Philips Recruitment | MTech Intern | Bangalore
Philips Recruitment in Bangalore For MTech Intern Position. MTech Graduates are eligible to apply for this job. More details regarding Philips Bangalore Job Openings is given below.
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Company Name: Philips
Job Location: Bangalore
Job Position: MTech Intern
Qualification: MTech
Job Description:
- Philips is hiring for MTech Intern – Bangalore Location.
Job Responsibilities:
- Work with product management/mentor to develop data use cases and embed predictive models in workflows on resource constrained platforms.
- Building, and optimizing classifiers using machine learning and deep learning techniques.
- Ideas/techniques exploration leading to new product feature augmentation.
Eligibility Criteria:
- Pursuing MTech in Computer Science, Information management, Statistics, or related field.
- Experience in statistical modelling, machine learning, data mining, unstructured data analytics and natural language processing. Sound understanding of – Bayesian Modelling, Classification Models, Cluster Analysis, Neural Network, Nonparametric Methods, Multivariate Statistics, etc.
- Hands on knowledge of ML techniques like regression algorithms, K-NN, Naïve Bayes, SVM and ensemble techniques like Random forest, AdaBoost etc.
- Having knowledge in unsupervised learning algorithms using Neural networks and Deep-Learning.
- Knowledge in Data Wrangling and Exploration techniques to identify the patterns, trends and outliners.
- Practical experience with data science toolkits, such as NumPy, Pandas, scikit-learn or equivalent.
- Good, applied statistics skills, such as distributions, statistical testing, regression, etc.
- A self-starter with high levels of drive, energy, resilience and a desire for professional excellence with a passion for data and AI.
How To Apply:
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Registrations are closed