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This dataset was part of the recruitment process of a particular client of ScaleneWorks. ScaleneWorks supports several information technology (IT) companies in India with talent acquisition. One of the challenges they face is about 30% of the candidate who accepts the job offer, do not join the company, this leads to a huge loss of revenue and time as the companies initiate the recruitment process again to fill the workforce demand. SceleneWorks wants to find out if a model can be built to predict the likelihood of a candidate along with a column that indicates if the candidate finally joined the company or not. Feature description: Candidate - Unique reference number to identify candidate DOJ Extended - Date of joining asked by candidate or not Duration to accept the offer - Number of days taken by the candidate to accept the offer Notice period - Notice period served before candidate can join the company Offered band - Band offered to candidate based on experience, performance Percent hike expected in CTC - Percentage hike expected by the candidate Percent hike offered in CTC - Percentage hike offered by the company Percent difference CTC - Difference between expected and offered hike Joining Bonus - Joining bonus is given or not Candidate relocate actual - Candidates have to relocate or not Gender - Gender of the candidate Candidate Source - Source from which resume of the candidate was obtained Rex in Yrs - Relevant years of experience LOB - Line of business for which offer was rolled out Location - Company location for which offer was rolled out Age - Age of the candidate Status - Target varible wh whether the candidate joined or not The model output should be presented in a user-friendly dashboard format. The model should prioritize accuracy to ensure the highest likelihood of predicting candidates who will join the company. The model output should include charts and graphs for easy interpretation. Excel The model will use a supervised machine learning approach. The dashboard should highlight the probability of acceptance for each candidate. The dashboard should be built as an Excel spreadsheet. The model should use a random forest algorithm for predicting the likelihood of candidates joining the company. Advanced customization options will be available for all dashboard visuals. The dashboard visuals should include advanced customization options for detailed analysis.
Project ID: 38838372
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As an AI engineer, I have a deep understanding of your HR analytics project and experience in building sophisticated ML models. Using my extensive knowledge of supervised machine learning techniques and algorithms such as Random Forest, I can develop a high-accuracy model to predict candidate acceptance likelihood for ScaleneWorks. With my expertise in creating user-friendly dashboards, you can be assured that the output will be visualized in a comprehensive yet easy-to-interpret format. Not only will it include advanced customization options for detailed analysis, it will also present the probability of acceptance for each individual candidate. My proficiency extends beyond machine learning - I am well-versed in various programming languages, front-end and back-end web development frameworks - including Excel, HTML, CSS, JavaScript, Python, React and Node.js just to name a few. This means that not only can I build a robust and scalable model using machine learning techniques like Random Forest but I can also craft an intuitive interface for the model as an Excel spreadhsheet. Moreover, my skills in data engineering and cloud technologies allows me to ensure efficient data storage and organization that could be beneficial with the large dataset involved in this project.
₹7,000 INR in 7 days
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2 freelancers are bidding on average ₹4,250 INR for this job

Hi I'm roshal top rated content writer having 10 years experience in excel and I will do this with accuracy and precision. I think i am best fit for this project as i have experience and capabilities and provide no of revision until you satisfied within your deadline and budget. Thanks
₹1,500 INR in 1 day
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