Join us

ContentUpdates from superworks...
Link
@faun shared a link, 2 days, 23 hours ago

The unexpected productivity boost of Rust

Lubeno's backend is100% Rust, providing strong safety guarantees for refactoring confidence. Rust's type checker catches async bugs, unlikeTypeScript. Rust excels in tracking lifetimes and borrowing rules.Zig, on the other hand, can be alarming with its compiler choices, such as overlooking typos in..

Link
@faun shared a link, 2 days, 23 hours ago

From Python to Go: Why We Rewrote Our Ingest Pipeline at Telemetry Harbor

Telemetry Harbor tossed out Python FastAPI and rebuilt its ingest pipeline inGo. The payoff?10x faster, no more CPU freakouts, and strongerdata integritythanks to strict typing. PostgreSQL is now the slowest link in the chain—not the app—which is the kind of bottleneck you actuallywant. Means the s..

From Python to Go: Why We Rewrote Our Ingest Pipeline at Telemetry Harbor
Link
@faun shared a link, 2 days, 23 hours ago

Go is still not good

Go’s been catching flak for years, and the hits keep coming: stiff variable scoping, no destructor patterns, clunky error handling, and brittle build directives. Critics point out how Go’s design often blocks best practices like RAII and makes devs contort logic just to clean up resources or manage ..

Link
@faun shared a link, 2 days, 23 hours ago

Bash Explained: How the Most Popular Linux Shell Works

Bash isn't going anywhere. It's still the glue for CI/CD, cron jobs, and whatever janky monitoring stack someone duct-taped together at 2am. If automation runs the show, Bash is probably in the pit orchestra. It keeps things moving on Linux, old-school macOS (think pre-Catalina), and even WSL. Stil..

Link
@faun shared a link, 2 days, 23 hours ago

Lessons learned from building a sync-engine and reactivity system with SQLite

A dev ditched Electric + PGlite for a lean, browser-native sync setup built aroundWASM SQLite,JSON polling, andBroadcastChannel reactivity. It’s running inside a local-first notes app. Changes get logged with DB triggers. Sync state? Tracked by hand. Svelte stores update via lightweight polling, wi..

Lessons learned from building a sync-engine and reactivity system with SQLite
Link
@faun shared a link, 2 days, 23 hours ago

Developer's block

Overdoing “best practices” can kill momentum. Think endless tests, wall-to-wall docs, airtight CI, and coding rules rigid enough to snap. Sounds responsible—until it slows dev to a crawl. The piece argues for flipping that script. Start scrappy. Build fast. Save the polish for later. It’s how you d..

Link
@faun shared a link, 2 days, 23 hours ago

From GPT-2 to gpt-oss: Analyzing the Architectural Advances

OpenAI Returns to Openness. The company droppedgpt-oss-20Bandgpt-oss-120B—its first open-weight LLMs since GPT-2. The models pack a modern stack:Mixture-of-Experts,Grouped Query Attention,Sliding Window Attention, andSwiGLU. They're also lean. Thanks toMXFP4 quantization, 20B runs on a 16GB consume..

From GPT-2 to gpt-oss: Analyzing the Architectural Advances
Link
@faun shared a link, 2 days, 23 hours ago

Are OpenAI and Anthropic Really Losing Money on Inference?

DeepSeek R1 running on H100s puts input-token costs near$0.003 per million—while output tokens still punch in north of$3. That’s a 1,000x spread. So if a job leans heavy on input—think code linting or parsing big docs—those margins stay fat, even with cautious compute. System shift:This lop-sided ..

Are OpenAI and Anthropic Really Losing Money on Inference?
Link
@faun shared a link, 2 days, 23 hours ago

Some thoughts on LLMs and Software Development

Most LLMs still play autocomplete sidekick. But seasoned devs? They get better results when the model reads and rewrites actual source files. That gap—between how LLMs are designed to work and how prosactuallyuse them—messes with survey data and muddies the picture on real gains in code quality and..

Link
@faun shared a link, 2 days, 23 hours ago

Combining GenAI & Agentic AI to build scalable, autonomous systems

Agentic AI doesn’t just crank out content—it takes the wheel. Where GenAI reacts, Agentic AI plans, perceives, and acts. Think less autocomplete, more autonomous ops. Hook them together, and you get a full-stack brain: content creation, real-time decisions, adaptive workflows, all learning as they ..

Combining GenAI & Agentic AI to build scalable, autonomous systems
Who We Are?

We Are Superworks

We believe to transform enterprises for building a revolutionary workplace with better productivity.

Our Mission:

By putting people first, we strive to make every workplace a place where individuals are motivated, valued, and fulfilled. Join us in our quest to shape the future of your business.

Our Vision:

Our vision is to drive the next technological evolution and equip our clients with the essential tools for future success. We believe to empower every business to grow more with the help of software as a service. We believe to deliver cutting-edge technology that simplifies business operations and streamlines processes.

Core Values:
Our core values embody our identity and principles. We understand the significance of having a set of values for a productive work environment. These values must be harmonized to the advantage of everyone involved. We are dedicated to making a meaningful difference in our customers' lives through our offerings.

Our core values include:

A meaningful approach

Innovative ideas

Customer satisfaction

Willingness to learn

Continues upgradation

Trust and transparency

What’s Our Agenda:

Boost Productivity and Drive Efficiency Through Automation