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Gen AI for Marketing - From Hype to Implementation

Iguazio

For more details, watch the webinar this blog post is based on. The webinar hosts Eli Stein, Partner and Modern Marketing Capabilities Leader from McKinsey, Ze’ev Rispler, ML Engineer, from Iguazio (acquired by McKinsey), and myself. Watch the entire webinar here. In chains, a sequence of actions is hardcoded (in code).

AI 96
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The 2025 AI Adoption Survey, Evaluating LLMs, Agentic Systems, and AI Agents for Software…

ODSC - Open Data Science

Agentic Systems for Competitive Intelligence: Enhancing Business Decision-Making Lets explore how Agentic systems can autonomously collect and filter relevant data while conducting sophisticated pattern analysis to draw preliminary conclusions and generate actionable insights.

AI 40
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Roadmap to Become a Data Scientist: Do’s and Don’ts

Pickl AI

Step 4: Data Wrangling and Visualization Data isn’t always in pristine formats. Learning techniques to clean, preprocess, and visualize data allows you to transform raw information into actionable insights. Stay updated with the latest advancements in machine learning, deep learning, and Data Science technologies.

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How To Learn Python For Data Science?

Pickl AI

They introduce two primary data structures, Series and Data Frames, which facilitate handling structured data seamlessly. With Pandas, you can easily clean, transform, and analyse data. Participating in discussions can also enhance your understanding and keep you updated on the latest trends in Data Science.

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All You Need to Know about Transitioning your Career to Data Science from Computer Science

Pickl AI

Covers a wide range of topics, including software engineering, databases, operating systems, artificial intelligence, networking, and computer graphics. Common libraries in Python, such as pandas and NumPy, are essential for data cleaning, preprocessing, and transformation.