MLOps podcast #180 with Sachin Abeywardana Deep Learning Engineer at Canva AI, Adventures in Building CLIP and Other (Largeish) Language Models
sponsored by Prem AI.
// Abstract
Sachin takes us on an adventure, sharing insights on the pitfalls of not understanding the broader product and the importance of incorporating AI and machine learning capabilities. From the use of AI models to grammar correction and code generation to the fascinating Clip model and the challenges of balancing work and family life, this episode promises to be both informative and thought-provoking.
// Bio
Sachin is the father of two beautiful children. He completed his PhD in Bayesian Machine Learning at University of Sydney in 2015. In 2016 he discovered Deep Learning and hasn't looked back. He currently works as a Senior Machine Learning Engineer at Canva and is mainly focusing on NLP problems.
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// Related Links
Sachin Blogs: https://sachinruk.github.io/blog.html
https://sachinruk.github.io/blog/
Graph ML link: http://web.stanford.edu/class/cs224w/
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Timestamps:
[00:00] Sachin's preferred beverage
[00:26] Takeaways
[02:30] Chat GPT user
[05:58] Understanding on reliable Agents
[08:10] Sachin's background
[12:45] Staying at Deep Learning
[16:17] Recommendation or Lead Scoring
[17:36] Vector database
[19:00] Sachin's blogs
[23:26] The cap people
[26:10] Pursuing business case
[27:33] Canva
[31:16] Incorporating AI and Machine Learning
[32:17] Sponsor Ad
[38:22] Eliminating unnecessary steps
[39:00] Interacting with the product team
[43:04] Criticisms on the current architecture limitations
[45:58] Insufficient exploration of Transformers
[47:42] Explaining GraphML
[52:35] Fine-tuning ChatGPT2
[57:54] Leading ML Engineers and teams
[59:40] Being practical with Math
[1:05:52] Wrap up