Sunday, February 8, 2026

Moltbot


What is Moltbot / OpenClaw? 

 OpenClaw AI (originally known as Clawdbot or Moltbot) is an open-source, autonomous AI agent framework that represents a significant shift from "talking" AI to "acting" AI. Created by developer Peter Steinberger in late 2025, it went viral in early 2026 for its ability to operate a user's computer independently, execute tasks across different apps, and run 24/7.

Unlike a standard chatbot that waits for you to type a prompt, OpenClaw is designed to be a "digital employee" that lives on your hardware and communicates with you through messaging apps like WhatsApp, Telegram, or Discord.

Business Benefits

Technology needs to add value to business.  OpenClaw takes any instruction from any messaging app to execute the backend service seamlessly using AI actions.  It's game changer for the end user accessibility.

Four Core Technologies That Set It Apart

The primary difference lies in the transition from Large Language Models (LLMs)—which focus on generating text—to Agentic AI, which focuses on executing workflows.

1. The "Heartbeat" Mechanism

Most AI is dormant until you click "send." OpenClaw features a "heartbeat"—a background process that allows the AI to trigger itself based on time (cron jobs) or external events (like receiving an urgent email or a GitHub notification). This makes it feel like an assistant that is "always on. 

2. Semantic Snapshots & Computer Use

While early agents used slow, expensive screenshots to "see" a screen, OpenClaw often uses Semantic Snapshots. It parses the "Accessibility Tree" of a website or app (the text-based map used by screen readers) to understand where buttons are. This makes it faster, cheaper, and more accurate at navigating the web for you. 

3. "Soul" and Persistent Memory

OpenClaw uses a dual-memory system: JSONL Transcripts: A literal log of every action and word + Markdown Memory: A MEMORY.md file where it distills "lessons learned" 

4. Model Agnostic

OpenClaw is not a model itself; it is a gateway. You can plug in "brains" from different companies like Claude, GPT, etc. 

Stay tuned for more hands-on publications using Moltbot OpenClaw!

Friday, February 6, 2026

ML to AgenticAI


The landscape of Artificial Intelligence is moving fast, often leaving professionals wondering how all the "buzzwords" actually fit together. To leverage AI effectively, it is essential to understand that the ecosystem isn't a collection of separate tools, but a nested hierarchy of capabilities.

The Layers of Intelligence

  1. The Foundation: AI & Machine Learning (ML) At the broadest level, AI encompasses everything from basic chatbots to robotics. Machine Learning sits within it, focusing on systems that learn from data to handle tasks like fraud detection and predictive analytics.

  2. The Engine: Neural Networks & Deep Learning Moving deeper, Neural Networks mimic human brain structures to master pattern recognition. This evolves into Deep Learning, the powerhouse behind the Large Language Models (LLMs) and Small Language Models (SLMs) we interact with today.

  3. The New Frontier: Generative & Agentic AI While Generative AI creates content, we are now entering the era of Agentic AI. Unlike standard models that wait for a prompt, Agentic AI is designed for autonomy. These systems don't just suggest a solution; they execute it through:

    • Autonomous Agents: Operating independently to reach a goal.

    • Personalized Automation: Tailoring workflows to specific user needs.

    • Adaptive Systems: Learning and adjusting based on real-world feedback.

Why the Distinction Matters

Understanding this ecosystem allows businesses to move beyond simple "chat" interfaces and begin building goal-oriented systems. By transitioning from Generative AI to Agentic AI, organizations can shift from manual task management to intelligent, self-sustaining workflows.

The future isn't just about AI that talks; it’s about AI that acts.

Wednesday, February 4, 2026

25Years


Today, Hema and I celebrate 25 years together—a true milestone that demands a moment of pause, deep reflection, and joyful celebration. Looks like 10th anniversary was just the other day! https://photos.app.goo.gl/w4LsSzZgbuc4u5mU6  25 Years: A Beautiful Pause for Reflection. 

Over this quarter-century, we’ve moved across countries, faced countless challenges, and created a lifetime of shared memories. The constant that always stands out is this: through every "thick and thin," we have remained fundamentally united, standing side-by-side.

Instead, marriage is an active creation. It’s the continuous process of re-creation, nurturing, growing, lifting, loving, giving, and supporting each other—every single day. I genuinely believe that being a great leader in the world starts right within the four walls of our home.

You, Hema, is the core backend resilient service to enable the stability and success of my frontend visible career, publications and academic life.  I couldn't achieve with alternative - it's only by your sacrifice. 

Our relationship is a dynamic co-creation, and I am still a grateful student, learning how to make our partnership even stronger.

Hema, thank you for being the constant in this incredible ride. I am deeply grateful for everything we have built together, and excited for all that still lies ahead.

❤️ Happy 25th wedding anniversary, my dear. ❤️

Sunday, February 1, 2026

ServiceNow Claude


ServiceNow is officially making Anthropic’s Claude the heartbeat of its platform. 

This isn’t just a tech upgrade; it’s an AI takeover. By deploying autonomous agents for clients like Panasonic Avionics, ServiceNow is moving beyond traditional SaaS and becoming the AI workflow backbone for complex, regulated industries.

For the market, the message is loud and clear: ServiceNow is no longer just managing your workflows—it’s automating them at scale


PS: On listening AI paradox recently at industry, proud to be part of my firm, to invest & inspire AI consistently in people/culture for last 14+ months.

Thursday, January 29, 2026

AI Paradox

For years, enterprise software was the "safe bet" of Wall Street—predictable, subscription-based, and essential. But today, a "double-whammy" of disappointing outlooks from industry titans has sent the sector into a tailspin, as investors begin to fear that artificial intelligence isn't just a tool for these companies, but a potential replacement for them.

The tremors started with SAP, which saw its shares plunge more than 16%—its biggest daily loss in years—after issuing a 2026 revenue forecast that fell short of analyst expectations. The German giant’s cautious cloud outlook served as a warning light for the entire industry.

Closely following was ServiceNow, which dropped 11%. Despite reporting subscription revenue that actually beat estimates, the results weren't "convincing enough" to drown out the growing narrative that AI disruption might eventually shrink the market for traditional workflow tools.

For the first time in a decade, the "Software as a Service" (SaaS) model is being questioned. As AI agents and autonomous coding tools become more capable, the traditional software giants are racing to reinvent themselves through massive M&A deals and new AI-integrated features. 

Sunday, January 25, 2026

20 AI daily tools

 

 Stop Working Harder, Start Working Smarter

We’ve officially moved past the "AI is coming" phase—AI is here, and it’s transforming how we handle everything from research to coding. If you feel like your to-do list is growing faster than you can keep up, it might be time to audit your toolkit.

The infographic below highlights 20 power players in the AI space to shift your workflow from manual to autopilot.

Saturday, January 17, 2026

LLM steps

The rapid evolution of Large Language Models (LLMs) has transformed how we interact with technology. From writing code to offering medical insights, these systems feel almost human. But behind the "magic" lies a rigorous, multi-stage lifecycle. 

Based on the expert roadmap provided by Rocky Bhatia, here is a breakdown of how an LLM is built, refined, and maintained.

Stage 1: The Foundation – Data & Architecture

Before a model can "think," it must be fed. This initial phase focuses on gathering the raw materials of intelligence.

Stage 2: Training – Learning to Predict

With the architecture set, the model begins its "education."

Stage 3: Alignment – Fine-Tuning for Quality

A model that knows everything is useless if it isn't helpful or safe. This stage "aligns" the model with human values.

Stage 4: Deployment & Interaction

Once the model is accurate and safe, it is ready for the real world.

Stage 5: Evolution – Performance & Continuous Learning

The journey doesn't end at deployment. Language and information are always changing.