[DataFramed AI Series #2] How Organizations can Leverage ChatGPT (with Noelle Silver Russell)
With the advent of any new technology that promises to make humans lives easier, replacing concious actions with automation, there is always backlash. People are often aware of the displacement of jobs, and often, it is viewed in a negative light. But how do we try to change the collective understanding to one of hope and excitement? What use cases can be shared that will change the opinion of those that are weary of AI?
Noelle Silver Russell is the Global AI Solutions & Generative AI & LLM Industry Lead at Accenture, responsible for enterprise-scale industry playbooks for generative AI and LLMs. In this episode of our AI series, Noelle discusses how to prioritize ChatGPT use cases by focusing on the different aspects of value creation that GPT models can bring to individuals and organizations. She addresses common misconceptions surrounding ChatGPT and AI in general, emphasizing the importance of understanding their potential benefits and selecting use cases that maximize positive impact, foster innovation, and contribute to job creation.
Noelle draws parallels between the fast-moving AI projects today and the launch of Amazon Alexa, which she worked on, and points out that many of the discussions being raised today were also talked about 10 years ago. She discusses how companies can now use AI to focus both on business efficiencies and customer experience, no longer having to settle for a trade-off between the two.
Noelle explains the best way for companies to approach adding GPT tools into their processes, which focusses on taking a holistic view to implementation. She also recommends use-cases for companies that are just beginning to use AI, as well as the challenges they might face when deploying models into production, and how they can mitigate them.
On the topic of the displacement of jobs, Noelle draws parallels from when Alexa was launched, and how it faced similar criticisms, digging into the fear that people have around new technology, which could be transformed into enthusiasm. Noelle suggests that there is a burden on leadership within organzations to create a culture where people are excited to use AI tools, rather than feeling threatened by them.
Finally, Noelle stresses how companies should focus on creating inclusive engineering teams that deliver on the promise of responsible AI at scale as well as the what might be needed from regulators and lawmakers as AI continues to take the world by storm. For anyone that has used or intends to use GPT models in their work, Noelle offers rare insights from her time spent helping develop these technologies at some of the world’s largest organizations.
1 view
394
109
1 month ago 00:06:26 8
Fireducks: Ускорь Pandas в 20 раз, изменив всего одну строчку кода!!!
4 months ago 04:22:13 1
Data Analysis with Python - Full Course for Beginners (Numpy, Pandas, Matplotlib, Seaborn)
1 year ago 04:57:59 16
Pandas & Python for Data Analysis by Example – Full Course for Beginners
1 year ago 00:40:10 1
#147 The Past, Present & Future of Generative AI—Joanne Chen, General Partner at Foundation Capital
1 year ago 00:59:20 1
#145 Why AI will Change Everything—with Former Snowflake CEO, Bob Muglia
1 year ago 00:45:04 1
#68 The Future of Responsible AI (with Maria Luciana Axente)
1 year ago 01:02:38 1
[DataFramed AI Series #4] Building AI Products with ChatGPT (with Joaquin Marques)
1 year ago 00:42:48 1
[DataFramed AI Series #3] GPT and Generative AI for Data Teams (with Sarah Schlobohm)
1 year ago 00:47:11 1
[DataFramed AI Series #2] How Organizations can Leverage ChatGPT (with Noelle Silver Russell)
1 year ago 01:00:52 1
[DataFramed AI Series #1] ChatGPT and the OpenAI Developer Ecosystem (with Logan Kilpatrick)
2 years ago 00:09:24 6
Pandas 2.0 : Everything You Need to Know
2 years ago 00:14:12 5
Polars: The Next Big Python Data Science Library... written in RUST?
2 years ago 00:38:15 1
Juan Luis- Expressive and fast dataframes in Python with polars | PyData NYC 2022
2 years ago 00:18:39 2
Polars: The Super Fast Dataframe Library for Python ... bye bye Pandas?
2 years ago 00:54:57 1
ElixirConf 2022 - Chris Grainger - The Future AI Stack
2 years ago 00:48:10 1
Основы Pandas Python | Series, DataFrame И Анализ Данных
2 years ago 00:22:17 11
, , , | БИБЛИОТЕКА PANDAS 2 | МАШИННОЕ ОБУЧЕНИЕ
2 years ago 00:34:48 25
Pandas - разбор всех основных возможностей на реальном датасете
2 years ago 00:10:45 9
Object Detection in 10 minutes with YOLOv5 & Python!
2 years ago 00:09:47 1
How To Get Started in Machine Learning and AI : A Roadmap