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Digital Marketing Prof Junior

Hybrid

Position level:

AI Specialist/Software engineering professional (Can’t be a junior/fresher, needs to be middle to senior level person

 Work Experience:

Ideally, 4 to 5 years of working as a Data Scientist / Machine Learning and AI at a managerial position (end-to-end project responsibility). Slightly lower work experience can be considered based on the skill level of the candidate

 About the job:

Use AI-ML to work with data to predict process behaviors. Stay abreast of industry trends, emerging technologies, and best practices in data science, and provide recommendations for adopting innovative approaches within the product teams. In addition, championing a data-driven culture, promoting best practices, knowledge sharing, and collaborative problem-solving

 Abilities

 Knowledge about data analysis, Artificial Intelligence (AI), Machine Learning (ML), and preparation of test reports to show results of tests. Strong in communication with a collaborative attitude, not afraid to take responsibility and make decisions, open to new learning, and adapt. Experience with end-to-end process and used to make result presentation to customers.

Technical Requirements:

• Experience working with real world messy data (time series, sensors, etc.

 • Familiarity with Machine learning and statistical modelling

• Ability to interpret model results in business context

• Knowledge of Data preprocessing (feature engineering, outlier handling, etc.)

 

Soft Skill Requirements:

• Analytical thinking – Ability to connect results to business or process understanding

• Communication skills – Comfortable explaining complex topics to stakeholders

• Structured problem solving – Able to define and execute a structured way to reach result

 • Autonomous working style – can drive a small project or parts of a project

 

Tool Knowledge

 Programming: Python (Common core libraries: pandas, numpy, scikit-learn, matplotlib, mlfow etc.); Knowledge of best practices (PEP8, code structure, testing, etc.) Code versioning (GIT) Data Handling: SQL; Understanding of data format (CSV, JSON, Parquet); Familiarity with time series data handling Infrastructure: Basic Cloud technology knowledge (Azure (preferred), AWS, GCP); Basic Knowledge of MLOps workflow Good to have: Knowledge of Azure ML, AWS SageMaker; Knowledge of MLOps best practices in any tool; Containerization and deployment (Docker, Kubernetes)

Languages

 English – Proficient/Fluent Location:

Hybrid (WFO+WFH) + Availability to visit customer sites for meetings and work-related responsibilities as per the project requireme 

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