Job Description:
We are looking for an experienced Data Scientist with 6+ years of experience to join our team and drive impactful data-driven solutions. The ideal candidate will possess deep expertise in machine learning, statistical modeling, and big data processing, along with a proven ability to work with cross-functional teams and effectively communicate insights to stakeholders. This role requires a strategic mindset, strong leadership, and the ability to translate complex data problems into actionable business insights.
Key Responsibilities:
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Lead and drive the development of advanced machine learning models to solve high-impact business challenges.
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Collaborate with stakeholders (business leaders, product managers, engineering teams) to identify opportunities where data science can add business value.
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Embed yourself with business to understand the strategy and propose data solutions to accelerate outcomes.
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Design and implement scalable data pipelines and real-time analytics solutions.
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Guide and mentor data scientists, fostering a culture of innovation and best practices.
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Conduct deep-dive analyses to extract meaningful insights from complex and large datasets.
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Ensure machine learning models are explainable, reproducible, and aligned with business objectives.
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Present findings and recommendations to key stakeholders in a clear and actionable manner.
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Work closely with engineering teams to deploy ML models into production environments at scale.
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Own end-to-end model lifecycle management, including data preprocessing, feature engineering, model training, validation, and monitoring.
Required Qualifications:
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Bachelor's or Master’s degree
in Computer Science, Data Science, Statistics, Mathematics, or a related field (Ph.D. preferred but not mandatory).
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6+ years of experience
in data science, machine learning, or applied statistics. Experience in
financial services, fintech, e-commerce, or similar data-driven industries
.
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Strong expertise in
Python, SQL
with proficiency in
machine learning frameworks
such as TensorFlow, PyTorch, or Scikit-Learn.
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Solid understanding of
big data technologies
(Spark, PySpark, Hadoop, or similar).
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Hands-on experience in
model deployment
using cloud platforms (AWS, GCP, Azure) and ML Ops frameworks (MLflow, Kubeflow, etc.).
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Expertise in
statistical modeling, predictive analytics
.
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Experience working with
real-time and batch-processing systems
.
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Demonstrated ability to
translate business problems into data science solutions
.
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Excellent problem-solving, critical-thinking, and analytical skills.
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Strong communication and stakeholder management skills
, with the ability to explain technical concepts to non-technical audiences.
Preferred Qualifications:
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Experience in
financial services, fintech, e-commerce, or similar data-driven industries
.