Industrial Engineering (IE) 1

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Industrial Engineering (IE) 1 Industrial Engineering (IE) 1 IE 288. Industrial Engineering Cooperative Education Seminar 0 Units INDUSTRIAL ENGINEERING Grading Basis: Pass/Fail Term Typically Offered: Fall, Spring, Summer (IE) Prerequisite(s): CHEM 201, ENGL 101, ENGR 102, ENGR 110, PHYS 298, student must be in Good Standing with GPA of 2.25 or higher; IE 240. Subject-area course lists indicate courses currently active for offering Corequisite(s): IE 240. at the University of Louisville. Not all courses are scheduled in any Description: Discussion of the policies and procedures for cooperative given academic term. For class offerings in a specific semester, refer to education and instruction in self- directed job search techniques, the Schedule of Classes (http://htmlaccess.louisville.edu/classSchedule/ including interviewing skills, resume preparation, and guidelines for the setupSearchClassSchedule.cfm). co-op report. This is a prerequisite for each cooperative education term. For class offerings for a specific term, refer to the Schedule 500-level courses generally are included in both the undergraduate- and of Classes (http://htmlaccess.louisville.edu/classSchedule/ graduate-level course listings; however, specific course/section offerings setupSearchClassSchedule.cfm) may vary between semesters. Students are responsible for ensuring that they enroll in courses that are applicable to their particular academic IE 289. Industrial Engineering Cooperative Education I 1 Unit programs. Grading Basis: Pass/Fail Term Typically Offered: Fall, Spring, Summer Course Fees Prerequisite(s): IE 288. Fee: An additional $300.00 is charged for this course. Some courses may carry fees beyond the standard tuition costs to cover Description: Full-time technical work experience related to the student's additional support or materials. Program-, subject- and course-specific academic program. fee information can be found on the Office of the Bursar website (http:// Course Attribute(s): CBL - This course includes Community-Based louisville.edu/bursar/tuitionfee/). Learning (CBL). Students will engage in a community experience or project with an external partner in order to enhance understanding and IE 240. Fundamentals of Industrial Engineering 3 Units application of academic content. Term Typically Offered: Fall Only For class offerings for a specific term, refer to the Schedule Description: An introduction to the analysis and design of industrial of Classes (http://htmlaccess.louisville.edu/classSchedule/ systems; emphasis upon appropriate analytical and computer-based setupSearchClassSchedule.cfm) techniques and their applications to industrial systems. Topics introduced include: Quality Control/Management, Product/Service IE 320. Manufacturing Processes 4 Units Design, Facility Design, Project Management, Supply Chains and Term Typically Offered: Spring Only Distribution, Forecasting, Inventory Planning. Scheduling, Six Sigma/Lean Prerequisite(s): CHE 253. Basics, and the Code of Ethics for Engineers. Description: Principles of materials processing used in manufacturing; For class offerings for a specific term, refer to the Schedule casting, forming, machining, welding, and related techniques such as of Classes (http://htmlaccess.louisville.edu/classSchedule/ numerical and computer control. Laboratory includes plant visits. setupSearchClassSchedule.cfm) For class offerings for a specific term, refer to the Schedule of Classes (http://htmlaccess.louisville.edu/classSchedule/ IE 250. Data Management and Spreadsheet Modelings for Industrial setupSearchClassSchedule.cfm) Engineering 3 Units Term Typically Offered: Fall Only IE 360. Probability and Statistics for Engineers 3 Units Description: This course will develop analytical and modeling skills Term Typically Offered: Fall, Spring, Summer using Excel spreadsheets. Students will develop skills needed to Prerequisite(s): ENGR 102. analyze data in Excel and to build mathematical models in Excel. Description: Engineering applications using probability, random variables, The course is divided into two parts. The first part is devoted to data distribution functions, confidence intervals, estimation and hypothesis analysis and management. Students will learn a comprehensive set of testing. spreadsheet skills and tools, including how to design, build, test, and use Note: Students cannot receive credit for both IE 360 and IE 560. a spreadsheet for data analysis. The second part of the course provides and introduction to the concepts and methods of Decision Science, For class offerings for a specific term, refer to the Schedule which involves the application of mathematical modeling and analysis of Classes (http://htmlaccess.louisville.edu/classSchedule/ to management problems, with a focus on optimization models. It also setupSearchClassSchedule.cfm) provides a foundation in modeling with spreadsheets. IE 370. Engineering Economic Analysis 3 Units For class offerings for a specific term, refer to the Schedule Term Typically Offered: Fall, Spring, Summer of Classes (http://htmlaccess.louisville.edu/classSchedule/ Prerequisite(s): ENGR 101. setupSearchClassSchedule.cfm) Description: Methods for economic evaluation of engineering projects including, time value of money, equivalence, cost estimation, selection of alternatives, effects of depreciation, taxes and inflation, replacement analysis, sensitivity analysis, capital budgeting. For class offerings for a specific term, refer to the Schedule of Classes (http://htmlaccess.louisville.edu/classSchedule/ setupSearchClassSchedule.cfm) Industrial Engineering (IE) 2 IE 380. Work Design 3 Units IE 430. Quality Control 3 Units Term Typically Offered: Fall Only Term Typically Offered: Spring Only Description: Work measurement as a basis for the industrial engineering Prerequisite(s): IE 240 and IE 360. profession. Engineering principles of work measurement, analysis Description: Developing an effective total quality control (TQC) system: and design. Methods engineering and time study. Predetermined integrating the quality development, maintenance, and improvement motion time systems. Work sampling and standards. Computerized efforts of an organization; control charts, process capability, value work measurement systems: ADAM and MOST. Job design and engineering, product liability prevention, and computer control. standardization of production. For class offerings for a specific term, refer to the Schedule For class offerings for a specific term, refer to the Schedule of Classes (http://htmlaccess.louisville.edu/classSchedule/ of Classes (http://htmlaccess.louisville.edu/classSchedule/ setupSearchClassSchedule.cfm) setupSearchClassSchedule.cfm) IE 489. Industrial Engineering Cooperative Education III 1 Unit IE 389. Industrial Engineering Cooperative Education II 1 Unit Grading Basis: Pass/Fail Grading Basis: Pass/Fail Term Typically Offered: Fall, Spring, Summer Term Typically Offered: Fall, Spring, Summer Prerequisite(s): IE 288 and IE 389. Prerequisite(s): IE 289. Fee: An additional $300.00 is charged for this course. Fee: An additional $300.00 is charged for this course. Description: Full-time technical work experience related to the student's Description: Full-time work experience related to the student's academic academic program. program. Course Attribute(s): CBL - This course includes Community-Based Course Attribute(s): CBL - This course includes Community-Based Learning (CBL). Students will engage in a community experience or Learning (CBL). Students will engage in a community experience or project with an external partner in order to enhance understanding and project with an external partner in order to enhance understanding and application of academic content. application of academic content. For class offerings for a specific term, refer to the Schedule For class offerings for a specific term, refer to the Schedule of Classes (http://htmlaccess.louisville.edu/classSchedule/ of Classes (http://htmlaccess.louisville.edu/classSchedule/ setupSearchClassSchedule.cfm) setupSearchClassSchedule.cfm) IE 499. IE Capstone Design - CUE 3 Units IE 393. Independent Study in Industrial Engineering 1-6 Units Term Typically Offered: Fall, Spring Term Typically Offered: Fall, Spring, Summer Prerequisite(s): IE 380, IE 421, IE 425, IE 430, or Department Chair For class offerings for a specific term, refer to the Schedule Permission. of Classes (http://htmlaccess.louisville.edu/classSchedule/ Description: This course requires the solution of a real-world design setupSearchClassSchedule.cfm) problem in industrial engineering. It uses the design and analysis IE 421. Facility Location and Layout 3 Units tools learned in previous coursework and emphasizes teamwork, Term Typically Offered: Fall Only documentation and presentation skills. Prerequisite(s): IE 240. Course Attribute(s): CUE - This course fulfills the Culminating Description: Design and layout of industrial facilities, facility location, Undergraduate Experience (CUE) requirement for certain degree space requirements, flow charts, relationship diagrams, material handling, programs. CUE courses are advanced-level courses intended for majors quantitative layout techniques, production line balancing, and computer with at least 90 earned credits/senior-level status., CBL - This course programs for layout planning. Students cannot receive credit for both includes Community-Based Learning (CBL). Students will engage in a IE 421 and IE 621. community experience or project with an external partner in order to For class offerings for a specific term, refer to the
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