Engineering Enablement by Abi Noda

DX
Engineering Enablement by Abi Noda

This is a weekly podcast focused on developer productivity and the teams and leaders dedicated to improving it. Topics include in-depth interviews with Platform and DevEx teams, as well as the latest research and approaches on measuring developer productivity. The EE podcast is hosted by Abi Noda, the founder and CEO of DX (getdx.com) and published researcher focused on developing measurement methods to help organizations improve developer experience and productivity.

  1. The biggest obstacles preventing GenAI adoption — and how to overcome them

    6월 6일

    The biggest obstacles preventing GenAI adoption — and how to overcome them

    In this episode, Abi Noda speaks with DX CTO Laura Tacho about the real obstacles holding back AI adoption in engineering teams. They discuss why technical challenges are rarely the blocker, and how fear, unclear expectations, and inflated hype can stall progress. Laura shares practical strategies for driving adoption, including how to model usage from the top down, build momentum through champions and training programs, and measure impact effectively—starting with establishing a baseline before introducing AI tools. Where to find Laura Tacho:  • LinkedIn: https://www.linkedin.com/in/lauratacho/ • Website: https://lauratacho.com/ Where to find Abi Noda: • LinkedIn: https://www.linkedin.com/in/abinoda  In this episode, we cover: (00:00) Intro: The full spectrum of AI adoption (03:02) The hype of AI (04:46) Some statistics around the current state of AI coding tool adoption (07:27) The real barriers to AI adoption (09:31) How to drive AI adoption  (15:47) Measuring AI’s impact  (19:49) More strategies for driving AI adoption  (23:54) The Methods companies are actually using to drive impact (29:15) Questions from the chat  (39:48) Wrapping up Referenced: DX Core 4 Productivity FrameworkThe AI adoption playbook: Lessons from Microsoft's internal strategyMicrosoft CEO says up to 30% of the company's code was written by AI | TechCrunchViral Shopify CEO Manifesto Says AI Now Mandatory For All EmployeesDORA | Impact of Generative AI in Software DevelopmentGuide to AI assisted engineeringJustin Reock - DX | LinkedIn

    42분
  2. DORA’s latest research on AI impact

    5월 23일

    DORA’s latest research on AI impact

    In this episode, Abi Noda speaks with Derek DeBellis, lead researcher at Google’s DORA team, about their latest report on generative AI’s impact on software productivity. They dive into how the survey was built, what it reveals about developer time and “flow,” and the surprising gap between individual and team outcomes. Derek also shares practical advice for leaders on measuring AI impact and aligning metrics with organizational goals. Where to find Derek DeBellis:  • LinkedIn: https://www.linkedin.com/in/derekdebellis/ Where to find Abi Noda: • LinkedIn: https://www.linkedin.com/in/abinoda  In this episode, we cover: (00:00) Intro: DORA’s new Impact of Gen AI report (03:24) The methodology used to put together the surveys DORA used for the report  (06:44) An example of how a single word can throw off a question  (07:59) How DORA measures flow  (10:38) The two ways time was measured in the recent survey (14:30) An overview of experiential surveying  (16:14) Why DORA asks about time  (19:50) Why Derek calls survey results ‘observational data’  (21:49) Interesting findings from the report  (24:17) DORA’s definition of productivity  (26:22) Why a 2.1% increase in individual productivity is significant  (30:00) The report’s findings on decreased team delivery throughput and stability  (32:40) Tips for measuring AI’s impact on productivity  (38:20) Wrap up: understanding the data  Referenced: DORA | Impact of Generative AI in Software DevelopmentThe science behind DORAYale Professor Divulges Strategies for a Happy Life Incredible! Listening to ‘When I’m 64’ makes you forget your ageSlow Productivity: The Lost Art of Accomplishment without BurnoutDORA, SPACE, and DevEx: Which framework should you use?SPACE framework, PRs per engineer, AI research

    40분
  3. Setting targets for developer productivity metrics

    5월 9일

    Setting targets for developer productivity metrics

    In this episode, Abi Noda is joined by Laura Tacho, CTO at DX, engineering leadership coach, and creator of the Core 4 framework. They explore how engineering organizations can avoid common pitfalls when adopting metrics frameworks like SPACE, DORA, and Core 4. Laura shares a practical guide to getting started with Core 4—beginning with controllable input metrics that teams can actually influence. The conversation touches on Goodhart’s Law, why focusing too much on output metrics can lead to data distortion, and how leaders can build a culture of continuous improvement rooted in meaningful measurement. Where to find Laura Tacho:  • LinkedIn: https://www.linkedin.com/in/lauratacho/ • Website: https://lauratacho.com/ Where to find Abi Noda: • LinkedIn: https://www.linkedin.com/in/abinoda  In this episode, we cover: (00:00) Intro: Improving systems, not distorting data (02:20) Goal setting with the new Core 4 framework (08:01) A quick primer on Goodhart’s law (10:02) Input vs. output metrics—and why targeting outputs is problematic (13:38) A health analogy demonstrating input vs. output (17:03) A look at how the key input metrics in Core 4 drive output metrics  (24:08) How to counteract gamification  (28:24) How to get developer buy-in (30:48) The number of metrics to focus on  (32:44) Helping leadership and teams connect the dots to how input goals drive output (35:20) Demonstrating business impact  (38:10) Best practices for goal setting Referenced: DX Core 4 Productivity FrameworkEngineering Enablement PodcastDORA’s software delivery metrics: the four keysThe SPACE of Developer Productivity: There’s more to it than you thinkDevEx: What Actually Drives ProductivityDORA, SPACE, and DevEx: Which framework should you use?Goodhart's law Nicole Forsgren - Microsoft | LinkedInCampbell's law Introducing Core 4: The best way to measure and improve your product velocityDX Core 4: Framework overview, key design principles, and practical applicationsDX Core 4: 2024 benchmarks - by Abi Noda

    43분
  4. The AI adoption playbook: Lessons from Microsoft's internal strategy

    4월 18일

    The AI adoption playbook: Lessons from Microsoft's internal strategy

    Brian Houck from Microsoft returns to discuss effective strategies for driving AI adoption among software development teams. Brian shares his insights into why the immense hype around AI often serves as a barrier rather than a facilitator for adoption, citing skepticism and inflated expectations among developers. He highlights the most effective approaches, including leadership advocacy, structured training, and cultivating local champions within teams to demonstrate practical use cases.  Brian emphasizes the importance of honest communication about AI's capabilities, avoiding over-promises, and ensuring that teams clearly understand what AI tools are best suited for. Additionally, he discusses common pitfalls, such as placing excessive pressure on individuals through leaderboards and unrealistic mandates, and stresses the importance of framing AI as an assistant rather than a replacement for developer skills. Finally, Brian explores the role of data and metrics in adoption efforts, offering practical advice on how to measure usage effectively and sustainably. Where to find Brian Houck:  • LinkedIn: https://www.linkedin.com/in/brianhouck/  • Website: https://www.microsoft.com/en-us/research/people/bhouck/  Where to find Abi Noda: • LinkedIn: https://www.linkedin.com/in/abinoda  In this episode, we cover: (00:00) Intro: Why AI hype can hinder adoption among teams (01:47) Key strategies companies use to successfully implement AI (04:47) Understanding why adopting AI tools is uniquely challenging (07:09) How clear and consistent leadership communication boosts AI adoption (10:46) The value of team leaders ("local champions") demonstrating practical AI use (14:26) Practical advice for identifying and empowering team champions (16:31) Common mistakes companies make when encouraging AI adoption (19:21) Simple technical reminders and nudges that encourage AI use (20:24) Effective ways to track and measure AI usage through dashboards (23:18) Working with team leaders and infrastructure teams to promote AI tools (24:20) Understanding when to shift from adoption efforts to sustained use (25:59) Insights into the real-world productivity impact of AI (27:52) Discussing how AI affects long-term code maintenance (29:02) Updates on ongoing research linking sleep quality to productivity Referenced: DX Core 4 Productivity FrameworkEngineering Enablement PodcastDORA MetricsDropbox Engineering BlogEtsy Engineering BlogPfizer Digital InnovationBrown Bag Sessions – A GuideIDE Integration and AI ToolsDeveloper Productivity Dashboard Examples

    29분
5
최고 5점
37개의 평가

소개

This is a weekly podcast focused on developer productivity and the teams and leaders dedicated to improving it. Topics include in-depth interviews with Platform and DevEx teams, as well as the latest research and approaches on measuring developer productivity. The EE podcast is hosted by Abi Noda, the founder and CEO of DX (getdx.com) and published researcher focused on developing measurement methods to help organizations improve developer experience and productivity.

좋아할 만한 다른 항목

무삭제판 에피소드를 청취하려면 로그인하십시오.

이 프로그램의 최신 정보 받기

프로그램을 팔로우하고, 에피소드를 저장하고, 최신 소식을 받아보려면 로그인하거나 가입하십시오.

국가 또는 지역 선택

아프리카, 중동 및 인도

아시아 태평양

유럽

라틴 아메리카 및 카리브해

미국 및 캐나다