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Thesis Info

Author

Haris Bashir

Supervisor

Khubaib Ahmed

Department

Department of Physics

Program

BEL

Institute

COMSATS University Islamabad

Institute Type

Public

City

Islamabad

Province

Islamabad

Country

Pakistan

Thesis Completing Year

2017

Thesis Completion Status

Completed

Subject

Physics

Language

English

Added

2021-02-17 19:49:13

Modified

2023-01-06 19:20:37

ARI ID

1676720867681

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21. Al-Anbiya/The Prophets

21. Al-Anbiya/The Prophets

I/We begin by the Blessed Name of Allah

The Immensely Merciful to all, The Infinitely Compassionate to everyone.

21:01
The time of their reckoning draws ever closer to the people as it starts while experiencing their death,
and yet in their heedlessness of its coming, they keep turning away.

21:02
Whenever a new Message comes to them from their Rabb - The Lord,
they listen to it playfully.

21:03
Their hearts are preoccupied with trivial things.
Yet, concealing their inner thoughts, the unjust/wrongdoers say in their private conversations:
‘Is this Muhammad not a human being like you?
Will you, then, submit to his magic, with your eyes wide open?’

21:04
He - The Prophet – said:
‘My Rabb - The Lord Knows whatever you confer and conspire and, in fact, every word
spoken within the celestial realm and the terrestrial world.
For HE is the All-Listening, the All-Knowing.’

21:05
No way!
‘Instead, they allege:
The Qur’an is just a collection of his jumbled false dreams.
Perhaps he has fabricated it.
Rather he is a poet!’
If this is not the case, then let him bring us a miraculous Sign, as were the former Messengers assigned with Signs.

21:06
Not one of the habitation(s) which WE destroyed in punishment before they had believed.
So, will they, then, be willing to believe or get destroyed?

21:07
And WE have not assigned any Messenger before you except for those men on to whom WE revealed -
so just ask scholars of the Former Divine Scriptures, if you do not know.

21:08
And WE did not make for...

سِکھ مَت کا فلسفہ عبادت اور اُن پر تعلیماتِ اسلامیہ کے اثرات (گُرو گَرنتھ صاحب کی روشنی میں) The philosophy of worship in Sikhism and the effects of Islamic teachings on them (In the light of Gurū Granth Ṣāḥib)

In Sikhism, the concept of worship revolves around remembrance of God and prayers to God Almighty. Various terms are used for worship in Sikhism among them are Naam Japna, Path Karna and Naam Simran. The best form of worship is to always meditate on the name of God and to sing the words of the Sikh Gurus in a humorous manner. This concept of worship in Sikhism has a limited meaning, while the comprehensive system of worship offered by Islam does not exist in Sikhism. However, inspired by Islamic teachings, prayers, remembrance of God, selection of words for worship from the Holy Book and the construction of places of worship in the Islamic style are arguments to accept the influence of Islam. Sikhism teaches to seek God’s pleasure through worship and to be freed from the cycle of reincarnation through good deeds and to worship the only true God.In this article a detailed study is presented regarding the philosophy of worship in Sikhism and impacts of Islamic teachings on them.

Exploration of Computational Intelligence Techniques for Static Time-Series and Imagery Bio-Signal Processing

This thesis presents the application of computational intelligence techniques to signal processing of static, time-series and imagery bio-signal data. In the process two very important diseases were diagnosed. These diseases are breast cancer and cardiac arrhythmia. Out of the di erent detection techniques for breast cancer the ones that were used in this research are the Fine Needle Aspiration (FNA) and the mammography. Thene needle aspiration (FNA) procedure consists of excising a small sample of suspected lesion from the breast using ane needle. The sample is studied under a microscope for the cell sizes and shapes. From the collective characteristics of these features the pathologist decides whether the cell is malignant(cancerous) or benign(noncancerous). Data for the FNA technique was obtained from the Diagnostic Wisconsin Breast Cancer (DWBC) database, an example of static data. The database contains many malignant and benign sample feature value and their results. To assist physicians in diagnosis, a computational intelligence detection approach was devised. In this method experiments were performed using the computational intelligence network of Cartesian Genetic Programming evolved Arti cial Neural Network (CGPANN). Feature values of the samples were normalized and a part of them used to train a CGPANN. The trained network was then tested with rest of the samples. Experiments conducted with the FNA dataset resulted in more than 99% accuracy. The second diagnostic method, the mammography, is also used widely for breast cancer screening. It consists of taking a high resolution x-ray image of the breast that is suspected of cancer. The two main abnormalities in a breast can be masses and microcalci cations. In order to assist radiologists in diagnosis a method was developed, that can classify a mass or microcalci cation appearing in a mammogram to be either benign or malignant. The data for this work was obtained from the Digital Database for Screening Mammography (DDSM), an example for imagery data. The method consists of calculating the Haralick''s statistical parameters of the suspected lesion. A CGPANN network was trained with large number of these parameters, extracted from mammograms found in the database. The trained network classi ed both masses and microcalci cations with accuracy=90.58%, sensitivity=85.32% and speci city=95.84%. In the case of cardiac arrhythmia the ECG signals were obtained from MIT-BIH database, an example of time-series data. For automatic detection of Cardiac Arrhythmia an algorithm was developed. This algorithm applies digital signal processing and logical operations to the time domain Electro-Cardiogram (ECG) signal and hence detects the ducial points of an ECG complex. From theducial points, the lengths and slopes of a number of segments; and amplitudes of peaks are determined. These parameter values are applied to CGPANN to classify the beats. To make the system capable of classifying unknown ECG it was trained with the parameters extracted from ECG signals available at MIT-BIH database. All these parameters bear important information about the di erent arrhythmia. Three di erent experimental setups were designed, each setup improving the performance of the previous one. In the third setup, with the inclusion of digital logic unit, seven arrhythmia types were detected, with four types having accuracy value of 94% and above. In all experiments, the CGPANN wasrst trained with parameters extracted from a part of sample ECG, together with their arrhythmia types; and then tested with another part of the data. This algorithm can be implemented in real time on beat to beat basis. A future enhancement to this system is to implement the algorithm in programmable hardware and subsequently used in systems like Implantable Cardioverter De brilators (ICD) that need correct detection of life threatening beats to apply an electrical impulse to the heart at the right moment.