Home Blog Page 12

Past cross-functional groups: AI’s radical transformation of agile growth


When the Agile Manifesto was signed in 2001, its authors couldn’t have imagined how synthetic intelligence would ultimately reinforce and radically prolong their ideas. Twenty years later, AI isn’t simply altering how we write code—it’s remodeling the basic nature of software program growth itself.

Agile methodologies emerged as a response to the inflexible, documentation-heavy “waterfall” method that dominated software program growth all through the Nineties. The manifesto prioritized “people and interactions over processes and instruments” and “responding to alter over following a plan.” In the present day’s AI instruments are enabling these human-centered ideas to succeed in their full potential in ways in which would have appeared like science fiction to the unique signatories.

The Rise of the Cross-Useful Particular person

Agile has lengthy advocated for self-sufficient cross-functional groups—teams with all the abilities wanted to ship options with out exterior dependencies. However AI is taking this precept to its logical excessive: the cross-functional particular person.

Engineers more and more use AI to enterprise into unfamiliar elements of the codebase and stack that they beforehand lacked the data or time to work with. The already rising demand for “Full Stack Engineers” is accelerating this convergence, as AI instruments assist builders bridge data gaps and work throughout disciplines with unprecedented effectivity.

Embracing Change at Unprecedented Velocity

“Responding to alter over following a plan” has all the time been a core agile worth. Conventional methodologies considered change as expensive and disruptive, whereas agile embraced it as inevitable and priceless. AI amplifies this precept dramatically by slashing the price of change.

This decreased value encourages extra experimentation, extra pivots, and in the end higher merchandise. The “bravery” that agile encourages—the willingness to alter path based mostly on new data—turns into considerably simpler when the penalty for change is dramatically decreased. Options that when took sprints might be prototyped in hours, and consumer suggestions might be included virtually instantly.

From Steady Supply to Steady Creation

Agile’s concentrate on delivering working software program steadily has developed into steady integration/steady supply practices. AI is now pushing this boundary additional towards what we would name “steady creation.” When code era approaches real-time, the limiting issue isn’t producing code however verifying it.

AI affords options right here as nicely—automated testing, safety scanning, and high quality evaluation might be AI-enhanced. AI brokers can write unit exams for brand spanking new code and assist create end-to-end exams, bettering high quality ensures. Essentially the most profitable groups will grasp this stability between acceleration and validation, exploring extra concepts, failing quicker, and converging on optimum options extra rapidly—all whereas sustaining top quality.

Reimagining Agile Processes

These transformations create alternatives to streamline conventional Scrum processes. Groups can allocate the next share of their dash to spontaneous enhancements as implementing options and bug fixes with AI could also be quicker than the overhead of together with them in dash planning.

Think about adapting the non-public productiveness “2-minute rule” for AI-enhanced groups: “If it takes lower than quarter-hour to accurately immediate an AI agent to implement one thing, do it instantly relatively than placing that job by means of your complete backlog/planning course of.” Whereas the agent works, you may focus in your different actions. And if the agent fails, you may ask AI to create a consumer story for the backlog. With the suitable integrations, this method dramatically will increase effectivity.

For structure critiques, AI can function your first wave of suggestions—a psychological sparring accomplice to develop concepts earlier than presenting to a committee. The AI-written abstract might be shared asynchronously, usually eliminating the necessity for formal conferences altogether.

Retrospectives ought to now embody discussions about AI utilization: Which crew members pushed AI capabilities to new frontiers? The place did AI implementation makes an attempt fail, and what might unblock progress? These conversations deal with not simply how people work collectively, however how people and AI collaborate successfully. As you might be constructing your particular person and crew AI abilities, patterns, and options, it is possible for you to to unlock the following degree of productiveness. 

The improved particular person productiveness permits organizations to streamline overhead processes, resulting in additional will increase in velocity. Groups can deal with bigger, extra complicated downside areas, and tasks that beforehand required a number of groups can usually be dealt with by a single crew. Cross-team dependencies—a perennial problem in scaled agile—diminish considerably.

This transformation is especially impactful for organizations utilizing scaled frameworks like SAFe, LeSS, or Nexus. These frameworks have been designed primarily to coordinate a number of groups engaged on shared merchandise—a necessity that AI is making more and more elective.

The Enduring Spirit of Agile

What’s most exceptional about AI’s influence is the way it reinforces relatively than replaces agile’s core values. The Manifesto’s concentrate on people, working software program, buyer collaboration, and responding to alter stays as related as ever—maybe extra so.

The instruments have modified dramatically, however the ideas endure. The distinction is that we now have unprecedented capabilities to meet these ideas. The agile groups that thrive on this new setting might be those that finest combine these instruments into human-centered growth processes.

Twenty years in the past, agile helped us escape the rigidity of waterfall growth. In the present day, AI helps us unlock the following degree of human creativity in software program growth. The longer term isn’t simply quicker—it’s basically extra inventive, extra responsive, and extra human than ever earlier than.

Gemini Robotics: AI Reasoning Meets the Bodily World

0


In recent times, synthetic intelligence (AI) has superior considerably throughout numerous fields, corresponding to pure language processing (NLP) and laptop imaginative and prescient. Nonetheless, one main problem for AI has been its integration into the bodily world. Whereas AI has excelled at reasoning and fixing advanced issues, these achievements have largely been restricted to digital environments. To allow AI to carry out bodily duties by means of robotics, it should possess a deep understanding of spatial reasoning, object manipulation, and decision-making. To deal with this problem, Google has launched Gemini Robotics, a set of fashions purposedly developed for robotics and embodied AI. Constructed on Gemini 2.0, these AI fashions merge superior AI reasoning with the bodily world to allow robots to hold out a variety of advanced duties.

Understanding Gemini Robotics

Gemini Robotics is a pair of AI fashions constructed on the inspiration of Gemini 2.0, a state-of-the-art Imaginative and prescient-Language Mannequin (VLM) able to processing textual content, pictures, audio, and video. Gemini Robotics is basically an extension of VLM into Imaginative and prescient-Language-Motion (VLA) mannequin, which permits Gemini mannequin not solely to grasp and interpret visible inputs and course of pure language directions but in addition to execute bodily actions in the true world. This mixture is essential for robotics, enabling machines not solely to “see” their atmosphere but in addition to grasp it within the context of human language, and execute advanced nature of real-world duties, from easy object manipulation to extra intricate dexterous actions.

One of many key strengths of Gemini Robotics lies in its capability to generalize throughout a wide range of duties while not having in depth retraining. The mannequin can comply with open vocabulary directions, modify to variations within the atmosphere, and even deal with unexpected duties that weren’t a part of its preliminary coaching information. That is significantly necessary for creating robots that may function in dynamic, unpredictable environments like properties or industrial settings.

Embodied Reasoning

A major problem in robotics has all the time been the hole between digital reasoning and bodily interplay. Whereas people can simply perceive advanced spatial relationships and seamlessly work together with their environment, robots have struggled to copy these talents. For example, robots are restricted of their understanding of spatial dynamics, adapting to new conditions, and dealing with unpredictable real-world interactions. To deal with these challenges, Gemini Robotics incorporates “embodied reasoning,” a course of that enables the system to grasp and work together with the bodily world in a means just like how people do.

On opposite to AI reasoning in digital environments, embodied reasoning includes a number of essential parts, corresponding to:

  • Object Detection and Manipulation: Embodied reasoning empowers Gemini Robotics to detect and establish objects in its atmosphere, even when they aren’t beforehand seen. It could predict the place to understand objects, decide their state, and execute actions like opening drawers, pouring liquids, or folding paper.
  • Trajectory and Grasp Prediction: Embodied reasoning permits Gemini Robotics to foretell essentially the most environment friendly paths for motion and establish optimum factors for holding objects. This capability is important for duties that require precision.
  • 3D Understanding: Embodied reasoning permits robots to understand and perceive three-dimensional areas. This capability is very essential for duties that require advanced spatial manipulation, corresponding to folding garments or assembling objects. Understanding 3D additionally permits robots to excel in duties that contain multi-view 3D correspondence and 3D bounding field predictions. These talents might be important for robots to precisely deal with objects.

Dexterity and Adaptation: The Key to Actual-World Duties

Whereas object detection and understanding are essential, the true problem of robotics lies in performing dexterous duties that require positive motor expertise. Whether or not it’s folding an origami fox or taking part in a recreation of playing cards, duties that require excessive precision and coordination are sometimes past the potential of most AI techniques. Nonetheless, Gemini Robotics has been particularly designed to excel in such duties.

  • Nice Motor Expertise: The mannequin’s capability to deal with advanced duties corresponding to folding garments, stacking objects, or taking part in video games demonstrates its superior dexterity. With further fine-tuning, Gemini Robotics can deal with duties that require coordination throughout a number of levels of freedom, corresponding to utilizing each arms for advanced manipulations.
  • Few-Shot Studying: Gemini Robotics additionally introduces the idea of few-shot studying, permitting it to be taught new duties with minimal demonstrations. For instance, with as few as 100 demonstrations, Gemini Robotics can be taught to carry out a process that may in any other case require in depth coaching information.
  • Adapting to Novel Embodiments: One other key function of Gemini Robotics is its capability to adapt to new robotic embodiments. Whether or not it is a bi-arm robotic or a humanoid with the next variety of joints, the mannequin can seamlessly management numerous kinds of robotic our bodies, making it versatile and adaptable to completely different {hardware} configurations.

Zero-Shot Management and Speedy Adaptation

One of many standout options of Gemini Robotics is its capability to regulate robots in a zero-shot or few-shot studying method. Zero-shot management refers back to the capability to execute duties with out requiring particular coaching for every particular person process, whereas few-shot studying includes studying from a small set of examples.

  • Zero-Shot Management through Code Technology: Gemini Robotics can generate code to regulate robots even when the precise actions required have by no means been seen earlier than. For example, when supplied with a high-level process description, Gemini can create the required code to execute the duty by utilizing its reasoning capabilities to grasp the bodily dynamics and atmosphere.
  • Few-Shot Studying: In instances the place the duty requires extra advanced dexterity, the mannequin also can be taught from demonstrations and instantly apply that data to carry out the duty successfully. This capability to adapt shortly to new conditions is a major development in robotic management, particularly for environments that require fixed change or unpredictability.

Future Implications

Gemini Robotics is an important development for general-purpose robotics. By combining AI’s reasoning capabilities with the dexterity and adaptableness of robots, it brings us nearer to the aim of making robots that may be simply built-in into every day life and carry out a wide range of duties requiring human-like interplay.

The potential functions of those fashions are huge. In industrial environments, Gemini Robotics might be used for advanced meeting, inspections, and upkeep duties. In properties, it may help with chores, caregiving, and private leisure. As these fashions proceed to advance, robots are more likely to grow to be widespread applied sciences which may open new prospects throughout a number of sectors.

The Backside Line

Gemini Robotics is a set of fashions constructed on Gemini 2.0, designed to allow robots to carry out embodied reasoning. These fashions can help engineers and builders in creating AI-powered robots that may perceive and work together with the bodily world in a human-like method. With the flexibility to carry out advanced duties with excessive precision and suppleness, Gemini Robotics incorporates options corresponding to embodied reasoning, zero-shot management, and few-shot studying. These capabilities permit robots to adapt to their atmosphere with out the necessity for in depth retraining. Gemini Robotics have the potential to remodel industries, from manufacturing to house help, making robots extra succesful and safer in real-world functions. As these fashions proceed to evolve, they’ve the potential to redefine the way forward for robotics.

Is Your B2B Advertising and marketing Lacking Out? Maximize Social with Cisco Advertising and marketing Velocity


Whenever you consider social media, you may image viral TikTok dances or humorous memes on X. Within the enterprise realm, you may envision shopper manufacturers seizing trends-or creating them. Nonetheless, for B2B entrepreneurs, social media may not instantly stand out as an important a part of the advertising toolkit. But, overlooking it might imply lacking vital alternatives.

In right this moment’s advertising panorama, 83% of B2B consumers require 3-10 interactions earlier than contemplating a model respected.¹ For entrepreneurs aiming to develop model consciousness or appeal to new prospects on a finances, each touchpoint counts. With 85% of B2B purchasers being Millennials and Gen Xers, who’re more and more influenced by social media throughout their buy journey,¹ social media has developed from a “nice-to-have” to a “need-to-have” device for constructing model status.

Crafting a social media technique, nonetheless, is not any easy activity—it requires curating content material, scheduling posts, and analyzing channels. Consultants recommend posting wherever from as soon as every week to a number of instances each day, relying on the platform.² So, how will you successfully handle this quantity?

Stream social content material with Cisco Advertising and marketing Velocity

Enter Cisco Advertising and marketing Velocity (MV), an award-winning co-marketing platform out there completely to our Cisco companions. MV provides a social stream characteristic, permitting you to attach your organization’s and private accounts to streams of Cisco-created social content material that may be routinely revealed to your accounts.

MV acts as your social strategist, managing put up quantity by means of auto-publishing or supplying you with the choice to approve and customise posts. You’ll be able to tailor your focus by deciding on particular matters, areas, and even languages. For extra insights on this characteristic, try our coaching sources.

Social media as demand technology in Cisco Advertising and marketing Velocity

Past constructing model status, social media performs a crucial position in demand technologyactually, 54% of B2B entrepreneurs generate leads by means of social media platforms.³ It’s an important device through the higher funnel levels, the place informative content material can increase purchaser consciousness and curiosity.

Visible storytelling has change into particularly vital, with short-form movies and pictures delivering the highest ROI for almost half of entrepreneurs.⁴ Cisco Advertising and marketing Velocity can assist companions take full benefit of those tendencies.

For instance, our AI-Prepared Knowledge Heart associate marketing campaign is designed to draw new prospects by means of Cisco’s AI infrastructure. These ready-to-launch customizable campaigns embrace curated posts, participating social movies, and banners that may be co-branded to maximise engagement. Companions can leverage these property to spice up visibility and join with their target market extra successfully.

Observe social metrics in Cisco Advertising and marketing Velocity

We additionally ought to always remember—analytics full the image. With Cisco Advertising and marketing Velocity, companions achieve entry to social dashboards to trace and optimize their social media efforts. These dashboards will let you analyze efficiency information, refine methods, and make data-driven selections for future campaigns.

All in all, managing social media could be a vital funding, typically starting from $500 to $5,000 yearly for small to medium-sized companies, relying on geography and use case.⁵ Happily, Cisco companions achieve entry to Advertising and marketing Velocity’s complete social media administration instruments—at no extra price.

From automating content material to monitoring metrics, Cisco Advertising and marketing Velocity simplifies the complexities of social media administration, serving to companions save time, cut back prices, and obtain measurable outcomes.

 

Discover Advertising and marketing Velocity’s social media capabilities right this moment to remodel your advertising method.

For added coaching on social media setup and campaigns, go to MV’s studying library.

 

Footnotes
[1] 2024 Digitalzone B2B Purchaser Beat, Particular Version
[2] Hootsuite, https://weblog.hootsuite.com/how-often-to-post-on-social-media/
[3] Optin Monster, https://optinmonster.com/social-selling-statistics/
[4] Hubspot, 2025 Hubspot State of Advertising and marketing Report

We’d love to listen to what you assume. Ask a Query, Remark Under, and Keep Linked with #CiscoPartners on social!

Cisco Companions Fb  |  @CiscoPartners X/Twitter  |  Cisco Companions LinkedIn

Share:



The U.S. leads the world in AI (job) anxiousness



When OpenAI launched ChatGPT on the finish of 2023, generative AI was initially perceived primarily as a device for creating Shakespearean-style poems or humorous footage. Nevertheless, because of extra critical utility situations within the enterprise atmosphere, the potential of the know-how is changing into more and more clear—particularly with regards to performing human duties.

Following bulletins by numerous firms that they’re slicing jobs or refraining from hiring new workers as a part of a genAI technique, the temper is starting to alter. The inhabitants’s worry that AI will take away their jobs is rising, notably in international locations with excessive AI utilization, a poor economic system, and fewer pronounced worker rights.

As the e-mail verification service Zerobounce calculated in a research, the U.S. is the nation with the best AI job anxiousness worldwide with a rating of 100, adopted by Mexico (84.4 factors), the U.Okay. (68.3 factors), and Canada (53.6 factors).

The Individuals have the very best search quantity with a population-adjusted worth of 440,000 search queries on the subject of AI job loss, whereas their angle in direction of AI is reasonably optimistic at 54.5%. The depth rating of three for the U.S. reveals that the priority of dropping jobs to AI is primarily a nationwide difficulty, which units the U.S. aside from all different international locations surveyed.

In Mexico, however, Zerobounce discovered a surprisingly excessive degree of concern regardless of a comparatively optimistic angle in direction of AI (75%). The operators of the research interpret the 120,600 search queries on the subject of job loss on account of AI with appreciable issues amongst staff in a rustic the place the technological infrastructure is just simply growing (depth worth 53).

Germany ranks seventh within the nation comparability, forward of its European neighbors the Netherlands, France, and Spain. The survey revealed that the inhabitants in Germany has a comparatively optimistic angle in direction of AI, with a worth of round 60%. Nevertheless, with an adjusted worth of 35,000 queries, the search queries on the subject of job loss on account of AI are comparatively excessive.

For its research, Zerobounce analyzed, amongst different issues, the search quantity knowledge for phrases associated to the lack of jobs on account of AI in addition to the proportion of optimistic opinions on AI in an important economies. The values had been then used to calculate the AI worry index.

This text initially appeared on Computerworld Germany.

Constructing TMT Mirror Visualization with LLM: A Step-by-Step Journey


Making a consumer interface that visualizes a real-world construction — just like the Thirty Meter Telescope’s mirror — may look like a process that calls for deep information of geometry, D3.js, and SVG graphics. However with a Massive Language Mannequin (LLM) like Claude or ChatGPT, you need not know every little thing upfront.

This text paperwork a journey in constructing a posh, interactive UI with no prior expertise in D3.js or UI improvement normally.
The work was carried out as a part of constructing a prototype for an operational consumer interface for the telescope’s main mirror, designed to point out real-time standing of mirror segments.
It highlights how LLMs make it easier to “get on with it”, providing you with a working prototype
even while you’re unfamiliar with the underlying tech.
Extra importantly, it reveals how iterative prompting — refining your requests step-by-step —
leads not solely to the correct code but in addition to a clearer understanding
of what you are attempting to construct.

The Objective

We needed to create an HTML-based visualization of the Thirty Meter Telescope’s main mirror, composed of 492 hexagonal segments organized symmetrically in a round sample.

We started with a high-level immediate that described the construction, however quickly realized that to succeed in my objective, I might have to information the AI step-by-step.

Step 1: The Preliminary Immediate

“I need to create an HTML view of the Thirty Meter Telescope’s honeycomb mirror.
Attempt to generate an HTML and CSS primarily based UI for this mirror, which consists of 492 hexagonal segments organized in a round sample.
General construction is of a honeycomb. The construction needs to be symmetric.
For instance the variety of hexagons within the first row needs to be similar within the final row.
The variety of hexagons within the second row needs to be similar because the one within the second final row, and many others.”

Claude gave it a shot — however the end result wasn’t what I had in thoughts. The format was blocky and never fairly symmetric. That is after I determined to take a step-by-step strategy.

Constructing TMT Mirror Visualization with LLM: A Step-by-Step Journey

Step 2: Drawing One Hexagon

“This isn’t what I need… Let’s do it step-by-step.”

“Let’s draw one hexagon with flat edge vertical. The hexagon ought to have all sides of similar size.”

“Let’s use d3.js and draw svg.”

“Let’s draw just one hexagon with d3.”

Claude generated clear D3 code to attract a single hexagon with the proper orientation and geometry. It labored — and gave me confidence within the constructing blocks.

Lesson: Begin small. Verify the muse works earlier than scaling complexity.

Single hexagon with flat edge vertical

Step 3: Including a Second Hexagon

“Good… Now let’s add another hexagon subsequent to this one. It ought to share vertical edge with the primary hexagon.”

Claude adjusted the coordinates, inserting the second hexagon adjoining to the primary by aligning their vertical edges. The format logic was starting to emerge.

Two hexagons sharing a vertical edge

Step 4: Creating the Second Row

“Now let’s add another row.

The hexagons within the second row share vertical edges with one another much like the primary row.

The highest slanting edges of the hexagons within the second row needs to be shared with the underside slanting edges of the hexagons within the first row.

The variety of hexagons within the second row needs to be such that the primary row seems centrally positioned with the second row.”

Preliminary makes an attempt didn’t correctly align the slanting edges.

“Oops… this doesn’t share the slanting edges with the earlier row.”

Two rows of hexagons

However finally, after clarifying spacing and offset logic, Claude obtained it proper.

Two rows of hexagons with proper edge alignment

Lesson: Geometry-based layouts typically require a number of iterations with cautious visible inspection.

Step 5: Increasing right into a Symmetric Construction

“Now we have to create larger construction with extra hexagons organized in additional rows such that:
The general construction seems round like honeycomb.
The variety of hexagons within the rows goes on growing after which goes on reducing to kind a wonderfully symmetric construction.
The entire variety of hexagons must be 492 to match the TMT telescope.
We will have an empty hexagon (exhibiting empty area) precisely on the heart of the circle.”

Claude used a ring-based format strategy to simulate round symmetry. However at first:

“This isn’t round however appears extra like a hexagonal total view…”

Then I urged:

“Strive with solely 6 hexagons within the first and final row.”

This transformation improved symmetry and helped obtain a visually round format. The variety of hexagons per row elevated after which decreased — precisely as desired.

Step 6: Tuning the Central Opening

“That is higher however we want a smaller opening on the heart.The black area on the heart is just too massive. It needs to be at most 1 or just a few hexagons.”

By lowering the empty area and rebalancing the inside rings, we lastly obtained a well-packed, round construction with a small central hole — matching the TMT design.

Lesson: Use domain-specific constraints (like whole depend = 492) as guideposts for format parameters.

Step 7: Including Numbering and Tooltips

“We need to have a quantity on every hexagonal phase. They need to be numbered sequentially. The primary within the first row needs to be 1 and the final within the final row needs to be 492. After we present the hexagonal phase data on mouseover, we must always present the quantity as properly.”

Claude initially assigned numbers primarily based on ring index, not row order.

“You might be producing numbers primarily based on place within the ring… However the numbering needs to be row-based. So we must always one way or the other map the rings to the row. For instance, Ring 13 phase quantity 483 is in row 1 and needs to be numbered 1, and many others. Are you able to recommend a method to map segments from rings to rows this fashion?”

As soon as this mapping was applied, every little thing fell into place:

  • A round format of 492 numbered segments
  • A small central hole
  • Tooltips exhibiting phase metadata
  • Visible symmetry from outer to inside rings
Final structure with numbered segments and tooltips

Reflections

This expertise taught me a number of key classes:

  1. LLMs make it easier to get on with it: Even with zero information of D3.js or SVG geometry, I might begin constructing instantly. The AI scaffolded the coding, and I discovered via the method.
  2. Prompting is iterative: My first immediate wasn’t improper — it simply wasn’t particular sufficient. By reviewing the output at every step, clarified what I actually needed and refined my asks accordingly.
  3. LLMs unlock studying via constructing: Ultimately, I did not simply get a working UI. I obtained an comprehensible codebase and a hands-on entry level into a brand new know-how. Constructing first and studying from it.

Conclusion

What began as a obscure design thought changed into a functioning, symmetric, interactive visualization of the Thirty Meter Telescope’s mirror — constructed collaboratively with an LLM.

This expertise reaffirmed that prompt-driven improvement is not nearly producing code — it is about considering via design, clarifying intent, and constructing your manner into understanding.

In case you’ve ever needed to discover a brand new know-how, construct a UI, or deal with a domain-specific visualization — do not wait to study all of it first.

Begin constructing with an LLM. You will study alongside the way in which.