Dragomagte Founder Atharva Jaiswal Explains The Power Of Prompt Engineering In Modern AI Systems
“LLMs are pattern-copy machines,” said Jaiswal.“They don't think - they replicate patterns based on the structure and context we provide. That's why prompt engineering is the real programming language of this generation.”
According to Jaiswal, effective prompting starts with frameworks like RIFR - Role, Instruction, Format, and Reference. By clearly defining the model's role (e.g., analyst, marketer, tutor), specifying precise instructions, outlining the desired output format, and providing reference examples, users can significantly improve response quality and consistency.
Dragomagte's internal research shows that structured prompting reduces AI output variance by up to 47%, especially when prompts include defined schema and formatting guidelines.“The model follows patterns,” Jaiswal explained.“Once you teach it structure, you teach it reliability.”
Beyond prompting, Jaiswal introduces a broader concept he calls context engineering. While prompt engineering focuses on a single interaction, context engineering ensures the system maintains coherence across sessions, tools, and memory.“If prompt engineering is the syntax,” he said,“context engineering is the operating system.” By optimizing how memory, retrieval, and contextual data interact, Dragomagte ensures that automation agents maintain continuity even across thousands of operations.
Jaiswal also highlighted the evolution of structural prompting - the practice of embedding machine-readable schemas into prompts.“Earlier models responded best to JSON-based prompting,” he said.“But the new generation of LLMs handle XML-structured prompts with greater precision and context awareness.” XML prompting, he explained, allows hierarchical tagging and meta-instructions, improving data parsing and response fidelity for enterprise workflows.
Dragomagte's applied frameworks have already shaped automation systems for lead management, reporting, and intelligent communication. Each use case integrates adaptive prompting and contextual memory, enabling companies to run on autopilot while maintaining decision accuracy.
“Prompt engineering is how we teach machines to think the way we want,” Jaiswal concluded.“When done right, it doesn't just generate text - it orchestrates business intelligence.”
About Dragomagte
Dragomagte is an early-stage technology startup specializing in AI automation and intelligent systems for business efficiency. Backed by multiple patents and peer-reviewed research in artificial intelligence, the company builds solutions that help organizations streamline operations, reduce human effort, and scale revenue autonomously.
For more information, visit or connect with Atharva Jaiswal on LinkedIn.
   Legal Disclaimer:
 MENAFN provides the
              information “as is” without warranty of any kind. We do not accept
              any responsibility or liability for the accuracy, content, images,
              videos, licenses, completeness, legality, or reliability of the information
              contained in this article. If you have any complaints or copyright
              issues related to this article, kindly contact the provider above.


                
                
                
                
                
                
    
                       
                       
                       
                       
                       
                       
                       
                       
                       
Comments
No comment