Lecture Notes on Business Processes and IT PDF
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Summary
These lecture notes cover business processes, digital transformation, and information systems. They discuss how businesses use technology for automation, interaction, and improved processes. The purpose is to help understand business workflows and how IT can support them.
Full Transcript
- Aim prompts new forms/uses of energy 1. Automate processes - offload low-value work 2. Democratize data - make info accessible 3. Reduce user friction - making doing things easier - IT enables Network Effects: the more people involved, the more valuable the tech - IT enables...
- Aim prompts new forms/uses of energy 1. Automate processes - offload low-value work 2. Democratize data - make info accessible 3. Reduce user friction - making doing things easier - IT enables Network Effects: the more people involved, the more valuable the tech - IT enables global commerce: - Ebay reduces user friction, automates processes - IT lowers cost of production & services - Ex: robots } automate processes - IT increases personal & organizational productivity How IT creates Business Value - Digital transformation: rewiring of how an organization operates - build competitive advantage by deploying tech - Improve customer experience & lower costs - Information systems - Functional information Systems - IS that supports personal productivity - Facilitates everyday personal or professional tasks - Ex: microsoft office, Grammarly - Network Information Systems - IT that supports interaction & collaboration - Facilitates communication & info sharing among employees - Ex: Gmail, Zoom, WhatsApp - Enterprise Information Systems - IT that supports business processes - Facilitates workflows & processes of an organizaion - Ex: SAP, Microsoft, Workday - 4 Pillars of Successful Digital Transformations - How are pillars enabled by - Functional IS - Crowdsourcing - Ideas reside outside companies - Working collaboratively & competively - Rely on wisdom of crowd - wikipedia, Waze - Cirque du Soleil How Business Processes Drive Value - Business process: an activity or set of activities that accomplish a specific organizationl goal - Ex: payroll, hiring, procurement, sales, order fulfillment - Logically related activities or tasks performed together to produce a defined set of results - Information Systems: carry out business processes by capturing their data & executing their activities - Ex: flight check in 1. Passenger check in (phone, kiosk, counter) } workflow same 2. Issue the boarding pass 3. Tag luggage & send to cargo 4. Security screening 5. Board the passenger - Robotic Process Automation (RPA) - Process by which a software bot uses a combo of automation, computer vision, machine learning to automate repetitive, high volume tasks that are rule based & trigger driven - AI can enhance RPA by handling variation & complexity (ex: missing data, ambiguity - Read & sort documents - Interpret text - Analyze images & generate reports - Classify complex info - Business process modeling - Visual representation of a business process - Manage exiting processes - Understand - Communicate - Diagnose - Manage process change - Investigate alternatives - Purpose changes - BPM are organizational roadmaps - Business process modeling notation (BPMN) - 1 standard notation for modeling business processes - The objective is to describe a process in a common way to all users, regardless of the tool used to describe the process - Common Symbols in BPMN - Start & end nodes - Indicates where the process starts & ends - Can have multiple ends pts depending on outcomes - Depicted using a circle - Thin circle = start - Thick cicle = end - Activities - A named activity, process, or task that occurs over time - Transforms inputs into output - Performed by participant (role or system) - Depicted using a rectangle - Naming convention: active verb + noun - Flows - Sequence and/or mvmt of data or materials - Depicted w arrow - Arrow in direction of flow - If name, use a noun phrase (invoice, packing list) - May include passive verb (validated record, audited tax form) - Input: flow that’s transformed or consumed by a process/system - Output: flow that is produced by a process/system - Gateways - Model decision points (ex: diverging flows) - Depicted using a diamond - Label w a question - Label exit arros close to the gateway - Pools & Swim lanes - Pool: defines perimeter of the process - its name identifies the modeled process - Pool can be subdivided into swim lanes that represent actors - Allows us to associate activities - Roles are NOT specific people (ex: scientist not einstein) Donut ordering process - Roels: customer, cashier, kitchen - Activities: - Cashier: cashier takes order, sends order to kitchen, if in stock then collects money, gets donuts from kitchen gives order - Customer: drives up to customer, orders food, - Step 3: Complete a business process organizer - Roles become actors in swim lanes - Activities are associated w roles - Decisions become gateways - flows connect activities Unit 3: How to turn business ideas into technology solutions - Application software: perform a specific task for user - Word, imessage, SAP - System software: make the hardware accessible to application software user; provides a way to read & write files - Windows, mac OS, android - Create software using programming languages or low-code/no-code platforms - Programming: python, R, javascript - Convenience, do thinks you can’t otherwise do - Low-code/no-code: Thunkable, Altair AI studio - Assembling statements together - less flexibility - Options for implementing IT solutions 1. Buy (use) existing solutions 2. Create new IT solutions - In either case, IT solutions are products delivered via 1 or more projects - Projects & products are fundamental to business - Projects: means of getting things done in an organization - Products: means of delivering value to customers - The information technology project - “All projects are temporary effort to create value thro unique product, service, result” - Projects have: - Defined start & end - Specific objectives - Scope (boundaries) - Budget - But not a routine function - routine functions are never ending - The IT product - Hardware, software, mobile app, website, user interface, software service, product feature - Product manager: strategic role, CEO of product - Researchings, communicating vision to stakeholders, strategic plan - Project manager: operational role - Breaking down initiatives into tasks, timelines - 2 project management approaches - Waterfall methodology: well defined, sequential steps - Efficient, reliable delivery based on initial specifications - Agile methodology: sequential steps of limited scope that repeat (iterations) - Quick & continuous delivery - Make course corrections - Hybrid approach - Waterfall & agile used together - Waterfall used at beginning & agile used in “develop” phase Managing projects: waterfall vs. agile - Neither is good or bad - Project success depends on the use of approach & details of project - Waterfall: clearly defined project - Agile: know less about whats wanted, need to adapt constantly - Hybrid: part of it well defined How to generate business value with data - Issue 1: Data must be organized - Data are observtions/symbols/representations that are recorded - Info is data placed in a meaningful context - Knowledge is application of info to achieve a goal - Issue 2: We are drowning in data - 2.5 quintillion bytes of data is generated each day - Business analytics Process 1. Prepare: collect/gather data - clean & transform data for analysis 2. Perform: analyze data - ex: sentiment & trend analysis, machine learning 3. Use: make recommendations to aid decision making & generate business value - Types of data analytics - The past - Descriptive: what has happened? - Summarize & aggregate raw data - often need basic math - Diagnostic: why did it happen? - Find relationships in the data - can require statistical techniques (ex: regression) - The future - Predictive: what is going to happen? - Use past data to make predictions about future - use AI to learn patterns - Prescriptive: what should we do? - Uses descriptive & predictive analytics - uses AI but w a focus on recommendation - Pitfalls of analytics initiatives - Tyranny of averages - avg skewed by outliers - Multiple versions of the truth - only want 1 version of data being used by employees - Decisions precede data - reinforcing a wrong conclusion/bias - Misguided data-driven incentives - looking at wrong data to get certain outcome - Analytics & digital transformation - IT uplift: get better analytics tools, find bottlenecks - Digitizing operations: increase efficiency - Digital Marketing: better campaigns, targeting maketing - New ventures: predict sales of new veneers - predictive analytics How to Communicate well with data Why are effective visualizations important? 1. Improves speed & efficiency of data processing 2. Reduce time to insight 3. Some data should be visualization to make sense Best practices - State your key point - Be complete yet concise - Avoid necessary clutter - Acknowledge data source - Use color wisely - Sometimes text is best - Start axes from 0 - large deficit when doesn’t start from 0 - Avoid chartjunk How AI and Machine Learning Create New Business opportunities - “Explainable” AI - processes behind AI, gives reasoning - Dangers - Emergent behaviors - Privacy - Bias - people hwo made it & data its trained on - 2 business problems suited for predictive & prescriptive analysis 1. Churn analysis (predictive): customers most likely to go to a competitor - Issue: high churn (customers leave) - Solution: give incentives to those most likely to leave - Ignore the ones that are not predicted to churn - Insight: not all customers have the same value 2. Cross selling (prescriptive): What products customers are likely to purchase - Issue: identifying target customers - Insight: likelihood of purchase depends on items already purchased - Incentivize customers who have bought associated items w a coupon - Place product next to associate products - Predictive: what’s going to happen - Prescriptive: what you should do - ML uses unstructured data to make predictions about next work - Supervised ML: give data to build data to make predictions - Decision trees (Supervised ML): used classify data according to a pre-defined outcome - Based on characteristics of that data - Supervised = “train” the model w a data set of correct answers to predict outcomes - Association mining (unsupervised ML): find which events predict occurrence of other events - Often used to see which products are bought together - Not training a model, you are looking at relationships in data - Higher lift = less likely to be random chance - Large language models (deep learning): predicts the next word in its responded based on training data (wikipedia, books, articles, journals, web scraping) - Both unsupervised (finds associations in data) & supervised (gets feedback about answers) - Has rules to guide its responses - Challenges of machine learning models - Accuracy of decision making: - naive/incomplete models - bad or incomplete data - ChatGPT hallucinations - Transparency & explainability: black box problem - Fairness & algorithmic bias: “ability for people to feasibly modify the outcome of algorithmic decision