- Real-time Data Streaming and Processing (San Francisco)28 2nd St, San Francisco, CA
** RSVP Here. (Due to room capacity, you must pre-register at the link for admission)
Description:
Welcome to the AI meetup in San Francisco, in collaboration with Lenses, Imply. Join us for deep dive tech talks on AI, GenAI, LLMs, ML and Real-time Data Streaming and Processing, with food/drink, networking with speakers and fellow developers.Agenda:
- 5:30pm~6:00pm: Checkin, food and networking
- 6:10pm~8:00pm: Tech talks and Q&A
- 8:00pm~8:30pm: Open discussion, Mixer and Closing.Tech Talk: Simplifying Kafka and Troubleshooting data
Speaker: Guillaume Ayme (Lenses.io)
Abstract: In this session, we'll present you with a real-life example of how we implemented a solution that allows developers to have complete control over their event-driven application (EDA), resulting in lightning-fast delivery of new streaming services and quick troubleshooting of any issues that arise. From fine-tuning data pipelines, troubleshooting data issues, offsetting topics, backing up to S3 and seeing your topics topology to harnessing the power of real-time data, developers and engineers will gain invaluable insights into how Lenses.io optimizes data workflows and enhances operational efficiency. This presentation will offer a rich tapestry of technical knowledge, hands-on demonstrations, and networking opportunities.Tech Talk: Streaming data meets real-time analytics
Speaker: Darin Briskman (Imply)
Abstract: You’re generating events. Lots of events. You’re using data streaming to reliably move those events between applications. How do you use this streaming data to your best advantage, gaining insights and driving automated decision making?
Imply is the database solution for real-time analytics from the creators of Apache Druid®. With high-concurrency subsecond queries of data of any size, combining true stream ingestion with historical batch data, Imply enables fast queries with aggregations and roll-ups while maintaining access to granular data.
In this tech talk, we’ll take a look at the uses of real-time analytics and how it can be used with streaming data.Speakers/Topics:
Stay tuned as we are updating speakers and schedules. If you have a keen interest in speaking to our community, we invite you to submit topics for consideration: Submit TopicsVenue:
355 Bryant St #108, San Francisco, CA 94107Community on Slack/Discord
- Event chat: chat and connect with speakers and attendees
- Sharing blogs, events, job openings, projects collaborations
- Join Slack/Discord (the link is at the bottom of the page)
- Evaluation of LLMs and Scale GNN trainingLink visible for attendees
We have invited two guests to cover two different topics. Please register at our event partner AICamp to obtain Zoom link
https://www.aicamp.ai/event/eventdetails/W2024053109
Agenda:
9:00 am -- 9:05 am PST members join online
9:05 am -- 9:45 am PST Talk 1
9:45 am -- 10:15 am PST Talk 2
10:30 am PST event closedTalk 1: Training GNNs at Internet Scale using cuGraph and WholeGraph
We present our approach to manage 70TB graph datasets, and train GraphSage across 1024 GPUs. One key feature of our approach is the separation of the graph sampling and GNN training phases, giving the user flexibility to scale each independent of the other. WholeGraph provides a distributed feature store that leverages GPU memory and caching to provide high performance dataloading. Dataloading and sampling are the two largest bottlenecks in GNN training according to our profiling.Speaker: Joe Eaton (NVIDIA)
Joe Eaton is a Distinguished System Engineer for Data and Graph Analytics at NVIDIA, and is currently leading the company strategy for Graph Neural Networks at Nvidia. Joe leads teams for code optimization, graph analysis, framework development and optimization,
as well as interacts with prospective customers in industry.
Key areas of interest are financial services, retail Recommenders, and molecular generation for drug discovery.Talk 2 : Practical Evaluation of LLMs and LLM Systems: Ensuring Relevance and Effectiveness in Real-World Applications
In-Depth Analysis of LLM Evaluation Methods: Gain insights into various methods used to evaluate LLM models, understanding their strengths and weaknesses.
End-to-End Evaluation Techniques: Explore how LLM augmented systems are assessed from a holistic perspective, ensuring comprehensive evaluation. Pragmatic Approach to System Deployment: Learn practical strategies for applying evaluation techniques to real-world systems, ensuring seamless deployment and functionality.
Focused Overview on Critical LLM Aspects: Get an overview of essential evaluation techniques for assessing crucial elements of modern LLM systems, enhancing understanding and applicability.
Simplifying the Evaluation Process: Understand how to streamline the evaluation process, making the work of LLM scientists more efficient and productive.Speaker Andrei Lopatenko
Andrei Lopatenko is an accomplished technology expert with over 18 years of experience in the industry. He earned a PhD in Computer Science from the University of Manchester and has been a key player in various high-profile AI projects at leading companies such as Google, Apple, Walmart, eBay, and Zillow. His notable work includes developing essential components of Google's search engine, initiating Apple Maps Search, and leading significant AI and search initiatives at Apple, Walmart, eBay, and Zillow. Additionally, Andrei co-founded a Conversational AI startup that was acquired by Facebook/Meta