Not being a subject matter expert, but it seems that any data collection tool, in either Excel or database and properly formatted, can be very useful for GenAI to data mine and provide beneficial outputs such as what organizational processes should be amended based on, for example, Lessons Learned. Saving Changes...
Kelvin PeekCompliance Program Administrator| Excellus Blue Cross Blue ShieldNy, United States
Hi Claudia,
Thank you for creating this insightful post collecting use cases from our community. I was particularly interested in the section on tools for working with generative AI data, as this aligns with some of my experiences as a Lead Regulatory Analyst at a large academic medical center. I want to share a few additional insights and specific use cases that might be helpful for your purposes:
1. Synthetic Data Generation
1.1 AI Reverie: This platform could be useful if you create test datasets or augment existing ones. It can generate realistic image and video data, which could be helpful for training machine learning models or testing software in various scenarios.
1.2 Use Case in Clinical Research: Increase the size and diversity of clinical trial datasets by generating synthetic data that complements existing real-world data. This use case helped our teams complete feasibility questionnaires for studies with rare diseases or subgroups where data is scarce.
2. Data Cleaning/Annotation
2.1 Labelbox: If you're dealing with messy or unorganized data, Labelbox could streamline your data cleaning and labeling process. It has a user-friendly interface and features like consensus labeling, which can help ensure the accuracy of your labeled data.
2.2 Use Case: Our team used Labelbox's quality control tools to identify and resolve inconsistencies, errors, or missing data points in clinical trial datasets. This ensures the data submitted to regulatory agencies is of the highest quality.
3. Data Visualization
3.1 Looker: Once your data is clean and organized, Looker can help you transform it into meaningful insights. Its interactive dashboards and charts make it easy to visualize trends and patterns in your data, which can help make informed decisions.
3.2 Use Case: Create interactive dashboards and visualizations summarizing key clinical trial findings, safety data, and efficacy data. These visualizations can be included in regulatory submissions to communicate results to regulatory agencies.
I hope these additional insights are valuable. Please feel free to reach out if you'd like to discuss any of these tools or use cases in more detail.
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Farah HusainiNational University Health SystemSingapore, Singapore
For individual projects, I've used chatgpt, copilot and Miro. Saving Changes...
Christopher HuntTechnical Project Manager| ActBlueVa, United States
So far I've mostly found ChatGPT's model helpful for my work implementing Software Solutions as Project Manager. I can use it to help do some of the condensing of notes, writing of emails, and more.
I know it has more capabilities and thats why I took this course, to learn those things.
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Christopher HuntTechnical Project Manager| ActBlueVa, United States
So far I've mostly found ChatGPT's model helpful for my work implementing Software Solutions as Project Manager. I can use it to help do some of the condensing of notes, writing of emails, and more.
I know it has more capabilities and thats why I took this course, to learn those things.
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Tim ArmstrongTechnical Engineering Manager | | Principal Consultant| Toray CMA | | Eos Astraeus LLC |Steilacoom, WA, United States
The tools I use are Minitab AIML, askyourpdf, chatgpt, speechify, and grammarly. Then I always make sure to validate the information and data attained through reputable sources, my knowledge, and prototyping. Saving Changes...
it's important to note that the most advanced and cutting-edge tools are often proprietary and not publicly available.
Some key areas where tools and resources can be beneficial include:
Data and Knowledge: Having access to large, high-quality datasets spanning diverse domains is crucial for training AI models and expanding their knowledge bases.
Computing Power: Modern AI techniques like deep learning are highly compute-intensive.
Software Tools: Robust AI development frameworks, libraries, and APIs simplify the process of building, training, and deploying AI models at scale.
Human Feedback: Incorporating human feedback loops through methods like reinforcement learning from human preferences or constitutional AI can help AI systems better align with human values and intentions.
Evaluation and Testing: Rigorous evaluation frameworks, test sets, and benchmarks across different capabilities enable more effective measurement and monitoring of an AI's performance and safety properties.
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Awad OsmanDr.| UniversityAbu Dhabi, Uae, United Arab Emirates
Thank you Claudia for posting this question about tools for working with Generative AI data. As I am not working on a physical project, I am teaching the Project Management subject, I found this conversation very useful. Saving Changes...