avoid the pitfalls of “hallucinations.” Ensure data security, privacy, and compliance. 🚀 #AIStrategy #UseCase #DataSecurity
-

Crafting a Winning AI Strategy: Model Choices
Dive into the options for deploying generative AI. Choose between DIY models, off-the-shelf solutions, and adapting pre-trained LLMs. Understand the pros and cons of each approach. Make decisions aligned with your organization’s specific needs and resources. 🚀 #AIStrategy #ModelSelection #AIOptions
-

Crafting a Winning AI Strategy: Optimization
Optimize your LLM’s performance and accuracy through prompt engineering, context retrieval, fine-tuning, and observability. These techniques are crucial for tailoring your AI to specific tasks, enhancing its capabilities, and ensuring it operates reliably. Quality data is key. 🚀 #AIStrategy #AIImprovement #LLMOptimization
-

Crafting a Winning AI Strategy: Data Security
Safeguard your AI strategy by mastering data security. Learn essential techniques such as data anonymization, redaction, tokenization, encryption, and masking to protect data integrity and privacy in AI applications. Data protection is paramount. 🚀 #AIStrategy #DataSecurity #AIProtection