alihussain5499
Seeking an opportunity to work in Data Science , Artificial intelligence and Machine Learning domain.
Bengaluru
Pinned Repositories
assignments-
cluster-the-skilled-candidate-profile
There are almost 400 candidates applied for these role. Your assignment is to build a Machine Learning model , which will help the management to Identify the potential candidates for both the roles from the given data.
CNN
Datasets
deep-learning-
GRU
handwritten-digit-recognization
In-vitro-fertilization-IVF-Prediction-
: In vitro fertilization is a complex series of procedures used to help with fertility or prevent genetic problems and assist with the conception of a child. I had taken the data which was already processed with pertain patients .I build a predictive model with the given data successfully.
inspection_of_casting_products
Context This dataset is of casting manufacturing product. Casting is a manufacturing process in which a liquid material is usually poured into a mould, which contains a hollow cavity of the desired shape, and then allowed to solidify. Reason for collect this data is casting defects!! Casting defect is an undesired irregularity in a metal casting process. There are many types of defect in casting like blow holes, pinholes, burr, shrinkage defects, mould material defects, pouring metal defects, metallurgical defects, etc. Defects are an unwanted thing in casting industry. For removing this defective product all industry have their quality inspection department. But the main problem is this inspection process is carried out manually. It is a very time-consuming process and due to human accuracy, this is not 100% accurate. This can because of the rejection of the whole order. So it creates a big loss in the company. We decided to make the inspection process automatic and for this, we need to make deep learning classification model for this problem. contain These all photos are top view of submersible pump impeller(google search for better understanding). The dataset contains total 7348 image data. These all are the size of (300*300) pixels grey-scaled images. In all images, augmentation already applied. Also uploaded images size of 512x512 grayscale. This data set is without Augmentation. This contains 519 okfront and 781 deffront impeller images. For capturing these images requires stable lighting, for this we made a special arrangement. there are mainly two categories:- 1) Defective 2)Ok making classification model we already split data for training and testing into two folders. Both train and test folder contains deffront and okfront subfolders. train:- deffront have 3758 and okfront have 2875 images test:- deffront have:- deffront have 453 and ok_front have 262 images Acknowledgements We wouldn't be here without the help of PILOT TECHNOCAST, Shapar, Rajkot. we have to thank them for constant support and allowing us to work for this problem.
LSTM
alihussain5499's Repositories
alihussain5499/inspection_of_casting_products
Context This dataset is of casting manufacturing product. Casting is a manufacturing process in which a liquid material is usually poured into a mould, which contains a hollow cavity of the desired shape, and then allowed to solidify. Reason for collect this data is casting defects!! Casting defect is an undesired irregularity in a metal casting process. There are many types of defect in casting like blow holes, pinholes, burr, shrinkage defects, mould material defects, pouring metal defects, metallurgical defects, etc. Defects are an unwanted thing in casting industry. For removing this defective product all industry have their quality inspection department. But the main problem is this inspection process is carried out manually. It is a very time-consuming process and due to human accuracy, this is not 100% accurate. This can because of the rejection of the whole order. So it creates a big loss in the company. We decided to make the inspection process automatic and for this, we need to make deep learning classification model for this problem. contain These all photos are top view of submersible pump impeller(google search for better understanding). The dataset contains total 7348 image data. These all are the size of (300*300) pixels grey-scaled images. In all images, augmentation already applied. Also uploaded images size of 512x512 grayscale. This data set is without Augmentation. This contains 519 okfront and 781 deffront impeller images. For capturing these images requires stable lighting, for this we made a special arrangement. there are mainly two categories:- 1) Defective 2)Ok making classification model we already split data for training and testing into two folders. Both train and test folder contains deffront and okfront subfolders. train:- deffront have 3758 and okfront have 2875 images test:- deffront have:- deffront have 453 and ok_front have 262 images Acknowledgements We wouldn't be here without the help of PILOT TECHNOCAST, Shapar, Rajkot. we have to thank them for constant support and allowing us to work for this problem.
alihussain5499/In-vitro-fertilization-IVF-Prediction-
: In vitro fertilization is a complex series of procedures used to help with fertility or prevent genetic problems and assist with the conception of a child. I had taken the data which was already processed with pertain patients .I build a predictive model with the given data successfully.
alihussain5499/corona-detection
alihussain5499/Object-Detection
alihussain5499/Time-Series-Rnn-with-TensorFlow
alihussain5499/predice_el_futuro-time-sereis-analysis-
predice_el_futuro
alihussain5499/handwritten-digit-recognization
alihussain5499/Datasets
alihussain5499/Python-
alihussain5499/assignments-
alihussain5499/Recommended-system-
alihussain5499/RL-Q-learning-eq.
alihussain5499/RNN
alihussain5499/CNN
alihussain5499/LSTM
alihussain5499/GRU
alihussain5499/Natural-language-processing-
alihussain5499/deep-learning-
alihussain5499/machine-learning-
alihussain5499/cluster-the-skilled-candidate-profile
There are almost 400 candidates applied for these role. Your assignment is to build a Machine Learning model , which will help the management to Identify the potential candidates for both the roles from the given data.