How are PG Diploma placements at Manipal Global Academy of Data Science?

4 Views|Posted 2 years ago
Asked by Nishar Ahmed
1 Answer
M
2 years ago

The academy has a good placement record, with around 98% of students getting placed in reputed companies. The average salary package offered was 6.5 lakh/annum, and the highest salary package offered was 12 lakh/annum. Some of the top recruiters include Google, Microsoft, Amazon, Flipkart, Accenture

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The eligibility criteria for PG Diploma at Manipal Global Academy of Data Science. According to the web search results, the eligibility criteria for this programme are as follows:

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The highest package offered at Manipal Global Academy of Data Science is INR 12 LPA. This was for the graduates of the Postgraduate Program in Data Science, which is a full-time course offered in collaboration with Jigsaw Academy. The programme claims to provide guaranteed placement assistance, indu

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