Hyderabad Jobs |
Banglore Jobs |
Chennai Jobs |
Delhi Jobs |
Ahmedabad Jobs |
Mumbai Jobs |
Pune Jobs |
Vijayawada Jobs |
Gurgaon Jobs |
Noida Jobs |
Hyderabad Jobs |
Banglore Jobs |
Chennai Jobs |
Delhi Jobs |
Ahmedabad Jobs |
Mumbai Jobs |
Pune Jobs |
Vijayawada Jobs |
Gurgaon Jobs |
Noida Jobs |
Oil & Gas Jobs |
Banking Jobs |
Construction Jobs |
Top Management Jobs |
IT - Software Jobs |
Medical Healthcare Jobs |
Purchase / Logistics Jobs |
Sales |
Ajax Jobs |
Designing Jobs |
ASP .NET Jobs |
Java Jobs |
MySQL Jobs |
Sap hr Jobs |
Software Testing Jobs |
Html Jobs |
Job Location | Gurugram |
Education | Not Mentioned |
Salary | Not Disclosed |
Industry | Management Consulting / Strategy |
Functional Area | Operations Management / Process Analysis |
EmploymentType | Full-time |
Looking for candidates with 6.5 - 8.5 years of professional experience involving technology-focused process improvements, transformations, and/or system implementationsMinimum Years of Experience:6 year(s)Preferred Qualifications:Degree Preferred:Master DegreePreferred Fields of Study:Business Analytics, Computer and Information Science, MathematicsPreferred Knowledge / Skills:- Demonstrates thorough knowledge and/or a proven record of success in the following areas:- Understanding new technology learning and quickly evaluating their technical and commercial viability- Understanding machine learning techniques for addressing a variety of problems (e.g. consumer segmentation, revenue forecasting, image classification, etc.); and,- Understanding machine learning algorithms (e.g. k-nearest neighbors, random forests, ensemble methods, deep neural networks, etc.) and when it is appropriate to use each technique.- Demonstrates thorough abilities and/or a proven record of success as a team leader including the following areas:- Understanding new technology learning and quickly evaluating their technical and commercial viability;- Understanding machine learning techniques for addressing a variety of problems (e.g. consumer segmentation, revenue forecasting, image classification, etc.); and,- Understanding machine learning algorithms (e.g. k-nearest neighbors, random forests, ensemble methods, deep neural networks, etc.) and when it is appropriate to use each technique.- Understanding new technology learning and quickly evaluating their technical and commercial viability- Understanding machine learning techniques for addressing a variety of problems ( e.g. consumer segmentation, revenue forecasting, image classification, etc.)- Understanding machine learning algorithms (e.g. k-nearest neighbors, random forests, ensemble methods, deep neural networks, etc.) and when it is appropriate to use each technique- Building machine learning models and systems, interpreting their output, and communicating the results;- Moving models from development to production; and,- Conducting research in a lab and publishing work. Demonstrates thorough abilities and/or a proven record of success with a subset of the following technologies:- Understanding new technology learning and quickly evaluating their technical and commercial viability;- Understanding machine learning techniques for addressing a variety of problems (e.g. consumer segmentation, revenue forecasting, image classification, etc.); and,- Understanding machine learning algorithms (e.g. k-nearest neighbors, random forests, ensemble methods, deep neural networks, etc.) and when it is appropriate to use each technique.- Understanding new technology learning and quickly evaluating their technical and commercial viability- Understanding machine learning techniques for addressing a variety of problems (e.g. consumer segmentation, revenue forecasting, image classification, etc.)- Understanding machine learning algorithms (e.g. k-nearest neighbors, random forests, ensemble methods, deep neural networks, etc.) and when it is appropriate to use each technique;- Building machine learning models and systems, interpreting their output, and communicating the results;- Moving models from development to production; and,- Conducting research in a lab and publishing work.- Programming including Python, R, Java, JavaScript, C++, Unix Hardware, sensors, robotics, GPU enabled machine learning, FPGAs, and Raspberry Pis, etc.- Data Storage Technologies including SQL, NoSQL, Hadoop, cloud-based databases such as GCP BigQuery, and different storage formats (e.g. Parquet, etc.)- Data Processing Tools including Python (Numpy, Pandas, etc.), Spark, and cloud-based solutions such as GCP DataFlow- Machine Learning Libraries including Python (scikit-learn, genism, etc.), TensorFlow, Keras, PyTorch, and Spark MLlib- Understanding of NLP and text based extraction. NLP libraries including spaCy, NLTK, gensim etc.- Visualization including Python (Matplotlib, Seaborn, bokeh, etc.), and JavaScript (d3); and,- Productionization and containerization technologies including GitHub, Flask, Docker, and Kubernetes.Required Candidate profile- Candidates must have overall and relevant 6.5-8.5 yrs of strong exp as a data scientist and should be comfortable for an Individual contributor role.,
Keyskills :
machine learningpythondata analysissqlanalyticsrecord of successdata storage technologiesdata processingneural networksdigital conversionrevenue forecastingposition managementinformation science