AI Coding Agents Change Software Development Forever

MLOps.community · Beginner ·🚀 Entrepreneurship & Startups ·9mo ago
//Abstract Demetrios hosts a conversation with Aparna Dhinakaran, Michele Catasta, and Erik Schluntz on the promise and limitations of coding agents. They discuss key challenges like verification, debugging, and dependency management, while exploring how agents can support developers through abstraction, collaboration, and long-term task handling. This conversation reflects on what’s needed to make coding agents reliable, usable, and truly effective. //Bio Michele Catasta Michele Catasta currently holds the role of VP of Artificial Intelligence at Replit, a software development platform to build and collaborate in any programming language. As of today, they have a community of 22M+ creators and learners with a mission to empower the next billion software creators with the help of AI. Aparna Dhinakaran Aparna Dhinakaran is the Co-Founder and Chief Product Officer at Arize AI, a leader in AI observability and evaluation that recently secured a Series C round. Prior to Arize, she was an ML engineer and leader at Uber, Apple, and TubeMogul (acquired by Adobe), where she built several core ML infrastructure platforms, including Michelangelo. Dhinakaran was a PhD researcher in the computer vision program at Cornell University before taking a leave of absence to start Arize. A frequent speaker at leading conferences and a recognized thought leader, she has been named to Forbes 30 Under 30, among other accolades. Erik Schluntz Erik Schluntz is a Member of Technical Staff at Anthropic, where he works on Large Language Models. He was previously the co-founder and CTO of Cobalt Robotics, which developed AI-powered security robots and scaled to over 100 deployments globally. Erik began his career at SpaceX and Google[x], and was an early Y Combinator founder after dropping out of Harvard.
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1 Our 1st MLOps Meetup // Luke Marsden // MLOps Meetup #1
Our 1st MLOps Meetup // Luke Marsden // MLOps Meetup #1
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2 Remote Collaboration as a Data Scientist
Remote Collaboration as a Data Scientist
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3 MLOps Manifesto with Luke Marsden from Dotscience
MLOps Manifesto with Luke Marsden from Dotscience
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4 MLOps lifecycle description
MLOps lifecycle description
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5 What Does Best in Class AI/ML Governance Look Like in Fin Services? // Charles Radclyffe // MLOps #2
What Does Best in Class AI/ML Governance Look Like in Fin Services? // Charles Radclyffe // MLOps #2
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6 Life purpose and too many spreadsheets
Life purpose and too many spreadsheets
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7 Explainability, Black boxes and EU white paper on reproducibility
Explainability, Black boxes and EU white paper on reproducibility
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8 Hierarchy of Machine Learning Needs // Phil Winder // MLOps Meetup #3
Hierarchy of Machine Learning Needs // Phil Winder // MLOps Meetup #3
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9 Automatically Retrain Machine Learning Models? Are best practices worth it?
Automatically Retrain Machine Learning Models? Are best practices worth it?
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10 Building an MLOps Team? Key ideas to keep in mind
Building an MLOps Team? Key ideas to keep in mind
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11 Hierarchy of MLOps Needs
Hierarchy of MLOps Needs
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12 Bare necessities for getting an ML model into production
Bare necessities for getting an ML model into production
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13 MLOps and Monitoring
MLOps and Monitoring
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14 How Phil Winder got into Data Science and Software Engineering
How Phil Winder got into Data Science and Software Engineering
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15 Provenance and Reproducibility in Machine Learning; what is it and why you need it?
Provenance and Reproducibility in Machine Learning; what is it and why you need it?
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16 Friction Between Data Scientists and Software Engineers
Friction Between Data Scientists and Software Engineers
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17 MLOps Problems in different size companies
MLOps Problems in different size companies
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18 ML tooling in large companies
ML tooling in large companies
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19 ML Platforms - The build vs buy question
ML Platforms - The build vs buy question
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20 ML Services Gateway at SurveyMonkey
ML Services Gateway at SurveyMonkey
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21 Message buses, Async and sync architecture
Message buses, Async and sync architecture
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22 MLOps #4: Shubhi Jain - Building an ML Platform @SurveyMonkey
MLOps #4: Shubhi Jain - Building an ML Platform @SurveyMonkey
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23 Hybrid Data Science Teams @SurveyMonkey
Hybrid Data Science Teams @SurveyMonkey
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24 How do you handle ML version control at SurveyMonkey
How do you handle ML version control at SurveyMonkey
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25 Doing ML with Personal Information
Doing ML with Personal Information
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26 Evolution of the ML feature store @SurveyMonkey
Evolution of the ML feature store @SurveyMonkey
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27 Developing a Machine Learning Feature Store
Developing a Machine Learning Feature Store
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28 Auto retrain ML models is not the question
Auto retrain ML models is not the question
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29 3 key parts to Machine Learning monitoring
3 key parts to Machine Learning monitoring
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30 MLOps Meetup #6: Mid-Scale Production Feature Engineering with Dr. Venkata Pingali
MLOps Meetup #6: Mid-Scale Production Feature Engineering with Dr. Venkata Pingali
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31 MLOps meetup #5 High Stakes ML: Active Failures, Latent Factors with Flavio Clesio
MLOps meetup #5 High Stakes ML: Active Failures, Latent Factors with Flavio Clesio
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32 MLOps: Airflow Pros and Cons
MLOps: Airflow Pros and Cons
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33 Specific challenges in Machine Learning
Specific challenges in Machine Learning
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34 Current State Of Machine Learning
Current State Of Machine Learning
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35 Humans in the Loop are a defining factor in Machine Learning
Humans in the Loop are a defining factor in Machine Learning
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36 Learning from real life Machine Learning failures
Learning from real life Machine Learning failures
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37 Survivorship Bias in machine learning tutorials
Survivorship Bias in machine learning tutorials
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38 Swiss Cheese model in Machine Learning
Swiss Cheese model in Machine Learning
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39 Resume driven development in Machine learning & software engineering
Resume driven development in Machine learning & software engineering
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40 Who has the highest standards in ML?
Who has the highest standards in ML?
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41 Venkata Pingali of Scribble Data Thoughts on the Current State of Machine Learning
Venkata Pingali of Scribble Data Thoughts on the Current State of Machine Learning
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42 Dependable data and being able to Trust in your Data with Venkata Pengali of Scribble Data
Dependable data and being able to Trust in your Data with Venkata Pengali of Scribble Data
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43 Speed, Trust, Evolution and Scale in MLOps
Speed, Trust, Evolution and Scale in MLOps
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44 More difficult transition for data scientists to become ML engineers
More difficult transition for data scientists to become ML engineers
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45 How many models in prod til I need a dedicated ML platform?
How many models in prod til I need a dedicated ML platform?
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46 Deeper thinking from data scientists around platform blackholes
Deeper thinking from data scientists around platform blackholes
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47 Checkpointing, metadata, and confidence in your data
Checkpointing, metadata, and confidence in your data
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48 Adjacent usecases and multistep feature engineering
Adjacent usecases and multistep feature engineering
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49 Standardization of Machine Learning tools like in Software Engineering with Venkata Pingali
Standardization of Machine Learning tools like in Software Engineering with Venkata Pingali
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50 Reproducability flaws in end to end Machine Learning debugging
Reproducability flaws in end to end Machine Learning debugging
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51 3rd wave of data scientists
3rd wave of data scientists
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52 MLOps meetup #7 Alex Spanos // TrueLayer 's MLOps Pipeline
MLOps meetup #7 Alex Spanos // TrueLayer 's MLOps Pipeline
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53 MLOps Meetup #8 Optimizing Your ML Workflow with Kubeflow 1.0
MLOps Meetup #8 Optimizing Your ML Workflow with Kubeflow 1.0
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54 Are Kubeflow and Airflow complementary?
Are Kubeflow and Airflow complementary?
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55 Why Kubeflow gained so much traction=open community
Why Kubeflow gained so much traction=open community
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56 Who decides the dirrection of Kubeflow
Who decides the dirrection of Kubeflow
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57 What do Kubeflow and Arrikto do and how do they work together?
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58 Versioning your ML steps with Kubeflow
Versioning your ML steps with Kubeflow
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59 Machine Learning Lifecycles//Perception vs Reality
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60 Kubeflow vs SageMaker in Machine Learning
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