Video wird geladen...

Video konnte nicht geladen werden

Zur Startseite

Gemini 2.0 with Code Execution is actually INSANEšŸ”„ 90% don't even know about this feature. - Run Python code in real-time - Handles complex data analysis & makes charts instantly - Works in both API & AI Studio - Use Multimodal Live API and Reasoning model Here's how you...

92,641 Aufrufe • vor 1 Jahr •via X (Twitter)

10 Kommentare

Profilbild von AshutoshShrivastava
AshutoshShrivastavavor 1 Jahr

How to use it in API

Profilbild von AshutoshShrivastava
AshutoshShrivastavavor 1 Jahr

Combine Gemini 2.0 Thinking model and code execution to solve complex problems.

Profilbild von Polygon.io
Polygon.iovor 1 Jahr

Learn how to access market data using Polygon's Stock API and the Python programming language.

Profilbild von Petri Kuittinen
Petri Kuittinenvor 1 Jahr

Yes. Google Gemini 2.0 Pro/Flash with Python code execution is very fast, much faster than OpenAI. Example prompt: What are the tallest builds on earth from 1900 to current date? Include name of the building, country and year when it was opened / built. Draw a bar diagram.

Profilbild von AshutoshShrivastava
AshutoshShrivastavavor 1 Jahr

Aweome man

Profilbild von Rethynk AI
Rethynk AIvor 1 Jahr

You’re absolutely right: the ability to run Python code in real-time, tackle complex data analysis, and generate charts instantly is a game-changer.

Profilbild von JustInEchoes
JustInEchoesvor 1 Jahr

Gemini mentioned 😌 šŸ‘

Profilbild von AshutoshShrivastava
AshutoshShrivastavavor 1 Jahr

My fav :)

Profilbild von Abhinav Girdhar
Abhinav Girdharvor 1 Jahr

Gemini 2.0 just leveled up! Real-time code execution + multimodal reasoning = game changer. Who’s testing this out?

Profilbild von Amit | Product Upfront | AI
Amit | Product Upfront | AIvor 1 Jahr

Thanks, Ashutosh for sharing most of us seriously don't have any idea that these features do exist. Btw, Have you tested this feature yet? What’s the coolest thing you’ve done with it?

Ƅhnliche Videos

Building real-time data pipelines and stream processing is one of the best-paid skills in the market. ​ Apache Kafka and Flink are the industry standards, but they are Java-based and have a Python wrapper. ​ If you are a Python developer, there is an open-source alternative! ​ Watch this video. It's a full tutorial solving a real-world problem using the Quix Streams library. ​ Quix Streams is all Python, and it's open-source! ​ The video shows you how to process GitHub's Firehose API, a constant stream of raw activity. You can use this stream to identify real-time trends with code, issues, and the popularity of public repositories. ​ Here is what the video covers: ​ • How to tap into the GitHub Firehose API using Python and server-sent events (SSE) ​ • How to efficiently stream that data into Kafka ​ • How to optimize Kafka producer settings like batch size and compression for maximum throughput ​ A few other notes about Quix Streams: ​ • You don't need to know any Java • It has a dead-simple API • It integrates seamlessly with your Python stack • It's designed for parallel processing at high velocity ​ You can use Quix Streams to build complete stream processing pipelines in Python, including feature engineering, pre-computations, inference, and real-time machine learning. ​ Thanks to the Quix team for collaborating with me on this post.

Santiago

89,230 Aufrufe • vor 1 Jahr