Alex Calder

262 posts

Alex Calder

Alex Calder

@ATCalder

CEO @coworkerapp previously @uber

San Francisco, CA Katılım Ocak 2011
874 Takip Edilen234 Takipçiler
Sabitlenmiş Tweet
Alex Calder
Alex Calder@ATCalder·
Today, we dropped the price of enterprise AI by 80%. Same frontier AI. Same chat, cowork, and code experience. Just 5x more tokens for the same spend. Here’s how and why. 👇 Also, we made a video. Please enjoy.
English
12
12
45
15.3K
Alex Calder retweetledi
Deirdre Bosa
Deirdre Bosa@dee_bosa·
Benchmark’s @peterfenton says 90%+ of tokens could come from open weight models in the next 18-24 months, pressuring frontier model margins. Full convo at 12p PT/3p ET on the livestream, plus @AravSrinivas on Perplexity’s new orchestrator model and @jmorgan on why enterprises are moving toward AI models they can download and control
English
17
35
195
61.5K
Sriram Krishnan
Sriram Krishnan@sriramk·
would love a new desktop agent super app - lets me switch harnesses and models and multiplex across them - makes it easy to move memory and context - can orchestrate between models ( use Fable as a planner but a lower cost model for daily driver ) - can retroactively look at usage and optimize for cost / better results
English
168
26
732
140.8K
Alex Calder retweetledi
roman
roman@Nozelcode·
I tried Coworker’s Open Artifacts today, and I was genuinely impressed. I asked it to build a dashboard, and it automatically selected the most suitable model for the task without needing any extra instructions. It’s one of the few AI tools I’ve used recently that feels intuitive right from the start instead of making me wrestle with the interface. For once, I felt like an absolute god.
GIF
Coworker.ai@coworkerapp

Introducing Open Artifacts by Coworker. Build beautiful work products, routed to the right model for every task. Frontier outputs. Exactly the right context. 80% lower cost.

English
6
6
76
10.6K
Alex Calder
Alex Calder@ATCalder·
@alextalksai I think there’s been like 5 frontier models released this week alone. It’s why you need something that’s just going to get your context and pick the right model to work.
English
0
0
0
10
alex
alex@alextalksai·
LIFETIME PROJECT. Coworker’s Open Artifacts pairs each task with the right model and context, so your output stays at frontier quality while your token spend goes much further.  For teams building at scale, that combination of quality and efficiency genuinely matters. It’s a thoughtful design choice that respects both the work and the budget. Definitely one of the more practical AI launches I’ve seen recently.
Coworker.ai@coworkerapp

Introducing Open Artifacts by Coworker. Build beautiful work products, routed to the right model for every task. Frontier outputs. Exactly the right context. 80% lower cost.

English
5
4
84
18.4K
Alex Calder
Alex Calder@ATCalder·
@rohanpaul_ai @coworkerapp I've counted 5 frontier models launched this week alone. Companies need a neutral routing and context layer to manage across them.
English
0
0
2
27
Rohan Paul
Rohan Paul@rohanpaul_ai·
The real value is using AI to reduce work. AI that edits, builds, refreshes, and ships work. @coworkerapp just launched Open Artifacts, turns AI chat into shareable work products grounded in company data. It completes the job as a shareable doc, deck, spreadsheet, dashboard, app, or agent. Coworker is solving the problem where nontechnical people want AI to create serious business artifacts without burning huge token budgets. It also turns those artifacts into shared, editable work instead of isolated personal files.
Coworker.ai@coworkerapp

Introducing Open Artifacts by Coworker. Build beautiful work products, routed to the right model for every task. Frontier outputs. Exactly the right context. 80% lower cost.

English
5
7
19
5.6K
Alex Calder
Alex Calder@ATCalder·
@Austen just need a neutral context and routing layer to manage it all. he he
English
0
0
0
205
Austen Allred
Austen Allred@Austen·
All of a sudden what felt like a one-horse race for best AI models is actually a five?horse race. Much better for all of us as customers. Now go spend another $100 billion to train the next one everybody!
English
29
11
405
21.7K
Leila 👩🏻‍💻
Leila 👩🏻‍💻@leilamakes·
OPEN ARTIFACTS JUST BROKE THE GAME. You no longer build for yourself only. You build DECKS, DOCS, LIVE DASHBOARDS, AGENTS, and APPS… and share them instantly with your entire team. The real flex: it routes every task to the smartest model (GLM 5.2, Kimi K2.7 + frontier ones) and delivers FRONTIER OUTPUT AT 5X LESS COST. BEFORE: files lost on your laptop, single-player AI. NOW: real collaboration with organizational memory. THIS IS HOW TEAMS ACTUALLY WORK IN 2026.
Coworker.ai@coworkerapp

Introducing Open Artifacts by Coworker. Build beautiful work products, routed to the right model for every task. Frontier outputs. Exactly the right context. 80% lower cost.

English
15
7
119
58.4K
Alex Calder retweetledi
zen.
zen.@zentalksai·
most AI tools make something good and it just sits locked on your computer, only you can see it coworker's Artifacts flips that: build a deck or dashboard, share it with your team in clicks not just the result, the template too, so no one has to reinvent the wheel
Coworker.ai@coworkerapp

Introducing Open Artifacts by Coworker. Build beautiful work products, routed to the right model for every task. Frontier outputs. Exactly the right context. 80% lower cost.

English
6
20
151
5.6K
Alex Calder retweetledi
Bradford Church
Bradford Church@HeresTheChurch·
Today's a giant upgrade for Coworker: Open Artifacts. Our vision for Coworker.ai is to be the best place for any team to get real work done, natively AI enabled for collaborating with both humans and their agents. Now we're unlocking the next phase of that vision.
English
2
2
8
94
Alex Calder retweetledi
zen.
zen.@zentalksai·
@coworkerapp honestly the context problem is why i stopped using half these tools. glad someone's finally taking it seriously
English
0
1
4
176
Alex Calder retweetledi
Coworker.ai
Coworker.ai@coworkerapp·
Introducing Open Artifacts by Coworker. Build beautiful work products, routed to the right model for every task. Frontier outputs. Exactly the right context. 80% lower cost.
English
46
58
473
576.8K
Alex Calder
Alex Calder@ATCalder·
In every convo I've had with folks at Coinbase, it's been impressive how far ahead @brian_armstrong and the team have been on AI for a 'non AI company' - whether that was building out shared company context before MCP was a thing or pushing way ahead on coding agents. 99% of companies don't have the time or capability to roll this themselves, despite still having the same burning token cost problem. This is why we built @coworkerapp. We're seeing a huge shift in our customers' use towards open weight models securely hosted in the US.
English
0
0
1
255
Brian Armstrong
Brian Armstrong@brian_armstrong·
How to keep AI spend flat while token usage grows exponentially: Not with friction and spend alerts. With better defaults, routing, and caching. Better Defaults (not Usage Caps) – Engineers can choose any model they want, but defaults matter. We’re experimenting with defaulting to open weight models like GLM 5.2 and Kimi 2.7 through our LLM gateway, while still encouraging engineers to choose the right model for the task. 91% of our employees were never hitting their usage caps, so instead of lowering caps and driving up alerts, we're moving to cheaper defaults. Note that code reviews use a diversity of models, so they can check each other's work. Better Routing – In our custom harnesses, we preprocess prompts and route to the best model for the job, considering cache hits and model pricing. For instance, you may want a frontier model for planning, but not for execution where they can be overkill. Ultimately, humans shouldn't be choosing models - AI can automate this task. Better Caching – Cache misses are the easiest way to drive your cost up. All of our requests are cache aware, so we’re reusing a warm cache wherever possible. For example, our cache hit rate went from 5% → 60% in LibreChat once properly implemented. Keep Context Lean – Start fresh sessions when switching tasks. Scope file context narrowly. Disconnect unused tools. Don't just compact. The goal isn't fewer tokens used, it's fewer tokens wasted. Better Visibility – Our engineers can use as many tokens as they want, from whatever model they want, but we’ve made usage visible – and the more you spend on AI, the more impact we expect. The goal isn't to suppress usage. It's to build the infrastructure that makes exponential growth sustainable. Putting this into practice has cut our AI spend nearly in half, while our token usage continues to grow.
Brian Armstrong tweet media
English
474
749
6.2K
4.2M
Alex Calder
Alex Calder@ATCalder·
What @coinbase did is impressive but 99% of companies can't do this. @coworkerapp let's any company do this out-of-the-box
Brian Armstrong@brian_armstrong

How to keep AI spend flat while token usage grows exponentially: Not with friction and spend alerts. With better defaults, routing, and caching. Better Defaults (not Usage Caps) – Engineers can choose any model they want, but defaults matter. We’re experimenting with defaulting to open weight models like GLM 5.2 and Kimi 2.7 through our LLM gateway, while still encouraging engineers to choose the right model for the task. 91% of our employees were never hitting their usage caps, so instead of lowering caps and driving up alerts, we're moving to cheaper defaults. Note that code reviews use a diversity of models, so they can check each other's work. Better Routing – In our custom harnesses, we preprocess prompts and route to the best model for the job, considering cache hits and model pricing. For instance, you may want a frontier model for planning, but not for execution where they can be overkill. Ultimately, humans shouldn't be choosing models - AI can automate this task. Better Caching – Cache misses are the easiest way to drive your cost up. All of our requests are cache aware, so we’re reusing a warm cache wherever possible. For example, our cache hit rate went from 5% → 60% in LibreChat once properly implemented. Keep Context Lean – Start fresh sessions when switching tasks. Scope file context narrowly. Disconnect unused tools. Don't just compact. The goal isn't fewer tokens used, it's fewer tokens wasted. Better Visibility – Our engineers can use as many tokens as they want, from whatever model they want, but we’ve made usage visible – and the more you spend on AI, the more impact we expect. The goal isn't to suppress usage. It's to build the infrastructure that makes exponential growth sustainable. Putting this into practice has cut our AI spend nearly in half, while our token usage continues to grow.

English
1
0
2
117
Jaya Gupta
Jaya Gupta@JayaGup10·
Presenting to the C-Suite of a top 30 company globally (200B+ in revenue) on how they can reduce their Anthropic spend. What are some best practices others have seen for some of the largest companies in the world?
Jaya Gupta@JayaGup10

x.com/i/article/2059…

English
34
14
159
49.4K