Data Science Practitioner

Posted:
9/9/2024, 5:10:59 PM

Location(s):
Karnataka, India

Experience Level(s):
Expert or higher ⋅ Senior

Field(s):
AI & Machine Learning ⋅ Data & Analytics

Project Role : Data Science Practitioner
Project Role Description : Formulating, design and deliver AI/ML-based decision-making frameworks and models for business outcomes. Measure and justify AI/ML based solution values.
Must have skills : Data Science
Good to have skills : Machine Learning
Minimum 7.5 year(s) of experience is required
Educational Qualification : 15 years full time education

Job Title: Data Science Associate Manager Job Description: Summary: The Data Science Associate Manager is responsible for overseeing a team of data scientists and contributing to data-driven initiatives that address business challenges and enhance decision-making. This role requires a balance of technical expertise, leadership skills, and a deep understanding of data science methodologies. Key Responsibilities: 1. Team Leadership: • Provide leadership, guidance, and mentorship to a team of data scientists. • Foster a collaborative and innovative team environment. • Manage team performance, including goal setting, performance reviews, and career development. 2. Project Management: • Oversee the planning and execution of data science projects, ensuring they align with business objectives. • Define project scopes, timelines, and resource allocation. • Monitor project progress, identify risks, and implement mitigation strategies. 3. Technical Expertise: • Stay up-to-date with the latest data science and machine learning techniques. • Provide technical guidance and support to team members. • Act as a subject matter expert in data science, statistics, and relevant tools and technologies. 4. Data Analysis and Modeling: • Collaborate with team members to develop predictive models, machine learning algorithms, and statistical analyses. • Ensure the quality and accuracy of data analysis and modeling results. • Interpret data findings and communicate insights to non-technical stakeholders. 5. Data Strategy: • Collaborate with senior management to define the data strategy and vision for the organization. • Identify opportunities for leveraging data to drive business growth and improve operations. 6. Cross-functional Collaboration: • Work closely with other departments, such as IT, engineering, and business units, to integrate data science solutions into business processes. • Communicate effectively with stakeholders to gather requirements and provide updates on project progress. 7. Data Governance and Compliance: • Ensure data privacy and compliance with relevant regulations, such as GDPR or HIPAA. • Establish data governance best practices within the team. 8. Resource Management: • Manage the allocation of data science resources, including team members and external consultants if applicable. • Ensure the efficient utilization of resources to achieve project objectives. Technical Expectations: • Should be good in the below Algorithms 1. Supervised Learning Algorithms: • Linear Regression, Logistic Regression, Decision Trees, Random Forest, Support Vector Machines (SVM), Naive Bayes: 2. Unsupervised Learning Algorithms: • K-Means Clustering, Hierarchical Clustering, Principal Component Analysis (PCA), t-Distributed Stochastic Neighbor Embedding (t-SNE), Apriori Algorithm 3. Reinforcement Learning Algorithms: • Q-Learning, Deep Q Networks (DQN), Policy Gradient Methods 4. Neural Network and Deep Learning Algorithms: • Feedforward Neural Networks (FNN), Convolutional Neural Networks (CNN), Recurrent Neural Networks (RNN), Long Short-Term Memory (LSTM), Gated Recurrent Unit (GRU), Transformer Models, Ensemble Learning Algorithms: Bagging, Boosting, Stacking 5. Natural Language Processing (NLP) : Text Analysis, Sentiment Analysis, Named Entity Recognition (NER), Part-of-Speech Tagging, Classification, Machine Translation, Chatbots and Virtual Assistants, Question Answering, Text Summarization, Language Generation, Speech Recognition, Language Understanding and Reasoning, Ethical and Bias Considerations 6. Standardization Techniques: Feature Scaling, Categorical Variable Encoding, Text Data Preprocessing 7. Regularization Techniques: L1 and L2 Regularization, L2 Regularization (Ridge), Elastic Net Regularization, Dropout (Neural Networks), Early Stopping, Cross-Validation, Batch Normalization, Weight Decay, Early Stopping: • A Bachelor's or Master's degree in a related field (e.g., Data Science, Statistics, Computer Science). • Proven experience in data science, machine learning, and statistical analysis. • Strong programming skills in languages such as Python or R. • Exposure to manufacturing domain is an added advantage • Exposure to cloud hyperscalar like Azure/AWS is preferred • Previous experience in a leadership or management role is preferred. • Excellent communication and presentation skills. • Strong problem-solving and analytical abilities. • Familiarity with data visualization tools (e.g., Tableau, Power BI) is a plus. • Knowledge of database technologies (SQL, NoSQL) and big data frameworks (e.g., Hadoop, Spark) is advantageous.

15 years full time education

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Accenture is a leading global professional services company that helps the world’s leading businesses, governments and other organizations build their digital core, optimize their operations, accelerate revenue growth and enhance citizen services—creating tangible value at speed and scale. We are a talent- and innovation-led company with 750,000 people serving clients in more than 120 countries. Technology is at the core of change today, and we are one of the world’s leaders in helping drive that change, with strong ecosystem relationships. We combine our strength in technology and leadership in cloud, data and AI with unmatched industry experience, functional expertise and global delivery capability. We are uniquely able to deliver tangible outcomes because of our broad range of services, solutions and assets across Strategy & Consulting, Technology, Operations, Industry X and Song. These capabilities, together with our culture of shared success and commitment to creating 360° value, enable us to help our clients reinvent and build trusted, lasting relationships. We measure our success by the 360° value we create for our clients, each other, our shareholders, partners and communities. Visit us at www.accenture.com

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Accenture

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Headquarter Location: Dublin, Dublin, Ireland

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