Role Proficiency:
Provide expertise on data analysis techniques using software tools. Under supervision streamline business processes.
Outcomes:
Design and manage the reporting environment; which include data sources security and metadata. Provide technical expertise on data storage structures data mining and data cleansing. Support the data warehouse in identifying and revising reporting requirements. Support initiatives for data integrity and normalization. Assess tests and implement new or upgraded software. Assist with strategic decisions on new systems. Generate reports from single or multiple systems. Troubleshoot the reporting database environment and associated reports. Identify and recommend new ways to streamline business processes Illustrate data graphically and translate complex findings into written text. Locate results to help clients make better decisions. Solicit feedback from clients and build solutions based on feedback. Train end users on new reports and dashboards. Set FAST goals and provide feedback on FAST goals of reparteesMeasures of Outcomes:
Quality - number of review comments on codes written Data consistency and data quality. Number of medium to large custom application data models designed and implemented Illustrates data graphically; translates complex findings into written text. Number of results located to help clients make informed decisions. Number of business processes changed due to vital analysis. Number of Business Intelligent Dashboards developed Number of productivity standards defined for project Number of mandatory trainings completedOutputs Expected:
Determine Specific Data needs:
Work with departmental managers to outline the specific data needs for each business method analysis project
Critical business insights:
Code:
manipulation
and analysis of data. Creates efficient and reusable code. Follows coding best practices.
Create/Validate Data Models:
validates
and improves the performance of these models over time.
Predictive analytics:
Prescriptive analytics:
Code Versioning:
bitbucket. etc.
Create Reports:
Document:
perform peer reviews of documentation of others' work
Manage knowledge:
share point
libraries and client universities
Status Reporting:
Skill Examples:
Analytical Skills: Ability to work with large amounts of data: facts figures and number crunching. Communication Skills: Communicate effectively with a diverse population at various organization levels with the right level of detail. Critical Thinking: Data Analysts must review numbers trends and data to come up with original conclusions based on the findings. Presentation Skills - facilitates reports and oral presentations to senior colleagues Strong meeting facilitation skills as well as presentation skills. Attention to Detail: Vigilant in the analysis to determine accurate conclusions. Mathematical Skills to estimate numerical data. Work in a team environment Proactively ask for and offer helpKnowledge Examples:
Knowledge Examples
Database languages such as SQL Programming language such as R or Python Analytical tools and languages such as SAS & Mahout. Proficiency in MATLAB. Data visualization software such as Tableau or Qlik. Proficient in mathematics and calculations. Efficiently with spreadsheet tools such as Microsoft Excel or Google Sheets DBMS Operating Systems and software platforms Knowledge regarding customer domain and sub domain where problem is solvedAdditional Comments:
Job Summary We are looking for a talented Data Scientist . The ideal candidate will have a strong foundation in data analysis, statistical models, and machine learning algorithms. You will work closely with the team to solve complex problems and drive business decisions using data. This role requires strategic thinking, problem-solving skills, and a passion for data. Job Responsibilities • Analyse large, complex datasets to extract insights and determine appropriate techniques to use. • Build predictive models, machine learning algorithms and conduct A/B tests to assess the effectiveness of models. • Collaborate with different teams (e.g., product development, marketing) and stakeholders to understand business needs and devise possible solutions. • Stay updated with the latest technology trends in data science. • Develop and implement real-time machine learning models for various projects. • Engage with clients and consultants to gather and understand project requirements and expectations. • Write well-structured, detailed, and compute-efficient code in Python to facilitate data analysis and model development. • Utilize IDEs such as Jupyter Notebook, Spyder, and PyCharm for coding and model development. • Present forecast results using data visualization techniques using Matplotlib AND\OR Power BI AND\OR Tableau • Apply agile methodology in project execution, participating in sprints, stand-ups, and retrospectives to enhance team collaboration and efficiency. Education • Typically requires a minimum of 5 years of related work Experience .