Ready to juice your way through summer? The Sage 3X Bluicer is almost £190 off right now


Before summer kicks in, let’s make it easy for you to upgrade your kitchen setup – starting with the juicer.

Sage’s 3X Bluicer is down from £299.95 to just £110 for a refurbished model, saving you almost £190 on a machine that can blend, juice, or run both functions simultaneously from a single base unit. Backmarket says this model has been professionally refurbished and is in ‘Good’ condition.

Deal Sage The 3X Bluicer Juicer

Ready to juice your way through summer? The Sage 3X Bluicer is almost £190 cheaper, making it a great kick‑start

If you’re gearing up for a summer of fresh juices and blends, the Sage 3X Bluicer is nearly £190 cheaper and a great way to get started.

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The juicing side runs on Cold Spin Technology, flowing fresh juice through a stainless steel cutting disc and an Italian-made mesh filter while keeping heat transfer below one degree Celsius, so nutrients and colour stay closer to what they were before you started.

What comes out of the juicer feeds directly into a 1.5L blending jug, meaning you can layer fresh juice into a smoothie, a frozen cocktail, or a slushie without swapping attachments or losing momentum between tasks.

The Kinetix bowl and blade system covers the blending side across five speed settings, with four one-touch programmes for dairy smoothies, ice crushing, and frozen cocktails, so you’re never guessing at the right setting for a given texture.

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Its 88mm feed chute takes whole fruits and most vegetables without pre-cutting, removing the prep step that makes juicing feel like more effort than it’s worth on a busy morning.

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The 3X Bluicer earns its place for those who want both disciplines in one unit, but if juicing alone is the goal, the Sage BJE430SIL Juicer is currently down from £179.95 to £92, saving £87.95 on a machine built around the same Cold Spin Technology.

The Nutri Juicer Cold runs on an 850W motor with a titanium-reinforced stainless steel extraction system and Italian-made precision mesh filter, preserving more colour and enzyme content than a standard centrifugal machine would typically manage.

A 2-speed electronic control handles the difference between soft leafy produce and dense ingredients like beetroot or ginger, while the 84mm feed chute takes whole fruits and most vegetables without any prep required.

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Another day, another politically motivated attack in the United States.

This morning’s shooting at a Dallas ICE detention facility – where a sniper killed two detainees and wounded another before taking his own life prompted me to revisit a question that’s been troubling me: Is political violence actually increasing in America, or does it just feel that way?

To explore this, I’ve conducted what I’ll call a methodological experiment.

Rather than relying on traditional datasets, I’ve used ChatGPT and Claude to construct a synthetic index of political violence in the US since 1945. Let me be absolutely clear: this isn’t conventional data. It’s data generated through language models, with all the limitations that implies.

The Methodology (and Its Limitations)

Here’s what I did: I asked both ChatGPT and Claude to generate lists of politically motivated violent incidents since 1945, then had them score each incident’s severity on a scale where 50 represents a “normal” level.

The models assessed both casualties and symbolic significance, and I used them to cross-check each other’s work. I then quality-checked the output myself and categorised perpetrators by political affiliation where this was clearly established.

This approach is, admittedly, unorthodox. Language models are trained on existing texts and may reflect biases in their training data. They might overweight highly publicised events or recent incidents that featured prominently in their training corpus.

The “data” we’re looking at is essentially a structured synthesis of what these models have absorbed about American political violence.

Yet there’s something intriguing here. These models have processed vast amounts of information about political violence – news reports, academic studies, government documents. Their output might capture patterns that traditional datasets miss, though it might also amplify certain narratives or blind spots.

What the Synthetic Data Reveal

With those caveats firmly in mind, the patterns that emerge from this exercise are concerning. The model-generated index shows a clear upward trend in political violence over the past decade.

Looking at the breakdown by perpetrator ideology (where clearly established), the data suggest that right-wing extremist groups have been responsible for the majority of incidents in recent years, though we cannot draw conclusions about today’s attack whilst investigations are ongoing.

The synthetic data align with some empirical observations. Princeton’s Bridging Divides Initiative recorded over 600 incidents of threats and harassment against local officials in 2024 – a 74% increase from 2022. The University of Maryland found that in the first half of 2025, 35% of violent events targeted U.S. government personnel or facilities – more than twice the rate in 2024.

The Charlie Kirk Assassination and Recent Patterns

The September assassination of conservative activist Charlie Kirk marked a particularly dark moment.

The incident followed numerous recent acts of political violence, including the murder of Minnesota Democratic state Rep. Melissa Hortman and her husband, and two assassination attempts on President Trump in 2024.

What the synthetic data reveal is not just increased frequency but a shift in patterns. While overall levels of physical political violence remained low in 2024 compared to years prior, acts of vigilante violence grew as a proportion of all reported incidents.

We’re seeing less organised group violence and more lone-wolf attacks – a pattern that’s harder to predict and prevent.

The Epistemological Challenge

When we use language models to generate “data” about social phenomena, what exactly are we measuring? We’re essentially extracting structured information from the collective corpus of human writing about these events. It’s aggregating distributed information, but through an AI intermediary rather than traditional data collection methods.

This raises fascinating questions.

The models suggest that right-wing extremist violence has been responsible for a fairly large majority of U.S. domestic terrorism deaths since 2001. But how much of this reflects actual patterns versus the way these events are covered and discussed in the sources the models were trained on?

The synthetic data are, in a sense, a mirror of our collective discourse about political violence. They reflect not just what happened, but how we’ve talked about what happened. That’s both a limitation and, potentially, a feature – understanding the narrative landscape around political violence might be as important as counting incidents.

An Experimental Tool

I’ve built an interactive app (using the AI coding tool Lovable) based on this language model-generated violence index.

Users can explore the synthetic data, examine patterns across different time periods and perpetrator groups, and understand the methodology behind it. Think of it as an experiment in using AI to structure historical information rather than a definitive dataset.

The value isn’t in treating this as gospel truth, but in what it reveals about how these events are recorded, remembered, and synthesised in our collective digital memory.

When language models trained on our civilisation’s text output show rising political violence, it tells us something – even if that something is as much about narrative as about underlying reality.

This morning’s tragedy in Dallas reminds us that behind every data point – whether traditionally collected or AI-generated – there are real victims and real consequences. Understanding the patterns, however imperfectly, is the first step toward addressing them.

Try the tool here.





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