Description
(00:00:00) Intro
(00:00:22) Introduction to Snowflake and AI
(00:00:34) Guest introduction and background
(00:00:57) Excitement about the conversation
(00:01:13) Impressions of Snowflake's office
(00:01:21) Discussion on Snowflake Summit and AI/ML announcements
(00:01:52) Overview of Snowflake as a unified platform
(00:02:16) Evolution of Snowflake from data warehousing to AI
(00:02:37) AI features and tools in Snowflake
(00:02:55) Announcements at Snowflake Summit
(00:03:05) Getting started with Snowflake
(00:03:16) Starting with Snowflake based on specific roles
(00:03:45) Specialization within Snowflake's platform
(00:03:55) Deciding where to start with Snowflake
(00:04:25) Importance of Python and SQL in Snowflake
(00:05:35) Snowflake as a platform for various roles
(00:05:57) Snowflake's learning platform and resources
(00:06:05) Overview of Snowflake's developer resources
(00:06:17) Introduction to Snowflake's North Star program
(00:06:53) North Star courses for different workloads
(00:07:13) North Star's foundation course
(00:07:35) Learning paths within North Star
(00:07:59) Availability of North Star courses on Coursera
(00:08:34) Discussion on teaching generative AI courses
(00:09:18) Differences between teaching online and live talks
(00:09:37) Experiences in writing scripts for courses
(00:10:30) Challenges in creating course content
(00:11:29) Tips for writing course scripts
(00:11:50) Experiences in teaching and content creation
(00:12:12) Changes in NLP and language models over the years
(00:12:24) Evolution of interest in NLP
(00:13:21) Excitement about the resurgence of NLP
(00:14:07) Shift in momentum for AI research
(00:14:38) Concerns about the use of generative AI
(00:14:59) Misuse of LLMs in outdated tasks
(00:15:54) Pessimism about the overuse of LLMs
(00:16:15) Exploring correct use cases for LLMs
(00:16:29) Potential use cases for LLMs
(00:17:04) Example of Snowflake's internal use of LLMs
(00:17:25) Chatbots as a first line of defense in support
(00:18:19) Content generation with LLMs
(00:18:40) Example of a content engine using LLMs
(00:19:23) Excitement about enterprise use of LLMs
(00:19:59) Benefits of internal knowledge sharing using LLMs
(00:20:03) Use cases for LLMs in organizations
(00:21:04) Encouragement to stick with niche interests
(00:21:50) Shift in focus from computer vision to NLP
(00:22:01) Advice for PhD students on choosing specializations
(00:22:35) Importance of following research trends
(00:23:15) Recommendations for getting started in NLP
(00:24:18) Importance of understanding fundamentals in NLP
(00:24:28) Starting with core NLP papers
(00:24:58) Keeping up with new research in AI
(00:25:05) Strategies for staying updated on AI research
(00:26:23) Following key figures in AI on social media
(00:26:45) Trends in AI research and their impact
(00:27:14) Challenges in staying current with AI papers
(00:27:43) Use of social media for AI research
(00:28:27) Academic communities on different platforms
(00:29:36) Visual learning in AI education
(00:29:55) Excitement about the future of AI
(00:30:06) AI's impact across industries
(00:30:15) Exploration of new use cases in AI
(00:30:46) Examples of creative AI use cases
(00:31:32) Curiosity about AI's future impact on industries
(00:31:50) Potential changes in education through AI
(00:33:05) Excitement about new AI-driven education tools
(00:33:40) Personalized education with AI
(00:33:47) The future of women in data and tech
---
Support this podcast: https://podcasters.spotify.com/pod/show/women-in-data/support