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House Price Prediction Through Machine Learning ML CD

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While your presentation may contain top-notch content, if it lacks visual appeal, you are not fully engaging your audience. Introducing our House Price Prediction Through Machine Learning ML CD deck, designed to engage your audience. Our complete deck boasts a seamless blend of Creativity and versatility. You can effortlessly customize elements and color schemes to align with your brand identity. Save precious time with our pre-designed template, compatible with Microsoft versions and Google Slides. Plus, it is downloadable in multiple formats like JPG, JPEG, and PNG. Elevate your presentations and outshine your competitors effortlessly with our visually stunning 100 percent editable deck.

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Content of this Powerpoint Presentation

Slide 1: House Price Prediction Through Machine Learning. State your company name and begin.
Slide 2: This is an Agenda slide. State your agendas here.
Slide 3: This slide shows Table of Content for the presentation.
Slide 4: This slide shows title for topics that are to be covered next in the template.
Slide 5: This slide showcases current problems faced by organization due to usage of traditional house prediction model such as market fluctuations, limited accuracy etc.
Slide 6: This slide presents difference in actual and predicted property price through traditional methods. It highlights major variance in different property prices
Slide 7: This slide shows title for topics that are to be covered next in the template.
Slide 8: This slides showcases machine learning benefits that can help to solve various problems faced by company due to traditional prediction methods.
Slide 9: This slide illustrates machine learning process for house price prediction. It includes data collection, feature engineering, model selection, deployment, evaluation etc.
Slide 10: This slide shows title for topics that are to be covered next in the template.
Slide 11: This slide illustrates machine learning concepts highlighting its ability to learn from data to predict outcomes. It showcases key usages such as data mining, NLP, fraud detection etc.
Slide 12: This slide showcases various types of machine learning algorithms that can help to analyze and generate insights from the data. Its key elements are supervised learning, clustering etc.
Slide 13: The slide compares traditional modeling with machine learning approaches. It outlines their respective methods and shows benefits of traditional modeling over machine learning.
Slide 14: This slide shows title for topics that are to be covered next in the template.
Slide 15: The slide provides the introduction of house price prediction data collection in machine learning. It enlists major attributes including property location, number of bedrooms etc.
Slide 16: The slide highlights Kaggle house prices, California housing prices, Boston housing dataset, Ames housing dataset and Melbourne housing market datasets.
Slide 17: The slide illustrates house dataset with area type, availability, location, size and historical price. It is utilized to develop house price prediction model.
Slide 18: This slide highlights list of parameters in checklist for effective data collection in house price prediction. It covers ensuring clear objectives, reliable sources etc.
Slide 19: This slide shows title for topics that are to be covered next in the template.
Slide 20: This slide showcases data preprocessing and can transform raw information. It also highlights benefits and steps involved in preprocessing.
Slide 21: This slide presents preprocessing of housing dataset features such as living area size, age of property, overall property condition etc.
Slide 22: This slide shows title for topics that are to be covered next in the template.
Slide 23: This slide showcases process that can help to conduct exploratory analysis on housing dataset. Its key steps are data collection, cleaning, identify correlated variables etc.
Slide 24: The slide presents correlation analysis to assess variables impact on house prices. It identifies features strongly correlated with sales price, assisting in predictive modeling etc.
Slide 25: This slide highlights statistics for numerical and categorical features in exploratory data analysis. It includes mean, median, min, max and standard deviation etc.
Slide 26: This slide shows title for topics that are to be covered next in the template.
Slide 27: This slide showcases introduction to feature extraction that can help in prediction process of machine learning. It also highlights key benefits of feature extraction.
Slide 28: This slide showcases techniques such as autoencoders, principal component analysis and bag of words that can help in feature extraction.
Slide 29: The slide covers key features needed for house price prediction. It includes numerical, ordinal, categorical, and binary categories etc.
Slide 30: The slide presents important features to consider for house price prediction, including property details like bedrooms, bathrooms, square footage, amenities etc.
Slide 31: This slide shows title for topics that are to be covered next in the template.
Slide 32: This slide showcases introduction to decision tree model which is used for various regression and classification tasks in machine learning.
Slide 33: The slide demonstrates decision tree model for house price prediction based on features like OverallQual, TotalBsmtSF, and GrLivArea.
Slide 34: This slide shows title for topics that are to be covered next in the template.
Slide 35: This slide showcases introduction to linear regression model that can help organization in predictive analytics. It also highlights various benefits of linear regression.
Slide 36: This slide illustrates process of using linear regression to predict house prices by defining dependent and independent variables leading to the outcome of interpreting coefficients.
Slide 37: This slide shows title for topics that are to be covered next in the template.
Slide 38: This slide showcases introduction to neural network which is used for prediction in machine learning. It includes three layers called input, output and hidden layer.
Slide 39: This slide presents neural network that can help in house price prediction. It include three layers which are input, output and hidden.
Slide 40: This slide shows title for topics that are to be covered next in the template.
Slide 41: This slide showcases introduction to random forest model that combines multiple decision trees to make accurate predictions. It also highlights key features of model.
Slide 42: The slide demonstrates random forest usage for house price prediction. It leverages multiple decision trees to compute average final prediction for final and accurate value prediction.
Slide 43: This slide shows title for topics that are to be covered next in the template.
Slide 44: This slide showcases machine learning model training overview that can help to make accurate house price prediction model.
Slide 45: This slide displays various components such as data, algorithm, parameters, loss function that can help in machine learning model training.
Slide 46: This slide showcases process that can help in machine learning model training. Its key steps are collecting and preparing data, selecting right algorithm and splitting data.
Slide 47: This slides presents various tools that can help organization to train machine learning model for house price prediction. Its key elements are framework type, language support, backend etc.
Slide 48: This slide shows title for topics that are to be covered next in the template.
Slide 49: This slide showcases various methods that can help to deploy machine learning model. Methods highlighted are batch deployment, real-time and streaming deployment.
Slide 50: This slide displays strategies that can help organization to deploy machine learning model. Various strategies are shadow deployment, A/B testing , blue/green etc.
Slide 51: This slide shows title for topics that are to be covered next in the template.
Slide 52: This slide showcases various metrics such as accuracy, precision, recall, F1 score that can help to assess performance of machine learning models.
Slide 53: This slide shows title for topics that are to be covered next in the template.
Slide 54: This slide showcases impact of leveraging machine learning model for house price prediction. It highlights benefits such as risk management, cost savings etc.
Slide 55: This slide shows all the icons included in the presentation.
Slide 56: This slide is titled as Additional Slides for moving forward.
Slide 57: This is Our Team slide with names and designation.
Slide 58: This slide shows SWOT analysis describing- Strength, Weakness, Opportunity, and Threat.
Slide 59: This is About Us slide to show company specifications etc.
Slide 60: This is a Timeline slide. Show data related to time intervals here.
Slide 61: This slide describes Line chart with two products comparison.
Slide 62: This slide presents Roadmap with additional textboxes. It can be used to present different series of events.
Slide 63: This slide depicts Venn diagram with text boxes.
Slide 64: This slide shows Pie Chart with data in percentage.
Slide 65: This is a Thank You slide with address, contact numbers and email address.

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    by Dexter Weaver

    Designs have enough space to add content.
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    by Drew Alvarado

    Professionally designed slides with color coordinated themes and icons. Perfect for enhancing the style of the presentations. 

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