April 1968, this photograph was taken at ISRO’s Ahmedabad center.Scientist Vikram Sarabhai is explaining India’s satellite project to Sonia Gandhi. Just two months earlier, in February 1968, Sonia Gandhi had come to India after her marriage. At that time, she had not even taken Indian citizenship. According to the rules, a foreign citizen is normally not allowed to enter such sensitive research centers. Antonia Maino, an 8th-grade-educated woman from Italy, suddenly developed an interest in satellites and space science right after coming to India. Isn’t that surprising? Coincidentally, a few years later, Vikram Sarabhai was found dead under mysterious circumstances in a room at a resort in Kerala. Without any postmortem, it was declared that the death occurred due to a heart attack.
Som's Tech World...
This is my own world of software and technologies...
Saturday, March 14, 2026
Unusual death of Homie Bhaba and Vikram Sarabhai, Nambi Narayan falsely charged, Tapan Mishra, a top ISRO scientist poisoned, and countless Indian scientists died in mysterious condition - it's not conspiracy theory - its eye opening for Bharat to take action....
April 1968, this photograph was taken at ISRO’s Ahmedabad center.Scientist Vikram Sarabhai is explaining India’s satellite project to Sonia Gandhi. Just two months earlier, in February 1968, Sonia Gandhi had come to India after her marriage. At that time, she had not even taken Indian citizenship. According to the rules, a foreign citizen is normally not allowed to enter such sensitive research centers. Antonia Maino, an 8th-grade-educated woman from Italy, suddenly developed an interest in satellites and space science right after coming to India. Isn’t that surprising? Coincidentally, a few years later, Vikram Sarabhai was found dead under mysterious circumstances in a room at a resort in Kerala. Without any postmortem, it was declared that the death occurred due to a heart attack.
Friday, March 13, 2026
With the fall of Windows and the rise of Linux, Computer Science is gradually crawling back to its most rightful community - engineers, scientists, physicists, mathematicians...
1. The “Windows era” of computing
During the dominance of Microsoft Windows in the 1990s–2000s, personal computing became mass-market consumer technology. The focus shifted toward:
Ease of use
Graphical interfaces
Office productivity
Gaming and consumer software
Companies like Microsoft built ecosystems aimed at millions of everyday users, not primarily scientists or engineers.
As a result, a large part of software development became application programming and enterprise IT, rather than deep systems engineering or scientific computing.
2. Linux and the return of engineering culture
The rise of Linux—started by Linus Torvalds—brought back a culture closer to traditional engineering and scientific computing:
Open source collaboration
Systems-level programming
High-performance computing
Research computing environments
Today, Linux dominates areas like:
Supercomputers (almost all of them run Linux)
Scientific computing clusters
Cloud infrastructure
AI/ML systems
Even platforms like Google, Amazon, and Meta Platforms run their infrastructure largely on Linux-based systems.
3. The deeper historical perspective
Originally, computer science was indeed a scientific and engineering discipline:
Numerical simulations
Physics modeling
Aerospace computing
Mathematical computation
Think of fields like:
Computational Physics
Computational Fluid Dynamics
Scientific Computing
My own interests—like studying OpenFOAM, Mantaflow, GPU programming, simulation, and Julia programming language—fit exactly into this tradition.
4. What is really happening
A better description might be:
Consumer computing and engineering computing are diverging again.
Consumer layer → mobile apps, web, AI tools
Engineering layer → Linux, HPC, simulation, GPUs
And the second layer is increasingly driven by engineers, physicists, and mathematicians, especially in areas like:
simulation
AI
computational science
scientific visualization
Exactly the ecosystem I am exploring with OpenGL, Mantaflow, OpenFOAM, Julia, etc
💡 A deeper observation:
The biggest shift is not Windows → Linux.
It is “Software as product” → “Computation as science and infrastructure.”
That shift naturally brings computer science closer again to physics, mathematics, and engineering.
Thursday, March 12, 2026
From My Computer to This PC - you will own nothing and be happy - the rise and fall of Windows PC...
1. The Era of “My Computer” (1980s–2000s)
The early PC era was about personal ownership and control.
Companies like
Microsoft
IBM
Intel
created a system where:
You bought hardware
You installed software locally
Your files lived on your machine
Operating systems like:
Windows 95
Windows XP
reinforced the concept of “My Computer.”
You had:
Local control
Offline capability
Permanent ownership of software licenses
This was the golden age of personal computing sovereignty.
2. The Shift Begins (2010s)
The model started changing.
Major shifts:
Cloud Computing
Platforms like:
Microsoft Azure
Google Drive
Dropbox
moved data from personal machines to remote servers.
Software Subscriptions
Traditional purchase → subscription model
Example:
Microsoft Office → Microsoft 365
You no longer own the software — you rent it.
3. The Rise of Platform Lock-In
Modern ecosystems increasingly control the user environment.
Examples:
Windows 11 requiring Microsoft accounts
Cloud-based authentication
Telemetry and data collection
The PC becomes less independent and more connected to corporate infrastructure.
4. The New Model: “Your Computer Is a Terminal”
The trend now is toward:
Cloud desktops
Streaming applications
Web-based software
Examples:
Windows 365 (Cloud PC)
Google ChromeOS
In these systems:
Your apps run in the cloud
Your data lives on company servers
Your device becomes just an access terminal
5. The Counter-Movement
Many technologists push back with open and local computing.
Alternatives include:
Linux
FreeCAD
Blender
These emphasize:
Local ownership
Open source transparency
Offline capability
Interestingly, my own interest in FreeCAD, OpenGL, and simulation sits squarely in this “sovereign computing” movement.
6. The Big Question
The future may split into two computing worlds:
Consumer world
Cloud apps
Subscriptions
Locked ecosystems
Engineering / research world
Local computing power
Open software
Full system control
High-end engineering (CFD, simulation, graphics) still needs local compute sovereignty.
In short:
The PC is evolving from “my computer” → “their platform.”
But in domains like simulation, graphics, and scientific computing, the traditional power-user PC is far from dead.
Sunday, March 8, 2026
Usefulness of Julia in engineering syllabus - we must include it in the engineering curriculum...
Hey guys... today I want to write about the basic hindrance of engineering college studies. You know the problem - modern-day industries want engineers who can code, who are right at the juncture of engineering and software. Engineering education is beyond just a few theories, complex mathematical formulae, and examinations to test you on such areas. It's also about visualizing and simulating the results of such theories.
So far, the system in engineering colleges is somewhat like
MATLAB for modeling
Python for data
C++ for performance
Simulink for block diagrams
And now comes the Julia... it collapses all these layers.
You can:
Write high-level control logic
Drop to numerical linear algebra
Move into differential equation solvers
Even implement custom integrators
All in one language...
With sophisticated libraries in Julia, like differentialequations.jl and many such, the engineers have got the right tool for modelling and visualizing the maths and engineering problems...
Let's welcome Julia to the engineering colleges.
Today I was playing around with my college days' engineering education, namely RLC circuits, and found how Julia can transform it through intuitive visualization of the output - a damped waveform. We can visualize the output waveform by varying R, L, and C, yielding a powerful visual tool for a better understanding of basic circuitry theorems.
Here's the video of today's Julia experimentation - RLC series circuit...
And here's the simulation of an RLC parallel circuit.
Saturday, March 7, 2026
Wastage of engineering talents in Bharat - can a want to be Vishwaguru afford it?
Several studies and reports give a clear picture of the trend in India (Bharat). The numbers are quite striking.
1. How many engineers actually work in engineering?
- India produces about 1.5 million (15 lakh) engineering graduates every year.
- However only around 10–20% end up in core engineering jobs.
- Some studies say only about 7% are suitable for core engineering roles due to skill gaps.
👉 So roughly:
| Category | Approx % |
|---|---|
| Core engineering jobs | 10–20% |
| IT / software jobs | 20–30% |
| Non-engineering careers (MBA, UPSC, banking, etc.) | 40–60%+ |
2. Engineers moving to MBA
This is the largest migration from engineering.
- Around 75% of MBA aspirants in India are engineers.
- Many top MBA institutes historically had 60–70% engineering students.
Reasons:
- Better salary growth
- Management roles
- Escape from low-pay engineering jobs
3. Engineers moving to UPSC / Civil Services
Engineers dominate the civil services exam.
- Share of engineers among selected candidates increased from 46% in 2011 to about 65% by 2020.
- In recent years over 70% of civil servants come from science/engineering backgrounds.
That means a huge fraction of India’s best engineers move to bureaucracy instead of technology.
4. Why engineers leave engineering
Several structural reasons:
1️⃣ Massive oversupply
- India produces far more engineers than industry can absorb.
- Only 300k new tech jobs vs ~900k–1.5M graduates yearly.
2️⃣ Salary problem
Typical starting salaries:
- Core engineering: ₹2.5–4 LPA
- MBA roles: ₹10–25 LPA (top colleges)
3️⃣ Poor quality of many colleges
Thousands of low-quality engineering colleges produce graduates with weak practical skills.
4️⃣ Social prestige
Families prefer:
- IAS / IPS
- Corporate management
- Banking
These roles are seen as higher status than engineering work.
5. The paradox of India
India produces one of the largest numbers of engineers in the world, yet:
- Many engineers never work as engineers
- Top talent moves to UPSC, MBA, consulting, finance
This is why some policymakers even call it “waste of national technical talent.”
✅ Simple takeaway
Out of 100 engineering graduates in India:
- 10–20 → core engineering
- 20–30 → IT/software
- 40–60+ → MBA, UPSC, banking, consulting, entrepreneurship, etc.
Friday, March 6, 2026
A Simple Cloth Simulation in Julia — Inspired by My Son’s Blender Experiments
Four years ago, I watched my son Ridit, in class V back then, experimenting with cloth and soft-body simulations in Blender. At that time he was deeply interested in learning how modern graphics tools simulate physical behaviour such as cloth, smoke, and rigid body dynamics.
One of his experiments is captured in this video:
Watching him explore Blender’s simulation tools sparked a thought in my mind:
Could I reproduce a simplified cloth simulation myself using code?
Years later, while exploring scientific computing with Julia, I decided to attempt exactly that.
The result is a small but interesting Verlet-integration based cloth simulation written entirely in Julia.
Why Verlet Integration?
In physics simulations used in games and graphics engines, Verlet integration is very popular because:
• It is simple
• It is numerically stable
• It does not explicitly require velocity storage
Many cloth simulators in early game engines relied on this technique.
The basic idea is:
$$
x_{new} = x_{current} + (x_{current} - x_{previous}) + a\Delta t^2
$$
Where:
(x_{current}) → current position
(x_{previous}) → previous position
(a) → acceleration (gravity, wind etc.)
Representing Cloth as a Grid
A cloth can be represented as a grid of particles connected by constraints.
Each particle stores:
Current position
Previous position
Neighbouring particles are connected by distance constraints that maintain the cloth structure.
o---o---o---o
| | | |
o---o---o---o
| | | |
o---o---o---o
Some particles are pinned so the cloth does not fall entirely.
The Julia Implementation
Below is the Julia program that simulates the cloth.
And here is the video if we run this application.
What the Simulation Does
The simulation includes:
1. Gravity
gravity = [0.0,-9.8]
Every particle experiences downward acceleration.
2. Wind Force
wind = [2*sin(0.05*step),0.0]
A sinusoidal wind creates cloth fluttering.
3. Constraint Relaxation
Multiple iterations enforce distance constraints so the cloth maintains its shape.
for k in 1:6
satisfy_constraints()
end
This technique is commonly used in Position Based Dynamics.
Visual Result
The script generates an animated GIF showing a cloth hanging from the top row while wind and gravity deform it dynamically.
Even with a few dozen lines of code, we get a convincing physical effect.
What Makes Julia Interesting for Graphics Simulation
Working with Julia gives several advantages:
• Fast numerical computation
• Simple array operations
• Easy prototyping for physics simulations
• Smooth transition from mathematics to implementation
This makes it attractive for engineers exploring scientific computing, graphics, and simulation together.
A Personal Reflection
This small experiment reminded me of the moment I watched my son exploring cloth simulation in Blender years ago.
Back then he was experimenting visually.
Today I tried to rebuild the physics underneath that visual tool.
Sometimes inspiration in engineering does not come from textbooks — it comes from watching curiosity in the next generation.
And that curiosity often pushes us to explore deeper layers of science and software.
Thursday, February 26, 2026
Why Julia Is Becoming So Popular Among SciML Engineers And How Rebuilding My Old FFT Spectrum Analyzer Opened a New Railway Safety Perspective
Back in 2012, I wrote a small experimental piece on building a simple FFT-based spectrum analyzer:
At that time, it was more about curiosity. FFT fascinated me. The idea that a signal in time could reveal its hidden structure in frequency felt almost magical.
Fast forward to today.
I am revisiting that same idea — but this time using Julia, and not just for visualization, but for building something that could contribute to modern railway track safety systems.
And that’s when I realized why Julia is becoming so popular among the SciML (Scientific Machine Learning) community.
The Shift: From Scripting to Scientific Computing
In 2012, building a spectrum analyzer was largely:
A signal processing experiment
A learning exercise
A visualization tool
But today, with Julia, the same FFT analyzer becomes:
A condition monitoring prototype
A vibration diagnostics engine
A predictive maintenance building block
That shift is profound.
Why SciML Engineers Love Julia
The SciML ecosystem — led by projects like SciML — is not just about machine learning. It’s about merging:
Differential equations
Physics-based modeling
Optimization
Machine learning
High-performance computing
Julia allows all of this in one language.
1️⃣ Performance Without Leaving the Language
FFT in Julia uses FFTW under the hood.
You write:
fft(signal)
And you get near C-level performance.
No bindings.
No external compilation workflow.
No switching between Python and C++.
For someone who enjoys going deep into engineering mathematics, that matters.
2️⃣ Multiple Dispatch Feels Like Engineering Thinking
As someone who loves system design and patterns, I noticed something interesting.
In C++ or Java, you think in terms of classes and inheritance.
In Julia, you think in terms of:
Mathematical structures
Generic functions
Behavior based on types
It feels closer to how engineers think about systems.
Not "object owns behavior" —
but "system responds based on physical type."
That mental alignment is powerful.
3️⃣ From FFT to Railway Safety
Let’s connect this back to my spectrum analyzer journey.
A railway track under load behaves like a vibrating beam.
When a crack develops, stiffness changes.
That produces high-frequency bursts in vibration signals.
With Julia, I can:
Simulate the rail as a mass-spring-damper system
Inject a stiffness drop
Perform FFT
Detect high-frequency anomalies
Add ML-based classification
All in one environment.
Modern railway systems, including those used by Indian Railways and Deutsche Bahn, rely heavily on:
Vibration analytics
Spectral energy monitoring
Predictive maintenance
What began as a simple FFT experiment now becomes a prototype for rail crack detection.
That evolution mirrors Julia’s evolution.
SciML Is More Than Machine Learning
SciML is about:
Embedding physical laws into ML
Solving differential equations efficiently
Combining simulation with learning
Using Julia, I can go from:
\[ m \ddot{x} + c \dot{x} + k x = F(t) \]
to spectral fault detection
to anomaly classification
without leaving the language.
That continuity is rare.
Why This Matters for Engineers
Many engineers hesitate to enter machine learning because:
Python feels high-level but slow
C++ feels powerful but heavy
MATLAB feels proprietary
Julia sits in a sweet spot:
Scientific syntax
High performance
Open ecosystem
Growing SciML community
And most importantly:
It lets you experiment at system level.
My Personal Realization
Rebuilding my old FFT-based spectrum analyzer in Julia was not nostalgia.
It was a rediscovery.
The same math.
The same Fourier transform.
But now:
Faster
Cleaner
Extensible
Connected to real-world safety applications
That is why Julia is becoming popular among SciML engineers.
Because it doesn’t just let you code.
It lets you think in equations and deploy in production.
Final Thought
What started as a simple blog post on FFT years ago has evolved into a small predictive maintenance prototype for railway safety.
Julia didn’t just make it easier.
It made it natural.
And when a language feels natural to scientists and engineers —
That’s when it starts becoming popular.
Here's the source code...
And here's when we run the application...
📈 Time Plot
A sharp disturbance around 1 second.
📊 Frequency Plot
A strong peak near:
800 Hz
🖥 Console Output
⚠️ Possible Rail Crack Detected (High-Frequency Burst)




