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Get ready to mark your calendars for another exciting Melbourne MLOps.Community Meetup in April! Join fellow enthusiasts from the Machine Learning industry as we come together to deep dive into the world of ML. ๐Ÿš€โœจ

// Speakers
This time we have two standout guest speakers from Google and Energy Australia who will be sharing their experiences in the world of Large Language Models (LLMs) and MLOps. Don't miss this opportunity to gain firsthand knowledge, engage in insightful discussions, and expand your understanding of the rapidly evolving ML landscape.

We're delighted to introduce

  • Mo Jalali, Machine Learning Engineer at Energy Australia diving into MLOps and talking about From Data to Decision: An End-to-End MLOps Journey for Classification Excellence
    and
  • Ed Muthiah, Customer Engineer in the Google Cloud team, supporting enterprises transitioning proof of concept ML projects into production systems through MLOps practices. He will be sharing his insights on LLM System Design - Lessons from the field

// Networking
The Melbourne MLOps Community continues to strive towards fostering a space where ML Engineers & Practitioners can mingle and share ideas. We encourage discussions around the tools you're working on, trends you're observing, and how to find peer support. We've got the food, drinks, and the perfect space for networking, so bring along anyone interested in ML and MLOps!

// Agenda
๐Ÿ• 5:30pm - Drinks/Networking/Food
๐Ÿ™‹โ€โ™€๏ธ 6:00pm - Welcome
๐ŸŽค 6:10pm - Talk with Mo - Energy Australia
โ“ 6:30 pm - Questions for Mo
๐ŸŽค 6:40pm - Talk with Ed - Google
โ“ 7:00 pm - Questions for Ed
๐Ÿป 7:10 pm - Drinks/Networking/Food

Are you keen to find out about the next big thing in the industry and how others are utilising it? Do you want to connect with more like-minded ML Engineers & practitioners? Look no further, because the Melbourne MLOps.community Meetup is here to fulfil those needs!

Looking forward to seeing you there!

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