

The profile of Sonny and their contact details have been verified by our experts
Sonny
- Rate €8
- Response 1h
-
Students2
Number of students Sonny has accompanied since arriving at Superprof
Number of students Sonny has accompanied since arriving at Superprof

€8/h
1st lesson free
- Physics
Quantum Reality - Full Stack AI enablement. GPU + Qubit + DWAVE -/+ IonQ π= Quantum Actuality
- Physics
Lesson location
Recommended
Sonny is a respected tutor in our community. He is highly recommended for his commitment and the quality of his lessons. An excellent choice to progress with confidence.
About Sonny
Target Audience and Prerequisites
Audience:
Software engineers, data scientists, researchers, or students exploring quantum advantage in hybrid settings.
Prerequisites: Basic linear algebra, probability, Python programming. Familiarity with classical ML or HPC is helpful but not required.
No prior quantum experience needed—foundational modules build it.
Course Duration and Format
Length:
5 Student Minimum
2 one hour lectures with 1 hour Q&A weekly
12 weeks (or self-paced equivalent), with 4-6 hours/week.
- Format: Lectures + hands-on labs (using simulators and real cloud access via IonQ, Rigetti, or open platforms), assignments, and a capstone hybrid project.
-Tools/Platforms: Qiskit, Cirq, PennyLane (for hybrid differentiable programming), pyQuil/Forest (Rigetti), Ocean (D-Wave), Azure Quantum or Amazon Braket for hybrid sessions, classical HPC elements (e.g., GPU integration).
About the lesson
- Primary
- Junior Cycle
- Transition Year
- +5
levels :
Primary
Junior Cycle
Transition Year
Fifth Year
Sixth Year
Adult education
Master's degree
Doctorate degree
- English
All languages in which the lesson is available :
English
Course Objectives
By the end of the course, participants will be able to:
- Explain core quantum principles (superposition, entanglement, measurement) and their limitations in real hardware.
- Design, simulate, and execute hybrid quantum-classical algorithms (e.g., variational quantum algorithms, quantum machine learning).
- Navigate the full quantum-classical stack: hardware control, compilers, runtime, middleware, and application layers.
- Integrate quantum backends (cloud or simulators) with classical frameworks like PyTorch/TensorFlow for end-to-end workflows.
- Evaluate trade-offs in hybrid models for applications in optimization, chemistry, ML, and materials science.
- Discuss scalability challenges, error correction, and future fault-tolerant integration.
- Quantum control engineering
- Full Stack orchestration using Qiskit and Cirq frameworks
Quantum-Classical Entanglement:
Leveraging Full-Stack Hybrid Models".
This course bridges quantum and classical computing, focusing on hybrid systems where quantum processors (leveraging superposition, entanglement, and interference) collaborate tightly with classical hardware and software.
It emphasizes practical "full-stack" integration—from hardware to high-level applications—drawing on platforms from companies like IonQ (trapped-ion, first publicly traded pure-play quantum firm), Rigetti (superconducting), and D-Wave (annealing with hybrid solvers), alongside broader ecosystems like IBM Qiskit, PennyLane, and HPC-QC frameworks.
The course targets intermediate learners (e.g., computer science, physics, or engineering backgrounds) interested in NISQ-era (Noisy Intermediate-Scale Quantum) realities and near-term hybrid workflows.
It highlights how classical systems handle orchestration, error mitigation, optimization loops, and data preprocessing, while quantum components accelerate intractable subproblems via entanglement-enabled parallelism.
Recommendations
Recommendations come from relatives, friends and acquaintances of the teacher
Worked with Sonny to tighten my understanding of storage and infrastructure as I prep for some of the newer large-scale data center environments coming online. He focuses on how systems actually behave under load—latency, bottlenecks, failure modes—not just surface-level concepts. That translated directly to how I evaluate and think through infrastructure decisions. Straightforward, technical, and useful. If you’re aiming at modern data center or AI-adjacent roles, he’s worth the time.
Sonny is among the best people i have ever met. A military trained genius with a heart of gold. Sonny is an ambitious go getter, with patience and compassion. I highly recommend my friend as a super tutor.
I met Sonny in 2026 on a chairlift at Beaver Creek Ski Resort in Colorado. When we realized that we attended the same church, we became fast friends.
Sonny is intelligent, high energy and always exudes a positive vibe. He is a loyal friend and adds value to the lives of those who know him.
View more recommendations
Rates
Rate
- €8
Pack prices
- 5h: €40
- 10h: €80
online
- €8/h
free lessons
The first free lesson with Sonny will allow you to get to know each other and clearly specify your needs for your next lessons.
- 1hr
Similar Physics tutors in Austin
Dr KHOBAIB (Highly experienced teacher)
Dublin & Online
- €32/h
Deb
Cork & Online
- €37/h
- 1st lesson free
Eduardo
Dublin & Online
- €50/h
Dr Abdur Rahman
Dublin & Online
- €30/h
Shane
Laytown & Online
- €25/h
- 1st lesson free
Róisín
Dublin & Online
- €40/h
Dr Mary (Highly Professional Full-Time Tutor)
Dublin & Online
- €65/h
Abena
Dublin & Online
- €20/h
Dr Brayan
Limerick & Online
- €22/h
Matthew
Dublin & Online
- €40/h
Hulya
Cork & Online
- €38/h
- 1st lesson free
Nouman
Limerick & Online
- €25/h
- 1st lesson free
Ethan
Dublin & Online
- €25/h
- 1st lesson free
Intasar
Dublin & Online
- €35/h
- 1st lesson free
Sanjay
Dublin 15 & Online
- €40/h
- 1st lesson free
Aaqid
Dublin 8 & Online
- €24/h
- 1st lesson free
Tasneem
Sligo & Online
- €35/h
- 1st lesson free
Eóghan
Blessington & Online
- €35/h
- 1st lesson free
Joi
Dublin & Online
- €40/h
Yasmin
Dublin & Online
- €28/h
- 1st lesson free
-
See Physics tutors
