Episódios
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Anton, co-founder of Codeborne, and I sit together to discuss some of the problems in software engineering - pull requests, microservices, testing, refactoring. Check out annotated chapters below for more details.
00:00:00 Intro
00:00:00 Sneak peek
00:00:49 Episode overview
00:04:28 Anton's intro, background
00:06:37 Anton founded Codeborne: TDD and pair programming: following extreme programming principles
00:08:57 Agile is about short feedback loops
00:12:09 Under-engineering vs over-engineering
00:15:29 Tech debt and testing: engineers don't handle tech debt well enough
00:17:45 Lack of refactoring is a big problem
00:18:14 Problems with pull requests
00:27:00 Problems with squash merge
00:27:30 Good commit messages are essential
00:31:09 Good code is easy to change
00:34:34 Pair programming is continuous code review
00:36:11 Daily code review with a whole team
00:48:44 Microservices: be careful
00:59:23 Book recommendations from Anton
01:00:38 Wrap up
This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit log.mapforengineers.com -
Lauri Koobas, ex-Microsoft and currently Head of Data Platform at Bondora, shed insights on data engineering - from early startup to scaling.
We mostly focused on analytics and building data warehouse - real-world challenges from both data engineering and software engineering sides. We also discussed GDPR and PII challenges when dealing with data.
You can find video version on MapForEngineers YouTube channel: https://www.youtube.com/@mapforengineers
Annotated chapters in timeline:
00:00:00 Sneak peek of episode
00:01:21 Episode overview
00:02:44 Introduction, Lauri's background
00:20:48 Starship robots: huge amount of data there
00:23:37 Data lake, data warehouse, data lakehouse
00:26:44 Devil is in the details: timestamps, texts, character sets...
00:49:44 Moving data from prod to data warehouse
00:53:09 Analytics tools: PostHog, Amplitude, Redash, Databricks
01:00:15 Analytics tools vs real-time monitoring like Prometheus/Grafana
01:04:15 Usability matters: each tool for its job
01:06:38 Startup grows: needs in data analytics
01:11:09 Multiple data sources: when data warehouse really begins
01:19:55 Data and (de-)coupling: software engineers should not be blocked by analytics
01:22:51 Data ETL
01:24:59 Changes in data model: multi-phase migrations
01:29:38 Change data capture, incremental imports
01:34:21 Should analytics have new data in real time? Maybe not?
01:39:02 Importing data into DWH through business events
01:43:37 When DWH subscribes to business events, data model can evolve freely
01:47:16 Quick recap what we discussed so far
01:52:25 GDPR and Data Compliance: start early
01:56:05 PII data: know exactly where you store it, control it well
02:03:37 Lauri's books recommendations on data engineering - Kimball
02:07:18 Lauri's podcast on data engineering, in Estonian
02:08:28 Wrap up
This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit log.mapforengineers.com -
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Carl, staff software engineer at Pactum, shed light on some of the latest AI tools in software development. We discussed v0.dev, continue.dev, ollama, and much more! It was an episode with a lot of useful information and insights! To check all content on Map For Engineers including blog posts, feel free to subscribe on https://MapForEngineers.com
Annotated chapters in timeline on topics that Carl and I covered:
00:00:00 - Start
00:04:05 - Small talk, getting into the groove
00:08:18 - Carl's background: ex-Pipedrive, now engineer in Pactum
00:19:44 - Early tools: simple autocomplete and simple prompting without context
00:27:11 - AI tools with context: Cursor IDE, Continue.dev
00:43:35 - Cursor IDE Composer - Prompt+Apply to Code Instantly
00:47:29 - Ollama - following docker philosophy
00:55:15 - V0.dev - LLM to create frontend components
00:59:27 - Cursor IDE + v0.dev combination as a workflow
01:02:23 - Claude 3.5 Sonnet
01:03:10 - OpenAI o1
01:04:56 - LLMs vs SQL Queries - still to be solved
01:08:17 - LLM in TDD and Testing Workflows
01:16:04 - Focus on engineering fundamentals - LLM does not replace your engineering fundamental knowledge
01:20:13 - Book recommendations
01:29:09 - Hosting models yourself - expensive
01:33:27 - Fine-tuning models
01:35:33 - RAG
01:49:50 - Chain of thought
01:51:46 - vyce.app - GenAI helping with compliance questions
01:54:25 - Summary of tools we covered so far
01:58:43 - GenAI vs engineering careers
02:05:39 - Wrap up with Carl
This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit log.mapforengineers.com -
I had a pleasure to chat with my friend Joel Mislav Kunst, who is Engineering Manager at Microsoft. We talked about growth in engineering. Some of the topics that we touched upon, with timeline timestamps are:
00:00:00 - Glimpse of episode
00:01:16 - Quick episode overview
00:05:18 - Joel's journey in software engineering
00:14:55 - Focus on engineering fundamentals
00:23:34 - Learning from all hard experiences: solving root causes
00:31:05 - Relationship between engineer and their manager
00:53:03 - Manager is not your punching bag for complaining: propose initiatives instead, be active
01:10:55 - Engineer vs manager: fork in career
01:29:17 - Generative AI in context of engineering career/growth
01:36:01 - Teaching is essential for growth. Seniors teaching juniors. Knowlede sharing
01:43:14 - Wrap up
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For Youtube video version of the episode, check https://www.youtube.com/@mapforengineers
This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit log.mapforengineers.com -
Ürgo, ex-Wise, joined Wise.com as one of the first 12 engineers or so. As former colleagues from Wise, we had a great chat about product engineering, domain-driven design, and team collaboration.
I will give a short summary of key takeaways that I got from this valuable discussion with Ürgo.
1. Work in agency is different from work in a product company
Work in agency (outsource) vs product company is different for an engineer. In agency, you get a lot of experience with different projects, but you don’t own a product or its outcomes.
In contract, in a product company, engineers should care about the end product, getting the feedback from users and customers. Responsibilities and impact are on the next level for an engineer in a product company, that you don’t get in a project-based work in an agency.
2. Knowledge sharing inside a team. Avoid knowledge silos
It’s important to avoid pockets of knowledge in a team, where sub-groups form, because then it’s hard to have a cohesive team. There are many tools to avoid it, for example:
* Pair programming
* Deliberately rotating knowledge among people
* Working in pairs (not necessarily pair programming, but just solving some problem together) on a topic for a short time (e.g. a week or two). But then switching pairs and topics, to avoid knowledge silos.
* I wrote in detail about some practices that I employ in Pactum to avoid knowledge silos in the team in the article Values, Principles and Practices in Engineering Team.
3. Product engineering begins where the comfort of the coding ends
Ürgo wrote amazing article about this topic, called Product Engineer, available in his Medium.
Product engineers need to establish frequent feedback loops to get signal from users on the usefulness of what they delivered. This is essential for closing the feedback loop. Once you get learnings, you repeat the process: Learn → Build → Ship → Learn → …[repeat]
4. Domain-Driven Design: Metaphors are important
Coming up with metaphors when modelling software is very important. When you come up with a good metaphor, try to embed it into your ubiquitous language.
5. GenAI in Software Engineering
GenAI won’t replace product engineers for a while. In fact, product engineering becomes even more essential than just coding. Coding is just a tool, a means to an end. Product engineering skills will be ever so valuable - to understand which product to build, to iterate, to learn from your users and customers, to be creative. Product engineers will leverage GenAI tools to automate non-interesting tasks (e.g. creating this next frontend component, if it can be automated quickly).
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And that’s a wrap! I will be recording new episodes soon. Feel free to subscribe if you found it valuable. Also, recording quality in the next episode will be better.
For all the content, visit MapForEngineers.com
This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit log.mapforengineers.com -
I am starting a Map for Engineers Podcast! I am in the process of organizing a first episode with my guest, which will be live-streamed on YouTube :) Will announce more details soon.
This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit log.mapforengineers.com