The art of formulating a business desire to an AI Research Framework

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Divya Choudhary
Senior Research Scientist (AI/ML)
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Transforming Business Challenges into AI Research Projects: A Guide

As businesses increasingly strive to innovate, there's a growing need to convert complex business problems into actionable AI research goals. Divya Chaudhary, a seasoned AI/ML industry professional hailing from Samsung Research America's visual display innovation lab, brings her expertise to the forefront in her latest presentation. In this article, we'll distill her insights and strategies to bridge the gap between business desires and AI research framework.

Understanding the Differences Between Business and AI Research Goals

Before diving into the translation of business challenges into research opportunities, it's crucial to note the distinction between business and AI research goals. Businesses focus on product and service deployment with an emphasis on speed and market impact. Conversely, AI research tends to be more exploratory, experimenting to tackle unknowns and emerging technologies with less stringent time constraints.

Essential Metrics to Consider When Bridging Business and Research

Each domain comes with its own set of metrics. Businesses may focus on conversion rates and sales, while AI research measures success through algorithmic advancements and accuracy improvements. Divya Chaudhary emphasizes the importance of aligning these metrics to ensure that research outcomes bolster business objectives.

Converting Business Goals into AI Research Objectives: The Process

  1. Problem Definition: Accurately defining the business problem is the cornerstone of any successful conversion. This involves identifying real AI research potential within a business challenge.
  2. Research Scope Assessment: Evaluating whether an AI research initiative aligns with the current state of technology and the business timeline is critical.
  3. Proof of Concept (POC): Once a viable research direction is established, a POC using existing research and models helps determine feasibility.
  4. Data Set Preparation: An appropriate and expansive dataset is necessary for any AI model development, which often means investing time in data annotation.
  5. Deployment Strategy: Considerations around the model deployment, including infrastructure, inference time, and memory requirements, play a significant role in translating research into a business application.
  6. Evaluation Plan: Both quantitative and qualitative assessments are essential in judging the effectiveness and efficiency of the AI solution.

Real-World Example: Image Search in E-Commerce

Chaudhary offers an illustration of transforming a business's desire for an image-based search capability into an AI research project. She breaks down the bidirectional relationship between defining a tailored e-commerce solution and the research needed to create a sophisticated image recognition system that outperforms current market offerings.

Practical Steps Toward a Seamless Business to AI Research Transition

Chaudhary outlines a structured approach to turn business problems into research initiatives:

  • Clearly define the business challenge and establish its AI research relevance.
  • Commence proof-of-concept activities using state-of-the-art research.
  • Emphasize dataset curation, ensuring it resonates with your specific AI objectives.
  • Contemplate deployment frameworks early to guide research direction.
  • Develop comprehensive evaluation plans that encompass all aspects of performance.

Closing Remarks and Questions

In conclusion, the process of converting business objectives into AI research demands a well-defined strategy, an understanding of the limitations and potential of current AI capabilities, and a commitment to thorough evaluation. As businesses endeavor to navigate this landscape, remembering Chaudhary's advice may indeed prove invaluable.

Are you ready to harness AI for your business advantage? Dive into the world of AI research with Divya Chaudhary's insights as your guide. And if there are lingering questions or if you wish to delve deeper into this transformative journey, the conversation is just beginning. Feel free to reach out and explore further.


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