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15 Guided Projects on AI and Big Data (2024)

Introduction

In data science, where innovation meets opportunity, the demand for skilled professionals continues to skyrocket. Data science is not merely a career; it’s a gateway to solving complex problems, driving innovation, and shaping the future. With the industry witnessing an annual growth rate exceeding 36%, a career in data science promises both financial rewards and intellectual fulfillment. A blend of theoretical knowledge and practical experience is paramount to thrive in this dynamic environment. Guided projects in data science emerge as the bridge between theory and application, offering a hands-on learning experience under the watchful guidance of mentors.

What are Guided Projects in Data Science?

Guided projects in data science refer to short-term, practical projects or tutorials designed to help students and professionals apply specific skills or concepts in a guided manner. These projects come with a predefined project definition, outline, and instructions aimed at guiding the learner to completion. The required datasets, tools, and methodologies, are also provided in guided projects. Moreover, learners are also assigned instructors and mentors who provide further guidance, routine feedback, and answers to queries. You can often find such guided projects as part of data science courses on e-learning platforms such as Coursera, Udemy, and Analytics Vidhya.

Guided Projects vs. Independent Projects

The main difference between a guided data science project and an independent one lies in the level of autonomy and guidance provided to the data scientist throughout the project. Here are some key distinctions:

Guided Data Science Projects Independent Data Science Projects
Guided projects come with a predefined structure and set of instructions including a specific problem statement, a list of required tasks, and guidelines on the tools and techniques to be used. You have to define the problem, understand the scope, and figure out the methodology on your own.
The required datasets will be provided in a guided project. You must choose and gather your own data.
The best tools and methodologies for the project might be predetermined or suggested as part of the guidance. You must select the tools and technologies that best suit the project requirements, through research, trial, and error.
Guided projects have a feedback loop where mentors or instructors answer questions and offer support throughout the project. You must find experts for feedback, seek solutions, and overcome challenges independently.
The project may focus on learning only specific techniques, tools, or methodologies as per the outline. You get to train on a broader set of skills, including problem formulation, critical thinking, and independent decision-making.

Top 15 Guided Projects That We Can Help You With

The projects below are covered in our AI & ML BlackBelt+ Program. Our experts will help you dive into their intricacies with their exceptional mentorship.

1. NYC Taxi Prediction

NYC Taxi Prediction,guided projects

The NYC Taxi Prediction project immerses participants in the dynamic world of transportation analytics. Leveraging historical taxi trip data, participants delve into predictive modeling to forecast taxi demand across various locations in New York City. This project hones regression analysis and time series forecasting skills and provides insights into spatial data visualization. Understanding and predicting taxi demand is crucial for optimizing fleet management, improving customer service, and contributing to efficient urban transportation systems.

2. Scene Classification Challenge

Scene Classification | Data Science Guided Projects

In the Scene Classification Challenge, participants are tasked with developing a robust image classification model capable of accurately categorizing images into predefined classes. Leveraging deep learning techniques such as convolutional neural networks (CNNs) and transfer learning, participants gain hands-on experience in image recognition. This project is about building accurate models and understanding the nuances of feature extraction, model training, and validation in the context of image classification.

3. Pascal VOC Image Segmentation

VOC Image Segmentation | Data Science Guided Projects

The Pascal VOC Image Segmentation project introduces participants to the fascinating world of image segmentation. Using the Pascal VOC dataset, participants learn to outline objects in images accurately. This project delves into the intricacies of semantic segmentation, where the goal is to assign each pixel in an image to a specific object class. Mastering image segmentation is pivotal for applications in computer vision, medical imaging, and autonomous vehicles.

4. Scene Generation

Scene Generation | Data Science Guided Projects

Scene Generation takes participants into generative models, particularly Generative Adversarial Networks (GANs). The objective is to create realistic scenes by generating images resembling real-world scenarios. Participants explore the principles of GANs, adversarial training, and latent space manipulation. This project enhances skills in generative modeling and provides a creative outlet for crafting AI-generated content.

5. Big Mart Sales Prediction

Big Mart Sales Prediction guided project

The Big Mart Sales Prediction project immerses participants in the retail analytics domain. By analyzing historical sales data, participants predict the sales of various products across different outlets. This project involves regression analysis, feature engineering, and model evaluation techniques. The insights gained are invaluable for retailers aiming to optimize inventory, plan promotions effectively, and enhance overall sales performance.

6. Gender Classification

Gender Classification | Data Science Guided Projects

Gender Classification is a computer vision project where participants build a model to classify the gender of individuals based on facial features. This project involves preprocessing images, extracting relevant facial features, and training a machine-learning model for classification. Understanding gender classification has applications in various domains, including security systems, personalized marketing, and user experience customization.

7. Identify Sentiments

Sentiment Analysis | Data Science Guided Projects

The Identify Sentiments project ventures into natural language processing (NLP) and sentiment analysis. Participants analyze textual data, such as product reviews or social media comments, to classify sentiments as positive, negative, or neutral. This project involves text preprocessing, feature extraction, and the application of machine learning algorithms for sentiment classification. Sentiment analysis is crucial for businesses to gauge real-time customer satisfaction and sentiment trends.

8. Urban Sound Classification

Urban Sound Classification | Data Science Guided Projects

Urban Sound Classification challenges participants to develop a machine-learning model capable of classifying urban sounds. This project involves preprocessing audio data, extracting relevant features, and training a classification model. The applications of urban sound classification range from noise pollution monitoring to enhancing safety systems for smart cities. Participants gain insights into signal processing, feature engineering, and the nuances of working with audio data.

9. Image Denoising

Image Denoising | Data Science Guided Projects

Image Denoising is a project focused on enhancing the quality of digital images by removing noise. Participants explore various denoising techniques, including filters and deep learning-based methods. Image denoising is crucial when images are degraded due to factors like low-light conditions or compression artifacts. This project gives participants a deep understanding of image processing, filter design, and the trade-offs involved in denoising algorithms.

10. Deploying an Image-based Gender Classification Model using Streamlit

Image-based Gender Classification Model using Streamlit

Deploying an Image-based Gender Classification Model using Streamlit takes participants beyond model development to deployment. In this project, participants learn to deploy their gender classification model using Streamlit, a user-friendly web app framework. This enhances their technical skills in model deployment and provides practical experience in creating interactive and accessible applications. The ability to deploy models is crucial for showcasing results and making machine learning applications accessible to a broader audience.

11. Deploying Urban Sound Classification using Flask

Urban Sound Classification using Flask

Deploying Urban Sound Classification using Flask extends the deployment experience further by guiding participants to take their model to production. In this project, participants learn to deploy an urban sound classification system using Flask, a web framework for Python. This hands-on experience in deploying machine learning models in a scalable and robust manner is invaluable for real-world applications.

12. Wikipedia Text Generation

Wikipedia Text Generation | Data Science Guided Projects

Wikipedia Text Generation explores the fascinating domain of natural language generation (NLG). Participants delve into building a model capable of generating text in a format resembling Wikipedia articles. This project involves advanced NLP techniques, sequence generation models, and the nuances of creating coherent and contextually relevant text. Understanding text generation opens doors to applications such as content creation, chatbots, and automated summarization.

13. Translating Text from French to English

Text Translation | Data Science Guided Projects

Translating Text from French to English introduces participants to language translation models. In this project, participants build a sequence-to-sequence model for translating text from French to English. The complexities involve handling multilingual data, training encoder-decoder architectures, and fine-tuning for language translation. Language translation models are fundamental to breaking down language barriers in today’s globalized world.

14. Food Forecasting Analysis

Food Forecasting Analysis, guided projects

Food Forecasting Analysis tackles the practical challenge of forecasting demand for different food items. Participants apply time series analysis and forecasting methods to optimize inventory management in the food industry. This project provides insights into the nuances of time series data, seasonality, and the factors influencing demand. Accurate forecasting is crucial for minimizing waste, ensuring product availability, and streamlining supply chain operations.

15. Forecasting – Energy Consumption

Energy Consumption Forecasting | Data Science Guided Projects

The Forecasting: Energy Consumption project delves into predicting energy consumption patterns. Participants contribute to sustainable energy management strategies by applying time series forecasting techniques. This project is essential for optimizing energy resource allocation, enhancing efficiency, and supporting the transition to renewable energy sources. Participants gain a deeper understanding of time series forecasting, model evaluation, and the role of data in shaping energy policies.

Conclusion

These guided projects are not mere learning exercises; they are immersive experiences that provide participants with the skills and insights necessary to excel in the dynamic field of data science. Whether mastering image classification, delving into natural language processing, deploying models, or forecasting future trends, each project offers unique challenges and learning opportunities. These projects are not undertaken in isolation; they are part of our AI & ML BlackBelt+ Program, where mentorship complements hands-on learning, ensuring that your journey in data science is not just educational but transformative.

Mastering data science is not solitary; it’s collaborative, guided, and multifaceted. Our BlackBelt+ program offers access to these top-notch guided projects and mentorship to ensure your success. Whether you are a beginner taking your first steps or an experienced professional looking to upskill, our program is designed to cater to diverse learning needs.

Start building your future in data science today! Join our Certified AI & ML BlackBelt+ Program and unlock a world of guided projects, mentorship, and endless possibilities. Your data science journey begins here!

Frequently Asked Questions

Q1. What is a guided project?

A. A guided project is where you are given guidance to do a project from start to finish. In such projects you will be given the project definition and outline, required datasets, instructions, tools, and methodologies, to do the project. You will also be assigned a mentor to give you routine feedback and answer all your queries.

Q2. What is an example of a data science project?

A. Text generation, text classification, translation, image segmentation, scene creation, sales prediction, gender segmentation, and sound classification are some examples of data science projects.

Q3. What are the types of data science projects?

A. Types of data science projects include predictive modeling, text, image, and video classification, anomaly detection, regression analysis, clustering projects, image, text, and video analysis, recommendation systems, big data analytics, and customer segmentation.

Q4. Do we get a certificate for guided projects in Coursera?

A. Yes, you will get a certificate of completion once you successfully finish a guided project on Coursera.

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