#machinelearningtechniques
Explore tagged Tumblr posts
govindhtech · 25 days ago
Text
Qiskit Machine Learning Community: Open Source Quantum AI
Tumblr media
AI and Quantum Computing: Qiskit Launches Open-Source Machine Learning Library. Machine learning and quantum computing may boost processing power. As traditional machine learning methods require greater computer resources, researchers are interested to see how quantum algorithms may improve or redefine them. The public release of Qiskit Machine Learning addresses this issue.
Works Qiskit Machine Learning
This Python tool aims to bridge quantum processing and machine learning. The open-source quantum machine learning library Qiskit Machine Learning supports quantum hardware and classical simulators. Wood, Anton Dekusar, Declan A. Millar, Takashi Imamichi, and Atsushi Matsuo from IBM Quantum developed it.
Empowering Quantum-Classical Hybrid Computing
Qiskit Machine Learning, a Python-based interface for merging quantum processes with machine learning methods, is a major improvement. The program addresses a major challenge: implementing theoretical quantum algorithms.
A high-level API simplifies interaction with genuine quantum hardware and classical simulation settings in the library. The accessibility of quantum machine learning allows researchers and non-specialists to study and employ quantum algorithms. The library allows experienced quantum computational scientists and developers to customise and extend. Since 2019, it has grown from proof-of-concept code to a user-friendly, modular software.
Open-Source, Modular Design
Modularity and usability were prioritised in library development to ease prototyping and experimentation while preserving extensibility for sophisticated users. Its versatile design supports many quantum algorithms and machine learning models, supporting hybrid quantum-classical techniques.
The Apache 2.0 license encourages community contributions and accessibility. Its open-source nature promotes transparency. The vast number of submissions shows cooperation driving quantum machine learning improvement and interest. Researchers and engineers in software engineering, machine learning theory, and quantum algorithm design created the open-source contribution.
Important Elements and Algorithms
Key machine learning approaches are grouped by Qiskit ML library class hierarchy:
Methods using kernels
Methods using neural networks
Bayesian methods
These methods address regression and classification, two popular machine learning problems.
The library emphasises fidelity quantum kernels, trainable kernels, quantum neural networks, and quantum SVMs. These are provided by Qiskit primitives Sampler and Estimator under fundamental algorithms.
Library architecture facilitates quantum computations like:
VQE algorithms find a quantum system's lowest energy state.
QSVMs—quantum support vector machines.
Quantum neural networks.
User-Friendly Interface, Smooth Integration
The API is user-friendly with its high-level interface that explains quantum programming. A simple vocabulary lets users design machine learning models and quantum circuits, letting them focus on algorithm logic.
It works well with TensorFlow and PyTorch. Utilising current tools and methodologies, this compatibility lowers the entry barrier for machine learning practitioners interested in quantum capabilities.
Numerous Future Applications
Researchers are exploring new quantum machine learning applications with this library. Locations may include:
Finding new medications
Material science
Financial modelling
Image recognition
Industry partners aim to develop and implement quantum machine learning systems.
In order to handle larger datasets and more complex calculations, Qiskit Machine Learning will be developed to be more robust and scalable. Considerations include distributed computing and data compression.
Researchers are also looking for ways to reduce noise and decoherence, which reduce quantum computation precision, to improve quantum machine learning algorithms. Documentation and seminars are planned to accelerate quantum machine learning application development. To keep the library alive and usable, the development team monitors performance, patches bugs, and adds functionality.
Release of the Qiskit Machine Learning library will enable machine learning community use quantum computers more effectively, encourage hybrid quantum-classical approaches, and create new pathways for solving tough issues.
0 notes
thedevmaster-tdm · 9 months ago
Text
youtube
Unlocking the Secrets of LLM Fine Tuning! 🚀✨
1 note · View note
sarah-cuneiform · 2 years ago
Text
0 notes
processindustrytspl · 3 years ago
Text
Machine Learning Model Monitoring in Process Industry (Post Deployment)
Machine learning by definition is a relationship which is established between a set of input variables and an output variable. Specifically, in process industry identification of this relationship becomes a difficult task, as it becomes highly non-linear at cases. The internal dynamics and behavior of the operator operating the process is something that comes under the interest of the ML/AI models. It tries to capture all of such instances which can be realized through the data it has been exposed to.
Explore more@
Tumblr media
0 notes
globaltechcouncil-blog · 6 years ago
Link
0 notes
thedevmaster-tdm · 9 months ago
Text
youtube
Unlocking the Secrets of LLM Fine Tuning! 🚀✨
1 note · View note
thedevmaster-tdm · 9 months ago
Text
youtube
How to Fine-Tune Large Language Models: Expert Guide to Customizing GPT, Llama, and Bard
1 note · View note