Adi Polak

Director of Advocacy and Developer Experience Engineering, Confluent

Adi Polak

Adi is an experienced Software Engineer and people manager. For most of her professional life, she has worked with data and machine learning for operations and analytics. As a data practitioner, she developed algorithms to solve real-world problems using machine learning techniques and leveraging expertise in Apache Spark, Kafka, HDFS, and distributed large-scale systems.

Adi has taught Spark to thousands of students and is the author of the successful book — Scaling Machine Learning with Spark. Earlier this year, she embarked on a new adventure with data streaming, specifically Flink, and she can't get enough of it.

Presentations

How Do You Get AI Into Production?

Tuesday, 5:00 PM EST

In the ever-evolving landscape of technology and Generative AI, integrating DevOps principles into the machine learning (ML) lifecycle is a transformative game-changer.

Join me for an insightful session where we will explore essential aspects such as mlflow, deployment patterns, and monitoring techniques for ML models. Gain a deeper understanding of how to effectively navigate the complexities of deploying ML models into production environments. Discover best practices and proven strategies for monitoring and observing ML models in real-world scenarios.

By attending this session, you will acquire valuable insights and practical knowledge to overcome the unique hurdles of scaling and bringing AI into production. Unlock the full potential of your ML models by embracing the powerful integration of DevOps principles. This presentation is based on the extensive customer research I conducted to write the Best Seller book - Scaling Machine Learning with Spark - https://www.amazon.com/Scaling-Machine-Learning-Spark-Distributed/dp/1098106822.

Mastering the Art of Streaming Infrastructure

Thursday, 9:00 AM EST

Designing a distributed system architecture can be a daunting task, with contradictory requirements and constraints constantly at play. The CAP theorem that directly states the challenges in distributed data stores presents a classic example where developers must choose between consistency, availability, and partition tolerance. The same applies to streaming infrastructure systems, where optimizing for one aspect can come at the cost of another. With cost, throughput, accuracy, and latency as the main constraints for streaming systems, it's crucial to make informed decisions that align with your business goals.

In this session, you'll gain valuable insights into how your system design choices impact your system overall capabilities. You'll also learn about the differences between Flink Streaming and Spark Streaming, both conceptually and in practice. Lastly, you'll understand how combining multiple solutions can be beneficial for your team and business. Join to learn more about the cumbersome world of distributed stream processing systems.

Mastering the Art of Streaming Infrastructure

Thursday, 11:00 AM EST

Designing a distributed system architecture can be a daunting task, with contradictory requirements and constraints constantly at play. The CAP theorem that directly states the challenges in distributed data stores presents a classic example where developers must choose between consistency, availability, and partition tolerance. The same applies to streaming infrastructure systems, where optimizing for one aspect can come at the cost of another. With cost, throughput, accuracy, and latency as the main constraints for streaming systems, it's crucial to make informed decisions that align with your business goals.

In this session, you'll gain valuable insights into how your system design choices impact your system overall capabilities. You'll also learn about the differences between Flink Streaming and Spark Streaming, both conceptually and in practice. Lastly, you'll understand how combining multiple solutions can be beneficial for your team and business. Join to learn more about the cumbersome world of distributed stream processing systems.