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Build a Real Time AI Data Platform with Apache Kafka

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Manage episode 344713776 series 2355972
Content provided by Confluent, founded by the original creators of Apache Kafka® and Founded by the original creators of Apache Kafka®. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Confluent, founded by the original creators of Apache Kafka® and Founded by the original creators of Apache Kafka® or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

Is it possible to build a real-time data platform without using stateful stream processing? Forecasty.ai is an artificial intelligence platform for forecasting commodity prices, imparting insights into the future valuations of raw materials for users. Nearly all AI models are batch-trained once, but precious commodities are linked to ever-fluctuating global financial markets, which require real-time insights. In this episode, Ralph Debusmann (CTO, Forecasty.ai) shares their journey of migrating from a batch machine learning platform to a real-time event streaming system with Apache Kafka® and delves into their approach to making the transition frictionless.

Ralph explains that Forecasty.ai was initially built on top of batch processing, however, updating the models with batch-data syncs was costly and environmentally taxing. There was also the question of scalability—progressing from 60 commodities on offer to their eventual plan of over 200 commodities. Ralph observed that most real-time systems are non-batch, streaming-based real-time data platforms with stateful stream processing, using Kafka Streams, Apache Flink®, or even Apache Samza. However, stateful stream processing involves resources, such as teams of stream processing specialists to solve the task.

With the existing team, Ralph decided to build a real-time data platform without using any sort of stateful stream processing. They strictly keep to the out-of-the-box components, such as Kafka topics, Kafka Producer API, Kafka Consumer API, and other Kafka connectors, along with a real-time database to process data streams and implement the necessary joins inside the database.

Additionally, Ralph shares the tool he built to handle historical data, kash.py—a Kafka shell based on Python; discusses issues the platform needed to overcome for success, and how they can make the migration from batch processing to stream processing painless for the data science team.
EPISODE LINKS

  continue reading

Chapters

1. Intro (00:00:00)

2. What is Forecasty.ai? (00:01:43)

3. Using AI techniques for forecast modeling (00:03:20)

4. Migrating from batch to real-time stream processing (00:09:51)

5. Getting started with Apache Kafka (00:13:08)

6. Building kash.py—a Python-based Kafka shell (00:23:52)

7. Future plans for using Kafka (00:31:10)

8. It's a wrap! (00:35:44)

265 episodes

Artwork
iconShare
 
Manage episode 344713776 series 2355972
Content provided by Confluent, founded by the original creators of Apache Kafka® and Founded by the original creators of Apache Kafka®. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Confluent, founded by the original creators of Apache Kafka® and Founded by the original creators of Apache Kafka® or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

Is it possible to build a real-time data platform without using stateful stream processing? Forecasty.ai is an artificial intelligence platform for forecasting commodity prices, imparting insights into the future valuations of raw materials for users. Nearly all AI models are batch-trained once, but precious commodities are linked to ever-fluctuating global financial markets, which require real-time insights. In this episode, Ralph Debusmann (CTO, Forecasty.ai) shares their journey of migrating from a batch machine learning platform to a real-time event streaming system with Apache Kafka® and delves into their approach to making the transition frictionless.

Ralph explains that Forecasty.ai was initially built on top of batch processing, however, updating the models with batch-data syncs was costly and environmentally taxing. There was also the question of scalability—progressing from 60 commodities on offer to their eventual plan of over 200 commodities. Ralph observed that most real-time systems are non-batch, streaming-based real-time data platforms with stateful stream processing, using Kafka Streams, Apache Flink®, or even Apache Samza. However, stateful stream processing involves resources, such as teams of stream processing specialists to solve the task.

With the existing team, Ralph decided to build a real-time data platform without using any sort of stateful stream processing. They strictly keep to the out-of-the-box components, such as Kafka topics, Kafka Producer API, Kafka Consumer API, and other Kafka connectors, along with a real-time database to process data streams and implement the necessary joins inside the database.

Additionally, Ralph shares the tool he built to handle historical data, kash.py—a Kafka shell based on Python; discusses issues the platform needed to overcome for success, and how they can make the migration from batch processing to stream processing painless for the data science team.
EPISODE LINKS

  continue reading

Chapters

1. Intro (00:00:00)

2. What is Forecasty.ai? (00:01:43)

3. Using AI techniques for forecast modeling (00:03:20)

4. Migrating from batch to real-time stream processing (00:09:51)

5. Getting started with Apache Kafka (00:13:08)

6. Building kash.py—a Python-based Kafka shell (00:23:52)

7. Future plans for using Kafka (00:31:10)

8. It's a wrap! (00:35:44)

265 episodes

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