Data Scientist
Teleperformance is hiring a Data Scientist for their healthcare pricing analytics team in Gurugram. This role focuses on developing predictive models and machine learning algorithms to optimize pricing, margins, and reimbursement strategies. Candidates must have strong proficiency in Python and SQL, along with experience in statistical modeling and data transformation. The role involves collaboration with finance and commercial stakeholders to drive business decisions.
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Experience
1-8 years
Function
Research
Work mode
Onsite, India
Company
Tier 2
What you will work on
Teleperformance is hiring a Data Scientist for their healthcare pricing analytics team in Gurugram. This role focuses on developing predictive models and machine learning algorithms to optimize pricing, margins, and reimbursement strategies. Candidates must have strong proficiency in Python and SQL, along with experience in statistical modeling and data transformation. The role involves collaboration with finance and commercial stakeholders to drive business decisions.
TAL's take
Stable domain-specific role at a large global service provider, though the company is not a primary product-tech firm.
Well-defined responsibilities focused on pricing analytics within the healthcare domain with clear technical requirements.
Salaries at Teleperformance
6.0 LPA average
Based on 45 Grapevine salary entries for Teleperformance.
Other
0 - 2 years | L2
5 LPA average
Range: 5 - 5 LPA
Operations
0 - 2 years | L2
4 LPA average
Range: 4 - 4 LPA
Design
0 - 2 years | L2
2 LPA average
Range: 2 - 2 LPA
Finance
0 - 2 years | L2
3 LPA average
Range: 3 - 3 LPA
Must haves
- 1+ years of experience in data science
- Experience in pricing analytics
- Proficiency in Python
- Proficiency in SQL
- Experience with ETL tools and Advanced Excel
Tools and skills
About the company
Teleperformance is a large global BPO/CX service provider, categorized as Tier 2 in an engineering context.
Posts mentioning Teleperformance
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Teleperformance Feedback
This Research Paper changed my life forever.
It was one of the papers that was discussed in my interview at Goldman. I came to know about this research paper a few years back after consulting a friend doing an ML PhD at University of Maryland, College Park. The explanation of the paper: 1. Initialize the neural network with small random values typically (-0.1,0.1) to avoid symmetry issues. 2. Now get ready to do Forward propagation: you pass thetraining data through the multilayer perceptron and compute the output. For each neuron in the MLP, calculate the weighted sum of its inputs and apply the activation function. (my favourite is tanh for LSTM applications) 3. Now compute the loss using a loss function like mean squared error, between output computed and the actual value. 4. Now get ready to do backpropagation, where you need to calculate the gradient of the loss function with respect to each weight by propagating the error backward through the network. 5. So, compute partial derivatives of the loss with respect to each weight, starting from the output layer and moving back to the input layer. 6. Here is the fun part: update the weights using the gradients obtained from the backward pass. here people usually use adam optimizer, which allows for accelerated stochastic gradient descent. Fun trivia: Adam stands for "Adaptive Moment Estimation". 7. Now repeat the forward and backward propagation process for numerous tries until theperformance of the model stabilizes.