Thank you, Giannis!

+1 for a blog.

Maybe we can announce the new 0.9 version with the new title/message,
and explain what AI means in the context of Fluss with all the new
features shipped in 0.9 to highlight the AI-ready.

Best,
Jark

On Sun, 18 Jan 2026 at 00:30, Giannis Polyzos <[email protected]> wrote:
>
> Absolutely this makes sense and the more explicit we are the better 👍
>
> Streaming Storage for Real-Time Analytics & AI
>
> Maybe it’s worth also putting together a blog post to explain what AI means
> in the context of Fluss, so users can better understand the use cases.
>
> Best,
> Giannis
>
>
>
> On Sat, 17 Jan 2026 at 6:26 PM, Jark Wu <[email protected]> wrote:
>
> > Thanks, Giannis!
> >
> > I’m really excited about the new messaging. It clearly showcases
> > Fluss’s new features and positions us firmly in the AI era.
> >
> > I’m just a bit torn on the title. “Streaming Storage for Real-Time
> > Data” alone doesn’t clearly differentiate us from Kafka, which also
> > fits that description. What if we keep the keyword “Analytics” to
> > sharpen our positioning? For example: “Streaming Storage for Real-Time
> > Analytics & AI”. This would maintain continuity with our existing
> > messaging, ensuring a smooth, incremental evolution that won’t
> > surprise users, while better highlighting Fluss’s unique value in
> > powering analytical workloads.
> >
> > Best,
> > Jark
> >
> > On Sat, 17 Jan 2026 at 02:44, Mehul Batra <[email protected]>
> > wrote:
> > >
> > > +1
> > > Best Regards,
> > > Mehul Batra
> > >
> > > On Mon, Jan 12, 2026 at 6:57 PM Giannis Polyzos <[email protected]>
> > > wrote:
> > >
> > > > Hi everyone,
> > > >
> > > > Over the last year, Fluss has grown a lot, and I think it's a good
> > time to
> > > > update our core message on the website to reflect that.
> > > >
> > > > I would like to propose the following.
> > > >
> > > > Promote Fluss as: Streaming Storage For Real-Time Data & AI
> > > > another alternative Streaming Storage For Real-Time Data & Intelligent
> > > > Systems
> > > >
> > > > and update our 6 core capabilities:
> > > >
> > > > *1. Sub-Second Data Freshness: *Continuous ingestion and immediate
> > > > availability of data enable low-latency analytics and real-time
> > > > decision-making at scale.
> > > > *2.* *Streaming & Lakehouse Unification:* Streaming-native storage with
> > > > low-latency access on top of the lakehouse, using tables as a single
> > > > abstraction to unify real-time and historical data across engines.
> > > > *3. Columnar Streaming:* Based on *Apache Arrow *it allows database
> > > > primitives on data streams and techniques like column pruning and
> > predicate
> > > > pushdown. This ensures engines read only the data they need,
> > minimizing I/O
> > > > and network costs.
> > > > *4. Compute–Storage Separation:* Stream processors focus on pure
> > > > computation while Fluss manages state and storage, with features like
> > > > deduplication, partial updates, delta joins, and aggregation merge
> > engines.
> > > > *5. ML & AI–Ready Storage:* A unified storage layer supporting
> > row-based,
> > > > columnar, vector, and multi-modal data, enabling real-time feature
> > stores
> > > > and a centralized data repository for ML and AI systems.
> > > > *6. Changelogs & Decision Tracking:* Built-in changelog generation
> > > > provides an append-only history of state and decision evolution,
> > enabling
> > > > auditing, reproducibility, and deep system observability.
> > > >
> > > > Any suggestions and thoughts to revisit or frame the above are highly
> > > > welcomed.
> > > >
> > > > Best,
> > > > Giannis
> > > >
> >

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