Data Science for Teams
Morgan Kaufmann Publishers In (Verlag)
978-0-443-36406-8 (ISBN)
Dr. Harris Georgiou (MSc, PhD) is a Machine Learning and Data Scientist specializing in mobility analytics, big data, dynamic systems, complex systems, signal/image processing, Bioinformatics and Artificial Intelligence. He is a R&D consultant and senior researcher for more than 25 years in the field in multiple post-doctorate assignments, focusing on in sparse learning models and fMRI/EEG signal for applications in Biomedicine and Bioinformatics, next-generation air traffic control, maritime surveillance & urban mobility via Big data analytics & Machine Learning methods. Since 2016 he is the active LEAR, team coordinator & scientific advisor with the Hellenic Rescue Team of Attica (HRTA) in several EU-funded R&D projects (H2020) for civil protection, miniaturized robotic equipment & sensors for SAR operations and next-generation advanced technologies for first responders. He is also course leader/lecturer, as well as private consultant, in collaboration with over 190 academic institutions, organizations and companies. He has published 88 peerreviewed journal & conference papers, plus 83 independent & open-access works, technical reports, magazine articles, software toolboxes and open-access datasets, a two-volume book series on medical imaging and diagnostic image analysis, contributed in six other textbooks and one U.S. patent in related R&D areas. He has been a member of over 90 technical committees in international scientific journals & conferences since 2008.
CHAPTER 1 Lesson 1: Respect the basics, learn the roles
1.1 Organizational options
1.2 Team roles, generic
1.3 Team roles, actual
1.3.1 Infrastructure engineer
1.3.2 AI expert
1.3.3 Software developer
1.3.4 Team mentor-coordinator
1.3.5 Other roles and specialties
1.4 Our brave little team
CHAPTER 2 Lesson 2: Team building -- people over things
2.1 Building the team
2.2 Complexities and trade-offs
2.3 Getting people onboard
2.3.1 Setting the criteria
2.3.2 Misconceptions
2.3.3 Red flags
2.3.4 How to do it right
2.4 Letting people go
2.5 Departures
CHAPTER 3 Lesson 3: Keep the team happy, then committed
3.1 Leading versus Managing
3.1.1 Data Science as Engineering
3.1.2 Data Science is not classic Project Management
3.1.3 Key priorities and the human factor
3.2 Incentives and Commitment
3.2.1 Excellence and job satisfaction
3.2.2 Handling younger members
3.3 Team roles, revisited
3.3.1 In-depth guidelines
3.3.2 Transitions and integrations
3.3.3 The kick-off
3.3.4 The daily emergencies
3.3.5 Addressing personal issues
3.4 The dress code issue
CHAPTER 4 Lesson 4: Give room to new ideas, but always have contingencies
in place
4.1 The Software Engineering paradigm
4.1.1 Key differences and similarities with DS
4.1.2 Dealing with problems and failures
4.2 Exploiting new ideas
4.2.1 Diversity and collaboration
4.2.2 Gender diversity in the team
4.2.3 Diversity and Game Theory
4.3 Contingencies
4.3.1 Groupthink
4.3.2 Backups as a team principle
4.4 The big whiteboard
PART 2 Bend the rules
CHAPTER 5 Lesson 5: In the real world, there are no well-defined tasks
5.1 Unknown unknowns
5.1.1 Recognizing the proble
5.1.2 Analysis paralysis
5.2 Use cases
5.2.1 Civil Aviation
5.2.2 Agricultural quality control
5.3 The first shock
CHAPTER 6 Lesson 6: In the real world, data are raw and not ready for use
6.1 Handling real-world data
6.1.1 Factors and issues
6.1.2 Exploring the data
6.2 Use cases
6.2.1 Civil Aviation
6.2.2 Vehicle mobility analytics
6.2.3 SARS-CoV-2 pandemic
6.3 The second shock
CHAPTER 7 Lesson 7: Keep things simple, but not too simple
7.1 The automatic control paradigm
7.1.1 Principles of automatic control
7.1.2 Automation versus human factor
7.2 Project management and leadership
7.2.1 Toxic leadership
7.2.2 Project management, the NASA way
7.2.3 The Westrum model
7.3 Simplicity as a principle
7.3.1 Dealing with complexity
7.4 Use case: Adaptive X-ray machine
CHAPTER 8 Lesson 8: Embrace good ideas, even if they are risky
8.1 Assignments and initiatives
8.1.1 Who gives the presentations?
8.1.2 Remote control
8.1.3 Blame games
8.2 Endorsing openness
8.2.1 The curse of micro-management
8.2.2 Inclusive teamwork
8.3 Use cases
8.3.1 Mammographic mass shape analysis
8.3.2 Textiles modeling
8.4 Cold feet
CHAPTER 9 Lesson 9: Avoid the “one tool for all'' mindset
9.1 Getting into the weeds
9.1.1 Traditional versus ``blind'' ML
9.1.2 Smart clouds and edges
9.1.3 “Not invented here'' syndrome
9.2 Tunnel vision
9.2.1 The “Einstellung''
9.3 Focus on the most valuable
9.4 Use cases
9.4.1 fMRI unmixing
9.4.2 COVID-19 data analysis
CHAPTER 10 Lesson 10: Avoid the “minimum effort principle''
10.1 Minimum efforts
10.1.1 Low productivity mode
10.1.2 Knowledge silos
10.1.3 Simplicity is not laziness: The “XOR'' example
10.2 Marginally adequate
10.2.1 Quiet quitting
10.2.2 Learning versus delivering
10.2.3 Motivation alone is not enough
10.3 Opening up
PART 3 Forget the rules
CHAPTER 11 Lesson 11: Always have backups -- prepare for the unexpected
11.1 Hints from software risks
11.2 Managing risk
11.2.1 Assessment, prioritization, mitigation
11.2.2 Preventive planning
11.2.3 A little Game Theory
11.3 Team risks
11.3.1 Burnout
11.3.2 Over-confidence
11.3.3 Insecurities
11.4 Use case: Urban ETA prediction
CHAPTER 12 Lesson 12: Embrace critical feedback, always
12.1 The feedback loop
12.1.1 Reception of criticism
12.1.2 Dealing with arrogance
12.2 Conflict resolution in the team
12.2.1 Pack leaders and threshold guardians
12.2.2 Removing the barriers
12.2.3 Emergence of cooperation
12.3 Use case: Refugee influx analysis
12.4 Force Majeure
CHAPTER 13 Lesson 13: Iteration and adaptation versus long-term planning
13.1 The Software Development paradigm
13.1.1 The value of traditional approaches
13.1.2 Repetitions over strict designs
13.2 Iterative project management
13.2.1 Technical versus management issues
13.2.2 Common approaches
13.3 The OLPC example
CHAPTER 14 Lesson 14: Managing expectations
14.1 Expectations versus reality
14.2 Preemptive planning
14.3 The IPR issue
14.4 The DRS cluster example
CHAPTER 15 Lesson 15: Deadlines, prioritization, and getting things done
15.1 Priorities, preparations, and plans
15.2 Working under pressure
15.3 Tough decisions
15.4 Bending the rules
15.5 Getting things done
CHAPTER 16 Lesson 16: The “Diminishing Residual Efforts'' effect
16.1 Efforts fade out
16.2 Technical debt
16.3 Outside the comfort zone
16.4 Emergency response
CHAPTER 17 Lesson 17: Integration -- the time of pain and suffering
17.1 R&D is not a product
17.2 Canary releases and feature toggles
17.3 ``Blind'' prototyping
17.4 Quality as a goal
17.5 Vaporware
17.6 No single points of failure
17.7 Use case: search & rescue robotics
PART 4 Embed, extend, repeat
CHAPTER 18 Lesson 18: Make things happen now, but plan for the future
18.1 The value of maintainability
18.2 The COBOL example
18.3 An important balance
18.4 Accept change
18.5 Randomized modeling
18.6 Proof of work
18.7 Debugging from 25 billion km away
CHAPTER 19 Lesson 19: Keep loyal to discipline, guidelines, and good
practices
19.1 No magic tricks
19.2 Three main drivers
19.3 Excellence is a habit
19.4 Take care of your team
19.4.1 Provide help
19.4.2 Seek consensus
19.4.3 Defend your people
19.4.4 Be honest and transparent
19.5 It’s all yours forever
CHAPTER 20 Lesson 20: Remember why you do this
20.1 Critical events
20.2 Wins and loses
20.3 Successful failures
20.4 That’s what is all about
| Erscheinungsdatum | 23.08.2025 |
|---|---|
| Verlagsort | San Francisco |
| Sprache | englisch |
| Maße | 191 x 235 mm |
| Gewicht | 510 g |
| Themenwelt | Informatik ► Theorie / Studium ► Künstliche Intelligenz / Robotik |
| ISBN-10 | 0-443-36406-0 / 0443364060 |
| ISBN-13 | 978-0-443-36406-8 / 9780443364068 |
| Zustand | Neuware |
| Informationen gemäß Produktsicherheitsverordnung (GPSR) | |
| Haben Sie eine Frage zum Produkt? |
aus dem Bereich