Work Location - Chennai, Bangalore, Hyderabad
About the role:
As a Analyst or Senior Analyst - BFS, you will work with Clients in Banking & Financial Services, & help translate business problems into unambiguous analytics problem statements and design analytical frameworks to address them. On a typical work day, you could be doing one or more of the following:
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Collaborate with the team of data scientists and engineers to plan and drive the execution of business solutions
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Contribute to client presentations, reports, QBRs etc
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Handle client discussions in structured project settings
Domain Understanding:
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Awareness of the Banking regulatory landscape
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Awareness of common AI and automation use cases in BFS (fraud detection using ML, credit scoring, robo-advisors, chatbots). Can identify basic applications of analytics in operations.
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Knowledge of the concepts in any or multiple use cases like customer segmentation, CLTV, Customer attrition and retention, next best product/cross sell and has had contributed hands on to atleast a part of any of these project if not end to end. Involvement in atleast any one of Model Validation, Model Performance Monitoring and Model Development is desired
Required Skills & Experience:
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1-3 years of relevant experience in Analytics projects in BFS domain for any geography
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At least 1 year of experience working for global Banks or financial services in the area of either Credit, Fraud, Marketing, Operations etc.. on AI or analytics engagements
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Strong communication & experience in client communication.
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Awareness of storytelling with PPT & has effectively communicated with clients to understand their basic requirements, communicate status updates, or escalation calls
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Hands-on experience in preparing
Powerpoint / Google Slides
presentations & presenting them to key stakeholders
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Hands-on experience with
Excel/ Google Sheets
to review, sanitize, manipulate data
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Hands-on experience of querying data using
SQL
on traditional RDBMS databases, and/or big data environments such as Hadoop/Hive/Spark.
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Ability to analyse and visualize data one or more tools such as
Tableau, PowerBI
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Intermediate experience in DS/ML/AI programming tool of
Python
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Exposure to low-code no-code tools GPT, CLausde, Lovable, Gemini
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Appreciation of different types of Statistical / Machine Learning / AI techniques, when and why they are used
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Interpret results from a business viewpoint (the expectation is not a data scientist expert-level proficiency, but a clear conceptual understanding)
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Ability to leverage analytics to solve structured or unstructured problems and interpret results