How AI Is Revolutionizing Design and Development

At its Config 2025 event, Figma made it clear: the future of digital design will be deeply shaped by artificial intelligence. Beyond announcing new features, the company highlighted a paradigm shift — design is no longer a standalone process, but the core that connects creativity, technology, and product development.

A New Era: AI Empowering Creation

With tools like Figma Make (text-based prototype generation), Sites (for publishing dynamic websites without code), or Buzz (automated visual content for marketing), the platform positions itself as a space where any professional — regardless of technical background — can bring ideas to life more quickly and intelligently.

These features don’t aim to replace human creativity, but to amplify it. From assistants that suggest coherent interfaces to workflows that connect design directly with code, AI becomes an accelerator for both vision and execution.

Beyond Design: Real Benefits for Teams and Businesses

For both B2B and B2C companies, integrating AI into workflows is not just an aesthetic or technical enhancement — it’s a competitive edge. Some key applications include:

  • Automating repetitive tasks to free up creative time

  • Faster prototyping and earlier validation of ideas

  • Personalizing user experiences based on real-time data

  • Improving collaboration across design, product, and development teams

Large organizations can scale these capabilities across distributed teams, while startups and mid-sized companies gain the agility to compete more effectively.

AI and Design: A Strategic Alliance for the Digital Future

What once were disconnected processes are now integrated in a single platform — from the first wireframes to production-ready code, all powered by artificial intelligence.

The message is clear: design is no longer just how a product looks — it’s how it’s built, how it scales, and how it innovates. In this new landscape, AI is a strategic ally, not a passing trend.

Is your company using these tools to create better digital experiences?

At Hike & Foxter, we help you integrate AI into your design and development workflows. Let’s talk.

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Group your data like a pro: clustering with K-Means and BigQuery ML

Working with large volumes of marketing data—whether it’s web traffic, keywords, users, or campaigns—can feel overwhelming. These data sets often aren’t organized or categorized in a useful way, and facing them can feel like trying to understand a conversation in an unfamiliar language.

But what if you could automatically discover patterns and create data groups—without manual rules, endless scripts, or leaving your BigQuery analysis environment?

That’s exactly what K-Means with BigQuery ML allows you to do.

What is K-Means and why should you care?

K-Means is a clustering algorithm—a technique for grouping similar items. Imagine you have a table with thousands of URLs, users, or products. Instead of going through each one manually, K-Means can automatically find groups with common patterns: pages with similar performance, campaigns with similar outcomes, or users with shared behaviors.

And the best part? With BigQuery ML, you can apply K-Means using plain SQL—no need for Python scripts or external tools.

How does it actually work?

The process behind K-Means is surprisingly simple:

  1. You choose how many groups you want (the well-known “K”).

  2. The algorithm picks initial points called centroids.

  3. Each row in your data is assigned to the nearest centroid.

  4. The centroids are recalculated using the assigned data.

  5. This process repeats until the groups stabilize.

The result? Every row in your table is tagged with the cluster it belongs to. Now you can analyze the patterns of each group and make better-informed decisions.

How to apply it in BigQuery ML

BigQuery ML simplifies the entire process. With just a few lines of SQL, you can:

  • Train a K-Means model on your data

  • Retrieve the generated centroids

  • Classify each row with its corresponding cluster

This opens up a wide range of possibilities to enrich your dashboards and marketing analysis:

  • Group pages by performance (visits, conversions, revenue)

  • Detect behaviors of returning, new, or inactive users

  • Identify products often bought together or with similar buyer profiles

  • Spot keywords with unusual performance

How many clusters do I need?

Choosing the right number of clusters (“K”) is critical. Here are a few strategies:

  • Business knowledge: If you already know you have 3 customer types or 4 product categories, start there.

  • Elbow Method: Run models with different K values and watch for the point where segmentation no longer improves significantly.

  • Iterate thoughtfully: Test, review, and adjust based on how your data behaves.

Real-world examples

With K-Means in BigQuery, you can answer questions like:

  • What types of users visit my site, and how do they differ?

  • Which pages show similar performance trends?

  • Which campaigns are generating outlier results?

Grouping data this way not only saves time—it reveals opportunities and issues that might otherwise go unnoticed.

Conclusion

If you're handling large data sets and need to identify patterns fast, clustering with K-Means and BigQuery ML can be a game-changer. You don’t need to be a data scientist or build complex solutions from scratch. You just need to understand your business and ask the right questions—BigQuery can handle the rest.

Start simple: take your top-performing pages, group them by sessions and conversions, and see what patterns emerge. You might uncover insights that completely shift how you approach your digital strategy.

 

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Artificial Intelligence (AI) continues to progress at an accelerated pace, and Claude 4.0, developed by Anthropic, marks a major milestone in this journey. This next-generation language model stands out for its ability to comprehend complex contexts, deliver accurate responses, and adapt to a wide range of business needs.

AlphaEvolve: The new coding agent powered by Gemini

In a world where technology advances at unprecedented speed, artificial intelligence has emerged as a key driver of transformation. Among the most promising innovations today is AlphaEvolve, an evolutionary coding agent that combines the creative power of large language models (LLMs) with automated evaluators, opening new frontiers in software development, algorithm optimization, and solving complex problems in mathematics and computing.

How AI Is Revolutionizing Design and Development

At its Config 2025 event, Figma made it clear: the future of digital design will be deeply shaped by artificial intelligence. Beyond announcing new features, the company highlighted a paradigm shift — design is no longer a standalone process, but the core that connects creativity, technology, and product development.

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