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Decisiontree Analytics & Services

5 Job openings at Decisiontree Analytics & Services
Data Analyst Gurugram 1 - 3 years INR 3.0 - 7.0 Lacs P.A. Work from Office Full Time

Position Summary: DecisionTree is looking for a Data Analyst to manage services delivery and analytics product delivery. You should have a proven track record in delivering analytical solutions in the retail domain. You must have a deep understanding and hands-on experience of analytical and statistical techniques, and must be well-versed in data exploration visualization tools. Job Responsibilities: Work as a member of the project team on analytics projects. Well-versed in quantitative analysis, research, data mining, trend analysis, customer profiling, clustering, segmentation and predictive modelling techniques. Work with high-volume and multi-dimensional data from different sources. Solve analytical problems through quantitative methods. Identify and analyze target segments. Perform regular and ad-hoc business analysis. Understand client's priority areas and business challenge to recommend solutions. Present recommendations to senior management. Design, update and maintain multiple databases. Perform data research, analysis, and logical data modeling to validate and document the usage of business data artifacts. Desired Skills and Experience: 1-3 years of work experience, in the area of Business Analytics using Descriptive and Predictive techniques. Minimum of 1 year of experience in Analytics in the Retail domain. Background in Engineering/IT, MBA, Statistics, Economics. Should have good experience in Data Mining, Data Analysis and Predictive Modelling using R. Should be well versed with databases like PostGreSQL, MySQL, MS SQL. High-level proficiency with SQL based query languages and relational data concepts. Advanced knowledge of Microsoft Excel is absolutely essential. Excellent analytical skills. The candidate should not only be able to analyze the data, but also drive the implementation of the recommendations. Must have a passion for data, structured or unstructured. Excellent verbal and written communication skills. Strong interpersonal skills, ability to work with teams in a timeline driven high pressure environment.

Lead - Data Scientist gurugram 4 - 6 years INR 6.0 - 8.0 Lacs P.A. Work from Office Full Time

Lead - Data Scientist Key Responsibilities Design and implement advanced AI/ML models for business use cases, including but not limited to marketing mix modeling (MMM), churn prediction, propensity scoring, demand forecasting, and revenue/sales forecasting. Collaborate with cross-functional stakeholders product managers, data engineers, domain experts to translate business goals into AI/ML solutions. Leverage Python and modern ML/DL libraries (e.g., scikit-learn, PyTorch, statsmodels, langgraph) to process structured/unstructured data, build features, and develop scalable models. Lead end-to-end ML pipelines, from data ingestion and feature engineering to model training, evaluation, optimization, and deployment (including MLOps best practices). Conduct in-depth exploratory data analysis (EDA) and statistical investigations to extract actionable insights, validate hypotheses, and guide model development. Stay abreast of emerging ideas in AI/ML, and actively integrate ideas from research. Work across the spectrum of traditional machine learning and modern AI architectures, including the development of deep neural networks. Essential Skills Educational Background - Bachelors, Masters, or Ph.D. in a quantitative discipline such as Statistics, Mathematics, Computer Science, Data Science, AIMLor related fields. Hands-on Experience - 4 6 years of experience in building and deploying statistical & ML/AI models. Preferred exposure includes use cases such as MMM, churn prediction, demand/sales forecasting, and transformer-based architectures. Programming Expertise - Strong command of Python for data science and machine learning workflows, including experience with packages like NumPy, Pandas, Scikit-learn, Optuna and deep learning frameworks such as PyTorch. Modular & Standards-Compliant Coding - Proficient in writing clean, modular, and maintainable code following PEP8 standards and software engineering best practices (including version control, documentation, and reusable components). ML Engineering Fundamentals - Proficient in both traditional machine learning algorithms and neural network architectures (e.g., feedforward, convolutional, transformer-based), with a solid grasp of data preprocessing, feature engineering, and model evaluation techniques. End-to-End Pipeline Exposure - Experience working across the entire model lifecycle from data ingestion and EDA to training, tuning, deployment, and monitoring. Business Communication - Ability to translate complex analytical results into clear, actionable insights for both technical and non-technical stakeholders. Core Competencies Required Effective Communication - Articulation of technical concepts, results, and recommendations across diverse teams. Mathematical Thinking & Creativity - Ability to approach problems with analytical rigor and devise innovative algorithmic solutions grounded in mathematical principles. Passion for New Ideas & Research - Curiosity and enthusiasm for exploring emerging techniques, experimenting with novel approaches, and contributing to innovation in AI/ML. Execution-Oriented Planning - Ability to structure complex problems and drive solutions with a balance of speed and accuracy. Cross-Functional Collaboration - Partnering with product, engineering, marketing, sales and leadership teams to align AI solutions with business goals.

Senior Manager - Data Engineering gurugram 12 - 17 years INR 40.0 - 45.0 Lacs P.A. Work from Office Full Time

Senior Manager - Data Engineering Job Role As a Senior Data Engineering Manager, you will be responsible for leading a team of data engineers, owning data architecture decisions, and delivering robust data pipelines and integrations across cloud ecosystems. The ideal candidate has deep experience in Azure data services, PySpark-based processing, and modern API-driven architectures. Key Responsibilities Lead and mentor a team of data engineers working on large-scale data pipelines and platforms. Architect and design end-to-end data solutions using different cloud platforms like Azure/ AWS/ Google. Guide development of high-performance ETL/ELT pipelines using PySpark and Spark SQL. Integrate data from internal and third-party sources using REST APIs and streaming technologies. Collaborate with product, analytics, and business stakeholders to define data strategy and delivery timelines. Ensure best practices in coding, testing, deployment, and data governance. Own platform scalability, performance tuning, and cost optimization on Azure. Stay ahead of data engineering trends and technologies to continuously enhance the data stack. Qualification & Skills Required Bachelor s degree in Computer Science, Engineering, Mathematics, and other business/analytical disciplines 12+ years of experience in data engineering, with at least 5+ years in a leadership or managerial role. 4+ years of experience on Azure ecosystem (Data Factory, Data Lake, Synapse, Databricks, etc.). Strong hands-on experience with Azure / AWS/ Google cloud ecosystem. Proficiency in PySpark, Spark, Python, and distributed data processing frameworks. Experience working with REST APIs for data ingestion/integration. Deep understanding of data architecture, data modeling, and data warehousing concepts. Proven ability to lead cross-functional teams and manage project delivery timelines. Excellent problem-solving skills and ability to balance strategic thinking with execution. Experience with CI/CD for data pipelines. Exposure to other big data tools (Kafka, Airflow, Snowflake). Familiarity with DevOps and infrastructure-as-code tools. Microsoft Azure certifications (e.g., Azure Data Engineer Associate, Azure Solutions Architect). Core Competencies Required Communication Adaptability Planning & Execution Collaboration Continual Learning

Senior Data Analyst - SQL gurugram 3 - 8 years INR 5.0 - 10.0 Lacs P.A. Work from Office Full Time

Senior Data Analyst - SQL Job Role An Exceptional Senior Data Analyst responsible for the technical implementation of current and future solutions in the Business Intelligence domain. You should be proficient with the design of database architectures, data warehouses, data migrations, data marts, business intelligence packages, and implementing user reporting solutions based upon business requirements with a strong exposure to SQL. Key Responsibilities Design, develop, and maintain the data warehouse and analytics architecture to meet business analysis and reporting needs, where the scale and reliability of a modern distributed system is at the heart. Primarily responsible for the successful delivery of client engagements and initiatives. Provide subject matter expert input and advisory role input to client engagements as required strategy and solution advisory, technical resource management, client workshop facilitation and overall engagement management. Write stored procedures, functions, views, triggers for various database systems. Review and evaluate existing stored procedures for performance improvements Be a team player and work directly with other development teams and analysts to support our prototype solutions, maintaining flexibility and accountability to keep project progressing Always be learning and looking to expand the breadth of your expertise outside your comfort zone because the business is evolving and you need to stay current. Qualification & Required Skills A MS/BS degree in Computer Science or related technical field preferred. Additional education in business or statistics a plus 3+ years of work experience in using SQL in Analytics Deployment. Domain knowledge of digital marketing is preferred. Must excel at adapting to unpredictable scenarios, thinking logically and analytically, and learning quickly Strong foundation in SQL, particularly its usage in Business Intelligence and Analytics solutions: Strong scripting skills to perform data/file manipulation Strong background in Data Warehousing and Business Analytics environment Ability to read and interpret data schemas, Experience in working with various data sources: Web Services, application API, XML, Relational Databases, Document Oriented NoSQL databases, etc. Experience working with AWS cloud-based services: S3, EC2, RDS, Redshift, Snowflake Excellent verbal and written communication skills. Core Competencies Required Communication Adaptability Planning & Execution Collaboration Continual Learning

Senior Analyst - Data Science gurugram 2 - 4 years INR 4.0 - 6.0 Lacs P.A. Work from Office Full Time

Senior Analyst - Data Science Key Responsibilities Design and implement advanced AI/ML models for business use cases, including but not limited to marketing mix modeling (MMM), churn prediction, propensity scoring, demand forecasting, and revenue/sales forecasting. Collaborate with cross-functional stakeholders product managers, data engineers, domain experts to translate business goals into AI/ML solutions. Leverage Python and modern ML/DL libraries (e.g., scikit-learn, PyTorch, statsmodels, langgraph) to process structured/unstructured data, build features, and develop scalable models. Lead end-to-end ML pipelines, from data ingestion and feature engineering to model training, evaluation, optimization, and deployment (including MLOps best practices). Conduct in-depth exploratory data analysis (EDA) and statistical investigations to extract actionable insights, validate hypotheses, and guide model development. Stay abreast of emerging ideas in AI/ML, and actively integrate ideas from research. Work across the spectrum of traditional machine learning and modern AI architectures, including the development of deep neural networks. Essential Skills Educational Background - Bachelors, Masters, or Ph.D. in a quantitative discipline such as Statistics, Mathematics, Computer Science, Data Science, AIMLor related fields. Hands-on Experience - 2 4 years of experience in building and deploying statistical & ML/AI models. Preferred exposure includes use cases such as MMM, churn prediction, demand/sales forecasting, and transformer-based architectures. Programming Expertise - Strong command of Python for data science and machine learning workflows, including experience with packages like NumPy, Pandas, Scikit-learn, Optuna and deep learning frameworks such as PyTorch. Modular & Standards-Compliant Coding - Proficient in writing clean, modular, and maintainable code following PEP8 standards and software engineering best practices (including version control, documentation, and reusable components). ML Engineering Fundamentals - Proficient in both traditional machine learning algorithms and neural network architectures (e.g., feedforward, convolutional, transformer-based), with a solid grasp of data preprocessing, feature engineering, and model evaluation techniques. End-to-End Pipeline Exposure - Experience working across the entire model lifecycle from data ingestion and EDA to training, tuning, deployment, and monitoring. Business Communication - Ability to translate complex analytical results into clear, actionable insights for both technical and non-technical stakeholders. Core Competencies Required Effective Communication - Articulation of technical concepts, results, and recommendations across diverse teams. Mathematical Thinking & Creativity - Ability to approach problems with analytical rigor and devise innovative algorithmic solutions grounded in mathematical principles. Passion for New Ideas & Research - Curiosity and enthusiasm for exploring emerging techniques, experimenting with novel approaches, and contributing to innovation in AI/ML. Execution-Oriented Planning - Ability to structure complex problems and drive solutions with a balance of speed and accuracy. Cross-Functional Collaboration - Partnering with product, engineering, marketing, sales and leadership teams to align AI solutions with business goals.