Is Python robust?
I think robustness is less about speed and more about scalability for large projects.
I've read that Java runs quite a few times faster than Python...
Regarding speed, the way the social processes are working right now, it doesn't look like Python is going to catch up to Java any time soon. There's been a lot of competition in the Java space since 1995, and this competition has spit up some very impressive just-in-time (JIT) compilers. When I look at Python I see development effort and Guido's leadership going more into refining the language and getting some of the complexity under control (e.g., in Python 3).
I also don't see Python catching up to a small language like Lua, which is a bit fairer comparison than Java (both dynamic languages). Lua is much faster than Python but also much smaller in scope. Python philosophy is to have a big language and a library for everything. Lua philosphy is to make everything as small and simple as possible, but no smaller or simpler. Results: it's a lot easier to tune Lua for speed, and the job the Lua team has done is very impressive, but in a comparison of Lua vs Python there are two questions:
- How much are you willing (or can you afford) to build yourself?
- Are you willing to use the system even if you don't understand all of it (or understand at a deep level)?
The number of users for which these factors of speed really matter is small. Examples where speed matters:
- You're building a server farm and have to spend four times as much to power and cool it.
- You want to process a gazillion transactions per second.
These situations are relatively few and far between, and companies who excel at them (think Oracle and Google) typically wind up building very specialized software—so far on a foundation of C or C++.
[What about] scalability issues?
There are at least two kinds of interesting scale in the profession right now:
- Scaling up to lots of computation
- Scaling up to lots of lines of code
I talked above about server farms and other aspects of big computation. Those situations do include the Twitter example you mention, but they are relatively rare. Of course, any company offering services can have a "success disaster", but I don't think it's what you plan for.
There's another way people use the word scaling and that's "scaling up to big programs, not just small ones." This kind of scaling is important to many more people. It's especially important if you're competing in a new marketplace and need to get your product shipped before the competition. If you can't scale your prototypes into real stuff, you lose.
Speaking professionally, not much is known, at least by scholars, about the influence of programming languages on software at scale. It's widely believed that a statically typed language like Java, with explicit interfaces, is easier to scale to very large projects than a dynamic language like Python. But large projects have been built successfully not just with Python but also with Lisp and with Smalltalk, so it's clear that at least in some circumstances dynamic languages can scale. I would love to see some work identifying those circumstances and getting a better understanding of what makes scaling succeed or fail in the dynamic setting.
Should I be concerned?
No. Although Python is recommended as a good "beginner language," I can find no convincing evidence that Python is limited to that role. It's one of several respectable choices for serious projects. Unless you know from Day One that your plan requires a fast, power-efficient server farm, use Python in good health!