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Broadcom’s 102.4 Tbps Tomahawk 6 targets million-XPU AI clusters



The MMU complexity improve displays the challenges of managing packet buffering, queue scheduling and congestion management at these excessive bandwidths. Conventional approaches to packet switching grow to be more and more tough because the numbers of ports, queues and simultaneous flows develop exponentially.

The Tomahawk 6 addresses these challenges by means of a number of key architectural improvements. The chip helps configurations with as much as 1,024 100G SerDes lanes or higher-speed 200G SerDes choices, offering flexibility for various deployment eventualities. For AI clusters requiring prolonged attain, the 100G SerDes configuration permits longer passive copper interconnects, decreasing each energy consumption and whole value of possession in comparison with optical options. (Learn extra: Copper-to-optics expertise eyed for next-gen AI networking gear)

Unified scale-up and scale-out structure

Certainly one of Tomahawk 6’s most important technical achievements is its capability to deal with each scale-up and scale-out networking necessities inside a unified Ethernet framework. 

Scale-up networking refers to high-bandwidth, low-latency connections inside particular person AI coaching pods, usually supporting as much as 512 XPUs within the Tomahawk 6’s case. Scale-out networking connects these pods collectively into bigger clusters, with Tomahawk 6 supporting deployments exceeding 100,000 XPUs.

This unified method eliminates the necessity for separate networking applied sciences and protocols between scale-up and scale-out tiers, simplifying community operations. 

AI-optimized routing and congestion management

The Tomahawk 6 incorporates Cognitive Routing 2.0, an enhanced model of Broadcom’s adaptive routing expertise particularly designed for AI workloads. This method gives superior telemetry, dynamic congestion management, fast failure detection and packet trimming capabilities that allow international load balancing throughout the community material.

Operators’ information: 3 Applied sciences Re-architecting the Way forward for Safety


Safety’s Floor Is Shifting—Are You Prepared? 

Perimeters have dissolved. Assault surfaces are multiplying. And AI is pushing each boundary. As we journey this wave of transformation, safety is now not about bolting on controls—it’s about rethinking the structure altogether and the sorts of expertise with which to accomplice. 

Safety transformation is now not non-compulsory – it’s important. Quantum computing threatens to upend cryptography as we all know it. It’s not science fiction. It’s a really actual problem with very actual penalties for as we speak’s knowledge. 

At this important inflection level, operators are on the middle of the shift—tasked not simply with managing infrastructure, however with enabling a safe, adaptable digital basis. Safety innovation is accelerating-but adopting the most recent tech isn’t sufficient. To remain forward of quantum threats, safe distributed environments, and allow Zero Belief at scale, organizations want a accomplice with deep experience. That’s the place Cisco’s Safety Companies are available.

On this weblog, Viraj and I share the three applied sciences to maintain your eye on, and clarify how Cisco Buyer Expertise specialists may also help you: 

  • Design and deploy crypto-agile, quantum-safe safety methods 



  • Safe distributed networks and workloads with Hybrid Mesh Firewall 



  • Allow Zero Belief entry for customers, units, and functions—all over the place 

Now let’s have a look at how this all ties collectively. 

Cisco’s Hybrid Mesh Firewall: Firewalling With out Borders 

The Business Shift:

Legacy firewalls weren’t constructed for hybrid, hyper-distributed networks. They’re inflexible, siloed, and blind to context.

The Repair:

Cisco’s Hybrid Mesh Firewall (HMF) blows up the previous mannequin—changing box-centric pondering with a distributed, identity-aware safety material. Enforcement factors are embedded all over the place (even switches), managed centrally through Cisco’s Safety Cloud Management.

Operator Actuality Test:

This adjustments every part. Operators now orchestrate safety throughout 1000’s of distributed enforcement factors. Coverage turns into contextual, identity-driven, and automatic. HMF gives the instruments to scale that complexity with readability and precision.

Backside Line:

HMF allows agility with out sacrificing management—good for securing fashionable, distributed networks at enterprise scale.

Cisco’s Common Zero Belief Community Entry (UZTNA): Zero Belief That Truly Works 

The Business Shift:

VPNs are outdated. IoT, AI, and distant work make conventional perimeter entry fashions irrelevant.

The Repair:

Cisco’s UZTNA reimagines safe entry—enabling each consumer, gadget, and factor to attach securely to any app, wherever. It unifies entry for contemporary and legacy methods alike with efficiency, coverage assurance, and full visibility.

 

 

Operator Actuality Test:

Utilizing Cisco’s Person Safety Suite and centralized Safety Cloud, operators can implement phased Common ZTNA methods—beginning with VPNaaS, scaling via app-specific Common ZTNA, and finally reaching common protection.

Backside Line:

Common ZTNA empowers operators to supply constant, least-privilege entry whereas streamlining administration and minimizing consumer friction.

Quantum-Secure Safety: Defending As we speak from Tomorrow 

The Business Shift:

Quantum computing threatens to render as we speak’s encryption out of date. And with the “Harvest Now, Decrypt Later” (HNDL) mannequin, encrypted stolen knowledge is in danger now.

The Repair:

Quantum-safe safety isn’t non-compulsory—it’s pressing. Operators should lead the cost by constructing crypto agility, auditing encryption use, and getting ready to implement NIST-approved post-quantum algorithms.

In Might, Cisco introduced improvements within the quantum networking house, together with the revealing Cisco’s quantum community entanglement chip and the opening of Cisco quantum labs.

Operator Actuality Test:

Quantum poses a posh and evolving problem, and organizations should now discover a path ahead to map present encryption utilization, consider threat, and construct phased transition methods aligned with evolving requirements.

Extra particularly, operators ought to have the ability to: 

  • Assess Their Most Essential Dangers: Establish the methods and knowledge which can be most weak to quantum assaults.



  • Implement Crypto Agility: Be sure their methods can simply swap between completely different encryption algorithms, to allow them to shortly adapt to new threats.



  • Discover Put up-Quantum Cryptography and associated quantum-safe options: Begin testing NIST-approved quantum-resistant algorithms and exploring hybrid crypto methods to remain forward of quantum threats.

Backside Line:

Quantum threats aren’t coming—they’re already right here. Operators should act now to guard high-value knowledge earlier than it’s too late. Early preparation is essential to defending high-value knowledge earlier than quantum disruption arrives.

Future-proof Safety with Cisco’s experience 

From quantum disruption to distributed firewalls and Zero Belief at scale, navigating the way forward for safety requires greater than the proper tech—it takes strategic experience. With 40 years of expertise and best-in-class specialists, Cisco’s experience is unmatched. Cisco Safety Companies helps you propose, construct, deploy and function next-gen safety architectures with readability, velocity, and resilience, and gives the experience that you must succeed. 


Be part of us at Cisco Reside to Study Extra

If you’re attending Cisco Reside subsequent week, don’t miss our Lightning Speak “Scale back complexity, acquire visibility, and enhance safety with Cisco companies for digital resilience” on Tuesday, June 10th at 3:00 PM PT (WOSCX-1018). Discover how one can simplify operations, improve safety, and optimize community and software efficiency to fulfill fashionable calls for with digital resilience options equivalent to Splunk, ThousandEyes, and XDR for end-to-end visibility, proactive monitoring, and superior menace detection.

Different periods it’s possible you’ll wish to add to your schedule:

  • An Introduction to Quantum Mechanics, Computing, and Networking (BRKETI-1401)



  • Methods for a Quantum-Secure Safety Transition (BRKETI-1007)



  • Navigating the Way forward for Cybersecurity: AI, Quantum-Resistant Cryptography and Zero Belief (ITLGEN-2055)

For those who’re eager about studying extra about Hybrid Mesh Firewall, Common ZTNA, Quantum Secure Safety, digital resilience and the way companies from Cisco Buyer Expertise can assist your journey, please go to us within the Digital Resilience and Future-proof Workplaces pods within the Cisco Showcase.

Lastly, in the event you’d like to fulfill with one in every of our Cisco safety companies subject-matter specialists (SMEs) whereas at Cisco Reside please attain out to us to schedule a gathering.

 

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From Rejections to Offered-Out Session: My Journey to the Cisco Dwell Stage


For years, I watched Cisco Dwell periods with admiration — every one sparking the identical thought in my thoughts: “In the future, I wish to be up there, too.” I utilized to talk at Cisco Dwell yr after yr, refining concepts, evolving with expertise tendencies, and studying from every “thanks, however not this time” electronic mail, every one a small sting of disappointment, but in addition motivation to maintain pushing ahead. A man holding his Cisco Live badge smiles.A man holding his Cisco Live badge smiles.

In 2025, that dream lastly turned a actuality.

My session, targeted on chatbots and digital assistants in Cisco Contact Centres, was accepted for Cisco Dwell EMEA 2025 — and to my absolute astonishment, it bought out, with a ready record of attendees wanting to dive into the subject.

The Excellent Timing

Cisco Dwell isn’t simply an occasion — it’s a world stage the place expertise leaders and innovators share concepts that form the long run. For me, being accepted as a speaker wasn’t simply an achievement, it was the belief of a dream years within the making. To lastly stand on that stage felt like stepping right into a second I had envisioned for therefore lengthy.

The timing couldn’t have been extra good. Cisco had simply launched the Webex AI Agent, a complicated digital assistant designed to revolutionize buyer assist, and I had the unbelievable alternative to faucet into the joy over this launch with my speak, giving real-world context to a cutting-edge answer.

I shared how AI-powered digital assistants are reworking the best way we take into consideration buyer experiences — automating repetitive duties, enhancing decision instances, and letting people deal with complicated, high-value interactions. However what really amazed me was how the viewers related with the subject. Individuals didn’t simply fill the seats — they had been engaged, sparking conversations and asking questions that prolonged past the session itself.

Extra Than Only a Speak Man standing n front of audience giving a class.Man standing n front of audience giving a class.

The expertise didn’t finish when the session did. Being accepted as a Cisco Dwell speaker — after so many tries — has not solely been a profession milestone however a profession catalyst. It’s positioned me unexpectedly as a Topic Matter Knowledgeable in Contact Centre AI, opening doorways to conversations, collaborations, and new alternatives that weren’t even on my radar earlier than.

However most significantly, it jogged my memory that persistence pays off, particularly while you’re supported by an organization like Cisco.

Why Cisco Makes This Potential

Cisco isn’t only a tech firm — it’s a spot that believes within the individuals behind the concepts. I’m extremely grateful to work in an atmosphere that empowers staff to develop, converse up, and take the stage (actually). Being given the platform to share one thing I’m captivated with — and seeing that keenness resonate with others — is a second I’ll carry ahead with pleasure.

What’s distinctive about Cisco is the way it encourages us to dream large and gives the instruments to make these desires a actuality. To anybody with large profession desires: hold going. Your voice issues, your concepts matter, and at Cisco, they’ll all the time have a spot to shine.

Mine did — and it’s just the start.

Are you able to discover a place the place you’ll be able to shine? Uncover a profession alternative now!

Subscribe to the WeAreCisco Weblog.

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Moore’s Regulation, previous and future – Comfortable Machines


Moore’s Regulation – and the expertise it describes, the built-in circuit – has been one of many defining options of the previous half century. The thought of Moore’s legislation has been invoked in three associated senses. In its unique kind, it was moderately a exact prediction concerning the charge of enhance of the variety of transistors to be fitted on a single built-in circuit. It’s by no means been a legislation – it’s been extra of an organising precept for an trade and its provide chain – and thus a self-fulfilling prophecy. On this sense, it’s been roughly true for 50 years – however is now bumping up in opposition to bodily limits.

Within the second sense, Moore’s legislation is used extra loosely as an announcement concerning the enhance in computing energy, and the discount of its value, over time. The assertion is that computing energy grows exponentially. This additionally was true, for some time. From the mid 1980’s to the mid 2000’s, laptop energy grew at a charge of fifty% a 12 months compounded, doubling each two years. On this extraordinary interval, there was greater than a thousandfold cumulative enhance over a few many years.

The speed of enhance in uncooked laptop energy has slowed considerably during the last 20 years, following the tip of Dennard scaling and the constraints of warmth dissipation, however this has been counteracted to some extent by software program enhancements and the event of architectures specialised for explicit functions. For instance, the Graphics Processing Items – GPUs – which have emerged as being so essential for AI are extremely optimised for multiplying giant matrices.

Within the third sense, Moore’s Regulation is used as a synecdoche for the extra basic thought of accelerating change, that the tempo of change in expertise generally is exponential – and even super-exponential – in character. This in fact is a commonplace in airport enterprise books. It underpins the concept of a forthcoming singularity, as a obtained knowledge in Silicon Valley. The thought of the singularity has been given extra salience by the current fast progress in synthetic intelligence, and the widespread view that superhuman synthetic basic intelligence will quickly be upon us.

On this submit, I need to return to the basics – how a lot the fundamental parts of computing might be shrunk in measurement, and what the prospects for future miniaturisation are. However this does instantly bear on the query of the prospects enhance in laptop energy, which has taken on new significance, as the fabric foundation of the AI increase. AI has introduced us to a brand new scenario; within the classical interval of quickest development of laptop energy (the 80s and 90s) the availability of computing energy was rising exponentially, and the chance was to search out methods of utilizing that energy. Now, with AI, it’s the demand for computing energy that’s rising exponentially, and the problem is whether or not provide can match that demand.

Moore’s Regulation, previous and future – Comfortable Machines

Moore’s Regulation. From Max Roser, Hannah Ritchie, and Edouard Mathieu (2023) – “What’s Moore’s Regulation?” Printed on-line at OurWorldinData.org. Retrieved from: ‘https://ourworldindata.org/moores-law‘ [Online Resource]. Licensed underneath CC-BY.

A classical depiction of Moore’s legislation is proven on this plot from Our World in Information – with a logarithmic y-axis, a straight line signifies an exponential development within the variety of transistors in successive generations of microprocessor. The seemingly inexorable upward progress of the road conceals an enormous quantity of innovation; every upward step was facilitated by analysis and growth of latest supplies and new processes. It additionally conceals some important discontinuities.

For instance, the sooner relationship between laptop energy and variety of transistors was damaged within the mid-2000s. Earlier than then miniaturisation introduced a double profit – it gave you extra transistors on every chip, and as well as every transistor labored quicker, as a result of it was smaller. The latter relation – Dennard scaling – broke down, as a result of warmth dissipation turned a limiting issue

One other elementary change occurred in 2012. The basic unit of the fashionable built-in circuit is the metallic oxide silicon area impact transistor – the mosFET. This consists channel of doped silicon, with contacts at both finish. The channel is coated with a skinny, insulating layer of oxide, on high of which is a metallic electrode – the gate. It’s the gate which controls the move {of electrical} present by the channel. When bodily limits meant that the planar mosFET couldn’t be shrunk any extra, a brand new design flipped the channel into the vertical airplane, so the transistors took the type of fins standing up from the airplane of the silicon chip. Either side of the doped silicon fin is coated by insulating oxide and a metallic gate, to kind the finFET.

The patterns that make the circuits in built-in circuits are made by lithography – gentle is shone by a patterned masks onto a photoresist, which is subsequently developed to make the sample bodily. The decrease restrict on the scale of the options that may be patterned on this manner is in the end set by the wavelength of sunshine used. By way of the 2010’s, lithography was based mostly on utilizing deep ultraviolet gentle created by excimer lasers – with a 193 nm wavelength. By 2020, this method had been squeezed so far as it could go, and the 5 nm course of node makes use of excessive UV, with a wavelength of 13.5 nm. The Dutch firm ASML has a monopoly on the instruments to supply EUV for lithography, every of which prices greater than $100 million; the radiation is created in a metallic plasma, and must be centered totally by mirrors.

I’ve referred to the 2020 iteration of fabrication expertise because the “5 nm course of”, following a long-standing trade conference of characterising successive expertise generations by a single size. Within the days of the planar mosFET, a single parameter characterised the scale of every transistor – the gate size. There was a steady relationship between the gate size and the size characterising the node quantity, and there was a roughly biennial lower within the node quantity, from the 1982 1.5µm course of that drove the explosion of non-public computer systems, to the 2002 90 nm strategy of the Pentium 4. However with the substitute of the mosFET by the finFET, circuit geometry modified and the connection between the node measurement and precise dimensions of the circuit broke down. In actual fact, the node measurement now’s finest regarded as totally a advertising machine, on the precept that the smaller the quantity the higher.

A higher strategy to describe progress within the cutting down of the scale makes use of an estimate of the minimal potential space for a transistor because the product of the metallic pitch, the minimal distance between horizontal interconnects, and the contacted gate pitch, the gap from one transistor’s gate to a different’s.

Minimal transistor footprint (product of metallic pitch and contacted gate pitch) for successive semiconductor course of nodes. Information: (1994 – 2014 inclusive) – Stanford Nanoelectronics Lab, submit 2017 and projections, successive editions of the IEEE Worldwide Roadmap for Gadgets and Programs

My plot exhibits the minimal transistor footprint, calculated on this manner, for every course of node since 1994 (the 350 nm node). The primary 5 nodes – till 2002 – observe the exponential enhance in density anticipated from Moore’s legislation – the match represents a transistor density that doubles each 2.2 years. The final three generations of planar mosFET expertise – till 2009 – present a slight easing of the tempo. The change to the finFET extended the pattern for one more decade or so. But it surely’s clear now that the “2 nm” node, being launched by TSMC this 12 months, confirms a marked levelling off of the tempo of miniaturisation. For this node, there was one other change of geometry – finFETs have been changed by vertical rows of nanowires, every fully surrounded by the metallic of the gate electrode – GAA, for “gate throughout”.

It must be burdened that miniaturisation of transistors is much from the one manner through which laptop energy might be elevated. A superb illustration of this comes from progress in making the ultra-powerful chips which have pushed the present AI increase, comparable to Nvidia’s H100. The H100 itself was truly fabricated by TSMC on the “5 nm” node, the primary to make use of AMSL’s EUV gentle supply for lithography. However, as this text explains, solely a fraction of the efficiency enhancements of the H100 over earlier generations are attributed to Moore’s legislation. A lot of the advance comes from extra environment friendly methods of representing numbers and finishing up the arithmetic operations that underlie synthetic intelligence.

One other issue of rising significance is in the best way particular person silicon chips are packaged. Many fashionable built-in circuits, together with the H100, will not be a single chip. As a substitute a number of particular person chips, together with each logic and reminiscence, are mounted collectively on a silicon substrate, with quick interconnects to affix all of them up. The H100 depends on an TSMC superior packaging expertise generally known as “Chip on Wafer on Substrate” (CoWoS), and is an instance of a “System in Package deal”.

What does the long run maintain? The newest (2023) iteration of the IEEE’s Worldwide Roadmap for Gadgets and Programs foresees another iteration of the Gate All Round structure. The 2031 node is a refinement of that which stacks two mosFETs on high of one another, one with a p-doped channel, one with an n-doped channel (this mixture of p- and n- doped FETs is the elemental unit of logic gates in CMOS expertise – “complementary metallic oxide silicon”, therefore that is known as CFET). This primarily doubles the transistor density. After this, no additional shrinking in dimensions is envisaged, so additional will increase in transistor density are to be obtained by stacking a number of tiers of circuits vertically on the wafer.

So what’s the standing of Moore’s legislation now? I return to the three senses through which individuals discuss Moore’s legislation – as a technical prediction concerning the development within the variety of transistors on an built-in circuit, as a extra basic assertion about growing laptop energy, and as a shorthand for speaking about accelerating technical change generally.

Within the first, and strictest, sense, we might be definitive – Moore’s legislation has run its course. The speed of enhance in transistor density has considerably slowed since 2020, and exponential development with an growing time fixed isn’t exponential any extra. The expertise in its present kind has now begun to hit limits, each bodily and financial.

For the second, looser, sense, issues are extra debatable. Obtainable computing energy remains to be growing, and we see the outcomes of that in advances comparable to the event of huge language fashions. However this elevated energy is coming, much less from miniaturisation, extra from software program, specialised architectures optimised for explicit duties, and superior packaging of chips in “Programs in Package deal”. It’s this transition that underlies the truth that Nvidia is price extra as an organization than TSMC, although it’s TSMC that really manufactures (and packages) the chips.

However I wonder if these approaches shall be topic to diminishing returns, in distinction with the classical interval of Moore’s legislation, when fixed, giant, fractional returns had been repeated 12 months after 12 months for many years, producing orders of magnitude cumulative enhancements. We’re additionally seeing as a serious supply of accelerating laptop energy the brute-force method of simply shopping for increasingly more chips, in large, vitality consuming knowledge centres. These sort of will increase in laptop energy are essentially linear, moderately than exponential, in character, and but they’re making an attempt to satisfy a requirement – largely from AI – which is rising exponentially.

It’s very tempting to take Moore’s legislation as an emblem of the concept technological change generally is accelerating exponentially, however I feel that is unhelpful. Know-how isn’t a single factor that improves at a given charge; there are various applied sciences, and at a given time some shall be accelerating, some shall be stagnating, some could even be regressing. As now we have seen earlier than, the exponential enchancment of a single expertise by no means continues ceaselessly; bodily or financial limits present up, and development saturates. Steady progress wants the continual introduction of latest applied sciences which may take up the baton of development from these older applied sciences, whose development is stalling.

It needs to be burdened right here that once we discuss concerning the finish of Moore’s legislation, the expertise that we’re speaking about isn’t computing generally – it’s this explicit manner of implementing machine logic, CMOS (complementary metallic oxide semiconductor). There are numerous methods through which we are able to think about doing computing – the paradox right here is that CMOS has been so profitable that it has crowded out different approaches, a few of which could have important benefits. For instance, we all know that CMOS logic makes use of a number of orders of magnitude extra vitality per operation than the theoretical minimal (the Landauer restrict).

Lastly, it does bear repeating what a unprecedented interval the heyday of Moore’s legislation and Dennard scaling was, with laptop energy doubling each two years, sustained over a few many years to supply a cumulative thousand-fold enhance. For individuals who have lived by that interval, it will likely be tough to withstand the idea that this charge of technological progress is a part of the pure order of issues.

Snowflake introduces agentic AI improvements for knowledge insights


Snowflake at the moment introduced at its Summit new agentic AI improvements that eradicate the boundaries typically discovered between enterprise knowledge and enterprise exercise, creating AI and ML workflows which are linked and trusted.

Among the many new options is Snowflake Intelligence (public preview quickly), powered by clever knowledge brokers, which supplies a pure language expertise for asking questions that may end up in the supply of actionable insights from structured and unstructured knowledge. Additionally in personal preview quickly is a brand new Information Science Agent to assist knowledge scientists automate routine ML mannequin improvement duties, in response to the corporate’s announcement.

Snowflake Intelligence, powered by LLMs from Anthropic and OpenAI, brings collectively knowledge from quite a few sources and makes use of the brand new  Snowflake Openflow to compile info from spreadsheets, paperwork, photos, and databases concurrently. The information brokers can generate visualizations and help customers in taking motion on insights, Snowflake stated in its announcement. Snowflake Intelligence may also entry third-party information by way of Cortex Data Extensions, quickly to be usually out there on Snowflake Market.

Increasing Snowflake Cortex AI

Snowflake’s AI capabilities are being expanded with the revealing of SnowConvert AI,, an agentic resolution to hurry migrations from legacy platforms to Snowflake, serving to knowledge professionals to modernize their knowledge infrastructures with much less handbook work. A brand new resolution in public preview, Cortex AISQL, makes use of generative AI to assist groups pull insights from a number of knowledge sorts and codecs and construct pipelines utilizing SQL and AI, the corporate stated. This, the corporate wrote in its announcement,  “consists of enriching buyer tables with chat transcripts, correlating sensor readings with inspection photographs, and merging gross sales figures with social media sentiment — enabling analysts to categorise photos, extract insights from name transcripts, and detect anomalies with ease. The result’s a completely built-in SQL expertise throughout all knowledge, unlocking deeper insights, sooner choices, and accelerated innovation with out the necessity for specialised AI abilities or exterior providers. Cortex AISQL delivers unified intelligence throughout your complete group.”

CData Unveils No-Code Snowflake Integration Accelerator

Information connectivity resolution supplier  CData Software program has introduced the launch of the CData Snowflake Integration Accelerator, a knowledge integration software for Snowflake clients. CData stated enterprises can cut back integration construct instances by as much as 90%, enabling sooner insights and maximizing the worth of their Snowflake investments.

The Integration Accelerator supplies no-code knowledge ingestion, transformations and stay connectivity to Snowflake knowledge with three toolkits designed to automation knowledge integration and provides stay entry to Snowflake datas. CData, in its announcement, detailed the brand new instruments as follows:

  • Snowflake Ingestion Toolkit: Speed up knowledge ingestion into Snowflake by 10x with no-code Change Information Seize (CDC) from over 270 sources, together with APIs, databases, and SaaS platforms. This toolkit helps stay integration from gross sales, advertising, monetary, and different enterprise techniques through Snowflake exterior tables, with extra assist for Iceberg Tables and staging.
  • Reside Snowflake Information Entry Toolkit: Allow standards-based stay connectivity to Snowflake from any utility, with native integration capabilities for Microsoft instruments like SSAS, SSRS, and SSIS. This toolkit additionally helps integration with Salesforce by way of Lightning Join, enabling seamless entry to Snowflake knowledge throughout the Salesforce ecosystem.
  • Cortex AI Integration Toolkit: Ingest from structured and semi-structured knowledge with real-time connectivity to energy AI-driven workflows in Snowflake Cortex AI. With instantaneous AI-ready knowledge pipelines from any enterprise supply, Cortex AI has rapid entry to ready knowledge for superior analytics and decision-making. The toolkit additionally helps programmatic orchestration of information pipelines, enabling agentic fashions and integration with Cortex AI’s AI-driven insights, whereas real-time knowledge processing with Change Information Seize (CDC) ensures that Cortex AI operates on probably the most up-to-date knowledge.