Chauraha Municipal Board, Jhansi, India - 284001.
Details verified of Hariom Singh✕
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Hindi Mother Tongue (Native)
English Basic
Lucknow university Pursuing
Bachelor of Technology (B.Tech.)
Chauraha Municipal Board, Jhansi, India - 284001
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Class Location
Online Classes (Video Call via UrbanPro LIVE)
Student's Home
Tutor's Home
Course Duration provided
1-3 months
Seeker background catered to
Educational Institution, Individual, Corporate company
Certification provided
No
Python applications taught
Web Development with Python , Machine Learning with Python, Automation with Python , Core Python
Class Location
Online Classes (Video Call via UrbanPro LIVE)
Student's Home
Tutor's Home
Class Location
Online Classes (Video Call via UrbanPro LIVE)
Student's Home
Tutor's Home
Years of Experience in Web Designing Classes
1
Teaches web designing at proficiency level
Basic Web Designing
Class Location
Online Classes (Video Call via UrbanPro LIVE)
Student's Home
Tutor's Home
Years of Experience in Java Training Classes
1
Teaches
Java Full Stack Developer, Java Real Time Projects, Core Java
Certification training offered
No
1. Which classes do you teach?
I teach C Language, Java Training, Python Training and Web Designing Classes.
2. Do you provide a demo class?
Yes, I provide a free demo class.
3. How many years of experience do you have?
I have been teaching for less than a year.
Answered 6 hrs ago Learn IT Courses/Programming Languages/Python
Yes, JavaScript (V8) is generally faster than Python in most cases.
Answered 6 hrs ago Learn IT Courses/Programming Languages/Python
Yes, Python is generally used more than Java nowadays, especially in areas like AI, machine learning, data science, web development, and automation. However, Java still remains strong in enterprise applications, Android development, and large-scale systems.
Answered 7 hrs ago Learn IT Courses/Programming Languages/Python
Define the Problem
Identify the specific problem you aim to solve (e.g., recommendation systems, chatbots).
Select the most suitable AI approach: machine learning, deep learning, NLP, etc.
Collect and Prepare Data
Gather data from sources like Kaggle or UCI ML Repository.
Preprocess it: clean, normalize, handle missing values, and remove duplicates.
Apply data augmentation when required (especially for deep learning projects).
Choose Tools and Libraries
Machine Learning: scikit-learn.
Deep Learning: TensorFlow, PyTorch, Keras.
NLP: spaCy, NLTK, Transformers.
Computer Vision: OpenCV, PIL.
Data Handling: pandas, NumPy.
Exploratory Data Analysis (EDA)
Use visualization tools like matplotlib and seaborn.
Analyze patterns and correlations in the dataset.
Conduct feature engineering to select and transform important variables.
Choose and Train a Model
Pick a suitable model (e.g., CNN for images, Transformers for NLP).
Split the dataset into training and testing sets.
Train the model with appropriate hyperparameters, applying cross-validation for performance enhancement.
Evaluate the Model
Use metrics such as Accuracy, Precision, Recall, and F1-score for classification; RMSE, MAE, and R² for regression tasks.
Adjust to avoid overfitting or underfitting based on evaluation results.
Optimize and Fine-Tune
Perform hyperparameter tuning (e.g., GridSearchCV, RandomizedSearchCV).
Use techniques like dropout or batch normalization (for deep learning).
Test different architectures to improve outcomes.
Deploy the Model
Wrap the model as an API using Flask or FastAPI.
Deploy on platforms like AWS, GCP, or Heroku.
Create an interactive user interface using Streamlit or Gradio if needed.
Monitor and Improve
Regularly monitor the model's performance.
Update it with new data to maintain accuracy and relevance.
Incorporate user feedback for continuous improvements.
This workflow ensures you systematically approach AI project development, balancing both technical and practical aspects for success. Let me know if you'd like to dive deeper into any step!
Class Location
Online Classes (Video Call via UrbanPro LIVE)
Student's Home
Tutor's Home
Course Duration provided
1-3 months
Seeker background catered to
Educational Institution, Individual, Corporate company
Certification provided
No
Python applications taught
Web Development with Python , Machine Learning with Python, Automation with Python , Core Python
Class Location
Online Classes (Video Call via UrbanPro LIVE)
Student's Home
Tutor's Home
Class Location
Online Classes (Video Call via UrbanPro LIVE)
Student's Home
Tutor's Home
Years of Experience in Web Designing Classes
1
Teaches web designing at proficiency level
Basic Web Designing
Class Location
Online Classes (Video Call via UrbanPro LIVE)
Student's Home
Tutor's Home
Years of Experience in Java Training Classes
1
Teaches
Java Full Stack Developer, Java Real Time Projects, Core Java
Certification training offered
No
Answered 6 hrs ago Learn IT Courses/Programming Languages/Python
Yes, JavaScript (V8) is generally faster than Python in most cases.
Answered 6 hrs ago Learn IT Courses/Programming Languages/Python
Yes, Python is generally used more than Java nowadays, especially in areas like AI, machine learning, data science, web development, and automation. However, Java still remains strong in enterprise applications, Android development, and large-scale systems.
Answered 7 hrs ago Learn IT Courses/Programming Languages/Python
Define the Problem
Identify the specific problem you aim to solve (e.g., recommendation systems, chatbots).
Select the most suitable AI approach: machine learning, deep learning, NLP, etc.
Collect and Prepare Data
Gather data from sources like Kaggle or UCI ML Repository.
Preprocess it: clean, normalize, handle missing values, and remove duplicates.
Apply data augmentation when required (especially for deep learning projects).
Choose Tools and Libraries
Machine Learning: scikit-learn.
Deep Learning: TensorFlow, PyTorch, Keras.
NLP: spaCy, NLTK, Transformers.
Computer Vision: OpenCV, PIL.
Data Handling: pandas, NumPy.
Exploratory Data Analysis (EDA)
Use visualization tools like matplotlib and seaborn.
Analyze patterns and correlations in the dataset.
Conduct feature engineering to select and transform important variables.
Choose and Train a Model
Pick a suitable model (e.g., CNN for images, Transformers for NLP).
Split the dataset into training and testing sets.
Train the model with appropriate hyperparameters, applying cross-validation for performance enhancement.
Evaluate the Model
Use metrics such as Accuracy, Precision, Recall, and F1-score for classification; RMSE, MAE, and R² for regression tasks.
Adjust to avoid overfitting or underfitting based on evaluation results.
Optimize and Fine-Tune
Perform hyperparameter tuning (e.g., GridSearchCV, RandomizedSearchCV).
Use techniques like dropout or batch normalization (for deep learning).
Test different architectures to improve outcomes.
Deploy the Model
Wrap the model as an API using Flask or FastAPI.
Deploy on platforms like AWS, GCP, or Heroku.
Create an interactive user interface using Streamlit or Gradio if needed.
Monitor and Improve
Regularly monitor the model's performance.
Update it with new data to maintain accuracy and relevance.
Incorporate user feedback for continuous improvements.
This workflow ensures you systematically approach AI project development, balancing both technical and practical aspects for success. Let me know if you'd like to dive deeper into any step!
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