#Reflection 2022: Some free advice. To people on the learning path. These are ideas based on being on the planet for a long time and working in software, networks, and enterprise businesses.
1. Do what you are good at.
2. Discover what energizes you.
3. Discover what depletes you
One of the new, buzzy jobs in Silicon Valley is the AI Forward Deployed Engineer (FDE), an engineer who is embedded within a client organization to help customize solutions, such as building and tuning agentic workflows that suit the client’s particular needs. I’ve heard from people who are wondering anew about the FDE career path since OpenAI and Anthropic started building new teams to place FDEs within client organizations.
The rise of FDEs for AI workloads is one way AI is creating new jobs (and why the jobpolcalypse narrative of upcoming job market collapse is false -- there will be many AI and non-AI jobs). However, I believe there will be far more AI Engineer jobs than FDEs, as I explain below.
The FDE role was pioneered about two decades ago by Palantir, which sent engineers to government locations to work on secure, air-gapped networks. In addition to having good technical skills, FDEs need communication skills and sometimes business skills. For example, they may need to speak with clients to understand their needs, formulate a strategy to prioritize projects, explain complex technology, and respectfully push back if a client asks for something unrealistic. They’re enjoying a resurgence because of the amount of work involved in taking an off-the-shelf LLM and building it into a custom agentic workflow that fits particular business needs.
However, I believe the number of AI Engineer jobs will be far larger. A company might accept a few FDEs to be embedded within its organization. But most companies will want far more of their own employees working on their projects. While my organizations do hire FDEs, we hire far more AI Engineers! Also, a common client concern is that it is hard to find vendor-neutral FDEs — they are, after all, there to deeply integrate a particular vendor’s product into a company. In this moment when it’s hard to predict which AI service will be the best one in a year’s time, optionality (the ability to pick whatever vendor turns out to fit best in the future) is very valuable. In contrast, letting FDEs tightly bind a company’s processes significantly reduces optionality.
Right now, I see surging demand for AI Engineers who can build software applications using AI software components (like LLM prompting, agentic frameworks, evals, etc.) and effectively use AI coding agents (like Claude Code, Codex, Antigravity CLI, and OpenCode). As the AI Engineer role matures, I expect it to fragment into more specialized roles, like the generic Software Engineer role from decades ago fragmented into frontend, backend, mobile, data engineering, devops, and so on.
What will be the future, specialized AI engineering roles? I don’t know. Perhaps there will be AI FDEs, LLMOps Engineers, Evals Engineers, AI Data Engineers, Harness Engineers, and other roles we don’t have names for yet. But for now, I see a lot of AI engineers who are generalists create a lot of value. Skilled AI Engineers are in very high demand! As our field continues to mature over the coming decade, I look forward to new specializations within AI Engineering that create even more job opportunities.
[Original text: The Batch newsletter]
@IamEmily2050 Done with less words
."description": "A hyper-realistic, 4K, full-body night-time portrait of a 23-year-old Korean private school girl with clear pale skin and long straight black hair tucked behind one ear.", standing at a bus. Stop at night. It's foggy
Algopreneurship is the future. Every employee has the potential to be a unicorn. Teams will be ultra-lean. Solo-preneur startups will hit unicorn status—AI makes it all possible. #Algopreneurship#Startup
"Artificial intelligence defined. Artificial intelligence is a field of science concerned with building computers and machines that can reason, learn, and act in such a way that would normally require human intelligence or that involves data whose scale exceeds human analysis"
"Artificial intelligence defined. Artificial intelligence is a field of science concerned with building computers and machines that can reason, learn, and act in such a way that would normally require human intelligence or that involves data whose scale exceeds human analysis"
Announcing the winners of the AI Showdown
During the weekend Lovable was free to use and users got to choose what AI model to use between @OpenAI, @AnthropicAI, and @Google's top AI models.
We ran a dedicated track for each model – and each company (OpenAI, Anthropic, and Google) selected the winner for their respective track based on quality, design, functionality, and usefulness.
Here are the winning projects for each AI model:
Financial Times US Thu, 19 Jun 2025
Meta accused of tempting top OpenAI developers with $100mn sign-on fees...
Salaries that are at 250k to a 1.5.
Hold the pain. These are singularity wages
--
I suppose the code has to work if you pay that much for it
https://t.co/vJQvZpF3WQ
#idea#Prototype of the day - Friend BnB - why doesn't free sharing exist for people with vacation properties?
.... make sure vacancies don't happen and that barter planning can occur - https://t.co/6vsUISG5oM
On the solstice:
1. Take stock
2. Reread some of the stuff you wrote
3. Reflect on the actions you took
4. Plan to fix some of the problems
5. Forgive those who may have transgressed
6. Breathe deep
7. Walk for miles
8. Reset for the future
9. Eat simply
10. Sleep for miles
Big things are happening in tech! Join us for xLabs Live in Miami on April 30, then Vegas on May 7—CTOs, this is your chance to connect, innovate, and shape the future. Let’s build something great together. #FutureForward#TechLeadership" https://t.co/nrvr2PZtkP